
ReturnGuard AI transforms e-commerce returns from a 15-minute manual bottleneck into a 15-second automated process. Built with Opus AI workflows, it addresses the $103 billion annual returns fraud crisis through intelligent automation and vision-based fraud detection. The system processes return requests through five stages: intake, AI analysis, intelligent routing, human review, and audit logging. Computer vision analyzes product damage photos while comparing against customer claims to detect fraud patterns. Three decision paths handle different scenarios: auto-approval for legitimate low-value returns, human escalation for fraud cases, and automatic rejection for policy violations. Using Opus agent nodes, decision logic, and Python code nodes, ReturnGuard demonstrates production-ready workflow architecture. Every decision logs to Google Sheets for complete audit compliance. The solution reduces processing time by 95%, catches claim-photo mismatches that manual review misses, and saves retailers $50,000+ annually at scale. Built for the Opus Hackathon 2025, ReturnGuard showcases AI-native workflow automation solving real-world e-commerce challenges with measurable business impact.
19 Nov 2025