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import sys |
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#load config |
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config = BetterConfigParser() |
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config.read('./config') |
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#get locations: |
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Wdir=config.get('Directories','Wdir') |
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anaTag=config.get('Analysis','tag') |
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def getScale(job,rescale,subsample=-1): |
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input = TFile.Open(job.getpath()) |
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def getScale(job,path,config,rescale,subsample=-1): |
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anaTag=config.get('Analysis','tag') |
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input = TFile.Open(path+'/'+job.getpath()) |
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CountWithPU = input.Get("CountWithPU") |
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CountWithPU2011B = input.Get("CountWithPU2011B") |
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#print lumi*xsecs[i]/hist.GetBinContent(1) |
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theScale = float(job.lumi)*xsec*sf/(CountWithPU.GetBinContent(1))*rescale/float(job.split) |
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return theScale |
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def getHistoFromTree(job,options,rescale=1,subsample=-1): |
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def getHistoFromTree(job,path,config,options,rescale=1,subsample=-1,which_weightF='weightF'): |
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#print job.getpath() |
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#print options |
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treeVar=options[0] |
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if subsample>-1: |
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name=job.subnames[subsample] |
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nBins=int(options[3]) |
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xMin=float(options[4]) |
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xMax=float(options[5]) |
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addOverFlow=eval(config.get('Plot_general','addOverFlow')) |
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if job.type != 'DATA': |
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cutcut=config.get('Cuts',options[7]) |
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if subsample>0: |
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|
54 |
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if type(options[7])==str: |
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cutcut=config.get('Cuts',options[7]) |
56 |
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elif type(options[7])==list: |
57 |
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cutcut=config.get('Cuts',options[7][0]) |
58 |
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cutcut=cutcut.replace(options[7][1],options[7][2]) |
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#print cutcut |
60 |
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if subsample>-1: |
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treeCut='%s & %s & EventForTraining == 0'%(cutcut,job.subcuts[subsample]) |
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else: |
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treeCut='%s & EventForTraining == 0'%(cutcut) |
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elif job.type == 'DATA': |
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cutcut=config.get('Cuts',options[8]) |
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treeCut='%s & EventForTraining == 0'%(cutcut) |
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treeCut='%s'%(cutcut) |
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69 |
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70 |
< |
input = TFile.Open(job.getpath(),'read') |
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input = TFile.Open(path+'/'+job.getpath(),'read') |
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Tree = input.Get(job.tree) |
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#Tree=tmpTree.CloneTree() |
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#Tree.SetDirectory(0) |
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#Tree=tmpTree.Clone() |
77 |
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weightF=config.get('Weights','weightF') |
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weightF=config.get('Weights',which_weightF) |
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#hTree = ROOT.TH1F('%s'%name,'%s'%title,nBins,xMin,xMax) |
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#hTree.SetDirectory(0) |
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#hTree.Sumw2() |
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#print job.name + ' Sumw2', hTree.GetEntries() |
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106 |
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if job.type != 'DATA': |
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ScaleFactor = getScale(job,rescale,subsample) |
107 |
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ScaleFactor = getScale(job,path,config,rescale,subsample) |
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if ScaleFactor != 0: |
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hTree.Scale(ScaleFactor) |
110 |
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|
111 |
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if addOverFlow: |
112 |
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print 'Adding overflow' |
113 |
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uFlow = hTree.GetBinContent(0)+hTree.GetBinContent(1) |
114 |
+ |
oFlow = hTree.GetBinContent(hTree.GetNbinsX()+1)+hTree.GetBinContent(hTree.GetNbinsX()) |
115 |
+ |
uFlowErr = ROOT.TMath.Sqrt(ROOT.TMath.Power(hTree.GetBinError(0),2)+ROOT.TMath.Power(hTree.GetBinError(1),2)) |
116 |
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oFlowErr = ROOT.TMath.Sqrt(ROOT.TMath.Power(hTree.GetBinError(hTree.GetNbinsX()),2)+ROOT.TMath.Power(hTree.GetBinError(hTree.GetNbinsX()+1),2)) |
117 |
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hTree.SetBinContent(1,uFlow) |
118 |
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hTree.SetBinContent(hTree.GetNbinsX(),oFlow) |
119 |
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hTree.SetBinError(1,uFlowErr) |
120 |
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hTree.SetBinError(hTree.GetNbinsX(),oFlowErr) |
121 |
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|
122 |
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123 |
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print '\t-->import %s\t Integral: %s'%(job.name,hTree.Integral()) |
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hTree.SetDirectory(0) |
126 |
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input.Close() |
127 |
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116 |
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128 |
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return hTree, group |
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151 |
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histos=ordnung |
152 |
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typs=ordnungtyp |
153 |
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154 |
+ |
print typs |
155 |
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|
156 |
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for k in range(0,len(num)): |
157 |
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for m in range(0,num[k]): |
158 |
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if m > 0: |