Deploy Hashtopolis on Google Cloud Shell and Colab for free, zero-infrastructure password cracking.
Cloudtopolis is a tool that automates the deployment of Hashtopolis on Google Cloud Shell and Google Colaboratory for distributed password cracking. It solves the problem of requiring expensive hardware or cloud instances by leveraging free, temporary cloud resources. Users can crack hashes directly from a browser without maintaining any infrastructure.
Security researchers, penetration testers, and ethical hackers who need to perform password cracking but lack dedicated hardware or cloud budgets.
It offers a completely free, zero-infrastructure solution by utilizing Google's free tiers, making high-performance cracking accessible without setup complexity or ongoing costs.
Zero Infrastructure Password Cracking
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Fully utilizes Google Cloud Shell and Colab's free tiers, eliminating the need for paid cloud instances or local hardware, as highlighted in the README's 'Zero Infrastructure' feature.
Provisioning is handled via a single bash script, requiring minimal user intervention during installation, making deployment quick and straightforward.
Allows adding multiple cracking agents by repeating the Colab phase with different Google accounts, enabling distributed cracking without additional infrastructure.
Includes optional integration of popular wordlists like Rockyou and Kaonashi, providing immediate resources for cracking tasks without manual downloads.
Relies on free Google Colab sessions that have runtime limits and can be terminated unexpectedly, making it unsuitable for long or continuous cracking jobs.
Scaling requires multiple Google accounts, which is cumbersome and risks violating Google's terms of service if abused for excessive resource usage.
Despite automation, users must manually fill fields in the Colab notebook and manage data between phases, adding complexity and potential for errors.