Built neural network achieving 88.8% AUC-ROC for loan default prediction with interpretable counterfactual explanations. Shows applicants exactly what changes would flip their outcome. 100% success rate across 13 cases using modifiable features.
Read More →AI tool that transforms unstructured research into evidence-based product decisions. Extracts insights, searches for counter-evidence, and generates transparent reasoning. Addresses the $29.5B annual waste from unused features.
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Built neural network for loan default prediction achieving 88.8% AUC-ROC with counterfactual explanations showing customers exactly what needs to change for approval. 100% success rate generating actionable guidance for rejected applications.
Built AI tool that transforms unstructured research into evidence-based decisions. Addresses $29.5B in wasted feature development through structured evidence gathering and bias reduction. User research with 4 PMs validated systematic bias in prioritization frameworks.
Built adaptable pipeline for teams to discover which aesthetic principles matter to their target audience. You can't fit aesthetics into a universal curve. Proof of concept: 101 students rating dorm layouts spanning cluttered to minimal designs. Now used by design scholars at IIITDM for cross-cultural research.
Unified 3,300+ alumni records across 4 fragmented datasets to predict career outcomes. Built Random Forest models for salary prediction and success classification. Key insight: geography matters more than job title (same role shows 3x salary variance by country).
Migrated 1,270+ alumni records to modern CRM system. Grew annual alumni meet from 350 to 550 attendees (largest in institute history). Established Alumni Association and Alumni Office from scratch. Key focus: building sustainable institutional structures through documented processes rather than one-off events.
Founded campus health initiative organizing 4 blood donation camps serving 300+ participants with 161 donors. Partnered with Indian Voluntary Blood Bank and Rotary Club of Chennai to secure administrative approval and operational expertise. Initiative continues operating after graduation through documented SOPs.
"The end of all our exploring is to see the path whole."
(Hover & click over markers to explore)
Technical foundation in mechanical systems, simulations, and product development
Built GT-Suite model for 4-cylinder diesel engine. Achieved brake torque error within ±3%, model accuracy >97%. Learned that technical precision matters, but understanding the system matters more.
Report →Stakeholder research revealed miners needed hands-free safety communication. Pivoted from inner-braces to glove-based haptic feedback after field study. First lesson in product-market fit.
Report →Designed impact-absorbing phone case using auxetic structures. Learned CAD, prototyping, and that good design requires understanding material properties as well.
Report →Cleaned 3,300+ messy alumni records. Built Random Forest models for career prediction. This project opened the analytics path.
GitHub →Ethnographic research, systems thinking, and strategic product development
Built ML framework to quantify aesthetic principles using YOLOv8. Study with 101 participants revealed simplicity and contrast drive preference. Proved you CAN quantify aesthetics, contrary to what everyone said.
View Details → GitHub →Led market research for autonomous underwater vehicle. Researched 22 competitors, interviewed potential users, won 4 government competitions. Learned ownership the hard way in messy startup environment.
Applied Nielsen's 10 heuristics across 5 core screens. Identified 47 usability issues with actionable recommendations. Learned to critique design systematically, not just say "it feels off."
Report →Analyzed India's semiconductor opportunity. Competitive analysis of 22 global players, market sizing, multi-phase roadmap. Learned to think about markets, not just products.
Report →Observed print shop operations to find bottlenecks operators couldn't articulate. Proposed automation based on actual workflow, not assumptions. First real ethnographic research project.
Report →Machine learning, statistical modeling, and predictive analytics at Rotman
Analyzing end-to-end AML examination workflows spanning 100+ annual regulatory reviews. Scoping AI-assisted evidence aggregation patterns for compliance tools with focus on traceability and examiner trust.
Built neural network for loan default prediction achieving 88.8% AUC-ROC with interpretable counterfactual explanations. Generated actionable recommendations showing applicants exactly what changes would flip their outcome.
View Details → GitHub →Built AI tool that transforms unstructured research into evidence-based product decisions. Conducted user research with 4 PMs revealing systematic bias. System extracts insights, searches for counter-evidence, and generates transparent reasoning.
View Details → GitHub →Built 2-layer neural network on Census data. Achieved 85.6% accuracy using ensemble of 5 k-fold models with optimized thresholds for class imbalance. First serious deep learning project.
GitHub →Built collaborative filtering system for vacation property matching. Learned recommendation algorithms, user preference analysis, and how to handle sparse data.
GitHub →Regression, hypothesis testing, A/B testing, experimental design. Learning when data actually supports a decision and when it doesn't. Most important lesson: knowing what you can't conclude.
Applying product thinking and analytics to finance and tech
Built to tell my story authentically.
Looking for opportunities that value curiosity, systems thinking, and the ability to bridge technical and human problems. Probably in finance or tech.
Realized user problems were more interesting than technical implementation, shifted focus from mechanical systems to product thinking.
Expanded beyond traditional engineering to integrate data science, simulations, and modeling for broader problem-solving capabilities.
Narrowed career focus to finance and technology sectors based on market research and industry networking.
I build products by asking questions first. Every project starts with understanding the problem space before touching code. It takes longer upfront, but I'd rather spend time thinking through edge cases than fixing broken assumptions later. Outside of work, I move between creative outlets that keep me grounded. What matters most is finding ways to think differently, whether that's through movement, words, or just sitting with an idea until it makes sense.
Rotman School of Management · Master of Management Analytics
B.Tech in Mechanical Engineering · Minor in Product Design