At a Glance
- Tasks: Design experiments, model customer behaviour, and analyse data to drive product decisions.
- Company: Join iwoca, a dynamic fintech company transforming the partner lending market.
- Benefits: Competitive salary, flexible working, and opportunities for professional growth.
- Other info: Collaborative team environment with exciting projects and career advancement potential.
- Why this job: Make a real impact on customer journeys and influence strategic decisions.
- Qualifications: Strong statistical background, experience in data analysis, and proficiency in Python.
The predicted salary is between 50000 - 70000 £ per year.
Requirements
- Statistical foundations: Strong grounding in probability and statistics, with an understanding of Bayesian reasoning and experience applying hierarchical modelling or decision-making under uncertainty.
- Causal inference: Experience separating signal from noise in observational and experimental data.
- Business translation: Ability to understand commercial context and translate data into actionable insights that guide decisions - not just produce analysis, but land it with people who act on it.
- Data tooling: Proficiency with data manipulation and modelling tools.
- Analytical ownership: Comfortable owning ambiguous problems end-to-end - from framing through modelling to influencing decisions.
- AI fluency: Experience with and a passion for using AI to accelerate and automate analysis and model building.
- Communication: You write and speak clearly, adapting technical detail to different audiences.
- (Desirable) Modelling depth: Experience building or adapting statistical or ML models, with an interest in understanding what's happening underneath.
- (Desirable) Stochastic methods: Familiarity with stochastic modelling concepts as they apply to inference, time series, or uncertainty.
- (Desirable) Funnel and marketplace experience: Experience with conversion funnel analysis or marketplace dynamics where you’re competing for attention alongside competitors.
- (Desirable) Python: You work primarily in Python. If your background is R or another language, that’s fine - but Python is what the team uses day to day.
- Market curiosity: You want to understand how the partner lending market actually works - what makes a partner choose iwoca over a competitor, and what makes a customer convert.
What the job involves
- You’ll design experiments, model customer behaviour and analyse large data sets across the partner funnel, and turn findings into product and strategy decisions.
- The analytical approach is still being shaped - you’ll influence how it develops, not just what it produces.
- The work has direct commercial consequences – on partner platforms, iwoca competes for attention alongside other lenders, and what this team builds and tests affects which customers convert and on what terms.
- You’ll work closely with commercial, strategy, and product colleagues across the business.
- Experimentation and causal inference: You’ll design and analyse experiments where careful randomisation and interpretation are critical. You’ll need to know where standard A/B testing breaks down and what to reach for instead. The problems are consequential: measuring how pre‑qualification affects Customer Lifetime Value (CLTV), and understanding how different products interact when offered to the same customer base.
- Funnel and competitive strategy: You’ll analyse the full partner‑referred customer journey – from application through to credit assessment – identifying where conversion breaks down and why. On partner platforms, iwoca is positioned alongside competitors, so you’ll also figure out what makes customers choose iwoca over the alternatives, and how to shift those dynamics in our favour.
- Commercial translation: You’ll be directly involved when decisions get made – not handing off analysis to be interpreted by someone else. You’ll work with commercial and strategy colleagues and coordinate with adjacent teams to make sure the tests and policies you run fit together with their ongoing work.
- AI and ways of working: You’ll use AI to accelerate and automate your analytical work. The team treats this as a lever for increasing its rate of learning. You’ll be expected to have a view on where it helps and where it doesn’t.
The team: Partner Flow owns the customer journey from the moment someone starts an application on a partner platform through to a completed credit assessment. By making the application process as smooth as possible and collecting the data needed for a credit decision efficiently, the team maximises the number of partner‑referred customers that receive an offer. The team works across the full application stack – from the APIs partners use to integrate iwoca, through to the experience customers see when they apply. The team is small and cross‑functional, combining data science, engineering, design, and product. Active projects include:
- Pre‑qualification: testing how showing customers an offer before they apply affects conversion and long‑term value.
- Credit card strategy: iwoca recently launched a credit card alongside its flexi‑loan; the team is working out which product, or combination, to offer which customers.
- Funnel optimisation: identifying and reducing the biggest points of friction across the partner journey.
Data Scientist (Partner Flow Team) employer: Iwoca
At iwoca, we pride ourselves on being an exceptional employer that fosters a collaborative and innovative work culture. As a Data Scientist in the Partner Flow Team, you'll have the opportunity to influence key business decisions while working alongside talented professionals in a dynamic environment. We offer competitive benefits, a commitment to employee growth through continuous learning, and the unique advantage of being at the forefront of the partner lending market in a vibrant location.
StudySmarter Expert Advice🤫
We think this is how you could land Data Scientist (Partner Flow Team)
✨Tip Number 1
Get your networking game on! Reach out to people in the industry, especially those at iwoca. A friendly chat can open doors and give you insights that a job description just can't.
✨Tip Number 2
Show off your skills in action! If you've got a portfolio of projects or case studies, share them. Demonstrating how you’ve tackled real-world problems can really set you apart from the crowd.
✨Tip Number 3
Prepare for the interview like it’s a data analysis project. Know the company’s products and strategies inside out, and be ready to discuss how your analytical skills can directly impact their goals.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in being part of the iwoca team.
We think you need these skills to ace Data Scientist (Partner Flow Team)
Some tips for your application 🫡
Show Off Your Stats Skills:Make sure to highlight your statistical foundations in your application. We want to see your grounding in probability and statistics, especially if you’ve got experience with Bayesian reasoning or hierarchical modelling. Don’t just list your skills; give us examples of how you've applied them!
Translate Data into Action:We’re all about turning data into actionable insights. In your application, share how you've taken complex analyses and made them understandable for non-technical folks. Show us that you can bridge the gap between data and business decisions!
Own Your Projects:We love candidates who take ownership of their work. In your written application, talk about a time when you tackled an ambiguous problem from start to finish. We want to know how you framed the issue, modelled it, and influenced decisions based on your findings.
Get Personal with Python:Since we primarily use Python, make sure to mention your experience with it in your application. If you’ve worked with other languages like R, that’s cool too, but let us know how you’ve adapted to Python. And don’t forget to show your enthusiasm for using AI in your analysis!
How to prepare for a job interview at Iwoca
✨Know Your Stats
Brush up on your statistical foundations, especially probability and Bayesian reasoning. Be ready to discuss how you've applied these concepts in real-world scenarios, particularly in causal inference and decision-making under uncertainty.
✨Translate Data into Action
Prepare examples of how you've turned complex data analyses into actionable insights for business decisions. Think about times when your findings influenced strategy or product development, and be ready to share those stories.
✨Show Your AI Passion
Since the role involves using AI to enhance analysis, come equipped with examples of how you've leveraged AI tools in your previous work. Discuss specific projects where AI made a significant impact on your analytical processes.
✨Communicate Clearly
Practice explaining technical concepts in simple terms. You’ll need to adapt your communication style for different audiences, so think about how you can convey your insights effectively to both technical and non-technical stakeholders.