AWS Data Engineer

UBDS Digital
Manchester
4 days ago
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This range is provided by UBDS Digital. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Base pay range

Rayo Cloud is seeking highly skilled, Security Cleared AWS Data Engineers at all levels to design, build, and maintain scalable data pipelines and infrastructure using AWS-native services. This role focuses on data orchestration, automation, and containerisation to support high-performance data workflows across the organisation.


Key Responsibilities

  • Develop and maintain data pipelines using Python, SQL, and Apache Airflow
  • Containerise data applications and workflows using Docker
  • Build and optimise data solutions using AWS services including Redshift, OpenSearch, Lambda, Glue, Step Functions, and Batch
  • Collaborate with cross-functional teams to deliver robust, secure, and scalable data infrastructure
  • Manage version control using GitLab (or similar)
  • Monitor and troubleshoot data pipeline performance and reliability
  • Contribute to documentation and process improvement initiatives
  • Ensure data quality, governance, and security best practices are followed

Requirements
Essential

  • Strong programming skills in Python and proficiency in SQL
  • Experience with Apache Airflow for DAG orchestration and monitoring
  • Hands-on experience with Docker for containerisation
  • Proficient in AWS data services: Redshift, OpenSearch, Lambda, Glue, Step Functions, Batch
  • Familiarity with CI/CD pipelines and YAML-based configuration (e.g., GitLab CI/CD)
  • Proficient in Git and collaborative development using GitLab (or similar)
  • Understanding of AWS security best practices, IAM policies, and RBAC

Desirable Skills

  • Experience with AWS services such as Athena, SQS, CloudWatch, CloudTrail, EMR
  • Exposure to infrastructure-as-code tools (e.g., Terraform, CloudFormation)
  • Familiarity with documentation tools like Confluence and README standards
  • Experience working in consulting or client-facing environments

Soft Skills

  • Strong problem-solving and troubleshooting abilities
  • Comfortable working in Agile environments
  • Effective stakeholder management and communication skills
  • Collaborative mindset and willingness to share knowledge

Benefits

Why people choose to grow their careers at UBDS Group: Professionals choose to grow their careers at UBDS Group for its reputation as a dynamic and forward-thinking organisation that is deeply committed to both innovation and employee development. At UBDS Group, employees are given unique opportunities to work on cutting‑edge projects across a diverse range of industries, exposing them to new challenges and learning opportunities that are pivotal for professional growth.


UBDS Group fosters a collaborative environment where creativity and innovation are encouraged, allowing employees to contribute ideas and solutions that have a tangible impact on the company and its clients.


Employee Benefits

  • Training – All team members are offered a number of options in terms of personal development, whether it is technical led, business acumen or methodologies. We want you to grow with us and to help us achieve more
  • Private medical cover for you and your spouse/partner, offered via Vitality
  • Discretionary bonus based on a blend of personal and company performance
  • Holiday – You will receive 25 Days holiday, plus 1 day for Birthday and 1 day for your work anniversary in addition to UK bank holidays
  • Electric Vehicle leasing with salary sacrifice
  • Contributed Pension Scheme
  • Death in service cover

About UBDS Group

At UBDS Group our mission is to support entrepreneurs who are setting new standards with technology solutions across cloud services, cybersecurity, data and AI, ensuring that every investment advances our commitment to innovation, making a difference, and creating impactful solutions for organisations and society.


Equal Opportunities

We are an equal opportunities employer and do not discriminate on the grounds of gender, sexual orientation, marital or civil partner status, pregnancy or maternity, gender reassignment, race, colour, nationality, ethnic or national origin, religion or belief, disability or age.


Seniority level

Not Applicable


Employment type

Full-time


Job function

Consulting


Industries

IT Services and IT Consulting


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