Skip to product information
1 of 3

Coral USB Accelerator - Edge TPU ML Coprocessor for Raspberry Pi 4/5, Linux, Windows, Mac | 4 TOPS @ 2W for TensorFlow Lite Models

Coral USB Accelerator - Edge TPU ML Coprocessor for Raspberry Pi 4/5, Linux, Windows, Mac | 4 TOPS @ 2W for TensorFlow Lite Models

Regular price Rs. 12,500.00
Regular price Sale price Rs. 12,500.00
Sale Sold out
Taxes included. Flat Shipping calculated at checkout.
Quantity
Trust
  • ML accelerator Google Edge TPU coprocessor: 4 TOPS (int8); 2 TOPS per watt
  • Connector: USB 3.0 Type-C (data/power)
  • Dimensions: 65 mm x 30 mm
  • Performs high-speed ML inferencing: ML accelerator Google Edge TPU coprocessor: 4 TOPS (int8); 2 TOPS per watt.
  • Supports all major platforms: Connects via USB to any system running Debian Linux (including Raspberry Pi), macOS, or Windows 10.
  • Supports TensorFlow Lite: No need to build models from the ground up. TensorFlow Lite models can be compiled to run on the Edge TPU.

The Coral USB Accelerator is a hardware device developed by Google as part of their Coral project. It is designed to provide on-device AI (artificial intelligence) inference for a variety of edge devices, including single-board computers like the Raspberry Pi and other embedded systems. The on-board Edge TPU is a small ASIC designed by Google that accelerates TensorFlow Lite models in a power efficient manner: it's capable of performing 4 trillion operations per second (4 TOPS), using 2 watts of power—that's 2 TOPS per watt. For example, one Edge TPU can execute state-of-the-art mobile vision models such as MobileNet v2 at almost 400 frames per second. This on-device ML processing reduces latency, increases data privacy, and removes the need for a constant internet connection.

  1. AI Acceleration: The USB Accelerator is equipped with Google's Edge TPU (Tensor Processing Unit), which is optimized for running machine learning models efficiently. It accelerates AI inference tasks without the need for a cloud connection, making it suitable for edge computing and privacy-sensitive applications.
  2. USB Connectivity: It connects to a host device, such as a computer or single-board computer, via a USB interface. This enables easy integration into a wide range of hardware platforms. Compatible with USB 2.0 but inferencing speed is slower.
  3. Edge Processing: The device allows you to run machine learning models directly on the edge device, reducing latency and bandwidth usage, and improving real-time processing capabilities for AI applications.
  4. Supported Frameworks: The Coral USB Accelerator is compatible with TensorFlow Lite, a popular machine learning framework, making it accessible for developers already familiar with TensorFlow.
  5. Versatility: It can be used for various applications, including image and video classification, object detection, speech recognition, and more.

The Coral USB Accelerator is designed to bring AI capabilities to a wide range of edge devices, making it easier for developers and hobbyists to implement machine learning applications without relying on cloud-based solutions. It is part of Google's broader Coral ecosystem, which includes development tools, software libraries, and pre-trained models to facilitate AI development at the edge.

Features:

  • Easy to use
  • Easy to connect
  • Performs high-speed ML inferencing: ML accelerator Google Edge TPU coprocessor: 4 TOPS (int8); 2 TOPS per watt. 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 almost 400 FPS, in a power efficient manner. 
  • Supports all major platforms: Connects via USB to any system running Debian Linux (including Raspberry Pi), macOS, or Windows 10.
  • Supports TensorFlow Lite: No need to build models from the ground up. TensorFlow Lite models can be compiled to run on the Edge TPU.

Package Includes:

1 x Coral USB Accelerator - Edge TPU ML Coprocessor for Raspberry Pi 4/5, Linux, Windows, Mac | 4 TOPS @ 2W for TensorFlow Lite Models

Shipping & Returns

  • Shipping Time:- Our orders are shipped within 24 Hours. 
  • Delivery Time:- 2-5 Days (Anywhere in India), 7-10 Days for remote location
  • Shipping Partner:- Bluedart, Delhivery, Xpressbees, & India Post.
  • Replacement:- Damaged During Transit, Missing Parts Or Item Mismatch.
  • Return:- Item mismatch or parts missing etc.
  •  No return/Replacement will apply if the Product has been subject to misuse, static discharge, neglect, accident, modification, or has been soldered or altered in any way.
  • We accept no responsibility for improper installation of our products. Electrical polarity must be properly observed in hooking up electrical components.
Trust
View full details

Find your perfect product in seconds.