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CESIPC CTN-N0AA AI Computer for Edge Computing Jetson Nvidia 4GB Orin Nano

CESIPC CTN-N0AA AI Computer for Edge Computing Jetson Nvidia 4GB Orin Nano

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Factory-direct AI edge box: NVIDIA Jetson Orin Nano 4 GB, 9–36 V DC input, JetPack 5.1, dual GbE, Wi-Fi 6. Rugged, fanless, turnkey inference.


Overview

The CESIPC CTN-N0AA AI Edge Computer leverages the NVIDIA Jetson Orin Nano (4 GB) in a fanless, industrial-grade enclosure. Preloaded with JetPack 5.1 SDK, it delivers up to 40 TOPS of AI performance on wide-voltage DC power—ideal for on-machine vision, robotics, and smart automation at the edge.


Product Description

Housed in a die-cast aluminum, IP50 chassis, the CTN-N0AA features Jetson Orin Nano (4 GB), 16 GB LPDDR5, and 32 GB eMMC (plus M.2 NVMe slot). Dual GbE LAN, Wi-Fi 6, Bluetooth 5.2, and a 40-pin GPIO header provide versatile connectivity. Video outputs include HDMI 2.1 and DP 1.4. M.2 slots support 4G/5G and additional storage. With JetPack 5.1 preinstalled, you get full CUDA, TensorRT, and DeepStream support for rapid AI deployment—completely silent and maintenance-free.


Key Features

  • Jetson Orin Nano (4 GB): up to 40 TOPS AI inference

  • Wide-Voltage DC: 9–36 V input with surge & reverse-polarity protection

  • Fanless Rugged Design: IP50 front, passive-cooling reliability

  • Preloaded JetPack 5.1: CUDA, TensorRT, DeepStream, VisionWorks

  • Memory & Storage: 16 GB LPDDR5; 32 GB eMMC + M.2 NVMe slot

  • Networking: 2× GbE LAN; Wi-Fi 6 (802.11ax) & Bluetooth 5.2

  • Video Outputs: 1× HDMI 2.1; 1× DisplayPort 1.4

  • I/O Expansion: USB 3.2 Gen2; RS-232; 40-pin GPIO header

  • Modular Slots: M.2 for NVMe & 4G/5G cellular

  • Wide-Temp Range: –20 °C to +60 °C operation


Specifications

Feature Details
Compute Module NVIDIA Jetson Orin Nano (4 GB)
Memory 16 GB LPDDR5
Storage 32 GB eMMC; 1× M.2 NVMe slot (up to 1 TB)
Ethernet 2× Gigabit RJ45
Wireless Wi-Fi 6 (802.11ax); Bluetooth 5.2; M.2 socket for cellular
Video Out HDMI 2.1; DisplayPort 1.4
USB Ports 2× USB 3.2 Gen2
Serial 1× RS-232
GPIO 40-pin header
Power Input 9–36 V DC, 30 W max, surge & reverse-polarity protected
Protection IP50 front; die-cast aluminum chassis
Operating Temp –20 °C to +60 °C
Dimensions 190 × 140 × 60 mm (W × D × H)
Weight ~1.2 kg

Supported OS / Applications / Industries

  • OS: Ubuntu LTS with JetPack 5.1, Yocto Linux

  • Applications: AI vision, robotics, predictive maintenance, smart kiosks

  • Industries: Manufacturing, logistics, retail, healthcare, smart cities


Benefits & Differentiation

  • Edge AI Acceleration: blazing inference up to 40 TOPS

  • Factory-Direct Pricing: eliminate middle-man markup

  • Silent Reliability: fanless, passive cooling for 24/7 operation

  • Full JetPack Stack: out-of-the-box AI tools & frameworks

  • Modular Expansion: flexible M.2 slots for storage and connectivity


Purpose of Use

Deploy at edge nodes for real-time video analytics, autonomous robots, intelligent kiosks, and any application needing turnkey AI inference in harsh, power-constrained settings.


How to Use

  1. Mount via DIN-rail or panel bracket (included).

  2. Wire 9–36 V DC, network, display, sensors/actuators.

  3. Boot—JetPack 5.1 loads Ubuntu with AI stack.

  4. Deploy your TensorRT or DeepStream applications.

  5. Maintain with OTA updates—no fans to clean.


Warranty & FAQs

Warranty: 2 years standard; optional 5-year extension.
FAQs:

  • Can I upgrade storage? Yes—M.2 NVMe slot supports up to 1 TB.

  • Does it support JetPack 5.1? Yes—pre-flashed for instant AI workloads.


After-Sales Support

24/7 remote diagnostics, JetPack consulting, and optional on-site service ensure smooth AI roll-outs.


Get in Touch

For volume orders or integration assistance, email sales@neotech.ae or visit neotech.ae/contact.


Disclaimer

Specifications may change without notice. Images are illustrative—confirm details with our sales team prior to deployment.

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