#Packet loss simulator This code is an attempt at simulating better packet loss scenarios. The most common way of simulating packet loss is to use a random sequence where each packet loss event is uncorrelated with previous events. That is a simplistic model since we know that losses often occur in bursts. This model uses real data to build a generative model for packet loss. We use the training data provided for the Audio Deep Packet Loss Concealment Challenge, which is available at: http://plcchallenge2022pub.blob.core.windows.net/plcchallengearchive/test_train.tar.gz To create the training data, run: `./process_data.sh //test_train/train/lossy_signals/` That will create an ascii loss\_sorted.txt file with all loss data sorted in increasing packet loss percentage. Then just run: `python ./train_lossgen.py` to train a model To generate a sequence, run `python3 ./test_lossgen.py output.txt --length 10000` where is the .pth model file and is the amount of loss (e.g. 0.2 for 20% loss).