Gathering detailed insights and metrics for d3-random
Gathering detailed insights and metrics for d3-random
Gathering detailed insights and metrics for d3-random
Gathering detailed insights and metrics for d3-random
@types/d3-random
TypeScript definitions for d3-random
random
Seedable random number generator supporting many common distributions.
@d3fc/d3fc-random-data
Components for generating random data series based on stochastic processes
random-extra
Seedable random number generator supporting many common distributions.
npm install d3-random
Typescript
Module System
Min. Node Version
Node Version
NPM Version
99.8
Supply Chain
100
Quality
78.3
Maintenance
100
Vulnerability
100
License
JavaScript (100%)
Total Downloads
0
Last Day
0
Last Week
0
Last Month
0
Last Year
0
ISC License
139 Stars
147 Commits
33 Forks
12 Watchers
5 Branches
9 Contributors
Updated on Mar 01, 2025
Latest Version
3.0.1
Package Id
d3-random@3.0.1
Size
8.58 kB
NPM Version
6.14.12
Node Version
12.22.1
Published on
Jun 05, 2021
Cumulative downloads
Total Downloads
Last Day
0%
NaN
Compared to previous day
Last Week
0%
NaN
Compared to previous week
Last Month
0%
NaN
Compared to previous month
Last Year
0%
NaN
Compared to previous year
Generate random numbers from various distributions.
See the d3-random collection on Observable for examples.
If you use npm, npm install d3-random
. You can also download the latest release on GitHub. For vanilla HTML in modern browsers, import d3-random from Skypack:
1<script type="module"> 2 3import {randomUniform} from "https://cdn.skypack.dev/d3-random@3"; 4 5const random = randomUniform(1, 10); 6 7</script>
For legacy environments, you can load d3-random’s UMD bundle from an npm-based CDN such as jsDelivr; a d3
global is exported:
1<script src="https://cdn.jsdelivr.net/npm/d3-random@3"></script> 2<script> 3 4const random = d3.randomUniform(1, 10); 5 6</script>
# d3.randomUniform([min, ][max]) · Source, Examples
Returns a function for generating random numbers with a uniform distribution. The minimum allowed value of a returned number is min (inclusive), and the maximum is max (exclusive). If min is not specified, it defaults to 0; if max is not specified, it defaults to 1. For example:
1d3.randomUniform(6)(); // Returns a number greater than or equal to 0 and less than 6. 2d3.randomUniform(1, 5)(); // Returns a number greater than or equal to 1 and less than 5.
# d3.randomInt([min, ][max]) · Source, Examples
Returns a function for generating random integers with a uniform distribution. The minimum allowed value of a returned number is ⌊min⌋ (inclusive), and the maximum is ⌊max - 1⌋ (inclusive). If min is not specified, it defaults to 0. For example:
1d3.randomInt(6)(); // Returns an integer greater than or equal to 0 and less than 6. 2d3.randomInt(1, 5)(); // Returns an integer greater than or equal to 1 and less than 5.
# d3.randomNormal([mu][, sigma]) · Source, Examples
Returns a function for generating random numbers with a normal (Gaussian) distribution. The expected value of the generated numbers is mu, with the given standard deviation sigma. If mu is not specified, it defaults to 0; if sigma is not specified, it defaults to 1.
# d3.randomLogNormal([mu][, sigma]) · Source, Examples
Returns a function for generating random numbers with a log-normal distribution. The expected value of the random variable’s natural logarithm is mu, with the given standard deviation sigma. If mu is not specified, it defaults to 0; if sigma is not specified, it defaults to 1.
# d3.randomBates(n) · Source, Examples
Returns a function for generating random numbers with a Bates distribution with n independent variables. The case of fractional n is handled as with d3.randomIrwinHall, and d3.randomBates(0) is equivalent to d3.randomUniform().
# d3.randomIrwinHall(n) · Source, Examples
Returns a function for generating random numbers with an Irwin–Hall distribution with n independent variables. If the fractional part of n is non-zero, this is treated as adding d3.randomUniform() times that fractional part to the integral part.
# d3.randomExponential(lambda) · Source, Examples
Returns a function for generating random numbers with an exponential distribution with the rate lambda; equivalent to time between events in a Poisson process with a mean of 1 / lambda. For example, exponential(1/40) generates random times between events where, on average, one event occurs every 40 units of time.
# d3.randomPareto(alpha) · Source, Examples
Returns a function for generating random numbers with a Pareto distribution with the shape alpha. The value alpha must be a positive value.
# d3.randomBernoulli(p) · Source, Examples
Returns a function for generating either 1 or 0 according to a Bernoulli distribution with 1 being returned with success probability p and 0 with failure probability q = 1 - p. The value p is in the range [0, 1].
# d3.randomGeometric(p) · Source, Examples
Returns a function for generating numbers with a geometric distribution with success probability p. The value p is in the range [0, 1].
# d3.randomBinomial(n, p) · Source, Examples
Returns a function for generating random numbers with a binomial distribution with n the number of trials and p the probability of success in each trial. The value n is greater or equal to 0, and the value p is in the range [0, 1].
# d3.randomGamma(k, [theta]) · Source, Examples
Returns a function for generating random numbers with a gamma distribution with k the shape parameter and theta the scale parameter. The value k must be a positive value; if theta is not specified, it defaults to 1.
# d3.randomBeta(alpha, beta) · Source, Examples
Returns a function for generating random numbers with a beta distribution with alpha and beta shape parameters, which must both be positive.
# d3.randomWeibull(k, [a], [b]) · Source, Examples
Returns a function for generating random numbers with one of the generalized extreme value distributions, depending on k:
In all three cases, a is the location parameter and b is the scale parameter. If a is not specified, it defaults to 0; if b is not specified, it defaults to 1.
# d3.randomCauchy([a], [b]) · Source, Examples
Returns a function for generating random numbers with a Cauchy distribution. a and b have the same meanings and default values as in d3.randomWeibull.
# d3.randomLogistic([a], [b]) · Source, Examples
Returns a function for generating random numbers with a logistic distribution. a and b have the same meanings and default values as in d3.randomWeibull.
# d3.randomPoisson(lambda) · Source, Examples
Returns a function for generating random numbers with a Poisson distribution with mean lambda.
# random.source(source) · Examples
Returns the same type of function for generating random numbers but where the given random number generator source is used as the source of randomness instead of Math.random. The given random number generator must implement the same interface as Math.random and only return values in the range [0, 1). This is useful when a seeded random number generator is preferable to Math.random. For example:
1import {randomLcg, randomNumber} from "d3-random"; 2 3const seed = 0.44871573888282423; // any number in [0, 1) 4const random = randomNormal.source(randomLcg(seed))(0, 1); 5 6random(); // -0.6253955998897069
# d3.randomLcg([seed]) · Source, Examples
Returns a linear congruential generator; this function can be called repeatedly to obtain pseudorandom values well-distributed on the interval [0,1) and with a long period (up to 1 billion numbers), similar to Math.random. A seed can be specified as a real number in the interval [0,1) or as any integer. In the latter case, only the lower 32 bits are considered. Two generators instanced with the same seed generate the same sequence, allowing to create reproducible pseudo-random experiments. If the seed is not specified, one is chosen using Math.random.
No vulnerabilities found.
Reason
no dangerous workflow patterns detected
Reason
no binaries found in the repo
Reason
license file detected
Details
Reason
Found 5/17 approved changesets -- score normalized to 2
Reason
0 commit(s) and 0 issue activity found in the last 90 days -- score normalized to 0
Reason
detected GitHub workflow tokens with excessive permissions
Details
Reason
dependency not pinned by hash detected -- score normalized to 0
Details
Reason
no effort to earn an OpenSSF best practices badge detected
Reason
security policy file not detected
Details
Reason
project is not fuzzed
Details
Reason
Project has not signed or included provenance with any releases.
Details
Reason
branch protection not enabled on development/release branches
Details
Reason
SAST tool is not run on all commits -- score normalized to 0
Details
Reason
13 existing vulnerabilities detected
Details
Score
Last Scanned on 2025-07-07
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