GoTymeX

Senior Data Engineer - Financial Crime - HCM

🇻🇳 Ho Chi Minh City, Вʼєтнам Гібридно Повна зайнятість Опубліковано Чер 5, 2026
Формат роботи Гібридно
Тип зайнятості Повна зайнятість
Мова English
Опубліковано 05 червня 2026 р.
Остання перевірка 10 червня 2026 р.
Контекст JobGrid

Огляд ролі від JobGrid

Senior Data Engineer - Financial Crime - HCM at GoTymeX: Ho Chi Minh City, Вʼєтнам; Гібридно; Повна зайнятість. JobGrid adds normalized role facts, source context, and a path to the employer application page so candidates can compare the listing before applying.

  • Location and workplace: Ho Chi Minh City, Вʼєтнам, Гібридно
  • Role classification: Повна зайнятість
  • Source freshness: checked by JobGrid on 2026-06-10.
  • Application path: candidates continue to the employer application page with non-personal referral tags.

About TymeX 

TymeX is Tyme Group's Technology & Product Development Hub with a global mission to become serial bank builders. 

Our Financial Crime platform plays a critical role in protecting customers and the bank from fraud, money laundering, and other financial crimes using advanced data, analytics, AI, and automation. 

About the Role 

We’re looking for a Senior Data Engineer to join our Financial Crime team. You’ll be part of the group responsible for building and maintaining high-performance data pipelines that drive fraud detection, entity resolution, and compliance analytics across Tyme’s ecosystem. The ideal candidate should relocate to Vietnam.

You’ll work with large, complex datasets in Databricks, integrate data from multiple systems in real time and batch, and help design the data foundation for real-time risk detection and case management. 

Key Responsibilities:

  • Build and optimize data ingestion pipelines using Python and PySpark to collect and transform data from multiple sources (transactions, KYC, AML, authentication, devices, logs, etc.). 
  • Proficiency in SQL (PostGres preferred) 
  • Design and maintain data model that support Financial Crime/Fraud detection, profiling, and entity resolution. 
  • Implement data quality checks and ensure data reliability across environments. 
  • Collaborate closely with Data Scientists, Analysts, Compliance, Operations and our Product/Feature teams to operationalize models and rules. 
  • Utilize jobs, workflows, APIs and streaming to  manage large-scale data processing workloads. 
  • Integrate with external systems (e.g. sanctions, ID&V, biometrics and authentication systems) to enrich risk and identity data. 
  • Support automation and monitoring of ETL processes to improve operational efficiency.