NASA Research Assistant (Ollama Model)

Model Description

This is a specialized language model trained on NASA research data, designed to assist with space science questions, research summarization, and technical explanations. The model is based on Phi-3 Mini 3.8B and has been optimized for scientific accuracy and detailed explanations.

Model Details

  • Base Model: Microsoft Phi-3 Mini 3.8B
  • Training Data: NASA research papers, mission reports, and scientific publications
  • Model Size: ~3.8B parameters
  • License: MIT
  • Format: GGUF (compatible with Ollama, llama.cpp)

Training Data Sources

  • NASA research papers from PubMed Central
  • NASA Taskbook project descriptions
  • NASA Open Science Data Repository
  • Space biology and microgravity research
  • Astronaut health and safety studies
  • Planetary science publications

Capabilities

  • Question Answering: Detailed responses about space science topics
  • Research Summarization: Condensing complex scientific papers
  • Technical Explanations: Breaking down aerospace concepts
  • Mission Analysis: Discussing NASA missions and findings
  • Scientific Accuracy: Trained on peer-reviewed research

Usage

With Ollama

# Pull the model
ollama pull bhavyasri044/ollama-nasa-model

# Run the model
ollama run bhavyasri044/ollama-nasa-model

With llama.cpp

# Download the GGUF file
wget https://huggingface.co/bhavyasri044/ollama-nasa-model/resolve/main/model.gguf

# Run with llama.cpp
./main -m model.gguf -p "What are the effects of microgravity on human bone density?"

Example Queries

  • "What are the main health risks for astronauts on long-duration missions?"
  • "Explain the effects of microgravity on plant growth"
  • "Summarize recent findings about space radiation exposure"
  • "How does the ISS maintain its orbit?"

Model Performance

The model has been optimized for:

  • Scientific accuracy in space-related topics
  • Detailed explanations suitable for researchers and students
  • Proper citation of NASA research when applicable
  • Clear communication of complex concepts

Limitations

  • Knowledge cutoff based on training data (up to 2024)
  • Primarily focused on NASA and US space research
  • May not have complete coverage of very recent developments
  • Should not be used for mission-critical decisions without verification

Training Process

  1. Data Collection: Gathered NASA research papers and publications
  2. Data Processing: Cleaned and chunked scientific texts
  3. RAG Integration: Built retrieval-augmented generation system
  4. Fine-tuning: Applied LoRA fine-tuning on instruction pairs
  5. Optimization: Configured for scientific accuracy and detail

Technical Specifications

  • Context Length: 4096 tokens
  • Temperature: 0.7 (balanced creativity/accuracy)
  • Top-p: 0.9
  • Quantization: Q4_K_M (recommended for most use cases)

Citation

If you use this model in your research, please cite:

@misc{nasa-ollama-model-2024,
  title={NASA Research Assistant: Specialized Language Model for Space Science},
  author={NASA Research Team},
  year={2024},
  publisher={Hugging Face},
  url={https://huggingface.co/bhavyasri044/ollama-nasa-model}
}

Contact

For questions about this model or to report issues, please open an issue on the repository.

Acknowledgments

  • NASA for providing open access to research data
  • Microsoft for the Phi-3 base model
  • The open-source community for tools and libraries

This model is designed for educational and research purposes. Always verify critical information with official NASA sources.

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