RAR-files |
linkedin.learning.supervised.learning.essential.training-xqzt.rar |
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5C4D02A6 |
linkedin.learning.supervised.learning.essential.training-xqzt.r00 |
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linkedin.learning.supervised.learning.essential.training-xqzt.r01 |
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linkedin.learning.supervised.learning.essential.training-xqzt.r02 |
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linkedin.learning.supervised.learning.essential.training-xqzt.r03 |
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linkedin.learning.supervised.learning.essential.training-xqzt.r04 |
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Total size: |
261,940,760 |
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Archived
files |
01.01-supervised_machine_learning_and_the_technology_boom.mkv
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01.02-using_the_exercise_files.mkv
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01.03-what_you_should_know.mkv
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1,090,936 |
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02.01-what_is_supervised_learning.mkv
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02.02-python_supervised_learning_packages.mkv
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02.03-predicting_with_supervised_learning.mkv
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5,591,118 |
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03.01-defining_logistic_and_linear_regression.mkv
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03.02-steps_to_prepare_data_for_modeling.mkv
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03.03-checking_your_dataset_for_assumptions.mkv
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18,375,643 |
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03.04-creating_a_linear_regression_model.mkv
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7,087,721 |
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03.05-creating_a_logistic_regression_model.mkv
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03.06-evaluating_regression_model_predictions.mkv
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6,425,945 |
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04.01-identify_common_decision_trees.mkv
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4,926,232 |
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04.02-splitting_data_and_limiting_decision_tree_depth.mkv
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04.03-how_to_build_a_decision_tree.mkv
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04.04-creating_your_first_decision_trees.mkv
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04.05-analyzing_decision_tree_performance.mkv
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16,950,934 |
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04.06-exploring_how_ensemble_methods_create_strong_learners.mkv
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4,966,289 |
676B75AA |
05.01-discovering_your_k-nearest_neighbors.mkv
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05.02-whats_the_big_deal_about_k.mkv
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05.03-how_to_assemble_a_knn_model.mkv
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05.04-building_your_own_knn.mkv
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05.05-deciphering_knn_model_metrics.mkv
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06.01-biological_vs._artificial_neural_networks.mkv
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8,639,478 |
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06.02-preprocessing_data_for_modeling.mkv
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06.03-how_neural_networks_find_patterns_in_data.mkv
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5,314,257 |
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06.04-assembling_your_neural_networks.mkv
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06.05-comparing_networks_and_selecting_final_models.mkv
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07.01-ethical_overview.mkv
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07.02-how_can_i_keep_developing_my_skills_in_supervised_learning.mkv
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12,285,186 |
77EE2379 |
Ex_Files_Supervised_Learning.zip |
3,616,023 |
922070C9 |
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Total size: |
261,937,566 |
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