Research
Security News
Quasar RAT Disguised as an npm Package for Detecting Vulnerabilities in Ethereum Smart Contracts
Socket researchers uncover a malicious npm package posing as a tool for detecting vulnerabilities in Etherium smart contracts.
ml-peak-shape-generator
Advanced tools
Generate various peak shapes.
The current supported kinds of shapes:
Name | Equation |
---|---|
Gaussian | |
Lorentzian | |
Pseudo Voigt |
where
$ npm i ml-peak-shape-generator
This package allows to calculate various shapes. By default they will have a height of 1.
You see the resulting functions using this playground
import {
getGaussianData,
getLorentzianData,
getPseudoVoigtData,
} from 'ml-peak-shape-generator';
// It's possible to specify the windows size with factor option
let data = getGaussianData({ sd: 500 }, { factor: 3.5 });
// or fix the number of points as Full Width at Half Maximum
let data = getGaussianData({ fwhm: 500 }, { factor: 3.5 });
// It's possible to specify the windows size with factor option
let data = getLorentzianData({ fwhm: 500 }, { factor: 5 });
// It's possible to specify the windows size with factor option
let data = getPseudoVoigtData({ fwhm: 500 }, { factor: 5 });
It is also possible to take an instance of each kind of shape:
import { Gaussian, gaussianFct, Gaussian2D } from 'ml-peak-shape-shape';
const gaussianShape = new Gaussian({ fwhm: 500 });
// It is possible to set a new value for fwhm
gaussianShape.fwhm = 300;
// By default the height value ensure a volume equal 1.
const gaussian2DShape = new Gaussian2D({ fwhm: 500 });
// It is possible to set values for sd, fwhm and factor for each axes.
const gaussian2DShape = new Gaussian2D({ fwhm: { x: 300, y: 500 } });
// It is possible to set new value for fwhm by:
gaussian2D.fwhm = { x: 300, y: 500 };
// or set the same value for both axes.
gaussian2D.fwhm = 400;
//An instance of any shape has the same methods accessible for each
//shape e.g. fct or getData, but these use the internal parameters. e.g:
const gaussianShape = new Gaussian({ fwhm: 500 });
gaussianShape.fct(5);
gaussianFct(5, 500);
// getData
gaussianShape.getData({ factor: 3.5 });
import { getShape1D, getShape2D } from 'ml-peak-shape-generator';
// If you want to dynamically select a shape you can use the `getShapeGenerator` method. It returns a instance of required kind of shape.
let shapeGenerator = getShape1D({ kind: 'lorentzian', sd: 500 });
let shapeGenerator = getShape2D({ kind: 'gaussian', sd: 500 });
It is also possible to get a function that allows to calculate y for any x
import { gaussianFct } from 'ml-peak-shape-generator';
const func = gaussianFct(x - mean, fwhm);
FAQs
Generate various peak shapes
We found that ml-peak-shape-generator demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 0 open source maintainers collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
Research
Security News
Socket researchers uncover a malicious npm package posing as a tool for detecting vulnerabilities in Etherium smart contracts.
Security News
Research
A supply chain attack on Rspack's npm packages injected cryptomining malware, potentially impacting thousands of developers.
Research
Security News
Socket researchers discovered a malware campaign on npm delivering the Skuld infostealer via typosquatted packages, exposing sensitive data.