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A leading global mobility solutions company seeks an AI and Data Intelligence Engineering Manager in Milan, Lombardy. This mid-senior level position focuses on leading teams in AI and data strategies to impact urban mobility solutions. Applicants should have proven experience in AI systems, excellent leadership skills, and familiarity with cloud platforms. Join us and drive innovations that shape the future of mobility in a collaborative environment.
Direct message the job poster from Schindler Group
Schindler is a global leader in elevator, escalator, and moving walkway solutions, operating in over 100 countries. Every day, our systems move more than a billion people, helping shape the flow of urban life. At Schindler, we don’t just build mobility solutions — we build careers, innovation, and impact.
Milan, Lombardy, Italy (Hybrid 1-2 dd/week from home)
We are looking for a visionary AI and Data Intelligence Engineering Manager to lead advanced initiatives in Data Science, Artificial Intelligence, IoT, Data Engineering, and ML Ops. This role combines technical depth with strategic leadership, ensuring robust architectures, scalable systems, and operational excellence across AI and data platforms. You will lead a high-performing team of Data Scientists, Data Engineers, and DevOps/ML Ops specialists, fostering collaboration and innovation to deliver impactful solutions that transform business and customer experiences.
If you're excited to lead AI and data engineering strategies for next-generation intelligent systems, we want to hear from you. Join Schindler and be part of a global company that values innovation, collaboration, and professional growth.
At Schindler Group we value inclusion and diversity, and practice equity to create equal opportunities for all. We endeavor that all qualified applicants will receive consideration for employment without regard to age, race, ethnic background, color, religious affiliation, union affiliation, gender, gender identity, sexual orientation, marital status, national origin, nationality, genetics and health or disability.