Wandelbots
Stephan Hotz has a diverse work experience spanning different companies and roles. Stephan started as a Collections Analyst at HP in 2008 and later became a Default & Recovery Analyst. From 2010 to 2012, they worked as an EMEA Product Manager at HP. In 2012, they joined Atotech as a Global Product Manager and stayed there until 2018. At Verizon Connect, Stephan held two roles: Senior Manager - Product - EMEA from 2018 to 2021, and Global Product Line Manager - Field & Integration Services from 2021 to 2022. Stephan then joined Delivery Hero SE as a Director of Product - Vendor Solutions from 2022 to 2023. Currently, they are working as the Chief Product Officer at Wandelbots, starting in 2023.
Stephan Hotz attended WU (Vienna University of Economics and Business) from 2002 to 2008, where they obtained a Graduate Diploma in International Business Administration. In 2006, they participated in an academic exchange semester at ISCTE - Instituto Universitário de Lisboa, focusing on International Business Administration.
In addition to their formal education, Stephan Hotz has obtained several certifications. In 2019, they obtained the Certified ScrumMaster® (CSM®) certification from the Scrum Alliance. More recently, in 2021, they completed several online courses through LinkedIn, including "Design Thinking: Understanding the Process", "Goal Setting: Objectives and Key Results (OKRs)", "Market Research Foundations", "Product Management: Building a Product Roadmap", and "Product Management: Building a Product Strategy". Stephan also obtained a Product Strategist Certificate from Section in May 2023.
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Wandelbots
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Wandelbots is a german start-up that is democratizing industrial robotics by enabling everyone to program any robot via smart input devices and example-based teaching. The Wandelbots software backend tracks human motion to live-control industrial robots. Operators can teach automation tasks by demonstration. The software backend builds a machine learning model based on several demonstrations and generates automation workflows which can be refined and optimized with the software tool.