Development Board
Blues Cygnet
by Blues
Cortex-M4F with 64 KB SRAM supports ML inference via CMSIS-NN optimized kernels
Board Specifications
| Clock Speed | 80 MHz |
| SRAM | 64 KB |
| Flash | 256 KB |
| Connectivity | can |
| Supported Frameworks | arduino, cmsis, stm32cube, libopencm3 |
| MCU Family | STM32L4 (STMicroelectronics) |
| Platform | ststm32 |
Data synced from PlatformIO registry
View source on GitHub ↗
Hardware Guides for STM32L4
STM32L4 Anomaly Detection with Edge Impulse
Excellent
STM32L4 Anomaly Detection with TFLite Micro
Possible
STM32L4 Fall Detection with Edge Impulse
Excellent
STM32L4 Fall Detection with TFLite Micro
Excellent
STM32L4 Gesture Recognition with Edge Impulse
Good
STM32L4 Gesture Recognition with TFLite Micro
Good
Explore More
Orchestrate Blues Cygnet Edge AI with ForestHub
The Blues Cygnet runs inference on-device. ForestHub on your Linux edge gateway ingests its results over MQTT, orchestrates the sense-reason-act loop as a deterministic, auditable graph, and acts on the line.
Get Started Free