1:"$Sreact.fragment" 2:I[91389,["/_next/static/chunks/d9e0d68f528a2dc6.js","/_next/static/chunks/ea6bdb0d940bcd8e.js","/_next/static/chunks/537d354b60c3ef65.js"],"default"] 3:I[97367,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/d2be314c3ece3fbe.js"],"OutletBoundary"] 4:"$Sreact.suspense" 0:{"buildId":"bJ-pHYGFcnjokhVAm8kTC","rsc":["$","$1","c",{"children":[["$","main",null,{"className":"min-h-screen bg-[#F8F9FA]","children":["$","$L2",null,{"project":{"id":"6","title":"Fraud Shield AI","description":"Developed an anomaly detection engine for a rapidly growing FinTech startup. The AI continuously monitors millions of daily transactions.","image":"https://images.unsplash.com/photo-1551288049-bebda4e38f71?q=80&w=2070&auto=format&fit=crop","link":"/portfolio/6","category":"FinTech","year":"2023","duration":"7 Months","technologies":["React","Go","Elasticsearch","Scikit-Learn","AWS SageMaker"],"features":["Real-time transaction scoring engine evaluating 200+ behavioral micro-signals per event.","ML anomaly detection model trained on billions of historical legitimate and fraudulent transactions.","Automated account freeze and step-up authentication triggers for high-risk transactions.","Case management dashboard for fraud analysts to review, action, and feedback flagged events.","Network graph visualization to detect organized fraud rings spanning multiple accounts.","Configurable risk policy engine allowing business rules to override or supplement AI scores."],"challenge":"As a new peer-to-peer payment app scaled to millions of users, fraudulent transactions began to spike. Traditional rule-based fraud systems were returning too many false positives, blocking legitimate users and severely damaging trust in the platform.","solution":"We discarded the rigid rule-based system and implemented a state-of-the-art machine learning anomaly detection pipeline. Built with high-performance Go microservices and trained on AWS SageMaker, the Fraud Shield AI evaluates 200+ micro-behaviors per transaction (location variance, typing speed, historical patterns) in literally milliseconds to accurately score fraud probability.","results":["Decreased successful fraudulent transactions by 89%.","Reduced false-positive account freezes by 76%, saving thousands of support tickets.","Processed transactions with an added latency of less than 15 milliseconds.","Saved the company an estimated $4.2M in chargebacks in the first quarter."]}}]}],[["$","script","script-0",{"src":"/_next/static/chunks/537d354b60c3ef65.js","async":true}]],["$","$L3",null,{"children":["$","$4",null,{"name":"Next.MetadataOutlet","children":"$@5"}]}]]}],"loading":null,"isPartial":false} 5:null