OpenOneRec Technical Report
Guorui Zhou, Honghui Bao, Jiaming Huang, Jiaxin Deng, Jinghao Zhang, Junda She, Kuo Cai, Lejian Ren, Lu Ren, Qiang Luo, Qianqian Wang, Qigen Hu, Rongzhou Zhang, Ruiming Tang, Shiyao Wang, Wuchao Li, Xiangyu Wu, Xinchen Luo, Xingmei Wang, Yifei Hu, Yunfan Wu, Zhanyu Liu

TL;DR
This paper introduces RecIF-Bench, a comprehensive benchmark and large-scale datasets, along with scalable models, to advance recommendation systems towards general intelligence capabilities.
Contribution
It presents a holistic benchmark, a massive dataset, a reproducible training framework, and state-of-the-art models that push recommendation systems closer to general intelligence.
Findings
Models scale predictably while retaining general knowledge.
Our models outperform baselines on Amazon benchmark with 26.8% average improvement.
RecIF-Bench enables thorough evaluation of recommendation and reasoning capabilities.
Abstract
While the OneRec series has successfully unified the fragmented recommendation pipeline into an end-to-end generative framework, a significant gap remains between recommendation systems and general intelligence. Constrained by isolated data, they operate as domain specialists-proficient in pattern matching but lacking world knowledge, reasoning capabilities, and instruction following. This limitation is further compounded by the lack of a holistic benchmark to evaluate such integrated capabilities. To address this, our contributions are: 1) RecIF Bench & Open Data: We propose RecIF-Bench, a holistic benchmark covering 8 diverse tasks that thoroughly evaluate capabilities from fundamental prediction to complex reasoning. Concurrently, we release a massive training dataset comprising 96 million interactions from 160,000 users to facilitate reproducible research. 2) Framework & Scaling: To…
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Code & Models
- 🤗OpenOneRec/OneRec-1.7Bmodel· 9.2k dl· ♡ 19.2k dl♡ 1
- 🤗OpenOneRec/OneRec-8Bmodel· 830 dl· ♡ 1830 dl♡ 1
- 🤗OpenOneRec/OneRec-8B-promodel· 243 dl· ♡ 1243 dl♡ 1
- 🤗OpenOneRec/OneRec-1.7B-promodel· 160 dl160 dl
- 🤗OpenOneRec/OneRec-8B-pro-pretrainmodel· 13 dl13 dl
- 🤗OpenOneRec/OneRec-1.7B-pro-pretrainmodel· 12 dl12 dl
- 🤗OpenOneRec/OneRec-8B-pretrainmodel· 44 dl44 dl
- 🤗OpenOneRec/OneRec-1.7B-pretrainmodel· 14 dl14 dl
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Explainable Artificial Intelligence (XAI)
