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Reference Guide
df014_CSVDataSource.py
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1## \file
2## \ingroup tutorial_dataframe
3## \notebook -draw
4## This tutorial illustrates how use the RDataFrame in combination with a
5## RDataSource. In this case we use a TCsvDS. This data source allows to read
6## a CSV file from a RDataFrame.
7## As a result of running this tutorial, we will produce plots of the dimuon
8## spectrum starting from a subset of the CMS collision events of Run2010B.
9## Dataset Reference:
10## McCauley, T. (2014). Dimuon event information derived from the Run2010B
11## public Mu dataset. CERN Open Data Portal.
12## DOI: [10.7483/OPENDATA.CMS.CB8H.MFFA](http://opendata.cern.ch/record/700).
13##
14## \macro_code
15## \macro_image
16##
17## \date October 2017
18## \author Enric Tejedor
19
20import ROOT
21import os
22
23# Let's first create a RDF that will read from the CSV file.
24# The types of the columns will be automatically inferred.
25fileNameUrl = "http://root.cern.ch/files/tutorials/df014_CsvDataSource_MuRun2010B.csv"
26fileName = "df014_CsvDataSource_MuRun2010B_py.csv"
27if not os.path.isfile(fileName):
28 ROOT.TFile.Cp(fileNameUrl, fileName)
29
30MakeCsvDataFrame = ROOT.RDF.MakeCsvDataFrame
31df = MakeCsvDataFrame(fileName)
32
33# Now we will apply a first filter based on two columns of the CSV,
34# and we will define a new column that will contain the invariant mass.
35# Note how the new invariant mass column is defined from several other
36# columns that already existed in the CSV file.
37filteredEvents = df.Filter("Q1 * Q2 == -1") \
38 .Define("m", "sqrt(pow(E1 + E2, 2) - (pow(px1 + px2, 2) + pow(py1 + py2, 2) + pow(pz1 + pz2, 2)))")
39
40# Next we create a histogram to hold the invariant mass values and we draw it.
41invMass = filteredEvents.Histo1D(("invMass", "CMS Opendata: #mu#mu mass;#mu#mu mass [GeV];Events", 512, 2, 110), "m")
42
43c = ROOT.TCanvas()
44c.SetLogx()
45c.SetLogy()
46invMass.Draw()
47
48# We will now produce a plot also for the J/Psi particle. We will plot
49# on the same canvas the full spectrum and the zoom in the J/psi particle.
50# First we will create the full spectrum histogram from the invariant mass
51# column, using a different histogram model than before.
52fullSpectrum = filteredEvents.Histo1D(("Spectrum", "Subset of CMS Run 2010B;#mu#mu mass [GeV];Events", 1024, 2, 110), "m")
53
54# Next we will create the histogram for the J/psi particle, applying first
55# the corresponding cut.
56jpsiLow = 2.95
57jpsiHigh = 3.25
58jpsiCut = 'm < %s && m > %s' % (jpsiHigh, jpsiLow)
59jpsi = filteredEvents.Filter(jpsiCut) \
60 .Histo1D(("jpsi", "Subset of CMS Run 2010B: J/#psi window;#mu#mu mass [GeV];Events", 128, jpsiLow, jpsiHigh), "m")
61
62# Finally we draw the two histograms side by side.
63dualCanvas = ROOT.TCanvas("DualCanvas", "DualCanvas", 800, 512)
64dualCanvas.Divide(2, 1)
65leftPad = dualCanvas.cd(1)
66leftPad.SetLogx()
67leftPad.SetLogy()
68fullSpectrum.Draw("Hist")
69dualCanvas.cd(2)
70jpsi.Draw("HistP")
RDataFrame MakeCsvDataFrame(std::string_view fileName, bool readHeaders=true, char delimiter=',', Long64_t linesChunkSize=-1LL)
Factory method to create a CSV RDataFrame.
Definition: RCsvDS.cxx:475