Data Warehouse Developer, GCP

bet365 Group
Manchester
1 week ago
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As a Data Warehouse Developer, you will be responsible for implementing the changes and improvements required within the data warehouse and the data catalogue products.


Full-time


Closes 09/04/2026


The Data Warehouse is an intra day, fully cloud based solution with an AI first approach to development, testing and release. The team consists of both architects and developers, all working towards providing our consumers with the data and information they need.


You will be delivering items ranging from large scale changes linked to business transformative programmes, to minor improvements requested by a single user. Working alongside the Data Lake team and other departments, you will ensure a high quality of work whilst always looking to improve the performance of the Data Warehouse to meet the ever-changing needs of the Business.


This role is eligible for inclusion in the Company’s hybrid working from home policy.


Preferred Skills and Experience

  • Experience with commercial Google Cloud Platform (GCP).
  • Strong Knowledge of Google BigQuery, Composer, Analytics Hub and BigLake.
  • Experience of AI in a commercial environment, including AI Agents.
  • Experience with data catalogue solutions.
  • Experience with relational set based processing through SQL queries.
  • Commercial experience working with data lake and data warehouse platforms.
  • Data warehouse dimensional modelling.
  • Highly adaptable, with the ability to work a continually changing, reactive environment whilst meeting deadlines.
  • Committed, flexible and can do attitude towards work.

What you will be doing

  • Managing our GCP environment including BigQuery, Composer, Analytics Hub and BigLake.
  • Developing and managing transform processes into the data warehouse.
  • Contributing to the development of processes and standards of the GCP products.
  • Creating and maintaining all relevant documentation.
  • Supporting the ongoing evolution of departmental standards and enforce the adherence to the development process.

Bonus

  • Eye care and Flu Vaccinations
  • Life Assurance

Life at bet365

We are a unique global operator with passion and drive to be the best in the industry. Our values form the foundation of culture and shape the unique way that we work. People are our superpower and we support you to be the best you can be.


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