Understanding the Distinction Between Large Language Models and AI Agents
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In a recent LinkedIn post, Daniel Lee, an experienced professional in data and AI, highlights the differences between Large Language Models (LLMs) and AI agents. LLMs excel in generating answers for straightforward Q&A contexts due to their training on extensive datasets. On the other hand, AI agents are adept at autonomous problem-solving, using memory, tools, and reasoning for complex tasks like customer service by analyzing past data. Lee advises selecting the right technology based on application needs, sparking varied professional discussions on LinkedIn.