Section 01
[Introduction] Practical Exploration of Small Language Models in Vietnamese Financial Numerical Reasoning
This article focuses on the research of Small Language Models (SLMs) in Vietnamese financial numerical reasoning tasks. It constructs the ViNumQA dataset as an evaluation benchmark, and verifies the practical value of small models in low-resource scenarios through prompt engineering (e.g., Chain-of-Thought), self-assessment mechanisms, and domain optimization strategies. The study shows that the optimized 7B-parameter model can achieve satisfactory numerical reasoning capabilities, providing a reference for AI applications in resource-constrained environments.