开源软件名称(OpenSource Name):SkalskiP/ILearnMachineLearning.js开源软件地址(OpenSource Url):https://github.com/SkalskiP/ILearnMachineLearning.js开源编程语言(OpenSource Language):TypeScript 71.0%开源软件介绍(OpenSource Introduction):ILearnMachineLearning.jsDescriptionThanks to this project I could combine my knowledge from two areas: machine learning and web development. The whole application is written in React using TypeScript and Redux, but the engine that drives it is TensorFlow.js - a modern library for training and deploying machine learning models. You can find a working app here or play with it on your computer. # install dependencies
npm install
# serve with hot reload at localhost:3000
npm start MNISTMNIST dataset is widely known in the field of machine learning. It contains about 70000 examples of handwritten digits. Photos are black and white, normalized to fit into a 28x28 pixel bounding box and anti-aliased. This iconic dataset was used to train the model in Keras and then turned into a form understandable to TensorFlow.js and used as the heart of the first project. The whole process of creating the model has been described in the Medium article. YOLOOriginally written in Darknet - open source neural network framework - YOLO performs really well in the tasks of locating and recognizing objects on the pictures. After converting to a form understandable to TensorFlow.js, I used Tiny YOLOv2 model to recognize objects in pictures sent by the user. All predictions are made on the client's side, without the need to send photos to the server. Build Keras modelsIf you are interested in neural networks and would like to know how to create models used in this project, I encourage you to test the scripts on your computer. # clone repository
git clone https://github.com/SkalskiP/ILearnMachineLearning.js.git
# navigate to models directory
cd ILearnMachineLearning.js/models
# install all required packages and dependencies as well as python environment
./setup.sh
# activate python environment
source .env/bin/activate Related projectsIf you're interested in machine learning, check out my other projects and check my profile on Kaggle. Read more about In-Browser ML
|
2023-10-27
2022-08-15
2022-08-17
2022-09-23
2022-08-13
请发表评论