Litcius/Paper detail

Tc-llama 2: fine-tuning LLM for technology and commercialization applications

Jeyoon Yeom, Hakyung Lee, Hoyoon Byun, Yewon Kim, Jeongeun Byun, Yunjeong Choi, Sungjin Kim, Kyungwoo Song

2024Journal Of Big Data17 citationsDOIOpen Access PDF

Abstract

This paper introduces TC-Llama 2, a novel application of large language models (LLMs) in the technology-commercialization field. Traditional methods in this field, reliant on statistical learning and expert knowledge, often face challenges in processing the complex and diverse nature of technology-commercialization data. TC-Llama 2 addresses these limitations by utilizing the advanced generalization capabilities of LLMs, specifically adapting them to this intricate domain. Our model, based on the open-source LLM framework, Llama 2, is customized through instruction tuning using bilingual Korean-English datasets. Our approach involves transforming technology-commercialization data into formats compatible with LLMs, enabling the model to learn detailed technological knowledge and product hierarchies effectively. We introduce a unique model evaluation strategy, leveraging new matching and generation tasks to verify the alignment of the technology-commercialization relationship in TC-Llama 2. Our results, derived from refining task-specific instructions for inference, provide valuable insights into customizing language models for specific sectors, potentially leading to new applications in technology categorization, utilization, and predictive product development.

Topics & Concepts

CommercializationComputer scienceField (mathematics)Data scienceGeneralizationInferenceProduct (mathematics)CategorizationNew product developmentArtificial intelligenceKnowledge managementMarketingBusinessPure mathematicsGeometryMathematicsMathematical analysisMachine Learning in Materials ScienceTopic ModelingSoftware Engineering Research