Ejemplo n.º 1
0
print '<Main> Vocabulary size: objects %d | text %d' % (obj_vocab_size,
                                                        text_vocab_size)
sys.stdout.flush()

######## Instruction model ########

goal_obs = pickle.load(
    open(
        os.path.join(args.load_path + 'goal_obs' + str(args.num_worlds) +
                     '.p'), 'r'))
indices_obs = pickle.load(
    open(
        os.path.join(args.load_path + 'indices_obs' + str(args.num_worlds) +
                     '.p'), 'r'))
targets = pickle.load(
    open(os.path.join(args.load_path, 'targets' + str(args.num_worlds) + '.p'),
         'r'))
rank = targets.size(1)

text_model = models.TextModel(text_vocab_size, args.lstm_inp, args.lstm_hid,
                              args.lstm_layers, args.lstm_out)
object_model = models.ObjectModel(obj_vocab_size, args.obj_embed,
                                  goal_obs[0].size(), args.lstm_out)
psi = models.Psi(text_model, object_model, args.lstm_out, args.goal_hid,
                 rank).cuda()
psi = pipeline.Trainer(psi, args.lr, args.batch_size)

print '\n<Main> Training psi: (', goal_obs.size(), 'x', indices_obs.size(
), ') -->', targets.size()
psi.train((goal_obs, indices_obs), targets, iters=args.psi_iters)
Ejemplo n.º 2
0
                                      size_per_dataset=args.num_train)
train_loader = torch.utils.data.DataLoader(train_set,
                                           batch_size=32,
                                           num_workers=4,
                                           shuffle=True)

val_set = pipeline.IntrinsicDataset(args.data_path,
                                    args.val_sets,
                                    args.intrinsics,
                                    size_per_dataset=10)
val_loader = torch.utils.data.DataLoader(val_set,
                                         batch_size=32,
                                         num_workers=4,
                                         shuffle=False)

trainer = pipeline.Trainer(shader, train_loader, args.lr)

for epoch in range(args.num_epochs):
    print("<Main> Epoch {}".format(epoch))

    ## save model and state
    torch.save(shader, open(os.path.join(args.save_path, "model.t7"), "wb"))
    torch.save(shader.state_dict(),
               open(os.path.join(args.save_path, "state.pth"), "wb"))

    ## visualize predictions of shader
    save_path = os.path.join(args.save_path, str(epoch) + ".png")
    pipeline.visualize_shader(shader, val_loader, save_path)

    ## one sweep through the dataset
    trainer.train()
Ejemplo n.º 3
0
print '<Main> Training: (', train_layouts.size(), 'x', train_objects.size(), 'x', train_indices.size(), ') -->', train_values.size()
print '<Main> test     : (', test_layouts.size(), 'x', test_objects.size(), 'x', test_indices.size(), ') -->', test_values.size()


#################################
############ Training ###########
#################################

print '\n<Main> Initializing model: {}'.format(args.model)
model = models.init(args, layout_vocab_size, object_vocab_size, text_vocab_size)

train_inputs = (train_layouts, train_objects, train_indices)
test_inputs = (test_layouts, test_objects, test_indices)

print '<Main> Training model'
trainer = pipeline.Trainer(model, args.lr, args.batch_size)
trainer.train(train_inputs, train_values, test_inputs, test_values, iters=args.iters)


#################################
######## Save predictions #######
#################################

## make logging directories
pickle_path = os.path.join(args.save_path, 'pickle')
utils.mkdir(args.save_path)
utils.mkdir(pickle_path)

print '\n<Main> Saving model to {}'.format(args.save_path)
## save model
torch.save(model, os.path.join(args.save_path, 'model.pth'))
Ejemplo n.º 4
0
def train(model, inputs, targets, lr, batch_size, iters):
    model = pipeline.Trainer(model, lr, batch_size)
    model.train(inputs, targets, iters=iters)
    return model