This tutorial parses the input model and runs the inference using ROOT's JITing capability.
from os.path import exists
import ROOT
modelFile = "HiggsModel.keras"
modelName = "HiggsModel"
if not exists(modelFile):
raise FileNotFoundError("You need to run TMVA_Higgs_Classification.C to generate the Keras trained model")
model = ROOT.TMVA.Experimental.SOFIE.PyKeras.Parse(modelFile)
model.Generate()
model.OutputGenerated("Higgs_trained_model_generated.hxx")
model.PrintGenerated()
print("compiling SOFIE model and functor....")
ROOT.gInterpreter.Declare('#include "Higgs_trained_model_generated.hxx"')
ROOT.gInterpreter.Declare('auto sofie_functor = TMVA::Experimental::SofieFunctor<7,TMVA_SOFIE_'+modelName+'::Session>(0,"Higgs_trained_model_generated.dat");')
inputFile = str(ROOT.gROOT.GetTutorialDir()) + "/machine_learning/data/Higgs_data.root"
h1 = df1.Define("DNN_Value", "sofie_functor(rdfslot_,m_jj, m_jjj, m_lv, m_jlv, m_bb, m_wbb, m_wwbb)").Histo1D(("h_sig", "", 100, 0, 1),"DNN_Value")
h2 = df2.Define("DNN_Value", "sofie_functor(rdfslot_,m_jj, m_jjj, m_lv, m_jlv, m_bb, m_wbb, m_wwbb)").Histo1D(("h_bkg", "", 100, 0, 1),"DNN_Value")
print("Number of signal entries",h1.GetEntries())
print("Number of background entries",h2.GetEntries())
h1.SetLineColor("kRed")
h2.SetLineColor("kBlue")
c1 = ROOT.TCanvas()
ROOT.gStyle.SetOptStat(0)
h2.DrawClone()
h1.DrawClone("SAME")
ROOT's RDataFrame offers a modern, high-level interface for analysis of data stored in TTree ,...
unsigned int RunGraphs(std::vector< RResultHandle > handles)
Run the event loops of multiple RDataFrames concurrently.