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# ------------------------------------------------------------------------
# Libraries
# ------------------------------------------------------------------------
# General libraries
import os
import sys
import random
from datetime import datetime
import time
import argparse
import json
# Deep learning libraries
import torch
from torch import nn
from torch.utils.data import DataLoader
from torch.optim.lr_scheduler import ReduceLROnPlateau
# Custom libraries
from utilities import *
from landmarks_datasets import *
from model.deep_learning import *
from model.models import *
# Set random seed
random.seed(42)
np.random.seed(42)
torch.manual_seed(42)
torch.cuda.manual_seed(42)
# ------------------------------------------------------------------------
# MAIN
# ------------------------------------------------------------------------
if __name__ == "__main__":
# Parse arguments from command line
parser = argparse.ArgumentParser()
parser.add_argument(
"-c",
"--config",
type=str,
default="downstream_task/config/config.json",
help="Path to the JSON config file."
)
parser.add_argument(
"-p",
"--load_path",
type=str,
default=None,
help="Path to the model to be loaded."
)
args = parser.parse_args()
config = json.load(open(args.config))
# Print system info
print("----------------------------------------- SYSTEM INFO -----------------------------------------")
print("Python version: {}".format(sys.version))
print("Pytorch version: {}".format(torch.__version__))
if "CUDA_VISIBLE_DEVICES" in os.environ:
GPU = os.environ["CUDA_VISIBLE_DEVICES"]
else:
GPU = config["gpu"]
os.environ["CUDA_VISIBLE_DEVICES"] = f"{GPU}"
device = f"cuda" if torch.cuda.is_available() else "cpu"
print(f"Torch GPU Name: {torch.cuda.get_device_name(0)}... Using GPU {GPU}" if device == "cuda" else "Torch GPU not available... Using CPU")
print("------------------------------------------------------------------------------------------------")
# -------------------------------------------- PATHS -------------
PREFIX = generate_path(config["experiment_path"])
log_file = f"{PREFIX}/experiments_results.txt"
DATASET_NAME = config["dataset"]["name"]
DATASET_PATH = os.path.join(config["dataset"]["path"], DATASET_NAME)
# -------------------------------------------- PARAMETERS -------------
# Dataset parameters
SIZE = tuple(config["dataset"]["image_size"])
NUM_CHANNELS = config["dataset"]["image_channels"]
SIGMA = config["dataset"]["sigma"]
TRAINING_SAMPLES = config["dataset"]["training_samples"]
PIN_MEMORY = config["dataset"]["pin_memory"]
NUM_WORKERS = 2 if config["dataset"]["num_workers"] == None else config["dataset"]["num_workers"]
# Model parameters
MODEL_NAME = config["model"]["name"]
SSL_MODELS = ["moco", "mocov2", "mocov3", "simclr", "simclrv2", "dino", "barlow_twins", "byol"]
if MODEL_NAME == "imagenet":
MODEL_NAME = "smpUnet"
elif MODEL_NAME == "ddpm":
pass
elif MODEL_NAME in SSL_MODELS:
NUM_CHANNELS = 3
else:
raise Exception("Model not found... Choose between: ddpm, imagenet, moco, mocov2, mocov3, simclr, simclrv2, dino, barlow_twins, byol")
BACKBONE_NAME = config["model"]["encoder"]
# Replace "efficientnet_b0" by "efficientnet-b0" and so on to match the model name
BACKBONE_NAME = BACKBONE_NAME.replace("_", "-") if "efficientnet" in BACKBONE_NAME else BACKBONE_NAME
PRETRAINED = config["training_protocol"]["scratch"]["apply"] == False
NUM_EPOCHS = config["model"]["epochs"]
BATCH_SIZE = config["dataset"]["batch_size"]
GRAD_ACC = config["dataset"]["grad_accumulation"]
LR = config["model"]["lr"] if PRETRAINED else config["model"]["lr"] / 0.1
OPTIMIZER = config["model"]["optimizer"]
SCHEDULER = config["model"]["scheduler"]
LOSS_FUNCTION = config["model"]["loss_function"]
PATIENCE = GRAD_ACC + 5
EARLY_STOPPING = PATIENCE * 2 + 1
print(f"Pretrained: {PRETRAINED} -> the actual learning rate is {LR}")
# ---------------------------------------------------------------- DATASET ---------
if DATASET_NAME == "chest":
train_dataset = Chest(prefix=DATASET_PATH, phase='train', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
val_dataset = Chest(prefix=DATASET_PATH, phase='validate', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
test_dataset = Chest(prefix=DATASET_PATH, phase='test', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
elif DATASET_NAME == "hand":
train_dataset = Hand(prefix=DATASET_PATH, phase='train', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
val_dataset = Hand(prefix=DATASET_PATH, phase='validate', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
test_dataset = Hand(prefix=DATASET_PATH, phase='test', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
elif DATASET_NAME == "cephalo":
train_dataset = Cephalo(prefix=DATASET_PATH, phase='train', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
val_dataset = Cephalo(prefix=DATASET_PATH, phase='validate', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
test_dataset = Cephalo(prefix=DATASET_PATH, phase='test', size=SIZE, num_channels=NUM_CHANNELS, sigma=SIGMA)
else:
raise Exception("Dataset not found")
NUM_LANDMARKS = train_dataset.num_landmarks
# ---------------------------------------------------------------- DATA LOADING ---------
# Randomly exclude images to reduce the number of samples in the training dataset
#random_indices = np.random.choice(len(train_dataset), TRAINING_SAMPLES, replace=False)
#print(random_indices)
#train_dataset.indexes = [train_dataset.indexes[i] for i in sorted(random_indices)]
if TRAINING_SAMPLES == "all":
pass
else:
assert len(train_dataset) >= int(TRAINING_SAMPLES), "The number of training samples is greater than the number of samples in the dataset"
train_dataset.indexes = train_dataset.indexes[:int(TRAINING_SAMPLES)]
# create dataloaders
train_dataloader = DataLoader(train_dataset, batch_size=BATCH_SIZE, shuffle=True, pin_memory=PIN_MEMORY, num_workers=NUM_WORKERS, drop_last=False)
val_dataloader = DataLoader(val_dataset, batch_size=BATCH_SIZE, shuffle=False, pin_memory=PIN_MEMORY, num_workers=NUM_WORKERS)
test_dataloader = DataLoader(test_dataset, batch_size=BATCH_SIZE, shuffle=False, pin_memory=PIN_MEMORY, num_workers=NUM_WORKERS)
# ---------------------------------------------------------------- LOG FILE ---------
# Print dataset and experiment info in log file
res_file = open(log_file, 'a')
print(f"\n\n\n {datetime.now()} ---------------------- {DATASET_NAME} -------------------------------------------", file=res_file)
print(f"SIZE: {SIZE} | BATCH: {BATCH_SIZE} | GRAD ACC: {GRAD_ACC} | SIGMA: {SIGMA} | LR: {LR} | CHANNELS: {NUM_CHANNELS} | Train Samples {TRAINING_SAMPLES}", file=res_file)
print(f"samples -> Train: {len(train_dataset)} | Val: {len(val_dataset)} | Test: {len(test_dataset)}", file=res_file)
print(f"dataloaders -> Train: {len(train_dataloader)} | Val: {len(val_dataloader)} | Test: {len(test_dataloader)}", file=res_file)
res_file.close()
print(f"\n\n\n {datetime.now()} ---------------------- {DATASET_NAME} -------------------------------------------")
print(f"SIZE: {SIZE} | BATCH: {BATCH_SIZE} | GRAD ACC: {GRAD_ACC} | SIGMA: {SIGMA} | LR: {LR} | CHANNELS: {NUM_CHANNELS} | Train Samples {TRAINING_SAMPLES}")
print(f"samples -> Train: {len(train_dataset)} | Val: {len(val_dataset)} | Test: {len(test_dataset)}")
print(f"dataloaders -> Train: {len(train_dataloader)} | Val: {len(val_dataloader)} | Test: {len(test_dataloader)}")
# ---------------------------------------------------------------- MODEL ---------
if MODEL_NAME == "smpUnet" and BACKBONE_NAME is not None:
if PRETRAINED == True and config["training_protocol"]["finetuning"]["resume"] == False:
model = smpUnet(
encoder_name=BACKBONE_NAME,
encoder_weights="imagenet",
in_channels=NUM_CHANNELS,
classes=NUM_LANDMARKS
).to(device)
model_name = f"{MODEL_NAME}/{model.encoder_name}/{model.encoder_weights}"
else:
model = smpUnet(
encoder_name=BACKBONE_NAME,
encoder_weights=None,
in_channels=NUM_CHANNELS,
classes=NUM_LANDMARKS
).to(device)
model_name = f"{MODEL_NAME}/{model.encoder_name}/random"
elif MODEL_NAME in SSL_MODELS and BACKBONE_NAME is not None:
model = smpUnet(
encoder_name=BACKBONE_NAME,
encoder_weights=None,
in_channels=NUM_CHANNELS,
classes=NUM_LANDMARKS
).to(device)
assert os.path.exists(f'{config["training_protocol"]["finetuning"]["path"]}'), f"{BACKBONE_NAME} pretrained model path not found"
model.encoder.load_state_dict(torch.load(f'{config["training_protocol"]["finetuning"]["path"]}', map_location=device))
model_name = f"{MODEL_NAME}/{model.encoder_name}"
elif MODEL_NAME == "ddpm":
BACKBONE_NAME = ""
model = Unet(
dim=SIZE[0],
channels=NUM_CHANNELS,
dim_mults=[1,2,4,8],
self_condition=True,
resnet_block_groups=4,
att_heads=4,
att_res=32
).to(device)
if PRETRAINED == True and config["training_protocol"]["finetuning"]["resume"] == False:
model_name = f"{MODEL_NAME}/pretrained"
checkpoint = torch.load(config["training_protocol"]["finetuning"]["path"], map_location=device)
model.load_state_dict(checkpoint["model_state_dict"])
pretrained_epoch = checkpoint.get("epoch", "undefined")
#print(f"Loaded model weights from {checkpoint['epoch']} epoch with fid {checkpoint['fid']}")
del checkpoint
"""
# freeze downsampling layers
for name, param in model.named_parameters():
if 'downs' in name:
param.requires_grad = False
"""
else:
model_name = f"{MODEL_NAME}/random"
# change the number of output channels of the final convolutional layer
model.final_conv = nn.Conv2d(model.final_conv.in_channels, NUM_LANDMARKS, 1)
# ---------------------------------------------------------------- COUNT PARAMS ---------
table, total_params = count_parameters(model)
res_file = open(log_file, 'a')
#print(table, file=res_file)
print(f"Total Trainable Params: {total_params}", file=res_file)
res_file.close()
# ---------------------------------------------------------------- LOSS FUNCTION ---------
if LOSS_FUNCTION == "CrossEntropyLoss":
loss_fn = nn.CrossEntropyLoss()
else:
raise Exception("Loss function not found... Choose between: CrossEntropyLoss")
# ---------------------------------------------------------------- OPTIMIZER ---------
if OPTIMIZER == "Adam":
optimizer = torch.optim.Adam(params=model.parameters(), lr=LR)
elif OPTIMIZER == "AdamW":
optimizer = torch.optim.AdamW(params=model.parameters(), lr=LR)
else:
raise Exception("Optimizer not found... Choose between: Adam, AdamW")
# ---------------------------------------------------------------- SCHEDULER ---------
if SCHEDULER == "ReduceLROnPlateau":
scheduler = ReduceLROnPlateau(optimizer, patience=PATIENCE, factor=0.5, verbose=True)
else:
raise Exception("Scheduler not found... Choose between: ReduceLROnPlateau")
# ---------------------------------------------------------------- MODEL PATHS ---------
save_model_path = f"{PREFIX}/{DATASET_NAME}/size{SIZE[0]}x{SIZE[1]}_ch{NUM_CHANNELS}_samples{TRAINING_SAMPLES}/{model_name}"
use_validation_set_for_inference = True if config["inference_protocol"]["use_validation_set_for_inference"]=="true" else False
if use_validation_set_for_inference==True and PRETRAINED == True and config["model"]["name"] == "ddpm" and config["training_protocol"]["finetuning"]["resume"] == False:
save_model_path = f"{save_model_path}/val/epoch{pretrained_epoch}"
print(save_model_path)
save_model_path = generate_path(save_model_path)
load_model_path = os.path.join(save_model_path, f"best_checkpoint.pt")
# ---------------------------------------------------------------- TRAINING ---------
start_time = time.time()
if config["training_protocol"]["apply"] == True:
# Assert if the model is being trained from scratch or if it is being fine-tuned
assert config["training_protocol"]["scratch"]["apply"] != config["training_protocol"]["finetuning"]["apply"], "Choose only one training protocol (scratch or finetuning)"
print(f"Training model on the {'validation' if use_validation_set_for_inference==True else 'test'} dataset")
# Get the training protocol
if config["training_protocol"]["scratch"]["apply"] == True:
loss_results = train_and_validate(model, device, train_dataloader, val_dataloader, optimizer, scheduler, loss_fn, NUM_EPOCHS,
save_model_path, patience=EARLY_STOPPING, useGradAcc=GRAD_ACC, continue_training=config["training_protocol"]["scratch"]["resume"])
elif config["training_protocol"]["finetuning"]["apply"] == True:
DIFFERENT_DATASET = True if config["training_protocol"]["finetuning"]["different_dataset"] == "true" else False
if DIFFERENT_DATASET == True:
load_path = config["training_protocol"]["finetuning"]["path"]
assert os.path.exists(load_path), "Pretrained model path not found"
loss_results = fine_tune(model, device, train_dataloader, val_dataloader, optimizer, scheduler, loss_fn, NUM_EPOCHS,
load_path, save_model_path, patience=EARLY_STOPPING, useGradAcc=GRAD_ACC)
else:
loss_results = train_and_validate(model, device, train_dataloader, val_dataloader, optimizer, scheduler, loss_fn, NUM_EPOCHS,
save_model_path, patience=EARLY_STOPPING, useGradAcc=GRAD_ACC, continue_training=config["training_protocol"]["finetuning"]["resume"])
else:
raise Exception("Training protocol not found... Choose between: scratch, finetuning")
# ---------------------------------------------------------------- TESTING --------
end_time = time.time()
if args.load_path is not None:
load_model_path = args.load_path
if config["inference_protocol"]["apply"] == True:
print(f"Testing model on the {'validation' if use_validation_set_for_inference==True else 'test'} dataset")
res_file = open(log_file, 'a')
print(f"Testing model on the {'validation' if use_validation_set_for_inference==True else 'test'} dataset", file=res_file)
res_file.close()
if use_validation_set_for_inference == True:
test_loss, results, mre, sdr, mse, mAP_heatmaps, mAP_keypoints, iou, epoch = evaluate(model, device, val_dataloader, loss_fn, load_model_path,
NUM_LANDMARKS, sigma=SIGMA, res_file_path=log_file)
else:
test_loss, results, mre, sdr, mse, mAP_heatmaps, mAP_keypoints, iou, epoch = evaluate(model, device, test_dataloader, loss_fn, load_model_path,
NUM_LANDMARKS, sigma=SIGMA, res_file_path=log_file)
# ---------------------------------------------------------------- TELEGRAM ---------
# Free GPU cache and RAM memory
#free_gpu_cache()
sdr_str = '\n'.join(f'\tThresholds {k}: {v*100:.2f}' for k, v in sorted(sdr.items()))
message = (
f"<b>{DATASET_NAME}</b> | Train Samples: {TRAINING_SAMPLES} \n"
f"<b>Model:</b> {model_name} \n"
f"<b>Shape:</b>[{SIZE}, {SIZE}, {NUM_CHANNELS}] \n"
f"<b>Sigma:</b> {SIGMA} \n"
f"<b>Batch:</b> {BATCH_SIZE}x{GRAD_ACC} \n"
f"<b>Time:</b> {time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))} \n"
f"<b>MRE:</b> {mre:.2f} \n\n"
f"<b>SDR:</b> \n{sdr_str} \n"
)
send_telegram_message(message)
# Save the results in a file
results_dir = f"outputs/{DATASET_NAME}_{MODEL_NAME}"
os.makedirs(f'{results_dir}', exist_ok=True)
if not os.path.exists(f'{results_dir}/outputs_{DATASET_NAME}_{MODEL_NAME}_{BACKBONE_NAME}_{TRAINING_SAMPLES}.txt'):
with open(f'{results_dir}/outputs_{DATASET_NAME}_{MODEL_NAME}_{BACKBONE_NAME}_{TRAINING_SAMPLES}.txt', 'w') as f:
print(f"\n\n{DATASET_NAME} | {MODEL_NAME} | {BACKBONE_NAME} | {TRAINING_SAMPLES}", file=f)
print(f"Shape: [{SIZE}, {SIZE}, {NUM_CHANNELS}] | Sigma: {SIGMA} | Batch: {BATCH_SIZE}x{GRAD_ACC}", file=f)
print(f"Time: {time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))}", file=f)
print(f"MRE: {mre:.2f}", file=f)
print(f"SDR: \n{sdr_str}", file=f)
print(f"MSE: {mse:.2f}", file=f)
print(f"IOU: {iou:.2f}", file=f)
print(f"mAP Heatmaps: {mAP_heatmaps:.2f}", file=f)
print(f"mAP Keypoints: {mAP_keypoints:.2f}", file=f)
print(f"Epoch: {epoch}", file=f)
print(f"Test Loss: {test_loss:.2f}", file=f)
print(f"Total Trainable Params: {total_params}", file=f)
print(f"Model Path: {save_model_path}", file=f)
else:
with open(f'{results_dir}/outputs_{DATASET_NAME}_{MODEL_NAME}_{BACKBONE_NAME}_{TRAINING_SAMPLES}.txt', 'a') as f:
print(f"\n\n{DATASET_NAME} | {MODEL_NAME} | {BACKBONE_NAME} | {TRAINING_SAMPLES}", file=f)
print(f"Shape: [{SIZE}, {SIZE}, {NUM_CHANNELS}] | Sigma: {SIGMA} | Batch: {BATCH_SIZE}x{GRAD_ACC}", file=f)
print(f"Time: {time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))}", file=f)
print(f"MRE: {mre:.2f}", file=f)
print(f"SDR: \n{sdr_str}", file=f)
print(f"MSE: {mse:.2f}", file=f)
print(f"IOU: {iou:.2f}", file=f)
print(f"mAP Heatmaps: {mAP_heatmaps:.2f}", file=f)
print(f"mAP Keypoints: {mAP_keypoints:.2f}", file=f)
print(f"Epoch: {epoch}", file=f)
print(f"Test Loss: {test_loss:.2f}", file=f)
print(f"Total Trainable Params: {total_params}", file=f)
print(f"Model Path: {save_model_path}", file=f)
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