搜索
Advanced Machine Learning Specialization
磁力链接/BT种子名称
Advanced Machine Learning Specialization
磁力链接/BT种子简介
种子哈希:
9a31f0c4690810429c38e93ef0b80ae51a3b6840
文件大小:
3.07G
已经下载:
601
次
下载速度:
极快
收录时间:
2018-10-05
最近下载:
2025-06-13
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:9A31F0C4690810429C38E93EF0B80AE51A3B6840
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
街区王子
爽剧
大三学生
川原
第一巨乳
、
零几到一几年良家换妻泄密74弹
山里
唱唱歌
北妃
良家 丝袜
终舞
4627181
2160p bluray hdr dv
bluray 1080p 1973
厕
s model 82
饱满
金主
不能向妈妈说
fc2-ppv+mj
异世界后
mosaic
ssis-195- uncensored
jinricp
onlyfans - mimsy
uhd bluray dts-hd
konosuba: gods blessing on this wonderful world
女生没毛
onlyfans ellie ssrpeach
文件列表
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/06_mle-estimation-of-gaussian-mean_instructions.html
1.0 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/03_simple-autoencoder_instructions.html
1.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/04_logistic-regression-in-tensorflow_instructions.html
1.1 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/03_generating-names-with-rnns_instructions.html
1.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/02_mse-in-tensorflow_instructions.html
1.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/03_keras/02_my1stnn-keras-this-time_instructions.html
1.1 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/04_generative-adversarial-networks_instructions.html
1.1 kB
2. competitive-data-science/14_Resources/02_cheet-sheets/01__resources.html
1.2 kB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/03_your-first-cnn-on-cifar-10_instructions.html
1.2 kB
1. intro-to-deep-learning/06_final-project/01_final-project/01_image-captioning-final-project_instructions.html
1.2 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/03_fine-tuning-inceptionv3-for-flowers-classification_instructions.html
1.2 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/03_linear-models-and-optimization_instructions.html
1.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/09_vae-paper_instructions.html
1.2 kB
2. competitive-data-science/03_final-project-description/01_final-project/03_final-project-advice-1_instructions.html
1.2 kB
2. competitive-data-science/09_hyperparameter-optimization/02_tips-and-tricks/02_additional-materials-and-links_instructions.html
1.2 kB
2. competitive-data-science/13_final-project/01_final-project/01_final-project_instructions.html
1.3 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/08_gpy-and-gpyopt_instructions.html
1.3 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/08_variational-autoencoder_instructions.html
1.3 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/06_additional-material-and-links_instructions.html
1.3 kB
2. competitive-data-science/05_validation/01_validation/07_additional-material-and-links_instructions.html
1.3 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/06_final-project-advice-3_instructions.html
1.3 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/05_data-leakages_instructions.html
1.3 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/02_pandas-basics_instructions.html
1.3 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/05_mean-encoding-implementation_instructions.html
1.4 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/02_advanced-features-ii-programming-assignment/01_knn-features-implementation_instructions.html
1.4 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/12_pymc_instructions.html
1.5 kB
2. competitive-data-science/11_ensembling/01_ensembling/10_additional-materials-and-links_instructions.html
1.5 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/06_em-algorithm-for-gmm_instructions.html
1.5 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/06_additional-material-and-links_instructions.html
1.6 kB
2. competitive-data-science/11_ensembling/01_ensembling/08_ensembling-implementation_instructions.html
1.6 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/03_honors-track-assignment/01_categorical-reparametrization-with-gumbel-softmax_instructions.html
1.6 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/04_relevant-papers_instructions.html
1.6 kB
2. competitive-data-science/11_ensembling/01_ensembling/11_final-project-advice-4_instructions.html
1.7 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/07_final-project-advice-2_instructions.html
1.8 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/06_additional-material-and-links_instructions.html
1.8 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/02_disclaimer_instructions.html
1.9 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/07_additional-material-and-links_instructions.html
1.9 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/02_conjugate-distributions.en.txt
2.0 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/07_additional-material-and-links_instructions.html
2.1 kB
2. competitive-data-science/01_introduction-recap/01_welcome-to-how-to-win-a-data-science-competition/03_week-1-overview_instructions.html
2.2 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/01_week-5-overview_instructions.html
2.3 kB
2. competitive-data-science/03_final-project-description/01_final-project/01_final-project_instructions.html
2.5 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/01_week-3-overview_instructions.html
2.5 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/03_how-to-define-a-model.en.txt
2.6 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/06_additional-materials-and-links_instructions.html
2.6 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/11_additional-material-and-links_instructions.html
2.6 kB
2. competitive-data-science/14_Resources/01_glossary/01__resources.html
2.8 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/04_additional-material-and-links_instructions.html
2.8 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/01_week-2-overview_instructions.html
2.9 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/01_analytical-inference.en.txt
3.0 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/06_em-algorithm-for-gmm_grader.py
3.1 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/01_week-4-overview_instructions.html
3.1 kB
1. intro-to-deep-learning/01_introduction-to-optimization/01_course-intro/01_welcome_instructions.html
3.1 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/04_additional-material-and-links_instructions.html
3.2 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_instructions.html
3.3 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/12_pymc_grader.py
3.4 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/04_example-bernoulli.en.txt
3.4 kB
2. competitive-data-science/03_final-project-description/01_final-project/02_final-project-overview.en.txt
3.4 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/02_conjugate-distributions.en.srt
3.4 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/08_gpy-and-gpyopt_grader.py
3.5 kB
2. competitive-data-science/05_validation/01_validation/03_validation-strategies_instructions.html
3.6 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/07_extensions-of-lda.en.txt
3.7 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/07_application-of-bayesian-optimization.en.txt
3.9 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/03_gp-for-machine-learning.en.txt
3.9 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/01_topic-modeling.en.txt
4.0 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/01_why-approximate-inference.en.txt
4.0 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/03_latent-dirichlet-allocation.en.txt
4.1 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/04_comments-on-quiz_instructions.html
4.1 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/03_example-normal-precision.en.txt
4.2 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/01_statistics-and-distance-based-features.en.txt
4.2 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/03_how-to-define-a-model.en.srt
4.2 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/01_multilayer-perceptron.en.txt
4.3 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/02_bayesian-approach-to-statistics.en.txt
4.4 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/01_learning-new-tasks-with-pre-trained-cnns.en.txt
4.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/03_k-means-m-step.en.txt
4.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/01_introduction-into-ensemble-methods.en.txt
4.5 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/05_lda-e-step-z.en.txt
4.5 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/03_gradient-descent.en.txt
4.5 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/04_variational-em-review.en.txt
4.6 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/01_nonparametric-methods.en.txt
4.6 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/02_model-regularization.en.txt
4.6 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/04_t-sne.en.txt
4.8 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/03_numerai-competition-eda.en.txt
4.8 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/03_feature-interactions.en.txt
4.8 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/05_gradient-of-decoder.en.txt
4.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/03_sparse-variational-dropout.en.txt
4.9 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/03_gradients-optimization-in-tensorflow.en.txt
4.9 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/01_basic-data-leaks.en.txt
4.9 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/01_analytical-inference.en.srt
5.0 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/03_explanation-for-quiz-questions_instructions.html
5.0 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/01_software-hardware-requirements.en.txt
5.0 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/03_springleaf-marketing-response.en.txt
5.1 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/01_stochastic-gradient-descent.en.txt
5.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/03_keras/01_keras-introduction.en.txt
5.1 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/04_m-step-details.en.txt
5.1 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/06_general-approaches-for-metrics-optimization.en.txt
5.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/03_backpropagation-primer.en.txt
5.1 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/02_dirichlet-distribution.en.txt
5.1 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/04_derivation-of-main-formula.en.txt
5.1 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/02_probabilistic-clustering.en.txt
5.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/06_log-derivative-trick.en.txt
5.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/01_scaling-variational-inference-unbiased-estimates.en.txt
5.2 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/02_training-a-neural-network.en.txt
5.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/07_summary-of-expectation-maximization.en.txt
5.3 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/02_autoencoders-101.en.txt
5.3 kB
2. competitive-data-science/01_introduction-recap/01_welcome-to-how-to-win-a-data-science-competition/01_welcome_instructions.html
5.3 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/09_classification-metrics-optimization-ii.en.txt
5.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/06_em-algorithm-for-gmm_samples.npz
5.4 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/04_lda-e-step-theta.en.txt
5.4 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/02_dropout-as-bayesian-procedure.en.txt
5.4 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/03_real-world-application-vs-competitions.en.txt
5.4 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/04_comments-on-quiz_instructions.html
5.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/05_em-for-probabilistic-pca.en.txt
5.4 kB
2. competitive-data-science/03_final-project-description/01_final-project/02_final-project-overview.en.srt
5.6 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/01_overview.en.txt
5.6 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/04_example-bernoulli.en.srt
5.6 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/01_learning-with-priors.en.txt
5.6 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/02_hyperparameter-tuning-i.en.txt
5.6 kB
2. competitive-data-science/05_validation/01_validation/02_validation-strategies.en.txt
5.7 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/01_springleaf-competition-eda-i.en.txt
5.7 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/02_regularization.en.txt
5.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/07_metropolis-hastings-choosing-the-critic.en.txt
5.7 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/03_explanation-for-quiz-questions_instructions.html
5.7 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/08_classification-metrics-optimization-i.en.txt
5.7 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/02_matrix-factorizations.en.txt
5.8 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/02_kaggle-overview-screencast.en.txt
5.8 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/03_building-intuition-about-the-data.en.txt
5.8 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/02_gaussian-processes.en.txt
5.9 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/05_example-of-gibbs-sampling.en.txt
5.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/07_reparameterization-trick.en.txt
6.0 kB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/02_overview-of-modern-cnn-architectures.en.txt
6.0 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/06_dataset-cleaning-and-other-things-to-check.en.txt
6.0 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/04_regression-metrics-review-ii.en.txt
6.0 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/02_exploratory-data-analysis.en.txt
6.1 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/01_concept-of-mean-encoding.en.txt
6.2 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/06_metropolis-hastings.en.txt
6.2 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/01_overfitting-problem-and-model-validation.en.txt
6.2 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/05_walmart-trip-type-classification.en.txt
6.2 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/07_application-of-bayesian-optimization.en.srt
6.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/03_using-cnns-with-a-mixture-of-gaussians.en.txt
6.2 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/01_unsupervised-learning-what-it-is-and-why-bother.en.txt
6.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/05_example-em-for-discrete-mixture-e-step.en.txt
6.3 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/07_extensions-of-lda.en.srt
6.3 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/01_going-deeper-with-tensorflow.en.txt
6.4 kB
2. competitive-data-science/01_introduction-recap/01_welcome-to-how-to-win-a-data-science-competition/02_course-overview.en.txt
6.4 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/01_why-approximate-inference.en.srt
6.4 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/05_comments-on-quiz_instructions.html
6.4 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/02_mean-field-approximation.en.txt
6.4 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/03_gp-for-machine-learning.en.srt
6.6 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/04_datetime-and-coordinates.en.txt
6.6 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/01_the-training-of-rnns-is-not-that-easy.en.txt
6.6 kB
2. competitive-data-science/05_validation/01_validation/06_comments-on-quiz_instructions.html
6.6 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/01_motivation-for-recurrent-layers.en.txt
6.7 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/01_think-bayesian-statistics-review.en.txt
6.7 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/05_comments-on-quiz_instructions.html
6.7 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/02_motivation.en.txt
6.7 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/02_a-glimpse-of-other-computer-vision-tasks.en.txt
6.7 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/01_topic-modeling.en.srt
6.7 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/05_linear-regression.en.txt
6.8 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/03_latent-dirichlet-allocation.en.srt
6.8 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/01_competition-mechanics.en.txt
6.8 kB
2. competitive-data-science/11_ensembling/01_ensembling/02_bagging.en.txt
6.8 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/06_lda-m-step-prediction.en.txt
6.8 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/03_example-normal-precision.en.srt
6.9 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/06_explanation-for-quiz-questions_instructions.html
6.9 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/02_autoencoder-applications-image-generation-data-visualization-more.en.txt
6.9 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/01_statistics-and-distance-based-features.en.srt
7.0 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/01_learning-new-tasks-with-pre-trained-cnns.en.srt
7.0 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/03_expedia-challenge.en.txt
7.1 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/02_bayesian-approach-to-statistics.en.srt
7.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/01_multilayer-perceptron.en.srt
7.1 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/06_example-em-for-discrete-mixture-m-step.en.txt
7.1 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/02_k-means-from-probabilistic-perspective.en.txt
7.2 kB
2. competitive-data-science/11_ensembling/01_ensembling/01_introduction-into-ensemble-methods.en.srt
7.2 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/04_example-thief-alarm.en.txt
7.2 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/10_comments-on-quiz_instructions.html
7.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/03_k-means-m-step.en.srt
7.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/09_comments-on-quiz_instructions.html
7.4 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/01_generative-models-101.en.txt
7.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/01_jensens-inequality-kullback-leibler-divergence.en.txt
7.4 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/02_deep-learning-as-a-language.en.txt
7.5 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/07_regression-metrics-optimization.en.txt
7.5 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/03_gradient-descent.en.srt
7.6 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/02_model-regularization.en.srt
7.6 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/02_leaderboard-probing-and-examples-of-rare-data-leaks.en.txt
7.6 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/04_t-sne.en.srt
7.7 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/05_lda-e-step-z.en.srt
7.7 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/01_nonparametric-methods.en.srt
7.7 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/03_extensions-and-generalizations.en.txt
7.7 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/03_sparse-variational-dropout.en.srt
7.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/12_pymc_Week4._Practical_Assignment._MCMC.ipynb
7.7 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/04_variational-em-review.en.srt
7.8 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/06_bayesian-optimization.en.txt
7.8 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/05_gradient-of-decoder.en.srt
7.8 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/03_e-step-details.en.txt
7.8 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/09_markov-chain-monte-carlo-summary.en.txt
7.8 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/02_simple-rnn-and-backpropagation.en.txt
7.9 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/03_numerai-competition-eda.en.srt
7.9 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/04_gibbs-sampling.en.txt
7.9 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/01_stochastic-gradient-descent.en.srt
8.0 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/03_feature-interactions.en.srt
8.0 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/08_example-of-metropolis-hastings.en.txt
8.0 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/03_springleaf-marketing-response.en.srt
8.1 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/01_software-hardware-requirements.en.srt
8.1 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/05_handling-missing-values.en.txt
8.1 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/03_categorical-and-ordinal-features.en.txt
8.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/06_log-derivative-trick.en.srt
8.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/04_m-step-details.en.srt
8.2 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/06_general-approaches-for-metrics-optimization.en.srt
8.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/02_probabilistic-clustering.en.srt
8.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/05_example-of-gmm-training.en.txt
8.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/07_summary-of-expectation-maximization.en.srt
8.3 kB
2. competitive-data-science/05_validation/01_validation/01_validation-and-overfitting.en.txt
8.3 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/01_basic-data-leaks.en.srt
8.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/03_gaussian-mixture-model.en.txt
8.3 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/01_linear-regression.en.txt
8.3 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/02_autoencoders-101.en.srt
8.3 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/02_dirichlet-distribution.en.srt
8.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/04_training-gmm.en.txt
8.4 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/01_scaling-variational-inference-unbiased-estimates.en.srt
8.4 kB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/02_our-first-cnn-architecture.en.txt
8.5 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/02_training-a-neural-network.en.srt
8.5 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/02_gradient-descent-extensions.en.txt
8.5 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/02_dropout-as-bayesian-procedure.en.srt
8.5 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/03_backpropagation-primer.en.srt
8.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/01_general-em-for-gmm.en.txt
8.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm.en.txt
8.6 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/05_nuances-of-gp.en.txt
8.7 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/03_gradients-optimization-in-tensorflow.en.srt
8.7 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/01_recap-of-main-ml-algorithms.en.txt
8.7 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/01_bag-of-words.en.txt
8.8 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/02_modeling-a-distribution-of-images.en.txt
8.9 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/05_em-for-probabilistic-pca.en.srt
8.9 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/03_real-world-application-vs-competitions.en.srt
8.9 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/01_what-deep-learning-is-and-is-not.en.txt
8.9 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/09_classification-metrics-optimization-ii.en.srt
8.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/01_learning-with-priors.en.srt
8.9 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/03_keras/01_keras-introduction.en.srt
9.0 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/02_dealing-with-vanishing-and-exploding-gradients.en.txt
9.0 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/02_hyperparameter-tuning-i.en.srt
9.1 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/11_bayesian-neural-networks.en.txt
9.1 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/08_classification-metrics-optimization-i.en.srt
9.2 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/01_overview.en.srt
9.2 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/01_springleaf-competition-eda-i.en.srt
9.2 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/02_matrix-factorizations.en.srt
9.2 kB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/01_motivation-for-convolutional-layers.en.txt
9.2 kB
2. competitive-data-science/05_validation/01_validation/02_validation-strategies.en.srt
9.3 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/02_regularization.en.srt
9.4 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/02_kaggle-overview-screencast.en.srt
9.4 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/01_autoencoder-applications.en.txt
9.4 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/07_metropolis-hastings-choosing-the-critic.en.srt
9.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/01_latent-variable-models.en.txt
9.4 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/05_example-of-gibbs-sampling.en.srt
9.5 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/03_hyperparameter-tuning-ii.en.txt
9.6 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/07_reparameterization-trick.en.srt
9.6 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/01_natural-language-processing-primer.en.txt
9.6 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/04_lda-e-step-theta.en.srt
9.7 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/03_building-intuition-about-the-data.en.srt
9.7 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/04_derivation-of-main-formula.en.srt
9.7 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/04_hyperparameter-tuning-iii.en.txt
9.7 kB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/02_overview-of-modern-cnn-architectures.en.srt
9.7 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/04_regression-metrics-review-ii.en.srt
9.8 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/01_unsupervised-learning-what-it-is-and-why-bother.en.srt
9.8 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/06_dataset-cleaning-and-other-things-to-check.en.srt
9.8 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/02_crowdflower-competition.en.txt
9.9 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/02_gaussian-processes.en.srt
9.9 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/02_generative-adversarial-networks.en.txt
9.9 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/02_exploratory-data-analysis.en.srt
9.9 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/03_markov-chains.en.txt
9.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/03_using-cnns-with-a-mixture-of-gaussians.en.srt
9.9 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/05_visualizations.en.txt
9.9 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/03_example-ising-model.en.txt
10.0 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/02_linear-classification.en.txt
10.0 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/06_metropolis-hastings.en.srt
10.0 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/04_probabilistic-pca.en.txt
10.0 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/01_overfitting-problem-and-model-validation.en.srt
10.0 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/01_concept-of-mean-encoding.en.srt
10.1 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/05_walmart-trip-type-classification.en.srt
10.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/05_example-em-for-discrete-mixture-e-step.en.srt
10.4 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/03_applications-of-adversarial-approach.en.txt
10.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/07_validation-schemes-for-2-nd-level-models_instructions.html
10.4 kB
2. competitive-data-science/01_introduction-recap/01_welcome-to-how-to-win-a-data-science-competition/02_course-overview.en.srt
10.4 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/02_sampling-from-1-d-distributions.en.txt
10.5 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/04_datetime-and-coordinates.en.srt
10.5 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/02_word2vec-cnn.en.txt
10.5 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/01_monte-carlo-estimation.en.txt
10.5 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/01_the-training-of-rnns-is-not-that-easy.en.srt
10.7 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/03_regression-metrics-review-i.en.txt
10.7 kB
2. competitive-data-science/11_ensembling/01_ensembling/06_ensembling-tips-and-tricks.en.txt
10.7 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/01_motivation-for-recurrent-layers.en.srt
10.7 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/04_relevant-papers_1702.04008
10.8 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/02_motivation.en.srt
10.8 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/01_think-bayesian-statistics-review.en.srt
10.9 kB
2. competitive-data-science/11_ensembling/01_ensembling/05_stacknet.en.txt
10.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/04_relevant-papers_1701.05369
10.9 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/02_autoencoder-applications-image-generation-data-visualization-more.en.srt
10.9 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/03_modern-rnns-lstm-and-gru.en.txt
10.9 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/03_honors-track-assignment/01_categorical-reparametrization-with-gumbel-softmax_1611.01144
10.9 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/02_a-glimpse-of-other-computer-vision-tasks.en.srt
11.0 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/01_going-deeper-with-tensorflow.en.srt
11.1 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/01_competition-mechanics.en.srt
11.2 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/09_vae-paper_1312.6114
11.2 kB
2. competitive-data-science/11_ensembling/01_ensembling/02_bagging.en.srt
11.3 kB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/01_training-tips-and-tricks-for-deep-cnns.en.txt
11.3 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/04_exploring-anonymized-data.en.txt
11.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/02_k-means-from-probabilistic-perspective.en.srt
11.5 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/01_generative-models-101.en.srt
11.5 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/05_linear-regression.en.srt
11.5 kB
2. competitive-data-science/05_validation/01_validation/04_data-splitting-strategies.en.txt
11.6 kB
2. competitive-data-science/11_ensembling/01_ensembling/03_boosting.en.txt
11.6 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/02_numeric-features.en.txt
11.6 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/04_scaling-variational-em.en.txt
11.6 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/03_expedia-challenge.en.srt
11.7 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/04_relevant-papers_1505.05770
11.9 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/02_springleaf-competition-eda-ii.en.txt
11.9 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_data-science.html
11.9 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/06_lda-m-step-prediction.en.srt
11.9 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/02_mean-field-approximation.en.srt
11.9 kB
2. competitive-data-science/11_ensembling/01_ensembling/04_stacking.en.txt
12.1 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/01_jensens-inequality-kullback-leibler-divergence.en.srt
12.2 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/02_deep-learning-as-a-language.en.srt
12.2 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/07_regression-metrics-optimization.en.srt
12.4 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/03_applications-of-rnns/01_practical-use-cases-for-rnns.en.txt
12.4 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/03_extensions-and-generalizations.en.srt
12.5 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/02_leaderboard-probing-and-examples-of-rare-data-leaks.en.srt
12.5 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/06_example-em-for-discrete-mixture-m-step.en.srt
12.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/09_markov-chain-monte-carlo-summary.en.srt
12.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/10_mcmc-for-lda.en.txt
12.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/08_example-of-metropolis-hastings.en.srt
12.8 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/02_simple-rnn-and-backpropagation.en.srt
12.8 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/06_bayesian-optimization.en.srt
12.8 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/04_example-thief-alarm.en.srt
12.8 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/02_word-embeddings.en.txt
12.9 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/05_handling-missing-values.en.srt
13.1 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/04_gibbs-sampling.en.srt
13.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/03_gaussian-mixture-model.en.srt
13.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/03_e-step-details.en.srt
13.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/05_example-of-gmm-training.en.srt
13.5 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/03_categorical-and-ordinal-features.en.srt
13.5 kB
2. competitive-data-science/05_validation/01_validation/01_validation-and-overfitting.en.srt
13.6 kB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/02_our-first-cnn-architecture.en.srt
13.6 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/01_linear-regression.en.srt
13.7 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm.en.srt
13.7 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/02_gradient-descent-extensions.en.srt
13.7 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/01_recap-of-main-ml-algorithms.en.srt
13.9 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/01_bag-of-words.en.srt
14.0 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/02_dealing-with-vanishing-and-exploding-gradients.en.srt
14.0 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/04_training-gmm.en.srt
14.1 kB
2. competitive-data-science/09_hyperparameter-optimization/02_tips-and-tricks/01_practical-guide.en.txt
14.1 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/05_nuances-of-gp.en.srt
14.1 kB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/01_what-deep-learning-is-and-is-not.en.srt
14.2 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/04_microsoft-malware-classification-challenge.en.txt
14.4 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/02_modeling-a-distribution-of-images.en.srt
14.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/01_general-em-for-gmm.en.srt
14.6 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/01_autoencoder-applications.en.srt
15.1 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/11_bayesian-neural-networks.en.srt
15.2 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/05_classification-metrics-review.en.txt
15.2 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/03_hyperparameter-tuning-ii.en.srt
15.5 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/01_latent-variable-models.en.srt
15.5 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/04_hyperparameter-tuning-iii.en.srt
15.5 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/01_natural-language-processing-primer.en.srt
15.7 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/02_generative-adversarial-networks.en.srt
15.7 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/02_crowdflower-competition.en.srt
15.8 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/03_markov-chains.en.srt
16.1 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/03_applications-of-adversarial-approach.en.srt
16.3 kB
2. competitive-data-science/05_validation/01_validation/05_problems-occurring-during-validation.en.txt
16.3 kB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/01_motivation-for-convolutional-layers.en.srt
16.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/04_probabilistic-pca.en.srt
16.4 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/06_em-algorithm-for-gmm_Coursera_BMML_week_2.ipynb
16.4 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/05_visualizations.en.srt
16.5 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/02_linear-classification.en.srt
16.8 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/02_sampling-from-1-d-distributions.en.srt
16.9 kB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/08_gpy-and-gpyopt_Coursera_BMML_week_6.ipynb
17.0 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/02_word2vec-cnn.en.srt
17.2 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/03_example-ising-model.en.srt
17.3 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/01_monte-carlo-estimation.en.srt
17.3 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/03_modern-rnns-lstm-and-gru.en.srt
17.6 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/03_regression-metrics-review-i.en.srt
17.9 kB
2. competitive-data-science/11_ensembling/01_ensembling/06_ensembling-tips-and-tricks.en.srt
18.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/05_stacknet.en.srt
18.5 kB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/01_training-tips-and-tricks-for-deep-cnns.en.srt
18.6 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/04_exploring-anonymized-data.en.srt
18.6 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/02_numeric-features.en.srt
19.0 kB
2. competitive-data-science/05_validation/01_validation/04_data-splitting-strategies.en.srt
19.1 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/04_scaling-variational-em.en.srt
19.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/04_stacking.en.srt
19.4 kB
2. competitive-data-science/11_ensembling/01_ensembling/03_boosting.en.srt
19.6 kB
1. intro-to-deep-learning/05_deep-learning-for-sequences/03_applications-of-rnns/01_practical-use-cases-for-rnns.en.srt
19.9 kB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/02_springleaf-competition-eda-ii.en.srt
20.3 kB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/02_word-embeddings.en.srt
20.7 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/10_mcmc-for-lda.en.srt
21.3 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/04_additional-material-and-links_fine-tuning-in-keras-part2.html
22.0 kB
2. competitive-data-science/09_hyperparameter-optimization/02_tips-and-tricks/01_practical-guide.en.srt
22.7 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/07_additional-material-and-links_plot_spectral_biclustering.html
22.9 kB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/04_microsoft-malware-classification-challenge.en.srt
23.5 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/05_classification-metrics-review.en.srt
24.8 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/02_disclaimer_gradient_boosting_explained.html
25.4 kB
2. competitive-data-science/05_validation/01_validation/05_problems-occurring-during-validation.en.srt
26.0 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/06_additional-materials-and-links_plot_compare_methods.html
37.8 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/06_additional-materials-and-links_plot_feature_transformation.html
38.6 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/06_additional-materials-and-links_plot_t_sne_perplexity.html
39.6 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/06_additional-material-and-links_grid_search.html
41.6 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_plot_classifier_comparison.html
42.1 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_tree.html
47.7 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_neighbors.html
62.5 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/04_additional-material-and-links_using-spot-instances.html
71.1 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/04_exploring-anonymized-data_EDA_3.pdf
72.3 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/07_additional-material-and-links_2014_about_feature_scaling.html
74.9 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/07_additional-material-and-links_preprocessing.html
83.2 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/06_additional-materials-and-links_decomposition.html
88.9 kB
2. competitive-data-science/05_validation/01_validation/07_additional-material-and-links_cross_validation.html
103.8 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/01_stochastic-gradient-descent_w1_4_1_sgd.pdf
110.1 kB
2. competitive-data-science/05_validation/01_validation/02_validation-strategies_Validation_strategies.pdf
113.9 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/04_additional-material-and-links_feature_extraction.html
116.2 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/06_mle-estimation-of-gaussian-mean_MLE_for_Gaussian.pdf
120.2 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/04_additional-materials-and-links_linear_model.html
125.1 kB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/02_gradient-descent-extensions_w1_4_2_sgd.pdf
130.4 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/04_hyperparameter-tuning-iii_Libs_and_Tips_III.pdf
147.3 kB
bayesian-methods-in-machine-learning-syllabus-parsed.json
149.1 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/01_statistics-and-distance-based-features_Stats_NA.pdf
149.7 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/11_additional-material-and-links_MSR-TR-2010-82.pdf
164.2 kB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/03_explanation-for-quiz-questions_instructions.html
167.6 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/03_feature-interactions_Interactions.pdf
169.5 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/11_additional-material-and-links_icml_ranking.pdf
173.9 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/01_statistics-and-distance-based-features_w2_stats_na.pptx
178.5 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/01_basic-data-leaks_leaks_basics.pdf
179.9 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/01_basic-data-leaks_w3_leaks_1.pptx
186.4 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/03_categorical-and-ordinal-features_Categorical_and_ordinal_features.pdf
188.2 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/03_extensions-and-generalizations_mean_encodings_part3.pdf
192.6 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/03_extensions-and-generalizations_w3_mean_encs_p3.pptx
225.6 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/02_hyperparameter-tuning-i_Libs_and_Tips_I.pdf
241.3 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/07_summary-of-expectation-maximization_w2b7_alex.pdf
323.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/03_k-means-m-step_w2c2.2_alex.pdf
326.3 kB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/01_learning-new-tasks-with-pre-trained-cnns_w3_5_transfer_learning_final.pdf
330.2 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/02_linear-classification_w1_2_2_linclass.pdf
334.4 kB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/03_hyperparameter-tuning-ii_Libs_and_Tips_II.pdf
335.6 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/03_how-to-define-a-model_w1a3.pdf
351.3 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/05_handling-missing-values_Missing_values.pdf
368.7 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/01_overfitting-problem-and-model-validation_w1_3_1_overfit.pdf
395.9 kB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/02_model-regularization_w1_3_2_regularization.pdf
400.8 kB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/03_gradient-descent_w1_2_3_gradient.pdf
424.8 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/08_classification-metrics-optimization-i_Metrics_7.pdf
455.1 kB
competitive-data-science-syllabus-parsed.json
465.2 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/07_metropolis-hastings-choosing-the-critic_w4b3_after_board_alex.pdf
477.8 kB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/03_real-world-application-vs-competitions_RealLife_vs_Comps.pdf
509.8 kB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/01_bag-of-words_BOW.pdf
532.1 kB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/08_variational-autoencoder_assignment_5.zip
569.6 kB
2. competitive-data-science/11_ensembling/01_ensembling/01_introduction-into-ensemble-methods_Ensemble_methods.pdf
577.1 kB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/01_motivation-for-convolutional-layers_w3_1_convolutions_final.pdf
599.3 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/01_why-approximate-inference_w3a1.pdf
600.2 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/04_gibbs-sampling_w4b2.1_alex.pdf
621.5 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/04_additional-material-and-links_1109.0887.pdf
641.0 kB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/01_software-hardware-requirements_SoftHard.pdf
656.6 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/01_topic-modeling_w3b1.pdf
670.2 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/03_e-step-details_w2b4_alex.pdf
680.2 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/02_leaderboard-probing-and-examples-of-rare-data-leaks_w3_leaks_2.pptx
692.6 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/01_concept-of-mean-encoding_w3_mean_encs_p1.pptx
704.9 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/09_classification-metrics-optimization-ii_Metrics_8.pdf
706.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/01_general-em-for-gmm_w2c1_alex.pdf
722.2 kB
2. competitive-data-science/06_data-leakages/01_data-leakages/02_leaderboard-probing-and-examples-of-rare-data-leaks_leaks_probing.pdf
746.5 kB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/07_regression-metrics-optimization_Metrics_6.pdf
753.4 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/01_concept-of-mean-encoding_mean_encodings_part1.pdf
757.6 kB
2. competitive-data-science/11_ensembling/01_ensembling/02_bagging_Bagging.pdf
894.9 kB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/06_dataset-cleaning-and-other-things-to-check_EDA_5.pdf
896.4 kB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/09_markov-chain-monte-carlo-summary_w4b5_alex.pdf
900.4 kB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/02_regularization_w3_mean_encs_p2.pptx
910.4 kB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/02_conjugate-distributions_w1b2.pdf
928.6 kB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/05_em-for-probabilistic-pca_w2c5_alex.pdf
944.8 kB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/02_matrix-factorizations_MF.pdf
995.6 kB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/03_latent-dirichlet-allocation_w3b3.pdf
1.0 MB
2. competitive-data-science/11_ensembling/01_ensembling/03_boosting_Boosting.pdf
1.1 MB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/02_regularization_mean_encodings_part2.pdf
1.1 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/06_metropolis-hastings_w4b3_alex.pdf
1.1 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/03_regression-metrics-review-i_Metrics_2.pdf
1.2 MB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/01_training-tips-and-tricks-for-deep-cnns_w3_3_tricks_final.pdf
1.2 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/06_log-derivative-trick_w5a5_alex.pdf
1.2 MB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/02_a-glimpse-of-other-computer-vision-tasks_w3_6_other_problems_final.pdf
1.2 MB
2. competitive-data-science/11_ensembling/01_ensembling/04_stacking_Stacking.pdf
1.3 MB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/01_linear-regression_w1_2_1_linregr.pdf
1.3 MB
2. competitive-data-science/05_validation/01_validation/01_validation-and-overfitting_Validation_and_overfitting.pdf
1.3 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/02_motivation_Metrics_1.pdf
1.3 MB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/03_numerai-competition-eda_numerai.pdf
1.3 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/03_gp-for-machine-learning_w6a3.pdf
1.3 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/11_bayesian-neural-networks_w4c2_alex.pdf
1.4 MB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/01_recap-of-main-ml-algorithms_Recap.pdf
1.4 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/04_example-bernoulli_w1b4.pdf
1.4 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/06_general-approaches-for-metrics-optimization_Metrics_5.pdf
1.4 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/03_using-cnns-with-a-mixture-of-gaussians_w5a2_alex.pdf
1.4 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/07_extensions-of-lda_w3b4.pdf
1.4 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/04_m-step-details_w2b5_alex.pdf
1.5 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/01_nonparametric-methods_w6a1.pdf
1.6 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/03_example-normal-precision_w1b3.pdf
1.6 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/04_regression-metrics-review-ii_Metrics_3.pdf
1.6 MB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/01_competition-mechanics_Intro.pdf
1.6 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/07_reparameterization-trick_w5a6_alex.pdf
1.6 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/02_k-means-from-probabilistic-perspective_w2c2.1_alex.pdf
1.6 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/02_mean-field-approximation_w3a2.pdf
1.6 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/01_latent-variable-models_w2a1_alex.pdf
1.6 MB
2. competitive-data-science/05_validation/01_validation/05_problems-occurring-during-validation_Common_validation_problems.pdf
1.7 MB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/02_our-first-cnn-architecture_w3_2_pooling_lenet_final.pdf
1.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/04_training-gmm_w2a4_alex.pdf
1.7 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/01_scaling-variational-inference-unbiased-estimates_w5a1_alex.pdf
1.8 MB
2. competitive-data-science/09_hyperparameter-optimization/02_tips-and-tricks/01_practical-guide_practical_guide.pdf
1.8 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/01_jensens-inequality-kullback-leibler-divergence_w2b1_alex.pdf
1.8 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/11_additional-material-and-links_amigo2007a.pdf
1.8 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/02_numeric-features_Numeric_features.pdf
1.9 MB
2. competitive-data-science/06_data-leakages/01_data-leakages/03_expedia-challenge_leaks_expedia.pdf
1.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/02_probabilistic-clustering_w2a2_alex.pdf
1.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/04_probabilistic-pca_w2c4_alex.pdf
1.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/03_gaussian-mixture-model_w2a3_alex.pdf
1.9 MB
2. competitive-data-science/06_data-leakages/01_data-leakages/03_expedia-challenge_w3_expedia.pptx
1.9 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/02_modeling-a-distribution-of-images_w5a1.5_alex.pdf
2.0 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/02_bayesian-approach-to-statistics_w1a2.pdf
2.0 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/02_exploratory-data-analysis_EDA_1.pdf
2.1 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/03_springleaf-marketing-response_Springleaf.pdf
2.1 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/05_gradient-of-decoder_w5a4_alex.pdf
2.1 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/04_example-thief-alarm_w1a4.pdf
2.2 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/02_sampling-from-1-d-distributions_w4a2_alex.pdf
2.2 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/05_classification-metrics-review_Metrics_4.pdf
2.2 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/03_example-ising-model_w3a3.pdf
2.2 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/02_gaussian-processes_w6a2.pdf
2.2 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/02_crowdflower-competition_Crowdflower.pdf
2.3 MB
2. competitive-data-science/11_ensembling/01_ensembling/05_stacknet_Stacknet.pdf
2.3 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/02_word2vec-cnn_Word2vec_CNN.pdf
2.4 MB
2. competitive-data-science/05_validation/01_validation/04_data-splitting-strategies_Data_splitting_strategies.pdf
2.4 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/04_variational-em-review_w3a4.pdf
2.5 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/05_nuances-of-gp_w6a4.pdf
2.5 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/01_monte-carlo-estimation_w4a1_alex.pdf
2.6 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/05_walmart-trip-type-classification_Walmart.pdf
2.6 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm_w2b3_alex.pdf
2.7 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/05_example-of-gibbs-sampling_w4b2.2_alex.pdf
2.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/05_example-of-gmm-training_w2a5_alex.pdf
2.9 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/03_markov-chains_w4b1_alex.pdf
3.0 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/03_building-intuition-about-the-data_EDA_2.pdf
3.0 MB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/02_overview-of-modern-cnn-architectures_w3_4_modern_arch_final.pdf
3.1 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/06_bayesian-optimization_w6a5.pdf
3.1 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/10_mcmc-for-lda_w4c1_alex.pdf
3.2 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/07_application-of-bayesian-optimization_w6a6.pdf
3.3 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/02_dirichlet-distribution_w3b2.pdf
3.6 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/08_example-of-metropolis-hastings_w4b4_alex.pdf
3.6 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/04_scaling-variational-em_w5a3_alex.pdf
3.8 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/01_think-bayesian-statistics-review_w1a1.pdf
4.2 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/01_analytical-inference_w1b1.pdf
4.7 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/02_training-a-neural-network_w_training.pdf
4.9 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/05_visualizations_EDA_4.pdf
5.2 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/02_conjugate-distributions.mp4
5.6 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/05_linear-regression_w1a5.pdf
5.6 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/03_how-to-define-a-model.mp4
6.1 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/04_datetime-and-coordinates_Datetime_and_coordinates.pdf
7.8 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/03_backpropagation-primer_w_backprop.pdf
7.9 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/01_analytical-inference.mp4
8.0 MB
2. competitive-data-science/11_ensembling/01_ensembling/01_introduction-into-ensemble-methods.mp4
8.4 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/04_example-bernoulli.mp4
8.4 MB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/04_t-sne_tSNE.pdf
8.4 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/07_extensions-of-lda.mp4
9.6 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/01_why-approximate-inference.mp4
9.6 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/01_multilayer-perceptron_w_MLP.pdf
9.7 MB
2. competitive-data-science/03_final-project-description/01_final-project/02_final-project-overview.mp4
9.8 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/07_application-of-bayesian-optimization.mp4
10.0 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/02_conjugate-priors/03_example-normal-precision.mp4
10.0 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/03_gp-for-machine-learning.mp4
10.1 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/01_topic-modeling.mp4
10.2 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/02_bayesian-approach-to-statistics.mp4
10.2 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/04_variational-em-review.mp4
10.6 MB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/03_gradient-descent.mp4
10.7 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/01_nonparametric-methods.mp4
11.1 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/03_latent-dirichlet-allocation.mp4
11.1 MB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/01_learning-new-tasks-with-pre-trained-cnns.mp4
11.2 MB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/02_model-regularization.mp4
11.3 MB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/03_real-world-application-vs-competitions.mp4
11.6 MB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/03_feature-interactions.mp4
11.6 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/05_gradient-of-decoder.mp4
11.9 MB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/01_stochastic-gradient-descent.mp4
12.0 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/04_m-step-details.mp4
12.0 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/01_scaling-variational-inference-unbiased-estimates.mp4
12.0 MB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/01_statistics-and-distance-based-features.mp4
12.2 MB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/04_t-sne.mp4
12.2 MB
2. competitive-data-science/01_introduction-recap/04_software-hardware-requirements/01_software-hardware-requirements.mp4
12.3 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/02_dirichlet-distribution.mp4
12.5 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/02_autoencoders-101.mp4
12.5 MB
2. competitive-data-science/11_ensembling/01_ensembling/02_bagging.mp4
12.5 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/07_summary-of-expectation-maximization.mp4
12.7 MB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/03_numerai-competition-eda.mp4
12.8 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/06_log-derivative-trick.mp4
12.8 MB
2. competitive-data-science/06_data-leakages/01_data-leakages/01_basic-data-leaks.mp4
12.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/02_probabilistic-clustering.mp4
13.0 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/03_building-intuition-about-the-data.mp4
13.3 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/01_intro-to-unsupervised-learning/01_unsupervised-learning-what-it-is-and-why-bother.mp4
13.4 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/05_em-for-probabilistic-pca.mp4
13.6 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/06_general-approaches-for-metrics-optimization.mp4
13.8 MB
2. competitive-data-science/10_advanced-feature-engineering-ii/01_advanced-features-ii/02_matrix-factorizations.mp4
13.8 MB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/01_springleaf-competition-eda-i.mp4
13.8 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/03_springleaf-marketing-response.mp4
13.9 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/01_multilayer-perceptron.mp4
14.1 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/02_exploratory-data-analysis.mp4
14.2 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/01_think-bayesian-statistics-review.mp4
14.2 MB
1. intro-to-deep-learning/01_introduction-to-optimization/04_stochastic-methods-for-optimization/02_gradient-descent-extensions.mp4
14.3 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/02_deep-learning-as-a-language.mp4
14.3 MB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/01_competition-mechanics.mp4
14.4 MB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/02_hyperparameter-tuning-i.mp4
14.4 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/03_sparse-variational-dropout.mp4
14.4 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/01_learning-with-priors.mp4
14.5 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/02_training-a-neural-network.mp4
14.6 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/09_classification-metrics-optimization-ii.mp4
14.6 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/01_overview.mp4
14.8 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/02_gaussian-processes.mp4
14.8 MB
2. competitive-data-science/05_validation/01_validation/02_validation-strategies.mp4
14.9 MB
1. intro-to-deep-learning/01_introduction-to-optimization/03_regularization-in-machine-learning/01_overfitting-problem-and-model-validation.mp4
14.9 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/01_the-training-of-rnns-is-not-that-easy.mp4
15.2 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/03_using-cnns-with-a-mixture-of-gaussians.mp4
15.3 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/01_generative-models-101.mp4
15.3 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/06_dataset-cleaning-and-other-things-to-check.mp4
15.4 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/08_classification-metrics-optimization-i.mp4
15.4 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/07_reparameterization-trick.mp4
15.5 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/01_multilayer-perceptron-or-the-basic-principles-of-deep-learning/03_backpropagation-primer.mp4
15.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/03_k-means-m-step.mp4
16.0 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/02_autoencoder-applications-image-generation-data-visualization-more.mp4
16.1 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/02_variational-dropout/02_dropout-as-bayesian-procedure.mp4
16.2 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/05_example-of-gibbs-sampling.mp4
16.3 MB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/02_regularization.mp4
16.4 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/03_gradients-optimization-in-tensorflow.mp4
16.4 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/02_motivation.mp4
16.5 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/09_markov-chain-monte-carlo-summary.mp4
16.6 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/01_motivation-for-recurrent-layers.mp4
16.8 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/05_walmart-trip-type-classification.mp4
17.1 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/04_philosophy-of-deep-learning/01_what-deep-learning-is-and-is-not.mp4
17.1 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/04_regression-metrics-review-ii.mp4
17.4 MB
1. intro-to-deep-learning/03_deep-learning-for-images/03_applications-of-cnns/02_a-glimpse-of-other-computer-vision-tasks.mp4
17.7 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/06_metropolis-hastings.mp4
17.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/01_jensens-inequality-kullback-leibler-divergence.mp4
17.7 MB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/01_concept-of-mean-encoding.mp4
17.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/02_k-means-from-probabilistic-perspective.mp4
17.8 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/03_gaussian-mixture-model.mp4
18.4 MB
2. competitive-data-science/01_introduction-recap/01_welcome-to-how-to-win-a-data-science-competition/02_course-overview.mp4
18.5 MB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/02_overview-of-modern-cnn-architectures.mp4
18.6 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/04_datetime-and-coordinates.mp4
18.6 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/06_bayesian-optimization.mp4
19.1 MB
2. competitive-data-science/01_introduction-recap/02_competition-mechanics/02_kaggle-overview-screencast.mp4
19.2 MB
2. competitive-data-science/01_introduction-recap/03_recap-of-main-ml-algorithms/01_recap-of-main-ml-algorithms.mp4
19.2 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/01_introduction-to-rnn/02_simple-rnn-and-backpropagation.mp4
19.2 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/03_keras/01_keras-introduction.mp4
19.4 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/05_example-of-gmm-training.mp4
19.4 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/02_dealing-with-vanishing-and-exploding-gradients.mp4
19.6 MB
2. competitive-data-science/05_validation/01_validation/01_validation-and-overfitting.mp4
19.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/04_training-gmm.mp4
19.8 MB
2. competitive-data-science/06_data-leakages/01_data-leakages/02_leaderboard-probing-and-examples-of-rare-data-leaks.mp4
19.8 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/02_modeling-a-distribution-of-images.mp4
19.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm.mp4
19.9 MB
1. intro-to-deep-learning/02_introduction-to-neural-networks/02_tensorflow/01_going-deeper-with-tensorflow.mp4
20.1 MB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/01_linear-regression.mp4
20.1 MB
2. competitive-data-science/06_data-leakages/01_data-leakages/03_expedia-challenge.mp4
20.4 MB
2. competitive-data-science/11_ensembling/01_ensembling/06_ensembling-tips-and-tricks.mp4
20.5 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/02_generative-adversarial-networks.mp4
20.7 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/07_regression-metrics-optimization.mp4
20.9 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/11_bayesian-neural-networks.mp4
21.0 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/02_crowdflower-competition.mp4
21.1 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/01_natural-language-processing-primer.mp4
21.2 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/07_metropolis-hastings-choosing-the-critic.mp4
21.3 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/08_example-of-metropolis-hastings.mp4
21.5 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/02_more-autoencoders/01_autoencoder-applications.mp4
21.5 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/05_handling-missing-values.mp4
21.9 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/05_nuances-of-gp.mp4
22.3 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/01_bag-of-words.mp4
22.3 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/01_latent-variable-models/01_latent-variable-models.mp4
22.3 MB
2. competitive-data-science/11_ensembling/01_ensembling/05_stacknet.mp4
22.4 MB
2. competitive-data-science/11_ensembling/01_ensembling/03_boosting.mp4
22.6 MB
2. competitive-data-science/08_advanced-feature-engineering-i/01_mean-encodings/03_extensions-and-generalizations.mp4
22.7 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/03_categorical-and-ordinal-features.mp4
23.4 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/04_generative-adversarial-networks/03_applications-of-adversarial-approach.mp4
23.9 MB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/01_motivation-for-convolutional-layers.mp4
23.9 MB
1. intro-to-deep-learning/01_introduction-to-optimization/02_linear-model-as-the-simplest-neural-network/02_linear-classification.mp4
23.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/04_probabilistic-pca.mp4
24.2 MB
1. intro-to-deep-learning/03_deep-learning-for-images/01_introduction-to-cnn/02_our-first-cnn-architecture.mp4
24.4 MB
2. competitive-data-science/11_ensembling/01_ensembling/04_stacking.mp4
24.4 MB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/03_hyperparameter-tuning-ii.mp4
24.9 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/05_visualizations.mp4
25.0 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/05_linear-regression.mp4
25.5 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/02_modern-rnns/03_modern-rnns-lstm-and-gru.mp4
25.7 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/01_monte-carlo-estimation.mp4
26.3 MB
2. competitive-data-science/09_hyperparameter-optimization/01_hyperparameter-tuning/04_hyperparameter-tuning-iii.mp4
26.9 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/05_example-em-for-discrete-mixture-e-step.mp4
26.9 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/02_feature-extraction-from-text-and-images/02_word2vec-cnn.mp4
27.1 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/05_lda-e-step-z.mp4
27.4 MB
2. competitive-data-science/04_exploratory-data-analysis/01_exploratory-data-analysis/04_exploring-anonymized-data.mp4
27.6 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/03_markov-chains.mp4
27.7 MB
1. intro-to-deep-learning/04_unsupervised-representation-learning/03_word-embeddings/02_word-embeddings.mp4
27.7 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/03_regression-metrics-review-i.mp4
27.7 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/02_sampling-from-1-d-distributions.mp4
27.9 MB
2. competitive-data-science/02_feature-preprocessing-and-generation-with-respect-to-models/01_feature-preprocessing-and-generation-with-respect-to-models/02_numeric-features.mp4
28.2 MB
2. competitive-data-science/04_exploratory-data-analysis/02_eda-examples/02_springleaf-competition-eda-ii.mp4
28.9 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/10_mcmc-for-lda.mp4
29.0 MB
3. bayesian-methods-in-machine-learning/01_introduction-to-bayesian-methods-conjugate-priors/01_introduction-to-bayesian-methods/04_example-thief-alarm.mp4
29.0 MB
3. bayesian-methods-in-machine-learning/05_variational-autoencoder/01_variational-autoencoders/04_scaling-variational-em.mp4
29.0 MB
1. intro-to-deep-learning/05_deep-learning-for-sequences/03_applications-of-rnns/01_practical-use-cases-for-rnns.mp4
30.5 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/06_example-em-for-discrete-mixture-m-step.mp4
30.7 MB
3. bayesian-methods-in-machine-learning/04_markov-chain-monte-carlo/01_mcmc/04_gibbs-sampling.mp4
30.7 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/03_applications-and-examples/01_general-em-for-gmm.mp4
30.9 MB
2. competitive-data-science/05_validation/01_validation/04_data-splitting-strategies.mp4
31.5 MB
3. bayesian-methods-in-machine-learning/02_expectation-maximization-algorithm/02_expectation-maximization-algorithm/03_e-step-details.mp4
31.9 MB
3. bayesian-methods-in-machine-learning/06_gaussian-processes-bayesian-optimization/01_gaussian-processes-and-bayesian-optimization/04_derivation-of-main-formula.mp4
32.6 MB
1. intro-to-deep-learning/03_deep-learning-for-images/02_modern-cnns/01_training-tips-and-tricks-for-deep-cnns.mp4
32.8 MB
2. competitive-data-science/09_hyperparameter-optimization/02_tips-and-tricks/01_practical-guide.mp4
34.4 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/04_lda-e-step-theta.mp4
35.0 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/03_example-ising-model.mp4
35.1 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/01_variational-inference/02_mean-field-approximation.mp4
37.2 MB
2. competitive-data-science/12_competitions-go-through/01_competitions-go-through/04_microsoft-malware-classification-challenge.mp4
39.7 MB
2. competitive-data-science/05_validation/01_validation/05_problems-occurring-during-validation.mp4
41.4 MB
2. competitive-data-science/07_metrics-optimization/01_metrics-optimization/05_classification-metrics-review.mp4
41.5 MB
3. bayesian-methods-in-machine-learning/03_variational-inference-latent-dirichlet-allocation/02_latent-dirichlet-allocation/06_lda-m-step-prediction.mp4
42.5 MB
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!
>