Databricks Data Engineer - Manchester - Insurance - £100K

Tenth Revolution Group
Manchester
2 months ago
Applications closed

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Databricks Data Engineer

Senior Data engineer - Databricks

Senior Data engineer - Databricks

Databricks SME and AWS Data Engineer

Data Engineering Product Owner, Technology, Data Bricks, Microsoft

Lead Data Engineer - Databricks

Join a dynamic team dedicated to leveraging data for impactful insights. We are seeking a Databricks Data Engineer to join a prominent team within a key client's Microsoft B.I. and Databricks division. This Hybrid role is based in Manchester and will afford you the chance to contribute to innovative projects that drive data-driven decision-making.Key Responsibilities and Skills Required:- Proficiency in Azure Databricks for data engineering tasks.- Strong understanding of data transformation and pipeline development.- Experience with data integration and ETL processes.- Ability to collaborate with cross-functional teams to enhance data solutions.- Familiarity with cloud-based data storage and processing solutions.This is an excellent opportunity for a candidate who thrives in a collaborative environment and is eager to make a meaningful impact with their technical skills. If you are passionate about data engineering and are committed to continuous development, we invite you to apply for this role and join a team that values growth and innovation in the heart of Manchester.

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