Marina Nitze:”Crisis engineering is harnessing a crisis to make rapid transformational change. A complex system is any system that’s made of humans and computers. The computer part is generally pretty easy to change. And the human part is very difficult to change. But if certain crisis conditions are present, you can transform the human part of a system very rapidly. Crisis engineering is about how to recognize those indicators and then harness that moment to make rapid change against the human part of your system, and probably the computer part, too.”
FT: “Emboldened by big leaps in AI’s software programming capabilities over the past six months, tech industry leaders and researchers are increasingly confident that an AI that can improve itself with little to no human input is within their grasp. These self-taught AIs could keep on building new, more powerful versions of themselves. Successive generations could repeat the trick over and over again, adding new capabilities or making themselves run more efficiently. This flywheel effect, known in the industry as “recursive self-improvement” (RSI), could quickly lead AI beyond the large language models that underpin Google’s Gemini, OpenAI’s ChatGPT and Anthropic’s Claude, into uncharted territory. AI’s optimists believe it is the key to so-called superintelligence, or the point at which AI surpasses the abilities of the human mind.”
David Oks: “Why did China get rich, and India didn’t? What explains the Sino-Indian divergence?…China’s explosive growth wasn’t simply a matter of “freeing the markets,” reducing the role of the state, and announcing that it was now glorious to get rich; nor was it simply a matter of government intervention to support the manufacturing sector and subsidies for favored companies. China succeeded because it spent decades on the basics of human development and social modernization. India did not. The rest is just commentary.”
Ben Thompson: “How many companies could actually employ that cash in a way that generated a high rate of return? It’s hard to imagine a better option than Google. The company is not only investing in AI, but has optionality in terms of outcomes: its Services business benefits from the investment, it is in contention at the model layer with Gemini, and it can sell capacity to the frontier labs. Moreover, that capacity has a sustainable cost advantage because of TPUs, which means that in a world where compute becomes a commodity — as hard as that is to imagine right now — Google is the hyperscaler that is poised to make the most profit.”

