Data Engineer

BVGroup
London
11 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

We are BVGroup a dynamic team that's shaping the future of online sport betting and gaming. We're dedicated to fostering a culture of innovation and excellence and as a leading global brand, we're committed to delivering top-tier products and services to our customers.

We are looking for aData Engineerto become part of our growing team.

Expected responsibilities

  • Building and maintaining new production services that integrate into the rest of the company’s technology stack and provide critical business services.
  • Improving and upgrading the DS stack, including anti-fragility and other technical debt.
  • Collaborate with data scientists on their projects, particularly on the design of tools and data models, and other technical aspects.
  • Contribute to business projects that have engineering implications, particularly on the design of tools and data models, and ensuring that engineering requirements of a project are properly defined.

Person profile

  • Detailed experience as a Data Engineer, particularly with Python, Airflow, Terraform, Git, GitLab (including CI/CD pipelines), GCP (particularly BigQuery, Kubernetes and Firestore), Kafka and MongoDB.
  • Detailed knowledge of querying data and building pipelines with SQL (ideally in BigQuery or similar database engines) and other tools, including the ability to work with complex data structures and very large data volumes.
  • Proactive, independent, responsible and attentive to detail.
  • Eager and able to learn, analyse, resolve problems, and improve the standard of BVGroup data infrastructure.
  • Degree in a scientific or quantitative field.
  • Ideally knowledge of sports betting and familiarity with gaming data.

How we hire:

Our interviews are a two-way process, and we want you to have the time and opportunity to get to know us, as much as we are getting to know you! Our interviews are conversational, and we want to get the best from you, so come at us with questions and be curious. In the event that we receive sufficient applications for the role, this vacancy may be subject to early closure. Therefore, if you are interested, please submit your application as early as possible.

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