
1
1
India
2+ years of experience
I'm an Applied AI & Computer Vision Engineer (3rd-year B.Tech) obsessed with building deterministic, real-world systems. I focus on turning complex mathematics and Deep Learning into deployable architectures. Recently, I engineered a geospatial Route Resilience pipeline that processes satellite imagery to computationally stress-test urban infrastructure using topological healing and NetworkX. Alongside this, I am developing 'Talkhive'—a voice-first French AI agent powered by CamemBERT to solve the 'blank-out' hesitation in real-time language acquisition. I thrive on Deep Learning, Edge AI, and graph theory. I'm here to collaborate with great minds, push technical limits, and build a heavy 'Proof of Work' that actually matters in the real world. Let's build!

Edge-Pali is a revolutionary dynamic VRAM optimizer designed to bridge the gap between heavy generative AI models and edge device constraints. Standard vision-transformer models process images using a fixed 1024 patches, consuming significant memory with 512.0 KB per inference at 100% baseline accuracy. Edge-Pali introduces a learned-pruning architecture that dynamically reduces this to 213–239 patches based on scene complexity, achieving an impressive ~79% VRAM reduction while maintaining 97.15% accuracy. Unlike basic similarity heuristics that struggle to exceed 50% compression, our approach ensures production-viable efficiency for real-time applications. By implementing this within a containerized environment, Edge-Pali provides a seamless, scalable solution for edge deployment, proving that high-fidelity AI performance is achievable even on resource-limited hardware
13 Jul 2026