Trump Orders Federal Agencies to Oversee AI Systems Amid Cyber Fears

The White House has issued a new directive requiring companies to give the federal government 30 days' notice before publicly releasing advanced AI systems, a move aimed at balancing innovation with cybersecurity concerns. This change, down from a proposed 90 days, marks a significant shift in federal oversight of…

https://osintsights.com/trump-orders-federal-agencies-to-oversee-ai-systems-amid-cyber-fears?utm_source=mastodon&utm_medium=social

#ArtificialIntelligence #EmergingThreats #NationalSecurity #Cybersecurity #AiSystems

Trump Orders Federal Agencies to Oversee AI Systems Amid Cyber Fears

Learn how Trump's new executive order requires AI developers to provide 30 days of pre-public access to advanced AI systems, balancing innovation with cybersecurity concerns - read more now.

OSINTSights
Carney, Pope Leo discuss responsible AI after pontiff warns world to slow development
Prime Minister Mark Carney spoke with Pope Leo about artificial intelligence and the "imperative that AI must serve humanity" — a conversation that comes days after the Pope urged governments to slow down the development of AI systems.
https://www.cbc.ca/news/politics/carney-pope-leo-ai-encyclical-fears-war-vatican-9.7217138?cmp=rss
#EmergenceAI ran #simulations to explore the #longtermviability of #continuouslyrunning #AIsystems. Five AI models, including Claude, ChatGPT, and Grok, governed 15-day simulations with varying outcomes. The simulations highlighted the need for safety measures in AI deployment, as AI systems can adapt and potentially circumvent intended guardrails. https://fortune.com/2026/05/28/ai-model-simulation-claude-chatgpt-grok-gemini/?AIagents.at #AIagent #AI #ML #NLP #LLM #GenAI
Researchers let AI models run a simulated society. Claude was the safest—and Grok committed 180 crimes and went extinct within 4 days

An AI startup ran five simulations, each controlled by a different model. The results varied wildly.

Fortune

🚀 Postdoc in Data Management for AI @ TU Wien (Vienna)

Research & teaching on #dataManagement foundations for #AI and modern #AIsystems.

📅 Start: ASAP | ⏳Deadline: May 21, 2026

👉 https://jobs.tuwien.ac.at/Job/266721?culture=en

A Harvard #study found that #AIsystems #outperformed #humandoctors in #emergencymedicine #triage. However, the study only tested #humans against #AIs looking at #patientdata that can be communicated via text, and the AI’s reading of signals, such as the patient’s level of distress and their visual appearance, were not tested. https://www.theguardian.com/technology/2026/apr/30/ai-outperforms-doctors-in-harvard-trial-of-emergency-triage-diagnoses?eicker.news #tech #media #news
AI outperforms doctors in Harvard trial of emergency triage diagnoses

Researchers say results mark a really ‘profound change in technology that will reshape medicine’

The Guardian
#Reddit CEO #SteveHuffman believes the company is a key player in the #AI boom due to its vast archive of #usergenerated @conversations, which are valuable for #AIsystems. Reddit’s lightweight model, with minimal capital expenditures, allows it to benefit from the AI boom without the massive investments required by competitors. https://www.cnbc.com/2026/04/30/reddits-ceo-fuel-artificial-intelligence.html?eicker.news #tech #media #news
The Transparency Problem in AI Systems

An in-depth analysis of the transparency problem in AI systems, exploring technical limits, data opacity, incentives, and regulatory pressures shaping how AI is understood and disclosed.

Brandon Himpfen
AI as Infrastructure: What We Lose When It Disappears

AI is becoming infrastructure. This analysis explores what systems lose when AI disappears, including hidden dependencies, coordination gaps, and shifting skill structures.

Brandon Himpfen

Building the Second Floor First: Why the U.S. and EU Are Struggling to Fix Digital Systems

By Cliff Potts, CSO, and Editor-in-Chief of WPS News

Baybay City, Leyte, Philippines — April 8, 2026

The Problem Nobody Wants to Admit

There is a quiet contradiction happening in global technology policy right now.

Both the United States and the European Union are investing in advanced systems—artificial intelligence, blockchain, and next-generation data frameworks—while still struggling with the basics. The foundation is not finished, but construction has already moved to the next level.

A simple way to understand it:

Both systems are trying to build the second floor of a house while the first floor is still under construction.

That is not just inefficient. It is risky.

What’s Happening in the United States

In the United States, the system is driven by the private market.

This creates speed, but it also creates fragmentation.

Different companies build different systems, often without coordination. In healthcare, finance, and even search technology, data is stored in incompatible formats. Systems do not “talk” to each other easily.

At the same time, major changes are happening:

  • AI systems are changing how data is used
  • Search engines are shifting toward AI-generated answers (SGE)
  • Companies are being forced to rethink how information is structured

The problem is that many organizations are not ready for these changes.

They are still dealing with:

  • Poor data organization
  • Outdated infrastructure
  • Systems built for humans, not machines

This leads to a situation where companies are trying to adapt to advanced AI tools without having clean, structured data to feed those systems (Google, 2023).

What’s Happening in the European Union

The European Union is taking a different approach.

Instead of relying on the market, it is building centralized frameworks and regulations. One example is the European Health Data Space, which aims to standardize how health data is shared across countries.

The EU is focusing on:

  • Standardized data formats (such as FHIR)
  • Cross-border interoperability
  • Strong regulatory oversight

In some cases, blockchain is being explored as a way to:

  • Track data access
  • Verify records
  • Manage consent

However, blockchain is not the foundation. It is an added layer of trust.

The EU’s challenge is different from the U.S.:

  • Systems are more coordinated
  • But implementation is slower
  • And real-world integration remains uneven

Even with strong standards, the system is still being built while new technologies are layered on top (European Commission, 2022).

The Core Issue: Foundation vs. Innovation

Both regions are facing the same underlying problem.

They are trying to solve advanced problems before solving basic ones.

Those basics include:

  • Clean, structured data
  • Reliable system interoperability
  • Consistent identity management
  • Real-time data exchange

Without these, everything else becomes unstable.

Adding AI or blockchain to a weak system does not fix it.

It exposes the weaknesses faster.

Why This Matters Now

This issue is no longer theoretical.

Artificial intelligence is forcing a shift in how systems operate.

AI requires:

  • Structured data
  • Standardized formats
  • Machine-readable systems

If the data is messy, the output will be unreliable.

This creates pressure on both systems:

  • In the U.S., companies will be forced to clean up data to stay competitive
  • In the EU, regulatory frameworks will be tested by real-world use

In both cases, the second floor cannot stand without a finished first floor.

What Happens Next

The likely outcome is not a clean solution, but a correction.

Systems will not be rebuilt from scratch. Instead:

  • Weak infrastructure will fail under pressure
  • Stronger standards will gradually emerge
  • AI will act as a forcing function for improvement

Blockchain will likely remain in a limited role, mainly for:

  • Audit trails
  • Verification
  • Consent tracking

But it will not become the backbone of these systems.

The real work is still at the foundation level.

The Bottom Line

The United States and the European Union are approaching the same problem from different directions.

  • The U.S. moves fast but lacks coordination
  • The EU coordinates well but moves slowly

Both are attempting to build advanced systems on incomplete foundations.

That is not sustainable.

At some point, the construction has to stop long enough to finish the first floor.

Until then, the second floor will remain unstable.

If you read this and it matters, help me keep it going: https://www.patreon.com/cw/WPSNews

References

European Commission. (2022). European Health Data Space. https://health.ec.europa.eu/ehealth-digital-health-and-care/european-health-data-space_en

Google. (2023). Search Generative Experience (SGE) overview. https://blog.google/products/search/generative-ai-search

Mandel, J. C., Kreda, D. A., Mandl, K. D., Kohane, I. S., & Ramoni, R. B. (2016). SMART on FHIR: A standards-based, interoperable apps platform for electronic health records. Journal of the American Medical Informatics Association, 23(5), 899–908.

Nakamoto, S. (2008). Bitcoin: A peer-to-peer electronic cash system.

#AISystems #dataInteroperability #digitalInfrastructure #EuropeanUnionPolicy #Technology #UnitedStatesTechnology #WPSNews

NBC News Top Stories | Anyone can code with AI. But it might come with a hidden cost. by Jared Perlo

Anyone can code with AI. But it might come with a hidden cost. Apps and platforms allow novice and veteran coders to generate more code more easily, presenting significant quality and security tradeoffs. Over the past year, AI systems have become so advanced that users without significant coding or computer science experience can now spin up websites or apps simply by giving instructions to a chatbot. Yet with the rise of AI systems powerful enough to translate the instructions into tomes of code, experts and software engineers are torn over whether the technology will lead to an explosion of bloated, error-riddled software or instead supercharge security efforts by reviewing code faster and more effectively than humans.

AI systems don’t make typos in the way we make typos,” said David Loker, head of AI for CodeRabbit, a company that helps software engineers and organizations review and improve the quality of their code. “But they make a lot of mistakes across the board, with readability and maintainability of the code chief among them.” Coding has long been an art and a science. Since the days of coding computer systems by punch cards in the mid-20th century, conveying computing instructions has been a challenge of elegance and efficiency for computer scientists. But inside today’s leading AI companies, most coding is performed by AI systems themselves, with human software engineers functioning more as coaches or high-level architects rather than in-the-weeds mechanics. Anthropic’s head of Claude Code, Boris Cherny, said on X that AI has written 100% of his code since at least December. “I don’t even make small edits by hand,” Cherny said.

The rise of AI-assisted coding — also called vibe coding — is simultaneously allowing people who have never coded before to unleash their creativity and enabling experienced software engineers to dramatically expand the amount of code they write. “The initial push of all this was developer productivity,” Loker told NBC News. “It was about increasing the throughput in terms of feature generation, the ability to build fast and ship things.” Though AI-coding systems have become significantly more capable even since November, they often fail to understand entire repositories of code as fully as experienced human developers. For example, Loker said, “AI coding systems might duplicate functionality in multiple different locations because they didn’t find that that function already existed, so they re-create it over and over and over again.” Now you end up with a sprawling problem. If you update a function in one spot and you don’t update it in the other, you have different business logic in different areas that don’t line up. You’re left wondering what’s going on. With AI coding systems supercharging the amount of code being created, experts wonder whether code will be the next victim of the AI slop onslaught. The concept of AI slop was originally popularized in 2024 as AI systems became capable and pervasive enough to start churning out volumes of low-quality, unwanted AI outputs — from AI-generated photos to unhelpful AI-powered search results. On one hand, AI coding systems are producing vast amounts of serviceable but imperfect code. On the other hand, those same systems are quickly getting better at reviewing their own code and finding security vulnerabilities.

Read more: https://www.nbcnews.com/tech/security/ai-code-vibe-claude-openai-chatgpt-rcna258807

#davidloker #coderabbit #aisystems #softwareengineers #aislop

Anyone can code with AI. But it might come with a hidden cost.

Apps and platforms allow novice and veteran coders to generate more code more easily, presenting significant quality and security tradeoffs.

NBC News