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AWS Data Engineer - (Python/PySpark/Aws Services/Unit testing/CI/CD/Gitlab/Banking)

GIOS Technology
Glasgow
2 days ago
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I am hiring for AWS Data Engineer


Location: Glasgow 2–3 days per weekly Onsite


Job Description


We are looking for an experienced AWS Data Engineer with strong hands‑on coding skills and expertise in designing scalable cloud‑based data solutions. The ideal candidate will be proficient in Python, PySpark, and core AWS services, with a strong background in building robust data pipelines and cloud‑native architectures.


Key Responsibilities



  • Design, develop, and maintain scalable data pipelines and ETL workflows using AWS services.
  • Implement data processing solutions using PySpark and AWS Glue.
  • Build and manage infrastructure as code using CloudFormation.
  • Develop serverless applications using Lambda, Step Functions, and S3.
  • Perform data querying and analysis using Athena.
  • Support Data Scientists in model operationalization using SageMaker.
  • Ensure secure data handling using IAM, KMS, and VPC configurations.
  • Containerize applications using ECS.
  • Write clean, testable Python code with strong unit testing practices.
  • Use GitLab for version control and CI/CD.

Key Skills


Python, PySpark, S3, Lambda, Glue, Step Functions, Athena, SageMaker, VPC, ECS, IAM, KMS, CloudFormation, GitLab


Seniority level

Mid‑Senior level


Employment type

Contract


Job function

Information Technology and Other


Industries

IT Services and IT Consulting, Banking, and Financial Services


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