Nyandwi's
repositories
|
00_intro_to_python
|
01_intro_to_Numpy_for_data_computation
|
02_data_manipulation_with_pandas
|
03_data_visualizations_with_matplotlib
|
04_data_visualization_with_seaborn
|
05_data_visualization with_pandas
|
06_exploratory_data_analysis
|
07_intro_to_data_preparation
|
08_encoding_categorical_features
|
09_feature_scaling
|
10_handling_missing_values
|
11_ml_fundamentals
|
12_intro_to_sklearn
|
13_linear_models_for_regression
|
14_linear_models_for_classification
|
15_support_vector_machines_for_regression
|
16_support_vector_machines_for_classification
|
17_decision_trees_for_regression
|
18_decision_trees_for_classification
|
19_random_forests_for_regression
|
20_random_forests_for_classification
|
21_ensemble_models
|
22_intro_to_unsupervised_learning_with_kmeans_clustering
|
23_a_practical_intro_to_principal_components_analysis
|
24_intro_to_neural_networks
|
25_intro_to_tensorflow_for_deeplearning
|
26_neural_networks_for_regresion_with_tensorflow
|
27_neural_networks_for_classification_with_tensorflow
|
28_intro_to_computer_vision_and_cnn
|
29_cnn_for_real_world_data_and_image_augmentation
|
30_cnn_architectures_and_transfer_learning
|
31_intro_to_nlp_and_text_preprocessing
|
32_using_word_embeddings_to_represent_texts
|
33_recurrent_neural_networks
|
34_using_cnns_and_rnns_for_texts_classification
|
35_using_pretrained_bert_for_text_classification
|
assets
|
extras
|
outline
|
overrides
|
search
|
.nojekyll
|
404.html
|
index.html
|
sitemap.xml
|
sitemap.xml.gz
|