Score: 2

Massive Memorization with Hundreds of Trillions of Parameters for Sequential Transducer Generative Recommenders

Published: October 24, 2025 | arXiv ID: 2510.22049v1

By: Zhimin Chen , Chenyu Zhao , Ka Chun Mo and more

BigTech Affiliations: Meta

Potential Business Impact:

Makes online suggestions faster with long histories.

Business Areas:
Semantic Search Internet Services

Modern large-scale recommendation systems rely heavily on user interaction history sequences to enhance the model performance. The advent of large language models and sequential modeling techniques, particularly transformer-like architectures, has led to significant advancements recently (e.g., HSTU, SIM, and TWIN models). While scaling to ultra-long user histories (10k to 100k items) generally improves model performance, it also creates significant challenges on latency, queries per second (QPS) and GPU cost in industry-scale recommendation systems. Existing models do not adequately address these industrial scalability issues. In this paper, we propose a novel two-stage modeling framework, namely VIrtual Sequential Target Attention (VISTA), which decomposes traditional target attention from a candidate item to user history items into two distinct stages: (1) user history summarization into a few hundred tokens; followed by (2) candidate item attention to those tokens. These summarization token embeddings are then cached in storage system and then utilized as sequence features for downstream model training and inference. This novel design for scalability enables VISTA to scale to lifelong user histories (up to one million items) while keeping downstream training and inference costs fixed, which is essential in industry. Our approach achieves significant improvements in offline and online metrics and has been successfully deployed on an industry leading recommendation platform serving billions of users.

Country of Origin
🇺🇸 United States

Repos / Data Links

Page Count
20 pages

Category
Computer Science:
Information Retrieval