ModelHub XC 376e5a3af7 初始化项目,由ModelHub XC社区提供模型
Model: Rustamshry/Scie-R1-GGUF
Source: Original Platform
2026-06-17 20:05:19 +08:00

library_name, tags, license, datasets, language, base_model, pipeline_tag
library_name tags license datasets language base_model pipeline_tag
transformers
sft
unsloth
science
reasoning
apache-2.0
mattwesney/CoT_Reasoning_Scientific_Discovery_and_Research
en
khazarai/Scie-R1
text-generation

Model Card for Qwen3-CoT-Scientific-Research

Model Description

GGUF version of https://huggingface.co/khazarai/Scie-R1

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.

Description
Model synced from source: Rustamshry/Scie-R1-GGUF
Readme 25 KiB