SciFi: A Safe, Lightweight, User-Friendly, and Fully Autonomous Agentic AI Workflow for Scientific Applications

arXiv cs.AI / 4/16/2026

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Key Points

  • The paper proposes a safe, lightweight, and user-friendly agentic AI framework designed to autonomously execute well-defined scientific tasks with minimal human intervention.
  • It combines an isolated execution environment with a three-layer agent loop and a self-assessing “do-until” mechanism that uses stopping criteria to improve reliability and operational safety.
  • The framework is built to work with large language models of varying capability levels, dynamically leveraging them while keeping the workflow structured around explicit task context.
  • By targeting end-to-end automation for routine scientific workloads, the approach aims to reduce manual overhead so researchers can focus more on creative and open-ended inquiry.
  • The work emphasizes deployment reliability in real-world scientific research, addressing shortcomings of current agentic systems in trustworthy execution.

Abstract

Recent advances in agentic AI have enabled increasingly autonomous workflows, but existing systems still face substantial challenges in achieving reliable deployment in real-world scientific research. In this work, we present a safe, lightweight, and user-friendly agentic framework for the autonomous execution of well-defined scientific tasks. The framework combines an isolated execution environment, a three-layer agent loop, and a self-assessing do-until mechanism to ensure safe and reliable operation while effectively leveraging large language models of varying capability levels. By focusing on structured tasks with clearly defined context and stopping criteria, the framework supports end-to-end automation with minimal human intervention, enabling researchers to offload routine workloads and devote more effort to creative activities and open-ended scientific inquiry.