GoTymeX

Senior/ Lead Platform Engineer (Databricks)

🇻🇳 Ho Chi Minh City, Viêt Nam Hybride Temps plein Publié Jui 5, 2026
Mode de travail Hybride
Contrat Temps plein
Langue English
Publié 5 juin 2026
Dernière vérification 10 juin 2026
Contexte JobGrid

Résumé du poste par JobGrid

Senior/ Lead Platform Engineer (Databricks) at GoTymeX: Ho Chi Minh City, Viêt Nam; Hybride; Temps plein. 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, Viêt Nam, Hybride
  • Role classification: Temps plein
  • Source freshness: checked by JobGrid on 2026-06-10.
  • Application path: candidates continue to the employer application page with non-personal referral tags.

Role Overview 

We are seeking a Senior/Lead Platform Engineer who will take ownership of the design, implementation and operation of our core data, analytics and ML infrastructure. This role spans across platform architecture, DevSecOps, DataOps, and ML infrastructure, and requires a combination of strategic thought leadership and hands-on execution. You will build, integrate and operate platforms on AWS and Databricks, enabling scalable, secure, production-grade ML/AI solutions. 

Key Responsibilities 

  • Architect and implement end-to-end data and ML platforms: data lakes, warehouses, streaming and batch pipelines, model training/deployment infrastructure, on AWS + Databricks. 
  • Lead DevSecOps and DataOps practices: infrastructure as code (IaC), CI/CD pipelines for data & ML workflows, secure multi-account/multi-region cloud operations. 
  • Integrate AWS services (e.g., S3, Redshift, Kinesis, Lambda, EKS/ECS) with Databricks runtime, Delta Lake, Unity Catalog etc to build scalable, performant pipelines. 
  • Build and operate ML infrastructure: training clusters, model versioning, MLOps toolchain (e.g., MLflow), model monitoring and observability, automatic retraining workflows. 
  • Establish data governance, lineage, quality, observability standards across data pipelines and ML workflows. 
  • Mentor engineering teams, define architectural best practices and guide implementation of high-scale data/ML systems. 
  • Optimize system performance, cost and scalability; diagnose and resolve large-scale production issues. 
  • Continuously evaluate new tools and technologies in the areas of cloud, data platform, DevSecOps, ML infrastructure and apply them to drive innovation.