Qureos

Find The RightJob.

Senior Big Data Engineer - AWS

Responsibilities

  • Design and build scalable data lakes and pipelines on AWS using cloud-native and automated solutions.
  • Enable fast, federated analytics using Amazon Athena and Trino, with performance tuning for large-scale queries.
  • Manage metadata, schemas, and discovery using AWS Glue Data Catalog.
  • Implement fine-grained data access and governance using AWS Lake Formation, KMS encryption, and SSL.
  • Build and operate data services on EKS (Kubernetes).
  • Work with the Hadoop ecosystem (Spark, Hive, HDFS) using partitioning, bucketing, and columnar formats (Parquet, ORC).
  • Troubleshoot and resolve complex big data issues across pipelines, clusters, and queries.
  • Design, implement, and maintain CI/CD pipelines using Jenkins or similar tools.
  • Monitor and observe pipelines and clusters using CloudWatch and Grafana.
  • Prepare high-quality datasets for AI/ML use cases.
  • Build, configure, and operate an MCP server for AI/ML integration.
  • Collaborate in Scrum teams; proactively identify gaps and propose out-of-the-box, scalable solutions. Qualifications

Qualifications

Required:

  • 8+ years of experience in Big Data / Data Engineering.
  • Strong hands-on experience with AWS (S3, Glue Data Catalog, Lake Formation, Athena, EMR, EKS).
  • Proven experience with Trino (or Presto) and optimizing query performance.
  • Working knowledge of Kubernetes / EKS for data workloads.
  • Strong SQL, Python, and shell scripting skills.
  • Experience with CI/CD pipelines and Jenkins.
  • Experience building and configuring MCP server for AI/ML integration.
  • Ownership mindset — problem solver, not a task executor.

Preferred:

  • AI/ML data pipeline exposure
  • Cloud-native data modernization experience

Candidates are required to be living in the MVD area at the time of the interview.

Job Type: Contract

Pay: $50.00 - $65.00 per hour

Work Location: In person

© 2026 Qureos. All rights reserved.