Leveraging LLMs to Enable Natural Language Search on Go-to-market Platforms
Jesse Yao, Saurav Acharya, Priyaranjan Parida, Srinivas, Attipalli, Ali Dasdan

TL;DR
This paper presents a novel approach using Large Language Models to enable natural language search on GTM platforms, improving user access to complex enterprise data through an innovative pipeline and fine-tuning techniques.
Contribution
It introduces a pipeline that converts natural language queries into structured search fields using LLMs, enhanced by advanced prompt engineering and supervised fine-tuning, demonstrating high accuracy.
Findings
Achieved 97% average accuracy in query interpretation
Supervised fine-tuning improved model performance
Effective use of prompt engineering strategies
Abstract
Enterprise searches require users to have complex knowledge of queries, configurations, and metadata, rendering it difficult for them to access information as needed. Most go-to-market (GTM) platforms utilize advanced search, an interface that enables users to filter queries by various fields using categories or keywords, which, historically, however, has proven to be exceedingly cumbersome, as users are faced with seemingly hundreds of options, fields, and buttons. Consequently, querying with natural language has long been ideal, a notion further empowered by Large Language Models (LLMs). In this paper, we implement and evaluate a solution for the Zoominfo product for sellers, which prompts the LLM with natural language, producing search fields through entity extraction that are then converted into a search query. The intermediary search fields offer numerous advantages for each…
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Taxonomy
TopicsNatural Language Processing Techniques · Semantic Web and Ontologies · Digital Rights Management and Security
