Lead Data Engineer - Hybrid/London - £100,000 Bonus

Tenth Revolution Group
London
1 year ago
Applications closed

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Lead Data Engineer

Lead Data Engineer

Lead Data Engineer

Lead Data Engineer

Lead Data Engineer

Lead Data Engineer

My client is based in the London area are currently looking to recruit for an experienced Lead Data Engineer to join their team. They are one of the leaders within the Insurance Industry, and are currently going through a period of growth and are looking for an experienced Data Engineer to join their team.

Your role will include:

  • Leading, developing, and providing oversight of a team.
  • Manage a team of direct reports, driving high performance and ensuring activities are carried out efficiently and to a high standard
  • Support the delivery of good customer outcomes through all activities and deliverables.

My client is providing access to;

  • Hyrbid Working ,
  • Bonus of 12%,
  • 29 Days Holiday, Plus Bank Holiday
  • £1200 of Company Shares Per Year
  • Pension SchemeAnd More...

For this role, they are looking for a candidate that has experience in…

  • A strong background delivering a service to data consumers.
  • Proven ability to Collaborate with IT architects to design and lead the implementation of new data solutions.
  • Extensive experience with Snowflake is essential and working knowledge of DBT, Airflow and AWS Cloud.
  • Extensive stakeholder's management experience ideally in area of responsibility, with IT and architects and with external suppliers.

This role is an urgent requirement, there are limited interview slots left, if intereste...

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