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LPC ML is a machine learning workflow developed to optimize and analyze the impact of different design parameters on laser power converters (LPCs) solar cells

Project description

LPC ML

LPC ML is a tool developed in the CiTIUS, USC by the MODEV group for training a multi-layer perceptron (MLP) neural network to optimize and analyze the impact of different design parameters on laser power converters (LPCs) solar cells.

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Fig.1: LPC SCHEME

Installation

First you need to have installed pip3 on your system. For Ubuntu, open up a terminal and type:

sudo apt update
sudo apt install python3-pip

Instalation of MLFoMpy via pip3

Install the tool using pip3:

pip3 install lpcML

and check the library is installed by importing it from a python3 terminal:

import lpcML

Unless an error comes up, LPC ML is now installed on your environment.

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