Home/ Courses/ Microsoft/ DP-100: Azure Data Scientist
Microsoft Authorised Associate · Data Science 2026 Objectives Top-paid Azure ML Cert

DP-100
Azure Data Scientist Associate

Train, evaluate, deploy and operate ML models on Azure Machine Learning at production grade — mapped to DP-100. The senior Microsoft data-science credential.

Duration: 4 days / 32 hrs
💻Format: Instructor-Led + Azure ML Sandbox
🌐Delivery: On-site · Virtual · Hybrid
Pass rate: 90%
📅Next intake: 19 May 2026
DP-100: Azure Data Scientist training session at Nexperts Academy
🧠

AML mastery

Studio, Compute, Datastore, Pipelines, Model Registry, MLflow

Generative AI on Azure

Azure OpenAI fine-tune, Foundry, prompt flow, RAG

📊

ML lifecycle

Data prep, training, evaluation, deployment, monitoring, retraining

🔐

Responsible AI

Fairlearn, InterpretML, RAI dashboard, model cards

What this course is

Where Azure ML stops
being notebooks.

DP-100 is Microsoft's Azure Data Scientist Associate credential. It validates that you can build, train, deploy, monitor and govern ML solutions on Azure ML at production quality — not just run a notebook.

At Nexperts, DP-100 is delivered on a real Azure ML workspace. By day 4 you've shipped four production-shape ML products: a tabular classifier with AML Pipelines, a deployment with model monitor, a Foundry-grounded GenAI app, and a Responsible AI dashboard for an audit-ready model.

DP-100 is the cert that distinguishes ML platform engineers from data scientists who 'use Azure'. The exam tests platform discipline, not modelling craft.

The 2026 DP-100 update broadened coverage of generative AI on Azure (Foundry, OpenAI, prompt flow), MLflow integration, and Responsible AI tooling. We cover all three with hands-on labs.

Who should take this course
🧠

ML engineers

Already work on ML and want the formal Microsoft credential.

📊

Data scientists

Comfortable modelling. DP-100 is the bridge to Azure deployment.

☁️

Azure cloud engineers

Pivoting into ML platform engineering. DP-100 gives the Azure-native lens.

👨‍💻

Data engineers

Adding ML capabilities to data products. DP-100 + DP-203 is the full combo.

🌟

DP-203 holders

Natural progression. DP-203 gave data depth, DP-100 adds modelling depth.

💼

Solutions architects

Designing AI-augmented Azure workloads. DP-100 keeps you honest in technical reviews.

Prerequisites
1–2 years of professional Python and ML experience
Comfortable with pandas, scikit-learn or PyTorch / TensorFlow
Working knowledge of supervised vs unsupervised learning, evaluation metrics
Basic Azure familiarity (AZ-900 / AI-900 helpful but not required)
Don't have AI-900? Ask about our AI-900 → DP-100 bundle.