Implement a Data Science and Machine Learning Solution for AI with Microsoft Fabric (DP-604)

Course 8705
1 DAY COURSE
Price: $716.00
Course Outline

This learning path explores the end-to-end data science process in Microsoft Fabric, from data exploration and preparation to machine learning model training and deployment. Learners gain hands-on experience using notebooks, Data Wrangler, MLflow, and Fabric-native tools to build, track, and operationalize machine learning solutions for AI-driven analytics.

Implement a Data Science and Machine Learning Solution for AI with Microsoft Fabric (DP-604) Benefits

  • In this course, you will learn how to:

    • Load and manage data in a Lakehouse within Microsoft Fabric.
    • Utilize notebooks for comprehensive data exploration.
    • Preprocess data using Microsoft Fabric's Data Wrangler for optimized model training.
    • Train and manage machine learning models with MLflow, tracking experiments effectively.
    • Generate batch predictions to apply AI in practical scenarios.
  • Prerequisites

    • Familiarity with basic data concepts and terminology.

DP-604 Course Outline

Learning Objectives

1. Introduction to End-to-End Analytics Using Microsoft Fabric

  • Overview of Microsoft Fabric and unified analytics
  • End-to-end analytics architecture
  • Data teams and collaboration in Fabric
  • Enabling and using Microsoft Fabric

2. Get Started with Data Science in Microsoft Fabric

  • Understanding the data science lifecycle
  • Exploring and processing data in Fabric
  • Training and scoring models
  • Hands-on: Explore data science workflows in Fabric

3. Explore Data for Data Science with Notebooks

  • Using Fabric notebooks for data exploration
  • Loading and analyzing datasets
  • Understanding data distribution and missing values
  • Applying advanced exploration techniques
  • Visualizing data with charts
  • Hands-on: Perform data exploration using notebooks

4. Preprocess Data with Data Wrangler

  • Understanding Data Wrangler capabilities
  • Performing exploratory data analysis
  • Handling missing and inconsistent data
  • Transforming features with operators
  • Hands-on: Preprocess data for machine learning

5. Train and Track Machine Learning Models with MLflow

  • Training machine learning models in notebooks
  • Tracking experiments with MLflow
  • Managing models in Microsoft Fabric
  • Hands-on: Train and track a machine learning model

6. Generate Batch Predictions Using Deployed Models

  • Customizing models for batch scoring
  • Preparing data for predictions
  • Generating and storing predictions in Delta tables
  • Hands-on: Generate and save batch predictions
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