describe_state() methods
## Summary - Add an object that holds the entire simulation, and a container for the network that keeps track of a list of nodes and links. - Implement `describe_state()` for all existing sim components and take advantage of the inheritance relationships to avoid repetition. - Fix some minor mistakes like typehints and indentation errors. - Write a jupyter notebook which uses the python API to create a simulation and verify that it's `describe_state()` method outputs a correct value. - Currently the notebook creates the simulation in a janky way, because the API for simulation creation is not fleshed out yet. Further tickets have been added to the backlog to address some of these shortcomings. They are: - #1790 ## Test process I have tested that the notebook runs and that after populating a simulation, the describe_state function returns a dictionary full of only serialisable data types. ## Checklist - [y] This PR is linked to a **work item** - [y] I have performed **self-review** of the code - [~] I have written **tests** for any new functionality added with this PR - [n] I have updated the **documentation** if this PR changes or adds functionality - [na] I have written/updated **design docs** if this PR implements new functionality - [y] I have update the **change log** - [y] I have run **pre-commit** checks for code style Note: This ticket also makes a small amount of progress against: #1705, it adds a shell of a network class, but only by creating the class, not implementing any functionality. Related work items: #1787
PrimAITE
The ARCD Primary-level AI Training Environment (PrimAITE) provides an effective simulation capability for the purposes of training and evaluating AI in a cyber-defensive role. It incorporates the functionality required of a primary-level ARCD environment, which includes:
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The ability to model a relevant platform / system context;
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The ability to model key characteristics of a platform / system by representing connections, IP addresses, ports, traffic loading, operating systems, services and processes;
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Operates at machine-speed to enable fast training cycles.
PrimAITE presents the following features:
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Highly configurable (via YAML files) to provide the means to model a variety of platform / system laydowns and adversarial attack scenarios;
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A Reinforcement Learning (RL) reward function based on (a) the ability to counter the specific modelled adversarial cyber-attack, and (b) the ability to ensure success;
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Provision of logging to support AI evaluation and metrics gathering;
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Uses the concept of Information Exchange Requirements (IERs) to model background pattern of life and adversarial behaviour;
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An Access Control List (ACL) function, mimicking the behaviour of a network firewall, is applied across the model, following standard ACL rule format (e.g. DENY/ALLOW, source IP address, destination IP address, protocol and port);
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Application of IERs to the platform / system laydown adheres to the ACL ruleset;
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Presents an OpenAI gym or RLLib interface to the environment, allowing integration with any OpenAI gym compliant defensive agents;
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Full capture of discrete logs relating to agent training (full system state, agent actions taken, instantaneous and average reward for every step of every episode);
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NetworkX provides laydown visualisation capability.
Getting Started with PrimAITE
💫 Install & Run
PrimAITE is designed to be OS-agnostic, and thus should work on most variations/distros of Linux, Windows, and MacOS. Currently, the PrimAITE wheel can only be installed from GitHub. This may change in the future with release to PyPi.
Windows (PowerShell)
Prerequisites:
- Manual install of Python >= 3.8 < 3.11
Install:
mkdir ~\primaite
cd ~\primaite
python3 -m venv .venv
attrib +h .venv /s /d # Hides the .venv directory
.\.venv\Scripts\activate
pip install https://github.com/Autonomous-Resilient-Cyber-Defence/PrimAITE/releases/download/v2.0.0/primaite-2.0.0-py3-none-any.whl
primaite setup
Run:
primaite session
Unix
Prerequisites:
- Manual install of Python >= 3.8 < 3.11
sudo add-apt-repository ppa:deadsnakes/ppa
sudo apt install python3.10
sudo apt-get install python3-pip
sudo apt-get install python3-venv
Install:
mkdir ~/primaite
cd ~/primaite
python3 -m venv .venv
source .venv/bin/activate
pip install https://github.com/Autonomous-Resilient-Cyber-Defence/PrimAITE/releases/download/v2.0.0/primaite-2.0.0-py3-none-any.whl
primaite setup
Run:
primaite session
Developer Install from Source
To make your own changes to PrimAITE, perform the install from source (developer install)
1. Clone the PrimAITE repository
git clone git@github.com:Autonomous-Resilient-Cyber-Defence/PrimAITE.git
2. CD into the repo directory
cd PrimAITE
3. Create a new python virtual environment (venv)
python3 -m venv venv
4. Activate the venv
Unix
source venv/bin/activate
Windows (Powershell)
.\venv\Scripts\activate
5. Install primaite with the dev extra into the venv along with all of it's dependencies
python3 -m pip install -e .[dev]
6. Perform the PrimAITE setup:
primaite setup
📚 Building documentation
The PrimAITE documentation can be built with the following commands:
Unix
cd docs
make html
Windows (Powershell)
cd docs
.\make.bat html