AILGMay 8

FactoryBench: Evaluating Industrial Machine Understanding

arXiv:2605.0767569.1
Predicted impact top 59% in AI · last 90 daysOriginality Incremental advance
AI Analysis

For researchers and practitioners in industrial AI, this benchmark exposes the limitations of current LLMs in causal reasoning and decision-making for real-world robotic telemetry, highlighting a critical gap that needs to be addressed.

FactoryBench evaluates time-series models and LLMs on machine understanding over industrial robotic telemetry, finding that no frontier LLM exceeds 50% on structured causal levels or 18% on decision-making, revealing a wide gap between current models and operational understanding.

We introduce FactoryBench, a benchmark for evaluating time-series models and LLMs on machine understanding over industrial robotic telemetry. Q&A pairs are organized along four causal levels (state, intervention, counterfactual, decision) instantiating Pearl's ladder of causation, and span five answer formats: four structured formats are scored deterministically and free-form answers are scored by an LLM-as-judge voting protocol. We propose a scalable Q&A generation framework built around structured question templates, present FactoryWave (a dense, multitask, multivariate sensor dataset collected from a UR3 cobot and a KUKA KR10 industrial arm), and construct FactoryBench as a large-scale benchmark of over 70k Q&A items grounded in roughly 15k normalized episodes from FactoryWave, AURSAD, and voraus-AD. Zero-shot evaluation of six frontier LLMs shows that no model exceeds 50% on structured levels or 18% on decision-making, revealing a wide gap between current models and operational machine understanding.

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