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"""
Test script to evaluate the model.
"""
import argparse
import importlib
import multiprocessing
import os, glob
import logging
import json
import numpy as np
import torch
import pandas as pd
import torch.nn as nn
from torch.utils.tensorboard import SummaryWriter
from torch.profiler import profile, record_function, ProfilerActivity
from tqdm import tqdm # pylint: disable=unused-import
from torchmetrics.functional import(
scale_invariant_signal_noise_ratio as si_snr,
signal_noise_ratio as snr,
signal_distortion_ratio as sdr,
scale_invariant_signal_distortion_ratio as si_sdr)
from src.helpers import utils
def test_epoch(model: nn.Module, device: torch.device,
test_loader: torch.utils.data.dataloader.DataLoader,
n_items: int, loss_fn, metrics_fn,
results_fn = None, results_path: str = None, output_dir: str = None,
profiling: bool = False, epoch: int = 0,
writer: SummaryWriter = None) -> float:
"""
Evaluate the network.
"""
model.eval()
metrics = {}
losses = []
runtimes = []
results = []
with torch.no_grad():
for batch_idx, (inp, tgt) in \
enumerate(tqdm(test_loader, desc='Test', ncols=100)):
# Move data to device
inp, tgt = test_loader.dataset.to(inp, tgt, device)
# Run through the model
if profiling:
with profile(activities=[ProfilerActivity.CPU],
record_shapes=True) as prof:
with record_function("model_inference"):
output = model(inp, writer=writer, step=epoch, idx=batch_idx)
if profiling:
logging.info(
prof.key_averages().table(sort_by="self_cpu_time_total",
row_limit=20))
else:
output = model(inp, writer=writer, step=epoch, idx=batch_idx)
# Compute loss
loss = loss_fn(output, tgt)
# Compute metrics
metrics_batch = metrics_fn(inp, output, tgt)
for k in metrics_batch.keys():
if not k in metrics:
metrics[k] = metrics_batch[k]
else:
metrics[k] += metrics_batch[k]
output = test_loader.dataset.output_to(output, 'cpu')
inp, tgt = test_loader.dataset.to(inp, tgt, 'cpu')
# Results to save
if results_path is not None:
results.append(results_fn(
batch_idx * test_loader.batch_size,
inp, output, tgt, metrics_batch, output_dir=output_dir))
losses += [loss.item()]
if profiling:
runtimes += [ # Runtime per sample in ms
prof.profiler.self_cpu_time_total / (test_loader.batch_size * 1e3)]
else:
runtimes += [0.0]
output = test_loader.dataset.output_to(output, 'cpu')
inp, tgt = test_loader.dataset.to(inp, tgt, 'cpu')
if writer is not None:
if batch_idx == 0:
test_loader.dataset.tensorboard_add_sample(
writer, tag='Test',
sample=(inp, output, tgt),
step=epoch)
#test_loader.dataset.tensorboard_add_metrics(
# writer, tag='Test', metrics=metrics_batch, step=epoch)
if n_items is not None and batch_idx == (n_items - 1):
break
if results_path is not None:
torch.save(results, results_path)
logging.info("Saved results to %s" % results_path)
# Also save as CSV for easier inspection
csv_path = results_path.replace('.pth', '.csv')
try:
# Flatten results into rows
rows = []
for result_dict in results:
# Each result_dict contains lists of metrics for a batch
# We need to flatten them into individual rows
if isinstance(result_dict, dict):
# Get batch size from the first list-valued metric
n_samples = None
for k, v in result_dict.items():
if k != 'metadata' and isinstance(v, list):
n_samples = len(v)
break
if n_samples is None:
continue
for i in range(n_samples):
row = {}
for key, values in result_dict.items():
if key == 'metadata':
if i < len(values):
meta = values[i]
row['mixture_id'] = meta.get('mixture_id', '')
row['mixture_file'] = meta.get('mixture_file', '')
cmd_var = meta.get('command_variant', {})
row['command_type'] = cmd_var.get('command_type', '')
row['user_input'] = cmd_var.get('user_input', '')
row['target_sources'] = ', '.join(cmd_var.get('target_sources', []))
elif isinstance(values, list):
if i < len(values):
row[key] = values[i]
else:
# Scalar metric (e.g. batch-level) — same value for all samples
row[key] = values
rows.append(row)
# Create DataFrame and save
df = pd.DataFrame(rows)
df.to_csv(csv_path, index=False)
logging.info("Saved CSV results to %s" % csv_path)
except Exception as e:
logging.warning("Failed to save CSV results: %s" % str(e))
avg_metrics = {k: np.mean(metrics[k]) for k in metrics.keys()}
avg_metrics['loss'] = np.mean(losses)
avg_metrics['runtime'] = np.mean(runtimes)
avg_metrics_str = "Test:"
for m in avg_metrics.keys():
avg_metrics_str += ' %s=%.04f' % (m, avg_metrics[m])
logging.info(avg_metrics_str)
return avg_metrics
def evaluate(network, args: argparse.Namespace):
"""
Evaluate the model on a given dataset.
"""
# Load dataset
data_test = utils.import_attr(args.test_dataset)(**args.test_data_args)
logging.info("Loaded test dataset %d elements" % len(data_test))
# Set up the device and workers.
use_cuda = args.use_cuda and torch.cuda.is_available()
if use_cuda:
gpu_ids = args.gpu_ids if args.gpu_ids is not None\
else range(torch.cuda.device_count())
device_ids = [_ for _ in gpu_ids]
data_parallel = len(device_ids) > 1
device = 'cuda:%d' % device_ids[0]
torch.cuda.set_device(device_ids[0])
logging.info("Using CUDA devices: %s" % str(device_ids))
else:
data_parallel = False
device = torch.device('cpu')
logging.info("Using device: CPU")
# Set multiprocessing params
num_workers = min(multiprocessing.cpu_count(), args.n_workers)
kwargs = {
'num_workers': num_workers,
'pin_memory': True
} if use_cuda else {}
# Set up data loader
test_loader = torch.utils.data.DataLoader(
data_test, batch_size=args.eval_batch_size, collate_fn=data_test.collate_fn,
**kwargs)
# Set up model
model = network.Net(**args.model_params)
if use_cuda and data_parallel:
model = nn.DataParallel(model, device_ids=device_ids)
logging.info("Using data parallel model")
model.to(device)
# Load weights
if args.pretrain_path == "best":
ckpts = glob.glob(os.path.join(args.exp_dir, '*.pt'))
ckpts.sort(
key=lambda _: int(os.path.splitext(os.path.basename(_))[0]))
val_metrics = torch.load(ckpts[-1])['val_metrics'][args.base_metric]
best_epoch = max(range(len(val_metrics)), key=val_metrics.__getitem__)
args.pretrain_path = os.path.join(args.exp_dir, '%d.pt' % best_epoch)
logging.info(
"Found 'best' validation %s=%.02f at %s" %
(args.base_metric, val_metrics[best_epoch], args.pretrain_path))
if args.pretrain_path != "":
utils.load_checkpoint(
args.pretrain_path, model, data_parallel=data_parallel)
logging.info("Loaded pretrain weights from %s" % args.pretrain_path)
# Results csv file
results_fn = network.format_results
# If output_dir is specified, save results there; otherwise use exp_dir
if args.output_dir is not None:
os.makedirs(args.output_dir, exist_ok=True)
results_path = os.path.join(args.output_dir, 'results.eval.pth')
# Create outputs subdirectory for audio files
audio_output_dir = os.path.join(args.output_dir, 'outputs')
else:
results_path = os.path.join(args.exp_dir, 'results.eval.pth')
audio_output_dir = args.output_dir
# Evaluate
try:
return test_epoch(
model, device, test_loader, args.n_items, network.loss,
network.test_metrics, results_fn, results_path, audio_output_dir, args.profiling)
except KeyboardInterrupt:
print("Interrupted")
except Exception as _: # pylint: disable=broad-except
import traceback # pylint: disable=import-outside-toplevel
traceback.print_exc()
def get_unique_hparams(exps):
"""
Return a list of unique hyperparameters across the set of experiments.
"""
# Read config files into a dataframe
configs = []
for e in exps:
with open(os.path.join(e, 'config.json')) as f:
configs.append(pd.json_normalize(json.load(f)))
configs = pd.concat(configs, ignore_index=True)
# Remove columns with unhashable types (like lists) before checking uniqueness
hashable_configs = configs.copy()
for col in configs.columns:
try:
# Test if column is hashable by trying nunique()
configs[col].nunique()
except TypeError:
# Skip unhashable columns (like lists)
hashable_configs = hashable_configs.drop(columns=[col])
logging.info(f"Skipping unhashable column: {col}")
# Remove constant colums from configs dataframe. None values are considered constant.
hashable_configs = hashable_configs.loc[:, hashable_configs.nunique() > 1]
return hashable_configs.to_dict('records')
if __name__ == '__main__':
parser = argparse.ArgumentParser()
# Data Params
parser.add_argument('experiments', nargs='+', type=str,
default=None,
help="List of experiments to evaluate. "
"Provide only one experiment when providing "
"pretrained path. If pretrianed path is not "
"provided, epoch with best validation metric "
"is used for evaluation.")
parser.add_argument('--results', type=str, default="",
help="Path to the CSV file to store results.")
parser.add_argument('--output_dir', type=str, default=None,
help="Path to the directory to store outputs.")
# System params
parser.add_argument('--n_items', type=int, default=None,
help="Number of items to test.")
parser.add_argument('--pretrain_path', type=str, default="best",
help="Path to pretrained weights")
parser.add_argument('--profiling', dest='profiling', action='store_true',
help="Enable or disable profiling.")
parser.add_argument('--use_cuda', dest='use_cuda', action='store_true',
help="Whether to use cuda")
parser.add_argument('--gpu_ids', nargs='+', type=int, default=None,
help="List of GPU ids used for training. "
"Eg., --gpu_ids 2 4. All GPUs are used by default.")
args = parser.parse_args()
results = []
unique_hparams = get_unique_hparams(args.experiments)
if len(unique_hparams) == 0:
unique_hparams = [{}]
for exp_dir, hparams in zip(args.experiments, unique_hparams):
eval_args = argparse.Namespace(**vars(args))
eval_args.exp_dir = exp_dir
# Set log file location - use output_dir if specified, otherwise exp_dir
log_dir = args.output_dir if args.output_dir is not None else exp_dir
# Create the log directory if it doesn't exist
os.makedirs(log_dir, exist_ok=True)
utils.set_logger(os.path.join(log_dir, 'eval.log'))
logging.info("Evaluating %s ..." % exp_dir)
# Load model and training params
params = utils.Params(os.path.join(exp_dir, 'config.json'))
for k, v in params.__dict__.items():
vars(eval_args)[k] = v
network = importlib.import_module(eval_args.model)
logging.info("Imported the model from '%s'." % eval_args.model)
curr_res = evaluate(network, eval_args)
for k, v in hparams.items():
curr_res[k] = v
results.append(curr_res)
del eval_args
if args.results != "":
print("Writing results to %s" % args.results)
pd.DataFrame(results).to_csv(args.results, index=False)