Data Analyst

Thx UK Ltd
Cambridge
1 month ago
Create job alert

At THX, we are committed to transforming tool hire expectations within the UK construction industry by providing a hire experience that goes beyond the ordinary for specialist contractors. Helping our customers thrive through delivering an unparalleled hire experience to Mechanical, Electrical, Drylining, HVAC & SFS Specialists since 2006.

We are a dynamic, fast-growing company and have an exciting opportunity for someone looking to embark on their next chapter.

Join us and become part of a team that’s passionate about delivering unparalleled customer service and creating meaningful customer relationships.

WHAT ARE WE LOOKING FOR?

We are looking for someone with strong data analytic skills who is able to collect and manage a range of data efficiently and proactively. If this sounds like you, we want to hear from you!

WHAT WILL YOU BE DOING?

Your responsibilities will include:

  • Collecting, cleaning, and analysing financial, operational, and sales data to support decision-making.
  • Developing reports, dashboards, and KPIs to monitor margins, costs and revenue performance across the business.
  • Identifying trends, inefficiencies, and opportunities for margin improvement.
  • Working closely with the Financial Director to model financial scenarios, forecasting, and budget planning.
  • Supporting pricing strategies and product/service profitability analysis.
  • Preparing presentations and reports that translate complex data into actionable insights for senior management.
  • Collaborating with other departments (Operations and Sales) to ensure data accuracy and alignment with business objectives.
  • Continuously improve data collection processes and tools to enhance reporting efficiency.

WHAT WILL YOU GET IN RETURN?

Essential experience, skills & attributes for the role:

  • A recognised accounting qualification, for example ACCA, ACA, CIME & equivilent.
  • Strong analytical and problem-solving skills, with a proven ability to interpret complex data sets.
  • Advanced Excel skills, knowledge and experience.
  • Knowledge of financial principles, cost accounting, and margin analysis.
  • Strong attention to detail and ability to work under tight deadlines.
  • Excellent communication skills, capable of translating data into clear recommendations.
  • Proactive mindset with the ability to identify inefficiencies and recommending improvements.

Desirable experience, skills & attributes for the role:

  • Experience with BI tools (e.g., Power BI, FP&A) is highly desirable.
  • Experience in the construction hire, equipment rental, or construction sector.

what will you get in return?

THX is No Ordinary workplace! In exchange for helping us do a great job and continue to grow our business, we offer a comprehensive rewards package and genuine career development opportunities.

Benefits include:

  • Recharge with 25 Days Holiday (with Bank Holidays on top).
  • Looking after your future with a company pension.
  • Special recognition and rewards incentives.
  • NO MORE PACKED LUNCHES: Enjoy access to our fully stocked kitchens, filled with snacks and treats to keep you fuelled throughout the day.

And that’s not all…

NO ORDINARY WORKPLACE

On top of our great rewards package, we’ve cultivated a friendly, energetic, and collaborative workplace, where ‘Team’ really does mean team.

Take a moment to explore our THX CAREERS and THX CULTURE pages. You’ll find more details about all of our great benefits, meet some team members, and get a glimpse into what life is like at THX.

This role is ideal for a forward-thinking technology leader passionate about optimising business operations through innovative system solutions. If you are a results-driven professional with a strong background in business systems and digital transformation, we encourage you to apply!

If you like what you see and feel like you could be the right person for this role, please apply by completing the Application Form at the bottom of this page.

Alternatively, you can send your CV with a cover letter to our HR Department,

Whilst we value qualifications and experience, don’t let a few unchecked boxes discourage you. If the role aligns with your skills and aspirations, we welcome your application.

And, if this role isn’t right but you feel you have something to bring to the table, please send your CV and a cover letter for general consideration.

Full Time – Great Barford, Bedford Working Hours: Monday to Friday. Reporting…

Great Barford, Bedford. Monday – Friday. The full-time schedule ranges with start…

Full Time – Great Barford & Bedford Working Hours: Monday – Friday,…

Full Time – THX Bedford, Bedfordshire Working Hours: Monday to Friday –…

Contact us below to join our dynamic and growing team
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