
Meituan Technical Team Showcases Cutting-Edge AI Research in Search and Recommendation at Top Global Conferences
The Meituan Business R&D Platform's Search and Recommendation ASX (Agentic System X) team has recently highlighted its significant contributions to the field of Artificial Intelligence. Focusing on the development of Large Language Model (LLM)-based Agent systems, the team has achieved breakthroughs in LLM post-training, Agentic Reinforcement Learning, and multimodal understanding. These advancements have led to dozens of publications in prestigious international conferences, including ICLR, NeurIPS, CVPR, and AAAI. This article explores the team's strategic focus on building sophisticated Agentic systems and the implications of their research for the future of search and recommendation technologies. By selecting six key papers for in-depth interpretation, Meituan demonstrates its commitment to pushing the boundaries of AI application in complex service scenarios.
Key Takeaways
- Strategic Focus on Agentic Systems: Meituan's ASX (Agentic System X) team is dedicated to building a comprehensive technology system centered on Large Language Model (LLM)-based Agents.
- Core Research Pillars: The team's research is concentrated on three critical areas: LLM post-training, Agentic Reinforcement Learning, and multimodal understanding.
- Global Academic Recognition: Meituan has published dozens of high-quality papers in top-tier AI conferences such as ICLR, NeurIPS, CVPR, and AAAI.
- Practical Application in Search and Recommendation: The research is specifically tailored to enhance the capabilities of search and recommendation systems through advanced Agentic frameworks.
In-Depth Analysis
The Framework 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 next-generation AI. The core mission of this team is the construction of an Agentic technology system that leverages the power of Large Language Models (LLMs). Unlike traditional search and recommendation algorithms that often rely on static models, the Agentic approach focuses on creating autonomous or semi-autonomous entities (Agents) capable of reasoning, planning, and executing complex tasks.
By focusing on "Agentic" systems, Meituan is positioning itself at the forefront of the shift from passive AI tools to active AI participants. This transition is crucial for search and recommendation environments where user intent is often multifaceted and requires a deeper level of contextual understanding and iterative interaction. The ASX framework serves as the foundational architecture for these advanced capabilities, integrating various AI disciplines into a cohesive system.
Advancing LLM Capabilities through Post-Training and Reinforcement Learning
A significant portion of the ASX team's research is dedicated to the post-training phase of Large Language Models. Post-training is essential for refining a general-purpose model into a specialized tool capable of handling the nuances of search and recommendation. This involves fine-tuning the models to better align with specific business goals and user behaviors.
Complementing the post-training efforts is the team's work in Agentic Reinforcement Learning (RL). Reinforcement learning is a pivotal technology for Agents, as it allows them to learn optimal strategies through interaction with their environment. In the context of search and recommendation, this means the system can continuously improve its decision-making processes based on feedback, leading to more accurate and personalized results. The integration of RL into the Agentic framework ensures that the system remains dynamic and adaptive to changing user needs and market trends.
Multimodal Understanding and Academic Excellence
In addition to text-based reasoning, the ASX team is deeply invested in multimodal understanding. In modern search and recommendation scenarios, information is rarely limited to text; it includes images, videos, and structured data. By developing models that can comprehend and synthesize information across different modalities, Meituan enhances the richness and relevance of its service offerings. This research direction is vital for creating a truly comprehensive search experience that can interpret visual cues and complex data patterns alongside textual queries.
The quality of Meituan's research is validated by its consistent presence at the world's most prestigious AI conferences. Publishing dozens of papers in venues like ICLR (International Conference on Learning Representations), NeurIPS (Neural Information Processing Systems), CVPR (Conference on Computer Vision and Pattern Recognition), and AAAI (Association for the Advancement of Artificial Intelligence) underscores the technical depth and innovation of the ASX team. These publications represent the cutting edge of AI research, covering the theoretical foundations and practical applications of LLM post-training, RL, and multimodal systems.
Industry Impact
The research conducted by Meituan's ASX team has profound implications for the AI industry, particularly in the evolution of search and recommendation engines. By moving toward LLM-based Agentic systems, the industry is shifting away from simple ranking algorithms toward intelligent systems that can understand complex user journeys.
Furthermore, the emphasis on post-training and reinforcement learning provides a blueprint for other organizations looking to specialize general AI models for specific industrial applications. Meituan's success in publishing at top-tier conferences also highlights the growing role of corporate R&D teams in driving fundamental AI research, bridging the gap between academic theory and real-world utility. As multimodal understanding becomes more integrated into these systems, we can expect a more intuitive and seamless interaction between users and digital platforms.
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 based on Large Language Model (LLM) Agents, specifically targeting improvements in search and recommendation functionalities through advanced AI techniques.
Question: What are the core technical directions mentioned in the research?
The team focuses on three main areas: Large Language Model (LLM) post-training, Agentic Reinforcement Learning, and multimodal understanding.
Question: In which international conferences has Meituan published its research?
Meituan has published dozens of high-quality research results in top AI conferences, including ICLR, NeurIPS, CVPR, and AAAI.


