--- language: - en tags: - llama - instruct - conversational - api - code-generation - lora license: apache-2.0 --- # LLaMA-7B-Instruct-API-Coder ## Model Description This model is a fine-tuned version of the LLaMA-7B-Instruct model, specifically trained on conversational data related to RESTful API usage and code generation. The training data was generated by LLaMA-70B-Instruct, focusing on API interactions and code creation based on user queries and JSON REST schemas. ## Intended Use This model is designed to assist developers and API users in: 1. Understanding and interacting with RESTful APIs 2. Generating code snippets to call APIs based on user questions 3. Interpreting JSON REST schemas 4. Providing conversational guidance on API usage ## Training Data The model was fine-tuned on a dataset of conversational interactions generated by LLaMA-70B-Instruct. This dataset includes: - Discussions about RESTful API concepts - Examples of API usage - Code generation based on API schemas - Q&A sessions about API integration ## Training Procedure 1. Base Model: LLaMA-7B-Instruct 2. Quantization: The base model was loaded in 4-bit precision using Unsloth for efficient training 3. Fine-tuning Method: SFTTrainer (Supervised Fine-Tuning Trainer) was used for the fine-tuning process 4. LoRA (Low-Rank Adaptation): The model was fine-tuned using LoRA to generate an adapter 5. Merging: The LoRA adapter was merged back with the original model to create the final fine-tuned version This approach allows for efficient fine-tuning while maintaining model quality and reducing computational requirements. ## Limitations - The model's knowledge is limited to the APIs and schemas present in the training data - It may not be up-to-date with the latest API standards or practices - The generated code should be reviewed and tested before use in production environments - Performance may vary compared to the full-precision model due to 4-bit quantization ## Ethical Considerations - The model should not be used to access or manipulate APIs without proper authorization - Users should be aware of potential biases in the generated code or API usage suggestions ## Additional Information - Model Type: Causal Language Model - Language: English - License: Apache 2.0 - Fine-tuning Technique: LoRA (Low-Rank Adaptation) - Quantization: 4-bit precision For any questions or issues, please open an issue in the GitHub repository.