Develop AI features for medical imaging workflows using Large Language Models, collaborating with product and engineering teams to enhance clinical applications.
Duration
3–6 Months (Extension / PPO based on performance)
About the Role
We are looking for GenAI Interns passionate about applying Large Language Models (LLMs) and AI agents to real-world medical imaging workflows such as radiology reporting, clinical summarization, decision support, and enterprise viewers.
You will work closely with product, engineering, and clinical SMEs to build production-grade AI features for RIS, PACS, VNA, and reporting platforms.
Key Responsibilities
🔹 GenAI & LLM Development
Build and fine-tune LLM-based pipelines for:
Radiology report generation & structuring
Clinical summarization from imaging + text inputs
Follow-up recommendations and impression drafting
Implement prompt engineering, RAG (Retrieval Augmented Generation), and agentic workflows
Integrate LLMs with structured + unstructured medical data
🔹 Medical Imaging & Reporting
Work with DICOM metadata, radiology reports, and non-DICOM clinical documents
Assist in developing AI-assisted structured reporting templates (SR / FHIR-aligned)
Build GenAI features that work alongside 2D/3D viewers and enterprise imaging platforms
🔹 Engineering & Integration
Develop APIs using Python / FastAPI
Integrate GenAI services with backend systems (RIS / PACS / VNA / Enterprise Viewer)
Work with vector databases (FAISS / Pinecone / Chroma) for semantic search
Participate in model evaluation, hallucination control, and clinical safety checks
🔹 Research & Innovation
Evaluate latest research in medical GenAI, multimodal AI, and healthcare LLMs
Prototype new AI workflows for:
Blind reads
AI second opinions
Quality & consistency checks in reports
Eligibility
Final-year students or recent graduates in
Computer Science / AI / Data Science / Biomedical Engineering / Health Informatics
Technical Skills (Expected)
Must Have
Strong Python fundamentals
Hands-on experience with LLMs (OpenAI, Azure OpenAI, Gemini, LLaMA, etc.)
Understanding of prompt engineering and RAG
Basic API development experience (REST / FastAPI)
Good to Have
Familiarity with medical imaging concepts (DICOM, modalities, studies, series)
Experience with LangChain / LlamaIndex / Semantic Kernel
Knowledge of FHIR / HL7 / Clinical terminologies
Exposure to Docker, cloud (GCP/AWS/Azure)
Domain Knowledge (Nice to Have)
Radiology workflows (ordering → acquisition → reporting → distribution)
RIS / PACS / VNA ecosystems
Clinical report structuring and terminology (Impression, Findings, Conclusion)
What You’ll Learn
Real-world GenAI deployment in regulated healthcare environments
How to build safe, explainable, and scalable AI for clinical use
End-to-end AI product development—from prototype to production
Working with imaging data, reports, and enterprise healthcare systems
What We’re Looking For
Curious, self-driven problem solvers
Passion for AI + healthcare impact
Ability to convert ambiguous clinical problems into structured AI solutions
Strong communication and documentation skills
What We Offer
Hands-on exposure to production healthcare AI systems
Mentorship from industry experts in medical imaging & AI
Opportunity for Pre-Placement Offer (PPO)
Certificate & recommendation letter upon successful completion
DeepHealth builds advanced AI medical imaging software that leverages Large Language Models to enhance healthcare workflows. Our solutions are designed for healthcare professionals, focusing on improving clinical outcomes with cutting-edge image visualization and management tools. What sets us apart is our commitment to ensuring compliance with global regulations while delivering innovative technology that meets the needs of modern radiology.
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