--- library_name: transformers tags: - sft - unsloth - science - reasoning license: apache-2.0 datasets: - mattwesney/CoT_Reasoning_Scientific_Discovery_and_Research language: - en base_model: - khazarai/Scie-R1 pipeline_tag: text-generation --- # Model Card for Qwen3-CoT-Scientific-Research ## Model Description GGUF version of https://huggingface.co/khazarai/Scie-R1 - **Base Model:** Qwen3-1.7B - **Task:** Scientific Reasoning with Chain-of-Thought (CoT) - **Dataset:** [moremilk/CoT_Reasoning_Scientific_Discovery_and_Research](https://huggingface.co/datasets/moremilk/CoT_Reasoning_Scientific_Discovery_and_Research) - **Training Objective:** Encourage step-by-step logical deductions for scientific reasoning problems ## Uses ### Direct Use This fine-tuned model is designed for: - Assisting in teaching and learning scientific reasoning - Supporting educational AI assistants in science classrooms - Demonstrating step-by-step scientific reasoning in research training contexts - Serving as a resource for automated reasoning systems to better emulate structured scientific logic It is not intended to replace human researchers, perform advanced analytics, or generate novel scientific discoveries. ## Bias, Risks, and Limitations - May oversimplify complex or interdisciplinary problems - Performance limited by the scope of training data (primarily introductory-level scientific reasoning tasks) - Does not handle real-world experimentation or advanced statistical modeling - May produce incorrect reasoning if the prompt is highly ambiguous ## Training Data **Scope** This model was fine-tuned on tasks that involve core scientific reasoning: - Formulating testable hypotheses - Identifying independent and dependent variables - Designing simple controlled experiments - Interpreting graphs, tables, and basic data representations - Understanding relationships between evidence and conclusions - Recognizing simple logical fallacies in scientific arguments **Illustrative Examples** - Drawing conclusions from experimental results - Evaluating alternative explanations for observed data - Explaining step-by-step reasoning behind scientific conclusions **Emphasis on Chain-of-Thought (CoT)** - The dataset highlights explicit reasoning steps, making the model better at producing step-by-step explanations when solving scientific reasoning tasks. - Focus on Foundational Knowledge - The dataset aims to strengthen models in foundational scientific reasoning skills rather than covering all domains of scientific knowledge. **Focus on Foundational Knowledge** The dataset aims to strengthen models in foundational scientific reasoning skills rather than covering all domains of scientific knowledge.