
Meituan Technical Team Showcases Cutting-Edge AI Research with Six Top Conference Papers on Agentic Systems
Meituan's Business R&D Platform Search and Recommendation ASX (Agentic System X) team has recently highlighted its latest research achievements in the field of Large Language Model (LLM) based Agent technology. The team focuses on critical areas such as LLM post-training, Agentic Reinforcement Learning, and multi-modal understanding. With a track record of publishing dozens of high-quality papers at prestigious international AI conferences including ICLR, NeurIPS, CVPR, and AAAI, Meituan has selected six specific papers for in-depth interpretation. This research underscores Meituan's commitment to advancing the frontier of Agentic systems and their application in search and recommendation environments, providing valuable insights for the broader AI research community regarding the integration of LLMs into functional agent frameworks.
Key Takeaways
- Focus on Agentic Systems: Meituan's ASX (Agentic System X) team is dedicated to building a technology system centered on Large Language Model (LLM) based Agents.
- Core Research Directions: The team's primary research focuses include LLM post-training, Agentic Reinforcement Learning, and multi-modal understanding.
- Academic Excellence: Meituan has published dozens of high-quality research results at top-tier AI conferences such as ICLR, NeurIPS, CVPR, and AAAI.
- Selected Paper Insights: The team has curated and interpreted six specific papers to share their latest findings and inspire further development in the search and recommendation field.
In-Depth Analysis
The Strategic Focus of Agentic System X (ASX)
Meituan's Business R&D Platform has established the Search and Recommendation ASX (Agentic System X) team to spearhead the development of advanced AI agents. The core mission of this team is the construction of a comprehensive technology system that leverages Large Language Models (LLMs) as its foundation. By focusing on "Agentic" capabilities, the team aims to move beyond static models toward systems that can perceive, reason, and act within complex environments. This focus is particularly relevant for search and recommendation tasks, where the ability to understand user intent and provide dynamic, context-aware responses is paramount.
The ASX team's research is not limited to theoretical exploration but is deeply rooted in the practical challenges of modern AI. By deep-diving into the technical architecture of agents, they are addressing the fundamental requirements for creating more autonomous and capable digital assistants. The integration of LLMs serves as the cognitive engine for these agents, while the broader system architecture ensures they can operate effectively across various platforms and use cases.
Advancing the Frontiers of LLM and Reinforcement Learning
The research output from the ASX team highlights three critical pillars of their technical strategy: LLM post-training, Agentic Reinforcement Learning, and multi-modal understanding.
- LLM Post-training: This area is essential for refining pre-trained models to better suit specific tasks or to align with human preferences and operational requirements. By focusing on post-training, Meituan ensures that their LLMs are not just general-purpose engines but are optimized for the nuances of search and recommendation agents.
- Agentic Reinforcement Learning: Reinforcement learning (RL) is a cornerstone of agent development, allowing systems to learn optimal behaviors through interaction. The ASX team's focus on "Agentic" RL suggests a focus on how agents can improve their decision-making processes over time, becoming more efficient and accurate in fulfilling user requests.
- Multi-modal Understanding: In the modern digital landscape, information is rarely limited to text. By deep-diving into multi-modal understanding, the ASX team is equipping their agents with the ability to process and interpret diverse data types, including images and video, which is crucial for a comprehensive search and recommendation experience.
Recognition at Global AI Conferences
The quality of Meituan's research is validated by its consistent presence at the world's most prestigious AI conferences. The ASX team has contributed dozens of papers to venues such as the International Conference on Learning Representations (ICLR), the Conference on Neural Information Processing Systems (NeurIPS), the Conference on Computer Vision and Pattern Recognition (CVPR), and the Association for the Advancement of Artificial Intelligence (AAAI).
For this specific showcase, the team has selected six papers that represent the cutting edge of their recent work. These papers provide a window into the specific methodologies and breakthroughs Meituan is achieving in the realm of Agentic systems. By sharing these interpretations, the team aims to provide the industry with actionable insights and to foster a collaborative environment for AI research and development.
Industry Impact
The research conducted by Meituan's ASX team has significant implications for the AI industry, particularly in the evolution of search and recommendation engines. By successfully integrating LLMs with reinforcement learning and multi-modal capabilities, Meituan is setting a benchmark for how large-scale platforms can transition from traditional algorithms to more sophisticated, agent-based architectures.
Furthermore, the emphasis on post-training and Agentic RL addresses some of the most pressing challenges in AI today: reliability, adaptability, and the ability to handle complex, multi-step tasks. As these technologies mature, they will likely lead to more intuitive and personalized user experiences, where AI agents can act as proactive assistants rather than passive search tools. Meituan's commitment to publishing at top conferences also ensures that these advancements contribute to the global knowledge base, driving the entire industry toward more robust and capable Agentic systems.
Frequently Asked Questions
Question: What is the primary focus of Meituan's ASX team?
The ASX (Agentic System X) team focuses on building a technology system for AI Agents based on Large Language Models (LLMs). Their work covers core areas like LLM post-training, Agentic Reinforcement Learning, and multi-modal understanding to enhance search and recommendation services.
Question: At which international conferences has Meituan published its research?
Meituan's technical team has published dozens of high-quality research papers at top-tier AI conferences, including ICLR (International Conference on Learning Representations), NeurIPS (Conference on Neural Information Processing Systems), CVPR (Conference on Computer Vision and Pattern Recognition), and AAAI (Association for the Advancement of Artificial Intelligence).
Question: How many papers did Meituan select for this specific technical sharing session?
The Meituan technical team selected and interpreted six specific papers from their recent research output to share with the community in this special session focused on search and recommendation.


