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DATA Engineering Manager

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London
1 month ago
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Job Description

Data Engineer | Python | SQL | ETL | Databricks | Snowflake | DBT | Consultancy

Data Engineering Manager - Up to ��100,000 + 15% Bonus & Benefits

London - Hybrid (2-3 days in office)

Method Resourcing have partnered exclusively with a leading Data Consultancy to hire a Data Engineering Lead to work on a variety of innovative projects.

You will be responsible for the delivery of technical projects, and leading a small team of Consultants. As an overview, you can expect to work on multiple greenfield projects to deliver efficient, scalable and robust data platforms and solutions for clients, work on Machine Learning and AI projects among many other requirements.

As a Data Engineering Lead, you should be able to demonstrate commercial experience in a majority of the following:

  1. Expertise in Python and SQL development
  2. Extensive experience across Cloud data platforms - Azure, AWS, GCP
  3. Built and delivered Data Platforms based inDatabricks/Fabric/Snowflake
  4. Hands-on experience with ETL tools - DBT, Matillion, Informatica etc
  5. Experience and understanding of CI/CD tools and processes

This role is paying up to £100,000 DOE + 15% bonus and benefits. We are offering this role on a hybrid model, with 2-3 days on-site, either in office, or on client site.

Please apply now for immediate consideration. We are ideally looking for someone to start in January for this role, but can wait for the right person!


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