DP-100
Azure Data Scientist Associate
Certification Overview
Microsoft's Azure Machine Learning certification covering model training, deployment, and MLOps with Azure ML and Python. Covers responsible AI and automated machine learning. Renewable via free Microsoft Learn assessment.
The Azure Data Scientist Associate (DP-100) is a globally recognized benchmark designed for professionals aiming to prove their expertise in data. In today's competitive landscape, this certification acts as a critical signal to employers regarding your technical proficiency and commitment to the field.
Primary Impact
- Higher salary ceiling in Data roles
- Validated expertise at the enterprise level
Market Signal
Ranked as a Top Data Credential for 2026, holding the DP-100 significantly reduces the time-to-hire for senior positions.
Market Outlook
We monitor job market volume in real-time to provide the most accurate demand forecasting for your career.
Market Sentiment
There are currently 4 open roles in the US requiring this specific certification.
Tracking period: 12 Weeks
Job data provided by Adzuna
Is DP-100 right for you?
Don't make a blind decision. Compare DP-100 against similar certifications to find the best ROI for your specific career path.
DP-100 vs CDP
See a side-by-side breakdown of salary potential, exam difficulty, and hiring volume for both credentials.
Want more insights?
Use our full analytics suite to calculate your personal ROI, effort-to-value ratio, and 5-year career projections.
Maintenance & Recognition
Renewal Requirements
Industry Recognition
Proctoring Options
Path to Excellence
Everything you need to successfully navigate the DP-100 certification journey.
01 Entry Requirements
-
Python Proficiency
Strong Python skills required for working with Azure ML SDK, pandas, and scikit-learn.
-
ML Fundamentals
Understanding of machine learning concepts: regression, classification, clustering, and model evaluation.
-
Azure Basics
Familiarity with Azure portal, resource groups, and basic Azure services helpful.
02 The Process
Azure ML Workspace (25-30%)
Set up workspaces, compute targets, datastores, and manage environments for ML workflows.
Model Training (20-25%)
Train models using AutoML, Designer, and SDK. Tune hyperparameters and track experiments.
MLOps & Deployment (25-30%)
Deploy models as endpoints, create pipelines, implement CI/CD, and monitor model performance.
Responsible AI (15-20%)
Apply fairness, interpretability, and responsible AI practices using Azure tools.
Live Postings
Real-time Local Data1/12/2026
Microsoft Solution Architect
2/22/2026
Data Scientist
8/7/2025
Data Scientist
9/27/2025
Azure AI Apps Architect
Job data powered by Adzuna
Ready to Get Certified?
Start your DP-100 certification journey today and open doors to new opportunities in data.