Qwen-UMLS-7B-Instruct-GGUF [ Unified Medical Language System ]

The Qwen-UMLS-7B-Instruct model is a specialized, instruction-tuned language model designed for medical and healthcare-related tasks. It is fine-tuned on the Qwen2.5-7B-Instruct base model using the UMLS (Unified Medical Language System) dataset, making it an invaluable tool for medical professionals, researchers, and developers building healthcare applications.

File Name Size Description Upload Status
.gitattributes 1.79 kB Specifies LFS tracking for large model files. Uploaded
Qwen-UMLS-7B-Instruct.F16.gguf 15.2 GB Full-precision GGUF format of the model. Uploaded (LFS)
Qwen-UMLS-7B-Instruct.Q4_K_M.gguf 4.68 GB Quantized GGUF format (Q4_K_M) for smaller size and faster inference. Uploaded (LFS)
Qwen-UMLS-7B-Instruct.Q5_K_M.gguf 5.44 GB Quantized GGUF format (Q5_K_M) for balanced performance and accuracy. Uploaded (LFS)
Qwen-UMLS-7B-Instruct.Q8_0.gguf 8.1 GB Higher precision quantized GGUF format (Q8_0). Uploaded (LFS)
README.md 315 Bytes Basic project information file. Updated
config.json 29 Bytes Minimal configuration file for the model. Uploaded

Key Features:

  1. Medical Expertise:

    • Trained on the UMLS dataset, ensuring deep domain knowledge in medical terminology, diagnostics, and treatment plans.
  2. Instruction-Following:

    • Designed to handle complex queries with clarity and precision, suitable for diagnostic support, patient education, and research.
  3. High-Parameter Model:

    • Leverages 7 billion parameters to deliver detailed, contextually accurate responses.

Training Details:


Capabilities:

  1. Clinical Text Analysis:

    • Interpret medical notes, prescriptions, and research articles.
  2. Question-Answering:

    • Answer medical queries, provide explanations for symptoms, and suggest treatments based on user prompts.
  3. Educational Support:

    • Assist in learning medical terminologies and understanding complex concepts.
  4. Healthcare Applications:

    • Integrate into clinical decision-support systems or patient care applications.

Usage Instructions:

  1. Setup: Download all files and ensure compatibility with the Hugging Face Transformers library.

  2. Loading the Model:

    from transformers import AutoModelForCausalLM, AutoTokenizer
    
    model_name = "prithivMLmods/Qwen-UMLS-7B-Instruct"
    tokenizer = AutoTokenizer.from_pretrained(model_name)
    model = AutoModelForCausalLM.from_pretrained(model_name)
    
  3. Generate Medical Text:

    input_text = "What are the symptoms and treatments for diabetes?"
    inputs = tokenizer(input_text, return_tensors="pt")
    outputs = model.generate(**inputs, max_length=200, temperature=0.7)
    print(tokenizer.decode(outputs[0], skip_special_tokens=True))
    
  4. Customizing Outputs: Modify generation_config.json to optimize output style:

    • temperature for creativity vs. determinism.
    • max_length for concise or extended responses.

Applications:

  1. Clinical Support:

    • Assist healthcare providers with quick, accurate information retrieval.
  2. Patient Education:

    • Provide patients with understandable explanations of medical conditions.
  3. Medical Research:

    • Summarize or analyze complex medical research papers.
  4. AI-Driven Diagnostics:

    • Integrate with diagnostic systems for preliminary assessments.

Run with Ollama [ Ollama Run ]

Overview

Ollama is a powerful tool that allows you to run machine learning models effortlessly. This guide will help you download, install, and run your own GGUF models in just a few minutes.

Table of Contents

Download and Install Ollama🦙

To get started, download Ollama from https://ollama.com/download and install it on your Windows or Mac system.

Steps to Run GGUF Models

1. Create the Model File

First, create a model file and name it appropriately. For example, you can name your model file metallama.

2. Add the Template Command

In your model file, include a FROM line that specifies the base model file you want to use. For instance:

FROM Llama-3.2-1B.F16.gguf

Ensure that the model file is in the same directory as your script.

3. Create and Patch the Model

Open your terminal and run the following command to create and patch your model:

ollama create metallama -f ./metallama

Once the process is successful, you will see a confirmation message.

To verify that the model was created successfully, you can list all models with:

ollama list

Make sure that metallama appears in the list of models.


Running the Model

To run your newly created model, use the following command in your terminal:

ollama run metallama

Sample Usage / Test

In the command prompt, you can execute:

D:\>ollama run metallama

You can interact with the model like this:

>>> write a mini passage about space x
Space X, the private aerospace company founded by Elon Musk, is revolutionizing the field of space exploration.
With its ambitious goals to make humanity a multi-planetary species and establish a sustainable human presence in
the cosmos, Space X has become a leading player in the industry. The company's spacecraft, like the Falcon 9, have
demonstrated remarkable capabilities, allowing for the transport of crews and cargo into space with unprecedented
efficiency. As technology continues to advance, the possibility of establishing permanent colonies on Mars becomes
increasingly feasible, thanks in part to the success of reusable rockets that can launch multiple times without
sustaining significant damage. The journey towards becoming a multi-planetary species is underway, and Space X
plays a pivotal role in pushing the boundaries of human exploration and settlement.

Conclusion

With these simple steps, you can easily download, install, and run your own models using Ollama. Whether you're exploring the capabilities of Llama or building your own custom models, Ollama makes it accessible and efficient.

  • This README provides clear instructions and structured information to help users navigate the process of using Ollama effectively. Adjust any sections as needed based on your specific requirements or additional details you may want to include.
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