--- license: agpl-3.0 language: - en base_model: - meta-llama/Llama-3.2-1B-Instruct library_name: predacons tags: - 'reasoning ' - chain of thought - problem solving --- ## Model Details ### Model Description Precacons/Pico-Lamma-3.2-1B-Reasoning-Instruct Model Overview: Precacons/Pico-Lamma-3.2-1B-Reasoning-Instruct is a highly efficient and accurate language model fine-tuned on the “meta-llama/Llama-3.2-1B-Instruct” base model. Despite its compact size of just 0.99GB, it delivers exceptional performance, particularly in tasks requiring logical reasoning and structured thought processes. - **Developed by:** [Shourya Shashank](https://huggingface.co/shouryashashank) - **Model type:** Transformer-based Language Model - **Language(s) (NLP):** English - **License:** AGPL-3.0 - **Finetuned from model [optional]:** meta-llama/Llama-3.2-1B-Instruct #### Key Features: * **Compact Size**: At only 0.99GB, it is lightweight and easy to deploy, making it suitable for environments with limited computational resources. * **High Accuracy**: The model’s training on a specialized chain of thought and reasoning dataset enhances its ability to perform complex reasoning tasks with high precision. * **Fine-Tuned on Meta-Llama**: Leveraging the robust foundation of the “meta-llama/Llama-3.2-1B-Instruct” model, it inherits strong language understanding and generation capabilities. #### Applications: * **Educational Tools**: Ideal for developing intelligent tutoring systems that require nuanced understanding and explanation of concepts. * **Customer Support**: Enhances automated customer service systems by providing accurate and contextually relevant responses. * **Research Assistance**: Assists researchers in generating hypotheses, summarizing findings, and exploring complex datasets. ## Uses * Lightweight: The software is designed to be extremely lightweight, ensuring it can run efficiently on any system without requiring extensive resources. * Natural Language Understanding: Ideal for applications requiring human-like text understanding and generation, such as chatbots, virtual assistants, and content generation tools. * Small Size: Despite its compact size of just 0.99GB, it packs a powerful punch, making it easy to download and install. * High Reliability: The reliability is significantly enhanced due to the chain-of-thought approach integrated into its design, ensuring consistent and accurate performance. ### Direct Use * Problem Explanation: Generate detailed descriptions and reasoning for various problems, useful in educational contexts, customer support, and automated troubleshooting. * Natural Language Understanding: Ideal for applications requiring human-like text understanding and generation, such as chatbots, virtual assistants, and content generation tools. * Compact Deployment: Suitable for environments with limited computational resources due to its small size and 4-bit quantization. ### Downstream Use [optional] * Educational Tools: Fine-tune the model on educational datasets to provide detailed explanations and reasoning for academic subjects. * Customer Support: Fine-tune on customer service interactions to enhance automated support systems with accurate and context-aware responses. ## Bias, Risks, and Limitations ### Limitations **Pico-Lamma-3.2-1B-Reasoning-Instruct** is a compact model designed for efficiency, but it comes with certain limitations: 3. **Limited Context Understanding**: - With a smaller parameter size, the model may have limitations in understanding and generating contextually rich and nuanced responses compared to larger models. 4. **Bias and Fairness**: - Like all language models, Pico-Lamma-3.2-1B-Reasoning-Instruct may exhibit biases present in the training data. Users should be cautious of potential biases in the generated outputs. 5. **Resource Constraints**: - While the model is designed to be efficient, it still requires a GPU for optimal performance. Users with limited computational resources may experience slower inference times. ### Example Usage: ```python import predacons # Load the model and tokenizer model_path = "Precacons/Pico-Lamma-3.2-1B-Reasoning-Instruct" model = predacons.load_model(model_path) tokenizer = predacons.load_tokenizer(model_path) # Example usage chat = [ {"role": "user", "content": "A train travelling at a speed of 60 km/hr is stopped in 15 seconds by applying the brakes. Determine its retardation."}, ] res = predacons.chat_generate(model = model, sequence = chat, max_length = 5000, tokenizer = tokenizer, trust_remote_code = True, do_sample=True, ) print(res) ``` This example demonstrates how to load the `Pico-Lamma-3.2-1B-Reasoning-Instruct` model and use it to generate an explanation for a given query, keeping in mind the limitations mentioned above. ## Model Card Authors [optional] [Shourya Shashank](https://huggingface.co/shouryashashank)