add validate decay_policy change hyper_map to for loop because of free variable syntax error.tags/v0.6.0-beta
| @@ -216,8 +216,8 @@ class AdaGaussianRandom(Mechanisms): | |||
| noise_decay_rate = check_param_type('noise_decay_rate', noise_decay_rate, float) | |||
| check_param_in_range('noise_decay_rate', noise_decay_rate, 0.0, 1.0) | |||
| self._noise_decay_rate = Tensor(noise_decay_rate, mstype.float32) | |||
| if decay_policy not in ['Time', 'Step']: | |||
| raise NameError("The decay_policy must be in ['Time', 'Step'], but " | |||
| if decay_policy not in ['Time', 'Step', 'Exp']: | |||
| raise NameError("The decay_policy must be in ['Time', 'Step', 'Exp'], but " | |||
| "get {}".format(decay_policy)) | |||
| self._decay_policy = decay_policy | |||
| self._mul = P.Mul() | |||
| @@ -245,18 +245,18 @@ class _MechanismsParamsUpdater(Cell): | |||
| Args: | |||
| policy(str): Pass in by the mechanisms class, mechanisms parameters update policy. | |||
| decay_rate(Tensor): Pass in by the mechanisms class, hyper parameter for controlling the decay size. | |||
| cur_params(Parameter): Pass in by the mechanisms class, current params value in this time. | |||
| init_params(Parameter):Pass in by the mechanisms class, initial params value to be updated. | |||
| cur_noise_multiplier(Parameter): Pass in by the mechanisms class, current params value in this time. | |||
| init_noise_multiplier(Parameter):Pass in by the mechanisms class, initial params value to be updated. | |||
| Returns: | |||
| Tuple, next params value. | |||
| """ | |||
| def __init__(self, policy, decay_rate, cur_params, init_params): | |||
| def __init__(self, policy, decay_rate, cur_noise_multiplier, init_noise_multiplier): | |||
| super(_MechanismsParamsUpdater, self).__init__() | |||
| self._policy = policy | |||
| self._decay_rate = decay_rate | |||
| self._cur_params = cur_params | |||
| self._init_params = init_params | |||
| self._cur_noise_multiplier = cur_noise_multiplier | |||
| self._init_noise_multiplier = init_noise_multiplier | |||
| self._div = P.Sub() | |||
| self._add = P.TensorAdd() | |||
| @@ -264,6 +264,7 @@ class _MechanismsParamsUpdater(Cell): | |||
| self._sub = P.Sub() | |||
| self._one = Tensor(1, mstype.float32) | |||
| self._mul = P.Mul() | |||
| self._exp = P.Exp() | |||
| def construct(self): | |||
| """ | |||
| @@ -273,10 +274,14 @@ class _MechanismsParamsUpdater(Cell): | |||
| Tuple, next step parameters value. | |||
| """ | |||
| if self._policy == 'Time': | |||
| temp = self._div(self._init_params, self._cur_params) | |||
| temp = self._div(self._init_noise_multiplier, self._cur_noise_multiplier) | |||
| temp = self._add(temp, self._decay_rate) | |||
| next_params = self._assign(self._cur_params, self._div(self._init_params, temp)) | |||
| else: | |||
| next_noise_multiplier = self._assign(self._cur_noise_multiplier, | |||
| self._div(self._init_noise_multiplier, temp)) | |||
| elif self._policy == 'Step': | |||
| temp = self._sub(self._one, self._decay_rate) | |||
| next_params = self._assign(self._cur_params, self._mul(temp, self._cur_params)) | |||
| return next_params | |||
| next_noise_multiplier = self._assign(self._cur_noise_multiplier, | |||
| self._mul(temp, self._cur_noise_multiplier)) | |||
| else: | |||
| next_noise_multiplier = self._assign(self._cur_noise_multiplier, self._div(self._one, self._exp(self._one))) | |||
| return next_noise_multiplier | |||
| @@ -130,8 +130,9 @@ class DPOptimizerClassFactory: | |||
| if self._mech is not None and self._mech._decay_policy is not None: | |||
| self._mech_param_updater = _MechanismsParamsUpdater(policy=self._mech._decay_policy, | |||
| decay_rate=self._mech._noise_decay_rate, | |||
| cur_params=self._mech._noise_multiplier, | |||
| init_params= | |||
| cur_noise_multiplier= | |||
| self._mech._noise_multiplier, | |||
| init_noise_multiplier= | |||
| self._mech._initial_noise_multiplier) | |||
| def construct(self, gradients): | |||
| @@ -195,48 +195,47 @@ class DPModel(Model): | |||
| mech=self._mech).set_train() | |||
| return network | |||
| def _build_train_network(self): | |||
| """Build train network""" | |||
| network = self._network | |||
| if self._micro_batches: | |||
| if self._optimizer: | |||
| if self._loss_scale_manager_set: | |||
| network = self._amp_build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| loss_scale_manager=self._loss_scale_manager, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| else: | |||
| network = self._amp_build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| elif self._loss_fn: | |||
| network = nn.WithLossCell(network, self._loss_fn) | |||
| else: | |||
| if self._optimizer: | |||
| if self._loss_scale_manager_set: | |||
| network = amp.build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| loss_scale_manager=self._loss_scale_manager, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| else: | |||
| network = amp.build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| elif self._loss_fn: | |||
| network = nn.WithLossCell(network, self._loss_fn) | |||
| if self._parallel_mode in (ParallelMode.SEMI_AUTO_PARALLEL, ParallelMode.AUTO_PARALLEL): | |||
| network.set_auto_parallel() | |||
| return network | |||
| def _build_train_network(self): | |||
| """Build train network""" | |||
| network = self._network | |||
| if self._micro_batches: | |||
| if self._optimizer: | |||
| if self._loss_scale_manager_set: | |||
| network = self._amp_build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| loss_scale_manager=self._loss_scale_manager, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| else: | |||
| network = self._amp_build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| elif self._loss_fn: | |||
| network = nn.WithLossCell(network, self._loss_fn) | |||
| else: | |||
| if self._optimizer: | |||
| if self._loss_scale_manager_set: | |||
| network = amp.build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| loss_scale_manager=self._loss_scale_manager, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| else: | |||
| network = amp.build_train_network(network, | |||
| self._optimizer, | |||
| self._loss_fn, | |||
| level=self._amp_level, | |||
| keep_batchnorm_fp32=self._keep_bn_fp32) | |||
| elif self._loss_fn: | |||
| network = nn.WithLossCell(network, self._loss_fn) | |||
| if self._parallel_mode in (ParallelMode.SEMI_AUTO_PARALLEL, ParallelMode.AUTO_PARALLEL): | |||
| network.set_auto_parallel() | |||
| return network | |||
| class _ClipGradients(nn.Cell): | |||
| @@ -376,8 +375,10 @@ class _TrainOneStepWithLossScaleCell(Cell): | |||
| if self._mech is not None and self._mech._decay_policy is not None: | |||
| self._mech_param_updater = _MechanismsParamsUpdater(policy=self._mech._decay_policy, | |||
| decay_rate=self._mech._noise_decay_rate, | |||
| cur_params=self._mech._noise_multiplier, | |||
| init_params=self._mech._initial_noise_multiplier) | |||
| cur_noise_multiplier= | |||
| self._mech._noise_multiplier, | |||
| init_noise_multiplier= | |||
| self._mech._initial_noise_multiplier) | |||
| def construct(self, data, label, sens=None): | |||
| """ | |||
| @@ -416,8 +417,11 @@ class _TrainOneStepWithLossScaleCell(Cell): | |||
| loss = P.Div()(total_loss, self._micro_float) | |||
| if self._mech is not None: | |||
| grad_noise = self._hyper_map(self._mech, grads) | |||
| grads = self._tuple_add(grads, grad_noise) | |||
| grad_noise_tuple = () | |||
| for grad_item in grads: | |||
| grad_noise = self._mech(grad_item) | |||
| grad_noise_tuple = grad_noise_tuple + (grad_noise,) | |||
| grads = self._tuple_add(grads, grad_noise_tuple) | |||
| grads = self._hyper_map(F.partial(_grad_scale, self._micro_float), grads) | |||
| # update mech parameters | |||
| if self._mech_param_updater is not None: | |||
| @@ -517,8 +521,10 @@ class _TrainOneStepCell(Cell): | |||
| if self._mech is not None and self._mech._decay_policy is not None: | |||
| self._mech_param_updater = _MechanismsParamsUpdater(policy=self._mech._decay_policy, | |||
| decay_rate=self._mech._noise_decay_rate, | |||
| cur_params=self._mech._noise_multiplier, | |||
| init_params=self._mech._initial_noise_multiplier) | |||
| cur_noise_multiplier= | |||
| self._mech._noise_multiplier, | |||
| init_noise_multiplier= | |||
| self._mech._initial_noise_multiplier) | |||
| def construct(self, data, label): | |||
| """ | |||
| @@ -543,8 +549,11 @@ class _TrainOneStepCell(Cell): | |||
| loss = P.Div()(total_loss, self._micro_float) | |||
| if self._mech is not None: | |||
| grad_noise = self._hyper_map(self._mech, grads) | |||
| grads = self._tuple_add(grads, grad_noise) | |||
| grad_noise_tuple = () | |||
| for grad_item in grads: | |||
| grad_noise = self._mech(grad_item) | |||
| grad_noise_tuple = grad_noise_tuple + (grad_noise,) | |||
| grads = self._tuple_add(grads, grad_noise_tuple) | |||
| grads = self._hyper_map(F.partial(_grad_scale, self._micro_float), grads) | |||
| # update mech parameters | |||
| if self._mech_param_updater is not None: | |||
| @@ -30,7 +30,7 @@ from mindarmour.diff_privacy import MechanismsFactory | |||
| @pytest.mark.component_mindarmour | |||
| def test_graph_gaussian(): | |||
| context.set_context(mode=context.GRAPH_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| net = GaussianRandom(norm_bound, initial_noise_multiplier) | |||
| @@ -44,7 +44,7 @@ def test_graph_gaussian(): | |||
| @pytest.mark.component_mindarmour | |||
| def test_pynative_gaussian(): | |||
| context.set_context(mode=context.PYNATIVE_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| net = GaussianRandom(norm_bound, initial_noise_multiplier) | |||
| @@ -58,7 +58,7 @@ def test_pynative_gaussian(): | |||
| @pytest.mark.component_mindarmour | |||
| def test_graph_ada_gaussian(): | |||
| context.set_context(mode=context.GRAPH_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| @@ -75,7 +75,7 @@ def test_graph_ada_gaussian(): | |||
| @pytest.mark.component_mindarmour | |||
| def test_graph_factory(): | |||
| context.set_context(mode=context.GRAPH_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| @@ -102,7 +102,7 @@ def test_graph_factory(): | |||
| @pytest.mark.component_mindarmour | |||
| def test_pynative_ada_gaussian(): | |||
| context.set_context(mode=context.PYNATIVE_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| @@ -119,7 +119,7 @@ def test_pynative_ada_gaussian(): | |||
| @pytest.mark.component_mindarmour | |||
| def test_pynative_factory(): | |||
| context.set_context(mode=context.PYNATIVE_MODE, device_target="Ascend") | |||
| grad = Tensor([3, 2, 4], mstype.float32) | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| @@ -138,3 +138,45 @@ def test_pynative_factory(): | |||
| decay_policy=decay_policy) | |||
| ada_noise = ada_noise_construct(grad) | |||
| print('ada noise: ', ada_noise) | |||
| @pytest.mark.level0 | |||
| @pytest.mark.platform_x86_ascend_training | |||
| @pytest.mark.env_onecard | |||
| @pytest.mark.component_mindarmour | |||
| def test_pynative_exponential(): | |||
| context.set_context(mode=context.PYNATIVE_MODE, device_target="Ascend") | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| decay_policy = 'Exp' | |||
| ada_mechanism = MechanismsFactory() | |||
| ada_noise_construct = ada_mechanism.create('AdaGaussian', | |||
| norm_bound, | |||
| initial_noise_multiplier, | |||
| noise_decay_rate=alpha, | |||
| decay_policy=decay_policy) | |||
| ada_noise = ada_noise_construct(grad) | |||
| print('ada noise: ', ada_noise) | |||
| @pytest.mark.level0 | |||
| @pytest.mark.platform_x86_ascend_training | |||
| @pytest.mark.env_onecard | |||
| @pytest.mark.component_mindarmour | |||
| def test_graph_exponential(): | |||
| context.set_context(mode=context.GRAPH_MODE, device_target="Ascend") | |||
| grad = Tensor([0.3, 0.2, 0.4], mstype.float32) | |||
| norm_bound = 1.0 | |||
| initial_noise_multiplier = 0.1 | |||
| alpha = 0.5 | |||
| decay_policy = 'Exp' | |||
| ada_mechanism = MechanismsFactory() | |||
| ada_noise_construct = ada_mechanism.create('AdaGaussian', | |||
| norm_bound, | |||
| initial_noise_multiplier, | |||
| noise_decay_rate=alpha, | |||
| decay_policy=decay_policy) | |||
| ada_noise = ada_noise_construct(grad) | |||
| print('ada noise: ', ada_noise) | |||