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AWS Data Engineer - Airflow

Square One Resources
Altrincham
6 days ago
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Overview

Job Title: Airflow/AWS Data Engineer
Location: Manchester Area (3 days per week in the office)
Rate: Up to £400 per day inside IR35
Start Date: 03/11/2025
Contract Length: Until 31st December 2025
Job Type: Contract


Company Introduction

An exciting opportunity has become available with one of our sector-leading financial services clients. They are seeking a talented AWS DevOps/Data Engineer to join their growing data engineering function. This role will play a key part in designing, deploying, and maintaining modern cloud infrastructure and data pipelines, with a focus on Airflow, AWS, and data platform automation.


Responsibilities

  • Deploy and manage cloud infrastructure across Astronomer Airflow and AccelData environments.
  • Facilitate integration between vendor products and core systems, including data lakes, storage, and compute services.
  • Establish and enforce best practices for cloud security, scalability, and performance.
  • Configure and maintain vendor product deployments, ensuring reliability and optimized performance.
  • Ensure high availability and fault tolerance for Airflow clusters.
  • Implement and manage monitoring, alerting, and logging solutions for Airflow and related components.
  • Perform upgrades, patches, and version management for platform components.
  • Oversee capacity planning and resource optimization for Airflow workers and AWS resources.
  • Manage integrations with source control systems (GitHub, GitLab) and CI/CD pipelines.
  • Collaborate with AWS teams and internal stakeholders for pipeline scalability and optimization.
  • Design and implement process improvements, including automation, data delivery optimization, and infrastructure re-design.
  • Develop ETL pipelines and data workflows using AWS and SQL technologies.
  • Partner with cross-functional teams (product, design, and leadership) to resolve technical issues and enhance platform capabilities.
  • Build analytical tools and dashboards to leverage data pipelines for actionable business insights.

Key Requirements

  • Proven experience as an AWS DevOps Engineer or Data Engineer in complex cloud environments.
  • Strong hands-on expertise with AWS services (EC2, S3, Lambda, RDS, IAM, CloudWatch, etc.).
  • Demonstrated experience with Airflow (Astronomer) setup, orchestration, and optimization.
  • Proficiency in infrastructure as code (IaC) tools such as Terraform or CloudFormation.
  • Experience with CI/CD pipelines and tools like Jenkins, GitHub Actions, or GitLab CI.
  • Solid understanding of containerization technologies (Docker, Kubernetes).
  • Working knowledge of Python and SQL for automation and data pipeline development.
  • Familiarity with monitoring and observability tools (Grafana, Prometheus, CloudWatch).
  • Strong grasp of data architecture principles and ETL design patterns.
  • Financial services or regulated industry experience (desirable)


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