Saved in:
Bibliographic Details
Main Authors: Ma, Zhenyu, Song, Yuyang, Yang, Chunyi, Zhu, Jingyi, Xu, Limei, Xiao, Min, Jiang, Xukai
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.23169
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911707603927040
author Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Xu, Limei
Xiao, Min
Jiang, Xukai
author_facet Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Xu, Limei
Xiao, Min
Jiang, Xukai
contents Large language models are moving scientific research from text assistance toward agentic workflows, yet biological research requires strong object validation, methodological suitability, reproducibility, and auditability. Prompt engineering, general RAG, or tool use alone cannot reliably produce domain-specific scientific judgment. Here, we present PRAXIS, a verifiable biological research agent framework driven by literature learning and case distillation. PRAXIS converts research experience, failure boundaries, domain rules, and executable procedures into structured long-term memory. By coordinating successful cases, negative cases, rules, and skills, PRAXIS supports problem definition, object validation, method selection, workflow execution, result interpretation, and review feedback across diverse biocomputational tasks. We instantiated PRAXIS as an agent suite for biomedical computing and evaluated it through object validation, case retrieval, memory ablation, public benchmarks, and cross-agent workflows. The results show that case-based learning improves method selection, error suppression, and workflow organization in complex biological research tasks. Rather than replacing scientists, PRAXIS provides a general pathway for transforming research experience into executable, auditable, and transferable agent capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23169
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle PRAXIS: Case-distilled and code-verified AI agents for biological research
Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Xu, Limei
Xiao, Min
Jiang, Xukai
Quantitative Methods
Large language models are moving scientific research from text assistance toward agentic workflows, yet biological research requires strong object validation, methodological suitability, reproducibility, and auditability. Prompt engineering, general RAG, or tool use alone cannot reliably produce domain-specific scientific judgment. Here, we present PRAXIS, a verifiable biological research agent framework driven by literature learning and case distillation. PRAXIS converts research experience, failure boundaries, domain rules, and executable procedures into structured long-term memory. By coordinating successful cases, negative cases, rules, and skills, PRAXIS supports problem definition, object validation, method selection, workflow execution, result interpretation, and review feedback across diverse biocomputational tasks. We instantiated PRAXIS as an agent suite for biomedical computing and evaluated it through object validation, case retrieval, memory ablation, public benchmarks, and cross-agent workflows. The results show that case-based learning improves method selection, error suppression, and workflow organization in complex biological research tasks. Rather than replacing scientists, PRAXIS provides a general pathway for transforming research experience into executable, auditable, and transferable agent capabilities.
title PRAXIS: Case-distilled and code-verified AI agents for biological research
topic Quantitative Methods
url https://arxiv.org/abs/2605.23169