SKU/Artículo: AMZ-B0D9CLVPPC

TUOPUONE

TUOPUONE Hailo-8 M.2 AI Accelerator Module Compatible Raspberry Pi 5 Based On The 26TOPS Hailo-8 AI Processor NOT Included PCIe to M.2 Adapter Board

Detalles del producto
Disponibilidad:
En stock
Peso con empaque:
0.99 kg
Devolución:
No
Condición
Nuevo
Producto de:
Amazon
Viaja desde
USA

Sobre este producto
  • Features At A GlanceNeural network inference accelerator with 13/26 trillion operations per second (TOPS) built on Hailo-8/8L chips.PCIE M.2 HAT+ for connecting the AI module to the RPi 5.Support installing with hardware kit.Stackable GPIO pin header. Hailo-8 AI M.2 modulePowered by 26 Tera-Operations Per Second (TOPS) Hailo-8 AI Processor2.5W typical power consumptionScalable, enabling simultaneous processing of multi-streams & multi-modelsEnabling real-time, low latency and high-efficiency AI inferencing on the edge devicesSupports TensorFlow, TensorFlow Lite, ONNX, Keras, Pytorch frameworksSupports Linux and WindowsSupports the temperature range of -40°C to 85°CPCIe To M.2 adapterOnboard power monitoring chip and EEPROM, supports real-time monitoring of device power status for more stable operationRPi HAT+ compliantReserved airflow vent, supports installing cooling fan for better heat dissipation of the AI module to improve performanceImmersion gold process design, anti-oxidation and more durable Package Content(Optional)Hailo-8Hailo-8 AI M.2 Module ×1 Hailo-8 Acce AHailo-8 AI M.2 Module x1PCIe TO M.2 HAT+ x1Standoff pack x116P-Cable-40mm x12*20 Pin header x1
U$S 383,38
44% OFF
U$S 212,99

IMPORTÁ FACIL

Comprando este producto podrás descontar el IVA con tu número de RUT

U$S 383,38
44% OFF
U$S 212,99

¡Comprá en hasta 12 cuotas sin interés con todas tus tarjetas!

Llega en 25 o más días hábiles
con envío
Tienes garantía de entrega

Conoce más detalles

Powered by 26 Tera-Operations Per Second (TOPS) Hailo-8 AI Processor Scalable, enabling simultaneous processing of multi-streams & multi-models Enabling real-time, low latency and high-efficiency AI inferencing on the edge devices Supports TensorFlow, TensorFlow Lite, ONNX, Keras, Pytorch frameworks Supports the temperature range of -40°C to 85°C