LLMs in Finance
Basic Information
This repository collects hands-on Jupyter notebooks and examples that demonstrate how to apply generative AI to real-world financial workflows. It focuses on building and evaluating AI agents, retrieval augmented generation pipelines, and multimodal language models for finance. The code and notebooks illustrate integrations with multiple provider SDKs and frameworks such as OpenAI Agents SDK, Anthropic, AutoGen, LlamaIndex, CrewAI and LangGraph. Use cases include collaborative multi-agent systems for market analysis, momentum trading strategy development, parsing and analyzing earnings reports, evaluating RAG systems, and testing model understanding of financial charts. The materials also include a curated list of research papers and examples for synthetic data. The content is explicitly intended for educational and research purposes and is not presented as investment advice or production-ready trading software.