Augmented Data Science: Hypothesis search agent
Augmented Data Science: Hypothesis search agent tl;dr (never ai;dr) Finding testable hypotheses has traditionally relied on the data scientist's experience and a literature review (in line with guidance from the business team). LLMs via an agent skill can structure and expand that search. We built a three-step skill ( context gathering , causal vs. predictive framing , and evidence-backed hypothesis table ) and tested it on two retail business questions using Claude Opus 4.6 and GPT 5.4. The framing step did most of the work: with minimal context, the causal/predictive distinction produced useful, literature-backed hypotheses. Running two different models was complementary, not redundant. 86% of references checked out; directional claims were reliable, but effect sizes were not. The skill expands the search space, but it does not replace the domain expertise that makes the search useful. Confirming our earlier conclusion, ...