Metadata-Version: 2.1
Name: iman
Version: 0.0.64
Summary: Python package for daily Tasks
Home-page: UNKNOWN
Author: Iman Sarraf
Author-email: imansarraf@gmail.com
License: UNKNOWN
Keywords: python,iman
Platform: UNKNOWN
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Education
Classifier: Programming Language :: Python :: 3

from iman import * 
==================

1-plt

2-now() ``get time``

3-F ``format floating point``

4-D ``format int number``

5-Write_List(MyList,Filename)

6-Write_Dic(MyDic,Filename)

7-Read(Filename) ``read txt file``

8-Read_Lines(Filename) ``read txt file line by line and return list``

9-Write(_str,Filename)

10-gf(pattern) ``Get files in a directory``

11-gfa(directory_pattern , ext="*.*") ``Get Files in a Directory and SubDirectories``

12-ReadE(Filename) ``Read Excel files``

13-PM(dir) ``creat directory``

14-PB(fname) ``get basename``

15-PN(fname) ``get file name``

16-PE(fname) ``get ext``

17-PD(fname) ``get directory``

18-PS(fname) ``get size``

19-PJ(segments) ``Join Path``

20-clear() ``clear cmd``

21-os

22-np

23-RI(start_int , end_int , count=1) ``random int``

24-RF(start_float , end_float , count=1) ``random float``

25-RS(Arr) ``shuffle``

26-LJ(job_file_name)

27-SJ(value , job_file_name)

28-LN(np_file_name)

29-SN(arr , np_file_name)

30-cmd(command , redirect=True) ``Run command in CMD``

31-PX(fname) ``check existance of file``

32-RC(Arr , size=1) ``Random Choice``

33-onehot(data, nb_classes)

from iman import Audio 
======================
1-Read(filename,sr,ffmpeg_path) ``Read wav alaw and mp3 (return Just MONO)``

2-Resample(data , fs, sr)

3-Read_Alaw(filename)

4-ReadMp3(filename,sr,mono,ffmpeg_path) ``Just Windows``

5-Write(filename, data ,fs)

6-frame(y)

7-split(y)

8-ReadT(filename, sr , mono=True) ``Read and resample wav file with torchaudio``

9-VAD(y,top_db=40, frame_length=200, hop_length=80)

10-ReadMp3_miniaudio (filename,sr,mono)

11-compress(fname_pattern , sr=16000 , ext='mp3' , mono=True ,ffmpeg_path='c:\\ffmpeg.exe' ,oname=None , ofolder=None, worker=1)

from iman import info 
=====================

1-get() info about cpu and gpu ``need torch``

2-cpu() ``get cpu percentage usage``

3-gpu() ``get gpu memory usage``

4-memory() ``get ram usage GB``

5-plot(fname="log.txt" , delay=1)


from iman import metrics 
========================
1-EER(lab,score)

2-cosine_distance(v1,v2)

3-roc(lab,score)

4-wer(ref, hyp)

5-cer(ref, hyp)

6-wer_list(ref_list , hyp_list)

7-cer_list(ref_list , hyp_list)

from iman import tsne 
=====================

1-plot(fea , label)

from iman import xvector 
========================
1-xvec,lda_xvec,gender = get(filename , model(model_path , model_name , model_speaker_num))


from iman import web 
====================
1-change_wallpaper()

2-dl(url)

from iman import matlab 
=======================
1-np2mat(param , mat_file_name)

2-dic2mat(param , mat_file_name)

3-mat2dic (mat_file_name)

from iman import Features
=========================
1- mfcc_fea,mspec,log_energy = mfcc.SB.Get(wav,sample_rate) ``Compute MFCC with speechbrain - input must read with torchaudio``

2-mfcc.SB.Normal(MFCC) ``Mean Var Normalization Utt with speechbrain``

3- mfcc_fea = mfcc.LS.Get(wav,sample_rate) ``Compute MFCC with Librosa - input is numpy array``

4-mfcc.LS.Normal(MFCC , win_len=150) ``Mean Var Normalization Local 150 left and 150 right``

from iman import AUG  
====================
1-Add_Noise(data , noise , snr) ``Don't need sox``

2-Add_Reverb( data , rir) ``Don't need sox``

3-Add_NoiseT(data , noise , snr) ``Don't need sox (torchaudio)``

4-Add_ReverbT( data , rir) ``Don't need sox (torchaudio)``

x=AUG.aug(sox_path) ``Use this Just in WINDOWS``

5-x.mp3(fname , sr, fout,ratio)

6-x.speed(fname,fout,ratio)

7-x.volume(fname ,fout,ratio)

from iman.[sad_torch_mfcc | sad_tf] import *
===============================================================================
seg = Segmenter(batch_size, vad_type=['sad'|'vad'] , sr=[8000 | 16000] , model_path=["c:\\sad_model_pytorch.pth" | "c:\\keras_speech_music_noise_cnn.hdf5"] , max_time=120 , tq=1)  ``max_time in second and tq(verbose) Just in torch model to split fea output``

isig,wav,mfcc = seg(fname)  ``mfcc output Just in torch model--> Concat Mfccs where speech detected`` 

mfcc = MVN(mfcc) ``Just in torch model`` 

isig = filter_output(isig , max_silence ,ignore_small_speech_segments , max_speech_len ,split_speech_bigger_than) 

seg2aud(isig , filename)  

filter_sig(isig , wav , sr) ``Get Just Speech Parts of file``

from iman import Report   ``Tensorboard Writer``
==================================================
r=Report.rep(log_dir=None)

r.WS(_type , _name , value , itr)  ``Add_scalar``

r.WT(_type , _name , _str , itr)   ``Add_text``

r.WG(pytorch_model , example_input)   ``Add_graph``

r.WI(_type , _name , images , itr)   ``Add_image``

from iman import par
========================
if (__name__ == '__main__'):  
 
res = par.par(files , func , worker=4 , args=[])   ``def func(fname , _args): ...``

from  iman import examples
==========================
examples.items   ``get items in examples folder``

examples.help(topic)



