MLflow
30-minute quick start workshop ..
MLflow
Get hands-on experience with MLflow's core features in record time.
By the end of this workshop, you'll have:
Tracked your first ML experiment
Logged parameters, metrics, and models
Used the MLflow UI to compare experiments
Save and loaded models
Introduction
Machine Learning Models in Pentaho Data Catalog
Pentaho Data Catalog's ML Models feature integrates machine learning workflows into your data cataloging ecosystem. You can connect to ML model servers, import components and metadata, and organize models, experiments, versions, and runs within a structured hierarchy alongside your enterprise data.
Local Management Capabilities
The feature allows you to add ML model servers and build complete model hierarchies locally without requiring live connections to MLflow or other tracking servers. This is particularly useful for managing legacy models, internal-only components, or maintaining records of decommissioned ML assets that no longer exist on their original servers.
Lifecycle and Migration Support
You can create, edit, and remove ML components to keep your catalog clean and current. The system also supports importing and exporting ML model hierarchies, enabling you to reuse, back up, and migrate ML assets across different environments while maintaining governance standards and business policy alignment.
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