sepformer-libri3mix / hyperparams.yaml
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# Generated 2021-06-27 from:
# /home/mila/s/subakany/speechbrain_new/recipes/LibriMix/separation/hparams/sepformer-libri3mix.yaml
# yamllint disable
# ################################
# Model: SepFormer for source separation
# https://arxiv.org/abs/2010.13154
# Dataset : Libri3Mix
# ################################
#
# Basic parameters
# Seed needs to be set at top of yaml, before objects with parameters are made
#
seed: 111
__set_seed: !apply:torch.manual_seed [111]
# Data params
# e.g. '/yourpath/Libri3Mix/train-clean-360/'
# the data folder is needed even if dynamic mixing is applied
data_folder: /miniscratch/subakany/LibriMixData/Libri3Mix/
# This is needed only if dynamic mixing is applied
base_folder_dm: /miniscratch/subakany/LibriMixData/LibriSpeech/train-clean-360_processed/
experiment_name: sepformer-libri3mix
output_folder: results/sepformer-libri3mix/111
train_log: results/sepformer-libri3mix/111/train_log.txt
save_folder: results/sepformer-libri3mix/111/save
train_data: results/sepformer-libri3mix/111/save/libri3mix_train-360.csv
valid_data: results/sepformer-libri3mix/111/save/libri3mix_dev.csv
test_data: results/sepformer-libri3mix/111/save/libri3mix_test.csv
skip_prep: false
ckpt_interval_minutes: 60
# Experiment params
auto_mix_prec: true # Set it to True for mixed precision
test_only: true
num_spks: 3
progressbar: true
save_audio: false # Save estimated sources on disk
sample_rate: 8000
# Training parameters
N_epochs: 200
batch_size: 1
lr: 0.00015
clip_grad_norm: 5
loss_upper_lim: 999999 # this is the upper limit for an acceptable loss
# if True, the training sequences are cut to a specified length
limit_training_signal_len: false
# this is the length of sequences if we choose to limit
# the signal length of training sequences
training_signal_len: 32000000
# Set it to True to dynamically create mixtures at training time
dynamic_mixing: true
use_wham_noise: false
# Parameters for data augmentation
use_wavedrop: false
use_speedperturb: true
use_speedperturb_sameforeachsource: false
use_rand_shift: false
min_shift: -8000
max_shift: 8000
speedperturb: !new:speechbrain.lobes.augment.TimeDomainSpecAugment
perturb_prob: 1.0
drop_freq_prob: 0.0
drop_chunk_prob: 0.0
sample_rate: 8000
speeds: [95, 100, 105]
wavedrop: !new:speechbrain.lobes.augment.TimeDomainSpecAugment
perturb_prob: 0.0
drop_freq_prob: 1.0
drop_chunk_prob: 1.0
sample_rate: 8000
# loss thresholding -- this thresholds the training loss
threshold_byloss: true
threshold: -30
# Encoder parameters
N_encoder_out: 256
out_channels: 256
kernel_size: 16
kernel_stride: 8
# Dataloader options
dataloader_opts:
batch_size: 1
num_workers: 3
# Specifying the network
Encoder: &id003 !new:speechbrain.lobes.models.dual_path.Encoder
kernel_size: 16
out_channels: 256
SBtfintra: &id001 !new:speechbrain.lobes.models.dual_path.SBTransformerBlock
num_layers: 8
d_model: 256
nhead: 8
d_ffn: 1024
dropout: 0
use_positional_encoding: true
norm_before: true
SBtfinter: &id002 !new:speechbrain.lobes.models.dual_path.SBTransformerBlock
num_layers: 8
d_model: 256
nhead: 8
d_ffn: 1024
dropout: 0
use_positional_encoding: true
norm_before: true
MaskNet: &id005 !new:speechbrain.lobes.models.dual_path.Dual_Path_Model
num_spks: 3
in_channels: 256
out_channels: 256
num_layers: 2
K: 250
intra_model: *id001
inter_model: *id002
norm: ln
linear_layer_after_inter_intra: false
skip_around_intra: true
Decoder: &id004 !new:speechbrain.lobes.models.dual_path.Decoder
in_channels: 256
out_channels: 1
kernel_size: 16
stride: 8
bias: false
optimizer: !name:torch.optim.Adam
lr: 0.00015
weight_decay: 0
loss: !name:speechbrain.nnet.losses.get_si_snr_with_pitwrapper
lr_scheduler: !new:speechbrain.nnet.schedulers.ReduceLROnPlateau
factor: 0.5
patience: 2
dont_halve_until_epoch: 5
epoch_counter: &id006 !new:speechbrain.utils.epoch_loop.EpochCounter
# lr_scheduler: !ref <lr_scheduler>
limit: 200
modules:
encoder: *id003
decoder: *id004
masknet: *id005
checkpointer: !new:speechbrain.utils.checkpoints.Checkpointer
checkpoints_dir: results/sepformer-libri3mix/111/save
recoverables:
encoder: *id003
decoder: *id004
masknet: *id005
counter: *id006
train_logger: !new:speechbrain.utils.train_logger.FileTrainLogger
save_file: results/sepformer-libri3mix/111/train_log.txt
pretrainer: !new:speechbrain.utils.parameter_transfer.Pretrainer
loadables:
encoder: !ref <Encoder>
masknet: !ref <MaskNet>
decoder: !ref <Decoder>