OEM endoscope and visualization systems for surgical applications
SCHÖLLY FIBEROPTIC manufactures OEM endoscopes and surgical visualization systems—a hardware-heavy medical device business built on optics and imaging. The tech stack reveals a company deep in digital transformation: they're actively migrating to Dynamics 365 Business Central for ERP while running Python, MATLAB, and C++ across engineering, and adopting TensorFlow and PyTorch for AI-based medical imaging analysis. The hiring velocity is accelerating across engineering and manufacturing, with active work on multimodal endoscope systems and AI integration concepts—signaling a push to embed intelligence into imaging products while managing the regulatory complexity of medical device production.
SCHÖLLY FIBEROPTIC GMBH, founded in 1973 and headquartered in Denzlingen, Germany, designs and manufactures OEM endoscopes, surgical visualization systems, and microendoscopes for the medical device industry. The company operates as a B2B supplier, serving OEM partners who integrate SCHÖLLY's imaging and optics solutions into their own surgical platforms. With 501–1,000 employees, the organization spans engineering, manufacturing, product development, and supply chain functions. Current operational priorities include transitioning designs from development to series production, managing GMP compliance and validation documentation, and consolidating supply chains while addressing part discontinuation challenges.
The engineering team uses Python, MATLAB, C++, TensorFlow, and PyTorch. Design and manufacturing leverage SolidWorks, Git, and CodeBeamer for version control and project management. The company is currently implementing Dynamics 365 Business Central as its primary ERP system.
Key projects include multimodal endoscope system development, high-tech surgical visualization systems, AI integration concepts, and sensor data analysis for medical imaging. The company is also implementing Dynamics 365 BC and conducting industrial AI potential analysis.
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