Senior Data Consultant

Farringdon
3 weeks ago
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Senior Data Consultant – London – £80,000
(Data Solution Design, Data Warehousing, Databricks, Microsoft Fabric, Data Engineering) – Lead data transformation for finance and insurance clients!

A Senior Data Consultant (Data Solution Design, Data Warehousing, Databricks, Microsoft Fabric, Data Engineering) is needed to design and deliver data solutions for top finance and insurance clients. This is a hands-on role where you’ll shape data strategies and implement cutting-edge technology.
 
Required Experience:

Data Solution Design – Proven ability to architect scalable data solutions.
Data Warehousing – Strong background in ETL, data modeling, and transformation.
Databricks – Hands-on experience with data processing and analytics.
Microsoft Fabric – Experience designing and implementing Fabric-based solutions.
Client Engagement & Presales – Ability to advise finance/insurance clients and sell Fabric solutions.The Role:
You’ll lead client conversations around data architecture and work closely with engineering teams, working with finance and insurance clients to assess data needs and deliver solutions. Expect hands-on involvement in data discovery, solution design, effort estimation, and implementation. Work within an agile framework, balancing short-term discovery and pre-sales and long-term projects.
This position is ideal for a Senior Data Consultant looking to step up into a Data Architecture position in a growing and ambitious company with an energetic culture!
 
Why Apply?

Shape data transformation for major finance and insurance firms.
Work with Microsoft Fabric and Databricks on high-impact projects.
Hybrid working – 2-3 days per week in the London office.
Immediate start with potential for a long-term contract. 
Apply now

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