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Dumbfound

Randomized testing for JavaScript and TypeScript. Dumbfound hooks into test runners such as Mocha and Jest and provides randomization for specified tests and helps with making test failures reproducible.

Introduction

Randomized testing is built around the idea that tests should sometimes fail, and that every time a test fails it helps improve the quality of your project. Randomized testing helps with failure by introducing limited randomness into test cases to help find edge cases.

Dumbfound is built around supplying deterministic randomness that can be used by a test case to generate random data. The deterministic aspect helps with making test failures reproducible by providing a seed that can be used to replay the test case.

Runners are currently available for Jest and Mocha.

Example using Jest

Install dumbfound-jest into your local project:

npm install --save-dev dumbfound-jest

Use it in your tests:

const { randomizedTest, randomizedRuns } = require('dumbfound-jest');

randomizedTest('Example', random => {
  const totalOrders = random.intBetween(5, 10);

  // Do something useful with the test here
});

// Generate a random number of runs of the given test
randomizedRuns('Group name', 1, 5, () => {
  randomizedTest('Test in group', random => {
    ...
  });
});

Randomizer and generators

The randomizer is the main API for generating random values. For most test runners it is supplied as the first argument in the test function. Methods on the object can be used to generate random values by invoking them either directly or via a generator function.

Example invoking them directly:

// Generate an int between 0 and 500
const i = random.int(500);

// Pick an item
const picked = random.pick([ 'a', 'b', 'c' ]);

Generators are functions that resolve a value when invoked. The Randomizer API is available in a generator form, via the gen property. Generators are useful to model a more complex data that you want to use several times.

Example of creating generator functions:

// Create a function that generates an int between 0 and 500
const intCreator = random.gen.int(500);

// Generate an int between 0 and 500
const i = intCreator();
const i2 = intCreator(); // Will generate another int

// Create a picker function
const picker = random.gen.pick([ 'a', 'b', 'c' ]);
// Pick the item
const picked = picker();

Example of more complex generator:

/*
 * Create a generator that produces an array between 5 and 25 items with
 * ASCII strings.
 */
const fn = random.gen.array(
  random.gen.intBetween(5, 25),
  random.gen.ascii()
);

const array1 = fn();
const array2 = fn();

Randomizer and Generator API

For randomizer these methods will return the generated value and for generators they will return a function that can be used to generate a value within the chosen bounds.

Numbers

  • number(max?: number): number - generate a number between -9007199254.740992 and 9007199254.740992. If max is specified generate a number between 0 and max (inclusive).
  • numberBetween(min: number, max: number): number - generate a number between min (inclusive) and max (inclusive).
  • int(max?: number): number - generate a whole number between -9007199254740991 and 9007199254740991. If max is specified generate a whole number between 0 and max (inclusive).
  • intBetween(min: number, max: number): number - generate a whole number between min (inclusive) and max (inclusive).
  • evilNumber(max?: number): number - generate an evil number that will bias towards numbers that can cause issues. Follows the same rules as number(max?).
  • evilNumberBetween(min: number, max: number): number - generate an evil number in the given range that will bias towards numbers that can cause issues.

Booleans

  • boolean(trueProbability=0.5): boolean - generate either true or false. Optionally specify a probability to return true between 0 and 1.
  • frequently(): boolean - generate true frequently and false otherwise.
  • rarely(): boolean - generate false frequently and true otherwise.

Strings

All string generation supports the optional length parameter, if not specified a string between 0 and 20 characters will be returned.

  • string(generator: CharGenerator | CharGenerator[], length?: number): string - generate a string using the given character generator.
  • asciiDigits(length?: number): string - generate string with ASCII digits (0 to 9) of the given length.
  • asciiLowercase(length?: number): string - generate string with ASCII lower-case characters (a to z) of the given length.
  • asciiUppercase(length?: number): string - generate string with ASCII upper-case characters (A to Z) of the given length.
  • ascii(length?: number): string - generate string with ASCII characters (lower-case, upper-case, digits) of the given length.
  • asciiWithSpaces(length?: number): string - generate string with ASCII characters including spaces of the given length.
  • unicode(length?: number): string - generate a string with any Unicode character of the given length.

There are a lot of character sources available:

const { asciiDigits, unicodeBasicLatin, unicodeArrows } = require('dumbfound-testRunnerHere');

// Generate with a single character source
randomizer.string(asciiDigits, 40);

// Generate with multiple character sources
randomizer.string([ unicodeBasicLatin, unicodeArrows ], 40);

See available sources for a list of character sources.

Arrays and Sets

Arrays can be created via the array function and require a generator function.

// Generate an array with 25 random numbers
const arr1 = random.array(25, random.gen.int(500000));

// Generate an array with 10 strings consisting of ASCII digits
const arr2 = random.array(10, randomizer => randomizer.asciiDigits());

// Generate an array of primitive values between 5 and 10 items
const arr3 = random.array(random.intBetween(5, 10), random.gen.primitiveValue());
  • array(length: number, generator: Generator<ValueType>): ValueType[] - generate an array of the given length, the generator should be a function that returns a single value.
  • uniqueArray(length: number, generator: Generator<ValueType>): ValueType[] - generate an array with unique items of the given length. Generator should be a function that returns a single value.
  • set(length: number, generator: Generator<ValueType>): Set<ValueType> - generate a Set (with unique items) of the given length.

Static values

  • nan(): NaN - always generate a NaN value. For use as a generator.
  • null(): null - always generate a null value. For use as a generator.
  • undefined(): undefined - always generate a undefined value. For use as a generator.

Value picking

  • pick(items: ValueType[]): ValueType - pick a single item from the given array. Items in the array may be generators in which case they will be resolved.
  • pick(items: ValueType[], weights: number[]): ValueType - pick a single item from the given array while applying weights to each item.
  • primitiveValue() - generate a primitive value, either null, NaN, undefined, a number, a boolean or a string.
  • truthy(): any - generate a truthy value, that is a value that when used with if(value) would resolve to true.
  • falsy(): any - generate a falsy value, that is a value that when used with if(value) would resolve to false.

Misc

  • uuid(): string - generate a UUIDv4.
  • get(generator: Generator<ValueType>): ValueType - resolve by invoking a generator function. The function may take a randomizer as its first argument and should return a value.

A note on randomness

The randomness provided by this library is not cryptographically secure, and the quality of the random generator is "good enough" for testing. Don't use it for things that need statistically provable randomness.