Fabric Architect

City of London
1 week ago
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Job Description

Salary - up to £90k per year

Hybrid Work - London office

Role & Responsibilities

Help create modern systems by using Microsoft Fabric
Act as a consultant, understanding the client requirements and deliver the best solutions.
Building and optimising data pipelines.
Debugging issues
Keep costs under control
Skills

Microsoft Fabric - Lakehouse and warehouse models
Azure Tools (Data Factory, Synapse, SQL)
Python experience for programming
Databases, SQL and NoSQL (CosmosDB, KQL)
Data Modelling: Kimball frameworks and 3NF

Nice To Have

Databricks
Power BI
AI/ML
Azure Infrastructure
DevOps

Certifications

Microsfot certified: fabric Analytics Engineer Associate
DP-203 Azure data Engineering
AZ-305 Azure Solutions Architect.

If this sounds like you then please get in touch and apply

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