Abstract
CausalDS is a benchmark for evaluating causal reasoning in data-science workflows that combines synthetic causal structures with realistic observational data and natural-language stories across Pearl's three rungs of causal inference.
Large language models (LLMs) increasingly act as integrated data-science agents, combining abstract reasoning with advanced tool use. Yet the relevant benchmark landscape largely divides into symbolic causal reasoning benchmarks without realistic data analysis or data analysis benchmarks without a principled causal data-generating structure. Furthermore, existing causal evaluation datasets are often restricted to curated examples from existing sources, with diversity coming from limited templatized variations rather than from systematic generation of novel synthetic causal structures. We introduce CausalDS, a benchmark for evaluating causal reasoning in agentic data-science workflows. Each benchmark instance is a scene consisting of a sampled structural causal model (SCM) with generated observational data and an accompanying synthetic natural-language story grounded in a realistic domain. We optionally ground the composition of the benchmark components in empirical distributions obtained from real-world datasets, thus retaining empirical structure while reducing the "causal parrot" risk through completely synthetic generation. From each scene, we then derive tasks spanning all three of Pearl's rungs, with typical data-science prediction tasks appearing as Rung 1. Most tasks include a data science coding component, where the model typically needs to use several tools to arrive at the final answer due to the frequent presence of imperfect observations, which are generated by an observation model. Additionally, recognizing when a question admits no warranted answer and abstaining is treated as a first-class scored outcome. The benchmark thus jointly evaluates symbolic causal reasoning, data science, uncertainty quantification, abstention, and tool use/coding.
Community
We introduce CausalDS, a benchmark generator for agentic causal data science. Rather than relying on a fixed collection of examples, CausalDS generates fresh hidden causal graphs and SCMs, synthetic tabular data, graph-audited natural-language stories, and tasks spanning all three rungs of Pearl’s causal hierarchy. Exam composition is fully parameterizable: it can be tailored to specific evaluation goals or grounded in empirical distributions from real-world corpora.
The benchmark jointly evaluates causal reasoning, statistical estimation, uncertainty quantification, abstention on non-identifiable queries, and tool use in file-backed data-science workflows. Our experiments show that these capabilities dissociate substantially across current models, particularly on abstention and uncertainty quantification, where the open-weights model lag behind the frontier ones.
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