CausalPulse: An Industrial-Grade Neurosymbolic Multi-Agent Copilot for Causal Diagnostics in Smart Manufacturing
Chathurangi Shyalika, Utkarshani Jaimini, Cory Henson, Amit Sheth

TL;DR
CausalPulse is an industrial neurosymbolic multi-agent system that automates causal diagnostics in smart manufacturing, demonstrating high reliability, scalability, and real-time operation in real-world settings.
Contribution
It introduces a unified neurosymbolic architecture for anomaly detection, causal discovery, and reasoning, tailored for industrial deployment in manufacturing environments.
Findings
Achieved over 98% success rate on multiple datasets.
End-to-end latency of 50-60 seconds per diagnostic workflow.
Demonstrated near-linear scalability with R^2=0.97.
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…
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