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Data Scientist II - Content Platform

Spotify
London
8 months ago
Applications closed

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We are looking for a Data Scientist to join the Content Platform Insights team. Content Platform is a central enabler for the Spotify business. We deliver a complete, available and enriched catalog of music, podcasts, videos and more. We provide the knowledge graph that accumulates differentiated understandings of creators, content, their attributes and their relationships. We ensure we can readily moderate and control the catalog to ensure a safe and trusted experience for consumers and to keep our platform free of infringement. The successful candidate will join The Cherry PI squad, which focuses on understanding the composition, growth, cost and value of our music, podcast and audiobook catalogues. We partner with the engineering teams who build, maintain and extend those catalogues to explore opportunities and risks, assess performance and set goals.

What You´ll Do

Recent and current project work by our squad has included: Identifying low-value music and podcast content Quantifying the financial impact of errors by music vs. noise categorisation systems Exploring the drivers of music and music video ingestion speed Modeling which of our tracks are ‘background music’ or designed for children

Who You Are

Degree in data science, computer science, statistics, economics, mathematics, or a similar quantitative field. You have the technical competence to perform more advanced analytics Coding skills (such as Python, R or similar) Analytics tools experience (such as SQL, Pandas, R, Spark or similar) Data visualisation tools (such as Tableau, Looker, Qlik Sense, matplotlib, ggplot2 or similar) You have extensive experience performing analysis with large datasets You are an ambitious person who’s capable of tackling loosely defined problems and driving strategic impact You are a communicative person that values building positive relationships with colleagues and stakeholders and have the ability to explain complex topics in simple terms You are comfortable with ambiguity

Where You´ll Be

For this role, you will be located in London or Stockholm.
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