This product employs AI chip K210 as the core unit. K210 comes with dual-core processors with independent FPU, 64 bits CPU bit width, 8MB on-chip SRAM, 400M adjustable nominal frequency, and double-precision FPU supporting multiplication, division, and square root operation.
The AI Module-M1 is equipped with neural network hardware accelerator KPU, voice processing unit (APU), programmable IO array (FPIOA/IOMUX), and Fast Fourier Transform Accelerator. In the AI processing, K210 can perform operations such as convolution, batch normalization, activation, and pooling. At the same time, the pre-processing of voice direction scanning and voice data output can also be performed.
Features
- CPU: RISC-V dual-core 64bit
- Debugging Support: high-speed UART and JTAG interface for debugging
- Neural Network Processor: each layer of convolutional neural network parameter can be configured separately, including the number of input and output channels, and the input and output line width and column height.
- Image Recognition: QVGA@60FPS/VGA@30FPS
- Audio Processor: support up to 8 channels of audio input data, ie 4 stereo channels
support for 12-bit, 16-bit, 24-bit, and 32-bit input data widths
Up to 192KHz sample rate
- Static Random-Access Memory (SRAM): the SRAM is split into two parts, 6MiB of on-chip general-purpose SRAM memory and 2 MiB of on-chip AI SRAM memory
- Field-Programmable IO Array: FPIOA allows users to map 255 internal functions to 48 free IOs on the chip
- Digital Video Port: maximum frame size 640x480
- FFT Accelerator: the FFT accelerator is a hardware implementation of the Fast Fourier Transform(FFT)
- Deep Learning Frame: TensorFlow/Keras/Darknet
- Peripherals: FPIOA, UART, GPIO, SPI, I2C, I2S, WDT, TIMER, RTC, etc
Specification
- Dimension: 25.4 25.4 3.3mm/110.13”
- 72-pin Full Pin Lead-out
- Input Voltage: 5.0V±0.2V (DC)
- Input Current: >300mA (5V)
- Operating Temperature: -30ºC~85ºC
- Compliant With IEEE754-2008 Standard
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