@hyperfrontend/random-generator-utils
Statistical random distributions and UUID generation for simulations, testing, and procedural content.
What is @hyperfrontend/random-generator-utils?
@hyperfrontend/random-generator-utils provides random number generators beyond JavaScript's basic Math.random(), focusing on statistical distributions used in simulations, load testing, and procedural generation. It includes Gaussian (normal), exponential, power law, and logarithmic distributions, plus UUID v4 generation and seeded pseudo-random functions.
Unlike cryptographic random generators (like Web Crypto API), these utilities prioritize reproducibility and distribution shapes over security. The seeded pseudo-random generator allows deterministic sequences for testing, while statistical distributions model real-world phenomena like response times, user behavior, and natural variation.
Key Features
- Statistical distributions: Gaussian, exponential, power law, logarithmic, uniform
- UUID v4 generation with validation (
uuidV4(), isUuidV4())
- Seeded pseudo-random for reproducible sequences in tests
- Time-based seeding for pseudo-random variations
- Zero dependencies (except sibling @hyperfrontend/data-utils)
- Pure functions for functional composition
Architecture Highlights
All generators use Math.random() as the entropy source, transformed mathematically to match target distributions. Gaussian uses Box-Muller transform, exponential uses inverse transform sampling. Seeded generator uses sine function for deterministic output.
Why Use @hyperfrontend/random-generator-utils?
Realistic Load Testing and Simulations
Math.random() generates uniform distributions, but real-world events follow different patterns. User response times cluster around an average (Gaussian), server failures often show exponential decay, and popularity follows power law distributions (80/20 rule). These generators let you model realistic scenarios in load tests and simulations.
Reproducible Pseudo-Random Sequences for Testing
The seeded pseudo-random generator (randomPseudo()) produces deterministic output from a numeric seed. This enables reproducible test scenarios, snapshot testing with "random" data, and debugging flaky tests caused by true randomness. Time-based seeding (randomPseudoTimeBased()) provides daily or hourly variations while maintaining reproducibility within those windows.
UUID Generation Without External Dependencies
Many projects pull in the uuid package (500KB+) just for v4 UUIDs. This library provides a lightweight alternative with both generation and validation. Ideal for test fixtures, trace IDs, or non-security-critical unique identifiers without bloating bundles.
Functional Composition for Data Pipelines
All generators are pure functions accepting parameters and returning numbers. This makes them composable in data generation pipelines, Array methods (Array.from({ length: 100 }, () => randomGaussian(0, 100))), or streaming data generators for charts and visualizations.
Installation
npm install @hyperfrontend/random-generator-utils
Quick Start
import {
randomGaussian,
randomExponential,
randomPowerLaw,
randomUniform,
randomPseudo,
uuidV4,
isUuidV4,
} from '@hyperfrontend/random-generator-utils'
const responseTime = randomGaussian(100, 300)
const userHeight = randomGaussian(160, 180)
const timeBetweenRequests = randomExponential(0.5)
const failureRate = randomExponential(0.1)
const popularity = randomPowerLaw(2, 1, 1000)
const citySize = randomPowerLaw(2.5, 100, 1000000)
const randomDelay = randomUniform(0, 1000)
const seed = 42
const value1 = randomPseudo(seed)
const value2 = randomPseudo(seed)
const id = uuidV4()
console.log(isUuidV4(id))
console.log(isUuidV4('not-a-uuid'))
API Overview
Statistical Distributions
randomUniform(min, max) - Uniform distribution (flat probability)
randomGaussian(min, max) - Gaussian/normal distribution (bell curve)
randomExponential(lambda) - Exponential distribution (decay)
randomPowerLaw(alpha, min, max) - Power law distribution (long tail)
randomLogarithmic(scale) - Logarithmic distribution
Pseudo-Random Generators
randomPseudo(seed) - Seeded pseudo-random (reproducible)
randomPseudoTimeBased(seedTime) - Time-based seeding for date/time variations
UUID Utilities
uuidV4() - Generate RFC 4122 version 4 UUID
isUuidV4(str) - Validate UUID v4 format
Use Cases
Load Testing
const users = Array.from({ length: 1000 }, () => ({
thinkTime: randomExponential(0.5),
responseTime: randomGaussian(50, 200),
requestCount: Math.floor(randomPowerLaw(2, 1, 100)),
}))
Test Data Generation
const seed = Date.now()
const testData = Array.from({ length: 50 }, (_, i) => ({
id: uuidV4(),
score: randomPseudo(seed + i) * 100,
timestamp: new Date(Date.now() + randomUniform(0, 86400000)),
}))
Procedural Content
const terrain = {
height: randomGaussian(0, 100),
vegetation: randomUniform(0, 1),
populationDensity: randomPowerLaw(2, 1, 1000),
}
Compatibility
| Browser | ✅ |
| Node.js | ✅ |
| Web Workers | ✅ |
| Deno, Bun, Cloudflare Workers | ✅ |
Output Formats
| ESM | index.esm.js | ✅ |
| CJS | index.cjs.js | ❌ |
| IIFE | bundle/index.iife.min.js | ❌ |
| UMD | bundle/index.umd.min.js | ❌ |
Bundle size: 1 KB (minified, self-contained)
CDN Usage
<script src="https://unpkg.com/@hyperfrontend/random-generator-utils"></script>
<script src="https://cdn.jsdelivr.net/npm/@hyperfrontend/random-generator-utils"></script>
<script>
const { randomGaussian, randomUniform, uuid4 } = HyperfrontendRandomGenerator
</script>
Global variable: HyperfrontendRandomGenerator
Dependencies
| @hyperfrontend/data-utils | Internal |
Part of hyperfrontend
This library is part of the hyperfrontend monorepo. Full documentation.
License
MIT