PROMETHEUS: Automating Deep Causal Research Integrating Text, Data and Models
Sridhar Mahadevan

TL;DR
PROMETHEUS is a framework that organizes scientific literature and data into causal atlases, enabling deep, navigable causal analysis across diverse scientific domains.
Contribution
It introduces a novel method for transforming retrieved scientific texts, data, and models into structured causal atlases for comprehensive research navigation.
Findings
Case studies demonstrate deep causal analysis from text and data.
The framework supports evaluation of counterfactuals against scientific substrates.
It reveals local support, contradictions, and underdetermination in scientific claims.
Abstract
Large language models can extract local causal claims from text, but those claims become more useful when organized as persistent, navigable world models rather than as flat summaries. We introduce PROMETHEUS, a framework that turns retrieved literature, filings, reviews, reports, agent traces, source data, code, simulations, and scientific models into causal atlases: sheaf-like families of local causal predictive-state models over an explicit cover of a research substrate. Each local region contains causal episodes, structured claim tables, predictive tests, support statistics, and provenance; restriction maps compare overlapping regions; gluing diagnostics expose agreement, drift, contradiction, and underdetermination. The resulting Topos World Model is not a single universal graph. It is a research instrument for navigating what a corpus says, where it says it, how strongly it is…
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