Data Engineer PySpark AWS - Relocate to Dubai

Client Server
London
1 month ago
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Data Engineer PySpark AWS - Relocate to Dubai

Are you a technologist Data Engineer looking for an opportunity to work with modern technology with continual learning and development opportunities? You could be joining a global events management company that specializes in large scale corporate and prestige event planning.

As a Data Engineer, you will help to build out a new centralized data platform to store huge amounts of data associated with the events, including millions of contacts. You will build systems with security in mind to protect this information and enable marketing to send email campaigns of 2.5 million at a time. You'll mainly be using Python, PySpark, and AWS services but will also gain skills with AWS Glue, AWS Lambda, Airflow, CI/CD, and Github.

Location / WFH: This role will relocate to Dubai within the first six months - you will initially be based in London on a full-time basis, visa sponsorship is available to British citizens.

About you:

  • You have achieved a 2.1 or above in a STEM discipline, Computer Science preferred.
  • You have commercial experience as a Data Engineer.
  • You have strong Python and PySpark skills.
  • You have AWS Glue experience.
  • You're collaborative with great communication skills and enthusiasm to learn and progress as a Data Engineer.
  • Experience with any of the following would be great but you can pick them up on the job too: AWS Lambda, Airflow, CI/CD, Github.
  • You must be a British citizen or already hold the right to work in Dubai.

What's in it for you:

  • Competitive salary - to £65k + Bonus.
  • Fully paid for attendance at your choice of one of the company's global events per year.
  • 25 days holiday plus ability to buy/sell 5 days.
  • Training and career development.
  • Fully paid for travel to Dubai for work.
  • Hybrid / flexible working.

Apply now to find out more about this Data Engineer (Python PySpark AWS Glue) opportunity.

At Client Server, we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Engineering and Information Technology

Industries

Software Development, Events Services, and IT Services and IT Consulting


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