The White House’s National Policy Framework for Artificial Intelligence: What It Means and What Comes Next - JD Supra
The White House’s National Policy Framework for Artificial Intelligence: What It Means and What Comes Next JD Supra
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Inside Omega
This is a philosophical thought experiment which aims to explore what I consider to be the crux of many alignment problems: That of the unrescuability of moral internalism , which basically says we have not been able to rescue the philosophical view that a necessary, intrinsic connection exists between moral judgments and motivation. If one could rescue moral internalism, in theory, they would have a perfectly good argument for any rational self-interested intelligence to not engage in broad scale moral harm. Therefore I think it is a linchpin meta-philosophical challenge. I don't claim to have a theorem, but I believe that one potential domain worth investigating is arguments which induce indexical uncertainty in an agent. Essentially, forms of leveraging undecidability to cause an agent

AI agent governance tools compared - 2026 landscape
I've been working in the AI agent governance space for a while and noticed there's no good comparison of the available tools. So I made one. Here's the landscape as of April 2026: The Tools asqav - ML-DSA-65 (quantum-safe) signed audit trails. Hash-chained so you can't omit entries. Policy enforcement blocks actions before execution. Works with LangChain, CrewAI, OpenAI Agents, Haystack, LiteLLM. Microsoft Agent Governance Toolkit - Policy-as-code with Cedar, SQLite audit logging, multi-language SDKs. No cryptographic signing but the most mature policy engine. AgentMint - Ed25519 signing with RFC 3161 timestamps. Content scanning for 23 patterns (PII, injection, credentials). Zero external dependencies. Aira - Ed25519 + RFC 3161. Hosted receipt layer so you don't run your own TSA. Maps to

Intelligence Driving Industrial Transformation
The Fourth Industrial Revolution: AI’s Transformative Power and Emerging Risks: We are entering the Fourth Industrial Revolution—an era defined by artificial intelligence, automation, and unprecedented computational power. AI is no longer a distant concept; it is actively reshaping the foundations of modern society. From discovering new algorithms that optimize customer satisfaction to powering e commerce, financial services, and autonomous factories, AI is accelerating innovation at a pace humanity has never experienced. Yet this rapid transformation comes with profound challenges. As AI systems grow more capable, the infrastructure required to support them expands dramatically. Massive data centers—housing the servers that train, store, and operate AI models—consume enormous amounts of e
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Build more housing where people want to live. The rest is commentary. If there is enough housing, it will be affordable, people will afford more house, and people will be able to live where they want to live. It’s always been that simple. Increased supply of any kind of housing increases affordability of all kinds of housing. Are there other things that would also be helpful? Yes, but they’re commentary. Freeing up existing underused housing, for example, is helpful. It is commentary. Let’s enjoy the lull and see how much of an Infrastructure Week we can do. New Levels Of Saying Quiet Part Out Loud Even For This Guy Trump opposes building houses where people want to live, because doing so would let people live there, which would drive down the value of existing homes. Acyn : Trump: I don’t

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I've been working in the AI agent governance space for a while and noticed there's no good comparison of the available tools. So I made one. Here's the landscape as of April 2026: The Tools asqav - ML-DSA-65 (quantum-safe) signed audit trails. Hash-chained so you can't omit entries. Policy enforcement blocks actions before execution. Works with LangChain, CrewAI, OpenAI Agents, Haystack, LiteLLM. Microsoft Agent Governance Toolkit - Policy-as-code with Cedar, SQLite audit logging, multi-language SDKs. No cryptographic signing but the most mature policy engine. AgentMint - Ed25519 signing with RFC 3161 timestamps. Content scanning for 23 patterns (PII, injection, credentials). Zero external dependencies. Aira - Ed25519 + RFC 3161. Hosted receipt layer so you don't run your own TSA. Maps to



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