Meet Gantner Instruments at Sensor Shenzhen 2026!
Join us at the Shenzhen Convention and Exhibition Center from April 14–16, 2026, where the global sensor community comes together to explore the latest breakthroughs in sensing, testing, and data acquisition. With over 600 exhibitors and thousands of industry professionals, Sensor Shenzhen is the platform driving the next wave of sensor innovation.
At Gantner Instruments, we deliver high-precision, modular, and scalable DAQ solutions designed for real-world sensor applications. From automotive and e-mobility to industrial automation, aerospace, healthcare, and smart infrastructure, our systems provide reliable, real-time measurement data when accuracy truly matters.
See firsthand how our advanced data acquisition technology helps engineers refine designs, improve test accuracy, and meet the growing performance demands of tomorrow’s sensor-driven applications.
Event details
Event: Sensor Shenzhen 2026
Date: April 14-16
Location: Shenzhen Convention and Exhibition Center
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