About
Pre-final year Electronics & Computer Science student specializing in Artificial Intelligence and Machine Learning. Interested in healthcare AI, clinical ML, and MLOps, with project experience in predictive modeling, graph ML, and Dockerized deployment.
Education
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B.E. Electronics & Computer ScienceRizvi College of EngineeringArtificial Intelligence & Machine Learning · 2023 – 2027
Skills
Projects
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Drug-Drug Interaction PredictionPython, NetworkX, Node2Vec, XGBoost
Exploring drug-drug interaction prediction as a link prediction problem on the DrugBank knowledge graph using graph embeddings and XGBoost for unseen interaction pair prediction.
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Python, XGBoost, SHAP, FastAPI, Docker
Trained XGBoost on 40,336 ICU patients to predict sepsis onset 6 hours before clinical diagnosis. Built temporal features, used patient-level splitting to prevent leakage, added SHAP explainability, and deployed as a Dockerized FastAPI service.
Courses & certifications
- Deep Learning Specialization · DeepLearning.AI / Coursera · 2024
- Machine Learning Specialization · DeepLearning.AI / Coursera · 2024
🏆 Achievements & awards
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CGPA 9.4/10.0
Consistent academic performance across Electronics & Computer Science curriculum.