| """ |
| Code Reference: |
| https://github.com/liangyanshuo/InfLoRA/blob/main/methods/inflora.py |
| """ |
|
|
| import os |
| import math |
| import torch |
| import torch.nn as nn |
| import torch.nn.functional as F |
| import torch.distributed as dist |
| import numpy as np |
| import matplotlib.pyplot as plt |
|
|
| from tqdm import tqdm |
| from .backbone.transformer import MultiHeadAttention_MaskedLoRA1 |
|
|
| GREEDY=True |
| APPROX_FEAT=True |
| |
| Epsilon = 0.5 |
|
|
| def _set_random(seed): |
| ''' |
| Set random values on various devices to ensure repeatable results |
| ''' |
|
|
| seed = int(seed) |
|
|
| torch.manual_seed(seed) |
| torch.cuda.manual_seed(seed) |
| torch.cuda.manual_seed_all(seed) |
| np.random.seed(seed) |
| torch.backends.cudnn.deterministic = True |
| torch.backends.cudnn.benchmark = False |
|
|
| def select_probe_greedy_span_unified_normalized(cur_matrixs_list, energy_threshold=0.95, top_r=None): |
| """ |
| Greedy span selection across multiple attention blocks, with per-block normalization. |
| Dynamically select samples that together span a certain percentage of gradient space. |
| |
| Args: |
| cur_matrixs_list (List[torch.Tensor]): list of (Num, 768, 768) tensors for each block. |
| energy_threshold (float): fraction of gradient space to cover. |
| top_r (int, optional): number of top singular vectors to use. |
| |
| Returns: |
| selected_indices (torch.Tensor) |
| """ |
| N = cur_matrixs_list[0].shape[0] |
| device = cur_matrixs_list[0].device |
|
|
| |
| normalized_cur_matrices = [] |
| for matrices in cur_matrixs_list: |
| frob_norms = torch.norm(matrices.view(N, -1), dim=-1, p=2).view(N, 1, 1) |
| matrices_normalized = matrices / (frob_norms + 1e-8) |
| normalized_cur_matrices.append(matrices_normalized) |
|
|
| |
| C_global = sum([matrices.sum(dim=0) for matrices in normalized_cur_matrices]) |
|
|
| |
| U, _, _ = torch.linalg.svd(C_global) |
| if top_r is not None: |
| U = U[:, :top_r] |
|
|
| |
| projected_vectors = [] |
| for i in range(N): |
| x_cov_sum = sum([matrices[i] for matrices in normalized_cur_matrices]) |
| proj = U.T @ x_cov_sum @ U |
| projected_vectors.append(proj.flatten()) |
| projected_vectors = torch.stack(projected_vectors, dim=0) |
|
|
| |
| selected_indices = [] |
| remaining_indices = set(range(N)) |
| selected_vectors = [] |
|
|
|
|
|
|
| |
| current_energy = 0.0 |
|
|
| while current_energy / total_energy < energy_threshold: |
| best_idx = -1 |
| best_gain = -float('inf') |
|
|
| for idx in remaining_indices: |
| vec = projected_vectors[idx] |
| if selected_vectors: |
| |
| selected_mat = torch.stack(selected_vectors, dim=0) |
|
|
| Q, _ = torch.linalg.qr(selected_mat.T, mode='reduced') |
| projection = (Q @ (Q.T @ vec)) |
|
|
| |
| vec_residual = vec - projection |
| else: |
| vec_residual = vec |
|
|
| gain = vec_residual.norm().item() |
|
|
| if gain > best_gain: |
| best_gain = gain |
| best_idx = idx |
|
|
| selected_indices.append(best_idx) |
| remaining_indices.remove(best_idx) |
| selected_vectors.append(projected_vectors[best_idx] / (projected_vectors[best_idx].norm() + 1e-8)) |
| current_energy += best_gain ** 2 |
|
|
| selected_indices = torch.tensor(selected_indices) |
|
|
| print(f"Selected {len(selected_indices)} samples covering {current_energy / total_energy * 100:.2f}% of gradient space.") |
|
|
| |
| plt.figure(figsize=(8, 6)) |
| plt.plot(torch.arange(len(selected_indices))+1, (torch.tensor([current_energy / total_energy for _ in selected_indices])*100).numpy(), label='Cumulative Span Coverage') |
| plt.xlabel('Number of Samples Selected') |
| plt.ylabel('Coverage (%)') |
| plt.title('Greedy Span Selection Coverage') |
| plt.grid(True) |
| plt.legend() |
| plt.savefig('greedy_span_coverage.png', dpi=300) |
|
|
| return selected_indices |
|
|
| def select_probe_greedy_span_unified_normalized_high_precision( |
| cur_matrixs_list, |
| energy_threshold=0.95, |
| top_r=None |
| ): |
| """ |
| Greedy span selection across multiple attention blocks, with per-block normalization. |
| Dynamically select samples that together span a certain percentage of gradient space. |
| |
| Args: |
| cur_matrixs_list (List[torch.Tensor]): list of (Num, 768, 768) tensors for each block. |
| energy_threshold (float): fraction of gradient space to cover. |
| top_r (int, optional): number of top singular vectors to use. |
| feature_mode (str): "trace" (default) or "flatten". How to extract projected features. |
| |
| Returns: |
| selected_indices (torch.Tensor) |
| """ |
|
|
| N = cur_matrixs_list[0].shape[0] |
|
|
| |
| normalized_cur_matrices = [] |
| for matrices in cur_matrixs_list: |
| frob_norms = torch.norm(matrices.view(N, -1), dim=-1, p=2).view(N, 1, 1) |
| matrices_normalized = matrices / (frob_norms + 1e-8) |
| normalized_cur_matrices.append(matrices_normalized) |
| |
| |
| C_global = sum([matrices.sum(dim=0) for matrices in normalized_cur_matrices]) |
|
|
| |
| U, _, _ = torch.linalg.svd(C_global) |
| if top_r is not None: |
| U = U[:, :top_r] |
|
|
| |
| projected_vectors = [] |
| for i in range(N): |
| x_cov_sum = sum([matrices[i] for matrices in normalized_cur_matrices]) |
| proj = U.T @ x_cov_sum @ U |
| proj_feat = proj.flatten() |
| projected_vectors.append(proj_feat) |
| projected_vectors = torch.stack(projected_vectors, dim=0) |
|
|
| |
| selected_indices = [] |
| remaining_indices = set(range(N)) |
|
|
| residual_vectors = projected_vectors.clone() |
| selected_vectors = [] |
|
|
| total_energy = projected_vectors.norm(dim=-1).pow(2).sum().item() |
| current_energy = 0.0 |
|
|
| |
| while current_energy / total_energy < energy_threshold: |
| assert remaining_indices |
| best_idx = -1 |
| best_gain = -float('inf') |
|
|
| for idx in remaining_indices: |
| vec = residual_vectors[idx] |
| if selected_vectors: |
| |
| selected_mat = torch.stack(selected_vectors, dim=0) |
| Q, _ = torch.linalg.qr(selected_mat.T, mode='reduced') |
| vec_residual = vec - (Q @ (Q.T @ vec)) |
| else: |
| vec_residual = vec |
|
|
| |
| gain = vec_residual.norm().item() ** 2 |
| |
| if gain > best_gain: |
| best_gain = gain |
| best_idx = idx |
| if not GREEDY: |
| break |
|
|
| |
| selected_indices.append(best_idx) |
| selected_vec = residual_vectors[best_idx] / (residual_vectors[best_idx].norm() + 1e-8) |
| current_energy += projected_vectors[best_idx].norm().item() ** 2 |
| print(current_energy, '/', total_energy) |
|
|
| |
| selected_vectors.append(selected_vec) |
| projection = (residual_vectors @ selected_vec.unsqueeze(-1)).squeeze(-1) |
| residual_vectors = residual_vectors - projection.unsqueeze(-1) * selected_vec.unsqueeze(0) |
|
|
| remaining_indices.discard(best_idx) |
|
|
| |
| selected_indices = torch.tensor(selected_indices) |
| print(f"Selected {len(selected_indices)} samples covering {current_energy / total_energy * 100:.2f}% of gradient space.") |
|
|
| return selected_indices |
|
|
| |
|
|
| class TopK: |
|
|
| ''' |
| A class to maintain a collection of the top K items based on a specified attribute. |
| |
| This class allows for the dynamic addition of items, each represented as a dictionary, |
| where each dictionary must have a key 'proj_norm' that represents the value used |
| to determine the ranking. The class keeps track of the top K items with the highest |
| 'proj_norm' values. |
| ''' |
|
|
| def __init__(self, k): |
| self.k = k |
| self.top_k_list = [] |
|
|
| def add(self, dict): |
| if len(self.top_k_list) < self.k: |
| self.top_k_list.append(dict) |
| elif dict['proj_norm'] > min(self.top_k_list, key=lambda x: x['proj_norm'])['proj_norm']: |
| self.top_k_list.remove(min(self.top_k_list, key=lambda x: x['proj_norm'])) |
| self.top_k_list.append(dict) |
| elif dict['proj_norm'] == min(self.top_k_list, key=lambda x: x['proj_norm'])['proj_norm'] and \ |
| dict['proj_norm'] == max(self.top_k_list, key=lambda x: x['proj_norm'])['proj_norm']: |
| self.top_k_list.remove(min(self.top_k_list, key=lambda x: x['task_id'])) |
| self.top_k_list.append(dict) |
|
|
| def get_top_k(self): |
| return self.top_k_list |
|
|
| class SiNet(nn.Module): |
| def __init__(self, backbone, **kwargs): |
| super().__init__() |
|
|
| self._cur_task_id = -1 |
| self.backbone = backbone |
| self.init_cls_num = kwargs["init_cls_num"] |
| self.inc_cls_num = kwargs["inc_cls_num"] |
|
|
| _set_random(os.environ["PYTHONHASHSEED"]) |
| self.classifier_pool = nn.ModuleList([ |
| nn.Linear(kwargs["embd_dim"], kwargs['init_cls_num'], bias=True)] + |
| [nn.Linear(kwargs["embd_dim"], kwargs['inc_cls_num'], bias=True) for _ in range(kwargs['task_num'] - 1)]) |
|
|
| for name, module in self.backbone.named_modules(): |
| if 'transformer' in name and 'blocks' not in name: |
| self.transformer_module = module |
|
|
| def update_fc(self): |
| self._cur_task_id += 1 |
|
|
| def forward(self, x, expert_id, inference = False): |
| logits = [] |
| features = self.backbone(x, expert_id = expert_id) |
|
|
| if inference: |
|
|
| |
| for i, prompts in enumerate(self.classifier_pool[:self._cur_task_id + 1]): |
| |
| logits.append(prompts(features)) |
|
|
| logits = torch.cat(logits, dim=1) |
|
|
| return logits |
|
|
| else: |
| logits.append(self.classifier_pool[self._cur_task_id](features)) |
| return torch.cat(logits, dim=1) |
|
|
| def update_input_matrix(self, x): |
| self.backbone(x, expert_id = -1, get_input_matrix = True) |
|
|
| class MInfLoRA(nn.Module): |
|
|
| def __init__(self, backbone, device, **kwargs): |
| super().__init__() |
|
|
| self.device = device |
| self.init_cls_num = kwargs["init_cls_num"] |
| self.inc_cls_num = kwargs["inc_cls_num"] |
| self.task_num = kwargs["task_num"] |
| self.lame = kwargs["lame"] |
| self.lamb = kwargs["lamb"] |
| self.embd_dim = kwargs["embd_dim"] |
| self.eval_mat = False |
|
|
| self._known_classes = 0 |
| self.feature_list = [] |
| self.project_type = [] |
|
|
| self.distributed = torch.distributed.is_initialized() |
| assert not self.distributed, 'current not support' |
| self.local_rank = torch.distributed.get_rank() if self.distributed else 0 |
| |
| self._network = SiNet(backbone, **kwargs) |
|
|
| self.attention_modules = [module for module in self._network.modules() if isinstance(module, MultiHeadAttention_MaskedLoRA1)] |
|
|
| |
| self.feature_list_each_tasks = [[np.zeros((1)) for _ in range(len(self.attention_modules))] for _ in range(self.task_num)] |
| self.final_decision = [[np.zeros((1)) for _ in range(len(self.attention_modules))] for _ in range(self.task_num)] |
| self.before_mat = [[0 for _ in range(len(self.attention_modules))] for _ in range(self.task_num)] |
|
|
| self.experts_distributions = [] |
|
|
| |
| self._use_class_alignment = kwargs['use_ca'] |
| self._class_means = None |
| self._class_covs = None |
| self._dataset = kwargs['dataset'] |
| if self._dataset == 'cifar': |
| self.logit_norm = None |
| else: |
| self.logit_norm = 0.1 |
| |
| self.lll = [] |
|
|
| self._network.to(self.device) |
| |
| def observe(self, data): |
|
|
| with torch.no_grad(): |
| self._network(self.probe_selection, expert_id = -1) |
|
|
| x, y = data['image'].to(self.device), data['label'].to(self.device) - self._known_classes |
|
|
| logits = self._network(x, expert_id = self._network._cur_task_id) |
| loss = F.cross_entropy(logits, y) |
|
|
| preds = logits.max(1)[1] |
| acc = preds.eq(y).sum().item() / y.shape[0] |
|
|
| return preds, acc, loss |
| |
| def inference(self, data, **kwargs): |
|
|
| task_id = kwargs['task_id'] if 'task_id' in kwargs else -1 |
| x, y = data['image'].to(self.device, non_blocking=True), data['label'].to(self.device, non_blocking=True) |
|
|
| logits = self._network(x, expert_id = task_id, inference = True) |
| preds = logits.max(1)[1] |
| acc = preds.eq(y).sum().item() / y.shape[0] |
|
|
| return preds, acc |
|
|
| @torch.no_grad() |
| def before_task(self, task_idx, buffer, train_loader, test_loaders): |
|
|
| print('Greedy', GREEDY) |
| print('Approx Feature', APPROX_FEAT) |
| |
| self._network.update_fc() |
|
|
| |
| _set_random(os.environ["PYTHONHASHSEED"]) |
| for module in self.attention_modules: |
| |
| module.init_param() |
|
|
| self._network = self._network.to(self.device) |
| self._update_input_matrix(train_loader) |
| |
| ''' |
| probe_indices_svd = select_probe_svd_energy_matrix_unified_normalized( |
| [m.cur_matrixs for m in self.attention_modules] |
| ,probe_size=512 |
| ) |
| ''' |
| ''' |
| self.probe_indices_svd = select_probe_svd_energy_matrix_unified_normalized( |
| [m.cur_matrixs for m in self.attention_modules] |
| ,energy_threshold=0.15, top_r=64 |
| ) |
| ''' |
| self.probe_indices_svd = select_probe_greedy_span_unified_normalized_high_precision( |
| [m.cur_matrixs for m in self.attention_modules] |
| ,energy_threshold=0.01, top_r=128 |
| |
| ) |
| |
| self.probe_selection = self.dataset[self.probe_indices_svd].to(self.device) |
|
|
| if task_idx == 0: |
| for i, module in enumerate(self.attention_modules): |
|
|
| |
| U, _, _ = torch.linalg.svd(module.cur_matrixs[self.probe_indices_svd].sum(dim=0) / 512, full_matrices=False) |
| |
| module.lora_A_k_list[task_idx].weight.data.copy_(U[:,:module.lora_rank].T/math.sqrt(3)) |
| module.lora_A_v_list[task_idx].weight.data.copy_(U[:,:module.lora_rank].T/math.sqrt(3)) |
|
|
| else: |
| for i, module in enumerate(self.attention_modules): |
|
|
| feature_mat = torch.Tensor(self.feature_list[i] @ self.feature_list[i].T) |
| module.feature_mat = feature_mat.clone().to(self.device) |
|
|
| activation = module.cur_matrixs[self.probe_indices_svd].sum(dim=0) / 512 |
| activation = activation - feature_mat @ activation |
|
|
| U, _, _ = torch.linalg.svd(activation, full_matrices = False) |
|
|
| module.lora_A_k_list[task_idx].weight.data.copy_(U[:, :module.lora_rank].T/(3 ** 0.5)) |
| module.lora_A_v_list[task_idx].weight.data.copy_(U[:, :module.lora_rank].T/(3 ** 0.5)) |
| |
| ''' |
| for i, module in enumerate(self.attention_modules): |
| |
| topk = TopK(1) |
| |
| mat = module.cur_matrix.cpu().numpy() |
| mat_norm = np.linalg.norm(mat) |
| |
| for task_id in range(task_idx): |
| |
| if not np.array_equal(self.feature_list_each_tasks[task_id][i], np.zeros((1))): |
| |
| proj_norm = np.linalg.norm(self.feature_list_each_tasks[task_id][i] @ self.feature_list_each_tasks[task_id][i].T @ mat) |
| print(f'{task_idx} to {task_id} in layer {i} : {proj_norm}') |
| |
| if proj_norm > Epsilon * mat_norm: |
| topk.add({'proj_norm':proj_norm, 'task_id': task_id}) |
| |
| self.final_decision[task_idx][i] = [dic['task_id'] for dic in topk.get_top_k()] |
| print(f'Layer {i} of {task_idx} consider {self.final_decision[task_idx][i]} as trust region') |
| |
| self.prev_matrix = [] |
| if task_idx == 0: |
| for i, module in enumerate(self.attention_modules): |
| |
| U, _, _ = torch.linalg.svd(module.cur_matrix) |
| U = torch.Tensor(U).to(self.device) |
| |
| self.prev_matrix.append(U[:,:module.lora_rank].T.cpu()) |
| |
| module.lora_A_k_list[task_idx].weight.data.copy_(U[:,:module.lora_rank].T/math.sqrt(3)) |
| module.lora_A_v_list[task_idx].weight.data.copy_(U[:,:module.lora_rank].T/math.sqrt(3)) |
| #module.reset_input_matrix() |
| else: |
| for i, module in enumerate(self.attention_modules): |
| assert self.project_type[i] == 'remove' or self.project_type[i] == 'retain' |
| |
| cur_matrix = module.cur_matrix.to(self.device) |
| |
| |
| # TRGP |
| tr = self.final_decision[task_idx][i][0] |
| tr = task_idx - 1 |
| |
| #feature_mat = torch.Tensor(self.feature_list_each_tasks[tr][i] @ self.feature_list_each_tasks[tr][i].T).to(self.device) |
| |
| feature_mat = torch.Tensor(self.feature_list[i] @ self.feature_list[i].T).to(self.device) |
| intersect = feature_mat @ cur_matrix |
| |
| target_shape = 768 |
| |
| U, _, _ = np.linalg.svd(intersect.cpu().numpy(), full_matrices = False) |
| U = torch.Tensor(U).to(self.device) |
| module.space_k[tr] = U[:, :target_shape].T/math.sqrt(3) |
| module.space_v[tr] = U[:, :target_shape].T/math.sqrt(3) |
| |
| # InfLoRA |
| feature_mat = torch.Tensor(self.feature_list[i] @ self.feature_list[i].T).to(self.device) |
| |
| if self.project_type[i] == 'remove': |
| cur_matrix = cur_matrix - feature_mat @ cur_matrix |
| else: |
| cur_matrix = feature_mat @ cur_matrix |
| |
| module.feature_mat = feature_mat.clone() |
| |
| U, _, _ = np.linalg.svd(cur_matrix.cpu().numpy(), full_matrices = False) |
| U = U[:, :module.lora_rank] |
| |
| alphas = torch.linalg.lstsq(torch.Tensor(module.lora_A_k_list[task_idx-1].weight.data).T.cpu(), torch.Tensor(U) / math.sqrt(3)) |
| if alphas.residuals.numel() != 0: |
| print(f'Task {task_idx}, Layer {i}, {alphas.residuals}') |
| assert 0 |
| |
| U = torch.Tensor(U).to(self.device) |
| |
| module.lora_A_k_list[task_idx].weight.data.copy_(U[:, :module.lora_rank].T/math.sqrt(3)) # here should have /sqrt3 |
| module.lora_A_v_list[task_idx].weight.data.copy_(U[:, :module.lora_rank].T/math.sqrt(3)) |
| ''' |
|
|
| for name, param in self._network.named_parameters(): |
| param.requires_grad_(False) |
| if f"classifier_pool.{task_idx}" in name or \ |
| f"lora_B_k_list.{task_idx}" in name or \ |
| f"lora_B_v_list.{task_idx}" in name: |
| param.requires_grad_(True) |
|
|
| for name, param in self._network.named_parameters(): |
| if param.requires_grad: |
| print(name) |
|
|
| def after_task(self, task_idx, buffer, train_loader, test_loaders): |
| ''' |
| Called after each task before final testing, it is used to perform preliminary operations on the mapping matrix to facilitate the update of lora_a layer in the next round of before_task |
| ''' |
|
|
| self._known_classes += self.init_cls_num if task_idx == 0 else self.inc_cls_num |
|
|
| self._update_feature(task_idx, train_loader, test_loaders) |
|
|
| @torch.no_grad() |
| def _update_feature(self, task_idx, train_loader, test_loaders): |
| ''' |
| Update feature lists and the corresponding type |
| ''' |
|
|
| self._update_input_matrix(train_loader) |
|
|
| if self.local_rank == 0: |
|
|
| threshold = (self.lame - self.lamb)*task_idx/self.task_num + self.lamb |
|
|
| if task_idx == 0: |
| for i, module in enumerate(self.attention_modules): |
| |
| activation = module.cur_matrixs[self.probe_indices_svd].sum(dim=0) / 512 |
| U, S, _ = torch.linalg.svd(activation, full_matrices=False) |
| true_U = U[:, :module.lora_rank] |
|
|
| |
| alphas = torch.linalg.lstsq(module.lora_A_k_list[task_idx].weight.data.T.cpu() * math.sqrt(3), true_U) |
| approx2_U = module.lora_A_k_list[task_idx].weight.data.T.cpu() * math.sqrt(3) @ alphas.solution |
|
|
| if APPROX_FEAT: |
| self.feature_list.append(approx2_U) |
| self.feature_list_each_tasks[task_idx][i] = approx2_U |
| else: |
| self.feature_list.append(true_U) |
| self.feature_list_each_tasks[task_idx][i] = true_U |
|
|
| self.project_type.append('remove') |
|
|
| else: |
| for i, module in enumerate(self.attention_modules): |
|
|
| activation = module.cur_matrixs[self.probe_indices_svd].sum(dim=0) / 512 |
| act_hat = activation - torch.Tensor(self.feature_list[i] @ self.feature_list[i].T) @ activation |
|
|
| U, _, _ = torch.linalg.svd(act_hat, full_matrices = False) |
| true_U = U[:, :module.lora_rank] |
|
|
| alphas = torch.linalg.lstsq(module.lora_A_k_list[task_idx].weight.data.T.cpu() * math.sqrt(3), true_U) |
| approx2_U = module.lora_A_k_list[task_idx].weight.data.T.cpu() * math.sqrt(3) @ alphas.solution |
|
|
| if APPROX_FEAT: |
| self.feature_list[i] = torch.cat([self.feature_list[i], approx2_U], dim=1) |
| self.feature_list_each_tasks[task_idx][i] = approx2_U |
| else: |
| self.feature_list[i] = torch.cat([self.feature_list[i], true_U], dim=1) |
| self.feature_list_each_tasks[task_idx][i] = true_U |
|
|
| print('-'*40) |
| print(f'Threshold: {threshold}') |
| print('-'*40) |
| for i in range(len(self.feature_list)): |
| ''' |
| if self.project_type[i]=='remove' and (self.feature_list[i].shape[1] > (self.feature_list[i].shape[0]/2)): |
| feature = self.feature_list[i] |
| U, S, V = np.linalg.svd(feature) |
| new_feature = U[:,feature.shape[1]:] |
| self.feature_list[i] = new_feature |
| self.project_type[i] = 'retain' |
| elif self.project_type[i]=='retain': |
| assert self.feature_list[i].shape[1] <= (self.feature_list[i].shape[0]/2) |
| ''' |
| print ('Layer {} : {}/{} type {}'.format(i+1,self.feature_list[i].shape[1], self.feature_list[i].shape[0], self.project_type[i])) |
| print('-'*40) |
|
|
| @torch.no_grad() |
| def _update_input_matrix(self, train_loader): |
|
|
| for module in self.attention_modules: |
| module.reset_input_matrix() |
|
|
| _set_random(os.environ["PYTHONHASHSEED"]) |
| self.dataset = [] |
| for batch in tqdm(train_loader, desc="Forwarding to get input matrix", disable=(self.local_rank != 0)): |
| self._network.update_input_matrix(batch['image'].to(self.device)) |
| self.dataset.append(batch['image']) |
|
|
| self.dataset = torch.cat(self.dataset, dim=0) |
|
|
| for module in self.attention_modules: |
| module.cur_matrixs = torch.cat(module.cur_matrixs, dim=0) |
| module.cur_matrixs = torch.bmm( |
| module.cur_matrixs.permute(0, 2, 1), |
| module.cur_matrixs |
| ).cpu() |
|
|
| def get_parameters(self, config): |
| return self._network.parameters() |