Senior Consultant Data Analyst

Movar Limited
Birmingham
3 weeks ago
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At Movar, we understand that project delivery is getting increasingly complex. Since 2013, we’ve been helping companies of all sizes improve the way projects are delivered.


Our mission is to be the number one provider of innovative project solutions, driven by a community of experienced, caring, and passionate project professionals—all seeking to improve the way projects are delivered.


Our vision is simple yet powerful:to improve the lives of people everywhere through the delivery of projects.We provide tailored services ranging from organisational systems implementation to project transformation and complete programme recovery.


We’re proud to have been namedWinners of the Global Project Controls Innovation of the Year Award 2024.


Why Join Movar?

Movar is in an exciting period of growth, and there’s never been a better time to be part of our journey. We’re building something special—scaling our business while staying true to our people-first approach.


At Movar, we invest in our teams, fostering an environment where development is valued and individuals are encouraged to grow with the company. Our unique culture sets us apart from other consulting practices, and we’re keen to build a team that is as ambitious as we are.


Our IDEAL Values:

  • Integrity– We do the right thing, always.
  • Drive– We push boundaries and strive for excellence.
  • Empathy– We care deeply about our people and clients.
  • Adaptability– We embrace change and thrive in it.
  • Loyalty– We stand by each other and our mission.

Job Summary
About the Role

Movar is seeking a Senior Data Analyst with strong analytical skills and a builder's mindset. You will transform raw data into insights that inform strategic decisions across major infrastructure projects in rail, water, nuclear, and defence. Working closely with our Data Engineering and AI teams, you will translate complex datasets into clear business value and help clients modernise their operations through data-driven decision making.


Core Responsibilities

  • Design and maintain Power BI dashboards and interactive visualisations for enterprise clients.
  • Extract, clean, and model data using Azure Data Factory, Databricks, and SQL Server.
  • Collaborate with engineering and innovation teams to define KPIs, automate reporting, and enhance data quality.
  • Support the integration of AI-powered insights, including predictive analytics and natural language summaries.
  • Engage directly with clients to understand requirements and deliver clear, actionable outputs.
  • Mentor junior team members and contribute to capability development.

Technical Stack

Core:



  • Power BI
  • DAX
  • SQL Server
  • Databricks
  • Advanced Excel
  • Power Automate
  • Power BI REST API
  • Microsoft Fabric
  • AI integration for BI (Copilot, GPT-based summarisation)

What You’ll Bring

  • Professional experience in data analytics or business intelligence.
  • Strong communication and storytelling skills, with the ability to translate data into meaningful narratives.
  • Proficiency in Microsoft's data ecosystem and an eagerness to explore Azure Fabric, AI-driven analytics, and emerging Copilot tools.
  • Demonstrated ability to work independently and lead analytical workstreams.
  • A mindset that reflects Movar's IDEAL values: Integrity, Drive, Empathy, Adaptability, and Loyalty.


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