A Lightweight Multi-Expert Generative Language Model System for Engineering Information and Knowledge Extraction
- URL: http://arxiv.org/abs/2505.21109v1
- Date: Tue, 27 May 2025 12:31:24 GMT
- Title: A Lightweight Multi-Expert Generative Language Model System for Engineering Information and Knowledge Extraction
- Authors: Bogdan Bogachov, Yaoyao Fiona Zhao,
- Abstract summary: Small Language Graph (SLG) is a lightweight adaptation solution designed to address the two key challenges outlined above.<n>SLG was able to surpass conventional fine-tuning methods on the Exact Match metric by 3 times.<n>Also, the graph architecture and the small size of expert nodes offer a possible opportunity for distributed AI systems.
- Score: 2.8007688938043622
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite recent advancements in domain adaptation techniques for large language models, these methods remain computationally intensive, and the resulting models can still exhibit hallucination issues. Most existing adaptation methods do not prioritize reducing the computational resources required for fine-tuning and inference of language models. Hallucination issues have gradually decreased with each new model release. However, they remain prevalent in engineering contexts, where generating well-structured text with minimal errors and inconsistencies is critical. This work introduces a novel approach called the Small Language Graph (SLG), which is a lightweight adaptation solution designed to address the two key challenges outlined above. The system is structured in the form of a graph, where each node represents a lightweight expert - a small language model fine-tuned on specific and concise texts. The results of this study have shown that SLG was able to surpass conventional fine-tuning methods on the Exact Match metric by 3 times. Additionally, the fine-tuning process was 1.7 times faster compared to that of a larger stand-alone language model. These findings introduce a potential for small to medium-sized engineering companies to confidently use generative AI technologies, such as LLMs, without the necessity to invest in expensive computational resources. Also, the graph architecture and the small size of expert nodes offer a possible opportunity for distributed AI systems, thus potentially diverting the global need for expensive centralized compute clusters.
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