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Method evaluate

models/uda/uda.py:235–266  ·  view source on GitHub ↗
(self, eval_loader=None, args=None)

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233
234 @torch.no_grad()
235 def evaluate(self, eval_loader=None, args=None):
236 self.model.eval()
237 self.ema.apply_shadow()
238 if eval_loader is None:
239 eval_loader = self.loader_dict['eval']
240 total_loss = 0.0
241 total_num = 0.0
242 y_true = []
243 y_pred = []
244 y_logits = []
245 for _, x, y in eval_loader:
246 x, y = x.cuda(args.gpu), y.cuda(args.gpu)
247 num_batch = x.shape[0]
248 total_num += num_batch
249 logits = self.model(x)
250 loss = F.cross_entropy(logits, y, reduction='mean')
251 y_true.extend(y.cpu().tolist())
252 y_pred.extend(torch.max(logits, dim=-1)[1].cpu().tolist())
253 y_logits.extend(torch.softmax(logits, dim=-1).cpu().tolist())
254 total_loss += loss.detach() * num_batch
255 top1 = accuracy_score(y_true, y_pred)
256 top5 = top_k_accuracy_score(y_true, y_logits, k=5)
257 precision = precision_score(y_true, y_pred, average='macro')
258 recall = recall_score(y_true, y_pred, average='macro')
259 F1 = f1_score(y_true, y_pred, average='macro')
260 AUC = roc_auc_score(y_true, y_logits, multi_class='ovo')
261 cf_mat = confusion_matrix(y_true, y_pred, normalize='true')
262 self.print_fn('confusion matrix:\n' + np.array_str(cf_mat))
263 self.ema.restore()
264 self.model.train()
265 return {'eval/loss': total_loss / total_num, 'eval/top-1-acc': top1, 'eval/top-5-acc': top5,
266 'eval/precision': precision, 'eval/recall': recall, 'eval/F1': F1, 'eval/AUC': AUC}
267
268 def save_model(self, save_name, save_path):
269 if self.it < 1000000:

Callers 1

trainMethod · 0.95

Calls 3

apply_shadowMethod · 0.80
restoreMethod · 0.80
trainMethod · 0.45

Tested by

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