Text Generation
Transformers
PyTorch
Safetensors
English
rwkv
finance
Inference Endpoints
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---
license: apache-2.0
datasets:
- gbharti/finance-alpaca
language:
- en
library_name: transformers
tags:
- finance
widget:
- text: "Is this headline positive or negative? Headline: Australian Tycoon Forrest Shuts Nickel Mines After Prices Crash."
  example_title: "Sentiment analysis"
- text: "Aluminum price per KG is 50$. Forecast max: +1$ min:+0.3$. What should be the current price of aluminum?"
  example_title: "Forecast"
---

# Fin-RWKV: Attention Free Financal Expert (WIP)
Fin-RWKV is a cutting-edge, attention-free model designed specifically for financial analysis and prediction. Developed as part of a MindsDB Hackathon, this model leverages the simplicity and efficiency of the RWKV architecture to process financial data, providing insights and forecasts with remarkable accuracy. Fin-RWKV is tailored for professionals and enthusiasts in the finance sector who seek to integrate advanced deep learning techniques into their financial analyses.

## Use Cases
- Sentiment analysis
- Forecast
- Product Pricing

## Features
- Attention-Free Architecture: Utilizes the RWKV (Recurrent Weighted Kernel-based) model, which bypasses the complexity of attention mechanisms while maintaining high performance.
- Lower Costs: 10x to over a 100x+ lower inference cost, 2x to 10x lower training cost
- Tinyyyy: Lightweight enough to run on CPUs in real-time bypassing the GPU - and is able to run on your laptop today
- Finance-Specific Training: Trained on the gbharti/finance-alpaca dataset, ensuring that the model is finely tuned for financial data analysis.
- Transformers Library Integration: Built on the popular 'transformers' library, ensuring easy integration with existing ML pipelines and applications.

## Competing Against
| Name          | Param Count | Cost | Inference Cost |
|---------------|-------------|------|----------------|
| Fin-RWKV | 169M | $1.45 | Free on  HuggingFace 🤗 & Low-End CPU |
| [BloombergGPT](https://www.bloomberg.com/company/press/bloomberggpt-50-billion-parameter-llm-tuned-finance/) | 50 Billion | $1.3 million | Enterprise GPUs |
| [FinGPT](https://huggingface.co/FinGPT) | 7 Bilion | $302.4 | Consumer GPUs |


| Architecture | Status | Compute Efficiency | Largest Model | Trained Token | Link |
|--------------|--------|--------------------|---------------|---------------|------|
| (Fin)RWKV | In Production | O ( N ) | 14B | 500B++ (the pile+) | [Paper](https://arxiv.org/abs/2305.13048) |
| Ret Net (Microsoft) | Research | O ( N ) | 6.7B | 100B (mixed) | [Paper](https://arxiv.org/abs/2307.08621) |
| State Space (Stanford) | Prototype | O ( Log N ) | 355M | 15B (the pile, subset) | [Paper](https://arxiv.org/abs/2302.10866) |
| Liquid (MIT) | Research | - | <1M | - | [Paper](https://arxiv.org/abs/2302.10866) |
| Transformer Architecture (included for contrasting reference) | In Production | O ( N^2 ) | 800B (est) | 13T++ (est) | - |

<img src="https://cdn-uploads.huggingface.co/production/uploads/631ea4247beada30465fa606/7vAOYsXH1vhTyh22o6jYB.png" width="500" alt="Inference computational cost vs. Number of tokens">

_Note: Needs more data and training, testing purposes only._