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Product Data Analyst

dojo
London
1 week ago
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We’re reinventing payments.
In less than four years, Dojo disrupted the market to become the largest and most loved acquirer in the UK. Our payments infrastructure, purpose-built for in-person commerce, is game changing.

Now, over 150,000 customers across four countries choose to transact billions with us every year.
But we’re just getting started.


Our people are the driving force behind our success. They are our greatest investment and our ultimate competitive advantage. We hire exceptional people and give them the autonomy, trust, and ownership to thrive. The results take care of themselves.

The role... We’re looking for a Product Data Analyst to join our centralised analytics team, working in the Product Analytics squad that supports all product teams across the company. You’ll turn business questions into measurable outcomes, uncover insights that shape strategy, and help teams make better, faster, data-driven decisions. The team champions a data-informed, test-and-learn culture, formulating hypothesis, running experiments, and using data to validate ideas.You'll build and maintain a deep understanding of product performance, enabling you to act as a trusted analytics advisor across the organisation. What you will do... Define clear KPIs that are aligned with both business and user goals.
Analyse product performance through experiments, causal inference, dashboards, and deep dives.
Identify opportunities, risks, and areas for optimisation.
Ensure high-quality tracking and instrumentation in partnership with analytics engineering.
Promote a test-and-learn culture, bringing the voice of the customer into every decision. What you will bring... Strong SQL skills (BigQuery, Snowflake, or Redshift).
Experience with BI tools (Looker, Tableau, or Power BI).
Clear communication skills and the ability to turn data into action.
Curious, impact-driven, and comfortable with ambiguity. Nice to have... Familiarity with product analytics platforms (Amplitude, Mixpanel, or similar).
Python or R for exploratory data analysis and data science.
Git or version control in a data environment.

Dojo home and away


We believe our best work happens when we collaborate in-person. These “together days” foster communication, drive innovation and spark our brightest ideas.


That's why we have an office-first culture. This means working from the office 4+ days per week.


With offices across Europe, we know a thing or two about staying dynamic. Need deep focus? Head to a quiet zone. Big ideas? Collaboration spaces have you covered. Just here for a catch-up? Our social hubs make it easy. Do work that counts, in spaces made for you.


Question: what’s curious, relentless, and customer obsessed?


If you’re keen to know the answer, you’re a third of the way to meeting our Dojo values.


If the following speak to you, let’s talk:

You’re curious. You have a real desire to learn and create.


You’re relentless. You keep going even when it’s easier not to. 
You’re customer-obsessed. You know how important customers are to what you do. 

Diversity, equity, and inclusion at Dojo


From local bakeries to well-known eateries, Dojo payments serve over 150,000 places across the UK. 


And something that’s fundamental to creating relevant, innovative products at Dojo is to build teams to reflect the diversity of the businesses we serve.


Our drive to improve diversity, equity, and inclusion is closely linked to helping employees thrive and innovating for better customer experiences.


If you care about your work, you’re curious, and you think customer-first, you have a place at Dojo.


To make sure you’re the best you can be throughout the recruitment process, let us know if you need any extra adjustments to help you thrive. 

Visit to find out more about our benefits and what it’s like to work at Dojo, or check out our LinkedIn and Instagram pages. 


#LI-Hybrid

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