Skip to content

matanber/ShadowClone

 
 

Repository files navigation

ShadowClone

ShadowClone allows you to distribute your long running tasks dynamically across thousands of serverless functions and gives you the results within seconds where it would have taken hours to complete.

You can make full use of the Free Tiers provided by cloud providers and supercharge your mundane cli tools with shadow clone jutsu (Naruto style)!

Installation

Please visit the wiki for installation and intial configuration instructions

Usage

⚡ python shadowclone.py -h
usage: shadowclone.py [-h] -i INPUT [-s SPLITNUM] [-o OUTPUT] -c COMMAND

optional arguments:
  -h, --help            show this help message and exit
  -i INPUT, --input INPUT
  -s SPLITNUM, --split SPLITNUM
                        Number of lines per chunk of file
  -o OUTPUT, --output OUTPUT
  -c COMMAND, --command COMMAND
                        command to execute
  --no-split NOSPLIT    File to be used without splitting

How it works

We create a container image during the initial setup and register it as a runtime for our function in AWS/GCP/Azure whatever. When you execute ShadowClone on your computer, instances of that container are activated automatically and are only active for the duration of its execution. How many instances to activate is dynamically decided at runtime depending on the size of the input file provided and the split factor. The input is then split into chunks and equally distributed between all the instances to execute in parallel. For example, if your input file has 10,000 lines and you set the split factor to 100 lines, then it will be split into 100 chunks of 100 lines each and 100 instances will be run in parallel!

Features

  • Extremely fast
  • No need to maintain a VPS (or a fleet of it :))
  • Costs almost nothing per month
    • Compatible with free tiers of most cloud services
  • Cloud agnostic
    • Same script works with AWS, GCP, Azure etc.
  • Supports upto 1000 parallel invocations
  • Dynamically decide the number of invocations
  • Run any tool in parallel on the cloud
  • Pipe output to other tools

Comparison

This tool was inspired by the awesome Axiom and Fleex projects and goes beyond the concept of VPS for running the tools by using serverless functions and containers.

Features Axiom/Fleex ShadowClone
Instances 10-100s* 1000s
Cost Per instance/per minute Mostly Free**
Startup Time 4-5 minutes 2-3 seconds
Max Execution Time Unlimited 15 minutes
Idle Cost $++ Free
On Demand Scalability No

*Most cloud providers do not allow spinning up too many instances by default, so you are limited to around 10-15 instances at max. You have to make a request to the support to increase this number.

** AWS & Azure allow 1 million invocations per month for free. Google allows 2 million invocations per month for free. You will be charged only if you go above these limits

Demo

DNS Bruteforcing using a 43mb file - 34 seconds

asciicast

Running httpx on 94K subdomains in 1 min

asciicast

References

Lithops documentation

Free Tiers

Cloud Provider Free Allowance Link
Google Functions 2 Million invocations, 400,000 GB-seconds per month Google Cloud Free Program
AWS Lambda 1 Million invocations, Up to 3.2 million seconds of compute time per month Free Cloud Computing Services - AWS Free Tier
Azure Functions 1 Million invocations Microsoft Azure Free Services

Obviously, you can make any number of function invocations per month. The table above only shows how many invocations are free.

Similar Tools

Disclaimer

This tool is designed as a proof-of-concept implementation and it's usage is intended for educational purpose only. Usage for attacking targets without prior mutual consent is illegal. It's the end user's responsibility to obey all applicable local, state and federal laws. Developers assume no liability and are not responsible for any misuse or damage caused by this program.

About

Unleash the power of cloud

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 78.6%
  • Dockerfile 21.4%