Jouhar Nurhussin

Lead Software Developer at DETECTsystem - Automated & Accurate Forensic Fraud Detection

Ethiopia
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Summary

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Senior
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Top School
Jouhar Nurhussin is a Lead Software Developer with 11+ years building secure, scalable full-stack systems across government, healthcare, and fraud-detection domains. He currently leads development of AI-driven forensic fraud tools at DETECTsystem, including PDF verification and insurance platform integrations, and previously delivered GDPR-compliant incident tracking and ERP solutions for international organizations like BullWall ApS and UNIDO. Comfortable across .NET, C#, Python/Django, React and SQL Server, he combines hands-on coding with system architecture and team leadership to turn complex requirements into production-ready software. His background includes low-resource deployments (e.g., EMR modules running on palmtop devices) and extensive stakeholder training, reflecting a strong focus on practical, user-centered solutions in constrained environments.
code11 years of coding experience
job7 years of employment as a software developer
bookMSc, Software Engineering, MSc, Software Engineering at HiLCoE School of Computer Science & Technology
bookDiploma, Computer Science, Diploma, Computer Science at HiLCoE School of Computer Science and Technology

Github contributions (4)

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jouharnur/BriteCore

Aug 2018 - Aug 2018

Contributions:3 pushes, 1 branch in 5 days
jouharnur/TAAS

Oct 2017 - Oct 2017

Contributions:1 push, 1 branch in 10 days
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Jouhar Nurhussin - Lead Software Developer at DETECTsystem - Automated & Accurate Forensic Fraud Detection