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PuzzlePlex: Benchmarking Foundation Models on Reasoning and Planning with Puzzles

PuzzlePlex benchmark assesses reasoning and planning capabilities of foundation models through diverse puzzles, providing metrics and insights into their performance and scalability.

Year
2025
Venue
arXiv 2025
Authors
9
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2510.06475ARXIV-DEFAULT
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Abstract

This work investigates the reasoning and planning capabilities of foundation models and their scalability in complex, dynamic environments. We introduce PuzzlePlex, a benchmark designed to assess these capabilities through a diverse set of puzzles. PuzzlePlex consists of 15 types of puzzles, including deterministic and stochastic games of varying difficulty, as well as single-player and two-player scenarios. The PuzzlePlex framework provides a comprehensive environment for each game, and supports extensibility to generate more challenging instances as foundation models evolve. Additionally, we implement customized game-playing strategies for comparison. Building on this benchmark, we develop fine-grained metrics to measure performance and conduct an in-depth analysis of frontier foundation models across two settings: instruction-based and code-based. Furthermore, we systematically investigate their scaling limits. Our findings show that reasoning models outperform others in instruction-based settings, while code-based execution presents greater challenges but offers a scalable and efficient alternative. PuzzlePlex enables targeted evaluation and guides future improvements in reasoning, planning, and generalization for foundation models.

Authors

9