machinelearn v2.1.5
machinelearn.js
machinelearn.js is a Machine Learning library written in Typescript. It solves Machine Learning problems and teaches users how Machine Learning algorithms work.
User Installation
Using yarn
$ yarn add machinelearnUsing NPM
$ npm install --save machinelearnOn the browsers
We use jsdeliver to distribute browser version of machinelearn.js
<script src="https://cdn.jsdelivr.net/npm/machinelearn/machinelearn.min.js"></script>
<script>
const { RandomForestClassifier } = ml.ensemble;
const cls = new RandomForestClassifier();
</script>Please see https://www.jsdelivr.com/package/npm/machinelearn for more details.
Accelerations
By default, machinelearning.js will use pure Javascript version of tfjs. To enable acceleration
through C++ binding or GPU, you must import machinelearn-node for C++ or machinelearn-gpu for GPU.
- C++
- installation
yarn add machinelearn-node- activation
import 'machinelearn-node';- GPU
- installation
yarn add machinelearn-gpu- activation
import 'machinelearn-gpu';Highlights
- Machine Learning on the browser and Node.js
- Learning APIs for users
- Low entry barrier
Development
We welcome new contributors of all level of experience. The development guide will be added to assist new contributors to easily join the project.
- You want to participate in a Machine Learning project, which will boost your Machine Learning skills and knowledge
- Looking to be part of a growing community
- You want to learn Machine Learning
- You like Typescript :heart: Machine Learning
Simplicity
machinelearn.js provides a simple and consistent set of APIs to interact with the models and algorithms. For example, all models have follow APIs:
fitfor trainingpredictfor inferencingtoJSONfor saving the model's statefromJSONfor loading the model from the checkpoint
Testing
Testing ensures you that you are currently using the most stable version of machinelearn.js
$ npm run testSupporting
Simply give us a :star2: by clicking on
Contributing
We simply follow "fork-and-pull" workflow of Github. Please read CONTRIBUTING.md for more detail.
Further notice
Great references that helped building this project!
- https://machinelearningmastery.com/
- https://github.com/mljs/ml
- http://scikit-learn.org/stable/documentation.html
Contributors
Thanks goes to these wonderful people (emoji key):
| Jason Shin📝 🐛 💻 📖 ⚠️ | Jaivarsan💬 🤔 📢 | Oleg Stotsky🐛 💻 📖 ⚠️ | Ben💬 🎨 📢 🐛 💻 | Christoph Reinbothe💻 🤔 🚇 👀 | Adam King💻 ⚠️ 📖 |
|---|
