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arXiv 提交日期: 2026-05-26
📄 Abstract - ORCA: An End-to-End Interactive Copilot for Optimized Root Cause Analysis

Causal analysis is a crucial task in many domains, including manufacturing, social science, and medicine. However, despite recent progress, the conceptual and methodological complexity of causal methods makes them largely inaccessible to domain experts. This gap prevents experts from leveraging these advances and hinders researchers who lack access to real-world data for validation. To bridge this divide, we introduce ORCA, a copilot for end-to-end causal analysis. ORCA orchestrates agents to understand the user's goals and guide them through the most appropriate causal analysis workflow, from fully automatic to highly user-guided execution. It features causal discovery, causal effect estimation, explainability and Root-Cause-Analysis (RCA). ORCA evaluates and compares performance, generates key metrics and diagrams, and generates insights through structured reports. We highlight its effectiveness across several real-world use-cases.

顶级标签: agents machine learning
详细标签: causal analysis root cause analysis copilot interactive system workflow orchestration 或 搜索:

ORCA:面向优化根因分析的端到端交互式智能助手 / ORCA: An End-to-End Interactive Copilot for Optimized Root Cause Analysis


1️⃣ 一句话总结

ORCA是一个端到端的智能助手,能够自动或交互式地引导用户完成因果分析全流程,通过集成因果发现、效应估计和根因分析等功能,帮助非专业用户快速定位问题根源并生成结构化报告。

源自 arXiv: 2605.27022