AI Agents

InternAgent-1.5: A Unified Agentic Framework for Long-Horizon Autonomous Scientific Discovery

SShiyang FengRRunmin MaXXiangchao YanYYue FanYYusong HuSSongtao HuangSShuaiyu ZhangZZongsheng CaoTTianshuo PengJJiakang YuanZZijie GuoZZhijie ZhongSShangheng DuWWeida WangJJinxin ShiYYuhao ZhouXXiaohan HeZZhiyin YuFFangchen YuQQihao ZhengJJiamin WuMMianxin LiuCChi ZhangSShaowei HouSShuya LiYYankai JiangWWenjie LouLLilong WangZZifu WangJJiong WangWWanghan XuYYue DengDDongrui LiuYYiheng WangWWenlong ZhangFFenghua LingSShufei ZhangXXiaosong WangSShuangjia ZhengXXun HuangSSiqi SunSShuyue HuPPeng YeCChunfeng SongBBin WangCConghui HeYYihao LiuXXin LiQQibin HouTTao ChenXXiangyu YueBBin WangLLiang HeDDahua LinBBowen ZhouBBo ZhangLLei Bai
Published
February 9, 2026
Authors
57

Abstract

We introduce InternAgent-1.5, a unified system designed for end-to-end scientific discovery across computational and empirical domains. The system is built on a structured architecture composed of three coordinated subsystems for generation, verification, and evolution. These subsystems are supported by foundational capabilities for deep research, solution optimization, and long horizon memory. The architecture allows InternAgent-1.5 to operate continuously across extended discovery cycles while maintaining coherent and improving behavior. It also enables the system to coordinate computational modeling and laboratory experimentation within a single unified system. We evaluate InternAgent-1.5 on scientific reasoning benchmarks such as GAIA, HLE, GPQA, and FrontierScience, and the system achieves leading performance that demonstrates strong foundational capabilities. Beyond these benchmarks, we further assess two categories of discovery tasks. In algorithm discovery tasks, InternAgent-1.5 autonomously designs competitive methods for core machine learning problems. In empirical discovery tasks, it executes complete computational or wet lab experiments and produces scientific findings in earth, life, biological, and physical domains. Overall, these results show that InternAgent-1.5 provides a general and scalable framework for autonomous scientific discovery.

Keywords

scientific discoverycomputational modelinglaboratory experimentationunified systemdeep researchsolution optimizationlong horizon memoryscientific reasoning benchmarksalgorithm discoveryempirical discovery

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