Optimizing RAG Techniques for Automotive Industry PDF Chatbots: A Case Study with Locally Deployed Ollama ModelsOptimizing RAG Techniques Based on Locally Deployed Ollama ModelsA Case Study with Locally Deployed Ollama Models
Fei Liu, Zejun Kang, Xing Han
Abstract
With the growing demand for offline PDF chatbots in automotive industrial production environments, optimizing the deployment of large language models (LLMs) in local, low-performance settings has become increasingly important. This study focuses on enhancing Retrieval-Augmented Generation (RAG) techniques for processing complex automotive industry documents using locally deployed Ollama models.
Topics & Concepts
Automotive industryComputer scienceEngineeringAerospace engineeringOptimization and Search ProblemsAI in Service InteractionsReinforcement Learning in Robotics