But AI is eroding that advantage. Tasks that once took skilled researchers months, like reverse engineering software or chaining exploits, can now be done in seconds with the right prompts.

For crypto, where code often controls large pools of funds, that shift raises the stakes.

“You need to be perfect,” Guillemet warned teams developing blockchain protocols.

The problem is compounded by AI-generated code. As more developers rely on AI tools, vulnerabilities could spread faster.

“There is no ‘make it secure’ button,” he said. “We are going to produce a lot of code that will be insecure by design.”

Raising the security bar

For crypto protocols, that means rethinking security from the ground up.

Guillemet pointed to formal verification — using mathematical proofs to validate code — as a stronger approach than traditional audits, which may miss bugs.

Hardware-based security is another layer, he said. Devices like hardware wallets isolate private keys from internet-connected systems, reducing exposure.

“When you have a dedicated device not exposed to the internet, it is more secure by design,” he said.

That approach is becoming more relevant as malware grows more advanced. Guillemet described attacks that scan compromised phones for wallet seed phrases, allowing hackers to drain funds without user interaction.

For average crypto users, Guillemet’s message is blunt: assume systems can and will fail.

“You can’t trust most of the systems that you use,” Guillemet said.

That could push more users toward cold storage, stronger operational security and keeping sensitive data offline. Even then, risks extend beyond software, including physical attacks targeting crypto holders.

Guillemet expects a divide ahead. Critical systems like wallets and protocols will invest heavily in security and adapt. But much of the broader software ecosystem may struggle to keep up.

“It’s really easier to hack everything,” he said.

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