Madrid
Full-time
Not specified
Mid-Senior level
Salary
Sponsorship
15% more than your current base salary
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Job Description

About BarkBark is an online services marketplace connecting customers with professionals across over 1,000 categories. Operating in nine countries including the UK, US, Australia, Canada, and New Zealand, we're transforming how people find trusted service providers for everything from home improvement to professional services.Our platform uses cutting-edge technology to match customers with the right professionals quickly and efficiently. With a global team of over 220 people, we're currently undergoing an exciting transformation: migrating from a lead generation model to a full marketplace platform with subscription based pricing.As a profitable, PE backed scale up (EMK Capital), Bark offers the best of both worlds: the agility and innovation of a fast moving business combined with financial stability and resources for growth. We recently launched our new marketplace model in Australia (Q4 2025) and are preparing for rollout to the UK and US markets in 2026. You'll have genuine ownership, responsibility, and the opportunity to shape our commercial strategy during a pivotal transformation phase with the chance to make your own contribution to our journey.About The RoleWe are hiring a Senior Data Scientist to join our Data and Insight team in a newly created role. This is a product-facing, experimentation-led machine learning position focused on building high impact models, designing robust simulations and driving measurable business outcomes through rigorous testing and evaluation.You will report to the Lead Data Scientist and sit within the Data and Insight function. The role is centred on algorithm design, model evaluation and statistical experimentation focussing on product impact.You will work across multiple areas of the business, translating complex product and commercial challenges into well-structured analytical frameworks, testable hypotheses and high quality predictive models. This role requires someone who is comfortable moving from exploratory analysis through proof of concept to controlled experimentation and risk assessment.The role is centered on statistical modeling, experimentation, and evaluation techniques. You will also define the ML deployment requirements, success metrics, and monitoring criteria and work closely with Data and Platform Engineers, who will build and manage the MLOps pipeline and production environment.What You Will DoDesign, develop and refine machine learning models ranging from linear and logistic regression through to tree-based methods, ensemble approaches and advanced algorithmsDevelop proof of concepts and translate exploratory insights into structured modelling approachesDesign and execute statistical offline simulations to validate modelling approaches prior to live experimentationPlan, implement and analyse controlled A/B tests, ensuring statistical robustness and clear interpretation of resultsDefine success metrics aligned to business objectives and ensure appropriate evaluation frameworks are in placeAnalyse model performance using appropriate metrics such as precision, recall, ROC-AUC, log loss, calibration measures and model-specific metricsIdentify potential sources of bias, data leakage and experimental confounding, and proactively mitigate associated risksWork closely with Product, Engineering and other stakeholders to prioritise opportunities and ensure models deliver measurable valueCommunicate complex modelling concepts, trade-offs and experimental results in a clear and accessible way to both technical and non-technical audiencesContribute to raising the overall standard of modelling practices within the teamRequired Skills And Experience3 to 4 years of experience building, evaluating and iterating on machine learning models using large and complex data setsStrong academic background in Statistics, Mathematics, Computer Science or a related quantitative disciplineDeep understanding of statistics, machine learning and experimental design principlesDemonstrated experience running A/B tests, designing offline validation strategies and interpreting experimental outcomesStrong grasp of model evaluation metrics and the ability to select appropriate performance measures based on business contextStrong programming skills in Python with experience using libraries such as NumPy, Pandas and related tools for data manipulation and analysisExperience working with cloud-based data infrastructure such as BigQuery and AWS services including S3 and SageMakerExperience using Jupyter notebooks for exploratory analysis, modelling and communicating findingsAbility to move comfortably between high level problem framing and detailed quantitative analysisStrong product orientation with experience collaborating closely with cross-functional teamsExcellent written and verbal communication skills, with the ability to explain technical concepts clearly and confidentlyDesired Skills And ExperienceExperience working in a two-sided marketplace or similarly complex environmentFamiliarity with ranking metrics and optimisation techniques in high volume marketplace environmentsPractical experience experimenting with large language models and designing evaluation frameworks for generative AI use casesUnderstanding of MLOps principles and the model lifecycle, including deployment, monitoring and retraining considerationsPerks And Benefits25 days of paid holiday, with extra days added at 3 and 5 years of service.Fully remote working, plus up to 20 days each year to work from anywhere in the world.An annual Learning & Development budget of €550 to spend on courses, training, or other resources that support your professional development.Access to Oliva, a leading mental health and wellbeing platform, offering personalised support when you need it.A €250 allowance towards essential home office technology to help you stay connected and productive.Interview ProcessScreening Call with Talent Partner1st Stage - Hiring Manager Stage 2nd Stage - Technical Interview (Live case discussion)3rd Stage - Values interview Diversity StatementAt Bark, we are a platform for people, revolutionising the way professionals and individuals connect since 2014. Our culture is defined by excitement, ambition, and a commitment to raising the bar. We value diversity, equity, inclusion, and belonging (DEIB) and are dedicated to embedding these principles into everything we do. We are committed to fostering an inclusive environment where everyone can thrive, and our focus is on hiring, retaining and developing a globally diverse workforce that is passionate about excelling our platform and supporting our customers succeed. Be part of our dynamic team, where bold ideas thrive, and create a future worth shouting about.

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