Intel Movidius Neural Network Compute Stick Deep Neural Network USB Stick NCSM2450.DK1

  • RS Stock No. 139-3655
  • Mfr. Part No. NCSM2450.DK1
  • Manufacturer Intel
Technical data sheets
Legislation and Compliance
RoHS Certificate of Compliance
Product Details

Movidius Neural Compute Stick

The Neural Network Compute Stick from Movidius™ allows Deep Neural Network development without the need for expensive, power-hungry supercomputer hardware. Simply prototype and tune the Deep Neural Network with the 100Gflops of computing power provided by the Movidius stick. A Cloud connection is not required. The USB stick form-factor makes for easy connection to a host PC while the on-board Myriad-2 Vision Processing Unit (VPU) delivers the necessary computational performance. The Myriad-2 achieves high-efficiency parallel processing courtesy of its twelve Very Long Instruction Word (VLIW) processors. The decision on parallel scheduling is carried out at program compile time, relieving the processors of this chore at run-time.

Features

• Movidius 600MHz Myriad-2 SoC with 12 x 128-bit VLIW SHAVE vector processors • 2MB of 400Gbps transfer-rate on-chip memory
• Supports FP16, FP32 and integer operations with 8-, 16- and 32-bit accuracy
• All data and power provided over a single USB 3.0 port on a host PC
• Real-time, on-device inference without Cloud connectivity
• Quickly deploy existing CNN models or uniquely trained networks
• Multiple Movidius Sticks can be networked to the host PC via a suitable hub
• Dimensions: 72.5 x 27 x 14mm

Compile

Automatically convert a trained Caffe-based Convolutional Neural Network (CNN) into an embedded neural network optimized for the on-board Myriad-2 VPU. The SDK also supports TensorFlow.

Tune

Layer-by-layer performance metrics for both industry-standard and custom-designed neural networks enable effective tuning for optimal real-world performance at ultra-low power. Validation scripts allow developers to compare the accuracy of the optimized model on the device to the original PC-based model.

Accelerate

The Movidius Stick can behave as a discrete neural network accelerator by adding dedicated deep learning inference capabilities to existing computing platforms for improved performance and power efficiency.
Where can you use me?
• Smart home and consumer robotics
• Surveillance and security industry
• Retail industry
• Healthcare

Specifications
Attribute Value
Classification Development Tool
Kit Name Movidius Neural Network Compute Stick
Technology Deep Neural Network
Processor Family Name Myriad
Processor Part Number Myriad-2
Processor Type SoC
1078 In stock for delivery within 5 working day(s)
Price (ex. GST) Each
$ 132.52
(exc. GST)
$ 152.40
(inc. GST)
units
Per unit
1 +
$132.52
Related Products
The PSoC Development Kit is an In-Circuit Emulator ...
Description:
The PSoC Development Kit is an In-Circuit Emulator (ICE) that provides debugging functionality for the 8-bit Programmable System-On Chip PSoC 1 families with the PSoC Designer or PSoC Programmer software. The ICE manages all the emulation communication between the debugger ...
The essential development kit for all your graphic ...
Description:
The essential development kit for all your graphic interface projects Open the box full of wonders. Start development right away, everything you could need is there. It’s the perfect toolbox - the mikromedia work. Station v7 is the best development ...
Credit card sized graphics controller module with BT816 ...
Description:
Credit card sized graphics controller module with BT816 device. Supports 5” displays with resistive touch control (not included). Includes 16Mbyte flash for bitmaps and other design asset storage, backlight control and a connector for an audio speaker. Interfaces directly with ...
MAIX is Sipeed’s purpose-built module designed to run ...
Description:
MAIX is Sipeed’s purpose-built module designed to run AI at the edge, we called it AIoT. It delivers high performance in a small physical and power footprint, enabling the deployment of high-accuracy AI at the edge, and the competitive price ...