jobs in PayNet (Payments Network Malaysia)

Kerja Sepenuh Masa, Data Resiliency Engineer (Datalake) di PayNet (Payments Network Malaysia) Federal Territory - Maukerja

Data Resiliency Engineer (Datalake)

PayNet (Payments Network Malaysia)

Undisclosed

KL City, Federal Territory

Kongsi
Simpan

Lokasi Kerja

  • Jalan Sultan Mizan Zainal Abidin, Kompleks Kerajaan Kuala Lumpur Federal Territory Malaysia

Penerangan Kerja

Tanggungjawab

Why PayNet / Why Now

  • Contribute to national critical infrastructure operating at increasing scale and complexity
  • Do work with impact beyond a single organisation as PayNet’s role in the ecosystem expands
  • Join an organisation focused on resilience, reliability, and stability as core operating standards
  • Make decisions and contributions that matter at national scale

TL;DR

  • Own data platform resiliency for systems that cannot be wrong or unavailable
  • Make judgment calls during incidents where data accuracy and trust matter
  • Operate with production ownership across monitoring, recovery, and readiness
  • Build confidence in data used by regulators, banks, and PayNet stakeholders

Why This Role Matters

  • Data failures undermine trust in national payment reporting
  • Poor incident handling increases operational and regulatory risk
  • Strong resiliency enables faster, safer platform evolution
  • This role requires judgment over process during real incidents

What You Will Actually Do

  • Own detection, diagnosis, and resolution of data platform incidents
  • Shape monitoring and alerting to surface issues before impact
  • Decide on recovery actions that balance data correctness and service continuity
  • Drive improvements in data quality, observability, and resilience
  • Influence pre‑production readiness and disaster recovery design
  • Partner engineers to reduce recurring failure modes


Examples of This Role in Practice

  • Detect upstream data corruption and decide whether to halt downstream reporting
  • Lead recovery of delayed payment reports under regulatory timelines
  • Redesign data quality checks after identifying silent data drift
  • Refine alerts to eliminate noise while catching true incidents
  • Challenge designs that trade resiliency for short‑term delivery speed

What Will Help You Succeed

  • Required: Hands-on experience operating production data platforms, including incident response, root-cause analysis, and post-incident remediation
  • Required: Strong understanding of modern data lake and data pipeline architectures, including batch and streaming ingestion patterns
  • Helpful: Proficiency in Python and SQL for data investigation, validation, and troubleshooting
  • Helpful: Experience with data observability and monitoring tools such as Datadog or similar platforms
  • Helpful: Exposure to distributed data processing or platform operations, including PySpark-based pipelines or data workloads running on Kubernetes

Peringatan Penting

Jangan pernah kongsikan maklumat bank atau kad kredit anda semasa memohon pekerjaan. Elakkan membuat sebarang pembayaran atau mengisi survey yang tidak berkaitan. Jika ada yang mencurigakan, sila laporkan iklan pekerjaan ini segera.

Lebih Lanjut