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cuda.js

v0.1.0

Published

CUDA bindings for Node.js

Downloads

10

Readme

Cuda.JS

CUDA bindings for Node.js - bringing GPU computing to JavaScript.

npm version Build Status

🚀 Features

  • PyCUDA-inspired API - Familiar interface for CUDA developers
  • Runtime kernel compilation - Compile CUDA C++ code at runtime using NVRTC
  • High-level GPU arrays - Easy data management with GpuArray class
  • Memory management - Explicit control over GPU memory allocation
  • TypeScript support - Full type definitions included
  • Cross-platform - Works on Linux and Windows

📋 Requirements

  • CUDA Toolkit 11.0+ (12.0+ recommended)
  • Node.js 16+
  • Python 3.7+ (for node-gyp)
  • Compatible C++ compiler:
    • Linux: GCC 7+ or Clang 6+
    • Windows: Visual Studio 2019+

🔧 Installation

1. Install CUDA Toolkit

Download and install from NVIDIA Developer.

Make sure nvcc is in your PATH:

nvcc --version

2. Install Cuda.JS

npm install cuda.js

Note: First installation may take several minutes as it compiles native code.

🏃 Quick Start

import { Cuda, GpuArray, Kernel } from 'cuda.js';

// Initialize CUDA
Cuda.init();
console.log(`Found ${Cuda.getDeviceCount()} CUDA devices`);
console.log(Cuda.getDeviceInfo(0));

// Create GPU arrays
const a = new GpuArray([1, 2, 3, 4, 5]);
const b = new GpuArray([5, 4, 3, 2, 1]);
const c = new GpuArray(5);

// Compile and run kernel
const kernel = new Kernel(`
extern "C" __global__ void vector_add(float* a, float* b, float* c, int n) {
    int i = blockIdx.x * blockDim.x + threadIdx.x;
    if (i < n) c[i] = a[i] + b[i];
}`, 'vector_add');

kernel.run([a, b, c, 5], [1, 1, 1], [256, 1, 1]);

// Get results
const result = c.download();
console.log('Result:', result); // [6, 6, 6, 6, 6]

// Cleanup
a.free();
b.free();
c.free();
kernel.free();

🔥 Examples

Basic Example

npm run example:basic

🛠️ Development

Building from Source

git clone https://github.com/sammwyy/cuda.js.git
cd cuda.js
npm install
npm run build
npm test

Project Structure

cuda.js/
├── native/             # Native C bindings
├── src/                # JavaScript bindings
├── test/               # Test suite
└── lib/                # Compiled output

🧪 Testing

# Run all tests
npm test