搜索
Pluralsight Path. Data Science with Microsoft Azure (2021)
磁力链接/BT种子名称
Pluralsight Path. Data Science with Microsoft Azure (2021)
磁力链接/BT种子简介
种子哈希:
35b2554b1ce78f11bb2c8cb0a354bb034c77271f
文件大小:
3.2G
已经下载:
2807
次
下载速度:
极快
收录时间:
2024-01-06
最近下载:
2025-06-12
移花宫入口
移花宫.com
邀月.com
怜星.com
花无缺.com
yhgbt.icu
yhgbt.top
磁力链接下载
magnet:?xt=urn:btih:35B2554B1CE78F11BB2C8CB0A354BB034C77271F
推荐使用
PIKPAK网盘
下载资源,10TB超大空间,不限制资源,无限次数离线下载,视频在线观看
下载BT种子文件
磁力链接
迅雷下载
PIKPAK在线播放
世界之窗
91视频
含羞草
欲漫涩
逼哩逼哩
成人快手
51品茶
抖阴破解版
极乐禁地
91短视频
TikTok成人版
PornHub
草榴社区
91未成年
乱伦巴士
呦乐园
萝莉岛
最近搜索
爸爸操小女儿
winpe
陈都灵
剧情演绎乱伦
曹长卿
半个小时
regular
小王子
海角母子
従順
核弹20小时
القناص - مسلسل الكرتون - الحلقة 1
aarm 179
妹妹乱伦
鉴赏
timepasserby
忍住声音
t66y
一線
主播青草
charles+mingus
4587032
困困狗
烟酒店老板娘(羊羊)
母狗肛
riley reyes
Красивые
mide-939
الكهرباء pdf
疑似秀人网性感女神『娜露selena』私拍被操啪啪视频流出
文件列表
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/5. Demo - Azure Databricks with Azure Data Lake Storage Gen2.mp4
63.4 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/4. Creating Pipelines.mp4
51.2 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/exercise.7z
45.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/6. Demo - Working with KQL - Timeseries.mp4
44.0 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/2. Data Preprocessing with Microsoft AzureML.mp4
39.4 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/5. Demo - Working with KQL - Basic.mp4
39.0 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/5. Creating and Deploying.mp4
38.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/4. Extracting and Matching Features with SIFT.mp4
37.1 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/6. Demo - Data Ingestion Using EventHubs and .Net Custom Code.mp4
36.5 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/6. HD Insights Demo.mp4
34.4 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/6. Demo - Create Model and Perform Predictive Analytics Part3.mp4
34.1 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/3. Automated Machine Learning Experiment Using Python SDK.mp4
33.4 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/1. Creating and Registering Microsoft AzureML Datastore.mp4
31.3 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/4. Demo - Communicating Insights using MatPlotLib.mp4
29.9 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/4. Demo - Configuring and Working with Azure Databricks.mp4
29.1 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/6. Extracting and Matching Features with HOG.mp4
28.5 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/6. Demo - Performing Exploratory Data Analysis using Azure Databricks.mp4
27.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/5. Demo - Create Model and Perform Predictive Analytics Part 2.mp4
25.7 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/7. Demo - Working with Streaming Data Using Azure Databricks and Event Hubs.mp4
24.7 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/3. Demo - Communicating Insights using Power BI.mp4
24.5 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/5. Creating a CNN for Classification.mp4
24.4 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/4. Tools.mp4
24.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/5. Demo - Managing ADX Database Permissions.mp4
24.2 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/4. Training Script and Estimators in AzureML.mp4
23.4 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/2. Hyperparameter Tuning - Demo.mp4
22.2 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/3. Iris Demo.mp4
22.1 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/4. Azure Data Factory Demo.mp4
22.0 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/7. Demo - Data Ingestion Using EventGrids and Blob Storage.mp4
21.8 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/8. Demo - Data Sharing and Visualization Using Power BI.mp4
21.0 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/4. Demo - Create ADX Cluster Using PowerShell.mp4
20.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/4. Working with MNIST.mp4
20.4 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/3. How PCA Works.mp4
20.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/7. Demo - Data Obfuscation in KQL.mp4
19.6 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/4. Demo - Inspecting an Azure ML Pipeline.mp4
19.2 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/4. Demo - Creating an Automated ML Experiment.mp4
18.7 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/2. Creating and Deleting Workspace.mp4
18.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/6. Demo.mp4
18.4 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/15. Demo - Word Embeddings with BERT on AMLS.mp4
18.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/4. Performing Feature Extraction on Unstructured Text.mp4
18.2 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/3. R Demo.mp4
18.0 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/7. Demo - Scaling the ADX Cluster.mp4
17.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/6. Demo - ADX Health and Performance Monitoring.mp4
17.5 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/3. Setting up Environments.mp4
17.5 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/5. HOG Introduction.mp4
17.4 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/4. Automated Machine Learning Experiment Using Visual Interface.mp4
17.2 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/2. Metrics Logging in AzureML.mp4
17.1 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/1. Setting up Compute Target.mp4
16.6 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/4. Demo - Create Model and Perform Predictive Analytics Part 1.mp4
16.5 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/4. Python Demo.mp4
16.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/2. Performing Feature Extraction.mp4
15.8 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/2. Data Structures.mp4
15.4 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/8. Azure Availability Features.mp4
15.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/5. Demo - Human Face or Not Human Face.mp4
15.3 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/5. Demo - Touring the Azure Python Interpretability SDK.mp4
15.1 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/03. Demo - Exploratory Data Analysis.mp4
15.1 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/2. Data.mp4
14.6 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/3. SIFT Introduction.mp4
14.5 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/5. Azure Backup Services Demo.mp4
14.2 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/3. Microsoft AzureML Datasets.mp4
14.1 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/3. Demo - Azure Security, Privacy, and Compliance.mp4
13.8 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/5. Dataset Exploration Demo.mp4
13.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/5. Launching a Notebook Instance.mp4
13.5 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/7. Demo.mp4
13.4 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/6. Compute Linear Correlation Demo.mp4
13.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/4. Fisher Linear Discriminant Analysis Demo.mp4
13.3 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/5. Demo - Scoring and Evaluating the Pipeline Model.mp4
13.1 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/2. Introduction to Computer Vision.mp4
13.1 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/4. Setting Up an Experiment in a Jupyter Notebook.mp4
12.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/3. Create ADX Cluster Using PowerShell.mp4
12.8 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/7. Demo - One-hot Encoding Categorical Variables.mp4
12.8 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/1. Hyperparameter Tuning - Theory.mp4
12.8 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/2. Introduction to Data Science.mp4
12.7 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/3. Convolutional Neural Network Overview.mp4
12.5 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/4. Demo - Outlier Detection in Python.mp4
12.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/11. Demo - The Hashing Trick.mp4
12.0 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/4. Splitting Data for Model Tuning.mp4
12.0 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/6. Demo - Creating an Azure Machine Learning Studio Workspace.mp4
11.9 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/exercise.7z
11.8 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/5. Distributed Training in AzureML.mp4
11.7 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/6. Demo - Create ADX Cluster Using Command Line Interface.mp4
11.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/5. Demo - Cross-validation.mp4
11.5 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/2. Provisioning an Environment.mp4
11.3 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/7. Bad Data.mp4
11.2 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/5. Azure Data Catalog Demo.mp4
11.1 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/2. Demo - Create ADX Cluster Using Azure Portal.mp4
11.1 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/1. Overview of Microsoft Azure Machine Learning service.mp4
11.0 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/2. Demo - Training and Testing on Same Data.mp4
10.9 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/2. Image Processing Techniques.mp4
10.8 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/12. Demo - Frequency Filtering.mp4
10.8 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/3. Creating a DSVM.mp4
10.6 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/10. Demo - Stopword Removal.mp4
10.5 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/2. What Is a Feature in Machine Learning.mp4
10.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/13. Demo - Locality-sensitive Hashing.mp4
10.1 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/8. Demo - Learning with Counts Categorical Variables.mp4
10.1 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/09. Demo - Word Embeddings Using Word2Vec.mp4
10.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/3. Understanding Apache Spark and Notebook.mp4
10.0 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/7. Encoding Features Demo.mp4
10.0 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/7. Azure Open Datasets Demo.mp4
10.0 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/08. Gaussian Distributions.mp4
9.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/07. Demo - Data Transformation.mp4
9.9 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/03. Demo - Configure AMLS.mp4
9.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/6. Demo.mp4
9.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/2. Neural Network Overview.mp4
9.8 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/5. Normalize Data Demo.mp4
9.8 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/5. Demo - Working with Tokens.mp4
9.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/8. Demo - Exploring the Dataset.mp4
9.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/6. Demo - Model Selection.mp4
9.5 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/4. Azure Data Catalog.mp4
9.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/7. Demo - Modifying the Metadata of Datasets.mp4
9.5 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/3. LDA.mp4
9.4 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/3. Clip Values Demo.mp4
9.4 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/4. Access Keys and SAS.mp4
9.4 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/3. Setting up Run Object.mp4
9.3 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/exercise.7z
9.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/03. Demo - Listwise Deletion.mp4
9.2 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/3. Azure SQL High Availability.mp4
9.2 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/3. Identifying Constraints.mp4
9.1 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/5. Large Data Sets.mp4
9.1 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/3. Approaches to Computer Vision.mp4
9.0 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/07. Demo - NLTK Tokenizers.mp4
8.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/6. Demo.mp4
8.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/6. Demo.mp4
8.9 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/6. SQL Data Sampling.mp4
8.8 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/6. Microsofts Team Data Science Process.mp4
8.8 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/3. 6 Characteristics of a Good Feature.mp4
8.8 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/4. Application Insights.mp4
8.7 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/5. Permutation Feature Importance Demo.mp4
8.7 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/03. One-hot and Count Vector Encoding.mp4
8.6 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/2. Extracting and Loading.mp4
8.6 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/2. Data Science Overview.mp4
8.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/3. Demo - Split Data into Training and Test Set.mp4
8.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/1. Introduction and Module Overview.mp4
8.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/07. Demo - TF-IDF Encoding.mp4
8.3 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/2. Authentication and Authorization on Azure.mp4
8.2 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/06. Demo - Sentence and Word Tokenization.mp4
8.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/10. Demo - Discretizing Data.mp4
8.1 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/4. Azure Services for Computer Vision.mp4
8.1 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/6. Principal Component Analysis Demo.mp4
8.1 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/3. Azure Data Factory.mp4
8.0 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/5. Demo - Imputation in Python.mp4
8.0 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/4. Group Data into Bins Demo.mp4
8.0 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/3. Discovering Data.mp4
7.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/04. Demo - Data Cleaning (Erroneous Data).mp4
7.8 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/5. How Feature Set Complexity Impacts Model Interpretability.mp4
7.8 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/5. Bivariate Techniques.mp4
7.8 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/2. Running a Test Experiment.mp4
7.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/2. How Can You Process Categorical or Text Feature Sets.mp4
7.7 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/05. Defining Business Metrics.mp4
7.6 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/2. Understanding the Azure Databricks Ecosystem.mp4
7.6 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/3. Creating Azure Machine Learning.mp4
7.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/7. Demo - Creating an Azure Machine Learning Service Workspace.mp4
7.6 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/2. Model Training Process.mp4
7.5 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/exercise.7z
7.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/20. Demo - N-grams.mp4
7.4 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/05. Demo - Data Cleaning (Outliers).mp4
7.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/04. Demo - Bag-of-words.mp4
7.3 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/2. Aggregation.mp4
7.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/3. Fliter Based Feature Selection Demo.mp4
7.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/6. Azure Data Explorer Capabilities.mp4
7.2 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/exercise.7z
7.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/3. Data Exploration and Visualization.mp4
7.1 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/10. Quantifying the Risks for the Data Science Project.mp4
7.1 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/3. Azure Notebooks Demo.mp4
7.1 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/4. Data Exploration in Azure (ADX).mp4
7.0 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/exercise.7z
7.0 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/8. Handling Bad Data.mp4
6.9 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/1. Ethical and Legal Compliance.mp4
6.9 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/4. Saving Work.mp4
6.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/4. How Statistical Tests Work.mp4
6.7 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/3. Scoring and Evaluating an Azure ML Pipeline.mp4
6.6 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/3. Exploring Your Data and Identifying the Distribution of Your Da.mp4
6.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/3. How k-means Works.mp4
6.6 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/5. HD Insights.mp4
6.6 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/03. Demo - Common Scaling Approaches.mp4
6.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/05. Demo - Using Indicator Variables.mp4
6.5 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/3. Univariate Techniques.mp4
6.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/09. Calculating the Mean, Median, and Mode.mp4
6.4 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/02. Encoding Text as Numbers.mp4
6.4 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/08. Demo - Replace with MICE.mp4
6.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/14. BERT.mp4
6.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/10. Feature Hashing.mp4
6.3 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/4. Data Labeling.mp4
6.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/2. Data Science Overview.mp4
6.1 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/3. Understanding the Modeling Process.mp4
5.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/4. Autoencoders.mp4
5.9 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/1. Data Availability Concepts.mp4
5.8 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/4. KPCA.mp4
5.7 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/2. KQL Schema Mapping for Data Ingestion.mp4
5.7 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/5. Cosmos DB Availability.mp4
5.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/3. Demo - SMOTE.mp4
5.7 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/1. The Shared Responsibility Model.mp4
5.7 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/3. Synthetic Training Data.mp4
5.6 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/05. Tokenization and Cleaning.mp4
5.6 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/5. Create ADX Cluster Using Command Line Interface.mp4
5.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/4. Dictionary Learning.mp4
5.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/08. Demo - Reducing Data (Record Sampling).mp4
5.4 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/14. Demo - Stemming.mp4
5.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/1. Performing Feature Normalization.mp4
5.2 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/2. PCA.mp4
5.2 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/04. Identifying the Hard-skills.mp4
5.1 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/2. Tracking Models.mp4
5.1 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/4. Define Target for ML Problems.mp4
5.0 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/1. Introduction and Module Overview.mp4
5.0 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/1. Introduction and Module Overview.mp4
5.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/4. Model Training.mp4
4.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/6. Multivariate Techniques.mp4
4.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/2. What Is Machine Learning.mp4
4.9 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/12. Locality-sensitive Hashing.mp4
4.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/1. Module Overview.mp4
4.9 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/07. Managing Technical Metrics.mp4
4.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/1. Course Overview/1. Course Overview.mp4
4.8 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/5. Model Evaluation.mp4
4.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/06. Demo - Data Cleaning (Duplicate Rows).mp4
4.7 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/2. Understanding the Kusto Query Language (KQL).mp4
4.7 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/5. Environment Management.mp4
4.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/3. Sources of Model Error.mp4
4.7 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/08. Word Embeddings.mp4
4.7 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/02. Prerequisites.mp4
4.6 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/05. Demo - Bag-of-n-grams.mp4
4.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/5. Demo - Exploring Datasets for Different Problems.mp4
4.6 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/2. Preliminary Terminology.mp4
4.6 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/exercise.7z
4.5 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/2. Availability on Blob Storage.mp4
4.5 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/3. Model Training Techniques.mp4
4.5 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/5. PCA Limitations.mp4
4.5 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/7. Demo - Label Encoding and XGBoost.mp4
4.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/18. Demo - Lemmatization.mp4
4.5 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/4. Version Management.mp4
4.5 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/3. Data Measurement Scales.mp4
4.4 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/3. Unintended Bias and Interpretability.mp4
4.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/2. Machine Learning Process Distilled.mp4
4.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/2. Why Feature Engineering.mp4
4.3 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/5. Manifold Learning.mp4
4.3 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/09. Demo - Z-score.mp4
4.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/01. What Is Data Science.mp4
4.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/exercise.7z
4.3 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/5. Demo - Interpreting the Experiment Results.mp4
4.2 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/2. Azure Machine Learning.mp4
4.2 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/2. k-means Model Stacking.mp4
4.2 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/06. Business Metrics Classifications.mp4
4.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/7. Problem with High-dimensional Datasets.mp4
4.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/07. Demo - Correcting Heteroscedasticity.mp4
4.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/1. Introduction.mp4
4.1 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/2. Detecting and Preventing Overfitting.mp4
4.1 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/4. Measuring and Detecting Problems Due to Feature Set Complexity.mp4
4.1 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/07. Selecting the Right Stakeholders.mp4
4.1 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/3. Continuous Deployment.mp4
4.1 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/7. High Quality Datasets.mp4
4.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/1. Module Overview.mp4
4.0 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/2. Microsofts Guiding Principles for Responsible AI.mp4
3.9 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/exercise.7z
3.9 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/1. Course Overview/1. Course Overview.mp4
3.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/2. Managing ADX Database Permissions.mp4
3.9 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/1. Course Overview/1. Course Overview.mp4
3.9 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/16. Demo - Parts-of-speech.mp4
3.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/1. Course Overview/1. Course Overview.mp4
3.9 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/1. Course Overview/1. Course Overview.mp4
3.8 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/6. Correlation vs. Causation.mp4
3.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/05. Measures of Variability.mp4
3.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/exercise.7z
3.8 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/04. Problems in Deleting Rows.mp4
3.8 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/01. Module Overview.mp4
3.7 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/8. Specialized Roles in Data Science.mp4
3.6 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/10. Summary.mp4
3.6 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/1. Exploring Your Dataset for Feature Selection and Extraction.mp4
3.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/11. Entropy-based Discretization.mp4
3.6 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/4. Determining the Feature Structure Appropriate for the Algorithm.mp4
3.6 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/3. ADX Health and Performance Monitoring.mp4
3.6 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/5. Personally Identifiable Information (PII).mp4
3.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/5. t-SNE.mp4
3.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/5. Multicollinearity Problem in Regression Models.mp4
3.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/21. Module Summary.mp4
3.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/08. Demo - Token Cleaning.mp4
3.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/3. Introduction to Azure Machine Learning.mp4
3.5 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/1. Course Overview/1. Course Overview.mp4
3.5 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/4. Deploying Models.mp4
3.5 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/7. Data Science Services and Tools in Azure.mp4
3.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/4. Data Scale Issues in Distance-based Models.mp4
3.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/5. Testing for Validity.mp4
3.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/2. A New Problem to Be Solved.mp4
3.5 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/1. Course Overview/1. Course Overview.mp4
3.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/4. The Complete Media Insights Solution.mp4
3.5 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/2. Communicating Knowledge and Insights.mp4
3.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/6. Outliers in Regression Models.mp4
3.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/4. The Budget Barrier and Solution.mp4
3.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/05. Demo - Binning.mp4
3.4 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/3. Creating and Using Feature Extraction Algorithms.mp4
3.4 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/01. Module Overview.mp4
3.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/01. Module Overview.mp4
3.4 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/7. ADX Pricing.mp4
3.4 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/1. Course Overview/1. Course Overview.mp4
3.3 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/02. Common Scaling Approaches.mp4
3.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/05. Meet the Stereotypical Technical Players.mp4
3.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/4. Azure Machine Learning Experiment Workflow.mp4
3.3 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/5. EventGrids Overview.mp4
3.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/1. Course Overview/1. Course Overview.mp4
3.3 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/4. Scaling the ADX Cluster.mp4
3.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/6. Feature Engineering Categorical Variables.mp4
3.3 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/1. Course Overview/1. Course Overview.mp4
3.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/08. Data Science Project Risks.mp4
3.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/06. Modality and Skewness.mp4
3.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/07. Disadvantages of Single Imputation Methods.mp4
3.2 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/06. Identify Your Stakeholders.mp4
3.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/6. Demo - Label and One-hot Encoding.mp4
3.2 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/04. Preprocessing and NLP.mp4
3.2 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/5. Multiple Data Sets.mp4
3.1 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/3. Data Ingestion in Azure.mp4
3.1 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/1. Course Overview/1. Course Overview.mp4
3.1 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/3. Outlier Detection and Imputation.mp4
3.1 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/1. Course Overview/1. Course Overview.mp4
3.1 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/19. N-grams.mp4
3.1 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/1. Course Overview/1. Course Overview.mp4
3.1 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/3. Your New Data Broker.mp4
3.1 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/06. TF-IDF Encoding.mp4
3.1 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/6. Ethical and Legal Barriers to Data Use.mp4
3.0 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/3. Role of Feature Engineering in Model Complexity.mp4
3.0 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/1. Course Overview/1. Course Overview.mp4
3.0 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/3. Long Term Planning.mp4
3.0 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/5. Azure Data Explorer Features.mp4
2.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/4. Build Better Models with Feature Engineering.mp4
2.9 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/2. Understanding Feature Normalization.mp4
2.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/06. Replace with Mean, Median, and Mode.mp4
2.9 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/02. What Is the Project Motivation Factor.mp4
2.8 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/2. The Use Case - Media Insights Solution.mp4
2.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/6. Standardization and Normalization.mp4
2.8 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/3. Available Data Sources.mp4
2.8 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/6. The Format of the Data.mp4
2.8 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/2. Feature Set Complexity.mp4
2.8 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/09. Demo - Reducing Data (Attribute Sampling).mp4
2.7 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/10. Summary.mp4
2.7 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/12. Assessing Stakehoders Needs.mp4
2.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/1. Introduction and Module Overview.mp4
2.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/2. Imbalanced Dataset for Classification Problems.mp4
2.7 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/6. Final Takeaway/1. Final Takeaway.mp4
2.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/1. Course Overview/1. Course Overview.mp4
2.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/7. Summary.mp4
2.6 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/1. Course Overview/1. Course Overview.mp4
2.6 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/2. Understanding Feature Selection.mp4
2.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/5. Feature Engineering Numeric Variables.mp4
2.6 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/3. The Key Valet Pattern.mp4
2.6 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/2. The Problem with the Internal Data.mp4
2.6 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/10. Asking the Right Questions.mp4
2.6 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/6. Azure Open Datasets.mp4
2.5 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/01. Module Overview.mp4
2.5 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/1. Introduction and Module Overview.mp4
2.5 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/7. Demo - Normalize and Standardize in Python.mp4
2.5 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/1. Performing Feature Selection.mp4
2.4 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/16. Summary.mp4
2.4 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/exercise.7z
2.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/04. Measures of Central Tendency.mp4
2.4 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/2. Moving from Raw Data to Features.mp4
2.4 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/02. Is This Course for You.mp4
2.4 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/3. Azure Automated Machine Learning.mp4
2.4 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/1. Overview.mp4
2.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/09. How MICE Works.mp4
2.3 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/7. The Big Ask.mp4
2.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/14. Project Gap Analysis.mp4
2.3 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/5. Summary.mp4
2.3 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/13. Stemming.mp4
2.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/1. Module Overview.mp4
2.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/8. Summary.mp4
2.2 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/1. What Is Feature Extraction.mp4
2.2 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/4. Bring in the SME.mp4
2.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/04. Binning.mp4
2.2 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/09. Stopword Removal.mp4
2.2 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/2. Encryption in Azure.mp4
2.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/4. Problems with Categorical Data.mp4
2.2 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/17. Lemmatization.mp4
2.2 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/1. Overview.mp4
2.2 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/2. Reasons For Feature Elimination.mp4
2.1 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/13. Accessing the Data.mp4
2.1 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/02. Reasons Why Data Is Missing.mp4
2.1 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/1. Introduction.mp4
2.1 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/1. Course Overview/1. Course Overview.mp4
2.1 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/15. Parts-of-speech Tagging.mp4
2.1 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/7. Summary.mp4
2.1 MB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/11. Frequency Filtering.mp4
2.0 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/08. Z-score.mp4
2.0 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/1. Overview.mp4
2.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/exercise.7z
2.0 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/1. Module Overview.mp4
2.0 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/1. Intro.mp4
2.0 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/1. Introduction.mp4
1.9 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/09. Data Science Project Lifecycle.mp4
1.9 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/6. Summary.mp4
1.9 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/1. Module Overview.mp4
1.9 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/5. Exploratory Data Analysis Tools.mp4
1.9 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/exercise.7z
1.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/7. Leave-one-out Cross Validation.mp4
1.9 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/7. Summary.mp4
1.9 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/6. Summary.mp4
1.9 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/18. Establishing Agreement to Proceed the Project Further.mp4
1.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/12. Demo - Entropy-based Discretization.mp4
1.9 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/01. Introduction.mp4
1.9 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/2. Data Types in Statistics.mp4
1.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/1. Introduction.mp4
1.8 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/17. Address and Capture Any Concerns.mp4
1.8 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/6. Summary.mp4
1.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/6. Summary.mp4
1.8 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/1. Overview.mp4
1.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/03. Skills Recommended for This Course.mp4
1.8 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/6. Course Review.mp4
1.8 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/7. Takeaway.mp4
1.8 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/8. Summary.mp4
1.8 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/4. EventHubs Overview.mp4
1.8 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/1. Module Overview.mp4
1.8 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/6. Availability on Other Azure Services.mp4
1.7 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/07. Kurtosis.mp4
1.7 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/8. Summary.mp4
1.7 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/08. Get to Know Your Stakeholders.mp4
1.7 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/8. Summary.mp4
1.7 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/6. How Algorithms Learn Models.mp4
1.7 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/6. Summary.mp4
1.7 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/1. Overview.mp4
1.7 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/8. Summary.mp4
1.7 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/11. Capturing Stakeholders Needs.mp4
1.6 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/1. Intro.mp4
1.6 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/9. Summary.mp4
1.6 MB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/7. Summary.mp4
1.6 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/8. Summary.mp4
1.6 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/1. Intro.mp4
1.6 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/4. Available KQL Demo Platforms.mp4
1.6 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/7. Review.mp4
1.6 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/7. Summary.mp4
1.6 MB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/exercise.7z
1.6 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/06. Heteroscedasticity.mp4
1.6 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/09. Managing the Initial Stakeholder Engagement.mp4
1.6 MB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/7. Summary.mp4
1.5 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/8. Summary.mp4
1.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/7. Summary.mp4
1.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/01. Introduction.mp4
1.5 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/4. Azure SQL Datawarehouse Availability.mp4
1.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/8. Summary.mp4
1.5 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/9. Summary.mp4
1.5 MB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/6. Review.mp4
1.5 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/1. Overview.mp4
1.5 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/9. Summary.mp4
1.5 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/2. Performance Analytics.mp4
1.4 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/6. Takeaway.mp4
1.4 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/8. Summary.mp4
1.4 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/1. Module Overview.mp4
1.4 MB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/5. Review.mp4
1.4 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/1. Overview.mp4
1.3 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/3. Schema Mapping in KQL.mp4
1.3 MB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/8. Takeaway.mp4
1.3 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/1. Module Overview.mp4
1.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/15. Present the Proposal.mp4
1.3 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/03. Hard-skills and Soft-skills.mp4
1.3 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/1. Introduction.mp4
1.3 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/4. Module Summary.mp4
1.2 MB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/01. Access the Need of the Project to the Business.mp4
1.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/9. Summary.mp4
1.2 MB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/exercise.7z
1.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/1. Introduction.mp4
1.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/7. Summary.mp4
1.2 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/6. Module Summary.mp4
1.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/1. Module Overview.mp4
1.2 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/1. Overview.mp4
1.2 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/8. Summary.mp4
1.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/1. Introduction.mp4
1.2 MB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/5. One-hot Encoding.mp4
1.2 MB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/13. Summary.mp4
1.2 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/exercise.7z
1.1 MB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/9. Module Summary.mp4
1.1 MB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/1. Module Overview.mp4
1.1 MB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/1. Overview.mp4
1.1 MB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/1. Introduction.mp4
1.0 MB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/1. Intro.mp4
1.0 MB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/7. Summary.mp4
998.9 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/03. Low Risk Data Science Project Scope.mp4
986.2 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/8. Summary.mp4
951.0 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/16. Accessing the Teams Reaction.mp4
876.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/04. External vs. Internal Facing Project Scope.mp4
859.0 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/6. Takeaway.mp4
843.6 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/9. Review.mp4
812.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/10. Summary.mp4
803.6 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/02. High Risk Data Science Project Scope.mp4
787.0 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/1. Intro.mp4
785.4 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/1. Intro.mp4
717.0 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/1. Intro.mp4
685.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/02. Data Preprocessing Methods.mp4
661.4 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/6. Review.mp4
656.0 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/1. Overview.mp4
635.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/5. Prerequisites.mp4
580.6 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/5. Review.mp4
550.4 kB
scr 2022-08.png
505.2 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/exercise.7z
460.6 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/4. Tools.vtt
31.4 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/5. Demo - Azure Databricks with Azure Data Lake Storage Gen2.vtt
23.4 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/4. Creating Pipelines.vtt
22.5 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/2. Data Structures.vtt
19.3 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/6. Demo - Working with KQL - Timeseries.vtt
18.6 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/5. Creating and Deploying.vtt
18.6 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/4. Extracting and Matching Features with SIFT.vtt
18.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/5. Demo - Working with KQL - Basic.vtt
18.3 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/2. Data.vtt
17.3 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/2. Introduction to Data Science.vtt
16.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/4. Demo - Configuring and Working with Azure Databricks.vtt
14.9 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/3. Convolutional Neural Network Overview.vtt
14.9 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/3. SIFT Introduction.vtt
14.6 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/6. Demo - Create Model and Perform Predictive Analytics Part3.vtt
14.3 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/5. Creating a CNN for Classification.vtt
13.6 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/7. Bad Data.vtt
13.1 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/3. How PCA Works.vtt
12.9 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/2. Neural Network Overview.vtt
12.7 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/2. Introduction to Computer Vision.vtt
12.6 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/4. Demo - Communicating Insights using MatPlotLib.vtt
12.4 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/4. Azure Data Catalog.vtt
12.0 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/1. Creating and Registering Microsoft AzureML Datastore.vtt
12.0 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/2. Provisioning an Environment.vtt
11.9 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/6. Demo - Data Ingestion Using EventHubs and .Net Custom Code.vtt
11.8 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/5. HOG Introduction.vtt
11.8 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/5. Demo - Create Model and Perform Predictive Analytics Part 2.vtt
11.2 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/4. Azure Data Factory Demo.vtt
11.2 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/3. Identifying Constraints.vtt
11.2 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/5. Large Data Sets.vtt
11.1 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/2. Performing Feature Extraction.vtt
10.9 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/3. Approaches to Computer Vision.vtt
10.6 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/3. Demo - Communicating Insights using Power BI.vtt
10.5 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/6. Extracting and Matching Features with HOG.vtt
10.5 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/1. Hyperparameter Tuning - Theory.vtt
10.4 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/4. Demo - Inspecting an Azure ML Pipeline.vtt
10.4 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/2. Extracting and Loading.vtt
10.3 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/4. Demo - Create ADX Cluster Using PowerShell.vtt
10.2 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/3. Automated Machine Learning Experiment Using Python SDK.vtt
10.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/2. Image Processing Techniques.vtt
10.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/6. Demo - Performing Exploratory Data Analysis using Azure Databricks.vtt
10.1 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/3. Azure Data Factory.vtt
10.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/7. Demo - Working with Streaming Data Using Azure Databricks and Event Hubs.vtt
10.1 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/5. Demo - Managing ADX Database Permissions.vtt
10.0 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/4. Access Keys and SAS.vtt
9.8 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/3. Discovering Data.vtt
9.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/4. Demo - Outlier Detection in Python.vtt
9.7 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/4. Training Script and Estimators in AzureML.vtt
9.7 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/7. Demo - Data Ingestion Using EventGrids and Blob Storage.vtt
9.7 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/2. Data Preprocessing with Microsoft AzureML.vtt
9.7 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/15. Demo - Word Embeddings with BERT on AMLS.vtt
9.4 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/3. Azure SQL High Availability.vtt
9.2 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/6. HD Insights Demo.vtt
9.0 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/2. Aggregation.vtt
8.9 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/8. Demo - Data Sharing and Visualization Using Power BI.vtt
8.9 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/7. Demo - Scaling the ADX Cluster.vtt
8.7 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/1. Overview of Microsoft Azure Machine Learning service.vtt
8.6 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/6. Demo - ADX Health and Performance Monitoring.vtt
8.6 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/4. Azure Services for Computer Vision.vtt
8.5 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/2. Authentication and Authorization on Azure.vtt
8.5 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/2. Running a Test Experiment.vtt
8.4 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/4. Fisher Linear Discriminant Analysis Demo.vtt
8.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/03. Demo - Exploratory Data Analysis.vtt
8.0 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/4. Demo - Creating an Automated ML Experiment.vtt
8.0 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/08. Gaussian Distributions.vtt
8.0 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/4. Python Demo.vtt
8.0 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/7. Demo - Data Obfuscation in KQL.vtt
8.0 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/1. Setting up Compute Target.vtt
8.0 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/4. Working with MNIST.vtt
7.9 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/4. Performing Feature Extraction on Unstructured Text.vtt
7.9 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/4. Demo - Create Model and Perform Predictive Analytics Part 1.vtt
7.9 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/3. Iris Demo.vtt
7.9 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/1. Ethical and Legal Compliance.vtt
7.7 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/8. Azure Availability Features.vtt
7.7 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/5. Demo - Scoring and Evaluating the Pipeline Model.vtt
7.6 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/5. Demo - Human Face or Not Human Face.vtt
7.6 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/11. Demo - The Hashing Trick.vtt
7.6 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/6. Demo.vtt
7.6 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/2. Metrics Logging in AzureML.vtt
7.6 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/5. HD Insights.vtt
7.6 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/1. Introduction and Module Overview.vtt
7.4 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/03. One-hot and Count Vector Encoding.vtt
7.3 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/3. Create ADX Cluster Using PowerShell.vtt
7.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/3. 6 Characteristics of a Good Feature.vtt
7.2 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/4. Saving Work.vtt
7.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/5. Launching a Notebook Instance.vtt
7.1 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/6. Azure Data Explorer Capabilities.vtt
7.1 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/4. Automated Machine Learning Experiment Using Visual Interface.vtt
7.1 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/2. Creating and Deleting Workspace.vtt
6.9 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/3. Exploring Your Data and Identifying the Distribution of Your Da.vtt
6.9 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/5. Dataset Exploration Demo.vtt
6.8 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/4. Data Labeling.vtt
6.8 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/6. Compute Linear Correlation Demo.vtt
6.7 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/2. Model Training Process.vtt
6.6 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/3. R Demo.vtt
6.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/6. Demo - Create ADX Cluster Using Command Line Interface.vtt
6.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/12. Demo - Frequency Filtering.vtt
6.3 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/1. Data Availability Concepts.vtt
6.3 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/3. Understanding Apache Spark and Notebook.vtt
6.2 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/13. Demo - Locality-sensitive Hashing.vtt
6.2 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/10. Demo - Stopword Removal.vtt
6.2 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/2. What Is a Feature in Machine Learning.vtt
6.2 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/2. Tracking Models.vtt
6.0 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/5. Environment Management.vtt
6.0 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/5. How Feature Set Complexity Impacts Model Interpretability.vtt
5.9 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/4. Setting Up an Experiment in a Jupyter Notebook.vtt
5.9 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/5. Azure Data Catalog Demo.vtt
5.9 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/3. Scoring and Evaluating an Azure ML Pipeline.vtt
5.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/6. Demo - Creating an Azure Machine Learning Studio Workspace.vtt
5.7 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/5. Tuning Hyperparameters and AutoML/2. Hyperparameter Tuning - Demo.vtt
5.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/2. Machine Learning Process Distilled.vtt
5.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/5. Demo - Cross-validation.vtt
5.7 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/1. The Shared Responsibility Model.vtt
5.7 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/2. Data Science Overview.vtt
5.7 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/2. Demo - Create ADX Cluster Using Azure Portal.vtt
5.7 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/2. Understanding Azure Machine Learning service/3. Setting up Environments.vtt
5.6 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/03. Demo - Configure AMLS.vtt
5.6 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/playlist.m3u
5.6 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/06. Demo - Sentence and Word Tokenization.vtt
5.6 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/3. LDA.vtt
5.6 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/09. Calculating the Mean, Median, and Mode.vtt
5.5 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/3. Import and Prepare Data for Modeling/3. Microsoft AzureML Datasets.vtt
5.5 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/5. Cosmos DB Availability.vtt
5.5 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/4. Splitting Data for Model Tuning.vtt
5.5 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/5. Azure Backup Services Demo.vtt
5.4 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/04. Demo - Bag-of-words.vtt
5.4 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/2. How Can You Process Categorical or Text Feature Sets.vtt
5.4 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/5. Bivariate Techniques.vtt
5.3 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/5. Permutation Feature Importance Demo.vtt
5.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/4. Define Target for ML Problems.vtt
5.3 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/14. BERT.vtt
5.2 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/6. Microsofts Team Data Science Process.vtt
5.2 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/5. Demo - Touring the Azure Python Interpretability SDK.vtt
5.2 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/5. Demo - Working with Tokens.vtt
5.2 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/4. Data Exploration in Azure (ADX).vtt
5.2 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/02. Encoding Text as Numbers.vtt
5.2 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/7. Encoding Features Demo.vtt
5.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/3. Data Measurement Scales.vtt
5.1 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/09. Demo - Word Embeddings Using Word2Vec.vtt
5.1 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/4. Version Management.vtt
5.1 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/3. Data Exploration and Visualization.vtt
5.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/3. Understanding the Modeling Process.vtt
5.0 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/3. Synthetic Training Data.vtt
5.0 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/07. Demo - TF-IDF Encoding.vtt
5.0 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/10. Feature Hashing.vtt
4.9 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/2. Azure Machine Learning.vtt
4.9 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/05. Tokenization and Cleaning.vtt
4.9 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/6. Demo.vtt
4.9 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/07. Demo - Data Transformation.vtt
4.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/05. Defining Business Metrics.vtt
4.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/8. Demo - Learning with Counts Categorical Variables.vtt
4.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/2. Demo - Training and Testing on Same Data.vtt
4.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/7. Demo - One-hot Encoding Categorical Variables.vtt
4.8 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/2. Understanding the Azure Databricks Ecosystem.vtt
4.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/04. Identifying the Hard-skills.vtt
4.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/5. Demo - Imputation in Python.vtt
4.6 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/05. Measures of Variability.vtt
4.6 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/1. Module Overview.vtt
4.6 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/3. Univariate Techniques.vtt
4.6 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/07. Demo - NLTK Tokenizers.vtt
4.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/4. KPCA.vtt
4.5 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/3. Clip Values Demo.vtt
4.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/20. Demo - N-grams.vtt
4.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/7. Demo.vtt
4.5 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/10. Quantifying the Risks for the Data Science Project.vtt
4.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/4. How Statistical Tests Work.vtt
4.5 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/5. Distributed Training in AzureML.vtt
4.5 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/3. Demo - Split Data into Training and Test Set.vtt
4.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/02. Prerequisites.vtt
4.5 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/3. Outlier Detection and Imputation.vtt
4.4 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/4. Application Insights.vtt
4.4 kB
~i.txt
4.4 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/3. Continuous Deployment.vtt
4.4 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/7. High Quality Datasets.vtt
4.4 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/8. Handling Bad Data.vtt
4.4 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/6. SQL Data Sampling.vtt
4.4 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/4. Group Data into Bins Demo.vtt
4.4 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/2. KQL Schema Mapping for Data Ingestion.vtt
4.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/2. What Is Machine Learning.vtt
4.3 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/3. Creating a DSVM.vtt
4.3 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/3. Model Training Techniques.vtt
4.3 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/3. How k-means Works.vtt
4.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/10. Summary.vtt
4.2 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/5. Multiple Data Sets.vtt
4.2 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/3. Creating Azure Machine Learning.vtt
4.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/03. Demo - Common Scaling Approaches.vtt
4.1 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/2. Availability on Blob Storage.vtt
4.1 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/06. Modality and Skewness.vtt
4.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/1. Module Overview.vtt
4.0 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/01. Module Overview.vtt
4.0 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/2. Data Science Overview.vtt
4.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/6. Demo - Model Selection.vtt
3.9 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/4. Autoencoders.vtt
3.9 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/3. Long Term Planning.vtt
3.8 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/2. Preliminary Terminology.vtt
3.8 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/3. Unintended Bias and Interpretability.vtt
3.8 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/3. Azure Notebooks Demo.vtt
3.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/8. Demo - Exploring the Dataset.vtt
3.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/6. Outliers in Regression Models.vtt
3.8 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/6. Principal Component Analysis Demo.vtt
3.8 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/3. Fliter Based Feature Selection Demo.vtt
3.8 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/4. Dictionary Learning.vtt
3.8 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/4. Deploying Models.vtt
3.7 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/5. Model Evaluation.vtt
3.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/5. PCA Limitations.vtt
3.7 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/14. Demo - Stemming.vtt
3.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/7. Problem with High-dimensional Datasets.vtt
3.7 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/2. Detecting and Preventing Overfitting.vtt
3.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/02. Common Scaling Approaches.vtt
3.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/6. Demo.vtt
3.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/1. Introduction and Module Overview.vtt
3.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/6. Demo.vtt
3.6 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/playlist.m3u
3.6 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/2. Understanding the Kusto Query Language (KQL).vtt
3.6 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/1. Introduction.vtt
3.5 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/3. Introduction to Azure Machine Learning.vtt
3.5 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/09. Demo - Z-score.vtt
3.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/12. Locality-sensitive Hashing.vtt
3.5 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/8. Specialized Roles in Data Science.vtt
3.5 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/07. Managing Technical Metrics.vtt
3.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/5. Create ADX Cluster Using Command Line Interface.vtt
3.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/01. Module Overview.vtt
3.5 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/11. Entropy-based Discretization.vtt
3.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/3. Sources of Model Error.vtt
3.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/1. Introduction and Module Overview.vtt
3.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/08. Word Embeddings.vtt
3.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/10. Demo - Discretizing Data.vtt
3.4 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/1. Course Overview/1. Course Overview.vtt
3.4 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/7. Demo - Label Encoding and XGBoost.vtt
3.4 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/01. What Is Data Science.vtt
3.4 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/2. Microsofts Guiding Principles for Responsible AI.vtt
3.4 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/3. Demo - Azure Security, Privacy, and Compliance.vtt
3.3 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/21. Module Summary.vtt
3.3 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/5. Normalize Data Demo.vtt
3.3 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/6. Multivariate Techniques.vtt
3.3 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/06. Business Metrics Classifications.vtt
3.3 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/2. PCA.vtt
3.3 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/4. Model Training.vtt
3.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/2. Why Feature Engineering.vtt
3.2 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/01. Module Overview.vtt
3.2 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/5. Personally Identifiable Information (PII).vtt
3.2 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/6. Azure Open Datasets.vtt
3.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/07. Demo - Correcting Heteroscedasticity.vtt
3.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/7. Demo - Modifying the Metadata of Datasets.vtt
3.2 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/playlist.m3u
3.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/7. Demo - Creating an Azure Machine Learning Service Workspace.vtt
3.2 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/4. Training, Tracking, and Monitoring a Model/3. Setting up Run Object.vtt
3.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/03. Demo - Listwise Deletion.vtt
3.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/05. Demo - Data Cleaning (Outliers).vtt
3.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/7. Data Science Services and Tools in Azure.vtt
3.1 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/3. Creating and Using Feature Extraction Algorithms.vtt
3.1 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/05. Meet the Stereotypical Technical Players.vtt
3.1 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/04. Preprocessing and NLP.vtt
3.1 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/08. Data Science Project Risks.vtt
3.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/4. Azure Machine Learning Experiment Workflow.vtt
3.1 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/6. Correlation vs. Causation.vtt
3.1 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/4. The Complete Media Insights Solution.vtt
3.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/04. Problems in Deleting Rows.vtt
3.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/4. Data Scale Issues in Distance-based Models.vtt
3.0 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/2. A New Problem to Be Solved.vtt
3.0 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/7. Azure Open Datasets Demo.vtt
3.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/06. Replace with Mean, Median, and Mode.vtt
3.0 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/10. Summary.vtt
3.0 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/2. k-means Model Stacking.vtt
3.0 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/6. Demo - Label and One-hot Encoding.vtt
2.9 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/02. What Is the Project Motivation Factor.vtt
2.9 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/4. Build Better Models with Feature Engineering.vtt
2.9 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/6. Standardization and Normalization.vtt
2.9 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/2. Understanding Feature Normalization.vtt
2.9 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/5. Manifold Learning.vtt
2.9 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/3. Role of Feature Engineering in Model Complexity.vtt
2.9 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/18. Demo - Lemmatization.vtt
2.9 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/5. Multicollinearity Problem in Regression Models.vtt
2.9 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/07. Disadvantages of Single Imputation Methods.vtt
2.9 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/01. Module Overview.vtt
2.9 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/playlist.m3u
2.9 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/05. Demo - Bag-of-n-grams.vtt
2.9 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/playlist.m3u
2.9 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/8. Summary.vtt
2.9 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/2. The Use Case - Media Insights Solution.vtt
2.8 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/19. N-grams.vtt
2.8 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/04. Measures of Central Tendency.vtt
2.8 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/1. Course Overview/1. Course Overview.vtt
2.8 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/02. Is This Course for You.vtt
2.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/08. Demo - Reducing Data (Record Sampling).vtt
2.8 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/3. Data Ingestion in Azure.vtt
2.8 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/4. The Budget Barrier and Solution.vtt
2.8 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/6. Final Takeaway/1. Final Takeaway.vtt
2.7 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/5. Testing for Validity.vtt
2.7 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/6. The Format of the Data.vtt
2.7 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/07. Selecting the Right Stakeholders.vtt
2.7 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/06. Identify Your Stakeholders.vtt
2.7 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/06. TF-IDF Encoding.vtt
2.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/6. Feature Engineering Categorical Variables.vtt
2.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/04. Demo - Data Cleaning (Erroneous Data).vtt
2.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/playlist.m3u
2.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/4. Measuring and Detecting Problems Due to Feature Set Complexity.vtt
2.7 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/2. Understanding Feature Selection.vtt
2.7 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/1. Performing Feature Selection.vtt
2.7 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/3. The Key Valet Pattern.vtt
2.7 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/5. EventGrids Overview.vtt
2.6 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/05. Demo - Binning.vtt
2.6 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/2. Communicating Knowledge and Insights.vtt
2.6 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/10. Asking the Right Questions.vtt
2.6 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/2. Imbalanced Dataset for Classification Problems.vtt
2.5 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/3. Your New Data Broker.vtt
2.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/3. ADX Health and Performance Monitoring.vtt
2.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/5. Azure Data Explorer Features.vtt
2.5 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/03. Skills Recommended for This Course.vtt
2.5 kB
C2. Experimental Design for Data Analysis (Janani Ravi, 2019)/~i.txt
2.5 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/1. Course Overview/1. Course Overview.vtt
2.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/2. Managing ADX Database Permissions.vtt
2.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/1. Course Overview/1. Course Overview.vtt
2.5 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/1. Exploring Your Dataset for Feature Selection and Extraction.vtt
2.5 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/09. How MICE Works.vtt
2.5 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/08. Z-score.vtt
2.4 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/1. Course Overview/1. Course Overview.vtt
2.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/05. Demo - Using Indicator Variables.vtt
2.4 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/3. Azure Automated Machine Learning.vtt
2.4 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/6. Ethical and Legal Barriers to Data Use.vtt
2.4 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/6. Course Review.vtt
2.4 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/04. Binning.vtt
2.4 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/3. Building Features Around Text Data for Use in Machine Learning Models/16. Summary.vtt
2.4 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/3. Available Data Sources.vtt
2.4 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/4. Scaling the ADX Cluster.vtt
2.3 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/2. Setting the Stage/07. Kurtosis.vtt
2.3 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/09. Data Science Project Lifecycle.vtt
2.3 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/5. Demo - Interpreting the Experiment Results.vtt
2.3 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/08. Demo - Token Cleaning.vtt
2.3 kB
C1. Summarizing Data and Deducing Probabilities (Janani Ravi, 2021)/~i.txt
2.3 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/2. Determining Which Tools to Use/1. Introduction.vtt
2.3 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/4. Determining the Feature Structure Appropriate for the Algorithm.vtt
2.3 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/1. Introduction.vtt
2.3 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/~i.txt
2.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/2. Moving from Raw Data to Features.vtt
2.3 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/2. The Problem with the Internal Data.vtt
2.3 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/1. Module Overview.vtt
2.3 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/4. Problems with Categorical Data.vtt
2.3 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/7. Demo - Normalize and Standardize in Python.vtt
2.2 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/playlist.m3u
2.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/1. Overview.vtt
2.2 kB
B1. Representing, Processing, and Preparing Data (Janani Ravi, 2019)/~i.txt
2.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/2. Data Types in Statistics.vtt
2.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/3. Demo - SMOTE.vtt
2.2 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/1. Course Overview/1. Course Overview.vtt
2.2 kB
B4. Combining and Shaping Data (Janani Ravi, 2020)/~i.txt
2.2 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/3. Approaching Normalization and Standardization/8. Summary.vtt
2.2 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/playlist.m3u
2.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/5. Feature Engineering Numeric Variables.vtt
2.2 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/2. Feature Set Complexity.vtt
2.2 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/2. Encryption in Azure.vtt
2.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/1. Overview (1).vtt
2.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/1. Overview.vtt
2.2 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/1. Course Overview/1. Course Overview.vtt
2.2 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/7. The Big Ask.vtt
2.2 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/~i.txt
2.1 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/6. Summary.vtt
2.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/08. Demo - Replace with MICE.vtt
2.1 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/1. Course Overview/1. Course Overview.vtt
2.1 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/1. Course Overview/1. Course Overview.vtt
2.1 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/5. Exploratory Data Analysis Tools.vtt
2.1 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/5. t-SNE.vtt
2.1 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Identifying Potential Data Sources/1. Intro.vtt
2.1 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/13. Stemming.vtt
2.1 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/~i.txt
2.1 kB
C5. Communicating Data Insights (Janani Ravi, 2020)/~i.txt
2.1 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/14. Project Gap Analysis.vtt
2.1 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/1. Overview.vtt
2.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/1. Introduction.vtt
2.0 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/2. Exploring Computer Vision on Azure/6. Summary.vtt
2.0 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/3. Utilizing the SIFT and HOG Algorithms for Feature Detection/7. Summary.vtt
2.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/1. Course Overview/1. Course Overview.vtt
2.0 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/1. Course Overview/1. Course Overview.vtt
2.0 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/16. Demo - Parts-of-speech.vtt
2.0 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/12. Assessing Stakehoders Needs.vtt
2.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/06. Demo - Data Cleaning (Duplicate Rows).vtt
2.0 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/1. Course Overview/1. Course Overview.vtt
2.0 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/17. Lemmatization.vtt
2.0 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/6. Availability on Other Azure Services.vtt
2.0 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/~i.txt
2.0 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/1. Course Overview/1. Course Overview.vtt
2.0 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/4. Defining Normalization and Standardization Techniques/06. Heteroscedasticity.vtt
2.0 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/4. Using Principal Component Analysis to Reduce Numeric Feature Sets/7. Summary.vtt
2.0 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/6. Summary.vtt
1.9 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/1. What Is Feature Extraction.vtt
1.9 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/1. Introduction and Module Overview.vtt
1.9 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/6. Summary.vtt
1.9 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/1. Module Overview.vtt
1.9 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/~i.txt
1.9 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/4. Bring in the SME.vtt
1.9 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/1. Intro.vtt
1.9 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/1. Course Overview/1. Course Overview.vtt
1.9 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/~i.txt
1.9 kB
D3. Building, Training, and Validating Models in Microsoft Azure (Bismark Adomako, 2020)/~i.txt
1.9 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/~i.txt
1.8 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/5. Performing Feature Selection/7. Takeaway.vtt
1.8 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/5. Summary.vtt
1.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/5. Demo - Exploring Datasets for Different Problems.vtt
1.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/13. Accessing the Data.vtt
1.8 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/playlist.m3u
1.8 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/4. Leveraging Convolutional Neural Networks for Feature Extraction/6. Summary.vtt
1.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/17. Address and Capture Any Concerns.vtt
1.8 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/1. Module Overview.vtt
1.8 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/1. Course Overview/1. Course Overview.vtt
1.8 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/2. Reasons For Feature Elimination.vtt
1.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/7. Leave-one-out Cross Validation.vtt
1.8 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/6. Review.vtt
1.8 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/1. Intro.vtt
1.8 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/03. Hard-skills and Soft-skills.vtt
1.8 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/11. Frequency Filtering.vtt
1.8 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/7. Review.vtt
1.8 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/~i.txt
1.8 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/7. ADX Pricing.vtt
1.8 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/2. Evaluating Model Effectiveness/1. Overview.vtt
1.8 kB
C3. Interpreting Data with Statistical Models (Axel Sirota, 2020)/~i.txt
1.8 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/1. Introduction and Module Overview.vtt
1.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/02. Reasons Why Data Is Missing.vtt
1.7 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/~i.txt
1.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/6. How Algorithms Learn Models.vtt
1.7 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/~i.txt
1.7 kB
C4. Interpreting Data with Advanced Statistical Models (Axel Sirota, 2019)/~i.txt
1.7 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/01. Introduction.vtt
1.7 kB
E5. Building Features for Computer Vision in Microsoft Azure (David Tucker, 2020)/playlist.m3u
1.7 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/4. Azure SQL Datawarehouse Availability.vtt
1.7 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/18. Establishing Agreement to Proceed the Project Further.vtt
1.7 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/~i.txt
1.6 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/6. Managing Azure Data Explorer/8. Summary.vtt
1.6 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/~i.txt
1.6 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/~i.txt
1.6 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/8. Summary.vtt
1.6 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/4. Assessing Ethical and Legal Data Compliance/4. Module Summary.vtt
1.6 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/1. Performing Feature Normalization.vtt
1.6 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/1. Module Overview.vtt
1.6 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/1. Course Overview/1. Course Overview.vtt
1.6 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/5. Review.vtt
1.6 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/7. Summary.vtt
1.5 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/4. Recommending Next Steps Based on Available Data/1. Overview.vtt
1.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/09. Stopword Removal.vtt
1.5 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/6. Going beyond PCA to Reduce Complexity in Numeric Feature Sets/7. Summary.vtt
1.5 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/4. Using the New Development Environment/1. Overview.vtt
1.5 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/~i.txt
1.5 kB
E4. Building Features from Text Data in Microsoft Azure (Michael Heydt, 2019)/2. Processing and Simplifying Text to Simplify Feature Creation/15. Parts-of-speech Tagging.vtt
1.5 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/~i.txt
1.5 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/2. Performance Analytics.vtt
1.5 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/08. Get to Know Your Stakeholders.vtt
1.5 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/2. Reviewing Available Data with Stakeholders/1. Overview.vtt
1.5 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/~i.txt
1.5 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/~i.txt
1.5 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/4. EventHubs Overview.vtt
1.4 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/09. Managing the Initial Stakeholder Engagement.vtt
1.4 kB
E2. Building Features from Nominal and Numeric Data in Microsoft Azure (Mike West, 2019)/5. Leveraging Nominal Data in Machine Learning/5. One-hot Encoding.vtt
1.4 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/playlist.m3u
1.4 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/2. Exploring Your Dataset for Feature Selection and Extraction/6. Takeaway.vtt
1.4 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/7. Summary.vtt
1.4 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/8. Summary.vtt
1.4 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/1. Module Overview.vtt
1.4 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/01. Introduction.vtt
1.4 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/4. Available KQL Demo Platforms.vtt
1.4 kB
F1. Developing Models in Microsoft Azure (Saravanan Dhandapani, 2020)/playlist.m3u
1.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/8. Summary.vtt
1.3 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/1. Course Overview/1. Course Overview.vtt
1.3 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/2. Setting the Stage/9. Summary.vtt
1.3 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/playlist.m3u
1.3 kB
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/4. Performing Feature Normalization/8. Takeaway.vtt
1.3 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/3. Determining Data Availability/9. Module Summary.vtt
1.3 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/2. Understanding How Feature Set Complexity Impacts Model Quality/7. Summary.vtt
1.3 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/3. Differentiating Data, Features, Targets, and Models/1. Introduction.vtt
1.3 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/3. Setting up a Development Environment/1. Introduction.vtt
1.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/8. Summary.vtt
1.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/7. Split a Data Set into Training and Testing Subsets/8. Summary.vtt
1.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/9. Summary.vtt
1.2 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/9. Summary.vtt
1.2 kB
A2. Understanding Ethical, Legal, and Security Issues in Data Science (Emilio Melo, 2020)/2. Authentication and Authorization Methods/6. Module Summary.vtt
1.2 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/3. Applying Criteria-based Feature Reduction Techniques/8. Summary.vtt
1.2 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/5. Reviewing Results with Stakeholders/1. Module Overview.vtt
1.2 kB
A3. Communicating Expectations to the Business (Benjamin Culbertson, 2019)/3. Communicating Barriers to Data Access to Stakeholders/1. Overview.vtt
1.2 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/3. Schema Mapping in KQL.vtt
1.2 kB
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/3. Improving Model Performance/1. Overview.vtt
1.1 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/4. Using the Kusto Query Language (KQL)/9. Summary.vtt
1.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/8. Identify Data-level Issues In Machine Learning Models/1. Introduction.vtt
1.1 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Extracting and Loading Data into an Azure Workflow/1. Intro.vtt
1.1 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/6. Role of Feature Engineering in Machine Learning/1. Introduction.vtt
1.1 kB
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/playlist.m3u
1.1 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/2. Azure Data Explorer (ADX) Overview/8. Summary.vtt
1.1 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/11. Capturing Stakeholders Needs.vtt
1.1 kB
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/4. Model Evaluation and Summarizing Results/7. Summary.vtt
1.0 kB
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/1. Module Overview.vtt
1.0 kB
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/01. Access the Need of the Project to the Business.vtt
1.0 kB
E6. Reducing Complexity in Data in Microsoft Azure (Steph Locke, 2019)/5. Processing Categorical or Text Feature Sets/7. Summary.vtt
1.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/13. Summary.vtt
1.0 kB
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/2. Transforming Data into Usable Datasets/9. Review.vtt
1.0 kB
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/09. Demo - Reducing Data (Attribute Sampling).vtt
1.0 kB
B2. Sourcing Data in Microsoft Azure (Jared Rhodes, 2019)/playlist.m3u
1.0 kB
D1. Building Your First Data Science Project in Microsoft Azure (Jared Rhodes, 2020)/playlist.m3u
997 Bytes
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/5. Handling Missing Data/10. Summary.vtt
985 Bytes
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/3. Building the ADX Environment/7. Summary.vtt
984 Bytes
D2. Exploring Data in Microsoft Azure Using Kusto Query Language and Azure Data Explorer (Neeraj Kumar, 2019)/5. Data Ingestion for ADX/1. Module Overview.vtt
969 Bytes
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/3. Wrangling Data/1. Intro.vtt
913 Bytes
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/04. External vs. Internal Facing Project Scope.vtt
878 Bytes
E3. Feature Selection and Extraction in Microsoft Azure (Xavier Morera, 2019)/3. Performing Feature Extraction/6. Takeaway.vtt
853 Bytes
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/02. High Risk Data Science Project Scope.vtt
836 Bytes
B3. Cleaning and Preparing Data in Microsoft Azure (Jared Rhodes, 2019)/playlist.m3u
820 Bytes
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/12. Demo - Entropy-based Discretization.vtt
818 Bytes
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/3. Quantifying the Business Problem/03. Low Risk Data Science Project Scope.vtt
807 Bytes
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/15. Present the Proposal.vtt
801 Bytes
F4. Communicating Insights from Microsoft Azure to the Business (Neeraj Kumar, 2020)/3. Working with Azure Databricks/8. Summary.vtt
791 Bytes
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/1. Intro.vtt
790 Bytes
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/2. Getting Started with Azure Machine Learning/5. Prerequisites.vtt
779 Bytes
A1. Analyzing Business Requirements for Data Science (Paul Foran, 2019)/2. Determining if Data Science Is an Appropriate Fit for the Organization/16. Accessing the Teams Reaction.vtt
737 Bytes
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/2. Deploying a Machine Learning Model/6. Review.vtt
705 Bytes
F2. Evaluating Model Effectiveness in Microsoft Azure (Tim Warner, 2019)/4. Assessing Model Explainability/1. Overview.vtt
671 Bytes
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/4. Managing a Models Lifecycle/1. Intro.vtt
662 Bytes
E1. Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure (Ravikiran Srinivasulu, 2019)/4. Preparing Input Data for Machine Learning Models/02. Data Preprocessing Methods.vtt
658 Bytes
F3. Deploying and Managing Models in Microsoft Azure (Jared Rhodes, 2020)/3. Using Continuous Integration and Continuous Deployment/5. Review.vtt
533 Bytes
随机展示
相关说明
本站不存储任何资源内容,只收集BT种子元数据(例如文件名和文件大小)和磁力链接(BT种子标识符),并提供查询服务,是一个完全合法的搜索引擎系统。 网站不提供种子下载服务,用户可以通过第三方链接或磁力链接获取到相关的种子资源。本站也不对BT种子真实性及合法性负责,请用户注意甄别!
>