What do centaurs and chess have to do with AI?
The trajectory of AI today looks a lot like the recent evolution of chess. In the early 1990s, humans beat machines. In 1997, this flipped. Computer Deep Blue defeated chess grandmaster Kasparov. From roughly 1998 to 2012, the strongest players were human-machine combinations, or “centaurs” (nomenclature inspired by half-man, half-horse creatures of Greek mythology). This suggested that human judgment plus machine calculation outperforms either independently, but this proved temporary.
From 2013 to 2016, pure AI systems began to outperform centaurs. Human input shifted from being additive to subtractive. Since 2017, self-learning systems haven’t just matched human play, they’ve expanded it, uncovering strategies outside established theory. The key point is: Collaboration may be a phase ― not an endpoint.
Today’s consensus assumes a centaur equilibrium of humans and AI working together across industries. Chess suggests otherwise. Once AI capabilities cross a threshold, displacement can happen quickly.
There is a caveat. Chess is a closed system; the real world is not. Economic and social systems are far messier, which will probably slow the transition. But AI is improving its ability to operate in increasingly ambiguous environments. Directionally, the implication is clear: This framing matters for markets.
Investment implications
Today’s AI models are highly capable and are underutilized relative to what they can do. As a result, substantial changes across multiple industries are imminent. Parts of IT, internet, financial services, marketing, and other services will be affected. Markets have started to react with indiscriminate selling of software, internet services, and IT service companies.
Are there opportunities within these companies that are perceived as losers? Simplistically, I see the biggest potential alpha sources in companies that are considered AI losers today who could use AI to “supercharge” their businesses tomorrow. For example, companies that introduce AI features to make their products more compelling, leverage AI to optimize costs while increasing efficiency, or serve traditional companies to help them become AI-ready can be winners. In these cases, AI is not a threat, it’s an accelerant.
Finally, second-order effects matter. If AI compresses parts of the labor market, time and attention reallocate. That makes me incrementally more cautious on jobs, and more constructive on how people may spend their free time, such as consuming media, playing video games, and engaging with social platforms.
At the same time, AI is unlikely to displace inherently human experiences. We could spend more time playing and watching sports, attending live events, traveling, and participating in in-person leisure activities. Investment opportunities linked to these types of activities could benefit from AI. After all, just because bikes can go faster than Usain Bolt doesn’t mean we stopped watching 100-meter races, and even though AI can beat human chess grandmasters, chess has never been more popular.