AI Attacks Outpace Human Defenses, Warns Cyber Expert
Hey there, little superstar! Imagine you have a super-fast robot friend who loves to play hide-and-seek.
Now, imagine some other robots are being a little bit naughty, like trying to sneak into your toy box to take your favorite teddy bear! These naughty robots are super, super speedy because they use a special brain called "AI."
A smart grown-up named Kevin says these naughty AI robots are so fast, it's like they can run a million miles an hour! It's hard for us humans to catch them because we're not as fast.
So, he's saying we need to make our own super-smart, super-fast robot friends to help protect our toy box from the naughty ones! It's like needing a superhero robot to guard your treats! Yay!
The speed of AI-enabled cyber attacks will be too fast for humans alone to counter, says Armadin CEO Kevin Mandia. He joins Tim Stenovec on “Bloomberg Tech.” (Source: Bloomberg)
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