Gym Threat Defense

Overview

Gym Threat Defense

The Threat Defense environment is an OpenAI Gym implementation of the environment defined as the toy example in Optimal Defense Policies for Partially Observable Spreading Processes on Bayesian Attack Graphs by Miehling, E., Rasouli, M., & Teneketzis, D. (2015). It constitutes a 29-state/observation, 4-action POMDP defense problem.

The environment

The Threat Defense environment

Above, the Threat Defense environment can be observed. None of the notations or the definitions made in the paper will be explained in the text that follows, but rather the benchmark of the toy example will be stated. If these are desired, follow the link found earlier to the paper of Miehling, E., Rasouli, M., & Teneketzis, D. (2015).

Attributes

Of the 12 attributes that the toy example is built up by, two are leaf attributes (1 and 5) and one is a critical attribute (12). To give the network a more realistic appearance, the 12 attributes are intepreted in the paper as:

  1. Vulnerability in WebDAV on machine 1
  2. User access on machine 1
  3. Heap corruption via SSH on machine 1
  4. Root access on machine 1
  5. Buffer overflow on machine 2
  6. Root access on machine 2
  7. Squid portscan on machine 2
  8. Network topology leakage from machine 2
  9. Buffer overflow on machine 3
  10. Root access on machine 3
  11. Buffer overflow on machine 4
  12. Root access on machine 4

Actions

The defender have access to the two following binary actions:

  • u_1: Block WebDAV service
  • u_2: Disconnect machine 2

Thus we have four countermeasures to apply, i.e U = {none, u_1, u_2, u_1 & u_2}.

Cost Function

The cost function is defined as C(x,u) = C(x) + D(u).

C(x) is the state cost, and is 1 if the state, that is x, is a critical attribute. Otherwise it is 0.

D(u) is the availability cost of a countermeasure u, and is 0 if the countermeasure is none, 1 if it is u_1 or u_2 and 5 if it is both u_1 and u_2.

Parameters

The parameters of the problem are:

# The probabilities of detection:
beta = [0.5, 0.5, 0.5, 0.5, 0.5, 0.5, 0.5, 0.7, 0.6, 0.7, 0.85, 0.95]

# The attack probabilities:
alpha_1, alpha_5 = 0.5

# The spread probabilities:
alpha_(1,2), alpha_(2,3), alpha_(4,9), alpha_(5,6), alpha_(7,8), alpha_(8,9), alpha_(8,11), alpha_(10,11) = 0.8

alpha_(3,4), alpha_(6,7), alpha_(9,10), alpha_(11,12) = 0.9

# The discount factor:
gamma = 0.85

# The initial belief vector
pi_0 = [1,0,...,0]

Dependencies

  • OpenAI Gym
  • Numpy

Installation

cd gym-threat-defense
pip install -e .

Rendering

There are two possible rendering alternatives when running the environment. These are:

  • Render to stdout
  • A visual mode which prints the graph and indicate which nodes the attacker has taken over

To do a visual rendering, pass in 'rgb_array' to the render function.

env.render('rgb_array')

GUI rendering

Otherwise, for an ASCII representation to stdout, pass in 'human'.

env.render('human')

Example of the printing, where we can see that the agent took the block and disconnect action. The attacker has enabled five attributes, i.e. nodes, represented by ones, where the non-enabled attributes are represented by zeros. A node with parentheses is a leaf node, also known as an entry-point, a square bracket is a normal non-leaf node and a double bracketed node is a critical node.

Action: Block WebDAV service and Disconnect machine 2
(1) --> [1] --> [0] --> [0]
		      \--> [0] <-- [0] <-- [1] <-- [1] <-- (1)
			   \--> [0] <---/
				  \--> [0] --> [[0]]

By default the mode is set to printing to stdout.

Example

As an example on how to use the Threat Defense environment, we provide a couple of algorithms that uses both configurations of the environment. Read the README in the examples/ directory for more information on which algorithm works with which.

Template

How to create new environments for Gym

Inspiration

banana-gym

gym-soccer

gym-pomdp

Authors

Owner
Hampus Ramström
Hampus Ramström
Python library for analysis of time series data including dimensionality reduction, clustering, and Markov model estimation

deeptime Releases: Installation via conda recommended. conda install -c conda-forge deeptime pip install deeptime Documentation: deeptime-ml.github.io

495 Dec 28, 2022
Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis"

StrengthNet Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis" https://arxiv.org/abs/2110

RuiLiu 65 Dec 20, 2022
Official implementation of the paper 'Details or Artifacts: A Locally Discriminative Learning Approach to Realistic Image Super-Resolution' in CVPR 2022

LDL Paper | Supplementary Material Details or Artifacts: A Locally Discriminative Learning Approach to Realistic Image Super-Resolution Jie Liang*, Hu

150 Dec 26, 2022
Deep and online learning with spiking neural networks in Python

Introduction The brain is the perfect place to look for inspiration to develop more efficient neural networks. One of the main differences with modern

Jason Eshraghian 447 Jan 03, 2023
The open source code of SA-UNet: Spatial Attention U-Net for Retinal Vessel Segmentation.

SA-UNet: Spatial Attention U-Net for Retinal Vessel Segmentation(ICPR 2020) Overview This code is for the paper: Spatial Attention U-Net for Retinal V

Changlu Guo 151 Dec 28, 2022
Meshed-Memory Transformer for Image Captioning. CVPR 2020

M²: Meshed-Memory Transformer This repository contains the reference code for the paper Meshed-Memory Transformer for Image Captioning (CVPR 2020). Pl

AImageLab 422 Dec 28, 2022
8-week curriculum for AI Builders

curriculum 8-week curriculum for AI Builders สารบัญ บทที่ 1 - Machine Learning คืออะไร บทที่ 2 - ชุดข้อมูลมหัศจรรย์และถิ่นที่อยู่ บทที่ 3 - Stochastic

AI Builders 134 Jan 03, 2023
ktrain is a Python library that makes deep learning and AI more accessible and easier to apply

Overview | Tutorials | Examples | Installation | FAQ | How to Cite Welcome to ktrain News and Announcements 2020-11-08: ktrain v0.25.x is released and

Arun S. Maiya 1.1k Jan 02, 2023
List some popular DeepFake models e.g. DeepFake, FaceSwap-MarekKowal, IPGAN, FaceShifter, FaceSwap-Nirkin, FSGAN, SimSwap, CihaNet, etc.

deepfake-models List some popular DeepFake models e.g. DeepFake, CihaNet, SimSwap, FaceSwap-MarekKowal, IPGAN, FaceShifter, FaceSwap-Nirkin, FSGAN, Si

Mingcan Xiang 100 Dec 17, 2022
PyTorch wrappers for using your model in audacity!

audacitorch This package contains utilities for prepping PyTorch audio models for use in Audacity. More specifically, it provides abstract classes for

Hugo Flores García 130 Dec 14, 2022
MMFlow is an open source optical flow toolbox based on PyTorch

Documentation: https://mmflow.readthedocs.io/ Introduction English | 简体中文 MMFlow is an open source optical flow toolbox based on PyTorch. It is a part

OpenMMLab 688 Jan 06, 2023
Music source separation is a task to separate audio recordings into individual sources

Music Source Separation Music source separation is a task to separate audio recordings into individual sources. This repository is an PyTorch implmeme

Bytedance Inc. 958 Jan 03, 2023
BitPack is a practical tool to efficiently save ultra-low precision/mixed-precision quantized models.

BitPack is a practical tool that can efficiently save quantized neural network models with mixed bitwidth.

Zhen Dong 36 Dec 02, 2022
Alex Pashevich 62 Dec 24, 2022
iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis

iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis Andreas Bl

CompVis Heidelberg 36 Dec 25, 2022
disentanglement_lib is an open-source library for research on learning disentangled representations.

disentanglement_lib disentanglement_lib is an open-source library for research on learning disentangled representation. It supports a variety of diffe

Google Research 1.3k Dec 28, 2022
StarGAN - Official PyTorch Implementation (CVPR 2018)

StarGAN - Official PyTorch Implementation ***** New: StarGAN v2 is available at https://github.com/clovaai/stargan-v2 ***** This repository provides t

Yunjey Choi 5.1k Jan 04, 2023
Automatic labeling, conversion of different data set formats, sample size statistics, model cascade

Simple Gadget Collection for Object Detection Tasks Automatic image annotation Conversion between different annotation formats Obtain statistical info

llt 4 Aug 24, 2022
DECA: Detailed Expression Capture and Animation (SIGGRAPH 2021)

DECA: Detailed Expression Capture and Animation (SIGGRAPH2021) input image, aligned reconstruction, animation with various poses & expressions This is

Yao Feng 1.5k Jan 02, 2023
Self-Learned Video Rain Streak Removal: When Cyclic Consistency Meets Temporal Correspondence

In this paper, we address the problem of rain streaks removal in video by developing a self-learned rain streak removal method, which does not require any clean groundtruth images in the training pro

Yang Wenhan 44 Dec 06, 2022