AI Agent Papers 2026
The list of papers in AI agent 2026 that engineers, researchers should not miss
A handpicked collection of 2026 research papers sourced from arXiv, focused on the core pillars of the AI agent ecosystem—multi-agent coordination, memory and RAG, tooling, evaluation and observability, and security. Whether you're an AI engineer building agentic systems, a researcher exploring emerging architectures, or a developer integrating LLM agents into real-world products, this collection keeps you current on what’s working, what’s failing, and where the field is headed. Updated weekly from arXiv.
- Yuxing Lu, Yucheng Hu, Xukai Zhao, Jiuxin Cao20265,530 checkouts
- Ziyao Zeng, Chen Liu, Tianyu Liu, Hao Wang, Xiatao Sun, Fengyu Yang, Xiaofeng Liu, Zhiwen Fan20267,689 checkouts
- Xiaopan Zhang, Zejin Wang, Zhixu Li, Jianpeng Yao, Jiachen Li20266,189 checkouts
- Xianyang Liu, Shangding Gu, Dawn Song20268,426 checkouts
- Faezeh Fadaei, Jenny Carla Moran, Taha Yasseri20267,735 checkouts
- Salaheddin Alzu'bi, Baran Nama, Arda Kaz, Anushri Eswaran, Weiyuan Chen, Sarvesh Khetan, Rishab Bala, Tu Vu, Sewoong Oh20265,223 checkouts
- Hanlin Zhou, Huah Yong Chan20267,617 checkouts
- Jun-Min Lee, Meong Hi Son, Edward Choi20268,681 checkouts
- Nikita Benkovich, Vitalii Valkov20266,095 checkouts
- Aneesh Pappu, Batu El, Hancheng Cao, Carmelo di Nolfo, Yanchao Sun, Meng Cao, James Zou20265,682 checkouts
- Ujwal Kumar, Alice Saito, Hershraj Niranjani, Rayan Yessou, Phan Xuan Tan20265,760 checkouts
- Ed Li, Junyu Ren, Cat Yan20269,712 checkouts
- Shuai Shao, Yixiang Liu, Bingwei Lu, Weinan Zhang20268,117 checkouts
- Wei Zhu, Lixing Yu, Hao-Ren Yao, Zhiwen Tang, Kun Yue20267,409 checkouts
- Wei Zhu, Zhiwen Tang, Kun Yue20265,282 checkouts
- Xinyuan Song, Liang Zhao20268,525 checkouts
- Shuo Liu, Tianle Chen, Ryan Amiri, Christopher Amato20267,858 checkouts
- Jon Chun, Kathrine Elkins, Yong Suk Lee20268,670 checkouts
- Ruiwen Zhou, Maojia Song, Xiaobao Wu, Sitao Cheng, Xunjian Yin, Yuxi Xie, Zhuoqun Hao, Wenyue Hua, Liangming Pan, Soujanya Poria, Min-Yen Kan20267,739 checkouts
- Haoji Zhang, Yuzhe Li, Zhenqiang Liu, Chenyang Liu, Shenyang Zhang, Yi Zhou20267,937 checkouts
FAQ
What is AI Agent Papers 2026?
AI Agent Papers 2026 is a curated collection of research papers focused on the AI agent ecosystem. It brings together 2026 papers sourced from arXiv so readers can quickly discover important work without searching across fragmented sources. The list is designed to make high-signal agent research easier to browse, compare, and revisit.
What topics does AI Agent Papers 2026 cover?
The collection covers core topics in the AI agent ecosystem, including multi-agent coordination, memory and RAG, tooling, evaluation and observability, and security. These themes reflect the practical and research challenges involved in building reliable LLM agent systems. The page is intended to help readers follow the most relevant directions in agentic AI.
Where do the papers in AI Agent Papers 2026 come from?
The papers in this collection are sourced from arXiv. This makes the list especially useful for readers who want early access to current research in agentic AI and related systems work. It serves as a streamlined entry point into fast-moving preprint literature.
Who should read AI Agent Papers 2026?
This list is useful for AI engineers, researchers, and developers working with LLM agents and agentic systems. It is especially helpful for people building multi-agent workflows, retrieval-augmented systems, evaluation pipelines, and secure AI products. Anyone trying to stay current with practical and emerging agent research can benefit from it.
How often is AI Agent Papers 2026 updated?
AI Agent Papers 2026 is updated weekly from arXiv. Regular updates help readers keep up with new papers, shifting trends, and emerging techniques in the AI agent ecosystem. This makes the collection a useful ongoing resource rather than a static reading list.
Why use a curated list of AI agent papers instead of searching arXiv directly?
A curated list saves time by filtering out noise and highlighting papers that are more likely to matter for real-world learning and implementation. Instead of manually scanning large numbers of preprints, readers can start with a focused shortlist organized around meaningful themes. This is especially valuable in agentic AI, where new papers appear quickly and terminology changes fast.
Does AI Agent Papers 2026 focus on research only, or also on practical AI engineering?
The collection is research-driven, but it is also highly relevant to practical AI engineering. Its topic coverage includes areas such as tooling, observability, evaluation, memory, and security, which are central to production-grade agent systems. That makes it useful not just for academic reading, but also for engineering decision-making.
How can I use AI Agent Papers 2026 effectively?
A good way to use the list is to start with the topics most relevant to your current work, such as multi-agent coordination or memory and RAG. From there, you can track recurring methods, compare evaluation approaches, and identify papers that influence current agent design patterns. Over time, the list can function as both a discovery tool and a structured.
What makes AI Agent Papers 2026 useful for tracking trends in agentic AI?
Because the list is focused specifically on 2026 papers and refreshed weekly, it helps readers spot emerging patterns earlier than broader evergreen resources. It also narrows attention to core agent-system concerns like coordination, retrieval, tooling, observability, and security. That combination makes it useful for trend tracking as well as technical study.
Is AI Agent Papers 2026 suitable for beginners?
Yes, the list can be useful for beginners, especially those who want a structured starting point in agentic AI research. While some papers may be advanced, the curated format makes it easier to identify important themes and gradually build understanding. Beginners can start with familiar topics like RAG or agent tooling before moving into more complex multi-agent and evaluation work.