Junior Data Scientist

Lendable Ltd
London
1 month ago
Applications closed

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Junior Data scientist

Junior Data Scientist

Junior Data Scientist

Junior Data Scientist / Data Analyst

Data Analyst / Junior Data Scientist

Data Analyst/Junior Data Scientist

About the roleAbout the teamLendable is the UK market leader in real rate risk-based pricing, offering consumers transparency and product assurance at the point of application. Data Science and Analytics sits at the heart of this USP, developing the credit risk models and strategies to underwrite loan and credit card products.Our team is primarily focused on the pricing domain but we also work on other areas including product and credit. We implement a range of machine learning techniques and analytical tools to continually improve our product offering.You will be working in the UK Loans team at Lendable and will work on projects related to pricing, funnel and credit optimisation in collaboration with the credit and product teams.Join us if you want to* Work in a small, high-impact team where you will be mentored to solve complex analytical problems, eventually taking ownership of your own models* Be resourceful to solve problems and find smarter solutions than the status quo.* Work closely with other members of the team that will support developing your technical expertise and domain knowledgeOur team’s objectives* The pricing team owns the loans funnel analytics and pricing strategy.* We work across the business in a multidisciplinary capacity to identify issues, translate business problems into data questions, analyse and propose solutions.How you’ll impact those objectives* Learn the domain of products that Lendable serves, understanding the data that informs strategy and modelling is essential to being able to successfully contribute value.* Research and propose improvements to our existing strategies and modelling methodology* Clearly communicate results to stakeholders through verbal and written communication.* Share ideas with the wider team, learn from and contribute to the body of knowledge.Key Skills* Experience using Python (pandas, numpy, scikit-learn) and SQL* Theoretical understanding of core ML techniques and statistical principles* Confident communicator and contributes effectively within a team environment* Self-driven and willing to take ownership of specific tasks and analysesNice to Have* Interest in Data Engineering* Exposure to credit risk or financial datasets* Prior experience with financial modellingThe interview processFor this role we’d expect:* A phone call with one of the team* Video Call case study (Remote)* An exercise to complete in your own time* Onsite Interview + Discuss the exercise you completed + Meet the team you’ll work with daily* The opportunity to scale up one of the world’s most successful fintech companies* Best-in-class compensation, including equity* You can work from home every Monday and Friday if you wish - on the other days we all come together IRL to be together, build and exchange ideas* Our in-house chefs prepare fresh, healthy lunches in the office every Tuesday-Thursday* We care for our Lendies’ well-being both physically and mentally, so we offer coverage when it comes to private health insurance* We're an equal opportunity employer and are keen to make Lendable the most inclusive and open workspace in London

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