Microsoft Azure Data Scientist Associate (DP-100)-2023
Learn DP-100 and get certified as an Azure Data Scientist
This video series covers the Azure Data Scientist Associate (DP-100).
Lessons Covered Include:
Domain 1: Design and prepare a machine learning solution
-
1.0 course intro
-
1.1 prerequisite technology
-
1.2 compute specification workload ml training
-
1.3 create azure ml workspace
-
1.4 explore azure ml workspace
-
1.5 create manage datasets
-
1.6 create compute
-
1.7 monitor compute
Domain 2: Explore data and train models
-
2.1 load transform data
-
2.2 analyze data azure data explorer
-
2.3 azure data explorer demo
-
2.5 use designer
-
2.7 automl azure ml studio
-
2.9 develop with jupyter notebook
-
2.10 develop with visual studio code
-
2.11 train model python sdk
Domain 3: Prepare a model for deployment
-
3.1 configure compute for job run
-
3.2 GitHub to Azure Cloud Shell Feedback Loop
-
3.3 explore open datasets python sdk
-
3.4 explore azure ml cli
-
3.9 describe MLflow model output azure ml studio databricks
-
3.10 mlops mlflow tracking
-
3.11 dbmlops open source mlflow
Domain 4: Deploy and retrain a model
-
4.1 real time and batch deployment
-
4.3 end to end ml databricks mlflow
-
4.4 dbmlops end to end mlops on databricks
-
4.5 using azure open datasets automl
-
4.6 trigger Azure Machine Learning Pipeline GitHub
-
5.0 conclusion
Learning Objectives
-
Manage Azure Resources for Machine Learning
-
Run Experiments and Train Models
-
Deploy and Operationalize Machine Learning Solutions
-
Implement Responsible Machine Learning
Additional Popular Resources