Deichmann SE | Germany | Essen (45359) | Permanent position | Full time / Home office | Published since: 14.04.2025 on stepstone.de
Team Lead Data Science Engineering (m/w/d)
As a privately funded family business, we are more than just a ca. 4,700 locations in 34 countries, more than 8,7 billion. Euro annual turnover and more than one of the most successful online shops for shoes in Europe. Deichmann is a pioneer, sponsor and employer of over 49,000 dedicated employees worldwide. As a sustainable expanding company, we have been able to provide our employees with a safe workplace for several decades. JOBV1_EN
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As a privately funded family business, we are more than just a ca. 4,700 locations in 34 countries, more than 8,7 billion. Euro annual turnover and more than one of the most successful online shops for shoes in Europe. Deichmann is a pioneer, sponsor and employer of over 49,000 dedicated employees worldwide. As a sustainable expanding company, we have been able to provide our employees with a safe workplace for several decades.
Your You lead a dedicated team of Data Scientists, develop individual strengths and take responsibility as a technical mentor and coach. You actively participate in the strategic roadmap for AI and data technologies and introduce a strong engineering minimum set into our data science initiatives. You advance the use of modern technologies and methods, stay curious about new developments and create an environment of continuous learning and professional growth. You take requirements from the business units, translate them into technical concepts and accompany cross-functional teams from proof-of-concept to successful production – including data collection, feature engineering, modelling, analysis, machine learning and visualization. You work closely with the platform team to continuously develop the technical basis for building, scaling and operating data and data science products. You represent Data Science as an ambassador in the company and promote a common understanding of data-driven value creation across specialist boundaries.
Your You have a degree in an STEM subject (e.g. mathematics, computer science, physics); a PhD is a plus. You bring at least 8 years of professional experience in the data science or software engineering environment, of which at least 3 years in a leading role. You have successfully accompanied data-driven products from idea to prototyping to productive scaling. You have sound knowledge in statistics, machine learning, Bayesian procedures, vector embedding and MLOps as well as excellent programming knowledge in Python and relevant frameworks. You are familiar with software engineering principles such as versioning, testing, architecture design and operational operation. Very good knowledge of German is necessary. Good knowledge of English is required.
30 days off Flexible working hours Daily mobile work Reduced GermanyTicket Job Occupational pension Kite places Bistro Personal discount Support fund Seminars & training courses Operational health management Company events As a Team Lead Data Science Engineering (m/w/d), you are strengthening our Data & Analytics Unit and are the hub for getting the best for Deichmann and our customers from our Data Science products. With our innovative products, which we have developed in close cooperation with the specialist departments, we are directly linked to the company's success. Be part of Deichmann and help us embed Data Science even better into enterprise architecture, corporate culture and future success story. JOBV1_EN
Company location
Location
![]() | Deichmann SE | |
Riethweg 14, 06526 Essen (45359) | ||
Germany |
The text of this ad was translated from German into English using an automatic translation system and may contain semantic and lexical errors. Therefore, it should be used for introductory purposes only. For more detailed information, see the original text of the ad at the link below.
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