A JavaScript model of a Gaussian distribution
gaussian blur an image.
TypeScript definitions for gaussian
The gaussian (radial basis function) kernel
Fast and almost Gaussian blur by Mario Klingemann
Three.js-based 3D Gaussian splat viewer
A TypeScript model of a Gaussian distribution
Fast Gaussian Blur in pure JavaScript, via IIR filer. Speed does not depend on blur radius.
.spz Gaussian Splatting file loader
An advanced 3D Gaussian Splatting renderer for THREE.js
JavaScript Gaussian Splatting library
tsParticles easing gaussian plugin
Contains high-performance algorithms used in the rendering of Gaussian Splats in CesiumJS.
Fit spectra using gaussian or lorentzian
A trainable Hidden Markov Model with Gaussian emissions using TensorFlow.js
invert a 2d matrix using Gaussian elimination
optimized 9-tap gaussian blur for GLSL
PixiJS filter to apply an alternative, fast blur effect to Gaussian
Library and CLI tool for 3D Gaussian splat format conversion and transformation
Fast Gaussian kernel density estimation in 1D or 2D.
Solves systems of linear equations using Gaussian Elimination
Three.js-based 3D Gaussian splat viewer for LAM
WebAssembly module for loading Gaussian splat (SPZ) files
Three.js-based 3D Gaussian splat viewer
bevy gaussian splatting render pipeline plugin
Differentiable 3D Gaussian Splatting rasterizer (wgpu)
A 3D Gaussian splatting editing library written in Rust using wgpu.
Fast image blurring in pure Rust
A 3D Gaussian splatting viewing library written in Rust using wgpu.
A `no_std` and no `alloc` library for gaussian curve coefficents calculation.
GAF optimization pipeline — iterative denoising distillation
Spatial gene regulatory network inference and in-silico perturbation (Rust port of SpaceTravLR)
Spatial gene regulatory network inference and in-silico perturbation (Rust port of SpaceTravLR)
Gaussian Process models for regression and classification
burn gaussian splatting render pipeline plugin
Some quick and easy functions for generating gaussian noise, mappable to specific bounds. Useful for artistic purposes.
Gaussian (http://gaussian.com/) is one of the most popular general purpose computational chemistry software packages. The output genearated by it contains a lot of data which should be structured properly before evaluation. The purpose of the Gaussian Parser is to perform routine operations for better and faster log data processing. Currently it's able to parse the output file and process the data for - Distance matrix - Molecular Orbital Coefficients - Harmonic frequencies
Gaussian Filter
Implement the Gaussian Naive Bayes algorithm for classification
Generates fragment shaders that apply a Gaussian blur in an efficient manner.
Normal(Gaussian) random number generator.
This gem can use gaussian algorithm allocation a number
Togezo provides extreme values on a chart via Gaussian/Pearson.
Methods for using maximum likelihood calculations to estimate parmeters of ratios of gaussian variates
Rumale::Clustering provides cluster analysis algorithms, such as K-Means, Gaussian Mixture Model, DBSCAN, and Spectral Clustering, with Rumale interface.
Rumale is a machine learning library in Ruby. Rumale provides machine learning algorithms with interfaces similar to Scikit-Learn in Python. Rumale supports Support Vector Machine, Logistic Regression, Ridge, Lasso, Multi-layer Perceptron, Naive Bayes, Decision Tree, Gradient Tree Boosting, Random Forest, K-Means, Gaussian Mixture Model, DBSCAN, Spectral Clustering, Mutidimensional Scaling, t-SNE, Fisher Discriminant Analysis, Neighbourhood Component Analysis, Principal Component Analysis, Non-negative Matrix Factorization, and many other algorithms.
Generate random numbers from a Normal/Gaussian distribution
Rumale::NaiveBayes provides naive bayes models, such as Gaussian Naive Bayes, Multinomial Naive Bayes, and Bernoulli Naive Bayes, with Rumale interface.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.