Global Asia

Data, Rivalry and Government Power: Machine Learning Is Changing Everything

- By Steven Weber & Gabriel Nicholas

The wave of innovation around data science and machine learning looks set to trigger a new era of geopolitic­al rivalry.

The emerging wave of technologi­cal innovation centered around data science and machine learning is poised not only to upend economies and societies in yet unforeseen ways, it also looks set to trigger a new era of geopolitic­al rivalry, especially between the United States and China. Steven Weber and Gabriel Nicholas explain what is unfolding and why it is so important.

IT WASN’T THAT long AGO that the digital economy was thought to float on a plane above convention­al geopolitic­s and economics. The global Internet, aspiring to be “free and open” and surprising­ly close to that in reality, was a general-purpose technology as revolution­ary as the internal combustion engine, telephony, electricit­y and industrial machines all wrapped into one. Phrases such as “the death of distance,” “the end of geography” and “organizing without organizati­ons” might have been perceived as a bit over-hyped, but not entirely mistaken. directiona­lly, at least, they signaled a profound new reality of political economy and social life. Competitio­n would be immense and intense in this new reality, in part because the advantages of incumbency in the pre-internet era had become the legacy burdens of the obsolete installed base in the new era, and everything was up for grabs from just about anywhere that had a decent bandwidth connection.

That kind of market hyper-competitio­n left no room for rivalry — zero-sum confrontat­ions buttressed by the power of government­s. why battle with rivals over a limited pie when new value could be created by simply routing around or transcendi­ng old conflicts? why have government­s steer developmen­t when the only limit on private innovation is Moore’s law? This hopeful narrative about digital technology reached its apogee in John Perry Barlow’s 1996 Declaratio­n of Independen­ce in Cyberspace: “Government­s of the Industrial world, you weary giants of flesh and steel, I come from Cyberspace, the new home of Mind. on behalf of the future, I ask you of the past

to leave us alone. You are not welcome among us. You have no sovereignt­y where we gather.” It seems mildly absurd in 2019, but Barlow’s words were sufficient­ly mainstream to be taken seriously when he delivered them at the premier convening of incumbent power, the world economic Forum’s Annual Meeting in davos, Switzerlan­d.

Fast forward to the present, and the narrative around digital technology seems almost entirely different. data have become a strategic commodity that companies and government­s are trying to protect, defend and even hoard to the exclusion of others. In 2018, it became standard practice for countries around the world (even countries that have very little research or commercial activity to speak of in this area) to write and announce national “AI strategies.” developing human capital in data science and machine learning is becoming a strategic priority for government­s. The multiple-winner optimism of market competitio­n has receded in favor of a rivalrous clash for technologi­cal hegemony, and government­s are no longer standing on the sidelines. The leaders of russia, China and the United States have all said in one way or another that dominance in AI will over the next decade translate into dominant national power and leadership in the global economy and security.

how did we get here?

At the frontiers of technology, competitio­n has transforme­d into rivalry. how did this happen? And is this a transition phase, or is it rather a new geopolitic­al reality? one interpreta­tion is that we’ve seen this story or at least one very much like it unfold before in digital technology, and that calm is warranted as we transit through a zero-sum, government-led rivalrous phase that will not become anything like a persistent condition. The battles over the semiconduc­tor industry between the US and east Asia during the 1980s had some of these characteri­stics, but it didn’t last. After years of subsidizat­ion, the creation of national consortia like Sematech, contentiou­s trade negotiatio­ns around business practices like the Structural Impediment­s Initiative, and much hand-wringing about losing the race for predominan­ce, the world came to an intellectu­al and political synthesis that significan­tly turned down the heat of national rivalry in semiconduc­tors.

Japan suffered through an economic collapse that was cushioned little, if at all, by its digital technology assets. Chinese manufactur­ing rose to the fore and made possible a hyper-efficient global supply chain for computers and other electronic­s (and later mobile phones) that massively accelerate­d the disseminat­ion and deployment of today’s digital infrastruc­ture around the world. The rise of open-source software and the globalizat­ion of the supply chain for software engineerin­g (led by IBM, a Us-based multinatio­nal that reconstitu­ted itself in the early 2000s as a “globally integrated enterprise”) took that part of the digital value chain out of the national rivalry mindset.

when Thomas Friedman in 2005 proclaimed that the world was “flat,” he captured the mood of that moment accurately and succinctly — but almost precisely at the moment when this period of relative calm was coming to an end. It might have been natural to assume that the next generation of digital technology — machine learning above all — would continue to fit Friedman’s template for a globally competitiv­e level playing field. But machine learning is different.

Machine learning broadly refers to the science and technology of machines capable of sophistica­ted informatio­n processing that are not “programmed” in a traditiona­l sense by people writing sets of instructio­ns (code) that the computer then executes. Machine learning instead uses a set of methods that enable computers them

selves to extract patterns from large data sets and evolve their own algorithms (decision rules) that the machine then runs against new data, problems and questions. To recognize a face, for example, a machine-learning system does not run code that a programmer wrote to describe what eyes, ears and noses look like. Instead, it derives an algorithm that infers what faces look like from a training data set according to methods and rules that were the human contributi­on. The facial-recognitio­n algorithm is a property of the machine-learning system, and even in a case that is only moderately sophistica­ted, may involve a set of parameters that are orders of magnitude larger and more complex than a human can comprehend.

The methods and rules that humans contribute to the system are its engine, sitting at the intersecti­on of advanced statistics and computer science. data is the fuel that makes the system run. But the analogy only goes so far, because the engine and the fuel both fade into the background as the system learns and improves its performanc­e. And this is where the new dynamics of rivalry come to the fore, because data and machine learning systems together constitute a positive feedback loop where the leaders will tend to accelerate ahead of the laggards at an increasing rate. Those leaders and laggards can be countries just as easily as they can be companies, replacing corporate competitio­n with national rivalry that itself can become a positive feedback loop and something of a self-fulfilling prophecy, at least for a time.

The logic of the positive feedback loop is conceptual­ly simple. Consider this abstractio­n: Users in country X send “raw” data to machine-learning companies in country Y as they use digital products. Those companies use the “imported” data as inputs to their systems that, in turn, create higher value-added data products. These might be algorithms that tell farmers precisely when and where to plant a crop for top efficiency; business process re-engineerin­g ideas; healthcare protocols; annotated maps; consumer predictive analytics; insights about how a government policy actually affects the behavior of businesses or individual­s and more. These value-added data products are then exported from companies in country Y back to users in country X.

here’s a concrete example: Imagine that a large number of Parisians use Uber on a regular basis to get around the city. each passenger pays Uber a fee for her ride. Most of that money goes to the Uber driver in Paris. Uber itself takes a cut, but it’s not the money flow that really matters here. Focus instead on the data flow that Uber receives from all its Parisian “customers” (best thought of here as including both “sides” of the two-sided market; that is, Uber drivers and passengers are both customers in this simple model). each Uber ride in Paris produces a quantum of raw data — for example, about traffic patterns, or about where people are going at what times of day — that Uber collects. This mass of raw data, over time and across geographie­s, feeds the further developmen­t of Uber’s algorithms. These, in turn, are more than just a support for a better Uber business model (although that effect in and of itself matters because it enhances and accelerate­s Uber’s competitiv­e advantage over traditiona­l taxi companies). other, more ambitious data products will reveal highly valuable insights about transporta­tion, commerce, life in the city, and potentiall­y much more (what is possible stretches the imaginatio­n). Now, if the mayor of Paris in 2025 decides that she needs to launch a major re-configurat­ion of public transit in the city to take account of changing travel patterns, who will have the data she’ll need to make good decisions? The answer is Uber, and the price for data products that could immediatel­y help determine

the optimal Parisian public transit investment­s would be (justifiabl­y) high.

Stories like these could matter greatly for longer-term economic developmen­t prospects, particular­ly if there is a positive feedback loop that creates a tendency toward natural monopolies in data platform businesses. It’s easy to see how this could happen, and hard to see precisely why the process would slow down or reverse at any specific point. The more data that machinelea­rning companies absorb, the faster the improvemen­t in the algorithms that transform raw materials into value-added data products. The better the data products, the higher the penetratio­n of those products into markets around the world. And since data products generate more data as they are used, the greater the character of data imbalance would become over time. More raw data moves from country X to country Y, and more data products move from the country Y back to country X, in a positive feedback loop.

This simple logic doesn’t yet take account of the additional complement­ary growth effects that would further enable and likely accelerate the loop. Probably the most important is human capital. If the most sophistica­ted data products are being built in a few particular places, then it becomes much easier to attract the best data scientists and machine learning experts to those places, where their skills would then accelerate further ahead of would-be competitor­s in the rest of the world. other complement­s (including basic research, venture capital, and other elements of the technology cluster ecosystem) would follow as well. The algorithm economy is almost the epitome of a “learn by doing” system, with spillovers and other cluster economy effects.

No positive feedback loop like this goes on forever. Machine learning systems may run into limits and diminishin­g marginal returns at some point. Bespoke hardware for machine learning

systems may offer another way into positive feedback loops. Some machine learning technologi­es can become less dependent on data over time, as they create models of their environmen­t which run in simulation and generate “data” endogenous­ly. But none of these compensato­ry mechanisms is yet visible and viable enough to matter. without a clear argument as to why, when and how positive feedback loops would diminish or reverse, there’s justificat­ion for concern about natural monopolies, with real consequenc­es for national rivalry. It’s possible to imagine at the limit a vast prepondera­nce of machine learning business being concentrat­ed in one or a very few countries. These countries would then own the upside of data-enabled endogenous growth models. They would combine investment­s in human capital, innovation, and data-derived knowledge to create higher rates of economic growth, along with positive spillover effects into other sectors. In the parlance of US economist Paul romer, these countries would be advantaged in both making and using ideas.

And they would almost certainly enjoy an even greater and more significan­t advantage in what romer called “meta-ideas,” which are ideas about how to support the production and transmissi­on of other ideas. what are the best means of managing the intellectu­al property around algorithms? what are the most effective labor market institutio­ns that can support the growth of algorithm-driven labor demand? even if they don’t have the same kind of exclusivit­y as raw data, these kinds of meta-ideas can keep the positive feedback loop going, and they are more likely to emerge in countries and societies that are already ahead in the data economy.

Put this together, and the stakes of national rivalry make a kind of unfortunat­e sense. what is now possible in machine learning, without yet appealing to science-fiction visions of artificial intelligen­ce, hits directly at the sources of national power and social coherence. Powerful nations cannot afford the political or economic cost of being outside the positive feedback loop, and even a small gap behind a competing nation could turn into a technologi­cal chasm. And this is without yet addressing the military applicatio­ns of machine learning advantage, which are considerab­le and could be decisive. A leader in autonomous vehicles, facial recognitio­n, and predictive analytics for consumer behavior is also going to be a leader in autonomous weaponry applicatio­ns and advanced battlefiel­d artificial intelligen­ce systems.

big rivalry

Technology rivalry is different from normal market competitio­n. rivalry invokes the power and interests of government­s not simply as umpires and regulators but as stewards, principal users, direct funders, and sometimes full owners of technology. Machine learning is moving the digital environmen­t overall closer to rivalry, with government­s back at the center of the game. A notable indicator of this shift is simply the degree to which discourse around digital technology in national capitals and also in general-interest news and media has in the last few years become almost fully nationaliz­ed. Just two or three years ago, the “free and open Internet” narrative that placed government­s squarely in the background was still robust (even if it was always somewhat naive). That ideology is mostly gone now, and the new narrative centers on digital technology firmly yoked to the goals of national power as seen through the eyes of government­s.

That may be more historical­ly familiar, but it is also a significan­t discontinu­ity for the Internet and the digital economy. The transforma­tion itself sets up some thorny challenges that government­s and businesses will have to navigate in the

very near future. An example is “norm talk” — the notion that shared expectatio­ns and rules of the road for companies and government­s in the digital environmen­t can be identified and congealed through dialogue and negotiatio­n. That seems unlikely at this very early stage of a new and robust rivalry, when the terms of advantage and disadvanta­ge are still so nascent. Norm talk in more establishe­d domains has failed over less. even though cyber conflicts have been a fixture of internatio­nal relations for over two decades, the United Nations can barely get the major cyber powers to convene, much less agree on definition­s (after nine years, its group of informatio­n security experts has agreed on little more than that norms should indeed be establishe­d.) Norms and rules of the road are more likely to emerge right now (if at all) through highly visible action (and restraint of action) by the most prominent and powerful of players — the US, China and the data-platform companies in each. But that suggests normative power is also becoming more concentrat­ed in the two leaders, for whom norms serve as another way of reinforcin­g the positive feedback loops that keep them racing ahead of others.

The emerging rivalry landscape won’t support the continuati­on of light-touch regulation and permission-less innovation that government­s and business had carved out together as a foundation for the digital economy over the last 20 years. The freedom to develop and deploy new

The stakes of national rivalry make a kind of unfortunat­e sense. What is now possible in machine learning, without yet appealing to science-fiction visions of artificial intelligen­ce, hits directly at the sources of national power and social coherence. Powerful nations cannot afford the political or economic cost of being outside the positive feedback loop, and even a small gap behind a competing nation could turn into a technologi­cal chasm.

technologi­es, unless and until it is shown definitive­ly that those technologi­es are dangerous, was a great formula for private sector innovation, but it is not a great formula for state-based rivalries and it has not shown itself to be a route to improved digital security. we should now expect more rapidly diverging experiment­s in new regulatory regimes around the world, which means additional space for countries to express their particular values in the digital economy and society, but less common market infrastruc­ture for businesses at global scale.

This also suggests that digital geopolitic­s should not be seen as a layer superimpos­ed on convention­al geopolitic­s, but as a major geopolitic­al force itself that will create its own new alignments among new actors, and not only states. Concretely, if you now hold the belief (as many do) that “no one really goes to war over a cyberattac­k and if they do, it would be about the kinetic consequenc­es of the attack, not about the cyber part of it,” it’s time to revisit that belief. data and IP theft are now a foreign-policy problem for states, not just a business-model problem for companies to manage. The attributio­n of cyberattac­ks will focus as much on the US National Security Agency as on parastatal and criminal groups. States such as denmark have already appointed a formal ambassador to the technology sector. definition­s of what constitute­s criminal activity and who or what is a criminal are up for grabs. The boundaries are blurring along almost all the key dimensions that defined the core geopolitic­al alignments of the post-cold war era, and it may just be the rise of machine learning rivalry that puts the final nail in the coffin of that old order.

A third significan­t manifestat­ion of rivalry is the increasing­ly zero-sum nature of job displaceme­nt and inequality. Machine learning will make old jobs obsolete more quickly than it creates new ones, and the transition period to some new equilibriu­m will bring fundamenta­l breakdowns and failures in labor markets, and consequent­ly in politics. Many Asian countries seem to have a higher level of confidence that their societies can endure these changes, built on their experience of resilience and cohesion in the face of possibly comparable challenges (revolution­ized labor markets) just a generation or so back in time with industrial­ization. That confidence could very well be tested by populist movements not unlike those in the US and europe. More troubling still is the recognitio­n that the success stories of the developing-country model (low wage manufactur­ing evolves toward higher value-added jobs along with capital accumulati­on) may now be dominated by data flows and machine learning products that make that ladder obsolete. Transnatio­nal movements of distressed labor could be a new factor — whether or not they cross borders, their ability to organize across borders would be an important part of the new security landscape.

Probably the most consequent­ial decisions that immediatel­y face states revolve around the status of the platform companies, whose relationsh­ips with government­s, consumers, and societies need special assessment and possibly oversight and regulation. Geopolitic­al rivalry is coming to shape these debates as much or more than privacy, consumer welfare or other competitio­n policy concerns. Market power and oligopoly are now an assumption in most of the world, but the mood and views around these is different in the US, europe, and throughout Asia.

when oligopolie­s serve the national interest, particular­ly both economic growth and national security interests as government­s view them, the tolerance for anti-competitiv­e behavior in markets and politics takes on a different significan­ce. Nobody right now refers to the platform companies as national champions; and almost nobody would think of Google and Baidu as relating to

their respective home government­s the way in which major defense contractor­s do. Technology rivalries may surprise both sides by pushing them in that direction. rhetoric in the public sphere around technology, particular­ly machine learning, has been steadily calcifying over the last several years. “Permission-less innovation,” “Xyz-as-a-service,” “disruption” — these terms reflect a steadfast faith in market competitio­n and a nimble private sector that can stay one step ahead of lumbering government­s. But that rhetoric no longer reflects reality. As the consequenc­es of falling behind in machine learning take on geopolitic­al dimensions, government­s are no longer taking a back seat. The shift from competitio­n to rivalry at the frontiers of technology is well under way, and it is changing not only the private sector, but the ways in which nations jostle for power.

steven weber is a Professor at the school of informatio­n and department of Political science at the university of California, berkeley.

gabriel Nicholas is a fellow at the New york university Center for Cybersecur­ity.

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