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train_synthetic_perturb.py
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# This script only modifies the training, so that higher len programs are
# trained better.
"""
This trains network to predict stop symbol for variable length programs.
Note that there is no padding done in RNN in contrast to traditional RNN for
variable length programs. This is mainly because of computational
efficiency of forward pass, that is, each batch contains only
programs of similar length, that implies that the program of smaller lengths
are not processed by RNN for unnecessary time steps.
Losses from all batches of different time-lengths are combined to compute
gradient and updated in the network in one go. This ensures that every update to
the network has equal contribution (or weighted by the ratio of their
batch sizes) coming from programs of different lengths.
"""
import numpy as np
import torch
import torch.optim as optim
from torch.autograd.variable import Variable
from src.Models.loss import losses_joint
from src.Models.models_perturb import Encoder
from src.Models.models_perturb import ImitateJoint, ParseModelOutput
from src.utils import read_config
from src.utils.generators.mixed_len_generator_perturb import MixedGenerateData
from src.utils.learn_utils import LearningRate
from src.utils.train_utils import prepare_input_op, cosine_similarity, chamfer
import torch.nn.functional as F
from globals import device
config = read_config.Config("config_synthetic.yml")
print(config.config, flush=True)
# Encoder
encoder_net = Encoder(config.encoder_drop)
encoder_net.cuda()
# data_labels_paths = {3: "data/synthetic/one_op/expressions.txt",
# 5: "data/synthetic/two_ops/expressions.txt",
# 7: "data/synthetic/three_ops/expressions.txt",
# 9: "data/synthetic/four_ops/expressions.txt",
# 11: "data/synthetic/five_ops/expressions.txt",
# 13: "data/synthetic/six_ops/expressions.txt"}
# # first element of list is num of training examples, and second is number of
# # testing examples.
# proportion = config.proportion # proportion is in percentage. vary from [1, 100].
# dataset_sizes = {
# 3: [25000, 50 * proportion],
# 5: [100000, 500 * proportion],
# 7: [150000, 500 * proportion],
# 9: [250000, 500 * proportion],
# 11: [350000, 1000 * proportion],
# 13: [350000, 1000 * proportion]
# }
# dataset_sizes = {k: [x // 1000 for x in v] for k, v in dataset_sizes.items()}
data_labels_paths = {3: "data/synthetic/one_op/expressions.txt",
5: "data/synthetic/two_ops/expressions.txt",
7: "data/synthetic/three_ops/expressions.txt"}
# first element of list is num of training examples, and second is number of
# testing examples.
proportion = config.proportion # proportion is in percentage. vary from [1, 100].
dataset_sizes = {
3: [proportion * 250, proportion * 50],
5: [proportion * 1000, proportion * 100],
7: [proportion * 1500, proportion * 200]
}
dataset_sizes = {k: [x // 100 for x in v] for k, v in dataset_sizes.items()}
generator = MixedGenerateData(
data_labels_paths=data_labels_paths,
batch_size=config.batch_size,
canvas_shape=config.canvas_shape)
imitate_net = ImitateJoint(
hd_sz=config.hidden_size,
input_size=config.input_size,
encoder=encoder_net,
mode=config.mode,
num_draws=len(generator.unique_draw),
canvas_shape=config.canvas_shape,
teacher_force=True)
imitate_net.cuda()
# if config.preload_model:
# print("pre loading model")
# pretrained_dict = torch.load("trained_models/small_test_perturb.pth")
# imitate_net_dict = imitate_net.state_dict()
# pretrained_dict = {
# k: v
# for k, v in pretrained_dict.items() if k in imitate_net_dict
# }
# imitate_net_dict.update(pretrained_dict)
# imitate_net.load_state_dict(imitate_net_dict)
for param in imitate_net.parameters():
param.requires_grad = True
for param in encoder_net.parameters():
param.requires_grad = True
max_len = max(dataset_sizes.keys())
optimizer = optim.Adam(
[para for para in imitate_net.parameters() if para.requires_grad],
weight_decay=config.weight_decay,
lr=config.lr)
reduce_plat = LearningRate(
optimizer,
init_lr=config.lr,
lr_dacay_fact=0.2,
patience=config.patience)
types_prog = len(dataset_sizes)
train_gen_objs = {}
test_gen_objs = {}
config.train_size = sum(dataset_sizes[k][0] for k in dataset_sizes.keys())
config.test_size = sum(dataset_sizes[k][1] for k in dataset_sizes.keys())
total_importance = sum(k for k in dataset_sizes.keys())
for k in dataset_sizes.keys():
test_batch_size = int(config.batch_size * dataset_sizes[k][1] / \
config.test_size)
# Acts as a curriculum learning
train_batch_size = config.batch_size // types_prog
train_gen_objs[k] = generator.get_train_data(
train_batch_size,
k,
num_train_images=dataset_sizes[k][0],
jitter_program=False)
test_gen_objs[k] = generator.get_test_data(
test_batch_size,
k,
num_train_images=dataset_sizes[k][0],
num_test_images=dataset_sizes[k][1],
jitter_program=False)
prev_test_loss = 1e20
prev_test_cd = 1e20
prev_test_iou = 0
for epoch in range(config.epochs):
train_loss = 0
Accuracies = []
imitate_net.train()
for batch_idx in range(config.train_size //
(config.batch_size * config.num_traj)):
optimizer.zero_grad()
loss = Variable(torch.zeros(1)).cuda().data
loss_p = Variable(torch.zeros(1)).cuda().data
loss_t = Variable(torch.zeros(1)).cuda().data
acc = 0
for _ in range(config.num_traj):
for k in dataset_sizes.keys():
data, labels, perturbs = next(train_gen_objs[k])
data = data[:, :, 0:1, :, :]
one_hot_labels = prepare_input_op(labels,
len(generator.unique_draw))
one_hot_labels = Variable(
torch.from_numpy(one_hot_labels)).cuda()
data = Variable(torch.from_numpy(data)).cuda()
labels = Variable(torch.from_numpy(labels)).cuda()
outputs, perturb_out = imitate_net([data, one_hot_labels, k])
perturbs = torch.from_numpy(perturbs).to(device)
perturb_out = perturb_out.permute(1, 0, 2)
# mask off ops and stop token
perturb_loss = F.mse_loss(perturbs[labels < 396], perturb_out[labels < 396]) / len(dataset_sizes.keys()) / config.num_traj
#perturb_loss = F.mse_loss(perturbs, perturb_out) / len(dataset_sizes.keys()) / config.num_traj
if not imitate_net.tf:
acc += float((torch.argmax(torch.stack(outputs), dim=2).permute(1, 0) == labels).float().sum()) \
/ (labels.shape[0] * labels.shape[1]) / types_prog / config.num_traj
else:
acc += float((torch.argmax(outputs, dim=2).permute(1, 0) == labels).float().sum()) \
/ (labels.shape[0] * labels.shape[1]) / types_prog / config.num_traj
loss_k_token = ((losses_joint(outputs, labels, time_steps=k + 1) / (
k + 1)) / len(dataset_sizes.keys()) / config.num_traj)
#loss_k = loss_k_token + perturb_loss
loss_k = loss_k_token
loss_k.backward()
loss += loss_k.data
loss_p += perturb_loss.data
loss_t += loss_k_token.data
del loss_k
optimizer.step()
train_loss += loss
print(f"batch {batch_idx} train loss: {loss.cpu().numpy()}, token loss: {loss_t.cpu().numpy()}, perturb loss: {loss_p.cpu().numpy()}")
print(f"acc: {acc}")
mean_train_loss = train_loss / (config.train_size // (config.batch_size))
print(f"epoch {epoch} mean train loss: {mean_train_loss.cpu().numpy()}")
imitate_net.eval()
loss = Variable(torch.zeros(1)).cuda()
loss_p = Variable(torch.zeros(1)).cuda().data
loss_t = Variable(torch.zeros(1)).cuda().data
acc = 0
metrics = {"cos": 0, "iou": 0, "cd": 0}
IOU = 0
COS = 0
CD = 0
correct_programs = 0
pred_programs = 0
for batch_idx in range(config.test_size // (config.batch_size)):
parser = ParseModelOutput(generator.unique_draw, max_len // 2 + 1, max_len,
config.canvas_shape)
for k in dataset_sizes.keys():
with torch.no_grad():
data_, labels, perturbs = next(test_gen_objs[k])
one_hot_labels = prepare_input_op(labels, len(
generator.unique_draw))
one_hot_labels = Variable(torch.from_numpy(one_hot_labels)).cuda()
data = Variable(torch.from_numpy(data_)).cuda()
labels = Variable(torch.from_numpy(labels)).cuda()
test_outputs, perturb_outputs = imitate_net([data, one_hot_labels, k])
loss_token = (losses_joint(test_outputs, labels, time_steps=k + 1) /
(k + 1)) / types_prog
perturbs = torch.from_numpy(perturbs).to(device)
perturb_outputs = perturb_outputs.permute(1, 0, 2)
perturb_loss = F.mse_loss(perturbs[labels < 396], perturb_outputs[labels < 396]) / len(dataset_sizes.keys())
# perturb_loss = F.mse_loss(perturbs, perturb_outputs) / len(dataset_sizes.keys())
#loss += loss_token + perturb_loss
loss += loss_token
loss_t += loss_token
loss_p += perturb_loss
test_output, perturb_out = imitate_net.test([data, one_hot_labels, max_len])
acc += float((torch.argmax(torch.stack(test_output), dim=2)[:k].permute(1, 0) == labels[:, :-1]).float().sum()) \
/ (len(labels) * (k+1)) / types_prog / (config.test_size // config.batch_size)
pred_images, correct_prog, pred_prog = parser.get_final_canvas(
test_output, perturb_out, if_just_expressions=False, if_pred_images=True)
correct_programs += len(correct_prog)
pred_programs += len(pred_prog)
target_images = data_[-1, :, 0, :, :].astype(dtype=bool)
iou = np.sum(np.logical_and(target_images, pred_images),
(1, 2)) / \
np.sum(np.logical_or(target_images, pred_images),
(1, 2))
cos = cosine_similarity(target_images, pred_images)
CD += np.sum(chamfer(target_images, pred_images))
IOU += np.sum(iou)
COS += np.sum(cos)
metrics["iou"] = IOU / config.test_size
metrics["cos"] = COS / config.test_size
metrics["cd"] = CD / config.test_size
test_losses = loss.data
test_loss = test_losses.cpu().numpy() / (config.test_size //
(config.batch_size))
test_loss_t = loss_t.data.cpu().numpy() / (config.test_size //
(config.batch_size))
test_loss_p = loss_p.data.cpu().numpy() / (config.test_size //
(config.batch_size))
reduce_plat.reduce_on_plateu(metrics["cd"])
print("Epoch {}/{}=> train_loss: {}, iou: {}, cd: {}, test_mse: {}, test_acc: {}, token_loss: {}, perturb_loss: {}".format(epoch, config.epochs,
mean_train_loss.cpu().numpy(),
metrics["iou"], metrics["cd"], test_loss, acc, test_loss_t, test_loss_p))
print(f"CORRECT PROGRAMS: {correct_programs}")
print(f"PREDICTED PROGRAMS: {pred_programs}")
print(f"RATIO: {correct_programs/pred_programs}")
del test_losses, test_outputs
# if prev_test_cd > metrics["cd"]:
# print("Saving the Model weights based on CD", flush=True)
# torch.save(imitate_net.state_dict(),
# "trained_models/small_test.pth")
# prev_test_cd = metrics["cd"]