Coral USB Accelerator

Coral USB Accelerator

Apple Shopping Event

Hurry and get discounts on all Apple devices up to 20%

Sale_coupon_15

118.67

4 in stock

4 in stock

16 People watching this product now!
  • Pick up from the Woodmart Store

To pick up today

Free

  • Courier delivery

Our courier will deliver to the specified address

2-3 Days

Free

  • DHL Courier delivery

DHL courier will deliver to the specified address

1-3 Days

Free

  • Warranty 1 year
  • Free 30-Day returns

Payment Methods:

Description

Coral USB Accelerator A USB accessory that brings machine learning inferencing to existing systems. Works with Raspberry Pi and other Linux systems. Performs high-speed ML inference The on-board Edge TPU coprocessor is capable of performing 4 trillion operations (tera-operations) per second (TOPS), using 0.5 watts for each TOPS (2 TOPS per watt). For example, it can execute state-of-the-art mobile vision models such as MobileNet v2 at 400 FPS, in a power efficient manner. See more performance benchmarks. Works with Debian Linux Connects to any Debian-based Linux system with an included USB 3 Type-C cable. Supports TensorFlow Lite No need to build models from the ground up. TensorFlow Lite models can be compiled to run on the Edge TPU. Supports AutoML Vision Edge Easily build and deploy fast, high-accuracy custom image classification models to your device with AutoML Vision Edge. FEATURES Google Edge TPU ML accelerator coprocessor USB 3 Type-C socket Supports Debian Linux on host CPU Models are built using TensorFlow Fully supports MobileNet and Inception architectures although custom architectures are possible Compatible with Google Cloud SPECS Edge TPU ML accelerator ASIC designed by Google that provides high performance ML inferencing for TensorFlow Lite models Arm 32-bit Cortex-M0+ Microprocessor (MCU) Up to 32 MHz max 16 KB Flash memory with ECC 2 KB of RAM Connections USB 3.1 (gen 1) port and cable (SuperSpeed, 5Gb/s transfer speed) Included cable is USB Type-C to Type-AU Raspberry Pi Raspberry Pi 2/3/4 Model B / B+ only Also note that to reach the best inference speed, you should use a USB 3 port. (unfortunately, Raspberry Pi 2/3 has only USB 2 port)

Specification

Customer Reviews