CausalPulse: An Industrial-Grade Neurosymbolic Multi-Agent Copilot for Causal Diagnostics in Smart Manufacturing

Authors

  • Chathurangi Shyalika Artificial Intelligence Institute, University of South Carolina
  • Utkarshani Jaimini Stride Lab, University of Michigan, Dearborn
  • Cory Henson Bosch Center for Artificial Intelligence, Pittsburgh
  • Amit Sheth Artificial Intelligence Institute, University of South Carolina Indian AI Research Organization

DOI:

https://doi.org/10.1609/aaaiss.v8i1.42588

Abstract

Modern manufacturing environments demand real-time, trustworthy, and interpretable root-cause insights to sustain productivity and quality. Traditional analytics pipelines often treat anomaly detection, causal inference, and root-cause analysis as isolated stages, limiting scalability and explainability. In this work, we present CausalPulse, an industry-grade multi-agent copilot that automates causal diagnostics in smart manufacturing. It unifies anomaly detection, causal discovery, and reasoning through a neurosymbolic architecture built on standardized agentic protocols. CausalPulse is being deployed in a Robert Bosch manufacturing plant, integrating seamlessly with existing monitoring workflows and supporting real-time operation at production scale. Evaluations on both public Future Factories and proprietary Planar Sensor Element datasets show high reliability, achieving overall success rates of 98.0% and 98.73%. Per-criterion success rates reached 98.75% for planning and tool use, 97.3% for self-reflection, and 99.2% for collaboration. Runtime experiments report end-to-end latency of 50-60,s per diagnostic workflow with near-linear scalability R^2=0.97, confirming real-time readiness. A qualitative comparison with existing industrial copilots highlights distinct advantages in modularity, extensibility, and deployment maturity. These results demonstrate how CausalPulse’s modular, human-in-the-loop design enables reliable, interpretable, and production-ready automation for next-generation manufacturing.

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Published

2026-05-18

How to Cite

Shyalika, C., Jaimini, U., Henson, C., & Sheth, A. (2026). CausalPulse: An Industrial-Grade Neurosymbolic Multi-Agent Copilot for Causal Diagnostics in Smart Manufacturing. Proceedings of the AAAI Symposium Series, 8(1), 558–567. https://doi.org/10.1609/aaaiss.v8i1.42588

Issue

Section

Machine Learning and Knowledge Engineering (MAKE 2026)