When Microsoft CEO Satya Nadella tweets about a 19th-century economic theory at 1 AM, you know something interesting is happening in the world of AI... His late-night musings about Jevons Paradox point to a profound shift that could reshape how associations think about artificial intelligence.
In 1865, economist William Stanley Jevons noticed something counterintuitive during the Industrial Revolution. As coal-powered engines became more efficient, coal consumption increased rather than decreased. This observation became known as Jevons Paradox—when technological advancement makes a resource more efficient and accessible, we tend to use more of it, not less.
This pattern has repeated throughout history. When LED bulbs made lighting more energy-efficient, we installed more lights. When cars became more fuel-efficient, we drove further. When computing power became cheaper, we put processors in everything from toasters to toothbrushes.
The recent release of DeepSeek's R1 AI model has brought Jevons Paradox back into the spotlight. DeepSeek demonstrated that powerful AI models could potentially be developed for a fraction of the previously assumed cost—less than $6 million compared to the billion-dollar price tags of earlier models.
As Nadella pointed out in his viral post: "Jevons paradox strikes again! As AI gets more efficient and accessible, we will see its use skyrocket, turning it into a commodity we just can't get enough of."
Throughout human history, intelligence has been one of our most scarce and valuable resources. Want more intellectual capacity in your organization? You had exactly one option: add more humans. This meant:
For associations, this scarcity of intelligence has shaped everything from organizational structures to member services. The traditional role of associations as knowledge gatekeepers emerged precisely because expertise was so difficult to acquire and distribute.
Models like DeepSeek represent something unprecedented: the potential end of intelligence scarcity. For the first time in human history, we can potentially increase intellectual capacity without adding more humans to the equation. As these models become more efficient and accessible, we're entering uncharted territory.
This shift prompts an intriguing question: If Jevons Paradox has held true for other resources that moved from scarcity to abundance, what might it mean for intelligence?
Imagine if Jevons Paradox applied to association services in an AI-enhanced world. What might that look like?
What if making knowledge more accessible didn't reduce demand for learning, but rather awakened a deeper hunger for specialized expertise? As basic information becomes abundant through AI tools, members might develop an even greater appetite for the nuanced, contextual wisdom that only comes from human experience.
What if making virtual connections more efficient didn't decrease the value of in-person gatherings, but rather heightened the desire for deep, meaningful professional relationships? The more easily people can connect virtually, the more they might cherish opportunities for genuine human interaction.
What if automating routine services didn't reduce member engagement, but rather created space for more sophisticated, high-value interactions? As basic needs are met more efficiently through AI, members might seek even richer, more transformative experiences.
Consider this: Before calculators, basic arithmetic was a valued skill. When calculators became ubiquitous, we didn't stop teaching math—we started teaching more advanced concepts. Similarly, as AI makes basic knowledge more accessible, associations might find themselves freed to explore deeper, more impactful ways of serving their communities.
The real question isn't whether AI will make association services more efficient. The question is: What might happen if that efficiency, rather than reducing demand, transforms it? What new forms of value might emerge? What deeper levels of engagement might become possible?
As AI models become more powerful and accessible, keeping Jevons Paradox in mind might lead to some surprising and exciting possibilities. Rather than asking how to compete with AI's efficiency, perhaps we should be asking: What could we do if efficiency was no longer our primary constraint?
After all, if Nadella is right and AI usage skyrockets as it becomes more accessible, associations that prepare for increased rather than decreased demand might find themselves ahead of the curve.