AdNanny: One Reasoning LLM for All Offline Ads Recommendation Tasks
Nan Hu, Han Li, Jimeng Sun, Lu Wang, Fangkai Yang, Bo Qiao, Pu Zhao, David Dai, Mengyu Liu, Yuefeng Zhan, Jianjin Zhang, Weihao Han, Allen Sun, Qingwei Lin, Saravan Rajmohan, Dongmei Zhang, Denvy Deng, Feng Sun, Qi Zhang

TL;DR
AdNanny is a unified large language model designed for offline advertising tasks, leveraging reasoning-augmented training and reinforcement learning to improve accuracy and reduce manual effort in Bing Ads.
Contribution
The paper introduces AdNanny, a single reasoning-centric LLM that consolidates multiple offline advertising tasks, reducing redundancy and enhancing performance.
Findings
Significantly reduces manual labeling effort.
Improves accuracy across multiple offline advertising tasks.
Deployed successfully in Bing Ads production environment.
Abstract
Large Language Models (LLMs) have shown strong capabilities in Natural Language Understanding and Generation, but deploying them directly in online advertising systems is often impractical due to strict millisecond-level latency constraints. This has motivated the use of LLMs offline to improve retrieval, ranking, and recommendation models. Existing solutions typically fine-tune separate LLMs for individual tasks such as query-ad relevance labeling, keyword-based query generation, and user profiling. This results in redundant models, high maintenance cost, and limited performance gains despite substantial overlap in domain knowledge and reasoning patterns. We introduce AdNanny, a unified reasoning-centric LLM that serves as a shared backbone for offline advertising tasks. AdNanny is obtained by fine-tuning a public 671B-parameter DeepSeek-R1 checkpoint using a scalable training system…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Recommender Systems and Techniques · Topic Modeling
