Senior Data Engineer

Run-Time Group
City of London
1 day ago
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Senior Data Engineer - London (Hybrid)

We are working with a forward-thinking client who is looking for a Senior Data Engineer with strong experience in either AWS or GCP. Their platform operates across both clouds, so deep expertise in one is essential, along with a willingness to work within the other.
About the Role
You will design, build and maintain backend data pipelines that support the organisations key data products. The position requires strong Python engineering skills and experience working with modern data ecosystems. Experience with multi-tenant architectures is highly desirable.
Key Responsibilities
  • Develop and optimise data pipelines and backend services in Python.
  • Work within AWS or GCP, with opportunities to gain experience in the alternative cloud.
  • Support a growing multi-cloud data environment.
  • Contribute to engineering standards, architectural decisions and best practice.
  • Collaborate with cross-functional teams in an...

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