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June 11, 2020 14:02
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def test(model, dataloader, config): | |
model.eval() | |
num_batches = config['num_test_batches'] | |
running_loss = 0.0 | |
running_accuracy = 0.0 | |
with torch.no_grad(): | |
with tqdm(dataloader, total=num_batches) as pbar: | |
for batch_idx, batch in enumerate(pbar): | |
train_inputs, train_targets = batch['train'] | |
train_inputs = train_inputs.to(device) | |
train_targets = train_targets.to(device) | |
test_inputs, test_targets = batch['test'] | |
test_inputs = test_inputs.to(device) | |
test_targets = test_targets.to(device) | |
train_embeddings = model(train_inputs, 'neighbor') | |
test_embeddings = model(test_inputs, 'input') | |
# Get prototypes | |
batch_size, embedding_size = train_embeddings.size(0), train_embeddings.size(-1) | |
with torch.no_grad(): | |
ones = torch.ones_like(train_targets, dtype=train_embeddings.dtype) | |
num_samples = ones.new_zeros((train_targets.size(0), model.module.num_classes_per_task)) | |
num_samples.scatter_add_(1, train_targets, ones) | |
num_samples.unsqueeze_(-1) | |
num_samples = torch.max(num_samples, torch.ones_like(num_samples)) | |
prototypes = train_embeddings.new_zeros( | |
(batch_size, model.module.num_classes_per_task, embedding_size)) | |
indices = train_targets.unsqueeze(-1).expand_as(train_embeddings) | |
prototypes.scatter_add_(1, indices, train_embeddings).div_(num_samples) | |
# Get the loss | |
squared_distances = torch.sum( | |
(prototypes.unsqueeze(2) - test_embeddings.unsqueeze(1))**2, dim=-1) | |
loss = F.cross_entropy(-squared_distances, test_targets) | |
# Get the accuracy | |
sq_distances = torch.sum( | |
(prototypes.unsqueeze(1) - test_embeddings.unsqueeze(2))**2, dim=-1) | |
_, predictions = torch.min(sq_distances, dim=-1) | |
accuracy = torch.mean(predictions.eq(test_targets).float()) | |
running_loss += loss.item() | |
accuracy = accuracy.item() | |
running_accuracy += accuracy | |
avg_loss = running_loss / (batch_idx + 1) | |
avg_accuracy = running_accuracy / (batch_idx + 1) | |
pbar.set_postfix(accuracy='{0:.4f}'.format(accuracy), | |
avg_loss='{0:.4f}'.format(avg_loss)) | |
if batch_idx == num_batches - 1: | |
break | |
avg_loss = running_loss / num_batches | |
avg_accuracy = running_accuracy / num_batches | |
return avg_loss, avg_accuracy |
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