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Check out the API reference for the latest documentation.
Features
Tensor API
Numerix now includes a Tensor API that lets you implement complex math functions with little code, similar to what you get from numpy. And since Numerix is written in Elixir, it uses Flow to run independent pieces of computation in parallel to speed things up. Depending on the type of calculations you're doing, the bigger the data and the more cores you have, the faster it gets.
NOTE: Parallelization can only get you so far. In terms of raw speed, a pure Elixir solution will always be much slower compared to one that leverages low-level routines like BLAS or similar.
Statistics
Mean
Weighted mean
Median
Mode
Range
Variance
Population variance
Standard deviation
Population standard deviation
Moment
Kurtosis
Skewness
Covariance
Weighted covariance
Population covariance
Quantile
Percentile
Correlation functions
Pearson
Weighted Pearson
Distance functions
Mean squared error (MSE)
Root mean square error (RMSE)
Pearson
Minkowski
Euclidean
Manhattan
Jaccard
General math functions
nth root
Special functions
Logit
Logistic
Window functions
Gaussian
Linear algebra
Dot product
L1-norm
L2-norm
p-norm
Vector subtraction and multiplication
Linear regression
Least squares best fit
Prediction
R-squared
Kernel functions
RBF
Optimization
Genetic algorithms
Neural network activation functions
softmax
softplus
softsign
sigmoid
ReLU, leaky ReLU, ELU and SELU
tanh
About
A collection of useful mathematical functions in Elixir with a slant towards statistics, linear algebra and machine learning