Are LLMs Ready for Scientific Discovery? A Capability-Oriented Benchmark for AI Scientists

πŸ“… 2026-07-13
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This study addresses a critical gap in existing scientific data analysis benchmarks, which fail to differentiate models’ capabilities across distinct scientific reasoning tasksβ€”such as hypothesis exploration, causal inference, and mechanistic explanation. To this end, the authors introduce SDABench, the first multidimensional evaluation benchmark specifically designed to assess scientific analytical competence. It encompasses six dimensions: descriptive, exploratory, inferential, predictive, causal, and mechanistic reasoning, comprising 527 real-world and 6,000 synthetically generated data instances across five scientific domains. Using a five-stage error analysis framework, the benchmark systematically evaluates 15 prominent large language models. Results reveal strong performance on descriptive tasks but substantial deficiencies in complex reasoning involving hypothesis selection, latent variable modeling, and mechanistic inference, indicating that current models remain ill-equipped to support high-level scientific discovery.
πŸ“ Abstract
Existing benchmarks for scientific data analysis evaluate LLMs primarily on code execution or workflow completion, overlooking that scientific analysis serves to support distinct types of scientific claims: hypothesis exploration, statistical inference, mechanistic explanation, each with different assumptions and validity criteria. We introduce SDABench, a benchmark that reorganizes evaluation around six capabilities (descriptive, exploratory, inferential, predictive, causal, and mechanistic) across five domains (Biology, Chemistry, Environment, Geography, Physics). SDABench comprises 527 real-data instances (SDA-Real) and 6000 synthetic instances (SDA-Synth), each in both multiple-choice and open-ended formats, constructed through an automated pipeline. Evaluating 15 representative LLMs, we find that models handle descriptive analysis well but degrade sharply on tasks requiring assumption selection, latent-process modeling, or mechanistic reasoning. SDABench further provides a five-stage error analysis framework that locates where LLMs fail: more advanced models more reliably identify the relevant scope and variables, but still struggle to select appropriate analytical procedures, model variable relationships, and draw valid conclusions.
Problem

Research questions and friction points this paper is trying to address.

scientific discovery
large language models
capability-oriented benchmark
scientific data analysis
mechanistic reasoning
Innovation

Methods, ideas, or system contributions that make the work stand out.

scientific discovery
capability-oriented benchmark
mechanistic reasoning
error analysis framework
large language models
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