How to Use W&B Sweeps for Hyperparameter Search
A practical guide to W&B Sweeps for ML engineers: how the sweep controller and agent architecture works, configuring Bayesian vs random vs grid search with the right parameter distributions, writing sweep-compatible training scripts that read from wandb.config, running parallel agents across multiple GPUs and SLURM clusters, using Hyperband early termination to save compute, interpreting parallel coordinates plots, and avoiding common pitfalls like over-broad search spaces and treating the best sweep run as a final result without seed averaging.