English

MTGenRec: An Efficient Distributed Training System for Generative Recommendation Models in Meituan

Distributed, Parallel, and Cluster Computing 2025-11-25 v2

Abstract

Recommendation is crucial for both user experience and company revenue in Meituan as a leading lifestyle company, and generative recommendation models (GRMs) are shown to produce quality recommendations recently. However, existing systems are limited by insufficient functionality support and inefficient implementations for training GRMs in industrial scenarios. As such, we introduce MTGenRec as an efficient and scalable system for GRM training. Specifically, to handle real-time insertions/deletions of sparse embeddings, MTGenRec employs dynamic hash tables to replace static ones. To improve training efficiency, MTGenRec conducts dynamic sequence balancing to address the computation load imbalances among GPUs and adopts feature ID deduplication alongside automatic table merging to accelerate embedding lookup. Extensive experiments show that MTGenRec improves training throughput by 1.6×2.4×1.6\times -- 2.4\times while achieving good scalability when running over 100 GPUs. MTGenRec has been deployed for many applications in Meituan and is now handling hundreds of millions of requests on a daily basis. On the delivery platform, we observe a 1.22% growth in user order volume and a 1.31% enhancement in online PV_CTR.

Keywords

Cite

@article{arxiv.2505.12663,
  title  = {MTGenRec: An Efficient Distributed Training System for Generative Recommendation Models in Meituan},
  author = {Yuxiang Wang and Xiao Yan and Chi Ma and Mincong Huang and Xiaoguang Li and Lei Yu and Chuan Liu and Ruidong Han and He Jiang and Bin Yin and Shangyu Chen and Fei Jiang and Xiang Li and Wei Lin and Haowei Han and Bo Du and Jiawei Jiang},
  journal= {arXiv preprint arXiv:2505.12663},
  year   = {2025}
}
R2 v1 2026-07-01T02:20:40.839Z