Graduate Data Analyst Data & Audience · London HQ ·

Graduate Data Analyst Data & Audience · London HQ ·

Entry level 33000 - 33000 £ / year (est.) No working from home possible
Native

At a Glance

  • Tasks: Analyse data, create reports, and provide insights to help brands connect with students.
  • Company: Dynamic startup-like company focused on student engagement and advertising.
  • Benefits: Competitive salary, hands-on experience, and potential for permanent role after six months.
  • Other info: Collaborative culture with opportunities for growth and development.
  • Why this job: Join a fast-paced environment where your work directly impacts real-world projects.
  • Qualifications: Strong analytical skills, experience with data, and a passion for learning.

The predicted salary is between 33000 - 33000 £ per year.

Location: London (office-based, ~4 days per week)

Build Something That Matters native has been building for ten years and still runs like a startup: small, fast, and unsentimental about how things get done. We run a managed marketplace that connects students, Students' Unions, universities and advertisers. We increase student engagement, we help Students' Unions fund themselves properly, and we give advertisers a measurable route to a student audience. The closer those three line up, the better the business works. Insights is where that audience becomes legible. We turn survey data, behavioural signals and platform data into the research brand partners buy and the segmentation that shapes how they reach students.

We're looking for graduates who want real work immediately, learn at speed, and grow into something bigger.

What we're looking for

  • You think from first principles and build answers from the ground up.
  • You can decide when there's no map, and you build structure where there isn't any.
  • You care that the work is right, so you check it.
  • You have range. You've done real things that demanded resilience, judgement or initiative.

We're open to a wide range of degrees. Intellectual sharpness and structured thinking turn up most often in economics, statistics, the sciences, social sciences, geography, maths or computer science, though strong thinkers come from plenty of other backgrounds too. If your path is less typical, tell us how it shaped the way you think and why that stands up.

What you'll be working on

This is a broad data analyst role. The work runs from the survey and platform data we collect to the reports and analysis that go in front of partners. The mix of data analysis, survey research and visualisation shifts week to week, and we expect you to move across all of it. You’ll be hands-on with:

  • The analysis behind our insights, from raw data to the charts and the written finding.
  • Survey data from Campus Voice and our commissioned studies: cleaning it, weighting it, and reading what it actually says.
  • SQL against our BigQuery platform, pulling and shaping the datasets the team runs on.
  • Clear visualisations for our reports, and the charts and numbers that feed our commercial pitches, from local advertisers to national brands.
  • Crosstabbing survey and behavioural data against our student personas and segments, so a commercial pitch can show an advertiser exactly who it's reaching and how the segments differ.
  • Keeping survey instruments, notebooks and documentation in a state where the research runs again next quarter without an archaeology dig.
  • Working with the engineering team to sharpen the datasets and pipelines the insights work leans on, and flagging what's slow or fragile because you're the one using it.

How the work gets done

We build with agentic coding tools, and you will too. It's how an analyst here turns a question into a checked answer in an afternoon, work that used to take a week. Used well, these tools ask more of you. The model is fast and often wrong in ways that look right: a query that runs clean and returns the wrong number, a chart that's plausible and misleading. So the job is judgement. You frame the question and decide what a good answer looks like before you let the model near it. You treat what it gives you as a first draft and check it, and you catch the analysis that's confident and quietly wrong. You own the output, including the parts the model wrote, and you can defend it with the tool closed. If that sounds like more work than just doing a small analysis by hand, sometimes it is. That's the trade for everything larger that now fits in a day. The analysts who get the most out of these tools are the ones who were already rigorous. That rigour is what we're hiring for.

Required skills

  • You've excelled at something, and we're not precious about the form: first-class honours, a Dean's List, a research result, a project you couldn't leave alone. We're reading for rigour and clarity of thought.
  • You can reason statistically: you understand sample bias and weighting, what a significance test is actually telling you, and how to interpret a regression. From coursework, a competition, or a real project.
  • You're commercially curious: genuinely interested in how brands reach audiences and what makes a finding worth paying for.
  • You've worked with real, messy data: cleaning datasets, validating a result, designing a schema that holds. This can be from coursework, a competition, a personal project, wherever.
  • You write proper Python, in pandas and numpy, in addition to being able to structure it into functions and shared utilities that the next person can run.
  • You write SQL that stays correct when real data is messier than the textbook example: the duplicates, the NULLs, and the joins that quietly break a query that looked fine.
  • You can take a result and make it clear, in a sentence and in a chart, for someone who wasn't in the data with you.
  • You teach yourself the tool you need before anyone tells you to: BigQuery, dbt, a plotting library, git, survey tooling.

Bonus points if you've taken a piece of analysis end to end that other people used. A study, a dashboard, a report, a model. Anything real.

Progression

This is a six-month engagement, and we mean it as a proving ground for a permanent hire. Do well and you move into a promoted, permanent role at the end of it. The trajectory is the offer here. You're in live commercial work from week one, with real ownership of analysis that partners read and pay for, and the breadth is the point: in six months you'll have run analysis end to end, cut survey data against our personas for commercial pitches, and seen your work reach brands. That range this early is rare, and almost impossible to get on a scheme that keeps you in one lane while it decides what to do with you. During the process you'll talk to grads who joined this way, so you hear how it actually went, straight from them.

Location and ways of working

You'll work from our London office at least four days a week, with one optional day remote. We move fast and decide fast, and most of that happens face to face.

How to apply

We don't want a cover letter. Answer a few questions instead, so we can see how you think:

  • A trade-off you had to make, and how you decided.
  • A problem you tackled without much guidance.
  • A piece of analysis or a number you'd present differently to make it clearer, and how.
  • A time you chose what not to do, and why.

Include a recent CV, or a link to your LinkedIn or equivalent. And if your route here isn't the obvious one, a degree we didn't name or skills you taught yourself, apply anyway. We're reading for how you think and whether the core is there. Don't rule yourself out. We hire on a rolling basis. If this is the kind of challenge you're ready for, get in touch.

Equal Opportunity Statement

We're building an equitable environment where everyone at native can do the best work of their lives. Diversity and inclusion sit at the centre of that, and we put real support behind helping all of our people grow here.

Graduate Data Analyst Data & Audience · London HQ · employer: Native

At native, we pride ourselves on fostering a dynamic and inclusive work culture that empowers our employees to take ownership of their projects from day one. Located in the heart of London, our office environment encourages collaboration and rapid learning, providing graduates with unique opportunities for professional growth and real impact in the data analytics field. With a commitment to diversity and support for personal development, we ensure that every team member can thrive and contribute meaningfully to our mission.

Native

Contact Details:

Native Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Graduate Data Analyst Data & Audience · London HQ ·

Embrace Online Competitions

Get involved in online data science competitions like Kaggle or DrivenData. These platforms not only let you showcase your skills but also help you build a portfolio that stands out to hiring companies like Native when you're aiming for that entry-level role.

Join Data Science Meetups

Look for local data science meetups or workshops happening in your area. These are perfect for connecting with industry professionals and fellow newbies, giving us the chance to learn the ropes and get our foot in the door at companies like Native.

Networking Through University Career Services

Don't forget to leverage your university's career services! They often have exclusive internships and networking events specifically for entry-level data science positions. This is a golden opportunity to meet recruiters from companies like Native.

Spotlight Your Skills Online

Create a strong online presence by sharing your projects and insights on platforms like GitHub or LinkedIn. Make sure to apply directly through Native’s career page, where your unique skills can shine in their entry-level data science openings!

We think you need these skills to ace Graduate Data Analyst Data & Audience · London HQ ·

Communication Skills
Problem-Solving Skills
Python
SQL
Attention to Detail
Automation
Stakeholder Management

Some tips for your application 🫡

Show Off Your Data Skills:As you're aiming for an entry-level data science role at Native, don't forget to highlight your proficiency in programming languages like Python or R. Dive into your CV and mention any relevant projects or coursework that demonstrate your data analysis skills or machine learning knowledge.

Include Relevant Projects:If you've done any data-related projects, whether in your studies or during a personal quest, showcase them in a portfolio. This gives us a tangible sense of your capabilities and shows your hands-on experience with data manipulation, visualisation, or model building.

Tailor Your Cover Letter:When crafting your cover letter, make sure to express your enthusiasm for data science and how this role at Native aligns with your career goals. Consider sharing why you’re drawn to data-driven decision-making and how you see yourself growing in this field.

Show Your Curiosity:In the data science world, curiosity is key! Mention any online courses or certifications you've pursued that complement your studies. This could be anything from a statistics certification to a data visualisation workshop. It shows us you're serious about learning and growing in this field.

How to prepare for a job interview at Native

Brush Up on Your Statistics

For a data science role, the interview may involve some statistical questions or problems. Make sure you're comfortable with concepts like probability, distributions, and hypothesis testing. This will not only help you answer questions but also show your analytical thinking.

Get Hands-On with Tools

Familiarise yourself with popular data science tools like Python, R, and SQL. If you're asked about specific projects, be ready to discuss the tools you used and how they contributed to your analysis. Showing that you not only know the theory but can apply it is essential!

Showcase Relevant Projects

As an entry-level candidate, your portfolio is crucial. Bring along examples of data projects you've worked on, whether during your studies or personal projects. Discuss the challenges you faced and how you overcame them, highlighting your problem-solving skills.

Prepare for Case Studies

Entry-level interviews in data science often include case studies where you'll have to analyse a dataset or solve a problem on the spot. Try out some practice case studies beforehand, so you're not caught off guard. It's all about displaying your thought process and how you tackle data-driven challenges!