Releases: Ouranosinc/xclim
Releases · Ouranosinc/xclim
v0.10.6-beta
Bump version: 0.10.5-beta → 0.10.6-beta
v0.10.5-beta
bump version: v0.10.4-beta to v0.10.5-beta
v0.10.4-beta
Bump version: 0.10.3-beta → 0.10.4-beta
v0.10.3-beta
Bump version: 0.10.2-beta → 0.10.3-beta
v0.10.2-beta
- Added utilities with ensemble, run length, and subset algorithms to the documentation.
v0.10.1-beta
- Migrated to a
major.minor.patch-release
semantic versioning system. - Removed attributes in netCDF output from Indicators that are not in the CF-convention.
- Added
fit
indicator to fit the parameters of a distribution to a series.
v0.10-beta
- Remove support for Python 2 compatibility
- Added support for period of the year subsetting in
checks.missing_any
. - Allow passing positive longitude values when subsetting data with negative longitudes
- Improved runlength calculations for small grid size arrays via
ufunc_1dim
flag - Indicator class has
var_name
attribute, instead of usingidentifier
to name output variables.
v0.9-beta
This is a significant jump in the release. Many modifications have been made and will be added to the documentation in the coming days. Among the many changes:
- New indices have been added with documentation and call examples
- Run_length based operations have been optimized
- Support for CF non-standard calendars
- Automated/improved unit conversion and management via pint library
- Added ensemble utilities for creation and analysis of muti-model climate ensembles
- Added subsetting utilities for spatio-temporal subsets of xarray data objects
- Added streamflow indicators
- Refactoring of the code : separation of indices.py into a directory with sub-files (simple, threshold and multivariate); ensembles and subset utilities separated into distinct modules (pulled from utils.py)
- Indicators are now split into packages named by realms. import xclim.atmos to load indicators related to atmospheric variables.
v0.8-beta
This is a testing release. No significant changes have been made since v0.7-beta
v0.7-beta
- Support for resampling of data structured using non-standard CF-Time calendars.
- Added several ICCLIM and other indicators.
- Dropped support for Python 3.4.
- Now under Apache v2.0 license.
- Stable PyPI-based dependencies.
- Dask optimizations for better memory management.
- Introduced class-based indicator calculations with data integrity verification and CF-Compliant-like metadata writing functionality.
Class-based indicators are new methods that allow index calculation with error-checking and provide on-the-fly metadata checks for CF-Compliant (and CF-compliant-like) data that are passed to them. When written to NetCDF, outputs of these indicators will append appropriate metadata based on the indicator, threshold values, moving window length, and time period / resampling frequency examined.