https://store-images.s-microsoft.com/image/apps.21004.88763c1a-2fd3-45a7-b983-8ffda0e209e0.5d59d8ab-f07d-4971-a49e-3d7e541e3e19.80c88d1f-7847-4df9-8cf1-0948bb0430d3
Medical Visual LLM - 30B
by John Snow Labs Inc
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Medical vision-language model combining top-tier depth and accuracy in processing complex medical cases and literature medical expertise.
This 30B parameter vision language foundation model seamlessly integrates advanced medical reasoning with powerful visual understanding. Designed specifically for the healthcare domain, it can interpret and analyze both textual and visual medical data, including clinical notes, lab reports, X rays, MRIs, CT scans, pathology slides, and anatomical diagrams. By combining domain-specific medical expertise with multimodal comprehension, the model enables deeper insights across diagnostic, research, and clinical workflows. Its dual modality architecture allows it to jointly process patient text records and visual imaging data, offering physicians a unified perspective for accurate, context aware decision making. It can summarize complex clinical documents, generate detailed yet concise medical reports, and answer domain specific questions with high factual precision while maintaining critical nuance and detail. Featuring a 32K token context window, the model supports extended medical reports, multi image cases, and long contextual reasoning in a single prompt. Optimized for RAG and integration with electronic health records and imaging systems, it delivers informed, evidence grounded responses that bridge the gap between visual diagnostics and textual analysis, advancing the future of intelligent medical assistance.
Benchmarking Results:
Achieves 83.5% average across OpenMed benchmarks
Scores 85.66% on clinical knowledge assessment
Reaches 95% on medical genetics understanding
Performs at 93.75% for college biology concepts
Processes professional medicine with 89.34% accuracy
Handles medical MCQAs with 68.8% precision
Maintains 77.61% accuracy on MedQA 4-options test
Recommended Instance for this model is Standard_NC96ads_A100_v4