Please mention DailyRemote when applying
Remote (EU/Ukraine) | Full-time (B2B contract) | Reports to: Head of Data
About the Role
OnHires is hiring a Data Scientist on behalf of our client — a remote-first B2C SaaS company with a subscription-based product, currently building its data function from the ground up. (The client operates under NDA at this stage; we'll share full details during the process.)
We're looking for a Data Scientist who turns models into measurable product and revenue impact. As an early hire on a forming data team, reporting to the Head of Data, you'll own modelling end to end: framing the problem, building and validating the model, shipping it to production, and proving it moved a metric.
You'll partner closely with Product, Growth, Engineering, and Finance, and help lay the foundations of how experimentation and machine learning work here. This is a hands-on, pragmatic role with broad scope and direct influence on the roadmap.
What You'll Do
Modelling & ML
Build, validate, and ship predictive models that drive the business: churn prediction, LTV forecasting, propensity and uplift modelling, and recommendation
Own end-to-end ML workflows: feature engineering, model development, evaluation, deployment, and monitoring
Monitor models in production and retrain or adjust them as the product and user base evolve
Explore where AI/ML creates real product value as the company expands into AI-powered products
Experimentation & Causal Inference
Design and analyse experiments (A/B tests, uplift, causal inference), bringing rigour to how we measure impact and reduce variance
Help shape the experimentation framework and modelling standards as foundations for the wider team
Handle user-level data responsibly: privacy-aware feature engineering, avoiding leakage of sensitive attributes, and compliance with data-use policies
Cross-functional Impact
Partner with Data Engineers to productionise models with reliable feature pipelines and, where useful, a feature store
Translate model output into clear, actionable recommendations for Product, Growth, and leadership — tying work back to company goals
What We're Looking For (Must-Have)
3+ years building and deploying machine learning models in a production setting
Strong Python and SQL, with solid command of the modern ML stack (scikit-learn, plus PyTorch or TensorFlow where relevant)
Sound grounding in statistics and experiment design: significance, causal inference, and uplift or propensity modelling
Hands-on experience with predictive use cases: churn, LTV, propensity, or recommendation
Comfort owning a model end to end — from problem framing to production and measurement, not just notebooks
The ability to turn complex analysis into a clear narrative and a recommendation a non-technical stakeholder can act on
Curiosity and autonomy — comfortable in a fast-moving environment where the roadmap evolves quickly
Nice to Have
Prior experience at a B2C SaaS, subscription, or marketplace business, with first-hand knowledge of funnels, churn, and LTV
Experience with MLOps tooling, feature stores, or real-time inference pipelines
Familiarity with product analytics tools (Amplitude, Mixpanel, Segment)
Experience building an experimentation platform or ML foundations from scratch in a scale-up
Exposure to recommendation systems, NLP, or generative AI in a product context
What We Offer
Fully remote within the EU or Ukraine
B2B contract
22 days of paid time off plus public holidays
Flexible working hours within core EU/Eastern European business hours
A rare chance to build a data function from scratch, with broad ownership and direct impact on the product roadmap
Stop the endless job search. Our AI finds and applies to the best jobs for you.
Discover remote opportunities in Data Scientist
Answer easy questions
200,000+ jobs across 15+ categories
Get your best job matches
Only hand-screened, legit jobs
Find a remote job faster
No ads, scams, or junk
“ I was the first applicant for a remote marketing position that got listed on the company website the same day I applied. Had an interview within 48 hours!