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Epistemic Nearest Neighbors

Project description

Epistemic Nearest Neighbors

A fast, alternative surrogate for Bayesian optimization

ENN estimates a function's value and associated epistemic uncertainty using a K-Nearest Neighbors model. Queries take $O(N lnK)$ time, where $N$ is the number of observations available for KNN lookups. Compare to an exact GP, which takes $O(N^2)$ time. Additionally, measured running times are very small compared to GPs and other alternative surrogates. [1]

Contents

  • ENN surrogate, EpistemicNearestNeighbors [1]
  • TuRBO-ENN optimizer via create_optimizer with config factories
    • turbo_one_config() - TuRBO [2], matching the reference implementation.
    • turbo_enn_config() - Uses ENN instead of GP.
    • turbo_zero_config() - No surrogate
    • lhd_only_config() - LHD design on every ask(). Good for a baseline and for testing. The optimizer has an ask()/tell() interface. All turbo_*() methods follow TuRBO:
    • Generate candidates with RAASP [3] sampling.
    • Select a candidate with Thompson sampling (TuRBO-one), UCB (TuRBO-ENN), or randomly (TURBO-zero).

[1] Sweet, D., & Jadhav, S. A. (2025). Taking the GP Out of the Loop. arXiv preprint arXiv:2506.12818. https://arxiv.org/abs/2506.12818 [2] Eriksson, D., Pearce, M., Gardner, J. R., Turner, R., & Poloczek, M. (2020). Scalable Global Optimization via Local Bayesian Optimization. Advances in Neural Information Processing Systems, 32. https://arxiv.org/abs/1910.01739 [3] Rashidi, B., Johnstonbaugh, K., & Gao, C. (2024). Cylindrical Thompson Sampling for High-Dimensional Bayesian Optimization. Proceedings of The 27th International Conference on Artificial Intelligence and Statistics (pp. 3502–3510). PMLR. https://proceedings.mlr.press/v238/rashidi24a.html

Installation

pip install ennbo

Demonstration

demo_enn.ipynb - Shows how to use EpistemicNearestNeighbors to build and query an ENN model. demo_turbo_enn.ipynb - Shows how to use TurboOptimizer to optimize the Ackley function.

Installation, MacOS

On my MacBook I can run into problems with dependencies and compatibilities.

On MacOS try:

micromamba env create -n ennbo -f admin/conda-macos.yml
micromamba activate ennbo
pip install --no-deps ennbo
pytest -sv tests

You may replace micromamba with conda and this will probably still work.

The commands above make sure

  • You use the MacOS-specific PyTorch (with mps).
  • You avoid having multiple, competing OpenMPs installed PyTorch issue faiss issue.
  • You use old enough versions of NumPy and PyTorch to be compatible with faiss faiss issue.
  • Prevent matplotlib's installation from upgrading your NumPy to an incompatible version.
  • ennbo's listed dependencies do not undo any of the above (which is fine b/c the above commands set the up correctly).

Run tests with

pytest -x -sv tests

and they should all pass fairly quickly (~10s-30s).

If your code still crashes or hangs your, try this hack:

export KMP_DUPLICATE_LIB_OK=TRUE
export OMP_NUM_THREADS=1

I don't recommend this, however, as it will slow things down.

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