CLIMOct 28, 2025

ReplicationBench: Can AI Agents Replicate Astrophysics Research Papers?

arXiv:2510.24591v16 citationsh-index: 5
Originality Incremental advance
AI Analysis

This addresses the need to assess AI agents' faithfulness and correctness for scientific research workflows, particularly in data-driven domains like astrophysics, though it is incremental as it focuses on benchmarking rather than novel agent capabilities.

The authors tackled the problem of evaluating AI agents as scientific research assistants by introducing ReplicationBench, a framework that tests whether agents can replicate entire astrophysics research papers, and found that even the best-performing language models score under 20%.

Frontier AI agents show increasing promise as scientific research assistants, and may eventually be useful for extended, open-ended research workflows. However, in order to use agents for novel research, we must first assess the underlying faithfulness and correctness of their work. To evaluate agents as research assistants, we introduce ReplicationBench, an evaluation framework that tests whether agents can replicate entire research papers drawn from the astrophysics literature. Astrophysics, where research relies heavily on archival data and computational study while requiring little real-world experimentation, is a particularly useful testbed for AI agents in scientific research. We split each paper into tasks which require agents to replicate the paper's core contributions, including the experimental setup, derivations, data analysis, and codebase. Each task is co-developed with the original paper authors and targets a key scientific result, enabling objective evaluation of both faithfulness (adherence to original methods) and correctness (technical accuracy of results). ReplicationBench is extremely challenging for current frontier language models: even the best-performing language models score under 20%. We analyze ReplicationBench trajectories in collaboration with domain experts and find a rich, diverse set of failure modes for agents in scientific research. ReplicationBench establishes the first benchmark of paper-scale, expert-validated astrophysics research tasks, reveals insights about agent performance generalizable to other domains of data-driven science, and provides a scalable framework for measuring AI agents' reliability in scientific research.

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