CrossLinked is a LinkedIn enumeration tool that uses search engine scraping to collect valid employee names from an organization. This technique provides accurate results without the use of API keys, credentials, or accessing LinkedIn directly!
Install the last stable release from PyPi:
pip3 install crosslinked
Install and run the latest code using Poetry:
git clone https://github.com/m8sec/crosslinked
cd crosslinked
poetry install
poetry run crosslinked -h
Install the most recent code from GitHub:
git clone https://github.com/m8sec/crosslinked
cd crosslinked
pip3 install .
CrossLinked assumes the organization's account naming convention has already been identified. This is required for execution and should be added to the CMD args based on your expected output. See the Naming Format and Example Usage sections below:
{first.{last} = john.smith
CMP\{first}{l} = CMP\johns
{f}{last}@company.com = [email protected]
🦖 Still Stuck? Metadata is always a good place to check for hidden information such as account naming convention. see PyMeta for more.
💥 New Feature 💥
To be compatible with alternate naming conventions CrossLinked allows users to control the index position of the name extracted from search text. Should the name not be long enough, or errors encountered with the search string, CrossLinked will revert back to its default format.
Note: the search string array starts at 0
. Negative numbers can also be used to count backwards from the last value.
# Default output
python3 crosslinked.py -f '{first}.{last}@company.com' Company
John David Smith = [email protected]
# Use the second-to-last name as "last"
python3 crosslinked.py -f '{0:first}.{-2:last}@company.com' Company
John David Smith = [email protected]
Jane Doe = [email protected]
# Use the second item in the array as "last"
python3 crosslinked.py -f '{first}.{1:last}@company.com' Company
John David Smith = [email protected]
Jane Doe = [email protected]
By default, CrossLinked will use google
and bing
search engines to identify employees of the target organization. After execution, two files (names.txt
& names.csv
) will appear in the current directory, unless modified in the CMD args.
- names.txt - List of unique user accounts in the specified format.
- names.csv - Raw search data. See the
Parse
section below for more.
python3 crosslinked.py -f '{first}.{last}@domain.com' company_name
python3 crosslinked.py -f 'domain\{f}{last}' -t 15 -j 2 company_name
⚠️ For best results, use the company name as it appears on LinkedIn"Target Company"
not the domain name.
Account naming convention changed after execution and now your hitting CAPTCHA requests? No Problem!
CrossLinked includes a names.csv
output file, which stores all scraping data including: name
, job title
, and url
. This can be ingested and parsed to reformat user accounts as needed.
python3 crosslinked.py -f '{f}{last}@domain.com' names.csv
The latest version of CrossLinked provides proxy support to rotate source addresses. Users can input a single proxy with --proxy 127.0.0.1:8080
or use multiple via --proxy-file proxies.txt
.
> cat proxies.txt
127.0.0.1:8080
socks4://111.111.111.111
socks5://222.222.222.222
> python3 crosslinked.py --proxy-file proxies.txt -f '{first}.{last}@company.com' -t 10 "Company"
⚠️ HTTP/S
proxies can be added by IP:Port notation. However, socks proxies will require asocks4://
orsocks5://
prefix.*
positional arguments:
company_name Target company name
optional arguments:
-h, --help show help message and exit
-t TIMEOUT Max timeout per search (Default=15)
-j JITTER Jitter between requests (Default=1)
Search arguments:
--search ENGINE Search Engine (Default='google,bing')
Output arguments:
-f NFORMAT Format names, ex: 'domain\{f}{last}', '{first}.{last}@domain.com'
-o OUTFILE Change name of output file (omit_extension)
Proxy arguments:
--proxy PROXY Proxy requests (IP:Port)
--proxy-file PROXY Load proxies from file for rotation
Contribute to the project by:
- Like and share the tool!
- Create an issue to report any problems or, better yet, initiate a PR.
- Reach out with any potential features or improvements @m8sec.