Ottometric
Vitaliy Gumenyuk started their work experience in 2018 as a Workshop Technician at Decathlon Russia, where they managed a workshop and launched a city-level Workshop development project for 6 stores. Vitaliy also performed staff education and trainings on a city-level for ski and bikes service. In 2021, they worked as an Engineer-Constructor at a manufacturing startup, where they were responsible for the design and manufacturing of a test unit for a ski and snowboard grinding machine. Vitaliy also conducted business potential analysis and planning. Unfortunately, the project had to be closed due to lack of funds and time. Later in 2021, they joined Medical Systems JSC as a Service Engineer, providing customer support for various medical devices and performing on and off-site repairs and technical services. In 2023, they joined Ottometric as a Software Engineer.
Vitaliy Gumenyuk began their education in 2011 at the Physics and Mathematics Lyceum № 30, where they received their High School Diploma in 2015. Following this, from 2015 to 2018, they attended Peter the Great St. Petersburg Polytechnic University. However, they did not complete their degree in Radioelectronic means of information security.
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Ottometric
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Ottometric provides analytics and enhanced capabilities for the automotive supply chain to understand challenges in ADAS features being delivered in modern vehicles. As vehicle complexity increases with more sensors and systems, the complexity and interdependency of the data fusion makes validation ever more complex, time consuming and expensive. The Ottometric solution provides simplified data management and visualization for this overwhelming deluge of validation data and our proprietary artificial intelligence (AI) and computer vision automates validation data review. The result is significant cost reduction and higher accuracy than manual review of data that utilizes in-house tools or unscalable off-the-shelf software. With more extensive and rapid data analysis, long tail problems can be better understood, further improving ADAS features being delivered to the market.