Computer Vision Researcher · Virginia Tech MS
Building computer vision systems that see and understand the world — real-time object detection, SAR satellite maritime surveillance, medical MRI analysis, and deep learning model training at scale.
Virginia Tech · ECE 5524 · Medical Imaging
Multi-class MRI classification across 7,023 images. VGG16 achieved 98% accuracy, ROC-AUC 1.0. Grad-CAM confirms tumor localization for clinical interpretability.
Virginia Tech · Real-Time CV
Real-time table occupancy detection with YOLOv11x on live restaurant video. 91% accuracy under occlusion and variable lighting.
Univ. Mumbai · SAR · Remote Sensing
Maritime vessel detection on 2,500+ Sentinel-1 SAR images. YOLOv4 achieved 82.96% mAP. Euclidean distance from each ship to nearest landmass.
Virginia Tech · Trustworthy ML
Covert backdoor poisoning of Qwen-2.5 3B. Unsupervised detection via perplexity anomaly + activation clustering. 44→0 unsafe generations, −80% ASR.
Virginia Tech · Advanced ML
Loss-based difficulty filtering: +34.2% improvement (30%→64.2% MATH-500). DeepSpeed ZeRO-3 + Flash Attention 2. AIME 2025: 0%→3.33%.
Virginia Tech · Applications of ML
Calibrated ensemble models for 3-class EPL outcome forecasting across 3,800 matches evaluated with Ignorance Score across 3 validation strategies.
Open to CV/ML research collaborations, internship opportunities, and conversations about computer vision and real-time perception systems.