Releases: fact-project/aict-tools
Releases · fact-project/aict-tools
v0.22.1
v0.22.1
- fix for calculation of true disp to conform to the normal conventions.
Training and predictions worked before but was rotated 180 degrees to the usual definition
v0.22.0
v0.22.0
- Add support for ctapipe coordinate transformation in the training of disp regressors.
From now on, the configuration key disp_config.coordinate_transformatin
is required and can be either FACT
or CTA
.
If you want to use the CTA
coordinate trafo conventions, ctapipe
is required, use pip install aict-tools[cta]
to make sure, this is the case.
v0.21.0
v0.21.0
- Allow application of multiple cuts to the same variable in
aict_apply_cuts
, the old format is still supported, but new files should use a list of cuts instead of a dict:
Old:
selection:
width: ['<=', 20]
New:
selection:
- width: ['<=', 20]
- width: ['>=', 5] # now possible
- call tight_layout before saving plots in
aict_plot_*_performance
#113
- Add option for an alternative definition of the true value of disp, see #106
v0.20.4
v0.20.4
- Warning instead of error in case an empty feature generation config is given.
v0.20.3
v0.20.3
- Several fixes to make plots work with the matplotlib pgf backend
v0.20.1
v0.20.1
- Log ROC Aucs in aict_train_separation_model
- Officially support python 3.8
v0.20.0
v0.20.0
- aict-tools can now apply models stored using onnx or pmml. However, application of models stored to pickle is still the fastest option for most models.
v0.19.0
v0.19.0
- Fixing the configuration of the output names. These can now be set using
output_name:
in the models section
- Use onnxruntime v1.0
v0.18.3
v0.18.3
- Fix modification of input file timestamp in copy runs
- All but the
apply_
scripts should now not modify their input filestamps now
v0.18.2
v0.18.2
- Fix for apply_cuts: modification date of input file is not modified anymore