PLUM: Adapting Pre-trained Language Models for Industrial-scale Generative Recommendations
He, Ruining, Heldt, Lukasz, Hong, Lichan, Keshavan, Raghunandan, Mao, Shifan, Mehta, Nikhil, Su, Zhengyang, Tsai, Alicia, Wang, Yueqi, Wang, Shao-Chuan, Yi, Xinyang, Baugher, Lexi, Cakici, Baykal, Chi, Ed, Goodrow, Cristos, Han, Ningren, Ma, He, Rosales, Romer, Van Soest, Abby, Tandon, Devansh, Wu, Su-Lin, Yang, Weilong, Zheng, Yilin
–arXiv.org Artificial Intelligence
Large Language Models (LLMs) pose a new paradigm of modeling and computation for information tasks. Recommendation systems are a critical application domain poised to benefit significantly from the sequence modeling capabilities and world knowledge inherent in these large models. In this paper, we introduce PLUM, a framework designed to adapt pre-trained LLMs for industry-scale recommendation tasks. PLUM consists of item tokenization using Semantic IDs, continued pre-training (CPT) on domain-specific data, and task-specific fine-tuning for recommendation objectives. For fine-tuning, we focus particularly on generative retrieval, where the model is directly trained to generate Semantic IDs of recommended items based on user context. We conduct comprehensive experiments on large-scale internal video recommendation datasets. Our results demonstrate that PLUM achieves substantial improvements for retrieval compared to a heavily-optimized production model built with large embedding tables. We also present a scaling study for the model's retrieval performance, our learnings about CPT, a few enhancements to Semantic IDs, along with an overview of the training and inference methods that enable launching this framework to billions of users in YouTube.
arXiv.org Artificial Intelligence
Oct-10-2025
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