Fabric Data Analytics Specialist - Power BI, DataBricks, DAX

Farringdon
7 months ago
Applications closed

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DATA ENGINEER (MICROSOFT AZURE & FABRIC)

Senior Data Engineer

Senior Data Engineering Consultant

Senior Data Engineering Consultant

Senior Data Engineering Consultant

Senior Data Engineering Consultant

Fabric PowerBI Data Analytical Specialist with MS Fabric inc Data Factory, Synapse OneLake, SQL and familiar with Databricks is required by a leading commercial interior design company in the heart of the City, a short walk from Farringdon Station, paying upto 70k + All commuting costs paid , it is an office based role. You'll leverage Microsoft Fabric to develop insightful dashboards, mentor a growing team, and drive data-driven decisions.

All commuting costs are reimbursed as it is an Office based role.

As the PowerBI Data Analytic Specialist you will spearhead their data journey using Microsoft Fabric and Power BI. Develop insightful dashboards, mentor a growing team, and shape a data-centric future

Key Skills required :

Microsoft Fabric Expertise: Including Data Factory, Synapse, and OneLake for efficient data workflows.
Advanced Power BI Skills: Dashboard development, data modelling, and DAX for strategic insights.
Data Warehousing Knowledge: Understanding of principles and practices for effective data management.
Databricks Familiarity: Experience with Databricks for data processing and analytics.
Stakeholder Engagement: Ability to pro actively engage with internal teams and translate business needs.
Mentoring & Team Development: Skills to guide junior team members and build a cohesive analytics unit.
Data Quality & Governance: Ensuring data accuracy and implementing robust processes.
Technical Troubleshooting: Ability to swiftly resolve technical issues.
Documentation: Comprehensive documentation of data architecture and reporting processes.
Analytical & Problem-Solving: Strong abilities to analyse data and solve complex issues.Experience with Microsoft SQL Server, including writing efficient SQL queries and stored procedures.
Supabase/Postgres.
Exposure to low-code tools like Microsoft Power Apps, Microsoft Power Automate, Workato, and Make

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