Decision Scientist, Member Lifecycle

VINTED
City of London
3 months ago
Applications closed

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About Vinted

Brief info about Vinted. Our mission is to make second‑hand the first choice, and we’re looking for people who want to help us get there. Every day, we work together to help our members buy and sell pre‑loved clothing and lifestyle items, giving each piece a second life – or even a third.


The Vinted Group is made up of three business units that support this mission:



  • Vinted Marketplace – Europe’s leading platform for second‑hand fashion and a go‑to destination for all kinds of pre‑loved items, with a growing range of categories. Our platform connects millions of members across 20+ markets, helping great items find a new life.
  • Vinted Go – enhances the shipping experience with a vast network of over 500,000 pick‑up and drop‑off points, partnering with more than 60 carriers across Europe, with added services like item verification for peace of mind on high‑value pieces.
  • Vinted Pay – the newest part of the Vinted Group, dedicated to bringing secure, reliable payments to buyers and sellers across Europe. Seamlessly integrated into the Vinted app, it helps keep every transaction safe, efficient, and easy for our members.

Founded in 2008 in Lithuania, Vinted began as a way for friends to find new homes for clothes they no longer needed. In 2019, we became Lithuania’s first unicorn! Today, our headquarters remain in Vilnius, and we’ve grown with offices across Europe, supported by a team of over 2,000 people. Our backers include Accel, EQT Growth, Insight Partners, Lightspeed Venture Partners, Sprints, and TPG.


Information About the Position

As a Decision Scientist, you will become a vital part of the Member Lifecycle intelligence team, where your contributions will enhance both specific domain areas and the overall domain through strategic, analytical, and technical projects.


The team levels up our three domain areas:



  • Vinted‑to‑member communication: helping Vinted teams get the right message to the right member at the right time through message delivery optimisation and lifecycle communication to nudge members to the next best engaged stage.
  • Translations: leveraging Vinted’s content potential through impact optimisation of member‑to‑member automated translations and content localisation.
  • Member acquisition: enabling the organization to acquire new members through referrals channel, search engines and agentic search, merges and acquisitions, country launches support.

By collaborating closely with product teams within and across domains, you will play a pivotal role in shaping our product and business strategy through identifying opportunities, generating insights, enhancing member experiences, and leveraging data to drive impactful decision‑making.


This position is ideal for someone who thrives in a fast‑paced environment, enjoys problem‑solving, and is passionate about using data to drive meaningful change.


Decision Scientist Role Overview

Decision Scientists are responsible for actionable insights, identifying and sizing opportunities, and developing automated tools that increase the quality of product and business decisions by applying statistical methods and data‑driven decision‑making.


In this position, you’ll:



  • Partner with your team and stakeholders at Vinted to identify strategic opportunities and provide data‑driven recommendations, as well as answer critical business questions.
  • Ensure questions are answered in an optimal fashion, e.g. in the form of an ad‑hoc deep‑dive, experiment, dashboard, or automatically recurring analysis.
  • Propose and implement key metrics that measure business performance, set up monitoring, proactively flag issues, run analyses, and understand root causes.
  • Enable your team and direct stakeholders to independently leverage data for business insights via self‑service dashboards.
  • Help create a backlog with prioritised hypotheses and analyses.
  • Cultivate a data‑driven culture by promoting best practices in analytics and decision‑making, encouraging the use of data within the domain to make data count.

About You

  • BSc or MSc in a related field (statistics, mathematics, econometrics, economics or similar) or equivalent working experience.
  • Experience in a Decision Science or Data Analytics role (typically 2+ years of working experience).
  • Good analytical thinking and problem‑solving skills, with the ability to balance depth of analysis with business impact.
  • Highly results‑oriented and comfortable with iterative processes.
  • Strong interpersonal skills and eager to work with a wide variety of stakeholders within the company.
  • Strong communicator who can convincingly present results to both technical and non‑technical audiences.
  • Knowledge of statistical methods, such as regression analysis, and other inferential techniques.
  • Proficient in SQL and Python.
  • Familiar with BI tools (e.g., Looker, Tableau, Power BI).
  • Fluent in English, both written and spoken.

Work Perks

  • The opportunity to benefit from our share options programme.
  • 25 working days of holiday.
  • Newest MacBook models.
  • Free access to an office gym.
  • Mental and emotional health support through the Mindletic app.
  • Home office support: we provide IT workstation equipment and a personal budget of up to €540 for home workplace furniture.
  • Private health insurance.
  • On‑site canteen serving delicious homemade food at discount prices.
  • Frequent team‑building events.
  • A personal monthly budget for shopping on Vinted.
  • The opportunity to spend up to 90 days per year – 21 of which can be spent working outside the EU – on workation.
  • A dog‑friendly office.

Working at Vinted

Individual Learning Budget – Vinted will set aside a yearly sum equal to 10‑13.2% of your annual salary to be invested in your continuous professional development. You’ll be able to take the initiative to use it for covering relevant learning activities that benefit your role.


Hybrid Work – We’ve adopted a hybrid workplace model where 2 days in office are recommended but not enforced. It’s up to you and your team to decide on the exact days you’ll spend working together in person.


Equal Opportunity

The Vinted Group is committed to building an inclusive workplace where people from all walks of life feel a sense of belonging. We welcome applications from people of all backgrounds, identities and life experiences. At Vinted, all applicants are treated fairly without regard to their race, age, religion or belief, sex, national origin, citizenship, gender identity, sexual orientation, disability, or any other protected characteristic.


Salary

The salary range for this position is €3,200 – €4,333 gross per month.


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