--- license: apache-2.0 base_model: Qwen/Qwen3-1.7B-Instruct tags: - agentic - reasoning - tool-use - safetensors - unsloth - cpu-optimized library_name: transformers pipeline_tag: text-generation --- # 🤖 Agentic AI Suite (Qwen3-1.7B-Reasoning) This model is a **Small Reasoning Model (SRM)** fine-tuned specifically for the "Goldilocks Zone" of AI deployment: **Powerful enough** to handle PhD-level research tasks and **fast enough** to run on a standard Hugging Face Free Tier CPU. By utilizing the **Qwen3-1.7B** architecture, this model achieves high-logic reasoning while maintaining a tiny memory footprint (~1.1GB in 4-bit). ## 🌟 Features - **Native Tool Calling**: Trained to output structured `Action` calls for `web_search` and `calculator`. - **ReAct Framework**: Uses a "Thought -> Action -> Observation -> Final Answer" loop. - **Safetensors Format**: Merged 4-bit weights for instant loading and high-speed CPU inference via `transformers`. - **Zero-Latency Logic**: Optimized to respond in under 10 seconds on a 2-vCPU environment. --- ## 🛠️ How to Use (Agentic Implementation) To use this model as a true agent, your code should intercept the `Action:` text and execute the corresponding Python function. ### 1. Requirements ```bash pip install transformers torch accelerate bitsandbytes