Data Scientist

Siemens Mobility
London
1 year ago
Applications closed

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Increase your chances of reaching the interview stage by reading the complete job description and applying promptly.At Siemens Mobility, we believe our people are the cornerstone of our success. We are committed to nurturing a supportive and inclusive environment where every team member can thrive. Join our global community, where your growth and development are as important as our shared mission to innovate and transform the Rail industry. Ready to embark on this exciting journey with us?Siemens Mobility is dedicated to pioneering the future of transportation. Our dynamic team is always exploring new ways to drive innovation and efficiency in rail. We are searching for forward-thinkers eager to make a tangible impact. If you are passionate about creating sustainable and intelligent transport solutions, we want you on our team.Role Overview:As a Data Scientist, you will support the operation and maintenance of Siemens Mobility’s UK train fleets, primarily the UK Desiro Classic and Desiro City. This role, preferably based in London (or other UK Siemens Mobility sites), collaborates closely with stakeholders across UK fleet locations to build data-driven solutions for technical, performance, and service management. You’ll deliver impactful data services and prototype solutions, primarily using tools like Spotfire and Grafana, and contribute to Siemens Mobility's AWS-based analytics platforms.

You’ll make a difference by :Identifying and analyzing support requirements for both internal and external customers.Defining and implementing data-driven solutions and development plans.Building prototypes and maintaining visualizations to deliver valuable insights.Developing platform components and facilitating user analytics.Working collaboratively with the Siemens Mobility UK team to meet data analytics needs.Cultivating data science capabilities and sharing expertise across teams.

Your success will be grounded by:Degree-level knowledge in data science, computer science, or related field.Experience with visualization tools (e.g., Spotfire, PowerBI, Grafana).Professional experience developing in Python and SQL.Proficiency in AWS environments and statistical methods.Demonstrated success in complex business environments with project management skills.Collaborative skills and an ability to communicate complex subjects clearly.Experience in the rail industry and knowledge of train systems (preferred).

You'll benefit from:Competitive salary26 days holiday with an option to buy/sell up to 5 days per yearAttractive pension schemeSubsidized BUPA Healthcare

Create a better #TomorrowWithUs!We value your unique identity and perspective and are fully committed to providing equitable opportunities and building a workplace that reflects the diversity of society. Bring your authentic self and create a better tomorrow with us!At Siemens, we promote a growth mindset, the belief that we can learn, grow, and adapt. If you don’t match all the criteria but feel you have transferable skills, we encourage you to apply.

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