RAR-files |
skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.rar |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r00 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r02 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r03 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r04 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r05 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r06 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r07 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r08 |
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skillshare.machine.learning.on.aws.sagemaker.for.beginners-skilledhares.r09 |
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Total size: |
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Archived
files |
01-introduction_to_course.mkv
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34,238,358 |
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02-001___what_is_cloud.mkv
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03-002__what_is_cloud_computing.mkv
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04-003_cloud_computing_services.mkv
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05-004___why_cloud_computing.mkv
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06-005___what_is_machine_learning.mkv
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07-006___traditional_approach_vs.mkv
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08-007__machine_learning_workflow.mkv
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09-008_applications_of_ml.mkv
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10-009___supervised_learning.mkv
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11-010___unsupervised_learning.mkv
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12-011___reinforcement_learning.mkv
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19,629,841 |
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13-lab_001___create_aws_account.mkv
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33,476,702 |
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14-lab_002_web_console_overview.mkv
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15-lab_003___create_a_notebook_instance.mkv
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16-lab_004____spinning_jupyter_notebook_in_sagemaker.mkv
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17-lab_005____upload_dataset_to_s3_bucket.mkv
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18-lab_006___import_datasets_from_s3_to_jupyter_notebook_in_sagemake.mkv
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19-lab_08___titanic_problem_statement.mkv
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20-lab_09___importing_dataset_to_jupyter_notebook.mkv
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21-lab_10___exploratory_data_analysis.mkv
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22-lab_11a___data_cleaning_part___i.mkv
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23-lab_11b___data_cleaning___part___ii.mkv
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24-lab___12_spliting_dataset_into_train_and_test_data.mkv
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25-lab_13___training_model_in_sagemaker.mkv
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26-lab_14___deploying_model.mkv
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27-lab_15___survival_prediction_and_deleting_endpoints.mkv
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28-lab__016___problem_statement_and_data_import.mkv
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29-lab_017___exploratory_data_analysis.mkv
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30-lab_018a_univariate_and_multivariate_analysis.mkv
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31-lab_018b_univariate_and_multivariate_analysis.mkv
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32-lab_019_splitting_dataset_into_train_and_test.mkv
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33-lab_20___model_training_job_in_sagemaker.mkv
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34-lab_21___price_prediction_and_deleting_the_endpoints.mkv
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35-lab_22___problem_statement_and_data_import.mkv
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36-lab_23___exploratory_data_analysis.mkv
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37-lab_24___data_modelling.mkv
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38-lab_25___accessing_pca_model_attributes.mkv
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39-lab_26___model_deployment_and_conclusion_analysis.mkv
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40-lab_27___data_modelling_k_means_algorithm.mkv
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41-lab_28__accessing_k_means_model_attributes.mkv
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42-lab_29___conclusion_anddeleting_endpoints.mkv
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43-lab_30_problem_statement_and_environment_setup.mkv
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44-lab_31___download_and_import_the_dataset.mkv
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45-lab_32___exploring_the_trainin_dataset.mkv
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46-lab_33___xgboost_and_training_dataset_transformation.mkv
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47-lab_34___training_the_model.mkv
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48-lab_35___model_deployment_and_validation.mkv
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Total size: |
1,612,585,184 |
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