Data Analytics Engineer

NEXT Retail Ltd.
Leicester
3 days ago
Create job alert
Overview

The Role

As a Data Analytics Engineer, you will be at the heart of this evolution, bridging the gap between raw data and the actionable insights that drive our commercial success. Working closely with our Finance team at Head Office, you will design and build scalable solutions that transform how we see our business. This isn’t just about managing numbers; it’s about making an impact by automating legacy processes and ensuring data integrity across our operations.

What You’ll Take On


  • Collaborate with colleagues to translate business needs into tangible analytical solutions.
  • Build and maintain robust data models and pipelines using SQL, Python, and Databricks.
  • Create inspiring dashboards in PowerBI to showcase the KPIs and trends that shape our future.
  • Learn to evolve by staying ahead of technical advancements, including generative AI and machine learning.
  • Empower others by acting as a subject matter expert, providing training that enables the wider Finance team to conduct high-quality self-service analysis.

What You’ll Bring

We’re looking for someone who is quietly confident in their technical ability and ready to take responsibility for delivering the right results. You should have a talent for explaining complex concepts to non-technical audiences, focusing on the findings that truly matter.

Your experience should include:


  • Proven expertise in developing interactive reports, particularly with PowerBI.
  • Proficiency in SQL and Python for comprehensive data manipulation.
  • A solid understanding of data warehousing and modelling techniques.
  • The ability to work at pace, managing various tasks in our dynamic, fast-paced environment.
  • A collaborative mindset, ready to partner with technology domains to ensure a single version of the truth across NEXT

#LI-DC1

#LI-Hybrid


Benefits

  • 25% off most NEXT, MADE*, Lipsy*, Gap* and Victoria's Secret* products (*when purchased through NEXT)
  • Company performance based bonus
  • Sharesave scheme
  • On-site Nursery available; OFSTED outstanding in all areas
  • 10% off most partner brands & up to 15% off Branded Beauty
  • Early VIP access to sale stock
  • Access to fantastic discounts at our Staff Shops
  • Restaurants with great food at amazing prices
  • Access a digital GP and other free health and wellbeing services
  • Free on-site parking
  • Financial Wellbeing - Save, track and enhance your financial wellbeing
  • Apprenticeship - Grow and develop on the job whilst gaining a qualification
  • Direct to Work - Discount online and instore, collect your items the next day for free from your place of work or local store
  • Support Networks - Access to Network Groups to empower and celebrate each other
  • Wellhub - Discounted flexible monthly gym memberships, with apps, PT sessions and more

Conditions apply to all benefits. These benefits are discretionary and subject to change. We aim to support all candidates during the application process and are happy to provide workplace adjustments when necessary. Should you need support with your application due to a disability or long-term condition, feel free to get in touch with us by email (please include 'Workplace Adjustments' in the subject line), or call us on and leave a voicemail.


What’s Next?

Apply

Show us what you can do. Submit your application online and our recruitment team will take a first look at your experience and strengths.

Inform

Let’s talk. We will get in touch for an initial conversation by phone or video to learn more about you and share what the team is looking for.

Review

If you are invited to an interview, you may be asked to present an interview task or portfolio and talk through your experience in a competency based interview. It is also your chance to ask questions and get to know us.

Offer

If it’s the right match, our recruitment team will be in touch with a job offer and next steps. This is where your journey with NEXT begins.


Team Overview

Finance is where we turn ambition into action. This team protects value, funds growth, and gives leaders timely insight. From reporting to managing risk, your work keeps decisions sharp, ensuring the business stays on course and ready to take on the next big challenge.

Explore similar opportunities across our business.

Finance Transformation Change Lead - FTC 24 monthsFinance Projects Senior Oracle Specialist - 18 months FTC

You’ve probably heard of NEXT, but did you know about our portfolio? Every brand in our offering brings a distinct story, attitude and community. Spanning contemporary lifestyle brands, established high street names and timeless collections, together they showcase the vibrancy of today’s retail world.

About NEXT

You know Next, but did you know we’re a FTSE-100 retail company employing over 35,000 people across the UK and Ireland. We’re the UK’s 2nd largest fashion retailer and for Kidswear we’re the market leader. At the last count we have over 500 stores, plus the Next Online and it’s now possible to buy on-line from over 70 countries around the world! So we’ve gone global!

Challenges. Opportunities. The future. Let’s take it on at NEXT.


#J-18808-Ljbffr

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