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SOM System-On-Modules - SOM Google Edge TPU ML Compute Accelerator, Integrate The Edge TPU into Legacy and New Systems Using a Standard Half-Mini PCIe
MGA 333849
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Performs high-speed ML inferencing at 4 trillion operations per second
Livraison
rapide
Retour
gratuit*
Emballage sécurisé
Produits 100 % originaux
Conformité PCI DSS
Certifié ISO 27001
Ce qui se démarque
Détails du produit
- Integrates Google Edge TPU coprocessor into legacy and new systems using a standard half-size Mini PCIe connector
- Edge TPU coprocessor measures 30 x 26.8 mm and supports TensorFlow Lite
- Capable of performing 4 trillion operations per second (TOPS) using 0.5 watts for each TOPS
- Compatible with Debian Linux and supports TensorFlow Lite models
- Integrates with any Debian-based Linux system with a compatible card module slot
- Supports AutoML Vision Edge for building and deploying custom image classification models
| Poids de l'article | 0.5 lbs (230 grammes) |
À qui est-ce destiné ?
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Machine Learning Developers
Ideal for developers creating AI applications, leveraging Edge TPU for efficient ML model execution and processing.
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Embedded Systems Engineers
Great for engineers working on embedded systems, facilitating easy integration of AI capabilities into existing platforms.
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IoT Application Designers
Perfect for designing IoT solutions, enabling real-time data processing and analytics with low power consumption.
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General Purpose Computing
Not suitable for users needing general-purpose computing resources, as it's specialized for ML workflows.
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Low-Tech Enthusiasts
Not ideal for hobbyists or low-tech users unfamiliar with hardware integration and machine learning concepts.
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Budget-Conscious Projects
May not be suitable for projects with tight budgets due to potential costs associated with integration and hardware.
DESCRIPTION DU PRODUIT
SOM System-On-Modules - SOM Google Edge TPU ML Compute Accelerator, Integrate The Edge TPU into Legacy and New Systems Using a Standard Half-Mini PCIe
Questions et réponses des clients
-
question:
What is the SOM Google Edge TPU ML Compute Accelerator?
répondre: The SOM Google Edge TPU ML Compute Accelerator is a compact module that enables machine learning capabilities directly at the edge by integrating Google's Tensor Processing Unit (TPU) into various systems. This allows for faster inference and lower latency, making it suitable for applications like image classification, object detection, and natural language processing. By leveraging the Edge TPU, developers can enhance their legacy and new systems with powerful ML features, streamlining workflows in robotics, IoT devices, and edge computing scenarios. -
question:
How can I integrate the SOM Edge TPU into my existing systems?
répondre: Integrating the SOM Edge TPU into existing systems is straightforward due to its standard Half-Mini PCIe interface. This modularity means you can easily attach it to compatible hardware without extensive modifications. For example, if you have a legacy device that processes video feeds, adding this module can exponentially enhance its analytic capabilities by processing data on-site, thus reducing response times and increasing efficiency. -
question:
What are the advantages of using the Edge TPU for machine learning?
répondre: The Edge TPU offers several advantages for machine learning applications, including optimized performance for inferences, reduced need for data transfer to the cloud, and enhanced privacy by processing data locally. This is particularly beneficial in scenarios where latency is critical, such as autonomous vehicles or real-time surveillance systems. By utilizing the Edge TPU, you can maintain high accuracy while ensuring that sensitive data remains on-premises. -
question:
What types of applications can benefit from the SOM Edge TPU?
répondre: Applications across various fields like robotics, smart home devices, and industrial automation can significantly benefit from the SOM Edge TPU. For instance, in smart home automation, the Edge TPU can enable real-time facial recognition for security layers. In agriculture, it might assist in analyzing crop health through image processing. These implementations not only enhance functionality but also provide smarter, data-driven insights. -
question:
Is the SOM Edge TPU compatible with popular development platforms?
répondre: Yes, the SOM Edge TPU is designed to work seamlessly with popular development platforms like Raspberry Pi, NVIDIA Jetson, and other Linux-based systems. This compatibility means developers can easily leverage existing resources and community libraries, accelerating the development of innovative applications that integrate machine learning functionalities with familiar tools. -
question:
What is the power consumption of the SOM Edge TPU?
répondre: The SOM Edge TPU is engineered for efficiency, consuming very low power while delivering impressive performance. With typical power usage around 2 watts, it enables machine learning solutions that remain economical in energy consumption. This is particularly important for battery-operated devices or applications in remote locations where power resources are limited. -
question:
Can the SOM Edge TPU be used for real-time analytics?
répondre: Absolutely! The SOM Edge TPU excels at real-time analytics due to its ability to process data on-site without latency associated with cloud computation. For instance, in a smart surveillance system, it can analyze video feeds instantly to detect intrusions, providing immediate alerts. This capability makes the Edge TPU an optimal choice for applications demanding swift data comprehension and actions. -
question:
Is it possible to train my models on the Edge TPU?
répondre: While the Edge TPU is primarily optimized for inference rather than training, you can train your models on more powerful platforms and then deploy them to the Edge TPU for efficient inferencing. This method allows you to harness high-performance capabilities for training while still benefiting from the edge capabilities of the TPU for production-level deployments, ensuring your application runs smoothly and efficiently. -
question:
What frameworks support the SOM Edge TPU?
répondre: The SOM Edge TPU supports popular frameworks such as TensorFlow Lite, which is tailored for mobile and edge devices. By using TensorFlow Lite, developers can convert their models to a format compatible with the Edge TPU, facilitating easy integration and deployment. This compatibility streamlines the development process, allowing you to utilize machine learning efficiently across various applications. -
question:
Where can I buy the SOM System-On-Modules - SOM Google Edge TPU ML Compute Accelerator?
répondre: You can buy the SOM System-On-Modules - SOM Google Edge TPU ML Compute Accelerator from Ubuy in Madagascar. Ubuy offers a wide variety of electronic components, making it easy for you to find this advanced module alongside many other tech products to enhance your projects.
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Avantages
- High performance ML inference tool
- Easy integration with legacy systems
- Efficient power consumption
- Supports various AI frameworks
- Compact half-mini PCIe form factor
Les inconvénients
- Limited documentation available
Historique des prix du produit
Informations importantes
- Limitations : Pour les produits expédiés à l'international, veuillez noter que toute garantie du fabricant peut ne pas être valide ; les options de service du fabricant peuvent ne pas être disponibles ; les manuels, instructions et avertissements de sécurité des produits peuvent ne pas être dans les langues du pays de destination ; les produits (et les matériaux qui les accompagnent) peuvent ne pas être conçus conformément aux normes, spécifications et exigences d'étiquetage du pays de destination ; et les produits peuvent ne pas être conformes à la tension et aux autres normes électriques du pays de destination (nécessitant l'utilisation d'un adaptateur ou d'un convertisseur le cas échéant). Il incombe au destinataire de s'assurer que le produit peut être importé légalement dans le pays de destination. En cas de commande auprès d'Ubuy ou de ses filiales, le destinataire est l'importateur officiel et doit se conformer à toutes les lois et réglementations du pays de destination.
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MGA 333849
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Ubuy s'engage à protéger votre sécurité et votre confidentialité. Notre système avancé de sécurité des paiements garantit la confidentialité en chiffrant vos informations lors de la transmission grâce aux protocoles AES (Advanced Encryption Standards) et SSL (Secure Socket Layer). Vos coordonnées de paiement sont 100 % sécurisées car nous ne partageons pas vos informations de paiement avec des vendeurs tiers.
Caractéristiques et avantages
- On-board Edge TPU coprocessor capable of 4 TOPS
- Executes MobileNet v2 at 400 FPS
- Power efficient at 2 TOPS per watt
- Works with Debian Linux
- Supports TensorFlow Lite
- Supports AutoML Vision Edge