MetaBox-v2: A Unified Benchmark Platform for Meta-Black-Box Optimization

Published: 18 Sept 2025, Last Modified: 30 Oct 2025NeurIPS 2025 Datasets and Benchmarks Track posterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Meta-Black-Box Optimization, Black-Box Optimization, Benchmarking Platform
TL;DR: A comprehensive benchmarking platform for Meta-Black-Box Optimization approches, which provides high-efficiency training/evaluation and flexible usages for potential users.
Abstract: Meta-Black-Box Optimization (MetaBBO) streamlines the automation of optimization algorithm design through meta-learning. It typically employs a bi-level structure: the meta-level policy undergoes meta-training to reduce the manual effort required in developing algorithms for low-level optimization tasks. The original MetaBox (2023) provided the first open-source framework for reinforcement learning-based single-objective MetaBBO. However, its relatively narrow scope no longer keep pace with the swift advancement in this field. In this paper, we introduce MetaBox-v2 (\url{https://github.com/MetaEvo/MetaBox}) as a milestone upgrade with four novel features: 1) a unified architecture supporting RL, evolutionary, and gradient-based approaches, by which we reproduce $23$ up-to-date baselines; 2) efficient parallelization schemes, which reduce the training/testing time by $10-40$x; 3) a comprehensive benchmark suite of $18$ synthetic/realistic tasks ($1900$+ instances) spanning single-objective, multi-objective, multi-model, and multi-task optimization scenarios; 4) plentiful and extensible interfaces for custom analysis/visualization and integrating to external optimization tools/benchmarks. To show the utility of MetaBox-v2, we carry out a systematic case study that evaluates the built-in baselines in terms of the optimization performance, generalization ability and learning efficiency. Valuable insights are concluded from thorough and detailed analysis for practitioners and those new to the field.
Croissant File: json
Dataset URL: https://huggingface.co/datasets/GMC-DRL/example_metadata/tree/main
Code URL: https://github.com/MetaEvo/MetaBox
Primary Area: Dataset and Benchmark for Optimization (e.g., convex and non-convex, stochastic, robust, metrics for optimization, scaling of datasets, benchmarks)
Submission Number: 237
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