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DESIGN.md

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Project design and conventions

Data format

  • Waveform: 16/32-bit PCM or 32-bit float WAV that can be read by scipy.io.wavfile.read

  • Other data: binary, float-32bit, little endian (numpy dtype <f4). The data can be read in python by:

# for a data of shape [N, M]
f = open(filepath,'rb')
datatype = np.dtype(('<f4',(M,)))
data = np.fromfile(f,dtype=datatype)
f.close()

I assume data should be stored in c_continuous format (row-major). There are helper functions in ./core_scripts/data_io/io_tools.py to read and write binary data:

# create a float32 data array
import numpy as np
data = np.asarray(np.random.randn(5, 3), dtype=np.float32)

# write to './temp.bin' and read it as data2
import core_scripts.data_io.io_tools as readwrite
readwrite.f_write_raw_mat(data, './temp.bin')
data2 = readwrite.f_read_raw_mat('./temp.bin', 3)

# result should 0
data - data2

More instructions can be found in this Jupyter notebook here.

Files in this repository

Name Function
./core_scripts scripts (Numpy or Pytorch code) to manage the training process, data io, etc.
./core_modules finalized pytorch modules
./sandbox new functions and modules to be test
./project project directories, and each folder correspond to one model for one dataset
./project/*/*/main.py script to load data and run training and inference
./project/*/*/model.py model definition based on Pytorch APIs
./project/*/*/config.py configurations for training/val/test set data

The motivation is to separate the training and inference process, the model definition, and the data configuration. For example:

  • To define a new model, change model.py

  • To run on a new database, change config.py

The separation is not always strictly followed.

How the script works

The script starts with main.py and calls different functions for model training and inference.

During training:

     <main.py>        Entry point and controller of training process
        |           
   Argument parse     core_scripts/config_parse/arg_parse.py
   Initialization     core_scripts/startup_config.py
   Choose device     
        | 
Initialize & load     core_scripts/data_io/customize_dataset.py
training data set
        |----------|
        .     Load data set   <config.py> 
        .     configuration 
        .          |
        .     Loop over       core_scripts/data_io/customize_dataset.py
        .     data subset
        .          |       
        .          |---------|
        .          .    Load one subset   core_scripts/data_io/default_data_io.py
        .          .         |
        .          |---------|
        .          |
        .     Combine subsets 
        .     into one set
        .          |
        |----------|
        |
Initialize & load 
development data set  
        |
Initialize Model     <model.py>
Model(), Loss()
        | 
Initialize Optimizer core_scripts/op_manager/op_manager.py
        |
Load checkpoint      --trained-model option to main.py
        |
Start training       core_scripts/nn_manager/nn_manager.py f_train_wrapper()
        |             
        |----------|
        .          |
        .     Loop over training data
        .     for one epoch
        .          |
        .          |-------|    core_scripts/nn_manager/nn_manager.py f_run_one_epoch()
        .          |       |    
        .          |  Loop over 
        .          |  training data
        .          |       |
        .          |       |-------|
        .          |       .    get data_in, data_tar, data_info
        .          |       .    Call data_gen <- Model.forward(...)   <mode.py>
        .          |       .    Call Loss.compute()                   <mode.py>
        .          |       .    loss.backward()
        .          |       .    optimizer.step()
        .          |       .       |
        .          |       |-------|
        .          |       |
        .          |  Save checkpoint 
        .          |       |
        .          |  Early stop?
        .          |       | No  \
        .          |       |      \ Yes
        .          |<------|       |
        .                          |
        |--------------------------|
       Done

A detailed flowchart is APPENDIX_1.md.


That's all