Posted on: 30/10/2025
Description : Data Scientist - Generative & Agentic AI (Healthcare Domain).
Educational Qualification : ME / BE / MCA.
Experience Required : 3-5 Years.
Shifts : Day Shift.
Mode : Hybrid.
Skills & Responsibilities :
Experience :
3+ years of experience in Machine Learning, Deep Learning, or Generative AI, with a strong focus on healthcare software product development and medical coding automation.
Programming & Frameworks :
- Proficient in Python, with hands-on experience using Pandas, NumPy, and OOPs concepts.
- Practical experience with PyTorch, TensorFlow, Keras, and Hugging Face Transformers.
- Familiar with writing optimized SQL queries for large-scale structured clinical data.
Healthcare-Specific AI :
- Strong understanding of medical coding standards (ICD, CPT, SNOMED), EHR systems, and clinical document processing.
- Exposure to HL7, FHIR APIs, and privacy regulations like HIPAA is an added advantage.
Generative AI & NLP :
- Experience working with LLMs, GANs, VAEs, and Diffusion Models in healthcare use cases (e.g., clinical summarization, automated coding, documentation assistance).
- Familiar with Azure OpenAI, AWS Bedrock, DALLE, and Stable Diffusion platforms.
- Strong grasp of NLP techniques such as Named Entity Recognition (NER), token classification, contextual embeddings, and deep learning models like RNN,
- LSTM, GRU.
Agentic AI & Autonomous Workflows :
- Experience or familiarity with building agentic systems using LangChain, AutoGen, or CrewAI for orchestrating multi-step tasks (e.g., claim validation, document parsing).
- Ability to integrate autonomous agents with tool-based systems and APIs to enhance workflow efficiency.
Machine Learning & Statistical Modeling :
- Expertise in supervised and unsupervised ML, including Random Forest, SVM, Boosting, Bagging, Regression, and Clustering methods.
- Strong capability in feature engineering, model training, and cross-validation for healthcare data.
MLOps, Deployment & Data Integration :
- Experience with cloud platforms such as AWS, Azure, or GCP for scalable ML model deployment.
- Familiarity with MLOps practices, CI/CD pipelines, Docker, Kubernetes, and model versioning.
- Hands-on experience with Apache NiFi for data ingestion, integration, and workflow automation, including designing NiFi flows for structured/unstructured clinical data and seamless integration with downstream ML models.
- Proficient with Linux systems and GPU-based ML workflows.
Research, Compliance & Ethics :
- Experience contributing to AI research, open-source projects, or Kaggle competitions focused on healthcare or NLP.
- Awareness of AI ethics, bias mitigation, explainability techniques, and safe deployment of AI in clinical settings.
Soft Skills & Collaboration :
- Proven ability to work independently and in agile teams with product managers, clinical SMEs, and backend engineers.
- Effective communication for presenting results, writing technical documentation, and supporting regulatory submissions.
- Knowledge of computer vision is a plus for multimodal applications (e.g., diagnostics, image-text synthesis)
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