Data Analyst

Huel Birmingham
Tring
1 week ago
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Hey! We're Huel, and we're pleased to meet you 👋


Our culture thrives on high performance, and we set the bar high for new Hueligans who join us.


We invite you to read the advert below for our new Data Analyst position to understand the role, and explore our 7 Huel values before applying to ensure we have the right working environment for you!


The role

Huel’s growth across e-commerce, retail, and new markets is generating more data than ever and we’re scaling our Data & Analytics team to keep decisions sharp and fast. As our next Data Analyst, you’ll turn behavioural and commercial data into clear, actionable insights for Marketing, Trading, Product and Retail. From owning deep-dive analyses to building measurement frameworks and self-serve dashboards, you’ll help ensure day-to-day and strategic decisions are insight-led and impactful.


Below is a list of the types of things you will be involved in:



  • Supporting end-to-end analysis – Help translate questions from Marketing, Trading, Product, and Retail into simple analytical tasks, run basic analysis, and present clear findings.
  • Assisting with data experiments – Support the design and evaluation of basic A/B tests and other studies, helping to communicate the results simply.
  • Helping define how we measure success – Assist the team in setting up basic Key Performance Indicators (KPIs) and tracking plans for new projects, making sure we have a clear way to measure success.
  • Cleaning and preparing data – Work with the Data Engineering team to ensure data sets are accurate, help document data, and support basic checks to keep our data smooth.
  • Maintaining self-serve analytics – Help develop and update live dashboards, keep data documentation current, and assist with training sessions so other teams can easily find routine answers.
  • Identifying new opportunities – Use basic data skills to help the team size up new products, markets, and campaigns, focusing on potential impact.

Not yet sure if this is the right role for you? Click HERE to read a more detailed job description.


What we're looking for in you

This role is suited to someone with 1–3 years’ experience in data or analytics who’s ready to take the next step in their career. You’re commercially curious, eager to learn fast, and motivated by turning analysis into real business impact.


To succeed, you’ll bring experience in some of the following areas and a willingness to quickly develop in the rest:



  • SQL – you can write simple queries to explore data and are keen to learn more about optimising them.
  • Product analytics – familiar with platforms like Heap, Amplitude, or Mixpanel and ready to learn how to set up events and track user journeys.
  • Marketing analytics – strong understanding of attribution modelling and the role of different channels in the buying process.
  • Statistical – a basic understanding of AB testing, econometrics and other statistical analysis methods.
  • Measurement mindset – an understanding of why tracking plans and KPIs are important.
  • Data modelling – a willingness to learn about data modelling and how to keep data accurate.
  • Storytelling – you can summarise your analysis into a clear narrative that makes sense to people in Marketing, Engineering, and Leadership.
  • AI/Machine Learning – a foundational understanding of how machine learning models work and an interest in applying AI tools to automate reporting or uncover new insights.

And as always, we’re on the lookout for new Hueligans who love a fast-paced environment and are always striving to be their best. We want people who aren’t afraid to think differently and push boundaries. If you’re all about setting big goals and believe that amazing things happen through creativity and teamwork, you’ll fit right in at Huel!


What do we offer in return?

We know that at times, our teams face demanding pressures, and exceptional effort deserves meaningful rewards. That's why we've created a world-class perks and benefits program designed to support our Hueligans in achieving their best, both professionally and personally, while celebrating the global impact they're making!


🕖 Hybrid working – We spend Mondays, Tuesdays and Thursdays in the office together. The remaining two days have the option to be worked from home.


🌴 30 days annual leave PLUS bank holidays


🥤 Free Huel to keep you going


🏖️ 2 weeks a year to work remotely from anywhere!


🐾 Dog friendly


🙋 Paid Volunteering Days


🏋️ Free on-site gym with free classes, and we will give you your own nutrition plan


🧘 Free on-site wellness area offering infrared saunas and an ice bath🧘


🧠 Free 1-on-1 therapy provided by Self-Space.


🏥 Private Medical and Health insurance for you and your loved ones, including free life insurance covering up to 4x your salary


⚡ Electric Car Scheme with onsite charging


🚴 Cycle to Work Scheme


🤰 Enhanced Family Leave


👪 Workplace Nursery Scheme


💸 Paid Employee Referral Scheme


🎉 Biannual events to celebrate success - Have you heard about Huelchella?


We are Hueligans

We know that diversity isn't just important; it’s essential, and it makes us stronger. We're all about embracing our differences, celebrating what makes us unique, and bringing together Hueligans from all walks of life.


Whilst we all share the 7 values of Huel, it’s our individual differences that truly enhance our culture of belonging. We seek out Hueligans from around the world, encouraging authenticity, diverse views, and fresh ideas to create products that our global customers love.


Meet our teams here.


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