- My favorite portable vinyl player is perfect for summer trips, and it's discounted
- Threat Actors Weaponizing Hardware Devices to Exploit Fortified Enviro
- Cybersecurity Face-Off: CISA and DoD's Zero Trust Frameworks Explained and Compared
- Beyerdynamic's DT 990 Pro headphones get a refresh, promising portability without compromise
- How AI is helping PwC clients comply with European Union sustainability regulations
CIOs’ lack of success metrics dooms many AI projects

“People think that AI is in some way magic, that it’s going to be a point that’s going to solve all the problems in one go,” he adds. “There is a reasonably significant amount of work in dealing with AI, depending on the use case. It isn’t just a case of picking something up off the shelf and running it.”
In some cases, a failed AI experiment may be educational and point organizations to better projects, Curtis says. But many organizations, after seeing a high majority of their AI POCs fail, may stop experimenting.
“A lot of financial services companies that I work with don’t have a risk culture,” he says. “If something fails and they spent millions of dollars on it, they’re likely not to do it again.”