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Getting Started with Micrograd TSby@trekhleb
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Getting Started with Micrograd TS

by Oleksii TrekhlebAugust 7th, 2023
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A TypeScript version of karpathy/micrograd. A tiny scalar-valued autograd engine and a neural net on top of it
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I recently went through a very detailed and well-explained Python-based project/lesson by karpathy which is called micrograd. This is a tiny scalar-valued autograd engine with a neural net on top of it. This video explains how to build such a network from scratch.


The project above is, as expected, built on Python. For learning purposes, I wanted to see how such a network may be implemented in TypeScript and came up with a 🤖 micrograd-ts repository (and also with a demo of how the network may be trained).


Trying to build anything on your own very often gives you a much better understanding of a topic. So, this was a good exercise, especially taking into account that the whole code is just ~200 lines of TS code with no external dependencies.


The micrograd-ts repository might be useful for those who want to get a basic understanding of how neural networks work, using a TypeScript environment for experimentation.

With that being said, let me give you some more information about the project.


Project structure

  • micrograd/ — this folder is the core/purpose of the repo

    • engine.ts — the scalar Value class that supports basic math operations like add, sub, div, mul, pow, exp, tanh and has a backward() method that calculates a derivative of the expression, which is required for back-propagation flow.
    • nn.ts — the Neuron, Layer, and MLP (multi-layer perceptron) classes that implement a neural network on top of the differentiable scalar Values.
  • demo/ - demo React application to experiment with the micrograd code

    • src/demos/ - several playgrounds where you can experiment with the Neuron, Layer, and MLP classes.


Micrograd

See 🎬 The spelled-out intro to neural networks and back-propagation: building micrograd YouTube video (shared above) for a detailed explanation of how neural networks and backpropagation work. The video also explains in detail what the Neuron, Layer, MLP, and Value classes do.


Briefly, the Value class allows you to build a computation graph for some expression that consists of scalar values.


Here is an example of how the computation graph for the a * b + c expression looks like:

Based on the Value class, we can build a Neuron expression X * W + b. Here we're simulating a dot-product of matrix X (input features) and matrix W (neuron weights):



Out of Neurons, we can build the MLP network class that consists of several Layers of Neurons. The computation graph in this case may look a bit complex to be displayed here, but a simplified version might look like this:




The main idea is that the computation graphs above "know" how to do automatic back propagation (in other words, how to calculate derivatives). This allows us to train the MLP network for several epochs and adjust the network weights in a way that reduces the ultimate loss:




Demo (online)

To see the online demo/playground, check the following link:

🔗 trekhleb.dev/micrograd-ts


Demo (local)

If you want to experiment with the code locally, follow the instructions below.

Setup

Clone the current repo locally.


Switch to the demo folder:

cd ./demo



Setup node v18 using nvm (optional):

nvm use


Install dependencies:

npm i


Launch demo app:

npm run dev


The demo app will be available at http://localhost:5173/micrograd-ts

Playgrounds

Go to the ./demo/src/demos/ to explore several playgrounds for the Neuron, Layer, and MLP classes.


I hope, playing around with the micrograd-ts code above and watching the video from Karpathy will be helpful at least for some of you, learners.


Also published here.