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Inside Amsterdam’s high-stakes experiment to create fair welfare AI

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Finding a better way

Every time an Amsterdam resident applies for benefits, a caseworker reviews the application for irregularities. If an application looks suspicious, it can be sent to the city’s investigations department—which could lead to a rejection, a request to correct paperwork errors, or a recommendation that the candidate receive less money. Investigations can also happen later, once benefits have been dispersed; the outcome may force recipients to pay back funds, and even push some into debt.

Officials have broad authority over both applicants and existing welfare recipients. They can request bank records, summon beneficiaries to city hall, and in some cases make unannounced visits to a person’s home. As investigations are carried out—or paperwork errors fixed—much-needed payments may be delayed. And often—in more than half of the investigations of applications, according to figures provided by Bodaar—the city finds no evidence of wrongdoing. In those cases, this can mean that the city has “wrongly harassed people,” Bodaar says. 

The Smart Check system was designed to avoid these scenarios by eventually replacing the initial caseworker who flags which cases to send to the investigations department. The algorithm would screen the applications to identify those most likely to involve major errors, based on certain personal characteristics, and redirect those cases for further scrutiny by the enforcement team.

If all went well, the city wrote in its internal documentation, the system would improve on the performance of its human caseworkers, flagging fewer welfare applicants for investigation while identifying a greater proportion of cases with errors. In one document, the city projected that the model would prevent up to 125 individual Amsterdammers from facing debt collection and save €2.4 million annually. 

Smart Check was an exciting prospect for city officials like de Koning, who would manage the project when it was deployed. He was optimistic, since the city was taking a scientific approach, he says; it would “see if it was going to work” instead of taking the attitude that “this must work, and no matter what, we will continue this.”

It was the kind of bold idea that attracted optimistic techies like Loek Berkers, a data scientist who worked on Smart Check in only his second job out of college. Speaking in a cafe tucked behind Amsterdam’s city hall, Berkers remembers being impressed at his first contact with the system: “Especially for a project within the municipality,” he says, it “was very much a sort of innovative project that was trying something new.”

Smart Check made use of an algorithm called an “explainable boosting machine,” which allows people to more easily understand how AI models produce their predictions. Most other machine-learning models are often regarded as “black boxes” running abstract mathematical processes that are hard to understand for both the employees tasked with using them and the people affected by the results. 

The Smart Check model would consider 15 characteristics—including whether applicants had previously applied for or received benefits, the sum of their assets, and the number of addresses they had on file—to assign a risk score to each person. It purposefully avoided demographic factors, such as gender, nationality, or age, that were thought to lead to bias. It also tried to avoid “proxy” factors—like postal codes—that may not look sensitive on the surface but can become so if, for example, a postal code is statistically associated with a particular ethnic group.

In an unusual step, the city has disclosed this information and shared multiple versions of the Smart Check model with us, effectively inviting outside scrutiny into the system’s design and function. With this data, we were able to build a hypothetical welfare recipient to get insight into how an individual applicant would be evaluated by Smart Check.  

This model was trained on a data set encompassing 3,400 previous investigations of welfare recipients. The idea was that it would use the outcomes from these investigations, carried out by city employees, to figure out which factors in the initial applications were correlated with potential fraud. 



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As the artificial intelligence (AI) craze drives the expansion of data center investment, leading U…

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Seeking a Breakthrough in AI Infrastructure Market such as Heywell and Genrack “Over 400 Billion KRW in Data Center Infrastructure Investment This Year”

What Microsoft Data Center looks like [Photo = MS]

As the artificial intelligence (AI) craze drives the expansion of data center investment, leading U.S. manufacturing companies are entering this market as new growth breakthroughs.

The Financial Times reported on the 6th (local time) that companies such as Generac, Gates Industrial, and Honeywell are targeting the demand for hyperscalers with special facilities such as generators and cooling equipment.

Hyperscaler is a term mainly used in the data center and cloud industry, and refers to a company that operates a large computing infrastructure designed to quickly and efficiently handle large amounts of data. Representatively, big tech companies such as Amazon, Microsoft (MS), Google, and Meta can be cited.

Generac is reportedly the largest producer of residential generators, but it has jumped into the generator market for large data centers to recover its stock price, which is down 75% from its 2021 high. It recently invested $130 million in large generator production facilities and is expanding its business into the electric vehicle charger and home battery market.

Gates, who was manufacturing parts for heavy equipment trucks, has also developed new cooling pumps and pipes for data centers over the past year. This is because Nvidia’s latest AI chip ‘Blackwell’ makes liquid cooling a prerequisite. Gates explained, “Most equipment can be relocated for data centers with a little customization.”

Honeywell, an industrial equipment giant, started to target the market with its cooling system control solution. Based on this, sales of hybrid cooling controllers have recorded double-digit growth over the past 18 months.

According to market research firm Gartner, more than $400 billion is expected to be invested in building data center infrastructure around the world this year. More than 75% of them are expected to be concentrated on hyperscalers such as Amazon, Microsoft, Meta, and Google.



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OpenAI says GPT-5 will unify breakthroughs from different models

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OpenAI has again confirmed that it will unify multiple models into one and create GPT-5, which is expected to ship sometime in the summer.

ChatGPT currently has too many capable models for different tasks. While the models are powerful, it can be confusing because all models have identical names.

But another issue is that OpenAI maintains an “o” lineup for reasoning capabilities, while the 4o and other models have multi-modality.

With GPT-5, OpenAI plans to unify the breakthrough in its lineup and deliver the best of the two worlds.

“We’re truly excited to not just make a net new great frontier model, we’re also going to unify our two series,” says Romain Huet, OpenAI’s Head of Developer Experience.

“The breakthrough of reasoning in the O-series and the breakthroughs in multi-modality in the GPT-series will be unified, and that will be GPT-5. And I really hope I’ll come back soon to tell you more about it.”

OpenAI previously claimed that GPT-5 will also make the existing models significantly better at everything.

“GPT-5 is our next foundational model that is meant to just make everything our models can currently do better and with less model switching,” Jerry Tworek, who is a VP at OpenAI, wrote in a Reddit post.

Right now, we don’t know when GPT-5 will begin rolling out to everyone, but Sam Altman suggests it’s coming in the summer.

While cloud attacks may be growing more sophisticated, attackers still succeed with surprisingly simple techniques.

Drawing from Wiz’s detections across thousands of organizations, this report reveals 8 key techniques used by cloud-fluent threat actors.



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Puck hires Krietzberg to cover artificial intelligence

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Ian Krietzberg

Puck has hired Ian Krietzberg to cover artificial intelligence, primarily through a twice-weekly newsletter.

He previously was editor in chief of The Daily View, which produces a daily newsletter on artificial intelligence.

Before that, Krietzberg was a staff writer at TheStreet.com cover tech and trending news.

He is a graduate of the College of New Jersey.





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