Cette page est affichée en anglais. Une traduction française est en cours.
ScriptsJul 2, 2026·3 min de lecture

Weights & Biases — ML Experiment Tracking and Visualization Platform

Track, compare, and visualize machine learning experiments with automatic logging for metrics, hyperparameters, and artifacts.

Prêt pour agents

Installation agent prête

Cet actif peut être installé après choix du runtime, vérification du plan et exécution de la commande adaptée.

Native · 98/100Policy : autoriser
Surface agent
Tout agent MCP/CLI
Type
Skill
Installation
Single
Confiance
Confiance : Established
Point d'entrée
Weights & Biases Overview
Commande d'installation directe
npx -y tokrepo@latest install e311cdcf-7657-11f1-9bc6-00163e2b0d79 --target codex

À exécuter après confirmation du plan en dry-run.

Introduction

Weights & Biases (W&B) is an open-source ML experiment tracking library that logs metrics, hyperparameters, model checkpoints, and datasets during training. The wandb Python client is open source and can report to either the hosted W&B service or a self-hosted server.

What Weights & Biases Does

  • Logs training metrics, system metrics, and hyperparameters automatically during model training
  • Generates interactive dashboards for comparing runs across experiments
  • Tracks datasets and model artifacts with versioning and lineage
  • Supports hyperparameter sweeps with built-in Bayesian and grid search strategies
  • Integrates natively with PyTorch, TensorFlow, Keras, Hugging Face Transformers, and Lightning

Architecture Overview

The W&B client library instruments training loops by intercepting metric calls and streaming data to a backend. Locally, it writes run data to a wandb/ directory. The data syncs to a W&B server (cloud or self-hosted) where it is stored in a structured format. The web UI queries this data to render charts, tables, and comparison views. Artifacts (models, datasets) are content-addressed and stored with dependency graphs for reproducibility.

Self-Hosting & Configuration

  • Install the client with pip install wandb on Python 3.7+
  • Authenticate with wandb login using an API key from your W&B account
  • Self-host the W&B server via Docker or Kubernetes using the official Helm chart
  • Set WANDB_BASE_URL to point at a self-hosted instance instead of the cloud service
  • Configure offline mode with WANDB_MODE=offline for air-gapped environments, then sync later

Key Features

  • Automatic logging hooks for major ML frameworks reduce instrumentation effort
  • Interactive run comparison with parallel coordinates, scatter plots, and custom panels
  • Artifact versioning tracks datasets and models with lineage and dependency graphs
  • Sweep agent runs hyperparameter searches with configurable strategies
  • Reports combine charts, markdown, and code into shareable documents

Comparison with Similar Tools

  • MLflow — Open-source experiment tracking with broader model registry; W&B provides richer visualization
  • TensorBoard — Free visualization for TensorFlow; W&B adds cross-framework support and collaboration
  • Neptune — Hosted experiment tracker; W&B's open-source client allows self-hosting
  • ClearML — End-to-end MLOps; W&B focuses on experiment tracking and visualization
  • SwanLab — Lightweight alternative with similar tracking features and a modern UI

FAQ

Q: Is Weights & Biases free to use? A: The client library is open source (Apache-2.0). The hosted service has a free tier for individuals and paid plans for teams. Self-hosting requires a license.

Q: Can I use W&B without an internet connection? A: Yes. Set WANDB_MODE=offline to log locally, then sync with wandb sync when connectivity is restored.

Q: Which ML frameworks does it support? A: PyTorch, TensorFlow, Keras, Hugging Face Transformers, Lightning, JAX, scikit-learn, XGBoost, and more via automatic integrations.

Q: How does it compare to MLflow? A: Both track experiments and models. W&B offers more interactive visualization and collaboration features; MLflow provides a broader open-source model registry and deployment workflow.

Sources

Fil de discussion

Connectez-vous pour rejoindre la discussion.
Aucun commentaire pour l'instant. Soyez le premier à partager votre avis.

Actifs similaires