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Main Authors: Tie, Guiyao, Shi, Jiawen, Song, Dingjie, Huang, Yixiao, Sheng, Ziji, Zhou, Xueyang, Liu, Daizong, Zhou, Pan, Chen, Yongchao, Xu, Ran, He, Lifang, Wen, Qingsong, Li, Manling, Lu, Cong, Li, Shuai, Xie, Pengtao, Yuan, Yixuan, Meng, Rui, Xing, Lei, Sun, Lichao, Xiong, Caiming, Yu, Philip S., Gao, Jianfeng
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.23204
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author Tie, Guiyao
Shi, Jiawen
Song, Dingjie
Huang, Yixiao
Sheng, Ziji
Zhou, Xueyang
Liu, Daizong
Zhou, Pan
Chen, Yongchao
Xu, Ran
He, Lifang
Wen, Qingsong
Li, Manling
Lu, Cong
Li, Shuai
Xie, Pengtao
Yuan, Yixuan
Meng, Rui
Xing, Lei
Sun, Lichao
Xiong, Caiming
Yu, Philip S.
Gao, Jianfeng
author_facet Tie, Guiyao
Shi, Jiawen
Song, Dingjie
Huang, Yixiao
Sheng, Ziji
Zhou, Xueyang
Liu, Daizong
Zhou, Pan
Chen, Yongchao
Xu, Ran
He, Lifang
Wen, Qingsong
Li, Manling
Lu, Cong
Li, Shuai
Xie, Pengtao
Yuan, Yixuan
Meng, Rui
Xing, Lei
Sun, Lichao
Xiong, Caiming
Yu, Philip S.
Gao, Jianfeng
contents Scientific research is being reshaped by AI systems that move beyond isolated assistance toward longer-horizon workflows spanning literature grounding, hypothesis generation, experimentation, validation, reporting, and revision. This shift marks a transition from task-level AI for science to workflow-level research automation. Yet current systems remain fragmented, differing in autonomy, domain scope, execution environment, validation mechanism, and human oversight, while still struggling with evidence preservation, reproducibility, weak-direction rejection, provenance tracking, cross-domain robustness, and accountable scientific closure. This survey examines these developments through AutoResearch, defined as the developmental spectrum of AI-powered scientific workflow automation. Within it, Vibe Research denotes the human-steered region of prompt-based assistance and human-verified execution, whereas emerging AI-led systems coordinate larger portions of the discovery loop without achieving robust autonomy. We analyze how research systems redistribute control, evidence, execution, validation, and accountability across workflows and organize the field around five workflow conditions: literature and research grounding; hypothesis formation and planning; experimentation and tool use; feedback, validation, and review; and reporting and knowledge communication. We further synthesize AI scientist systems, mixed-initiative co-research frameworks, benchmarks, domain deployments, and open-source infrastructures. Finally, we propose five evaluation dimensions--novelty, validity, impact, reliability, and provenance--and show that AutoResearch autonomy is domain-conditioned, being more credible in structured, executable, and rapidly verifiable settings but limited in embodied, delayed, heterogeneous, ethical, or institutionally accountable contexts.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23204
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AutoResearch AI: Towards AI-Powered Research Automation for Scientific Discovery
Tie, Guiyao
Shi, Jiawen
Song, Dingjie
Huang, Yixiao
Sheng, Ziji
Zhou, Xueyang
Liu, Daizong
Zhou, Pan
Chen, Yongchao
Xu, Ran
He, Lifang
Wen, Qingsong
Li, Manling
Lu, Cong
Li, Shuai
Xie, Pengtao
Yuan, Yixuan
Meng, Rui
Xing, Lei
Sun, Lichao
Xiong, Caiming
Yu, Philip S.
Gao, Jianfeng
Artificial Intelligence
Scientific research is being reshaped by AI systems that move beyond isolated assistance toward longer-horizon workflows spanning literature grounding, hypothesis generation, experimentation, validation, reporting, and revision. This shift marks a transition from task-level AI for science to workflow-level research automation. Yet current systems remain fragmented, differing in autonomy, domain scope, execution environment, validation mechanism, and human oversight, while still struggling with evidence preservation, reproducibility, weak-direction rejection, provenance tracking, cross-domain robustness, and accountable scientific closure. This survey examines these developments through AutoResearch, defined as the developmental spectrum of AI-powered scientific workflow automation. Within it, Vibe Research denotes the human-steered region of prompt-based assistance and human-verified execution, whereas emerging AI-led systems coordinate larger portions of the discovery loop without achieving robust autonomy. We analyze how research systems redistribute control, evidence, execution, validation, and accountability across workflows and organize the field around five workflow conditions: literature and research grounding; hypothesis formation and planning; experimentation and tool use; feedback, validation, and review; and reporting and knowledge communication. We further synthesize AI scientist systems, mixed-initiative co-research frameworks, benchmarks, domain deployments, and open-source infrastructures. Finally, we propose five evaluation dimensions--novelty, validity, impact, reliability, and provenance--and show that AutoResearch autonomy is domain-conditioned, being more credible in structured, executable, and rapidly verifiable settings but limited in embodied, delayed, heterogeneous, ethical, or institutionally accountable contexts.
title AutoResearch AI: Towards AI-Powered Research Automation for Scientific Discovery
topic Artificial Intelligence
url https://arxiv.org/abs/2605.23204