Ultra-low power AI-ready platform with 8 sensors, STM32L4R9 MCU at 120 MHz, and Telit WE310F5-I WiFi/BLE 5.0 module. Raspberry Pi Model A form factor with USB-C. Open-source hardware.
Ultra-low power board designed for AI applications. Built around the STM32L4R9AII6 ARM Cortex-M4 with FPU running at 120 MHz and delivering 150 DMIPS. Equipped with 2048 KB Flash and 640 KB SRAM for demanding edge inference workloads.
The Telit WE310F5-I module provides WiFi 802.11 b/g/n and BLE 5.0 connectivity. Raspberry Pi Model A form factor with full expansion connector compatibility. USB-C for data and power. Compatible with 3x AA batteries. Open-source hardware. Follow development on Hackaday.io.
Develop firmware using STM32CubeIDE. Suitable for edge AI inference with STM32Cube.AI, enabling on-device machine learning models optimized for the Cortex-M4 architecture.
8-sensor fusion applications: environmental monitoring, indoor positioning, occupancy detection, predictive maintenance.