Data Analyst

Verisure
Newcastle upon Tyne
1 day ago
Create job alert

We are Verisure, a leading provider of monitored smart alarms and cameras for homes and small businesses. We deliver peace of mind to over 5.5 million customers worldwide.

As the fastest-growing security company in Europe and Latin America, we hold the #1 position in all 10 of our top markets, supported by 25,000+ passionate colleagues. The UK is one of our fastest-growing markets – it’s a great time to join our UK team!

About the role

We are seeking an experienced Data Analyst to report to the BI Manager. As a Data Analyst, you will be responsible for developing new data products, visualisations and reports within Power BI and SQL across various areas of the business. If you are a true team player, we invite you to join us on our journey, shaping our solutions towards a data-driven business-oriented philosophy. You will be part of a team consisting of data analysts, RPA developers, and data engineers.

Responsibilities:

  • Lead the creation and improvement of Power BI dashboards, ensuring they are accurate, easy to understand, and useful for daily business decisions.
  • Write and refine SQL queries to support reporting and analysis.
  • Build strong data models and optimise Power BI performance (DAX, Power Query, relationships).
  • Analyse data from different areas of the business (Finance, HR, Sales, Operations, Marketing, etc.) and turn it into meaningful insights and recommendations.
  • Work directly with stakeholders to understand what they need, help define the right KPIs, and design solutions that truly help their teams.
  • Present insights clearly to both technical and non-technical audiences, making sure everyone understands the numbers.
  • Translate complex business questions into structured analytical approaches.
  • Collaborate with data engineers to improve data quality, structure, and the overall reliability of our data sources.
  • Document processes, definitions, and logic so that our reporting remains consistent and easy to maintain.
  • Identify opportunities to automate manual reports and streamline how data is delivered.
  • Stay curious and up to date with new BI techniques and tools.

Required Skills & Experience :

  • Strong analytical and problem-solving skills, with the ability to make decisions using data and a good understanding of business drivers.
  • Advanced proficiency in Power BI, including DAX, Power Query, and data modelling, to build reliable dashboards and meaningful analysis.
  • Solid SQL experience and confidence working with databases and analytical queries.
  • Strong business acumen and the ability to turn data into clear, strategic insights for different teams.
  • Excellent communication skills in English (spoken and written), with the ability to adapt to technical and non-technical audiences.
  • Highly organised, able to work independently, prioritise tasks, and see work through to completion.
  • Fluent in Excel and comfortable working with large datasets.
  • Proven experience collaborating across teams and positively influencing stakeholders.
  • A proactive, structured, and solution-oriented approach; quick learner who enjoys improving processes.
  • Commitment to continuous learning and staying up to date with new BI tools and technologies.
  • 3+ years of experience in an analytical role (BI, finance, consulting, or similar).
  • A degree in a quantitative or analytical field is a plus.
  • Familiarity with Snowflake or similar cloud data platforms is a bonus

Benefits Package

We’re dedicated to supporting our staff with fantastic benefits as part of your Verisure package. Upon successful completion of your probation period, your benefits will include:

  • Dental, Optical, Therapy Cash Plan
  • Contributory Pension
  • Discounted Gym & Health Club Membership
  • Enhanced Maternity & Paternity Schemes
  • Long Service Awards
  • Birthdays Off
  • Increasing Annual Leave Entitlement
  • Employee Referral Cash Reward
  • Perkbox (freebies, discounts, and more)
  • Employee Alarm Discount
  • Cycle to Work Scheme

A career with Verisure offers far more than just a job. We offer internal mobility, training and development, international opportunities, and tools to help you develop new skills.

Diversity & Inclusion

Verisure is an equal opportunities employer. We recognize the richness that diversity brings and encourage applicants from all backgrounds to apply. We champion an inclusive and collaborative culture and empower all employees to succeed and grow. Please reach out to us if you have any specific requirements throughout the recruitment process, we are happy to help.

Ready to join our team

and make your dream job a reality? Apply today and we’ll get in touch!


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