Neural networks in JavaScript

A fun and practical Brain.js tutorial. This 19-part course teaches you how to build neural networks in JavaScript through interactive Scrimba tutorials.

Course content

01Course Introduction: Neural Networks in JavaScript
1:41
02Building your first neural network in JavaScript
2:42
03A Short Message From Team Scrimba
2:58
04How Neural Networks Learn - Propagation
3:23
05How Neural Networks Learn - Structure
2:08
06How Neural Networks Learn - Layers
3:51

The most interactive neural network course ever created 🤯

This course gives you a practical introduction to Brain.js, a popular JavaScript library for building neural networks in the browser and in Node.js. And since this is Scrimba, you'll be able to interact with the neural networks whenever you want. Simply pause the screencast, edit the code and run the network with your own changes applied. Learning machine learning has never been as interactive as this!

What you'll learn

By the end of the course, you'll be able to solve a range of different problems using neural networks. The lectures does not dwell with much theory, but rather on how to code the networks. That means the course is suitable for anybody who knows JavaScript.

Here are some of the amazing projects you'll learn to build:

* XOR gate
* Counter
* Basic math network
* Image recognizer
* Sentiment analyzer
* Recommendation engine
* Children's book creator

Good luck, and welcome to the exciting world of neural networks!

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What you'll learn 👩‍🏫

Neural Network basics
How Neural Nets learn
Propagation
Structure
Layers
Objects
Normalization
Predicting steps
Recurrent Neural Net
Sentiment analysis

Meet your teacher 👋

The course creator

Robert Plummer

Robert is a full stack engineer, and the lead developer of the Brain.js library. He has a unique ability to explain complex concepts in a manner that everyone can understand.

Thank Robert for the course

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FAQ

Are neural networks machine learning?

Neural networks are a specific set of algorithms within machine learning. They are inspired by biological neural networks and the current so-called deep neural networks and have proven to work quite well.

What are neural networks and deep learning?

Neural networks are biologically-inspired programming concept which enables a computer to learn from observational data. Deep learning is a set of techniques for learning in neural networks.

What can neural networks do?

In short, neural networks can be used for solving business problems such as forecasting, customer research, data validation, and risk management. A more fun use could be to teach a neural network to play Mario cart.

What are the major benefits of neural networks?

Ability to learn and model non-linear and complex relationships, which is really important because in real-life, many of the relationships between inputs and outputs are non-linear as well as complex.