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Hauptverfasser: Pathak, Divya, Kumar, Harshit, Roy, Anuska, George, Felix, Verma, Mudit, Moogi, Pratibha
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2511.04032
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author Pathak, Divya
Kumar, Harshit
Roy, Anuska
George, Felix
Verma, Mudit
Moogi, Pratibha
author_facet Pathak, Divya
Kumar, Harshit
Roy, Anuska
George, Felix
Verma, Mudit
Moogi, Pratibha
contents Multi-Agentic AI systems, powered by large language models (LLMs), are inherently non-deterministic and prone to silent failures such as drift, cycles, and missing details in outputs, which are difficult to detect. We introduce the task of anomaly detection in agentic trajectories to identify these failures and present a dataset curation pipeline that captures user behavior, agent non-determinism, and LLM variation. Using this pipeline, we curate and label two benchmark datasets comprising \textbf{4,275 and 894} trajectories from Multi-Agentic AI systems. Benchmarking anomaly detection methods on these datasets, we show that supervised (XGBoost) and semi-supervised (SVDD) approaches perform comparably, achieving accuracies up to 98% and 96%, respectively. This work provides the first systematic study of anomaly detection in Multi-Agentic AI systems, offering datasets, benchmarks, and insights to guide future research.
format Preprint
id arxiv_https___arxiv_org_abs_2511_04032
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Detecting Silent Failures in Multi-Agentic AI Trajectories
Pathak, Divya
Kumar, Harshit
Roy, Anuska
George, Felix
Verma, Mudit
Moogi, Pratibha
Artificial Intelligence
Multi-Agentic AI systems, powered by large language models (LLMs), are inherently non-deterministic and prone to silent failures such as drift, cycles, and missing details in outputs, which are difficult to detect. We introduce the task of anomaly detection in agentic trajectories to identify these failures and present a dataset curation pipeline that captures user behavior, agent non-determinism, and LLM variation. Using this pipeline, we curate and label two benchmark datasets comprising \textbf{4,275 and 894} trajectories from Multi-Agentic AI systems. Benchmarking anomaly detection methods on these datasets, we show that supervised (XGBoost) and semi-supervised (SVDD) approaches perform comparably, achieving accuracies up to 98% and 96%, respectively. This work provides the first systematic study of anomaly detection in Multi-Agentic AI systems, offering datasets, benchmarks, and insights to guide future research.
title Detecting Silent Failures in Multi-Agentic AI Trajectories
topic Artificial Intelligence
url https://arxiv.org/abs/2511.04032