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  • Development boards
  • Officially supported AI Accelerators
  • Inferencing libraries
  • .eim models?
  1. Tools

Edge Impulse for Linux

PreviousHimax flash toolNextLinux Node.js SDK

Last updated 6 months ago

Edge Impulse for Linux is the easiest way to build Machine Learning solutions on real embedded hardware. It contains tools which let you collect data from any microphone or camera, can be used with the Node.js, Python, Go and C++ SDKs to collect new data from any sensor, and can run impulses with full hardware acceleration - with easy integration points to write your own applications.

Development boards

This is a list of development boards that are fully supported by Edge Impulse for Linux. Follow the instructions to get started:

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Different development board? Probably no problem! You can use the Linux x86_64 getting started guide to set up the Edge Impulse for Linux CLI tool, and you can run your impulse on any x86_64, ARMv7 or AARCH64 Linux target. For support please head to the .

Officially supported AI Accelerators

This is a list of AI accelerators that are fully supported by Edge Impulse of Linux. Follow the instructions to get started:

Inferencing libraries

To build your own applications, or collect data from new sensors, you can use the high-level language SDKs. These use full hardware acceleration, and let you integrate your Edge Impulse models in a few lines of code:

.eim models?

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Edge Impulse for Linux models are delivered in .eim format. This is an executable that contains your signal processing and ML code, compiled with optimizations for your processor or GPU (e.g. NEON instructions on ARM cores) plus a very simple IPC layer (over a Unix socket). See our to learn more.

Raspberry Pi 4
Advantech ICAM-540
NVIDIA Jetson Orin and Nano
Renesas RZ/V2L
Renesas RZ/G2L
Mac
Linux x86_64 devices
Texas Instruments SK-TDA4VM
Texas Instruments SK-AM62A-LP
Texas Instruments SK-AM668A
Microchip SAMA7G54
forums
BrainChip AKD1000
MemryX MX3
Think Silicon® - NEOX GA100
Node.js
Python
Go
C++
Linux EIM executable guide