Data Engineer (Databricks and AWS)

CGI
Newcastle upon Tyne
3 days ago
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Position Description

At CGI, we’re helping to transform the future of healthcare through the power of data. As a Senior Data Engineer, you’ll play a pivotal role in designing, building, and optimising data platforms that underpin critical national services. Working at the heart of our Healthcare team, you’ll use your expertise in AWS, Databricks, and Python to deliver high-impact solutions that improve outcomes, enhance decision-making, and drive innovation across the sector. You’ll collaborate with experts who share your passion for problem-solving, ownership, and technical excellence—empowered to shape the data foundations of tomorrow.


CGI was recognised in the Sunday Times Best Places to Work List 2025 and has been named a UK ‘Best Employer’ by the Financial Times. We offer a competitive salary, excellent pension, private healthcare, plus a share scheme (3.5% + 3.5% matching) which makes you a CGI Partner not just an employee. We are committed to inclusivity, building a genuinely diverse community of tech talent and inspiring everyone to pursue careers in our sector, including our Armed Forces, and are proud to hold a Gold Award in recognition of our support of the Armed Forces Corporate Covenant. Join us and you’ll be part of an open, friendly community of experts. We’ll train and support you in taking your career wherever you want it to go.


Due to the secure nature of the programme, you will need to hold UK Security Clearance or be eligible to go through this clearance. This is a hybrid position based in Leeds.


Your future duties and responsibilities

In this role, you will design, build, and maintain data solutions that power some of the UK’s most critical healthcare systems. You’ll be part of a collaborative engineering team, transforming how data is captured, processed, and used to drive better patient and operational outcomes. Your work will combine technical innovation with practical delivery—enabling data accessibility, quality, and security at scale.


You’ll take ownership of complex data challenges, partner with architects and analysts to shape technical direction, and continuously refine processes to deliver efficient, sustainable data pipelines. Working within CGI’s supportive environment, you’ll be encouraged to explore new technologies, share knowledge, and contribute to a culture of excellence and innovation.


Key responsibilities include:

  • Design & Build: Develop and optimise data pipelines using Databricks, Apache Spark, and Python.
  • Develop & Deliver: Create scalable data solutions on AWS leveraging S3, Glue, Lambda, and related services.
  • Integrate & Automate: Implement ETL processes and data lake/lakehouse architectures that ensure accuracy and reliability.
  • Collaborate & Advise: Partner with technical and business stakeholders to translate requirements into effective data solutions.
  • Secure & Govern: Ensure compliance with data governance, NHS standards, and security frameworks.
  • Innovate & Improve: Drive continuous improvement across data engineering practices and technologies.

Required Qualifications To Be Successful In This Role

To excel in this role, you’ll bring strong data engineering expertise and hands‑on experience in cloud-based data solutions, ideally within regulated or complex environments such as healthcare. You’ll be confident in both the technical and consultative aspects of data delivery.


You must have:

  • Hands‑on commercial expertise with Databricks.

You should have:

  • Proven experience as a Data Engineer working with large, complex datasets.
  • Hands‑on expertise with Apache Spark, and SQL.
  • Strong proficiency in Python (PySpark preferred).
  • Experience with AWS cloud services including S3, Glue, Lambda, IAM.
  • Familiarity with ETL design, data modelling, and data lake/lakehouse concepts.
  • Understanding of data governance and compliance frameworks.
  • Experience in the healthcare sector or knowledge of NHS data standards (advantageous).

Together, as owners, let’s turn meaningful insights into action.

Life at CGI is rooted in ownership, teamwork, respect and belonging. Here, you’ll reach your full potential because…


You are invited to be an owner from day 1 as we work together to bring our Dream to life. That’s why we call ourselves CGI Partners rather than employees. We benefit from our collective success and actively shape our company’s strategy and direction.


Your work creates value. You’ll develop innovative solutions and build relationships with teammates and clients while accessing global capabilities to scale your ideas, embrace new opportunities, and benefit from expansive industry and technology expertise.


You’ll shape your career by joining a company built to grow and last. You’ll be supported by leaders who care about your health and well-being and provide you with opportunities to deepen your skills and broaden your horizons.


Come join our team—one of the largest IT and business consulting services firms in the world.


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