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Supriya Thorat
Mid-level Software Engineer specializing in full-stack web and cloud automation
San Diego Gas & ElectricSan Diego State UniversitySan Diego, CA3 Years ExperienceMid LevelWorks On-Site
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Full-stack TypeScript/Angular/Node engineer who owned a production healthcare application for a pharmaceutical client, supporting 100K+ monthly users across 10+ countries. Strong focus on maintainability and quality (reusable localized component library, ~90% unit test coverage, SonarQube in CI/CD) plus performance work (reported 15% client-side latency reduction and up to 50% backend latency reduction) while migrating legacy mobile code with strict backward compatibility.
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