████████╗ ██████╗ ██████╗ ██████╗ ██████╗ ████████╗ ╚══██╔══╝██╔═══██╗██╔══██╗ ██╔══██╗██╔═████╗╚══██╔══╝ ██║ ██║ ██║██████╔╝ ██████╔╝██║██╔██║ ██║ ██║ ██║ ██║██╔══██╗ ██╔══██╗████╔╝██║ ██║ ██║ ╚██████╔╝██║ ██║ ██████╔╝╚██████╔╝ ██║ ╚═╝ ╚═════╝ ╚═╝ ╚═╝ ╚═════╝ ╚═════╝ ╚═╝ Open Source Intelligence Tool for the Dark Web
- Onion Crawler (.onion)
- Returns Page title and address with a short description about the site
- Save links to database
- Get data from site
- Save crawl info to JSON file
- Crawl custom domains
- Check if the link is live
- Built-in Updater
- Build visual tree of link relationship that can be quickly viewed or saved to an image file
...(will be updated)
- Tor
- Python ^3.8
- Golang 1.19
- Poetry
(see requirements.txt for more details)
- https://github.com/KingAkeem/gotor (This service needs to be ran in tandem with TorBot)
Before you run the torBot make sure the following things are done properly:
- Run the tor service:
sudo service tor start
-
Make sure that your torrc is configured to SOCKS_PORT localhost:9050
-
Open a new terminal and run:
cd gotor && go run cmd/main/main.go -server
- Install TorBot Python requirements using poetry
poetry install # to install dependencies
poetry run python run.py -u https://www.example.com --depth 2 -v # example of running command with poetry
poetry run python run.py -h # for help
usage: Gather and analayze data from Tor sites. optional arguments: -h, --help show this help message and exit --version Show current version of TorBot. --update Update TorBot to the latest stable version -q, --quiet -u URL, --url URL Specifiy a website link to crawl -s, --save Save results in a file -m, --mail Get e-mail addresses from the crawled sites -p, --phone Get phone numbers from the crawled sites --depth DEPTH Specifiy max depth of crawler (default 1) --gather Gather data for analysis -v, --visualize Visualizes tree of data gathered. -d, --download Downloads tree of data gathered. -e EXTENSION, --extension EXTENSION Specifiy additional website extensions to the list(.com , .org, .etc) -c, --classify Classify the webpage using NLP module -cAll, --classifyAll Classify all the obtained webpages using NLP module -i, --info Info displays basic info of the scanned site`
- NOTE: -u is a mandatory for crawling
Read more about torrc here : Torrc
-
Ensure than you have a tor container running on port 9050.
-
Build the image using following command (in the root directory):
docker build -f docker/Dockerfile -t dedsecinside/torbot .
-
Run the container (make sure to link the tor container as
tor
):docker run --link tor:tor --rm -ti dedsecinside/torbot
On Linux platforms, you can make an executable for TorBot by using the install.sh script.
You will need to give the script the correct permissions using chmod +x install.sh
Now you can run ./install.sh
to create the torBot binary.
Run ./torBot
to execute the program.
- Visualization Module Revamp
- Implement BFS Search for webcrawler
- Use Golang service for concurrent webcrawling
- Improve stability (Handle errors gracefully, expand test coverage and etc.)
- Randomize Tor Connection (Random Header and Identity)
- Keyword/Phrase search
- Social Media Integration
- Increase anonymity
- Improve performance (Done with gotor)
- Screenshot capture
If you face any issues in the project, please let us know by creating a new issue here.
We welcome contributions to this project! Here are a few guidelines to follow:
- Fork the repository and create a new branch for your contribution.
- Make sure your code passes all tests by running
pytest
before submitting a pull request todev
branch. - Follow the PEP8 style guide for Python code.
- Make sure to add appropriate documentation for any new features or changes.
- When submitting a pull request, please provide a detailed description of the changes made.
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- PS Narayanan - Co-owner
- KingAkeem - Co-owner
... see all contributors