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AI’s errors may be impossible to eliminate – what that means for its use in health care

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AI’s errors may be impossible to eliminate – what that means for its use in health care

Federal legislation introduced in early 2025 proposed allowing AI to prescribe medication.
Wladimir Bulgar/Science Photo Library via Getty Images

Carlos Gershenson, Binghamton University, State University of New York

In the past decade, AI’s success has led to uncurbed enthusiasm and bold claims – even though users frequently experience errors that AI makes. An AI-powered digital assistant can misunderstand someone’s speech in embarrassing ways, a chatbot could hallucinate facts, or, as I experienced, an AI-based navigation tool might even guide drivers through a corn field – all without registering the errors.

People tolerate these mistakes because the technology makes certain tasks more efficient. Increasingly, however, proponents are advocating the use of AI – sometimes with limited human supervision – in fields where mistakes have high cost, such as health care. For example, a bill introduced in the U.S. House of Representatives in early 2025 would allow AI systems to prescribe medications autonomously. Health researchers as well as lawmakers since then have debated whether such prescribing would be feasible or advisable.

How exactly such prescribing would work if this or similar legislation passes remains to be seen. But it raises the stakes for how many errors AI developers can allow their tools to make and what the consequences would be if those tools led to negative outcomes – even patient deaths.

As a researcher studying complex systems, I investigate how different components of a system interact to produce unpredictable outcomes. Part of my work focuses on exploring the limits of science – and, more specifically, of AI.

Over the past 25 years I have worked on projects including traffic light coordination, improving bureaucracies and tax evasion detection. Even when these systems can be highly effective, they are never perfect.

For AI in particular, errors might be an inescapable consequence of how the systems work. My lab’s research suggests that particular properties of the data used to train AI models play a role. This is unlikely to change, regardless of how much time, effort and funding researchers direct at improving AI models.

Nobody – and nothing, not even AI – is perfect

As Alan Turing, considered the father of computer science, once said: “If a machine is expected to be infallible, it cannot also be intelligent.” This is because learning is an essential part of intelligence, and people usually learn from mistakes. I see this tug-of-war between intelligence and infallibility at play in my research.

In a study published in July 2025, my colleagues and I showed that perfectly organizing certain datasets into clear categories may be impossible. In other words, there may be a minimum amount of errors that a given dataset produces, simply because of the fact that elements of many categories overlap. For some datasets – the core underpinning of many AI systems – AI will not perform better than chance.

A portrait of seven dogs of different breeds.
Features of different dog breeds may overlap, making it hard for some AI models to differentiate them.
MirasWonderland/iStock via Getty Images Plus

For example, a model trained on a dataset of millions of dogs that logs only their age, weight and height will probably distinguish Chihuahuas from Great Danes with perfect accuracy. But it may make mistakes in telling apart an Alaskan malamute and a Doberman pinscher, since different individuals of different species might fall within the same age, weight and height ranges.

This categorizing is called classifiability, and my students and I started studying it in 2021. Using data from more than half a million students who attended the Universidad Nacional Autónoma de México between 2008 and 2020, we wanted to solve a seemingly simple problem. Could we use an AI algorithm to predict which students would finish their university degrees on time – that is, within three, four or five years of starting their studies, depending on the major?

We tested several popular algorithms that are used for classification in AI and also developed our own. No algorithm was perfect; the best ones − even one we developed specifically for this task − achieved an accuracy rate of about 80%, meaning that at least 1 in 5 students were misclassified. We realized that many students were identical in terms of grades, age, gender, socioeconomic status and other features – yet some would finish on time, and some would not. Under these circumstances, no algorithm would be able to make perfect predictions.

You might think that more data would improve predictability, but this usually comes with diminishing returns. This means that, for example, for each increase in accuracy of 1%, you might need 100 times the data. Thus, we would never have enough students to significantly improve our model’s performance.

Additionally, many unpredictable turns in lives of students and their families – unemployment, death, pregnancy – might occur after their first year at university, likely affecting whether they finish on time. So even with an infinite number of students, our predictions would still give errors.

The limits of prediction

To put it more generally, what limits prediction is complexity. The word complexity comes from the Latin plexus, which means intertwined. The components that make up a complex system are intertwined, and it’s the interactions between them that determine what happens to them and how they behave.

Thus, studying elements of the system in isolation would probably yield misleading insights about them – as well as about the system as a whole.

Take, for example, a car traveling in a city. Knowing the speed at which it drives, it’s theoretically possible to predict where it will end up at a particular time. But in real traffic, its speed will depend on interactions with other vehicles on the road. Since the details of these interactions emerge in the moment and cannot be known in advance, precisely predicting what happens to the the car is possible only a few minutes into the future.

AI is already playing an enormous role in health care.

Not with my health

These same principles apply to prescribing medications. Different conditions and diseases can have the same symptoms, and people with the same condition or disease may exhibit different symptoms. For example, fever can be caused by a respiratory illness or a digestive one. And a cold might cause cough, but not always.

This means that health care datasets have significant overlaps that would prevent AI from being error-free.

Certainly, humans also make errors. But when AI misdiagnoses a patient, as it surely will, the situation falls into a legal limbo. It’s not clear who or what would be responsible if a patient were hurt. Pharmaceutical companies? Software developers? Insurance agencies? Pharmacies?

In many contexts, neither humans nor machines are the best option for a given task. “Centaurs,” or “hybrid intelligence” – that is, a combination of humans and machines – tend to be better than each on their own. A doctor could certainly use AI to decide potential drugs to use for different patients, depending on their medical history, physiological details and genetic makeup. Researchers are already exploring this approach in precision medicine.

But common sense and the precautionary principle
suggest that it is too early for AI to prescribe drugs without human oversight. And the fact that mistakes may be baked into the technology could mean that where human health is at stake, human supervision will always be necessary.The Conversation

Carlos Gershenson, Professor of Innovation, Binghamton University, State University of New York

This article is republished from The Conversation under a Creative Commons license. Read the original article.

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Why Greenland matters in a multipolar world

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Four ways to understand what’s going on with the US, Denmark and Greenland

Shutterstock/Michal Balada

Ian Manners, Lund University

European countries, and Denmark in particular, are scrambling to respond to threats from US officials over the future of Greenland.

Having successfully taken out the leadership of Venezuela in a raid on January 3, an emboldened US government is talking about simply taking Greenland for itself.

Various European leaders have expressed their concern but haven’t been able to formulate a coherent response to the betrayal by a supposed ally.

Since the September 11 attacks in 2001, Danish governments have willingly participated in US-led invasions of Afghanistan (2001-2021) and Iraq (2003-2007). The rightward movement across the Danish political spectrum had led to Denmark rejecting some Nordic and EU cooperation in favour of pro-US transatlanticism.

However, the 2022 Russian invasion of Ukraine led to a rethink of Danish foreign policy. The country joined the EU’s common security and defence policy and tightened cooperation with recent Nato members Finland and Sweden.

And when Trump came to power for the second time, the chaotic rightward swing of US foreign policy left Denmark reaching out for support from its EU colleagues over the challenge to Greenland.

While a member of the European Union, Denmark has placed itself at the bloc’s periphery since copying the UK in opting out of the euro and from cooperation in justice and home affairs. But any US invasion of Greenland is likely to break Denmark’s fixed exchange rate policy with the euro (and before that the deutschmark) that has been in place since 1982. So there are economic implications as well as territorial.

The fallout from the US’s threats, and certainly any US intervention in Greenland, go much further than Denmark. While the EU tried to stay in step with the US in its support of Ukraine during Joe Biden’s presidency, since the re-election of Trump, EU member states have very much fallen out with the US. During 2025, the US and EU clashed over trade and tariffs, social media regulation, environment and agriculture policies.

But the latest developments demonstrate that Trump’s US can no longer be trusted as a long-term ally – to Greenland and Denmark, the EU and Europe.

This is a crisis engulfing many countries and triggered by many drivers. In order to understand this complex situation, we can use four different analytical approaches from academic thinking. These can help us contextualise not just the Greenland case, but also the emerging multipolar world of “might makes right”.

1. Realism

Currently the most popular approach comes from within the conservative tradition of “realism”. This predicts every state will act in their own national interest.

In this framing, Trump’s actions are part of the emergence of a multipolar world, in which the great powers are the US, China, India and Russia. In this world, it makes sense for Russia to invade Ukraine to counter the US, for the US to seize assets in Venezuela and Greenland to counter China, and for China to invade Taiwan to counter the US.

2. The new elites

Many think that to understand the events of the past few years, including Trump’s return and Vladimir Putin’s foreign policies, you need to look beyond conservative or liberal explanations to seek out who holds power and influence in the global superpowers. That means the wealthy families, corporations and oligarchs who exert control over the politics of the ruling elite through media and campaign power and finance.

In the cases of Venezuela and Greenland there are two factors at work – the US rejection of the rule of law and the desire for personal wealth via energy resources. But the timing is also important. The operation in Venezuela has been the only story to eclipse the Epstein files in the news in many months.

3. The decline of the liberal order

Many academic explanations see these recent events in the context of the decline of a “liberal order” dominated by the US, Europe, the “developed world” and the UN. In this view, the actions of Putin and Trump are seen as the last days of international law, the importance of the UN, and what western nations see as a system based on multilateralism.

However, this approach tends to overlook the continued dominance of the global north in these systems. The lack of support for the US and EU’s defence of Ukraine has been repeatedly demonstrated in the unwillingness of many global south countries, including China and India, to condemn the Russian invasion in the UN general assembly. It would be interesting to see how such voting would play out if it related to a US invasion of Greenland.

4. The planetary approach

The final – and most important – view is found in the planetary politics approach. This approach is based on the simple observation that so many planetary crises, such as global heating, mass extinctions of wildlife, climate refugees, rising autocracy and the return of international conflict are deeply interrelated and so can only be understood when considered together.

From this perspective it is Greenland’s sustainability and Greenlanders’ lives that must shape the understanding of Denmark’s and other European responses to Trump’s claims. It is through acknowledging the deep relationship that indigenous people have to their ecology that solutions can be found.

And Greenlanders have already expressed their vision for the future. Living on the frontline of the climate crisis, they want an economy built on resilience – not on ego-driven political drama.

While it’s quick and easy to to judge the events in Venezuela or Greenland in terms of the daily news cycle, the four perspectives set out here force people to think for themselves how best to understand complex international crises.

There is, however, a final observation to emphasise. Only one of these perspectives is likely to bring any way of thinking ourselves out of our planetary political crisis.The Conversation

Ian Manners, Professor, Department of Political Science, Lund University

This article is republished from The Conversation under a Creative Commons license. Read the original article.

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Pentagon’s AI gamble: Is Grok safe for defense?

Pentagon to integrate Elon Musk’s AI chatbot Grok, exploring military data and innovation amid AI controversies.

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Pentagon to integrate Elon Musk’s AI chatbot Grok, exploring military data and innovation amid AI controversies.


Defense Secretary Pete Hegseth announced that Elon Musk’s AI chatbot Grok will soon be integrated with the Pentagon’s networks.

The move aims to harness military data to develop advanced AI technology, despite recent controversies surrounding Grok’s content generation. This integration signals a bold step toward combining commercial AI tools with national defence systems.

Dr Karen Sutherland from UniSC explores the implications of this partnership. We discuss how Hegseth’s approach to AI differs from the Biden administration’s framework, the measures in place to ensure responsible use, and the limitations on Grok’s image generation capabilities.

We also examine the potential risks and international reactions, as well as Hegseth’s vision for innovation within the military. From civil rights considerations to prioritising key technologies, this story highlights the complex balancing act of AI in modern defence.

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#PentagonAI #ElonMusk #GrokAI #MilitaryTech #AIControversy #TechNews #DefenseInnovation #TickerNews


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U.S. pushes Latin American dominance

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What lies ahead for Latin America after the Venezuela raid?

Nicolas Forsans, University of Essex

The Trump administration has justified the recent capture of Venezuelan leader Nicolás Maduro as a law enforcement operation to dismantle a “narco‑state”. It also claimed it would break Venezuela’s ties to China, Russia and Iran, and put the world’s largest known oil reserves back under US‑friendly control.

This mix of counter‑narcotics, great power rivalry and energy security had already been elevated to a central priority by the administration in its national security strategy. Published in late 2025, the document announced a pledge to “reassert and enforce American preeminence in the western hemisphere” and deny “strategically vital assets” to rival powers.

Donald Trump has referred to this hemispheric project as the “Donroe doctrine”, casting it as a revival of the Monroe doctrine policy of the 19th century through which the US sought to stop European powers from meddling in the Americas. He seems to be seeking to tighten the US grip on Latin America by rewarding loyal governments and punishing defiant ones.

If Venezuela is the first test case of the Donroe doctrine, several other Latin American countries now sit squarely in Washington’s crosshairs. The most immediate target is Cuba, which the US has opposed since 1959 when communist revolutionary Fidel Castro overthrew a US-backed regime there.

Trump and his secretary of state, Marco Rubio, have openly hinted that Cuba could be Washington’s next target. They have described Cuba as “ready to fall” after the loss of Venezuelan oil and have boasted that there is no need for direct intervention because economic collapse will finish the job.

Cuba is enduring its worst crisis since 1959. Blackouts now regularly last up to 20 hours, real wages are collapsing and roughly 1 million Cubans have fled the country since 2021. This is all happening as Venezuelan crude oil is being redirected under US control.

For over two decades, Venezuela has provided Cuba with fuel and financing in exchange for doctors, teachers and security personnel – 32 of whom were killed in the US capture of Maduro, according to the Cuban government. Strangling Cuba’s remaining lifelines may well be enough to topple the government there without US forces needing to fire a single shot.

It is possible that Mexico will also soon come under fire. Mexico has quietly become Cuba’s main oil supplier, shipping roughly 12,000 barrels per day in 2025 to account for about 44% of the island’s crude imports. This is unlikely to please the Trump administration, which has recently renewed its threats to “do something” about Mexican drug cartels.

The raid in Venezuela’s capital, Caracas, took six months of meticulous planning and required an extraordinary amount of resources. So it is unrealistic to expect similar raids on other Latin American countries. However, targeted military strikes cannot be excluded.

Speaking on Fox News’s “Hannity” show on January 8, Trump said: “We are going to start now hitting land with regard to the cartels. The cartels are running Mexico.” He did not provide further details about the plans.

Mexico’s president, Claudia Sheinbaum, is trying to construct protective buffers. She has combined condemnation of the raid on Caracas with intense cooperation with the US on migration and security. This includes a deal for Mexico’s navy to intercept suspected drug-running boats near its coastline before US forces do.

But as part of a strategy that pushes US dominance of Latin America, Trump has already floated classifying Mexico’s cartels as terrorist organisations and the fentanyl they traffic across the border as a weapon of mass destruction. These are legal framings that could be used to justify strikes on Mexican soil in the name of counter-narcotics in the near future.

Trump’s other targets

Colombia, historically Washington’s closest military ally in South America, has flipped from “pillar” to possible target. The country’s president, Gustavo Petro, has been one of the loudest critics of the Venezuela raid. He called it an “abhorrent violation” of Latin American sovereignty committed by “enslavers”, adding that it constituted a “spectacle of death” comparable to Nazi Germany’s 1937 carpet bombing of Guernica in Spain.

Trump, who imposed sanctions on Petro and his family in October, responded by labelling the Colombian president a “sick man who likes making cocaine and selling it to the United States”. He then mused that a Venezuela‑style operation in Colombia “sounds good to me” before a hastily arranged phone call and White House invitation dialled back the immediate threat.

How long the conciliation between the two men lasts remains to be seen. Colombia has entered a heated presidential campaign season in which Trump’s remarks are already being read as an attempt to tilt the race, much as his interventions shaped recent contests in Argentina and Honduras.

Further down the hierarchy, Nicaragua’s government will also have watched events unfold in Venezuela with terror. Long treated in Washington as part of a trilogy of dictatorships with Cuba and Venezuela, Nicaragua features in US indictments against Maduro as a transit point for cocaine flights. Nicaragua was also recently designated by the US as a key drug‑transit country.

The unusually cautious statement on the Venezuela raid by Nicaraguan presidential couple Daniel Ortega and Rosario Murillo, as well as the rapid reinforcement of the presidential compound in the capital Managua, suggest a regime that knows it could be next in line should Trump choose to extend his “narco‑terrorism” narrative.

Trump appears to be turning longstanding US concerns – drugs, migration and interference by other major powers – into a flexible toolbox for coercion in Latin America. Countries that defy Washington or host its rivals risk being framed as security threats, stripped of economic lifelines and, possibly, targeted militarily.

Those that keep their heads down may avoid immediate punishment. But this comes at the price of treating hemispheric dominance as a fact of life rather than a doctrine to be resisted.The Conversation

Nicolas Forsans, Professor of Management and Co-director of the Centre for Latin American & Caribbean Studies, University of Essex

This article is republished from The Conversation under a Creative Commons license. Read the original article.

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