Difference between revisions of "BPI-EAI80 AIoT board"
(Created page with "= Introduction= thumb|BPI-EAI80 AI board Gree EAI80 chip design thumb|[[BPI-EAI80 AI board Gree EAI80 chi...") |
|||
Line 27: | Line 27: | ||
[[File:Eai80_chip.png]] | [[File:Eai80_chip.png]] | ||
+ | |||
+ | =Documents= | ||
+ | * Edgeless EAI series datasheet: https://drive.google.com/file/d/1KSOOAXKe0eLpXGxulQPzuoHqoMPqTq99/view?usp=sharing |
Revision as of 20:00, 17 April 2020
Introduction
BPI-EAI80 board use Edgeless EAI80 chip design .
About Edgeless EAI series
EAI series crossover AI MCU, CPU core is based on ARM Cortex-M4, ARMv7-M supports a predefined 32-bit address space, with subdivision for code, data, and peripherals, and regions for on-chip and off-chip resources, where on-chip refers to resources that are tightly coupled to the processor. EAI is a multi-core microcontroller implementing Dual-ARM Cortex-M4 cores. All cores have access to the complete memory map. One ARM Cortex-M4 is used as the master processor. The other ARM Cortex-M4 core can be used as a co-processor to off-load the ARM Cortex-M4 and to perform complicated mathematical calculations. CNN processor is integrated in EAI, which can handle image detection and recognition use deep learning methods with high performance and low energy consumption. It supports mainstream CNN model such as Resnet-18, Resnet-34, Vgg16, GoogleNet, Lenet etc, convolutional with kernel size from 1 up to 7, channel/feature number up to 512, max/average pooling function with kernel
EAI chip Device Summary
Documents
- Edgeless EAI series datasheet: https://drive.google.com/file/d/1KSOOAXKe0eLpXGxulQPzuoHqoMPqTq99/view?usp=sharing