Scores

Latest version: v1.3.0

Safety actively analyzes 682457 Python packages for vulnerabilities to keep your Python projects secure.

Scan your dependencies

Page 1 of 4

1.3.0

For a list of all changes in this release, see the [full changelog](https://github.com/nci/scores/compare/1.2.0...1.3.0). Below are the changes we think users may wish to be aware of.

Introduced Support for Python 3.13 and Dropped Support for Python 3.9

- In line with other scientific Python packages, `scores` has dropped support for Python 3.9 in this release.
`scores` has added support for Python 3.13. See [PR 710](https://github.com/nci/scores/pull/710).

Features

- Added four new metrics:
- Quantile Interval Score: `scores.continuous.quantile_interval_score`. See [PR 704](https://github.com/nci/scores/pull/704), [PR #733](https://github.com/nci/scores/pull/733) and [PR #738](https://github.com/nci/scores/pull/738).
- Interval Score: `scores.continuous.interval_score`. See [PR 704](https://github.com/nci/scores/pull/704), [PR #733](https://github.com/nci/scores/pull/733) and [PR #738](https://github.com/nci/scores/pull/738).
- Kling-Gupta Efficiency (KGE): `scores.continuous.kge`. See [PR 679](https://github.com/nci/scores/pull/679), [PR #700](https://github.com/nci/scores/pull/700) and [PR #734](https://github.com/nci/scores/pull/734).
- Interval threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.interval_tw_crps_for_ensemble`. See [PR 682](https://github.com/nci/scores/pull/682) and [PR #734](https://github.com/nci/scores/pull/734).
- Added an optional `include_components` argument to several continuous ranked probability score (CRPS) functions for ensembles. If supplied, the `include_components` argument will return the underforecast penalty, the overforecast penalty and the forecast spread term, in addition to the overall CRPS value. This applies to the following CRPS functions:
- continuous ranked probability score (CRPS) for ensembles: `scores.probability.crps_for_ensemble`
- threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.tw_crps_for_ensemble`
- tail threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.tail_tw_crps_for_ensemble`
- interval threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.interval_tw_crps_for_ensemble`)
See [PR 708](https://github.com/nci/scores/pull/708) and [PR #734](https://github.com/nci/scores/pull/734).

Documentation

- Added "Kling–Gupta Efficiency (KGE)" tutorial. See [PR 679](https://github.com/nci/scores/pull/679), [PR #700](https://github.com/nci/scores/pull/700) and [PR #734](https://github.com/nci/scores/pull/734).
- Added "Quantile Interval Score and Interval Score" tutorial. See [PR 704](https://github.com/nci/scores/pull/704), [PR #736](https://github.com/nci/scores/pull/736) and [PR #738](https://github.com/nci/scores/pull/738).
- Added "Threshold Weighted Continuous Ranked Probability Score (twCRPS) for ensembles" tutorial. See [PR 706](https://github.com/nci/scores/pull/706) and [PR #722](https://github.com/nci/scores/pull/722).
- Updated the title in the "Binary Categorical Scores and Binary Contingency Tables (Confusion Matrices)" tutorial and the description for the corresponding thumbnail in the tutorial gallery. See [PR 741](https://github.com/nci/scores/pull/741) and [PR #743](https://github.com/nci/scores/pull/743).
- Updated the pull request template. See [PR 719](https://github.com/nci/scores/pull/719).

Internal Changes

- Sped up (improved the computational efficiency of) the continuous ranked probability score (CRPS) for ensembles. This also addresses memory issues when a large number of ensemble members are present. See [PR 694](https://github.com/nci/scores/pull/694).

Contributors to this Release

Mohammadreza Khanarmuei ([reza-armuei](https://github.com/reza-armuei)), Nicholas Loveday ([nicholasloveday](https://github.com/nicholasloveday)), Durga Shrestha ([durgals](https://github.com/durgals)), Tennessee Leeuwenburg ([tennlee](https://github.com/tennlee)), Stephanie Chong ([Steph-Chong](https://github.com/Steph-Chong)) and Robert J. Taggart ([rob-taggart](https://github.com/rob-taggart)).

1.2.0

For a list of all changes in this release, see the [full changelog](https://github.com/nci/scores/compare/1.1.0...1.2.0). Below are the changes we think users may wish to be aware of.

Features

- Added three new metrics:
- Percent bias (PBIAS): `scores.continuous.pbias`. See [PR 639](https://github.com/nci/scores/pull/639) and [PR #655](https://github.com/nci/scores/pull/655).
- Threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.tw_crps_for_ensemble`. See [PR 644](https://github.com/nci/scores/pull/644).
- Tail threshold weighted continuous ranked probability score (twCRPS) for ensembles: `scores.probability.tail_tw_crps_for_ensemble`. See [PR 644](https://github.com/nci/scores/pull/644).
- The FIxed Risk Multicategorical (FIRM) score (`scores.categorical.firm`) can now take a sequence of mulitdimensional arrays (xr.DataArray) of thresholds. This allows the FIRM score to be used with categorical thresholds that vary across the domain. See [PR 661](https://github.com/nci/scores/pull/661).

Documentation

- Added information about percent bias to the "Additive Bias and Multiplicative Bias" tutorial. See [PR 639](https://github.com/nci/scores/pull/639) and [PR #656](https://github.com/nci/scores/pull/656).
- Updated documentation to say there are now over 60 metrics, statistical techniques and data processing tools contained in `scores`. See [PR 659](https://github.com/nci/scores/pull/659).
- In the "Contributing Guide", updated instructions for installing a conda-based virtual environment. See [PR 654](https://github.com/nci/scores/pull/654).

Internal Changes

- Modified automated tests to work with NumPy 2.1. Incorporated a union type of `array` and `generic` in assert statements for Dask operations. See [PR 643](https://github.com/nci/scores/pull/643).

Contributors to this Release

Durga Shrestha* ([durgals](https://github.com/durgals)), Maree Carroll ([mareecarroll](https://github.com/mareecarroll)), Nicholas Loveday ([nicholasloveday](https://github.com/nicholasloveday)), Tennessee Leeuwenburg ([tennlee](https://github.com/tennlee)), Stephanie Chong ([Steph-Chong](https://github.com/Steph-Chong)) and Robert J. Taggart ([rob-taggart](https://github.com/rob-taggart)).

\* indicates that this release contains their first contribution to `scores`.

1.1.0

For a list of all changes in this release, see the [full changelog](https://github.com/nci/scores/compare/1.0.0...1.1.0). Below are the changes we think users may wish to be aware of.

Features

- `scores` is now available on [conda-forge](https://anaconda.org/conda-forge/scores).
- Added five new metrics
- threshold weighted squared error: ` scores.continuous.tw_squared_error`
- threshold weighted absolute error: `scores.continuous.tw_absolute_error`
- threshold weighted quantile score: `scores.continuous.tw_quantile_score`
- threshold weighted expectile score: `scores.continuous.tw_expectile_score`
- threshold weighted Huber loss: `scores.continuous.tw_huber_loss`.
See [PR 609](https://github.com/nci/scores/pull/609).

Documentation

- Added "Threshold Weighted Scores" tutorial. See [PR 609](https://github.com/nci/scores/pull/609).
- Removed nbviewer link from documentation. See [PR 615](https://github.com/nci/scores/pull/615).

Internal Changes

- Modified `numpy.trapezoid` call to work with either NumPy 1 or 2. See [PR 610](https://github.com/nci/scores/pull/610).

Contributors to this Release

Nicholas Loveday ([nicholasloveday](https://github.com/nicholasloveday)), Tennessee Leeuwenburg ([tennlee](https://github.com/tennlee)), Stephanie Chong ([Steph-Chong](https://github.com/Steph-Chong)) and Robert J. Taggart ([rob-taggart](https://github.com/rob-taggart)).

1.0.0

We are happy to have reached the point of releasing “Version 1.0.0” of `scores`. While we look forward to many version increments to come, version 1.0.0 represents a milestone. It signifies a stabilisation of the API, and marks a turning point from the initial construction period. We have also published a [paper](https://doi.org/10.21105/joss.06889) in the Journal of Open Source Software (see citation further below).

From this point forward, `scores` will be following the [Semantic Versioning Specification](https://semver.org/) (SemVer) in its release management.

This is a good moment to acknowledge and thank the contributors that helped us reach this point. They are: Tennessee Leeuwenburg, Nicholas Loveday, Elizabeth E. Ebert, Harrison Cook, Mohammadreza Khanarmuei, Robert J. Taggart, Nikeeth Ramanathan, Maree Carroll, Stephanie Chong, Aidan Griffiths and John Sharples.

Please consider a citation of our paper if you use our code. The citation is:

Leeuwenburg, T., Loveday, N., Ebert, E. E., Cook, H., Khanarmuei, M., Taggart, R. J., Ramanathan, N., Carroll, M., Chong, S., Griffiths, A., & Sharples, J. (2024). scores: A Python package for verifying and evaluating models and predictions with xarray. *Journal of Open Source Software, 9*(99), 6889. [https://doi.org/10.21105/joss.06889](https://doi.org/10.21105/joss.06889)

BibTeX:

article{Leeuwenburg_scores_A_Python_2024,
author = {Leeuwenburg, Tennessee and Loveday, Nicholas and Ebert, Elizabeth E. and Cook, Harrison and Khanarmuei, Mohammadreza and Taggart, Robert J. and Ramanathan, Nikeeth and Carroll, Maree and Chong, Stephanie and Griffiths, Aidan and Sharples, John},
doi = {10.21105/joss.06889},
journal = {Journal of Open Source Software},
month = jul,
number = {99},
pages = {6889},
title = {{scores: A Python package for verifying and evaluating models and predictions with xarray}},
url = {https://joss.theoj.org/papers/10.21105/joss.06889},
volume = {9},
year = {2024}
}


For the full details of all changes in this release, see the [GitHub commit history](https://github.com/nci/scores/compare/0.9.3...1.0.0).

0.9.3

For the full details of all changes in this release, see the [GitHub commit history](https://github.com/nci/scores/compare/0.9.2...0.9.3). Below are the changes we think users may wish to be aware of.

Breaking Changes

- Renamed and relocated function `scores.continuous.correlation` to `scores.continuous.correlation.pearsonr`. See [PR 583](https://github.com/nci/scores/pull/583) by [nicholasloveday](https://github.com/nicholasloveday).

Documentation

- Added "Dimension Handling" tutorial, which describes reducing and preserving dimensions. See [PR 589](https://github.com/nci/scores/pull/589) by [nicholasloveday](https://github.com/nicholasloveday).
- Updated "Detailed Installation Guide" with information on installing kernels in a Jupyter environment. See [PR 586](https://github.com/nci/scores/pull/586) by [tennlee](https://github.com/tennlee) and [PR #587](https://github.com/nci/scores/pull/587) by [Steph-Chong](https://github.com/Steph-Chong).

Internal Changes

- Introduced pinned versions for dependencies on main. See [PR 580](https://github.com/nci/scores/pull/580) by [tennlee](https://github.com/tennlee).

0.9.2

**Full Changelog**: https://github.com/nci/scores/compare/0.9.1...0.9.2

Page 1 of 4

© 2024 Safety CLI Cybersecurity Inc. All Rights Reserved.