12from ROOT
import TMVA, TFile, TCut, gROOT
13from subprocess
import call
14from os.path
import isfile
16from tensorflow.keras.models
import Sequential
17from tensorflow.keras.layers
import Dense
18from tensorflow.keras.optimizers
import SGD
24 model.add(Dense(64, activation=
'tanh', input_dim=2))
25 model.add(Dense(1, activation=
'linear'))
28 model.compile(loss=
'mean_squared_error', optimizer=SGD(
29 learning_rate=0.01), weighted_metrics=[])
32 model.save(
'modelRegression.keras')
38 with TFile.Open(
'TMVA_Regression_Keras.root',
'RECREATE')
as output,
TFile.Open(str(gROOT.GetTutorialDir()) +
'/machine_learning/data/tmva_reg_example.root')
as data:
40 '!V:!Silent:Color:DrawProgressBar:Transformations=D,G:AnalysisType=Regression')
42 tree = data.Get(
'TreeR')
45 for branch
in tree.GetListOfBranches():
46 name = branch.GetName()
48 dataloader.AddVariable(name)
49 dataloader.AddTarget(
'fvalue')
51 dataloader.AddRegressionTree(tree, 1.0)
53 dataloader.PrepareTrainingAndTestTree(
TCut(
''),
54 'nTrain_Regression=1000:SplitMode=Random:NormMode=NumEvents:!V')
57 factory.BookMethod(dataloader, TMVA.Types.kPyKeras,
'PyKeras',
58 'H:!V:VarTransform=D,G:FilenameModel=modelRegression.keras:FilenameTrainedModel=trainedModelRegression.keras:NumEpochs=20:BatchSize=32')
59 factory.BookMethod(dataloader, TMVA.Types.kBDT,
'BDTG',
60 '!H:!V:VarTransform=D,G:NTrees=1000:BoostType=Grad:Shrinkage=0.1:UseBaggedBoost:BaggedSampleFraction=0.5:nCuts=20:MaxDepth=4')
63 factory.TrainAllMethods()
64 factory.TestAllMethods()
65 factory.EvaluateAllMethods()
68if __name__ ==
"__main__":
A specialized string object used for TTree selections.
static TFile * Open(const char *name, Option_t *option="", const char *ftitle="", Int_t compress=ROOT::RCompressionSetting::EDefaults::kUseCompiledDefault, Int_t netopt=0)
Create / open a file.
This is the main MVA steering class.
static void PyInitialize()
Initialize Python interpreter.