Workflow
这几个方向,从自驾转大模型会比较丝滑......
自动驾驶之心·2025-08-06 11:25

Core Insights - The article discusses the booming field of large models in AI, particularly focusing on various directions such as RAG (Retrieval-Augmented Generation), AI Agents, and multi-modal models [1][2]. Group 1: Large Model RAG - Large model RAG is highlighted as a significant area, with emphasis on understanding components like retrievers, augmenters, and generators, and how knowledge bases can enhance performance [1]. - The article mentions the rapid development of subfields within RAG, including Graph RAG, applications in visual understanding, and various knowledge-oriented methods [1]. Group 2: AI Agents - AI Agents are identified as a hot direction in large models, covering topics such as single-agent and multi-agent systems, reinforcement learning, and efficient communication among agents [1]. - The integration of RAG with agents is also noted as a promising area for exploration [1]. Group 3: Multi-modal Models - The article points out the extensive directions available in multi-modal models, including visual language models, pre-training datasets, and fine-tuning processes [2]. - Deployment, inference, and optimization of these models are also discussed as critical components of the development process [2]. Group 4: Community and Learning - The article encourages engagement with the "Big Model Heart Tech" community for further learning and collaboration in the field of large models [3]. - The community aims to build a significant platform for talent and academic information related to large models [3].