Fine-tuning Small Language Models as Efficient Enterprise Search Relevance Labelers
By: Yue Kang , Zhuoyi Huang , Benji Schussheim and more
Potential Business Impact:
Makes searching work better and cheaper.
In enterprise search, building high-quality datasets at scale remains a central challenge due to the difficulty of acquiring labeled data. To resolve this challenge, we propose an efficient approach to fine-tune small language models (SLMs) for accurate relevance labeling, enabling high-throughput, domain-specific labeling comparable or even better in quality to that of state-of-the-art large language models (LLMs). To overcome the lack of high-quality and accessible datasets in the enterprise domain, our method leverages on synthetic data generation. Specifically, we employ an LLM to synthesize realistic enterprise queries from a seed document, apply BM25 to retrieve hard negatives, and use a teacher LLM to assign relevance scores. The resulting dataset is then distilled into an SLM, producing a compact relevance labeler. We evaluate our approach on a high-quality benchmark consisting of 923 enterprise query-document pairs annotated by trained human annotators, and show that the distilled SLM achieves agreement with human judgments on par with or better than the teacher LLM. Furthermore, our fine-tuned labeler substantially improves throughput, achieving 17 times increase while also being 19 times more cost-effective. This approach enables scalable and cost-effective relevance labeling for enterprise-scale retrieval applications, supporting rapid offline evaluation and iteration in real-world settings.
Similar Papers
Augmented Relevance Datasets with Fine-Tuned Small LLMs
Information Retrieval
Helps computers learn what search results are best.
Scaling Up Efficient Small Language Models Serving and Deployment for Semantic Job Search
Information Retrieval
Makes smart search engines faster and cheaper.
Small Language Models for Efficient Agentic Tool Calling: Outperforming Large Models with Targeted Fine-tuning
Artificial Intelligence
Makes AI cheaper and faster for everyday tasks.