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RegressionPyTorch.py File Reference

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namespace  RegressionPyTorch
 

Detailed Description

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This tutorial shows how to do regression in TMVA with neural networks trained with PyTorch.

# PyTorch has to be imported before ROOT to avoid crashes because of clashing
# std::regexp symbols that are exported by cppyy.
# See also: https://github.com/wlav/cppyy/issues/227
import torch
from torch import nn
from ROOT import TMVA, TFile, TTree, TCut
from subprocess import call
from os.path import isfile
# Setup TMVA
# create factory without output file since it is not needed
factory = TMVA.Factory('TMVARegression',
'!V:!Silent:Color:DrawProgressBar:Transformations=D,G:AnalysisType=Regression')
# Load data
data = TFile.Open("http://root.cern.ch/files/tmva_reg_example.root", "CACHEREAD")
if data is None:
raise FileNotFoundError("Input file cannot be downloaded - exit")
tree = data.Get('TreeR')
dataloader = TMVA.DataLoader('dataset')
for branch in tree.GetListOfBranches():
name = branch.GetName()
if name != 'fvalue':
dataloader.AddVariable(name)
dataloader.AddTarget('fvalue')
dataloader.AddRegressionTree(tree, 1.0)
dataloader.PrepareTrainingAndTestTree(TCut(''),
'nTrain_Regression=4000:SplitMode=Random:NormMode=NumEvents:!V')
# Generate model
# Define model
model = nn.Sequential()
model.add_module('linear_1', nn.Linear(in_features=2, out_features=64))
model.add_module('relu', nn.Tanh())
model.add_module('linear_2', nn.Linear(in_features=64, out_features=1))
# Construct loss function and Optimizer.
loss = torch.nn.MSELoss()
optimizer = torch.optim.SGD
# Define train function
def train(model, train_loader, val_loader, num_epochs, batch_size, optimizer, criterion, save_best, scheduler):
trainer = optimizer(model.parameters(), lr=0.01)
schedule, schedulerSteps = scheduler
best_val = None
for epoch in range(num_epochs):
# Training Loop
# Set to train mode
model.train()
running_train_loss = 0.0
running_val_loss = 0.0
for i, (X, y) in enumerate(train_loader):
trainer.zero_grad()
output = model(X)
train_loss = criterion(output, y)
train_loss.backward()
trainer.step()
# print train statistics
running_train_loss += train_loss.item()
if i % 32 == 31: # print every 32 mini-batches
print("[{}, {}] train loss: {:.3f}".format(epoch+1, i+1, running_train_loss / 32))
running_train_loss = 0.0
if schedule:
schedule(optimizer, epoch, schedulerSteps)
# Validation Loop
# Set to eval mode
model.eval()
with torch.no_grad():
for i, (X, y) in enumerate(val_loader):
output = model(X)
val_loss = criterion(output, y)
running_val_loss += val_loss.item()
curr_val = running_val_loss / len(val_loader)
if save_best:
if best_val==None:
best_val = curr_val
best_val = save_best(model, curr_val, best_val)
# print val statistics per epoch
print("[{}] val loss: {:.3f}".format(epoch+1, curr_val))
running_val_loss = 0.0
print("Finished Training on {} Epochs!".format(epoch+1))
return model
# Define predict function
def predict(model, test_X, batch_size=32):
# Set to eval mode
model.eval()
test_dataset = torch.utils.data.TensorDataset(torch.Tensor(test_X))
test_loader = torch.utils.data.DataLoader(test_dataset, batch_size=batch_size, shuffle=False)
predictions = []
with torch.no_grad():
for i, data in enumerate(test_loader):
X = data[0]
outputs = model(X)
predictions.append(outputs)
preds = torch.cat(predictions)
return preds.numpy()
load_model_custom_objects = {"optimizer": optimizer, "criterion": loss, "train_func": train, "predict_func": predict}
# Store model to file
# Convert the model to torchscript before saving
m = torch.jit.script(model)
torch.jit.save(m, "modelRegression.pt")
print(m)
# Book methods
factory.BookMethod(dataloader, TMVA.Types.kPyTorch, 'PyTorch',
'H:!V:VarTransform=D,G:FilenameModel=modelRegression.pt:FilenameTrainedModel=trainedModelRegression.pt:NumEpochs=20:BatchSize=32')
factory.BookMethod(dataloader, TMVA.Types.kBDT, 'BDTG',
'!H:!V:VarTransform=D,G:NTrees=1000:BoostType=Grad:Shrinkage=0.1:UseBaggedBoost:BaggedSampleFraction=0.5:nCuts=20:MaxDepth=4')
# Run TMVA
factory.TrainAllMethods()
factory.TestAllMethods()
factory.EvaluateAllMethods()
Option_t Option_t TPoint TPoint const char GetTextMagnitude GetFillStyle GetLineColor GetLineWidth GetMarkerStyle GetTextAlign GetTextColor GetTextSize void char Point_t Rectangle_t WindowAttributes_t Float_t Float_t Float_t Int_t Int_t UInt_t UInt_t Rectangle_t Int_t Int_t Window_t TString Int_t GCValues_t GetPrimarySelectionOwner GetDisplay GetScreen GetColormap GetNativeEvent const char const char dpyName wid window const char font_name cursor keysym reg const char only_if_exist regb h Point_t winding char text const char depth char const char Int_t count const char ColorStruct_t color const char Pixmap_t Pixmap_t PictureAttributes_t attr const char char ret_data h unsigned char height h Atom_t Int_t ULong_t ULong_t unsigned char prop_list Atom_t Atom_t Atom_t Time_t UChar_t len
Option_t Option_t TPoint TPoint const char GetTextMagnitude GetFillStyle GetLineColor GetLineWidth GetMarkerStyle GetTextAlign GetTextColor GetTextSize void char Point_t Rectangle_t WindowAttributes_t Float_t Float_t Float_t Int_t Int_t UInt_t UInt_t Rectangle_t Int_t Int_t Window_t TString Int_t GCValues_t GetPrimarySelectionOwner GetDisplay GetScreen GetColormap GetNativeEvent const char const char dpyName wid window const char font_name cursor keysym reg const char only_if_exist regb h Point_t winding char text const char depth char const char Int_t count const char ColorStruct_t color const char Pixmap_t Pixmap_t PictureAttributes_t attr const char char ret_data h unsigned char height h Atom_t Int_t ULong_t ULong_t unsigned char prop_list Atom_t Atom_t Atom_t Time_t format
A specialized string object used for TTree selections.
Definition TCut.h:25
static Bool_t SetCacheFileDir(ROOT::Internal::TStringView cacheDir, Bool_t operateDisconnected=kTRUE, Bool_t forceCacheread=kFALSE)
Definition TFile.h:323
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.
Definition TFile.cxx:4053
This is the main MVA steering class.
Definition Factory.h:80
static void PyInitialize()
Initialize Python interpreter.
static Tools & Instance()
Definition Tools.cxx:71
Date
2020
Author
Anirudh Dagar aniru.nosp@m.dhda.nosp@m.gar6@.nosp@m.gmai.nosp@m.l.com - IIT, Roorkee

Definition in file RegressionPyTorch.py.