The agency expected of Agentic Large Language Models goes beyond answering correctly, requiring autonomy to set goals and decide what to explore. We term this investigatory intelligence, distinguishing it from executional intelligence, which merely completes assigned tasks. Data Science provides a natural testbed, as real-world analysis starts from raw data rather than explicit queries, yet few benchmarks focus on it. To address this, we introduce Deep Data Research (DDR), an open-ended task where LLMs autonomously extract key insights from databases, and DDR-Bench, a large-scale, checklist-based benchmark that enables verifiable evaluation. Results show that while frontier models display emerging agency, long-horizon exploration remains challenging. Our analysis highlights that effective investigatory intelligence depends not only on agent scaffolding or merely scaling, but also on intrinsic strategies of agentic models.
@article{arxiv.2602.02039,
title = {Hunt Instead of Wait: Evaluating Deep Data Research on Large Language Models},
author = {Wei Liu and Peijie Yu and Michele Orini and Yali Du and Yulan He},
journal= {arXiv preprint arXiv:2602.02039},
year = {2026}
}
Comments
14 pages, 7 tables, 8 figures, accepted by ICML 2026