Edge Computing Box HX-072AI

HX-072AI
◆Utilizes the highly integrated CV186AH intelligent vision deep learning chip
◆Powered by a 6-core ARM A53 processor
◆1.6GHz clock speed, providing 7.2TOPS@INT8 computing power
◆Supports intelligent analysis of 8-channel HD video
◆CCC certified and meets CANS-related testing requirements
◆IP50 protection rating
The ThingSense SDK², a development tool supporting the ThingSense platform, provides a unified interface definition and development framework, shielding against differences in hardware chipsets and operating environments. This allows developers to quickly develop algorithm applications compatible with the ThingSense platform, allowing them to focus solely on core business logic.
It provides a unified model loading/calling interface, model conversion tools, and compilation and release tools. Algorithm developers only need to focus on chip-compatible model training, core business logic, and data interfaces, enabling one-click model conversion, app compilation, packaging, and image deployment. By abstracting terminal devices into standardized data source interfaces, algorithms can directly access device data and automatically convert inference results into a unified format for reporting to the ThingSense platform.
Unified Video Decoding (SRE) provides a unified decoding cache for terminal video streams, allowing multiple algorithm apps to share the data, saving video decoding resources.

 

 

 

 

 

 

 

 

Core Configuration

Chip Platform

SOPHON CV186AH

Processor

6-core ARM Cortex A53 @ 1.6GHz

Hashrate

7.2 TOPS@INT8 / 1.5T@FP16/BF16

 

 

 

ISP

Supports time-division multiplexing for processing multiple sensor inputs and 3A (AE/AWB/AF) functions with user-adjustable 3A parameters.

Supports two-frame wide dynamic range and Advanced Local Tone Mapping, fixed-pattern noise reduction, defective pixel correction, lens distortion correction, purple fringing correction, Bayer noise reduction, 3D noise reduction, detail enhancement, and sharpening enhancement.

Memory

Default 8G LPDDR4, optional 4G / 16G

Storage

Default 32G eMMC, optional 64G / 128G

 

Expanded storage

M.2 SSD: Supports NVMe SSDs 2242, 2260, and 2280 (internal to the chassis)

SATA: Supports expansion of SATA hard drives (internal to the chassis)

TF: Supports TF memory cards

Video Codec

Decoding: H.265 & H.264, 16-channel 1080P @ 30fps

Encoding: H.265 & H.264, 10-channel 1080P @ 30fps

Image codec

Decoding: 480 fps @1080P; Encoding: 480 fps @1080P

 

 

 

 

 

Basic parameters

power supply

DC 12VDC/3A

Heat dissipation method

Passive cooling

Power consumption

Typical power consumption: 12W; Peak power consumption: 18W

Environmental parameters

Working temperature: -20℃~60℃; Working humidity: 10%~90%RH, non-condensing

Structural dimensions

204mm  ×  149mm  ×64mm

Protection level

IP40

 

 

 

 

 

Interface parameters

 

Network interface

 

RJ45 x2: Supports 10/100/1000Mbps network access

Wi-Fi: Supports expansion of Wi-Fi/Bluetooth modules via the M.2 interface

4G/5G: Supports expansion of 4G/5G modules via the M.2 B-KEY interface

 

Video Output

HDMI OUT × 1 (supports 4K@60fps video output) Note: Only supports direct connection

Audio Interface

Line_IN × 1: audio input, Line_OUT × 1: audio output (standard 3.5mm audio interface)

 

Other interfaces

USB3.0 × 2 / HDMI × 1 / TF × 1 / SIM × 1 / RS-485 × 2 / RS-232 × 1 / CAN × 1 / GPIO × 2 / DI × 1 / DO × 1 / DEBUG × 1 / External power supply (5V) × 1 / External power supply (12V) × 1

Extensible interface

M.2(4G/5G) ×1 / M.2( SSD) ×1 / M.2(WI FI+BT) ×1 / SATA  ×  1

 

 

 

Software Configuration

 

System version

 

Ubuntu 22.04 / 20.04 optional

 

 

Software Support

 

Supports multiple deep learning frameworks, including TensorFlow, ONNX, Caffe, TFLite, Pytorch, MxNet, PaddlePaddle, and Dark Net.

Supports private deployment of large language models such as Gemma-2B, LlaMa2-7B, ChatGLM3-6B, and Qwen1.5-1.8B using the Transformer architecture.

Supports Docker container management technology.

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