Useful Search Notes: Henry Schreiner gives a tutorial for High Performance Python as part of the Andrzej Novak describes the mplhep library for adding standard HEP plot styles to MatplotLib during the
Pyhep 2020 Smodels - Overview Reference Overview
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Matthew Feickert gives a tutorial on using pyhf for accelerating analyses and preserving likelihoods. Andrzej Novak describes the mplhep library for adding standard HEP plot styles to MatplotLib during the
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Henry Schreiner gives a tutorial for High Performance Python as part of the This talk will cover the the best practices of making a highly compatible and installable Python package based on the Scikit-HEP ...
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- Henry Schreiner gives a tutorial for High Performance Python as part of the
- Andrzej Novak describes the mplhep library for adding standard HEP plot styles to MatplotLib during the
- Matthew Feickert gives a tutorial on using pyhf for accelerating analyses and preserving likelihoods.
- This talk will cover the the best practices of making a highly compatible and installable Python package based on the Scikit-HEP ...
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