Crates.io | concision-data |
lib.rs | concision-data |
version | 0.1.14 |
source | src |
created_at | 2024-05-07 17:29:37.815544 |
updated_at | 2024-05-25 07:01:14.298044 |
description | Concision is a complete data-science toolkit written in Rust |
homepage | https://github.com/FL03/concision/wiki |
repository | https://github.com/FL03/concision |
max_upload_size | |
id | 1232438 |
size | 32,350 |
Concision is designed to be a complete toolkit for building machine learning models in Rust.
Concision is a machine learning library for building powerful models in Rust prioritizing ease-of-use, efficiency, and flexability. The library is built to make use of the
both the upcoming autodiff
experimental feature and increased support for generics in the 2024 edition of Rust.
Start by cloning the repository
git clone https://github.com/FL03/concision.git
cd concision
cargo build --features full -r --workspace
extern crate concision as cnc;
use cnc::prelude::{linarr, Linear, Result, Sigmoid};
use ndarray::Ix2;
fn main() -> Result<()> {
tracing_subscriber::fmt::init();
tracing::info!("Starting linear model example");
let (samples, d_in, d_out) = (20, 5, 3);
let data = linarr::<f64, Ix2>((samples, d_in)).unwrap();
let model = Linear::<f64>::from_features(d_in, d_out).uniform();
// let model = Linear::<f64, cnc::linear::Unbiased>::from_features(d_in, d_out).uniform();
assert!(model.is_biased());
let y = model.activate(&data, Sigmoid::sigmoid).unwrap();
assert_eq!(y.dim(), (samples, d_out));
println!("Predictions:\n{:?}", &y);
Ok(())
}
Pull requests are welcome. For major changes, please open an issue first to discuss what you would like to change.
Please make sure to update tests as appropriate.