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Data Engineer

Experis UK
City of London
1 week ago
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ROLE TITLE: Data Engineer

LOCATION: London

CLEARANCE: The ideal candidate will have active SC Clearance or be eligible to undergo SC Clearance.


We are actively looking to secure multiple Data Engineers to join Experis.

Experis Consultancy is a Global entity with a well-established team with over 1000 consultants on assignment across 20 clients globally. Our UK operation is growing and has very aggressive plans for expansion over the coming years. We form part of the Manpower group of companies that turn over $20 billion a year collectively.

Experis UK have partnerships with major clients across the UK spanning multiple industries; our approach is a very personal one, with both our clients and our own employees. We are passionate about training, technology and career development.


Required Skills:

  • Attention to detail and ability to follow defined processes
  • Drive and commitment to learn new technical concepts quickly
  • Familiarity with Agile & DevOps ways of working
  • Familiarity with and experience of using UNIX Knowledge of CI toolsets
  • Good client facing skills and problem solving aptitude
  • DevOps knowledge of SQL Oracle DB Postgres ActiveMQ Zabbix Ambari Hadoop Jira Conflucene BitBucket ActiviBPM Oracle SOA Azure SQLServer IIS AWS Grafana Oracle BPM Jenkins Puppet CI and other cloud technologies.


Benefits Include: Contributory pension scheme

  • Employee Assistance Program
  • Medical and Dental cover
  • 22 days holiday + bank holidays
  • Maternity Pay/Shared Parental leave and paternity leave
  • Sick pay


Suitable Candidates should submit CVs in the first instance.

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