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Coral M.2 Accelerator with Dual Edge TPU
Coral M.2 Accelerator with Dual Edge TPU
Coral M.2 Accelerator with Dual Edge TPU
Coral M.2 Accelerator with Dual Edge TPU
Coral M.2 Accelerator with Dual Edge TPU
Coral M.2 Accelerator with Dual Edge TPU

Coral M.2 Accelerator with Dual Edge TPU …

Product ID : 52962725


Galleon Product ID 52962725
Shipping Weight 0.11 lbs
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Model Coral M.2
Manufacturer Seeed Studio
Shipping Dimension 5.24 x 2.56 x 0.04 inches
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4,558

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Coral M.2 Accelerator with Dual Edge TPU Features

  • Performs high-speed ML inferencing: Each Edge TPU coprocessor is capable of performing 4 trillion operations per second (4 TOPS), using 2 watts of power. 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. With the two Edge TPUs in this module, you can double the inferences per second (8 TOPS) in several ways, such as by running two models in parallel or pipelining one model across both Edge TPUs.

  • Works with Debian Linux and Windows: Integrates with Debian-based Linux or Windows 10 systems with a compatible card module slot.

  • 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. Description


About Coral M.2 Accelerator With Dual Edge TPU

The Coral M.2 Accelerator with Dual Edge TPU is an M.2 module (E-key) that includes two Edge TPU ML accelerators, each with their own PCIe Gen2 x1 interface. The Edge TPU is a small ASIC designed by Google that accelerates TensorFlow Lite models in a power efficient manner: each one is 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. With the two Edge TPUs in this module, you can double the inferences per second (8 TOPS) in several ways, such as by running two models in parallel or pipelining one model across both Edge TPUs.