Adds early stopping support for Ray integration (#3276)
# Description This PR introduces support for early stopping in Ray integration through the `Stopper` class. It enables trials to end sooner when they are unlikely to yield useful results, reducing wasted compute time and speeding up experimentation. Previously, when running hyperparameter tuning with Ray integration, all trials would continue until the training configuration’s maximum iterations were reached, even if a trial was clearly underperforming. This wasn’t always efficient, since poor-performing trials could often be identified early on. With this PR, an optional early stopping mechanism is introduced, allowing Ray to terminate unpromising trials sooner and improve the overall efficiency of hyperparameter tuning. The PR also includes a `CartpoleEarlyStopper` example in `vision_cartpole_cfg.py`. This serves as a reference implementation that halts a trial if the `out_of_bounds` metric doesn’t reduce after a set number of iterations. It’s meant as a usage example: users are encouraged to create their own custom stoppers tailored to their specific use cases. Fixes #3270. ## Type of change - New feature (non-breaking change which adds functionality) ## Checklist - [x] I have run the [`pre-commit` checks](https://pre-commit.com/) with `./isaaclab.sh --format` - [ ] I have made corresponding changes to the documentation - [x] My changes generate no new warnings - [ ] I have added tests that prove my fix is effective or that my feature works - [ ] I have updated the changelog and the corresponding version in the extension's `config/extension.toml` file - [x] I have added my name to the `CONTRIBUTORS.md` or my name already exists there --------- Co-authored-by:garylvov <67614381+garylvov@users.noreply.github.com> Co-authored-by:
garylvov <gary.lvov@gmail.com> Co-authored-by:
sbtc-sipbb <sbtc@sipbb.ch> Co-authored-by:
Kelly Guo <kellyg@nvidia.com>
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