Senior Data Engineer - Fabric - £70,000 - London

London
1 year ago
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Senior Data Engineer - Fabric - £70,000 - Hybrid

Company Overview:

Our client is a growing data-focused consultancy partnered with both Microsoft and Databricks they excel in delivering exceptional data solutions to a diverse array of clients. Their expertise includes advanced data analytics, artificial intelligence, and custom finance solutions, ensuring tailored support for each unique business need. Recognising the importance of work-life balance, the company fosters a culture that values employee well-being, significantly boosting morale and productivity. Consequently, the role offers a lot of flexibility when it comes to working patterns.

Client has been growing massively, this is a great opportunity for professional development working with top engineers on cutting-edge tech.

Role Overview:

The client is looking for a talented Data engineer to come in as a consultant to work on a large variety of projects across multiple industries. The role will utilise some really interesting tech, with a key focus on the full capabilities of Fabric and additional technologies such as Databricks.

As a consultant you will be working directly with clients to understand business needs and implement industry best data solutions accordingly.

Requirements:

Fabric experience
Strong Python and SQL Skills
Azure, or AWS, experienceBenefits:

Bonus
Flexible Working
25 Days Annual Leave + Bank Holidays
Annual Salary Review

  • Much more

    This is an unmissable chance to hone your skills and grow your career working for a top Microsoft partner, interviews are already underway so don't miss your chance. Apply Now!

    Contact - (url removed) // (phone number removed)

    Fabric, Azure Databricks,Data Engineering, Databricks, ADF, Data Factory, synapse, Data Engineer, Data Consultant, Consultancy, Microsoft, ETL, Kafka

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