# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import numpy as np import pytest import torch from nemo.collections.asr.modules.conformer_encoder import ConformerEncoder class TestStochasticDepth: """Testing stochastic depth functionality.""" def test_stochastic_depth_model_creation(self): """Testing basic model creation and the drop probs are correctly assigned.""" n_layers = 4 model = ConformerEncoder(feat_in=10, n_layers=n_layers, d_model=4, feat_out=8) # checking that by default SD is disabled assert model.layer_drop_probs == [0.0] * n_layers # linear mode for drop_prob in [0.3, 0.5, 0.9]: for start_layer in [1, 3]: model = ConformerEncoder( feat_in=10, n_layers=n_layers, d_model=4, feat_out=8, stochastic_depth_drop_prob=drop_prob, stochastic_depth_start_layer=start_layer, ) L = n_layers - start_layer assert model.layer_drop_probs == [0.0] * start_layer + [drop_prob * l / L for l in range(1, L + 1)] # uniform mode for drop_prob in [0.3, 0.5, 0.9]: model = ConformerEncoder( feat_in=10, n_layers=n_layers, d_model=4, feat_out=8, stochastic_depth_drop_prob=drop_prob, stochastic_depth_mode="uniform", stochastic_depth_start_layer=start_layer, ) L = n_layers - start_layer assert model.layer_drop_probs == [0.0] * start_layer + [drop_prob] * L # checking for errors for drop_prob in [-1.0, 1.0]: with pytest.raises(ValueError, match="stochastic_depth_drop_prob has to be in"): ConformerEncoder( feat_in=10, n_layers=n_layers, d_model=4, feat_out=8, stochastic_depth_drop_prob=drop_prob, stochastic_depth_mode="uniform", ) with pytest.raises(ValueError, match="stochastic_depth_mode has to be one of"): ConformerEncoder(feat_in=10, n_layers=n_layers, d_model=4, feat_out=8, stochastic_depth_mode="weird") for start_layer in [-1, 0, 5]: with pytest.raises(ValueError, match="stochastic_depth_start_layer has to be in"): ConformerEncoder( feat_in=10, n_layers=n_layers, d_model=4, feat_out=8, stochastic_depth_start_layer=start_layer, ) @pytest.mark.pleasefixme def test_stochastic_depth_forward(self): """Testing that forward works and we get randomness during training, but not during eval.""" random_input = torch.rand((1, 2, 2)) random_length = torch.tensor([2], dtype=torch.int64) model = ConformerEncoder( feat_in=2, n_layers=3, d_model=4, feat_out=4, stochastic_depth_drop_prob=0.8, dropout=0.0, dropout_pre_encoder=0.0, dropout_emb=0.0, conv_norm_type="layer_norm", conv_kernel_size=3, ) model.train() outputs = [None] * 5 for i in range(5): outputs[i] = model(audio_signal=random_input, length=random_length)[0] # checking that not all outputs are the same num_diff = 0 for i in range(1, 5): if not torch.allclose(outputs[i], outputs[0]): num_diff += 1 assert num_diff > 0 model.eval() outputs = [None] * 5 for i in range(5): outputs[i] = model(audio_signal=random_input, length=random_length)[0] # checking that not all outputs are the same num_diff = 0 for i in range(1, 5): if not torch.allclose(outputs[i], outputs[0]): num_diff += 1 assert num_diff == 0 class TestBypassPreEncode: """Testing bypass pre-encode functionality.""" def test_bypass_pre_encode_forward(self): """Testing that forward works with "bypass pre-encode" mode.""" # For pre-encoded embeddings, the shape is (batch_size, n_frames, emb_dim) batch_size = 2 n_frames, emb_dim, feat_out = 17, 16, 8 random_input = torch.rand((batch_size, n_frames, emb_dim)) random_length = torch.tensor([n_frames], dtype=torch.int64) model = ConformerEncoder( feat_in=10, n_layers=3, d_model=emb_dim, feat_out=feat_out, stochastic_depth_drop_prob=0.0, dropout=0.0, dropout_pre_encoder=0.0, dropout_emb=0.0, conv_norm_type="layer_norm", conv_kernel_size=3, ) model.train() fwd_outputs = model(audio_signal=random_input, length=random_length, bypass_pre_encode=True)[0] assert fwd_outputs.shape == (batch_size, feat_out, n_frames) model.eval() fwd_outputs = model(audio_signal=random_input, length=random_length, bypass_pre_encode=True)[0] assert fwd_outputs.shape == (batch_size, feat_out, n_frames) def test_error_shape_invalid_bypass_pre_encode_forward(self): """ Testing that error messages are correctly triggered regarding "bypass pre-encode" mode. Both correct samples and wrongs samples are tested. (1) bypass_pre_encode = False (default): `audio_signal` must be a tensor containing audio features. Shape: (batch, self._feat_in, n_frames) (2) bypass_pre_encode = True: `audio_signal` must be a tensor containing pre-encoded embeddings. Shape: (batch, n_frame, self.d_model) """ batch_size = 2 n_frames, emb_dim, feat_in, feat_out = 17, 16, 10, 8 pre_encode_input = torch.rand((batch_size, n_frames, emb_dim)) feat_input = torch.rand((batch_size, feat_in, n_frames)) input_length = torch.tensor([n_frames], dtype=torch.int64) model = ConformerEncoder( feat_in=feat_in, n_layers=3, d_model=emb_dim, feat_out=feat_out, stochastic_depth_drop_prob=0.0, dropout=0.0, dropout_pre_encoder=0.0, dropout_emb=0.0, conv_norm_type="layer_norm", conv_kernel_size=3, ) sub_sampled_n_frames = np.ceil(n_frames / model.subsampling_factor) # Test with bypass_pre_encode = True, should be pre_encode_input but given feat_input. model.train() with pytest.raises(ValueError): model(audio_signal=feat_input, length=input_length, bypass_pre_encode=True) model.eval() with pytest.raises(ValueError): model(audio_signal=feat_input, length=input_length, bypass_pre_encode=True) # Test with bypass_pre_encode = True, given the correct input pre_encode_input. model.train() fwd_outputs = model(audio_signal=pre_encode_input, length=input_length, bypass_pre_encode=True)[0] assert fwd_outputs.shape == (batch_size, feat_out, n_frames) model.eval() fwd_outputs = model(audio_signal=pre_encode_input, length=input_length, bypass_pre_encode=True)[0] assert fwd_outputs.shape == (batch_size, feat_out, n_frames) # Test with bypass_pre_encode = False, should be feat_input but given pre_encode_input. model.train() with pytest.raises(ValueError): model(audio_signal=pre_encode_input, length=input_length, bypass_pre_encode=False) model.eval() with pytest.raises(ValueError): model(audio_signal=pre_encode_input, length=input_length, bypass_pre_encode=False) # Test with bypass_pre_encode = False, given the correct input feat_input. model.train() fwd_outputs = model(audio_signal=feat_input, length=input_length, bypass_pre_encode=False)[0] assert fwd_outputs.shape == (batch_size, feat_out, sub_sampled_n_frames) model.eval() fwd_outputs = model(audio_signal=feat_input, length=input_length, bypass_pre_encode=False)[0] assert fwd_outputs.shape == (batch_size, feat_out, sub_sampled_n_frames)