Google G950-01455-01

Coral Dev Board User Manual

Model: G950-01455-01 | Brand: Google

Introduzione

The Coral Dev Board is a compact single-board computer designed for quickly prototyping on-device machine learning (ML) products. It features a removable System-on-Module (SoM) and an on-board Edge TPU coprocessor, enabling high-speed ML inferencing with low power consumption. This manual provides essential information for setting up, operating, and maintaining your Coral Dev Board.

Prodotto finitoview e componenti

The Coral Dev Board integrates a System-on-Chip (SoC) with ML capabilities and wireless connectivity, running a derivative of Debian Linux called Mendel.

Cosa c'è nella scatola

  • Removable system-on-module (SOM)
  • 40-pin GPIO expansion header
  • Presa audio da 3.5 mm
  • 2 digital PDM microphones
  • 2.54mm 4-pin terminal for stereo speakers
  • Porta di alimentazione di tipo C
  • Type-C OTG port
  • Type-A 3.0 host
  • Micro-B serial console port

Layout dei circuiti stampati

Familiarize yourself with the key components of the Coral Dev Board.

Coral Dev Board angled view with fan and heatsink

Immagine: Angolata view of the Coral Dev Board, showcasing the heatsink and fan assembly, various ports (USB, HDMI), and the GPIO header. This board is designed for on-device machine learning.

Top-down view of Coral Dev Board with fan

Immagine: dall'alto verso il basso view of the Coral Dev Board, highlighting the central fan and heatsink, along with the various connectors and chips on the board.

Metter il fondo a view of Coral Dev Board

Immagine: In basso view of the Coral Dev Board, showing the underside of the circuit board with various solder points and the "Google" branding.

Top-down view of Coral Dev Board next to a paperclip for scale

Immagine: dall'alto verso il basso view of the Coral Dev Board with a standard paperclip placed next to it, illustrating the compact size of the development board.

Impostare

To begin using your Coral Dev Board, you will need to set up the operating system and development environment.

Passaggi di configurazione iniziale

  1. Alimentazione elettrica: Connect a compatible Type-C power supply to the board's power port.
  2. Connessione display: Connect a display via the HDMI port if you require a graphical interface.
  3. Connessione di rete: Connect to a network via Ethernet or configure Wi-Fi.
  4. Sistema operativo: The board runs Mendel, a derivative of Debian Linux. Refer to the official Coral documentation for detailed instructions on flashing the OS image to an SD card and booting the device.
  5. Strumenti di sviluppo: Install the Mendel development tools on your host machine. A 64-bit operating system is required for these tools.
  6. Accesso SSH: Configure SSH access for remote login and file transfer. You may need to use the Mendel development tools to push SSH keys.

Ambiente Software

The Coral Dev Board is optimized for machine learning inference using TensorFlow Lite models.

  • TensorFlow Lite: Ensure your machine learning models are converted to TensorFlow Lite format for optimal performance on the Edge TPU.
  • Supporto Python: Currently, Python is the primary language supported for development. Support for C++ is expected in future releases.

Operating the Coral Dev Board

The core functionality of the Coral Dev Board lies in its ability to perform high-speed machine learning inferencing on-device, thanks to its Google Edge TPU coprocessor.

On-Device ML Inferencing

The Edge TPU is capable of performing 4 trillion operations per second (TOPS), using only 0.5 watts per TOP. This allows for efficient execution of state-of-the-art mobile vision models, such as MobileNet V2 at 400 FPS.

Video: An official product video demonstrating the Coral Dev Board's real-time object detection capabilities. The video shows various objects being identified and bounded by boxes, highlighting the high frames per second achieved by the Edge TPU.

Applicazioni

The Coral Dev Board is ideal for applications requiring high-performance computer vision with a small footprint and energy efficiency. This includes:

  • Automated quality control in manufacturing.
  • Robotics and autonomous systems.
  • Smart home devices.
  • Predictive maintenance.
  • Any edge computing scenario where real-time ML inference is critical.

Specifiche

CaratteristicaDettaglio
Numero di modelloG950-01455-01
processoreNXP i.MX 8M SoC (Quad Cortex-A53, Cortex-M4F)
ML AcceleratorGoogle Edge TPU Coprocessor
Memoria RAM1 GB LPDDR4
Capacità di archiviazione della memoria8 GB
Scheda graficaIntegrated GC7000 Lite Graphics
Sistema operativoLinux (Mendel)
Tipo senza filiBluetooth
Peso dell'articolo5.6 once

Manutenzione

To ensure the longevity and optimal performance of your Coral Dev Board, follow these maintenance guidelines:

  • Mantenere pulito: Pulire regolarmente la scheda con una spazzola morbida e asciutta o con aria compressa per rimuovere polvere e detriti, in particolare dalla ventola e dal dissipatore di calore.
  • Controllo della temperatura: Ensure adequate ventilation to prevent overheating. The board is designed to run efficiently, but prolonged high-load operations in confined spaces may require additional cooling.
  • Maneggiare con cura: Avoid static discharge by handling the board on an anti-static mat or by wearing an anti-static wrist strap.
  • Aggiornamenti software: Periodically check for and install software updates for the Mendel operating system and TensorFlow Lite to benefit from performance improvements and security patches.

Risoluzione dei problemi

If you encounter issues with your Coral Dev Board, consider the following common troubleshooting steps:

Problemi comuni e soluzioni

  1. La scheda non si accende:
    • Verify the Type-C power supply is correctly connected and provides sufficient power.
    • Assicurarsi che la presa di corrente sia funzionante.
  2. Nessuna uscita di visualizzazione:
    • Controllare i collegamenti del cavo HDMI.
    • Ensure your display supports the board's output resolution. Some small LCDs may not be compatible.
  3. Problemi di connettività di rete:
    • For Ethernet, check cable connection and router status.
    • For Wi-Fi, verify network credentials and signal strength.
  4. ML Inference Issues:
    • Confirm your models are correctly converted to TensorFlow Lite format.
    • Ensure the Edge TPU is properly recognized by the system.
    • Check for any error messages in your application logs.
  5. Prestazioni lente:
    • Verify that your ML models are indeed running on the Edge TPU and not the CPU.
    • Monitor board temperature; excessive heat can lead to throttling.

For more detailed troubleshooting, consult the official Google Coral documentation and community forums.

Garanzia e supporto

For information regarding warranty coverage, technical support, and additional resources, please refer to the official Google Coral website or contact Google's customer support. Keep your purchase receipt for warranty claims.

© 2025 Google. Tutti i diritti riservati.

Il presente manuale è fornito solo a scopo informativo. Le specifiche sono soggette a modifiche senza preavviso.

Ask a question about this manual

Ask about setup, troubleshooting, compatibility, parts, safety, or missing instructions. Manuals+ will review the question and use this page’s manual context to help answer it.