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Senior Data Scientist (Europe-based, remote)

Sherpany
Bristol
5 days ago
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We are Sherpany by Datasite - a young and award-winning tech company headquartered in Zurich. With our cloud/SaaS solution, we digitize meeting management and thus facilitate the decision-making processes of management bodies throughout Europe. Our in-house developed system transforms meetings from time wasters into value creators. Our customers include well-known medium-sized to large companies from all industries, such as Axpo, Emmi, Esprit, Swisscom and Swiss-Re, and many more.

Are you an open-minded person who feels comfortable in a dynamic environment, collaborates seamlessly across departments, and enjoys working in an international team of analysts and data engineers driven to create business impact? Then this position could be just right for you!


Your area of responsibility:


Build and own end-to-end model-driven data workflows: Proactively identify opportunities where quantitative insights can support business growth, and autonomously turn them into concrete data modeling and engineering tasksApply advanced statistical or ML models with rigor and clarity, explain them in simple terms, and translate results into actionable recommendationsPartner with stakeholders to refine their questions, guide them towards data-driven decisions, and capitalize on hidden opportunities through analyticsSupport and extend our data platform (Airbyte, dbt, Databricks) to ensure reliable pipelines, robust KPIs, and strong self-service foundationsCommunicate results with visualizations that highlight what truly matters and inspire action

What sets you apart:


4+ years of experience in building data science projects and production-grade analytics/ML workflowsOutstanding modeling expertise – you know when and how to use the right statistical or ML method, able to explain models and results with ease at different levels of complexity Experience analyzing business and usage data of software products is a must; SaaS, A/B testing and PLG are a plusSolid background in data or analytics engineeringAdvanced skills in SQL and Python or R; dbt and Tableau are a plusYou have great interpersonal and communication skills in English

Do you think you have what it takes, even if you don't fulfill 100% of the job description? Get in touch with us anyway! We hire for potential and attitude!


Why you should choose SHERPANY:

You will be joining At Sherpany, you’ll be part of an international company with a flat hierarchy, meaning your voice is heard, and you can take on real responsibility from day one! Your ideas? Always welcome. Your freedom and flexibility is important to us - we offer flexible working hours and remote-working Your personal and professional development is important to us, which is why we offer financial support for further education, training, etc. Your personal well-being is important to us - our partner supports you in this. Last but not least: Our corporate culture means a lot to us, which is why we regularly organize great team events and cultivate a value-oriented cooperation.

Recruiting process:


Interview with our Talent Acquisition SpecialistMeet our Head of AnalyticsGet to know the team and show us your skills Job offer 🎉

Are you ready for the challenge? 🚀

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