Files
smartcore/CHANGELOG.md
Lorenzo 52eb6ce023 Merge potential next release v0.4 (#187) Breaking Changes
* First draft of the new n-dimensional arrays + NB use case
* Improves default implementation of multiple Array methods
* Refactors tree methods
* Adds matrix decomposition routines
* Adds matrix decomposition methods to ndarray and nalgebra bindings
* Refactoring + linear regression now uses array2
* Ridge & Linear regression
* LBFGS optimizer & logistic regression
* LBFGS optimizer & logistic regression
* Changes linear methods, metrics and model selection methods to new n-dimensional arrays
* Switches KNN and clustering algorithms to new n-d array layer
* Refactors distance metrics
* Optimizes knn and clustering methods
* Refactors metrics module
* Switches decomposition methods to n-dimensional arrays
* Linalg refactoring - cleanup rng merge (#172)
* Remove legacy DenseMatrix and BaseMatrix implementation. Port the new Number, FloatNumber and Array implementation into module structure.
* Exclude AUC metrics. Needs reimplementation
* Improve developers walkthrough

New traits system in place at `src/numbers` and `src/linalg`
Co-authored-by: Lorenzo <tunedconsulting@gmail.com>

* Provide SupervisedEstimator with a constructor to avoid explicit dynamical box allocation in 'cross_validate' and 'cross_validate_predict' as required by the use of 'dyn' as per Rust 2021
* Implement getters to use as_ref() in src/neighbors
* Implement getters to use as_ref() in src/naive_bayes
* Implement getters to use as_ref() in src/linear
* Add Clone to src/naive_bayes
* Change signature for cross_validate and other model_selection functions to abide to use of dyn in Rust 2021
* Implement ndarray-bindings. Remove FloatNumber from implementations
* Drop nalgebra-bindings support (as decided in conf-call to go for ndarray)
* Remove benches. Benches will have their own repo at smartcore-benches
* Implement SVC
* Implement SVC serialization. Move search parameters in dedicated module
* Implement SVR. Definitely too slow
* Fix compilation issues for wasm (#202)

Co-authored-by: Luis Moreno <morenol@users.noreply.github.com>
* Fix tests (#203)

* Port linalg/traits/stats.rs
* Improve methods naming
* Improve Display for DenseMatrix

Co-authored-by: Montana Low <montanalow@users.noreply.github.com>
Co-authored-by: VolodymyrOrlov <volodymyr.orlov@gmail.com>
2022-10-31 10:44:57 +00:00

2.0 KiB

Changelog

All notable changes to this project will be documented in this file.

The format is based on Keep a Changelog, and this project adheres to Semantic Versioning.

[Unreleased]

Added

  • Seeds to multiple algorithims that depend on random number generation.
  • Added feature js to use WASM in browser
  • Drop nalgebra-bindings feature
  • Complete refactoring with extensive API changes that includes:
    • moving to a new traits system, less structs more traits
    • adapting all the modules to the new traits system
    • moving towards Rust 2021, in particular the use of dyn and as_ref
    • reorganization of the code base, trying to eliminate duplicates

BREAKING CHANGE

  • Added a new parameter to train_test_split to define the seed.

[0.2.1] - 2022-05-10

Added

  • L2 regularization penalty to the Logistic Regression
  • Getters for the naive bayes structs
  • One hot encoder
  • Make moons data generator
  • Support for WASM.

Changed

  • Make serde optional

[0.2.0] - 2021-01-03

Added

  • DBSCAN
  • Epsilon-SVR, SVC
  • Ridge, Lasso, ElasticNet
  • Bernoulli, Gaussian, Categorical and Multinomial Naive Bayes
  • K-fold Cross Validation
  • Singular value decomposition
  • New api module
  • Integration with Clippy
  • Cholesky decomposition

Changed

  • ndarray upgraded to 0.14
  • smartcore::error:FailedError is now non-exhaustive
  • K-Means
  • PCA
  • Random Forest
  • Linear and Logistic Regression
  • KNN
  • Decision Tree

[0.1.0] - 2020-09-25

Added

  • First release of smartcore.
  • KNN + distance metrics (Euclidian, Minkowski, Manhattan, Hamming, Mahalanobis)
  • Linear Regression (OLS)
  • Logistic Regression
  • Random Forest Classifier
  • Decision Tree Classifier
  • PCA
  • K-Means
  • Integrated with ndarray
  • Abstract linear algebra methods
  • RandomForest Regressor
  • Decision Tree Regressor
  • Serde integration
  • Integrated with nalgebra
  • LU, QR, SVD, EVD
  • Evaluation Metrics