diff --git a/gallery/index.yaml b/gallery/index.yaml index 05e5015032cf..ef53e48f354e 100644 --- a/gallery/index.yaml +++ b/gallery/index.yaml @@ -23149,3 +23149,57 @@ - filename: Orca-Agent-v0.1.i1-Q4_K_M.gguf sha256: 05548385128da98431f812d1b6bc3f1bff007a56a312dc98d9111b5fb51e1751 uri: huggingface://mradermacher/Orca-Agent-v0.1-i1-GGUF/Orca-Agent-v0.1.i1-Q4_K_M.gguf +- !!merge <<: *qwen3 + name: "spiral-qwen3-4b-multi-env" + urls: + - https://huggingface.co/mradermacher/Spiral-Qwen3-4B-Multi-Env-GGUF + description: | + **Model Name:** Spiral-Qwen3-4B-Multi-Env + **Base Model:** Qwen3-4B (fine-tuned variant) + **Repository:** [spiral-rl/Spiral-Qwen3-4B-Multi-Env](https://huggingface.co/spiral-rl/Spiral-Qwen3-4B-Multi-Env) + **Quantized Version:** Available via GGUF (by mradermacher) + + --- + + ### 📌 Description: + + Spiral-Qwen3-4B-Multi-Env is a fine-tuned, instruction-optimized version of the Qwen3-4B language model, specifically enhanced for multi-environment reasoning and complex task execution. Built upon the foundational Qwen3-4B architecture, this model demonstrates strong performance in coding, logical reasoning, and domain-specific problem-solving across diverse environments. + + The model was developed by **spiral-rl**, with contributions from the community, and is designed to support advanced, real-world applications requiring robust reasoning, adaptability, and structured output generation. It is optimized for use in constrained environments, making it ideal for edge deployment and low-latency inference. + + --- + + ### 🔧 Key Features: + - **Architecture:** Qwen3-4B (Decoder-only, Transformer-based) + - **Fine-tuned For:** Multi-environment reasoning, instruction following, and complex task automation + - **Language Support:** English (primary), with strong multilingual capability + - **Model Size:** 4 billion parameters + - **Training Data:** Proprietary and public datasets focused on reasoning, coding, and task planning + - **Use Case:** Ideal for agent-based systems, automated workflows, and intelligent decision-making in dynamic environments + + --- + + ### 📦 Availability: + While the original base model is hosted at `spiral-rl/Spiral-Qwen3-4B-Multi-Env`, a **quantized GGUF version** is available for efficient inference on consumer hardware: + - **Repository:** [mradermacher/Spiral-Qwen3-4B-Multi-Env-GGUF](https://huggingface.co/mradermacher/Spiral-Qwen3-4B-Multi-Env-GGUF) + - **Quantizations:** Q2_K to Q8_0 (including IQ4_XS), f16, and Q4_K_M recommended for balance of speed and quality + + --- + + ### 💡 Ideal For: + - Local AI agents + - Edge deployment + - Code generation and debugging + - Multi-step task planning + - Research in low-resource reasoning systems + + --- + + > ✅ **Note:** The model card above reflects the *original, unquantized base model*. The quantized version (GGUF) is optimized for performance but may have minor quality trade-offs. For full fidelity, use the base model with full precision. + overrides: + parameters: + model: Spiral-Qwen3-4B-Multi-Env.Q4_K_M.gguf + files: + - filename: Spiral-Qwen3-4B-Multi-Env.Q4_K_M.gguf + sha256: e91914c18cb91f2a3ef96d8e62a18b595dd6c24fad901dea639e714bc7443b09 + uri: huggingface://mradermacher/Spiral-Qwen3-4B-Multi-Env-GGUF/Spiral-Qwen3-4B-Multi-Env.Q4_K_M.gguf