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OneMall: One Architecture, More Scenarios -- End-to-End Generative Recommender Family at Kuaishou E-Commerce

Kun Zhang
Jingming Zhang
Wei Cheng
Yansong Cheng
Jiaqi Zhang
Hao Lu
Xu Zhang
Haixiang Gan
Jiangxia Cao
Tenglong Wang
Ximing Zhang
Boyang Xia
Kuo Cai
Shiyao Wang
Hongjian Dou
Jinkai Yu
Mingxing Wen
Qiang Luo
Dongxu Liang
Chenyi Lei
Jun Wang
Runan Liu
Zhaojie Liu
Ruiming Tang
Tingting Gao
Shaoguo Liu
Yuqing Ding
Hui Kong
Han Li
Guorui Zhou
Wenwu Ou
Kun Gai
Main:7 Pages
7 Figures
Bibliography:3 Pages
7 Tables
Appendix:1 Pages
Abstract

In the wave of generative recommendation, we present OneMall, an end-to-end generative recommendation framework tailored for e-commerce services at Kuaishou. Our OneMall systematically unifies the e-commerce's multiple item distribution scenarios, such as Product-card, short-video and live-streaming. Specifically, it comprises three key components, aligning the entire model training pipeline to the LLM's pre-training/post-training: (1) E-commerce Semantic Tokenizer: we provide a tokenizer solution that captures both real-world semantics and business-specific item relations across different scenarios; (2) Transformer-based Architecture: we largely utilize Transformer as our model backbone, e.g., employing Query-Former for long sequence compression, Cross-Attention for multi-behavior sequence fusion, and Sparse MoE for scalable auto-regressive generation; (3) Reinforcement Learning Pipeline: we further connect retrieval and ranking models via RL, enabling the ranking model to serve as a reward signal for end-to-end policy retrieval model optimization. Extensive experiments demonstrate that OneMall achieves consistent improvements across all e-commerce scenarios: +13.01\% GMV in product-card, +15.32\% Orders in Short-Video, and +2.78\% Orders in Live-Streaming. OneMall has been deployed, serving over 400 million daily active users at Kuaishou.

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