--- library_name: transformers license: mit datasets: - roneneldan/TinyStories - Salesforce/wikitext - abhinand/alpaca-gpt4-sharegpt - shibing624/sharegpt_gpt4 - ChristophSchuhmann/basic-math-problems-with-step-by-step-solutions - ajibawa-2023/SlimOrca-ShareGPT - junelee/wizard_vicuna_70k - meta-math/MetaMathQA - HuggingFaceH4/MATH-500 - hkust-nlp/dart-math-pool-math language: - en pipeline_tag: text-generation --- # Arsh-llm: A Compact 500M Parameter Powerhouse 🚀 **Arsh-llm** is a 500-million-parameter language model built on the Llama architecture, designed to shine in generating creative stories, coherent text, and functional code. Pretrained for 35 hours on a T4 GPU using a curated mix of small yet powerful datasets, and fine-tuned for 15 hours on conversational data, this model is a lean, mean, text-generating machine with massive potential. With a training loss between **1.2–1.9**, it’s already showing promise and is ready to level up with more training. Buckle up—this is just the beginning! 😎 ## Model Overview - **Architecture**: Llama-based causal language model - **Parameters**: 500M - **Context Length**: 128 tokens - **Pretraining Duration**: \~35 hours on NVIDIA T4 GPU - **Fine-tuning Duration**: \~15 hours on conversational datasets - **Training Loss**: 1.2–1.9 (with room to improve!) - **Library**: Transformers (Hugging Face) - **License**: MIT ## Datasets Arsh-llm was trained on a diverse set of datasets to ensure versatility in storytelling, text generation, and code-related tasks: - **roneneldan/TinyStories**: Short, creative stories for narrative generation. - **Salesforce/wikitext**: Wikipedia-based text for general knowledge and coherence. - **abhinand/alpaca-gpt4-sharegpt**: Instruction-based conversational data for task-oriented responses. - **shibing624/sharegpt_gpt4**: High-quality conversational data for chat-like interactions. - **ChristophSchuhmann/basic-math-problems-with-step-by-step-solutions**: Math problems with solutions to boost logical reasoning. Fine-tuning was performed on a structured ShareGPT chat template to enhance conversational abilities, making Arsh-llm a great starting point for dialogue-based applications. ## Use Cases Arsh-llm is a versatile model with applications in: - **Creative Writing**: Generate engaging short stories or narrative prompts. - **Code Generation**: Produce functional code snippets for various programming tasks. - **Conversational AI**: Power chatbots or assistants with natural dialogue. - **Educational Tools**: Assist with math problem-solving or explain concepts step-by-step. > **Note**: This model is a work in progress. For production-grade performance, further pretraining on larger datasets and post-training on conversational data is recommended. ## Getting Started To use Arsh-llm, you can load it directly from Hugging Face: ```python from transformers import AutoModelForCausalLM, AutoTokenizer # Load model and tokenizer model = AutoModelForCausalLM.from_pretrained("arshiaafshani/Arsh-llm") tokenizer = AutoTokenizer.from_pretrained("arshiaafshani/Arsh-llm") # Example: Generate a response messages = [{"role": "user", "content": "Write a short story about a brave robot."}] input_text = tokenizer.apply_chat_template(messages, tokenize=False) inputs = tokenizer(input_text, return_tensors="pt") outputs = model.generate(**inputs, max_length=200) print(tokenizer.decode(outputs[0], skip_special_tokens=True)) ``` ## Training Details - **Pretraining**: Conducted on a T4 GPU for \~35 hours using a mix of TinyStories, WikiText, and other datasets to build a strong foundation in text and story generation. - **Fine-tuning**: 15 hours on ShareGPT-based conversational data with a structured chat template to enhance dialogue capabilities. - **Hardware**: NVIDIA T4 GPU (15GB VRAM). - **Training Loss**: Achieved 1.2–1.9, indicating solid performance with significant potential for improvement through extended training. ## Limitations - **Current Stage**: Arsh-llm is not yet fully optimized. It performs well for its size but requires additional training to compete with larger models. - **Dataset Size**: Pretrained on relatively small datasets, which limits its generalization. Scaling up to larger datasets will unlock its full potential. - **Context Length**: Limited to 128 tokens, which may constrain performance on longer sequences. - **Not Production-Ready**: This model is best used as a base for further fine-tuning rather than as a standalone solution. ## Future Plans The journey doesn’t end here! Arsh-llm is set to evolve with: - **Extended Pretraining**: Leveraging larger datasets for broader knowledge and better generalization. - **Conversational Fine-tuning**: Enhancing dialogue capabilities with advanced post-training techniques. - **Benchmarking**: Evaluating performance against similar models (e.g., TinyLlama, Phi-1.5) on tasks like MMLU, HumanEval, and GSM8K. - **Community Feedback**: Incorporating user insights to refine and improve the model. Stay tuned—Arsh-llm is on its way to becoming a legend! 🔥 ## License This model is licensed under the MIT License, allowing for flexible use in both research and commercial applications. Feel free to build upon, modify, or share it! ## Acknowledgments - Built with ❤️ by Arshia Afshani. - Powered by the Hugging Face Transformers library. - Thanks to the open-source community for providing the amazing datasets that made this model possible. --- **Ready to take Arsh-llm for a spin?** Clone it, train it, and let’s make it a superstar together! 🌟 For questions, feedback, or collabs, reach out via Hugging Face or open an issue in the repo.