Data Engineer (Java, AWS, PostgreSQL)

ELLIOTT MOSS CONSULTING PTE. LTD.
Penarth
2 weeks ago
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We are seeking a skilled Data Engineer to support and enhance enterprise data platforms, with a strong focus on master data management (MDM), ETL processes, and real-time data pipelines.


The role involves hands‑on development, system support, and close collaboration with cross‑functional teams to ensure high‑quality, reliable data delivery to downstream systems.


Key Responsibilities

  • Maintain and support Master Data Management (MDM) systems, ETL workflows, and real‑time data pipelines.
  • Develop, enhance, and troubleshoot data‑related applications using Java (Spring, Maven).
  • Design, optimize, and manage SQL queries and database objects in Postgres and/or Oracle RDBMS.
  • Ensure data accuracy, consistency, and timely publication to downstream consumers.
  • Perform root cause analysis and resolve data, application, and pipeline issues.
  • Support DevOps practices, including CI/CD pipelines, version control, and deployment using GitHub and related tools.
  • Work in a Linux environment and support job scheduling and monitoring using BMC Control‑M.
  • Participate in 24×7 on‑call support and perform planned activities during weekends or public holidays when required.
  • Collaborate effectively with internal teams, demonstrating a proactive learning and problem‑solving mindset.

Required Qualifications & Skills

  • Bachelor’s degree in Computer Science, Information Technology, or a related field.
  • Strong SQL skills with hands‑on experience in Postgres and/or Oracle RDBMS.
  • Solid software development experience in Java, preferably with Spring and Maven, across multiple data‑related projects.
  • Good analytical, problem‑solving, and troubleshooting abilities.
  • Familiarity with DevOps tools, CI/CD lifecycle, and Git‑based version control.
  • Experience working in Linux environments.
  • Positive, collaborative attitude with a willingness to learn and adapt.

Preferred / Added Advantages

  • Experience with BMC Control‑M job scheduling.
  • Exposure to AWS technologies.
  • Prior experience in the financial services or investment industry.


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