Implement WW (NLL) and ggWW (NNLO)k-factors in processor#107
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Implement WW (NLL) and ggWW (NNLO)k-factors in processor#107
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Hi @BlancoFS thanks for sharing this. I didn't follow closely the conversation on this but the proposed changes to the framework looks reasonable to me. I guess the plots you have shown yesterday were made with the scripts in this commit, or something really similar, right? I'll let @NTrevisani comment on the physics if needed. Many thanks! |
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Hi @squinto5, Indeed, the plots were made directly from the output of a postprocessing chain. |
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Implement qqWW and ggWW k-factor weights as processor modules to be run in post-processing campaigns. The modules are designed in such a way that weights are only defined for samples which name starts with "WWTo" and "GluGluto", respectively.
All the files attached correspond to 13 TeV corrections.
Tagging: @NTrevisani @squinto5