NanoEdge AI Studio V3 Product Overview

Nanoedge AI Studio is a search engine for machine learning, libraries that does not require any expertise in machine learning or data science. It provides a quick and easy way for any developer.

To start, embedding smart features into any C code and build edge.

Ai powered IoT devices for, applications such as condition monitoring or predictive.

Maintenance This tool takes as input minimal amounts, of data and outputs the best NanoEdge AI, library for a given use case Logging.

This input data is also very straightforward.

Thanks to the Datalogger feature for the STWIN SensorTile board, The output NanoEdge AI libraries are optimized for microcontrollers, where they can both learn and infer independently from the cloud.

There are four types of NanoEdge AI projects: Anomaly detection, which provides a dynamic model that learns patterns incrementally and infer both directly within the target microcontroller One class classification, which is used to detect outliers within data and is especially useful when no examples of abnormal behaviors can Be provided on the system N class classification, which enables automatic identification of a machine state among many different possible states and extrapolation, which uses mathematical regression models in order to estimate a target value using other known features.

Each project is divided into five steps.

First set general parameters, then import signal examples that represent the behaviors of the machine to be monitored, start a benchmark to automatically find the best AI library test, the best library using the emulator and finally deploy the library to the microcontroller In project settings define the maximum Amounts of RAM and flash memory on the microcontroller to be dedicated to machine learning, then select the target board and sensor type.

All libraries are compatible with any STM32 board with an ARM Cortex M microcontroller. They are also completely sensor agnostic, meaning that any sensor, type or combination of sensors can be used In the signals step.

Import signal examples that will be used as context for the automatic search during benchmark.

These signals are raw sensor data that represent the behaviors of the machine or piece of equipment that needs to be monitored In the benchmark step.

The studio uses all input signals provided to automatically search for the best NanoEdge AI library, for the use case and optimize it.

This library will contain the optimal signal, pre processing algorithm, coupled with the best machine learning model and hyper parameters In the emulator step.

The best library found during benchmark can be thoroughly tested in real conditions as if it was running on the target microcontroller.

Finally, in the deployment step, the best library is compiled and downloaded ready to be embedded to provide versatile machine learning features with minimal development effort.

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As found on YouTube

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