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In Machines we Trust

Anthropic's Mythos Found Millions of Security Vulnerabilities

In Machines we Trust

In Machines we Trust

Technology

4.36 Ratings

🗓️ 7 April 2026

⏱️ 11 minutes

🧾️ Download transcript

Summary

In this episode, we explore Anthropic's ambitious Project Glasswing, aimed at securing critical software vulnerabilities with the powerful Claude Mythos Preview model. With a $100 million pledge to major tech companies, this initiative is designed to address the urgent risks in software security before its public release.


Chapters
00:00 Introduction to Project Glasswing
00:40 The Power of Claude Mythos Preview
01:40 Initial Findings and Concerns
03:58 Deployment and Partnerships
07:39 Revenue Growth and Business Strategy
09:59 Conclusion and Future Outlook

 
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Transcript

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0:00.0

Welcome to the podcast. I'm your host, Jaden Schaefer. Today on the show, we are talking about Project Glasswing from Anthropic.

0:06.5

They just tweeted this out like an hour ago. They said, introducing Project Glasswing, an urgent initiative to help secure the world's most critical software.

0:15.4

It's powered by our newest frontier model, Claude Myphos, Preview, which can find software vulnerabilities better than all but the most

0:22.3

skilled humans. Okay, there is this crazy project. It's not released to the public. They're sending

0:27.2

this out to security researchers and they've pledged $100 million, essentially to big companies like

0:33.3

Microsoft to go and test all of the open source software, all of the software in the world,

0:37.6

to find the vulnerabilities and fix it before they release this to the public because they

0:41.8

said, basically, this is going to be an existential crisis for code because everything can

0:46.5

be hacked and there's vulnerabilities everywhere that can be found.

0:49.9

So they're trying to like give it to the security researchers to fix everything before they

0:54.0

release it.

0:54.6

And it's not just for software. This is just a general insanely good model. But that's just something that they're concerned about. So we're going to get into all of that on the podcast. Without too much doomism, I think there's a lot of optimism. But this is definitely an absolutely massive drop in model. And speaking of AI models, if you want to test all of the top AI models, everything from Anthropic to Open AI to GROC to Gemini to 11 Labs for audio, tons of cool image models.

1:19.5

Go check out my startup, AIbox.AI, for $899 a month.

1:23.5

You get access to over 80 of the top audio, image, text, video models. Open open eyes SOAR, which is going to get discontinued because it costs $130 to generate a video for them, but for you. It's very cheap. So if you want to check it out, go check out AIbox.ai. Hope that saves you a ton of money and you get access to everything in one spot. All right, let's talk about what's going on with Anthropic. So they just released this,

1:45.0

what they're calling. Of course, their, quote, most powerful model yet. Now, it's interesting

1:49.2

is usually everyone's like, this is our, you know, most capable model. This is most powerful.

1:54.2

This sounds a little bit ominous. There was a leaked memo where they were actually calling

1:58.7

it that. So this is what they told the world. This is just kind of internally. And basically this right now is limited to, it's just kind of a

2:06.6

debut for a bunch of the top organizations as part of a new security initiative in which

2:12.3

there's 40 partner organizations and they're all deploying the model across a bunch of different quote unquote

2:18.3

defense security work areas and they're basically trying to secure critical software before this

2:24.4

goes out to the general public i think they didn't specify exactly what this was trained on so

...

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