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Data-Centric FinGPT. Open-source for open finance! Revolutionize 🔥 We'll soon release the trained model.

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Data-Centric FinGPT: Open-source for Open Finance.

Downloads Downloads Python 3.8 PyPI License

Let us DO NOT expect Wall Street to open-source LLMs nor open APIs.

We democratize Internet-scale data for financial large language models (FinLLMs) at FinNLP and FinNLP Website

Blueprint of FinGPT

Disclaimer: We are sharing codes for academic purposes under the MIT education license. Nothing herein is financial advice, and NOT a recommendation to trade real money. Please use common sense and always first consult a professional before trading or investing.

Why FinGPT?

1). Finance is highly dynamic. BloombergGPT retrains an LLM using a mixed dataset of finance and general data sources, which is too expensive (1.3M GPU hours, a cost of around $5M). It is costly to retrain an LLM model every month or every week, so lightweight adaptation is highly favorable in finance. Instead of undertaking a costly and time-consuming process of retraining a model from scratch with every significant change in the financial landscape, FinGPT can be fine-tuned swiftly to align with new data (the cost of adaptation falls significantly, estimated at less than $416 per training).

2). Democratizing Internet-scale financial data is critical, which should allow timely updates (monthly or weekly updates) using an automatic data curation pipeline. But, BloombergGPT has privileged data access and APIs. FinGPT presents a more accessible alternative. It prioritizes lightweight adaptation, leveraging the strengths of some of the best available open-source LLMs, which are then fed with financial data and fine-tuned for financial language modeling.

3). The key technology is "RLHF (Reinforcement learning from human feedback)", which is missing in BloombergGPT. RLHF enables an LLM model to learn individual preferences (risk-aversion level, investing habits, personalized robo-advisor, etc.), which is the "secret" ingredient of ChatGPT and GPT4.

FinGPT Demos

  • FinGPT V1
    • Let's train our own FinGPT in Chinese Financial Market with ChatGLM and LoRA (Low-Rank Adaptation)
  • FinGPT V2
    • Let's train our own FinGPT in American Financial Market with LLaMA and LoRA (Low-Rank Adaptation)

News

What is FinNLP

  • FinNLP provides a playground for all people interested in LLMs and NLP in Finance. Here we provide full pipelines for LLM training and finetuning in the field of finance. The full architecture is shown in the following picture. Detail codes and introductions can be found here. Or you may refer to the wiki

ChatGPT at AI4Finance

Introductory

The Journey of Open AI GPT models. GPT models explained. Open AI's GPT-1, GPT-2, GPT-3.

(Financial) Big Data

Interesting Demos

  • GPT-3 Creative Fiction Creative writing by OpenAI’s GPT-3 model, demonstrating poetry, dialogue, puns, literary parodies, and storytelling. Plus advice on effective GPT-3 prompt programming & avoiding common errors.

ChatGPT for FinTech

ChatGPT Trading Bot

(Fast and accurate) Sentiment Analysis

GPT-3 can help study customer surveys, social media tweets from customers/users.

Tweets

PromptNet Analogy to ImageNet and WordNet, it is critical to build a PromptNet.

Robo-advisor

Coding-tutor

Blogs about ChatGPT for FinTech

ChatGPT APIs

Prompting as a new programming paradigm!

Prompting programming

ChatGPT relatives:

A Release Timeline of many LLMs.

PaLM

Chincella

Interesting evaluations:

[YouTube] Physics Solution: ChatGPT vs. Google

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