搜索
Pluralsight Path. Feature Engineering (2019)
磁力链接/BT种子名称
Pluralsight Path. Feature Engineering (2019)
磁力链接/BT种子简介
种子哈希:
f630a93fef9bd339385ce447103663645a90c289
文件大小:
2.02G
已经下载:
4962
次
下载速度:
极快
收录时间:
2024-01-02
最近下载:
2025-07-03
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:F630A93FEF9BD339385CE447103663645A90C289
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
哆哔涩漫
呦乐园
萝莉岛
最近搜索
娇娇嗲嗲
推特萬粉綠帽的調
狗爬式
凌
无码镜
完全顔出
羡慕
在家里
倒模
臼井さと
网袜 外围
翻录
枪推
偷拍 校花
在校生
小和
视界
星野源
巨作
结果
痕
推特小西西
真实强
italo
传媒娜
水稀美里无码
推流出
狗链爬行
插晕
桜
文件列表
C2. Building Features from Image Data (Janani Ravi, 2019)/exercise.7z
214.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/exercise.7z
42.8 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/exercise.7z
28.0 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/exercise.7z
22.2 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/10. Working with Geospatial Features.mp4
18.8 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/5. Feature Detection Using Convolution Kernels.mp4
18.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/03. Classification Using the Hashing Vectorizer.mp4
17.4 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/06. Feature Detection and Extraction Using SIFT.mp4
17.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/7. Reading and Exploring the Dataset.mp4
17.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/6. Similar Documents Using Jaccard Index and Locality-sensitive Hashing.mp4
16.8 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/04. Applying Keypoint Preserving Transformations.mp4
16.7 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/07. Regression Using Helmert Encoding.mp4
16.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/5. Bag-of-n-grams Using the Count Vectorizer.mp4
15.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/08. Extracting Text from Images Using OCR.mp4
15.6 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/3. Stopword Removal Using NLTK and scikit-learn.mp4
15.4 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/07. Detecting Keypoints and Descriptors to Perform Image Matching.mp4
15.2 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/06. Calculating and Visualizing Correlations Using Pandas.mp4
15.1 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/08. Feature Detection Using Histogram of Oriented Gradients.mp4
15.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/3. Bag-of-words Using the Count Vectorizer.mp4
14.8 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/10. Sentence and Word Tokenization.mp4
14.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/5. Applying Different Techniques to Handle Missing Values.mp4
14.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/06. Regression Using Backward Difference Encoding.mp4
14.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/7. Demo - Performing Kernel PCA to Reduce Complexity in Nonlinear Data.mp4
14.3 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/7. Parts-of-speech Tagging.mp4
14.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/04. Creating Feature Vectors from Text Data.mp4
14.1 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/08. Feature Selection Using Filter Methods.mp4
14.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/4. Reducing Dimensions at Scale Using the Hashing Vectorizer.mp4
13.9 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/4. Categorizing Continuous Data Using the KBinsDiscretizer.mp4
13.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/6. Dummy Coding Using Patsy.mp4
13.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/6. Detecting and Handling Outliers.mp4
13.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/04. Demo - Selecting Features Using a Variance Threshold.mp4
13.5 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/09. Feature Selection Using Wrapper Methods.mp4
13.4 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/13. Label Encoding to Convert Categorical Data to Ordinal.mp4
13.3 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/05. Performing Linear Regression Using Machine Learning with Simple Effect Coding.mp4
13.2 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/05. Loading and Transforming Images.mp4
12.8 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/12. Normalization and ZCA Whitening.mp4
12.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/06. Working with Images as Arrays.mp4
12.7 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/5. Regression Analysis with Dummy or Treatment Coding.mp4
12.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/09. Demo - The Diabetes Dataset - Exploration.mp4
12.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/07. Demo - Calculating Mean, Variance, and Standard Deviation.mp4
12.5 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/04. Regression Analysis Using Simple Effect Coding.mp4
12.4 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/11. Plotting Word Frequency Distributions.mp4
12.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/03. Performing Normalization Using Different Techniques.mp4
12.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/5. Autoencoding.mp4
12.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/5. Stemming.mp4
12.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/4. Demo - Cosine Similarity and the L2 Norm.mp4
12.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/13. Demo - Scaling Data Using the Robust Scaler.mp4
11.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/4. Dummy Coding to Overcome Limitations of One-hot Encoding.mp4
11.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/09. Resizing, Rescaling, Rotating, and Flipping Images.mp4
11.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/11. Denoising Images.mp4
11.6 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/3. Sparse Representations Using Dictionary Learning.mp4
11.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/10. One-hot Encoding with Known and Unknown Categories.mp4
11.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/05. Feature Selection Using Missing Value Ratio.mp4
11.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/10. Demo - Dictionary Learning on Handwritten Digits.mp4
11.2 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/08. Working with Color and Color Spaces.mp4
11.2 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/7. Reading and Preprocessing Images.mp4
11.1 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/08. Generating Equally Spaced Categories to Perform Orthogonal Polynomial Encoding.mp4
11.0 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/09. Optical Character Recognition Using Tesseract.mp4
11.0 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/8. Demo - Performing Linear Discriminant Analysis to Reorient Data.mp4
11.0 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/09. Extracting Features from Dates.mp4
11.0 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/12. Demo - Kitchen Sink Regression to Establish a Baseline Model.mp4
10.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/2. Understanding Principal Components Analysis.mp4
10.9 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/07. Feature Selection, Feature Learning, and Feature Extraction.mp4
10.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/6. Demo - Applying Factor Analysis to Reduce Dimensionality.mp4
10.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/12. Demo - Using Polynomial Features to Transform Data.mp4
10.7 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/3. Demo - Generate Manifold and Set up Helper Functions.mp4
10.7 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/10. Feature Selection Using Embedded Methods.mp4
10.7 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/3. Normalization and Cosine Similarity.mp4
10.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/08. Demo - Box Plot Visualization and Data Standardization.mp4
10.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/7. Demo - Using Autoencoders to Learn Efficient Representations of Data.mp4
10.4 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/05. Overfitting and the Bias-variance Trade-off.mp4
10.2 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/7. Bag-of-words Using the Tf-Idf Vectorizer.mp4
10.0 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/8. Designing and Training an Autoencoder.mp4
10.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/6. Demo - K-means Clustering with Cosine Similarity.mp4
9.7 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/04. Features and Labels.mp4
9.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/02. Tokenization and Visualizing Frequency Distributions.mp4
9.2 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/8. Perform Simple and Multiple Linear Regression.mp4
9.1 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/04. Demo - Using the KBinsDiscretizer to Categorize Numeric Values.mp4
9.1 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/04. Representing Images for Machine Learning.mp4
8.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/07. Pre-processing with Stopword Removal, Frequency Filtering, Building Features U.mp4
8.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/04. The Curse of Dimensionality.mp4
8.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/10. Demo - Standardize Data Using the Scale Function.mp4
8.8 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/6. Demo - Prepare Image Data to Feed an Autoencoder.mp4
8.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/8. Demo - Normalization Using L1, L2 and Max Norms.mp4
8.8 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/03. Prerequisites and Course Outline.mp4
8.8 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/03. Key Points and Descriptors.mp4
8.7 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/14. Label Binarizer to Perform One vs. Rest Encoding of Targets.mp4
8.7 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/14. Demo - Working with Chi Squared Distributed Input Features.mp4
8.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/05. Image Preprocessing to Build Robust Models.mp4
8.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/2. Understanding Manifold Learning.mp4
8.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/4. Dealing with Outliers.mp4
8.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/03. Demo - Convert Numeric Data to Binary Categories Using a Binarizer.mp4
8.5 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/2. Natural Language Processing Operations.mp4
8.5 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/04. Understanding Feature Selection Using Filter, Embedded, and Wrappe.mp4
8.5 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/6. Lemmatization.mp4
8.4 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/06. Extracting Features from Images.mp4
8.4 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/4. Feature Extraction from Text.mp4
8.4 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/09. Training, Validation, and Test Data.mp4
8.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/4. Demo - Manifold Learning Using Multidimensional Scaling and Spectral Embedding.mp4
8.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/11. Demo - The Boston Housing Prices Dataset - Exploration.mp4
8.3 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/5. Locality-sensitive Hashing.mp4
8.2 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/04. Pre-process Text Using a Stemmer, Build Features Using the Hashing Vectorizer.mp4
8.2 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/2. The Dummy Trap.mp4
8.2 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/6. Autoencoders.mp4
8.2 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/06. Demo - Setting up Helper Functions for Feature Selection.mp4
8.1 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/7. Perform Regression Analysis Using Machine Learning on Dummy Coded Categories.mp4
8.1 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/3. Feature Detection and Extraction from Images.mp4
8.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/3. Reducing Dimensions Using the Feature Hasher.mp4
8.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/08. Word Embeddings.mp4
8.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/5. Demo - Normalizing Data to Simplify Cosine Similarity Calculations.mp4
7.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/7. Building a Simple Regression Model Using Hashed Categorical Values.mp4
7.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/3. Avoiding the Dummy Trap.mp4
7.8 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/07. Co-occurence Vectors.mp4
7.7 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/4. Inverse Transform Using the Count Vectorizer.mp4
7.7 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/6. Generating N-grams Using NLTK.mp4
7.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/09. Types of Classification Tasks.mp4
7.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/05. Numeric Data.mp4
7.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/3. Demo - Classifying Image with Original Features.mp4
7.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/4. Demo - Building Linear Models Using Principal Components.mp4
7.5 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/07. Representing Pixels in Images.mp4
7.4 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/03. Exploring Contrast Coding Techniques.mp4
7.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/15. Demo - Applying Power Transformers to Get Normal Distributions.mp4
7.4 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/10. Block Views and Pooling.mp4
7.4 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/05. Demo - Selecting K Best Features Using Chi2 Analysis.mp4
7.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/03. Conceptual Overview of Different Feature Selection Techniques.mp4
7.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/10. K-fold Cross Validation.mp4
7.2 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/4. Frequency Filtering Using scikit-learn.mp4
7.2 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/07. Calculating and Visualizing Correlations Using Yellowbrick.mp4
7.1 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/08. Choosing between Label Encoding and One-hot Encoding.mp4
7.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/6. Demo - Manifold Learning Using Locally Linear Embedding.mp4
7.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/07. Choosing the Right Technique.mp4
7.1 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/4. Convolution Kernels.mp4
7.0 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/05. Scale Invariant Feature Transform (SIFT), DAISY, and Histogram of Oriented Gradients (HOG).mp4
7.0 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/02. Types of Data.mp4
7.0 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/2. Representing Images as Matrices and Image Preprocessing Techniques.mp4
7.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/04. Continuous and Categorical Data.mp4
6.9 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/2. Problems with Data.mp4
6.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/04. One-hot Encoding.mp4
6.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/4. Demo - Transforming Data Using K-means Cluster Centers.mp4
6.9 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/02. Dummy Coding vs. Contrast Coding.mp4
6.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/6. Feature Hashing with Dictionaries, Tuples, and Text Data.mp4
6.7 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/3. Dealing with Missing Values.mp4
6.7 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/05. The Machine Learning Workflow.mp4
6.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/11. Demo - Standardize Data Using the Standard Scalar Estimator and Apply Bessels Correction.mp4
6.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/17. Demo - Tranforming to a Normal Distribution Using the QuantileTransformer.mp4
6.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/03. Measuring Correlations.mp4
6.6 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/13. Image Augmentation Using Weather Transforms.mp4
6.5 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/09. Demo - Select Features Using Percentiles and Mutual Information Analysis.mp4
6.5 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/09. Installing Packages and Setting Up the Environment.mp4
6.5 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/3. Demo - Performing PCA to Reduce Dimensionality.mp4
6.5 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/05. Building Features Using the Count Vectorizer.mp4
6.3 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/08. Feature Combination and Dimensionality Reduction.mp4
6.1 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/8. Performing Linear Regression Using Machine Learning with One-hot Encoded Categories.mp4
6.0 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/02. Feature Detection and Its Importance.mp4
6.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/09. Building Features Using Bag-of-n-grams Model.mp4
5.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/5. Demo - Manifold Learning Using t-SNE and Isomap.mp4
5.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/09. Performing Regression Analysis Using Orthogonal Polynomial Encoding.mp4
5.7 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/08. Demo - Find the Right Value for K Using ANOVA.mp4
5.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/11. One-hot Encoding on a Pandas Data Frame Column.mp4
5.5 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/07. Label Encoding and One-hot Encoding.mp4
5.5 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/06. Pre-processing with Stopword Removal, Building Features Using Count Vectorizer.mp4
5.4 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/06. Categorical Data.mp4
5.4 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/07. Demo - Find the Right Value for K Using Chi2 Analysis.mp4
5.3 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/09. Standard Scaler.mp4
5.3 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/06. Techniques to Reduce Complexity.mp4
5.2 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/07. Feature Detection Using DAISY Descriptors.mp4
5.2 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/5. Hashing.mp4
5.2 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/3. Bucketing Continuous Data Using Pandas.mp4
5.1 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/04. Scaling and Standardization.mp4
5.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/02. Statistical Techniques for Feature Selection.mp4
5.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/05. Demo - Using Bin Values to Flag Outliers.mp4
5.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/08. Demo - Scaling with the MinMaxScaler.mp4
5.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/15. Multilabel Binarizer for Encoding Multilabel Targets.mp4
5.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/06. Understanding Variance.mp4
5.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/2. Bucketing Continuous Data.mp4
4.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/08. Building Features Using the Tf-Idf Vectorizer.mp4
4.9 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/12. Robust Scaler.mp4
4.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/10. Demo - Performing Custom Transforms Using the FunctionTransformer.mp4
4.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/05. Mean, Variance, and Standard Deviation.mp4
4.8 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/2. K-means Model Stacking.mp4
4.6 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/05. Count Vectors.mp4
4.6 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/2. Bag-of-words and Bag-of-n-grams.mp4
4.4 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/10. Demo - Establishing a Baseline Model.mp4
4.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/06. Tf-Idf Vectors.mp4
4.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
4.0 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
3.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/1. Module Overview.mp4
3.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/02. Naive Bayes for Classification.mp4
3.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/5. Understanding Factor Analysis.mp4
3.8 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/2. Feature Hashing.mp4
3.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/06. Components of Feature Engineering.mp4
3.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/2. Dictionary Learning.mp4
3.6 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
3.6 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
3.6 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/7. Understanding Linear Discriminant Analysis.mp4
3.5 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
3.5 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/07. Demo - Scaling with the MaxAbsScaler.mp4
3.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/02. Converting Continuous Data to Categorical.mp4
3.4 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.mp4
3.0 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/8. Summary and Further Study.mp4
3.0 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/1. Module Overview.mp4
2.9 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/7. L1, L2 and Max Norms.mp4
2.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/11. Generating Polynomial Features.mp4
2.7 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/18. Summary and Further Study.mp4
2.6 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/1. Module Overview.mp4
2.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/03. Prerequisites and Course Outline.mp4
2.5 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/1. Module Overview.mp4
2.5 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/11. Summary and Further Study.mp4
2.5 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/1. Module Overview.mp4
2.4 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/13. Summary.mp4
2.4 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/10. Summary and Further Study.mp4
2.3 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/12. One-hot Encoding Using pd.get_dummies().mp4
2.2 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/02. Module Overview.mp4
2.2 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/03. Prerequisites and Course Outline.mp4
2.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/11. Summary.mp4
2.1 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/01. Module Overview.mp4
2.1 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/1. Module Overview.mp4
2.1 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/8. Summary and Further Study.mp4
2.1 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/1. Module Overview.mp4
2.1 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/1. Module Overview.mp4
2.1 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/11. Module Summary.mp4
2.1 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/2. What Is Normalization.mp4
2.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/02. Module Overview.mp4
2.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/10. Module Summary.mp4
2.0 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/9. Summary and Further Study.mp4
2.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/12. Module Summary.mp4
2.0 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/exercise.7z
2.0 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/7. Module Summary.mp4
1.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/8. Module Summary.mp4
1.9 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/16. Module Summary.mp4
1.9 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/03. Prerequisites and Course Outline.mp4
1.9 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/08. Drawbacks of Reducing Complexity.mp4
1.9 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/06. Scaling Data.mp4
1.9 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/02. Module Overview.mp4
1.9 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/14. Summary.mp4
1.8 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/13. Transforming Features to Gaussian-like Distributions Using Power Transformers.mp4
1.8 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/8. Module Summary.mp4
1.8 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/1. Module Overview.mp4
1.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/02. Module Overview.mp4
1.8 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/10. Module Summary.mp4
1.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/01. Module Overview.mp4
1.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/5. Module Summary.mp4
1.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/9. Module Summary.mp4
1.8 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/11. Module Summary.mp4
1.8 MB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/01. Module Overview.mp4
1.7 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/8. Summary.mp4
1.7 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/02. Module Overview.mp4
1.7 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/1. Module Overview.mp4
1.7 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/1. Module Overview.mp4
1.7 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/03. Prerequisites and Course Outline.mp4
1.7 MB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/01. Module Overview.mp4
1.7 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/01. Module Overview.mp4
1.6 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/14. Module Summary.mp4
1.6 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/01. Module Overview.mp4
1.6 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/01. Module Overview.mp4
1.6 MB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/9. Module Summary.mp4
1.5 MB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/03. Prerequisites and Course Outline.mp4
1.5 MB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/9. Summary.mp4
1.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/9. Summary.mp4
1.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/16. Transforming Data to Normal or Uniform Distributions Using Quantile Transformers.mp4
1.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/exercise.7z
1.4 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/02. Module Overview.mp4
1.3 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/1. Module Overview.mp4
1.0 MB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/09. Custom Transformations.mp4
670.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/01. Version Check.mp4
636.5 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/01. Version Check.mp4
576.9 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/01. Version Check.mp4
576.3 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/01. Version Check.mp4
566.8 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/01. Version Check.mp4
566.4 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/01. Version Check.mp4
559.4 kB
scr 2022-10.png
160.4 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/7. Reading and Exploring the Dataset.vtt
12.3 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/07. Regression Using Helmert Encoding.vtt
11.6 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/5. Applying Different Techniques to Handle Missing Values.vtt
11.6 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/5. Feature Detection Using Convolution Kernels.vtt
11.5 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/03. Classification Using the Hashing Vectorizer.vtt
11.5 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/04. Demo - Selecting Features Using a Variance Threshold.vtt
11.4 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/3. Normalization and Cosine Similarity.vtt
11.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/07. Feature Selection, Feature Learning, and Feature Extraction.vtt
11.1 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/05. Overfitting and the Bias-variance Trade-off.vtt
11.0 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/07. Demo - Calculating Mean, Variance, and Standard Deviation.vtt
11.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/2. Understanding Principal Components Analysis.vtt
11.0 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/13. Demo - Scaling Data Using the Robust Scaler.vtt
10.9 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/6. Detecting and Handling Outliers.vtt
10.7 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/4. Dummy Coding to Overcome Limitations of One-hot Encoding.vtt
10.6 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/4. Demo - Cosine Similarity and the L2 Norm.vtt
10.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/5. Autoencoding.vtt
10.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/6. Similar Documents Using Jaccard Index and Locality-sensitive Hashing.vtt
10.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/09. Demo - The Diabetes Dataset - Exploration.vtt
10.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/7. Demo - Performing Kernel PCA to Reduce Complexity in Nonlinear Data.vtt
10.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/06. Feature Detection and Extraction Using SIFT.vtt
10.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/3. Stopword Removal Using NLTK and scikit-learn.vtt
10.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/10. Working with Geospatial Features.vtt
10.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/04. Features and Labels.vtt
10.1 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/08. Demo - Box Plot Visualization and Data Standardization.vtt
10.0 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/3. Bag-of-words Using the Count Vectorizer.vtt
10.0 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/06. Regression Using Backward Difference Encoding.vtt
9.7 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/06. Calculating and Visualizing Correlations Using Pandas.vtt
9.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/10. Demo - Dictionary Learning on Handwritten Digits.vtt
9.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/03. Prerequisites and Course Outline.vtt
9.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/5. Regression Analysis with Dummy or Treatment Coding.vtt
9.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/13. Label Encoding to Convert Categorical Data to Ordinal.vtt
9.5 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/08. Feature Selection Using Filter Methods.vtt
9.5 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/04. Creating Feature Vectors from Text Data.vtt
9.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/04. The Curse of Dimensionality.vtt
9.4 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/4. Reducing Dimensions at Scale Using the Hashing Vectorizer.vtt
9.4 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/4. Feature Extraction from Text.vtt
9.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/12. Normalization and ZCA Whitening.vtt
9.3 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/4. Categorizing Continuous Data Using the KBinsDiscretizer.vtt
9.3 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/6. Dummy Coding Using Patsy.vtt
9.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/03. Key Points and Descriptors.vtt
9.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/04. Applying Keypoint Preserving Transformations.vtt
9.2 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/04. Regression Analysis Using Simple Effect Coding.vtt
9.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/09. Feature Selection Using Wrapper Methods.vtt
9.1 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/05. Performing Linear Regression Using Machine Learning with Simple Effect Coding.vtt
9.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/04. Understanding Feature Selection Using Filter, Embedded, and Wrappe.vtt
9.0 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/08. Feature Detection Using Histogram of Oriented Gradients.vtt
9.0 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/7. Parts-of-speech Tagging.vtt
8.9 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/4. Dealing with Outliers.vtt
8.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/8. Demo - Performing Linear Discriminant Analysis to Reorient Data.vtt
8.9 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/12. Demo - Using Polynomial Features to Transform Data.vtt
8.8 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/5. Stemming.vtt
8.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/2. Natural Language Processing Operations.vtt
8.7 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/09. Training, Validation, and Test Data.vtt
8.7 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/05. Image Preprocessing to Build Robust Models.vtt
8.6 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/09. Optical Character Recognition Using Tesseract.vtt
8.5 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/3. Demo - Generate Manifold and Set up Helper Functions.vtt
8.5 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/6. Demo - Applying Factor Analysis to Reduce Dimensionality.vtt
8.5 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/3. Sparse Representations Using Dictionary Learning.vtt
8.5 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/10. Demo - Standardize Data Using the Scale Function.vtt
8.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/12. Demo - Kitchen Sink Regression to Establish a Baseline Model.vtt
8.4 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/04. Demo - Using the KBinsDiscretizer to Categorize Numeric Values.vtt
8.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/7. Demo - Using Autoencoders to Learn Efficient Representations of Data.vtt
8.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/05. Feature Selection Using Missing Value Ratio.vtt
8.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/3. Feature Detection and Extraction from Images.vtt
8.2 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/5. Locality-sensitive Hashing.vtt
8.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/03. Demo - Convert Numeric Data to Binary Categories Using a Binarizer.vtt
8.1 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/10. Sentence and Word Tokenization.vtt
8.1 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/8. Demo - Normalization Using L1, L2 and Max Norms.vtt
8.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/10. Feature Selection Using Embedded Methods.vtt
8.0 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/5. Bag-of-n-grams Using the Count Vectorizer.vtt
8.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/03. Performing Normalization Using Different Techniques.vtt
8.0 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/08. Word Embeddings.vtt
7.9 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/05. Loading and Transforming Images.vtt
7.9 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/10. One-hot Encoding with Known and Unknown Categories.vtt
7.8 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/2. The Dummy Trap.vtt
7.8 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/3. Dealing with Missing Values.vtt
7.6 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/6. Autoencoders.vtt
7.6 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/09. Resizing, Rescaling, Rotating, and Flipping Images.vtt
7.6 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/07. Co-occurence Vectors.vtt
7.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/2. Understanding Manifold Learning.vtt
7.5 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/07. Detecting Keypoints and Descriptors to Perform Image Matching.vtt
7.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/05. Numeric Data.vtt
7.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/08. Generating Equally Spaced Categories to Perform Orthogonal Polynomial Encoding.vtt
7.5 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/05. Scale Invariant Feature Transform (SIFT), DAISY, and Histogram of Oriented Gradients (HOG).vtt
7.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/03. Conceptual Overview of Different Feature Selection Techniques.vtt
7.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/04. Representing Images for Machine Learning.vtt
7.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/2. Representing Images as Matrices and Image Preprocessing Techniques.vtt
7.2 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/06. Demo - Setting up Helper Functions for Feature Selection.vtt
7.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/8. Perform Simple and Multiple Linear Regression.vtt
7.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/03. Measuring Correlations.vtt
7.1 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/11. Denoising Images.vtt
7.1 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/06. Working with Images as Arrays.vtt
7.1 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/07. Choosing the Right Technique.vtt
7.0 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/7. Reading and Preprocessing Images.vtt
7.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/6. Demo - Prepare Image Data to Feed an Autoencoder.vtt
7.0 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/09. Types of Classification Tasks.vtt
6.9 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/02. Types of Data.vtt
6.9 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/14. Demo - Working with Chi Squared Distributed Input Features.vtt
6.8 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/04. One-hot Encoding.vtt
6.8 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/09. Extracting Features from Dates.vtt
6.8 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/8. Designing and Training an Autoencoder.vtt
6.7 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/08. Working with Color and Color Spaces.vtt
6.6 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/5. Demo - Normalizing Data to Simplify Cosine Similarity Calculations.vtt
6.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/3. Demo - Classifying Image with Original Features.vtt
6.6 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/05. The Machine Learning Workflow.vtt
6.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/3. Avoiding the Dummy Trap.vtt
6.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/08. Choosing between Label Encoding and One-hot Encoding.vtt
6.5 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/05. Demo - Selecting K Best Features Using Chi2 Analysis.vtt
6.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/03. Exploring Contrast Coding Techniques.vtt
6.4 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/04. Continuous and Categorical Data.vtt
6.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/08. Feature Combination and Dimensionality Reduction.vtt
6.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/4. Convolution Kernels.vtt
6.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/7. Bag-of-words Using the Tf-Idf Vectorizer.vtt
6.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/2. Problems with Data.vtt
6.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/10. K-fold Cross Validation.vtt
6.2 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/02. Statistical Techniques for Feature Selection.vtt
6.2 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/02. Feature Detection and Its Importance.vtt
6.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/04. Scaling and Standardization.vtt
6.1 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/4. Demo - Manifold Learning Using Multidimensional Scaling and Spectral Embedding.vtt
6.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/02. Tokenization and Visualizing Frequency Distributions.vtt
6.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/4. Demo - Building Linear Models Using Principal Components.vtt
6.0 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/05. Mean, Variance, and Standard Deviation.vtt
6.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/3. Demo - Performing PCA to Reduce Dimensionality.vtt
6.0 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/14. Label Binarizer to Perform One vs. Rest Encoding of Targets.vtt
5.9 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/02. Dummy Coding vs. Contrast Coding.vtt
5.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/11. Plotting Word Frequency Distributions.vtt
5.9 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/17. Demo - Tranforming to a Normal Distribution Using the QuantileTransformer.vtt
5.8 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/08. Extracting Text from Images Using OCR.vtt
5.8 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/11. Demo - Standardize Data Using the Standard Scalar Estimator and Apply Bessels Correction.vtt
5.7 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/09. Standard Scaler.vtt
5.7 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/15. Demo - Applying Power Transformers to Get Normal Distributions.vtt
5.7 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/06. Techniques to Reduce Complexity.vtt
5.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/3. Reducing Dimensions Using the Feature Hasher.vtt
5.7 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/6. Demo - K-means Clustering with Cosine Similarity.vtt
5.6 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/12. Robust Scaler.vtt
5.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/11. Demo - The Boston Housing Prices Dataset - Exploration.vtt
5.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/07. Label Encoding and One-hot Encoding.vtt
5.4 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/06. Categorical Data.vtt
5.4 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/2. Bucketing Continuous Data.vtt
5.3 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/06. Extracting Features from Images.vtt
5.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/4. Demo - Transforming Data Using K-means Cluster Centers.vtt
5.3 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/7. Perform Regression Analysis Using Machine Learning on Dummy Coded Categories.vtt
5.2 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/07. Pre-processing with Stopword Removal, Frequency Filtering, Building Features U.vtt
5.2 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/6. Lemmatization.vtt
5.1 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/06. Understanding Variance.vtt
5.0 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/7. Building a Simple Regression Model Using Hashed Categorical Values.vtt
5.0 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/10. Block Views and Pooling.vtt
5.0 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/07. Representing Pixels in Images.vtt
5.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/09. Demo - Select Features Using Percentiles and Mutual Information Analysis.vtt
4.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/playlist.m3u
4.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/6. Generating N-grams Using NLTK.vtt
4.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/09. Installing Packages and Setting Up the Environment.vtt
4.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/07. Demo - Find the Right Value for K Using Chi2 Analysis.vtt
4.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/5. Hashing.vtt
4.6 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/10. Demo - Performing Custom Transforms Using the FunctionTransformer.vtt
4.6 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/05. Count Vectors.vtt
4.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/08. Demo - Find the Right Value for K Using ANOVA.vtt
4.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/6. Feature Hashing with Dictionaries, Tuples, and Text Data.vtt
4.5 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/playlist.m3u
4.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/5. Demo - Manifold Learning Using t-SNE and Isomap.vtt
4.4 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/07. Calculating and Visualizing Correlations Using Yellowbrick.vtt
4.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/04. Pre-process Text Using a Stemmer, Build Features Using the Hashing Vectorizer.vtt
4.3 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/playlist.m3u
4.3 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/6. Demo - Manifold Learning Using Locally Linear Embedding.vtt
4.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/02. Naive Bayes for Classification.vtt
4.3 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/08. Demo - Scaling with the MinMaxScaler.vtt
4.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/2. Bag-of-words and Bag-of-n-grams.vtt
4.3 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/05. Demo - Using Bin Values to Flag Outliers.vtt
4.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/4. Frequency Filtering Using scikit-learn.vtt
4.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/playlist.m3u
4.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/playlist.m3u
4.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/06. Components of Feature Engineering.vtt
4.1 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/8. Performing Linear Regression Using Machine Learning with One-hot Encoded Categories.vtt
4.1 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/06. Tf-Idf Vectors.vtt
4.0 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/7. L1, L2 and Max Norms.vtt
3.9 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/02. Converting Continuous Data to Categorical.vtt
3.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/1. Module Overview.vtt
3.9 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/3. Bucketing Continuous Data Using Pandas.vtt
3.8 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/2. K-means Model Stacking.vtt
3.7 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/11. One-hot Encoding on a Pandas Data Frame Column.vtt
3.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/2. Feature Hashing.vtt
3.7 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/10. Demo - Establishing a Baseline Model.vtt
3.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/09. Performing Regression Analysis Using Orthogonal Polynomial Encoding.vtt
3.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/15. Multilabel Binarizer for Encoding Multilabel Targets.vtt
3.6 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/07. Feature Detection Using DAISY Descriptors.vtt
3.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/7. Understanding Linear Discriminant Analysis.vtt
3.5 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/13. Image Augmentation Using Weather Transforms.vtt
3.5 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/2. Dictionary Learning.vtt
3.5 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/5. Understanding Factor Analysis.vtt
3.4 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/11. Generating Polynomial Features.vtt
3.4 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/05. Building Features Using the Count Vectorizer.vtt
3.3 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/09. Building Features Using Bag-of-n-grams Model.vtt
3.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/playlist.m3u
3.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/18. Summary and Further Study.vtt
3.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/07. Demo - Scaling with the MaxAbsScaler.vtt
3.1 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/1. Module Overview.vtt
3.1 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
3.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
3.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/8. Summary and Further Study.vtt
3.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
2.9 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
2.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
2.8 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/03. Prerequisites and Course Outline.vtt
2.8 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/~i.txt
2.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/06. Pre-processing with Stopword Removal, Building Features Using Count Vectorizer.vtt
2.7 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/11. Summary and Further Study.vtt
2.7 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/01. Module Overview.vtt
2.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/08. Building Features Using the Tf-Idf Vectorizer.vtt
2.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/4. Inverse Transform Using the Count Vectorizer.vtt
2.6 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/03. Prerequisites and Course Outline.vtt
2.6 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/4. Understanding and Implementing Feature Selection/11. Module Summary.vtt
2.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/13. Summary.vtt
2.6 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/08. Drawbacks of Reducing Complexity.vtt
2.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/1. Course Overview/1. Course Overview.vtt
2.5 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/1. Module Overview.vtt
2.5 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/1. Module Overview.vtt
2.4 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/10. Summary and Further Study.vtt
2.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/11. Summary.vtt
2.4 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/~i.txt
2.4 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/1. Module Overview.vtt
2.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/9. Summary and Further Study.vtt
2.3 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/10. Module Summary.vtt
2.2 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/5. Implementing Bin Counting and Feature Hashing/8. Summary and Further Study.vtt
2.2 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/03. Prerequisites and Course Outline.vtt
2.2 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/03. Prerequisites and Course Outline.vtt
2.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/2. What Is Normalization.vtt
2.2 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/06. Scaling Data.vtt
2.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/1. Module Overview.vtt
2.1 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/8. Module Summary.vtt
2.1 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/11. Module Summary.vtt
2.1 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/16. Module Summary.vtt
2.1 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/10. Module Summary.vtt
2.0 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/7. Module Summary.vtt
2.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/~i.txt
2.0 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/5. Exploring Feature Extraction Techniques/5. Module Summary.vtt
2.0 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/6. Dimensionality Reduction Using Clustering and Autoencoding Techniques/1. Module Overview.vtt
2.0 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/02. Module Overview.vtt
2.0 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/14. Summary.vtt
1.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/3. Using Statistical Techniques for Feature Selection/01. Module Overview.vtt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/4. Simplifying Text Processing Using Natural Language Processing/1. Module Overview.vtt
1.9 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/02. Module Overview.vtt
1.9 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/~i.txt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/~i.txt
1.9 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/13. Transforming Features to Gaussian-like Distributions Using Power Transformers.vtt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/12. Module Summary.vtt
1.9 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/4. Simplifying Image Processing Using Dimensionality Reduction/1. Module Overview.vtt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/8. Module Summary.vtt
1.9 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/3. Understanding and Implementing Dummy Coding/9. Module Summary.vtt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/3. Building Feature Vector Representations of Text/1. Module Overview.vtt
1.9 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/02. Module Overview.vtt
1.9 kB
~i.txt
1.9 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/02. Module Overview.vtt
1.8 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/01. Module Overview.vtt
1.8 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/02. Module Overview.vtt
1.8 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/3. Preparing Data for Machine Learning/9. Module Summary.vtt
1.8 kB
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/6. Implementing Feature Extraction/01. Module Overview.vtt
1.8 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/03. Prerequisites and Course Outline.vtt
1.8 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/4. Reducing Complexity in Linear Data/9. Summary.vtt
1.8 kB
B2. Reducing Complexity in Data (Janani Ravi, 2019)/5. Reducing Complexity in Nonlinear Data/8. Summary.vtt
1.8 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/~i.txt
1.8 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/4. Understanding and Implementing Contrast Coding/01. Module Overview.vtt
1.8 kB
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/12. One-hot Encoding Using pd.get_dummies().vtt
1.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/5. Reducing Dimensions in Text Using Hashing/1. Module Overview.vtt
1.7 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/14. Module Summary.vtt
1.7 kB
C2. Building Features from Image Data (Janani Ravi, 2019)/3. Detecting Features and Text in Images/01. Module Overview.vtt
1.7 kB
C1. Building Features from Text Data (Janani Ravi, 2019)/6. Applying Text Feature Extraction Techniques to Machine Learning/01. Module Overview.vtt
1.7 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/9. Summary.vtt
1.6 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/16. Transforming Data to Normal or Uniform Distributions Using Quantile Transformers.vtt
1.5 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/02. Module Overview.vtt
1.4 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/3. Building Features Using Normalization/1. Module Overview.vtt
1.1 kB
A2. Building Features from Numeric Data (Janani Ravi, 2019)/4. Building Features Using Scaling and Transformations/09. Custom Transformations.vtt
840 Bytes
B2. Reducing Complexity in Data (Janani Ravi, 2019)/2. Understanding the Need for Dimensionality Reduction/01. Version Check.vtt
52 Bytes
A1. Preparing Data for Feature Engineering and Machine Learning (Janani Ravi, 2019)/2. Understanding the Role of Features in Machine Learning/01. Version Check.vtt
7 Bytes
A2. Building Features from Numeric Data (Janani Ravi, 2019)/2. Using Numeric Data in Machine Learning Algorithms/01. Version Check.vtt
7 Bytes
B1. Building Features from Nominal Data (Janani Ravi, 2019)/2. Implementing Approaches to Working with Categorical Data/01. Version Check.vtt
7 Bytes
C1. Building Features from Text Data (Janani Ravi, 2019)/2. Representing Text as Features for Machine Learning/01. Version Check.vtt
7 Bytes
C2. Building Features from Image Data (Janani Ravi, 2019)/2. Representing Images as Features for Machine Learning/01. Version Check.vtt
7 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!