--- license: apache-2.0 language: - en base_model: - mistralai/Mistral-7B-v0.3 library_name: transformers tags: - moe - mergekit - MoErges --- Model Name: Marsouuu/MistralBase-4x7B-MoE-ECE-PRYMMAL-Martial - Mixture of Experts (MoE) Description: This is a cutting-edge Mixture of Experts (MoE) model designed with 24-bit precision, tailored to excel in four key domains: mathematics, coding, storytelling, and general chat. Built with a dynamic mixture of expert layers, this model adapts to different tasks by routing inputs to the most relevant expert network, delivering high-quality outputs efficiently. Key Features • Mathematics Expert: Equipped with specialized mathematical reasoning capabilities, this model is fine-tuned for solving complex mathematical problems, numerical computations, and providing detailed explanations for mathematical concepts. • Coding Expert: The model has been trained extensively on various programming languages and software development paradigms. It can help generate, debug, and explain code snippets, offering a comprehensive coding support experience. • Storytelling Expert: Designed to assist in creative writing, this expert focuses on generating narratives, constructing dialogues, and offering story-building support for various genres. • General Chat Expert: Capable of engaging in everyday conversations, offering accurate and contextually appropriate responses. This expert is versatile and adaptive to different conversational tones, whether it’s casual chit-chat or formal assistance. Technical Specifications • Model Architecture: Mixture of Experts (MoE) with a gating mechanism that routes inputs to the most relevant expert networks. • Domains: • Mathematics: Advanced reasoning and problem-solving. • Coding: Programming support across multiple languages. • Storytelling: Creative writing and narrative generation. • General Chat: Versatile dialogue handling for various conversational contexts. • Training Data: The model was trained on diverse datasets that cover each expert domain, ensuring robustness and versatility. • Framework: Developed using [Nom du Framework, par exemple: PyTorch, TensorFlow], optimized for the MoE architecture with gated routing. Usage This model can be used for a wide range of applications: • Educational Tools: Assisting with mathematical problems, coding exercises, and creative writing tasks. • Software Development: Providing coding suggestions, code completion, and debugging support. • Creative Writing: Generating stories, dialogues, and narrative content. • Conversational Agents: Implementing chatbots with versatile conversational abilities. Limitations • The model may occasionally generate responses that are not entirely contextually appropriate, especially in cases requiring highly specialized domain knowledge. • Despite its 24-bit precision, it may not perform well with extremely large datasets or tasks that require higher precision levels.