Data Engineer

Harnham
London
1 year ago
Applications closed

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DATA ENGINEER


Check you match the skill requirements for this role, as well as associated experience, then apply with your CV below.

LONDON BASED

£75,000-95,000 PER ANNUM

This growing e-commerce trading company are searching for a new Data Engineer. You will be responsible for building and maintaining a new AWS serverless platform. You will also be responsible for building and maintaining data pipelines, using Python.

THE COMPANY

This E-commerce trading company have been growing since their formation. They are expanding their Data and Analytics team as the CEO has realised how important Data and Technology are to the business and is investing further in Machine Learning variables.

THE ROLE

You will be joining an expanding Data and Analytics team, which currently has more than 20 employees. You will be responsible for building and maintaining a new AWS serverless data platform.

  • Improve best coding practices within the Business.
  • Stream real-time Data using Kafka.
  • Build and maintain the existing Data pipelines using Python

SKILLS AND EXPERIENCE

  • Extensive commercial knowledge using AWS.
  • Experience implementing best coding practices using CI/CD.
  • Strong knowledge in coding with SQL and Python.
  • Commercial experience using Kafka to stream real-time data.

THE BENEFITS

  • Annual 10% Bonus
  • Cycle to work scheme
  • Private Healthcare
  • Generous holiday package

HOW TO APPLY

Please register your interest by sending your CV to Cameron Webb via the apply link on this page.

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