For more details on using these classes in ML experiments, consult the Experiments and Artifacts docs.
Experiments overview
Use foundational classes in the W&B Python SDK for tracking experiments and managing artifacts
These classes comprise the core building blocks for tracking machine learning experiments, managing artifacts, and configuring SDK behavior. These foundational classes enable you to log metrics, store model checkpoints, version datasets, and manage experiment configurations with full reproducibility and collaboration features.