Nov 23, 2025

Arghus: automated verification defences against scammers and identity thieves

Josh

Deepfakes are out of control. Someone can clone your voice and call your gran pretending you are hurt and need help and cash. We are experiencing a breakdown in trust and authenticity.

I built a man-in-the-middle defence that screens incoming calls from unknown numbers. Callers can be marked as suspicious; if so, they need to undergo live verification. All important notifications are sent to the customer in real time, so they can see if they are being targeted.

The crux lies in having a shared secret between you and your relatives / cofounders / people important to you. These can be generated dynamically based on your communications (think scraping Slack messages to figure out what you spoke about yesterday, then asking a question about that). Deepfakes don't have access to this recent information, so you create a strong level of defence and trust.

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Cite this work

@misc {

title={

(HckPrj) Arghus: automated verification defences against scammers and identity thieves

},

author={

Josh

},

date={

11/23/25

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
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