Welcome
I'm a 2nd year CS student @Thakur College of Engineering & Technology, building production-grade AI and backend systems. I like turning everyday problems into reliable products โ often with SaaS architecture, machine learning, and systems that can handle real users and real failure modes.
My focus is execution: building things that are measurable, debuggable, and ready for real use.
Hire me
I'm currently available for hire.
Download my resume [pdf]
I can build production-grade AI/ML systems, real-time backends, and high-concurrency applications that scale under real load. I specialize in taking ambiguous technical problems and turning them into reliable, measurable systems.
Verified Impact โ Spoon
- 40 min โ 5 min โ Average customer wait time
- 525 โ 887 / hr โ Order-handling throughput
- 4+ colleges โ Live deployment footprint
- Patent + Paper โ Co-authored with R&D Dean
Projects
- Spoon (Patent-backed) โ A high-concurrency virtual queue system built for canteens and similar service environments. Handles ML-based wait-time prediction, adaptive polling, atomic slot allocation, and idempotent Razorpay transactions with refund-safety. The system was designed to stay stable under peak load without ambiguity in order handoff โ deployed across 6+ colleges with documented throughput improvement. Published research paper and patent co-authored with Dr. Vinitkumar Dongre (R&D Dean).
- NeuroGuard โ Real-time EEG anomaly detection system for neurological signal analysis. Uses a custom 1D-CNN pipeline with Grad-CAM and SHAP-style explainability to support clinical-style decisions. Covers seizures, Alzheimer's, Parkinson's, ADHD, stroke, and tumor-related patterns. MVP built at MumbaiHacks '25 (5,000+ participants) โ selected as a finalist among top teams.
- DeepGuard โ In-browser deepfake detection that runs at the point of media consumption. Uses a multi-model agentic architecture with consensus-based scoring, explainable verdicts, and graceful fallback when a detector is unavailable โ the goal is a transparent media-trust layer, not a black-box label. Built at eRaksha Hackathon (IIT Delhi) โ selected among top teams at this national-level competition.
- RescuNav-AI โ Multi-agent rescue simulation over a graph-modeled 3D environment. Implements A* pathfinding, dynamic danger modeling, and iterative mission learning โ agents improve strategy measurably across runs. Currently being validated for real-environment deployment within a college setting.
- Dataknot (In progress) โ The operating system for data quality across any stack. It automatically monitors and enforces data quality so bad data does not reach dashboards. Targets drift detection, root-cause tracing, semantic contract enforcement, and automated correction workflows.
Achievements
- Avishkar 2025 โ Maharashtra inter-university research convention โ represented TCET
- eRaksha Hackathon (IIT Delhi) โ DeepGuard โ selected among top teams at this national-level competition
- MumbaiHacks '25 โ NeuroGuard finalist โ 5,000+ participant event
- SIH '25 โ College-level winner โ Smart India Hackathon
- 2ร Hackathon winner โ Across competitive open events
- MHT-CET 2024 โ 94 percentile ยท AIR 19,595 of 7.5 lakh candidates
View more on my LinkedIn profile