Skip to content

(⌐■_■) - Deep Reinforcement Learning instrumenting bettercap for WiFi pwning. Supporting WeActStudioScreen

License

Notifications You must be signed in to change notification settings

Siryak/pwnagotchi-weactstudio

 
 

Repository files navigation

Pwnagotchi

Release
This fork of Pwnagotchi has been overhauled to work solely on 64-bit Raspberry Pi's, it uses PyTorch as it's AI.

Patreon: Pwnagotchi-Torch

If you are using a Pi Zero 2W run the following commands through SSH.

sudo systemctl enable dphys-swapfile.service
sudo nano /etc/dphys-swapfile       # edit 100 -> 2048
sudo reboot now

Flash version 2.3.7 then run the commands at version 2.3.8 to go to latest version released. Now 2.4!

cd /usr/local/src/pwnagotchi
sudo git pull
sudo pip3 install .
sudo reboot

Pwnagotchi is an A2C-based "AI" leveraging bettercap that learns from its surrounding WiFi environment to maximize the crackable WPA key material it captures (either passively, or by performing authentication and association attacks). This material is collected as PCAP files containing any form of handshake supported by hashcat, including PMKIDs, full and half WPA handshakes.

ui

Instead of merely playing Super Mario or Atari games like most reinforcement learning-based "AI" (yawn), Pwnagotchi tunes its parameters over time to get better at pwning WiFi things to in the environments you expose it to.

More specifically, Pwnagotchi is using an LSTM with MLP feature extractor as its policy network for the A2C agent. If you're unfamiliar with A2C, here is a very good introductory explanation (in comic form!) of the basic principles behind how Pwnagotchi learns. (You can read more about how Pwnagotchi learns in the Usage doc.)

Keep in mind: Unlike the usual RL simulations, Pwnagotchi learns over time. Time for a Pwnagotchi is measured in epochs; a single epoch can last from a few seconds to minutes, depending on how many access points and client stations are visible. Do not expect your Pwnagotchi to perform amazingly well at the very beginning, as it will be exploring several combinations of key parameters to determine ideal adjustments for pwning the particular environment you are exposing it to during its beginning epochs ... but ** listen to your Pwnagotchi when it tells you it's boring!** Bring it into novel WiFi environments with you and have it observe new networks and capture new handshakes—and you'll see. :)

Multiple units within close physical proximity can "talk" to each other, advertising their presence to each other by broadcasting custom information elements using a parasite protocol I've built on top of the existing dot11 standard. Over time, two or more units trained together will learn to cooperate upon detecting each other's presence by dividing the available channels among them for optimal pwnage.

Documentation

https://www.pwnagotchi.ai

Links

  Official Links
Website pwnagotchi.ai
Forum community.pwnagotchi.ai
Slack pwnagotchi.slack.com
Subreddit r/pwnagotchi
Twitter @pwnagotchi

License

pwnagotchi is made with ♥ by @evilsocket and the amazing dev team. It is released under the GPL3 license.

About

(⌐■_■) - Deep Reinforcement Learning instrumenting bettercap for WiFi pwning. Supporting WeActStudioScreen

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • JavaScript 59.9%
  • Python 24.0%
  • CSS 14.1%
  • HTML 1.0%
  • Shell 0.5%
  • PowerShell 0.4%
  • Makefile 0.1%