--- license: llama2 datasets: - fka/awesome-chatgpt-prompts language: - aa metrics: - accuracy library_name: adapter-transformers pipeline_tag: question-answering tags: - legal --- # LLaMA-Pro-8B Model Card ## Model Description LLaMA-Pro is a progressive version of the original LLaMA model, enhanced by the addition of Transformer blocks. It specializes in integrating both general language understanding and domain-specific knowledge, particularly in programming and mathematics. ## Development and Training Developed by Tencent's ARC Lab, LLaMA-Pro is an 8.3 billion parameter model. It's an expansion of LLaMA2-7B, further trained on code and math corpora totaling 80 billion tokens. ## Intended Use This model is designed for a wide range of NLP tasks, with a focus on programming, mathematics, and general language tasks. It suits scenarios requiring integration of natural and programming languages. ## Performance LLaMA-Pro demonstrates advanced performance across various benchmarks. It outperforms existing models in the LLaMA series in handling diverse tasks, showcasing its capability as an intelligent language agent. ### Overall Performance on Languages, math and code tasks | Model | ARC | Hellaswag | MMLU | TruthfulQA | Winogrande | GSM8K | GSM8K-PoT | HumanEval | MBPP | Avg | | :-: | :-: | :-: | :-: | :-: | :-: | :-: | :-: | :-: | :-: | :-: | | LLAMA PRO (8B) | 54.10 | 77.94 | 47.88 | 39.04 | 73.95 | 17.89 | 25.42 | 28.66 | 33.20 | 44.2 | | LLaMA2-7B | 53.07 | 78.59 | 46.87 | 38.76 | 74.03 | 14.48 | 17.68 | 13.05 | 20.09 | 39.62 | | CodeLLaMA-7B | 39.93 | 60.80 | 31.12 | 37.82 | 64.01 | 5.16 | 25.20 | 33.50 | 41.40 | 37.66 | | LLAMA PRO-INSTRUCT | 52.30 | 76.88 | 52.57 | 48.80 | 72.53 | 43.59 | 55.61 | 44.51 | 37.88 | 53.8 | ### Performance on GPT4 Evaluation | Model | MT Bench | | :-: | :-: | | Alpaca-13B | 4.53 | | CodeLLaMA-7B-Instruct | 5.71 | | Vicuna-7B | 6.17 | | LLaMA2-7B-Chat | 6.27 | | LLAMA PRO-INSTRUCT | 6.32 | ## Limitations While LLaMA-Pro addresses some limitations of previous models in the series, it may still encounter challenges specific to highly specialized domains or tasks. ## Ethical Considerations Users should be aware of potential biases in the model and use it responsibly, considering its impact on various applications.