license: mit
datasets:
- AdiOO7/llama-2-finance
language:
- en
library_name: transformers
pipeline_tag: text-generation
tags:
- finance
oozyii/Llama2-7b-Finance
Model Details
The LLama 2 7b language model, fine-tuned on a financial dataset, represents a specialized and powerful tool for extracting, understanding, and generating text related to the financial domain. Leveraging the formidable capabilities of the underlying architecture, it provides nuanced insights and responses specifically tailored to the financial sector.
While a 7 billion parameter model like LLama 2 7b might be considered small compared to some of the gargantuan models available today, it still possesses significant capacity and can offer various benefits, especially when fine-tuned on a specific domain like finance.
Architecture and Size:
The LLama 2 7b model, with its 7 billion parameters, harnesses a scaled-down yet potent architecture, providing a robust foundation for understanding and generating complex language structures. Despite being smaller than some colossal language models, it balances computational power and efficiency, ensuring credible natural language processing and generation while maintaining manageable computational demands.
Model Description
The LLama 2 7b model, refined with a financial dataset, emerges as a specialized tool, adept in comprehending and generating language with a specific emphasis on financial contexts. It provides insightful and relevant responses to queries, generates detailed financial analyses, and can even automate the creation of comprehensive reports within the financial domain.
- Developed by: [Collin Heenan]
- Model type: Language Model (Transformer-Based)
- Language(s) (NLP): English (and potentially other languages, depending on the finetuning dataset)
- License: [MIT]
- Finetuned from model: https://huggingface.co/NousResearch/Llama-2-7b-hf
Intended Use
This model is intended to assist with various tasks related to the finance domain, leveraging its finetuning on a finance-specific dataset. Potential applications might include:
- Financial Text Generation: Generate finance-related text, reports, or summaries.
- Question Answering: Answer questions related to financial terms, processes, or general finance-related inquiries.
- Sentiment Analysis: Analyze financial news, reports, or user reviews to extract sentiments and opinions.
- Information Retrieval: Extract specific financial information from given text or documents.
Limitations and Bias
- Data Bias: The model might have biases based on the training data it was fine-tuned on. It may favor certain terminologies, expressions, or perspectives prevalent in the training data.
- Domain Limitation: While specialized in finance, the model might lack in-depth understanding or accuracy in other domains.