evilsocket / pwnagotchi
- понедельник, 23 сентября 2019 г. в 00:20:37
Python
(⌐■_■) - Deep Reinforcement Learning vs WiFI
Pwnagotchi is an "AI" that learns from the WiFi environment and instruments bettercap in order to maximize the WPA key material (any form of handshake that is crackable, including PMKIDs, full and half WPA handshakes) captured.
Specifically, it's using an LSTM with MLP feature extractor as its policy network for the A2C agent, here is a very good intro on the subject.
Instead of playing Super Mario or Atari games, pwnagotchi will tune over time its own parameters, effectively learning to get better at pwning WiFi things. Keep in mind: unlike the usual RL simulations, pwnagotchi learns over time (where 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 it to perform amazingly well at the beginning, as it'll be exploring several combinations of parameters ... but listen to it when it's bored, bring it with you and have it observe new networks and capture new handshakes and you'll see :)
Multiple units can talk to each other, advertising their own presence using a parasite protocol I've built on top of the existing dot11 standard, by broadcasting custom information elements. Over time, two or more units learn to cooperate if they detect each other's presence, by dividing the available channels among them.
Depending on the status of the unit, several states and states transitions are configurable and represented on the display as different moods, expressions and sentences.
If instead you are a boring person, you can disable the AI and have the algorithm run just with the preconfigured default parameters and enjoy a very portable bettercap + webui dedicated hardware.
NOTE: The software requires bettercap compiled from master.
For hackers to learn reinforcement learning, WiFi networking and have an excuse to take a walk more often. And it's cute as f---.
THIS IS STILL ALPHA STAGE SOFTWARE, IF YOU DECIDE TO TRY TO USE IT, YOU ARE ON YOUR OWN, NO SUPPORT WILL BE PROVIDED, NEITHER FOR INSTALLATION OR FOR BUGS
Do not try with Kali on the Raspberry Pi 0 W, it is compiled without hardware floating point support and TensorFlow is simply not available for it, use Raspbian.
The UI is available either via display if installed, or via http://10.0.0.2:8080/ if you connect to the unit via usb0 and set a static address on the network interface.
* when hopping on all channels.hostname sets the unit name./var/log/pwnagotchi.log is your friend.ui.video section of the config.yml - if you don't want to use a display, you can connect to it with the browser and a cable.Magic scripts that makes it talk to the internet:
#!/bin/bash
# name of the ethernet gadget interface on the host
USB_IFACE=${1:-enp0s20f0u1}
USB_IFACE_IP=10.0.0.1
USB_IFACE_NET=10.0.0.0/24
# host interface to use for upstream connection
UPSTREAM_IFACE=enxe4b97aa99867
ip addr add $USB_IFACE_IP/24 dev $USB_IFACE
ifconfig $USB_IFACE up
iptables -A FORWARD -o $UPSTREAM_IFACE -i $USB_IFACE -s $USB_IFACE_NET -m conntrack --ctstate NEW -j ACCEPT
iptables -A FORWARD -m conntrack --ctstate ESTABLISHED,RELATED -j ACCEPT
iptables -t nat -F POSTROUTING
iptables -t nat -A POSTROUTING -o $UPSTREAM_IFACE -j MASQUERADE
echo 1 > /proc/sys/net/ipv4/ip_forwardpwnagotchi is made with ♥ by @evilsocket and it's released under the GPL3 license.