Structured Report Generation Blueprint with NVIDIA AI (Llama 3.3)
Research and summarization is the most popular agent use-case called out in our State of AI Agents report. But, conducting research and distilling the results into high quality reports is a time consulting and challenging task. Here, we show how to build an agent that can orchestrate the end-to-end process of report planning, web research, and writing. We show that this agent can produce reports of varying and easily configurable format. We build this agent using Llama 3.3-70b, the most recent of Meta's Llama models that matches the performance of 3.2-406b with 6x fewer parameters. We use NVIDIA NIM's inference service to access this model, taking advantage of LangChain integration with NIM. Code: https://github.com/langchain-ai/langc... Blog: https://blog.langchain.dev/structured... Video notes: https://mirror-feeling-d80.notion.sit...

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