Training: MLflow
Level
IntermediateDuration
16h / 2 daysDate
Individually arrangedPrice
Individually arrangedTraining: MLflow
The MLflow training is an intensive two-day course focusing on the practical application of MLflow for managing the machine learning lifecycle. The program is designed so that 80% of the time is dedicated to hands-on workshops and 20% to theory. Participants will learn how to efficiently register, track, deploy, and monitor ML models, working on real-world examples and use cases.
What will you learn?
- How to configure and manage MLflow for tracking ML experiments
- How to monitor and update deployed ML models
- How to register, store, and deploy ML models using MLflow
- How to integrate MLflow with popular ML frameworks and cloud platforms
Prerequisites
- Basic knowledge of Python programming
- Experience with data analysis tools is an advantage
- Basic understanding of machine learning
Who is this training for?
Data scientists and data engineers who want to expand their skills in ML lifecycle management
IT specialists looking to use MLflow to automate ML processes in their organizations
ML engineers and developers aiming to deploy and monitor ML models in production
Training Program
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Day 1: Introduction to MLflow and Model Management Basics
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MLflow fundamentals
- Introduction to MLflow and its architecture
- Installation and configuration of MLflow
- Tracking ML experiments with MLflow Tracking
- Recording and managing ML experiment metadata and results
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Model management and storage
- Registering models with MLflow Models
- Storing models in the MLflow Model Registry
- Hands-on practice: registering and tracking ML experiments
- Analysis and interpretation of experiment results
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Day 2: Advanced Techniques and Practical Applications
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Model deployment with MLflow Projects
- Creating and configuring MLflow projects
- Deploying models across different platforms
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Monitoring with MLflow Models
- Tracking and optimizing deployed models
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Integration with tools and services
- Integrating MLflow with popular ML frameworks (TensorFlow, PyTorch, Scikit-learn)
- Integrating MLflow with cloud platforms (AWS, Azure, GCP)
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Hands-on practice
- Deploying and monitoring models with MLflow
- Optimizing and maintaining deployed ML models