Home

Awesome

Using GANs for Sharing Networked Time Series Data: Challenges, Initial Promise, and Open Questions

Previous title: Generating High-fidelity, Synthetic Time Series Datasets with DoppelGANger

[paper (arXiv)] [paper (IMC 2020, Best Paper Finalist)] [talk] [code]

Authors: Zinan Lin (CMU), Alankar Jain (CMU), Chen Wang (IBM), Giulia Fanti (CMU), Vyas Sekar (CMU)

Abstract: Limited data access is a longstanding barrier to data-driven research and development in the networked systems community. In this work, we explore if and how generative adversarial networks (GANs) can be used to incentivize data sharing by enabling a generic framework for sharing synthetic datasets with minimal expert knowledge. As a specific target, our focus in this paper is on time series datasets with metadata (e.g., packet loss rate measurements with corresponding ISPs). We identify key challenges of existing GAN approaches for such workloads with respect to fidelity (e.g., long-term dependencies, complex multidimensional relationships, mode collapse) and privacy (i.e., existing guarantees are poorly understood and can sacrifice fidelity). To improve fidelity, we design a custom workflow called DoppelGANger (DG) and demonstrate that across diverse real-world datasets (e.g., bandwidth measurements, cluster requests, web sessions) and use cases (e.g., structural characterization, predictive modeling, algorithm comparison), DG achieves up to 43% better fidelity than baseline models. Although we do not resolve the privacy problem in this work, we identify fundamental challenges with both classical notions of privacy and recent advances to improve the privacy properties of GANs, and suggest a potential roadmap for addressing these challenges. By shedding light on the promise and challenges, we hope our work can rekindle the conversation on workflows for data sharing.

Users

DoppelGANger has been used by several independent users/companies. Check the following links for more information:


This repo contains the codes of DoppelGANger. The codes were tested under Python 2.7.5 and Python 3.5.2, TensorFlow 1.4.0 (but should also work for all Tensorflow 1.4.0 - 1.15).

Dataset format

Note that metadata in the paper are denoted as attribute in the code; measurement in the paper are denoted as feature in the code. To train DoppelGANger for your data, you need to prepare your data according to the following format, which contains three files:

Let's look at a concrete example. Assume that there are two features (a 1-dimension continuous feature normalized to [0,1] and a 2-dimension categorical feature) and two attributes (a 2-dimension continuous attribute normalized to [-1, 1] and a 3-dimension categorical attributes). Then data_feature_output and data_attribute_output should be:

data_feature_output = [
	Output(type_=CONTINUOUS, dim=1, normalization=ZERO_ONE, is_gen_flag=False),
	Output(type_=DISCRETE, dim=2, normalization=None, is_gen_flag=False)]
	
data_attribute_output = [
	Output(type_=CONTINUOUS, dim=2, normalization=MINUSONE_ONE, is_gen_flag=False),
	Output(type_=DISCRETE, dim=3, normalization=None, is_gen_flag=False)]

Note that is_gen_flag should always set to False (default). is_gen_flag=True is for internal use only (see comments in doppelganger.py for details).

Assume that there are two samples, whose lengths are 2 and 4, and assume that the maximum length is set to 4. Then data_feature , data_attribute , and data_gen_flag could be:

data_feature = [
	[[0.2, 1.0, 0.0], [0.4, 0.0, 1.0], [0.0, 0.0, 0.0], [0.0, 0.0, 0.0]],
	[[0.9, 0.0, 1.0], [0.3, 0.0, 1.0], [0.2, 0.0, 1.0], [0.8, 1.0, 0.0]]]
	
data_attribute = [
	[-0.2, 0.3, 1.0, 0.0, 0.0],
	[0.2, 0.3, 0.0, 1.0, 0.0]]
	
data_gen_flag = [
	[1.0, 1.0, 0.0, 0.0],
	[1.0, 1.0, 1.0, 1.0]]

The datasets we used in the paper (Wikipedia Web Traffic, Google Cluster Usage Traces, Measuring Broadband America) can be found here.

Run DoppelGANger

The codes are based on GPUTaskScheduler library, which helps you automatically schedule jobs among GPU nodes. Please install it first. You may need to change GPU configurations according to the devices you have. The configurations are set in config*.py in each directory. Please refer to GPUTaskScheduler's GitHub page for details of how to make proper configurations.

You may also run these codes without GPUTaskScheduler. See the main.py in example_training(without_GPUTaskScheduler) for an example.

The implementation of DoppelGANger is at gan/doppelganger.py. You may refer to the comments in it for details. Here we provide our code for training DoppelGANger on the three datasets (Wikipedia Web Traffic, Google Cluster Usage Traces, Measuring Broadband America) in the paper, and give examples on using DoppelGANger to generate data and retraining the attribute generation network.

Download dataset

Before running the code, please download the three datasets here and put it under data folder.

Train DoppelGANger

cd example_training
python main.py

Generate data by DoppelGANger

cd example_generating_data
python main_generate_data.py

Retrain attribute generation network of DoppelGANger

Put your data with the desired attribute distribution in data/web_retraining, and then

cd example_retraining_attribute
python main.py

Differentially private (DP) version

To run the differentially private version of DoppelGANger (Section 6.2 in the paper), please first install TensorFlow Privacy library.

cd example_dp_training
python main.py
cd example_dp_generating_data
python main_generate_data.py

Customize DoppelGANger

You can play with the configurations (e.g., whether to have the auxiliary discriminator) in config*.py.

The meaning of the key parameters are: