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AWS Data Engineer

Capgemini
Manchester
5 days ago
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About The Job You're Considering

The Cloud Data Platforms team is part of the Insights and Data Global Practice and has seen strong growth and continued success across a variety of projects and sectors. Cloud Data Platforms is the home of the Data Engineers, Platform Engineers, Solutions Architects and Business Analysts who are focused on driving our customers digital and data transformation journey using the modern cloud platforms.


We specialise on using the latest frameworks, reference architectures and technologies using AWS, Azure and GCP.


Hybrid Working

Hybrid working: The places that you work from day to day will vary according to your role, your needs, and those of the business; it will be a blend of Company offices, client sites, and your home; noting that you will be unable to work at home 100% of the time.


Pre‑employment Checks

If you are successfully offered this position, you will go through a series of pre‑employment checks, including: identity, nationality (single or dual) or immigration status, employment history going back 3 continuous years, and unspent criminal record check (known as Disclosure and Barring Service).


Your role

  • Design and develop robust data pipelines to ingest, process, and transform data, ensuring it is ready for analytics and reporting.
  • Implement ETL/ELT processes to seamlessly move data from source systems to Data Warehouses, Data Lakes, and Lake Houses using Open Source and AWS tools.
  • Adopt DevOps practices using CI/CD, IaC, and automation to streamline and enhance data engineering processes.
  • Design innovative data solutions that address complex business requirements and drive decision‑making.

Your Skills And Experience

  • Proficiency with AWS Glue, Lambda, Kinesis, EMR, Athena, DynamoDB, CloudWatch, SNS and Step Functions.
  • Strong experience with modern programming languages such as Python, Java, Scala & PySpark.
  • In‑depth knowledge of Data Warehouse, Database technologies, and Big Data ecosystem technologies such as AWS Redshift, RDS, and Hadoop.
  • Proven experience working with AWS data lakes on S3 to store and process both structured and unstructured data sets.

We are a Disability Confident Employer

Capgemini is proud to be a Disability Confident Employer (Level 2) under the UK Government’s Disability Confident scheme. As part of our commitment to inclusive recruitment, we will offer an interview to all candidates who declare they have a disability and meet the minimum essential criteria for the role. Please opt in during the application process.


Your Security Clearance

To be successfully appointed to this role, it is a requirement to obtain Developed Vetting (DV) clearance. To obtain DV clearance, the successful applicant must have resided continuously within the United Kingdom for the last 10 years, along with other detailed criteria and requirements. Throughout the recruitment process, you will be asked questions about your security clearance eligibility such as your country of residence and nationality. Some posts are restricted to sole UK Nationals for security reasons; therefore, you may be asked about your citizenship in the application process.


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