Lead Data Engineer / Manager Python SQL AWS

TN United Kingdom
London
4 days ago
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Client:

Client Server

Location:

London, United Kingdom

Job Category:

Other

EU work permit required:

Yes

Job Reference:

21ccd384b76d

Job Views:

138

Posted:

16.03.2025

Job Description:

Lead Data Engineer / Manager (Python SQL AWS) London / WFH to £100k

Are you a Data technologist with leadership skills who enjoys collaborating and working on complex systems with cutting edge technology?

You could be joining a hugely profitable Hedge Fund that invests in sports betting markets and progressing your career in a senior, hands-on role where you'll lead and collaborate to solve problems and influence technology choices and best practices in partnership with the Head of Data.

As a Lead Data Engineer / Manager, you'll remain hands-on whilst managing a team of four junior to mid-level Data Engineers with oversight of the design, implementation, and maintenance of scalable data pipelines. You'll plan, prioritize, and manage multiple data engineering projects, collaborating closely with the Data Analytics team and business stakeholders to understand data requirements and deliver high quality, scalable data pipelines and ETL processes within an AWS environment.

Location / WFH:

You'll be based in fantastic offices in a vibrant area of London with in-house gym and steam room, games room with pool tables and dart boards, library, and free high-quality catering (breakfast, lunch, dinner) from the onsite chef with the flexibility to work from home two days a week.

About you:

  • You're a technologist Data Engineer with experience of leading the design and development of large-scale data processing applications and infrastructure.
  • You have expertise in designing scalable end-to-end data engineering processes.
  • You have advanced Analytics skills and a track record of providing strategic insights.
  • You have advanced technical skills with Python and SQL.
  • You have experience with AWS, Docker, RedShift, Kafka, and S3.
  • You have experience in coaching and mentoring junior Data Engineers.

What's in it for you:

  • Salary to £100k.
  • Pension and Life Assurance.
  • Private medical care and wellness days.
  • Training and conference budget to support your personal development.

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