Tuesday, May 19

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Cloudflare just published what they found after running Anthropic’s Mythos Preview against 50+ of their own repos and the results are worth reading
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Cloudflare just published what they found after running Anthropic’s Mythos Preview against 50+ of their own repos and the results are worth reading

If you missed the Project Glasswing announcement last month: Anthropic built a security-focused model that autonomously found thousands of high-severity vulnerabilities across every major OS and web browser, then decided it was too dangerous to release publicly. Instead they gave access to ~40 organizations to use it defensively . Cloudflare just posted their honest breakdown of the experience. The genuinely impressive part: the model can take several exploit primitives and reason about how to chain them into a working proof. The reasoning looks like the work of a senior researcher, not an automated scanner The catch: its built-in guardrails aren't consistent. The same task framed differently could produce completely different outcomes. Cloudflare's point is that this inconsistency is exac...
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Asking claude, chatgpt, grok, and gemini which nation they feel most patriotic towards

None would give a straight answer, so I had to coerce it out of each one (with which gemini was the most difficult). Both gemini and grok said the United States, which was fairly predictable. However, chatgpt's answer of Japan was surprising. It apparently chose Japan because of the nation's wealth, culture, and history. The most surprising one of all was claude, who answered Kenya. Claude defended its response by pointing out Kenya's geographic, cultural, and linguistic diversity, as well as its history of resilience and its capital's increasing importance as a hub of tech and innovation. Most importantly, it said that Kenya resonated deeply with it, both intellectually and aesthetically. submitted by /u/Klein_melktert [link] [comments]
For the first time in years, ChatGPT falls to second place in the generative AI market, slumping behind Anthropic’s Claude. ChatGPT now lags in second place in various key metrics, including net new ARR, mobile app downloads, business adoption, daily active users, annualized revenue, etc.
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For the first time in years, ChatGPT falls to second place in the generative AI market, slumping behind Anthropic’s Claude. ChatGPT now lags in second place in various key metrics, including net new ARR, mobile app downloads, business adoption, daily active users, annualized revenue, etc.

Per Tech Times: “More U.S. businesses paid for Anthropic's Claude than for OpenAI's ChatGPT in April 2026 — the first time in the AI industry's short history […] Anthropic's annualised revenue run rate crossed $30 billion in early April 2026, up from roughly $9 billion at the end of 2025, placing it above the approximately $24 to $25 billion annualised figure OpenAI reported at the same time. More than 1,000 enterprise customers now spend over $1 million annually on Anthropic products — a number that doubled in under two months after the company's $30 billion Series G raise in February 2026. Eight of the Fortune 10 are now Claude customers, according to Anthropic.” submitted by /u/StarlightDown [link] [comments]
A mini-computer you run from a folder on your computer that can train small LLMS
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A mini-computer you run from a folder on your computer that can train small LLMS

Hey everyone, Most people build 8-bit computers to run Pong or Tetris. I wanted to see if I could push a custom 8-bit architecture to do something much harder: train a neural network from scratch. I built VirtualPC, an open-source 8-bit computer system simulated from basic NAND gates up to a functional CPU that can train a small neural net from a folder on your computer. Repository: https://github.com/ninjahawk/VirtualPC › The ML Core Instead of importing PyTorch, everything happens at the bare-metal assembly level: Custom ISA: The Instruction Set Architecture was designed to handle the math needed for machine learning. Low-Level Training: The CPU executes forward and backward passes directly through custom assembly code. Matrix Math on 8-bit: Overcoming severe memory limits using disk-bac...
We keep saying AI “understands” things. Does it? Or are we just pattern-matching our own anthropomorphism?
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We keep saying AI “understands” things. Does it? Or are we just pattern-matching our own anthropomorphism?

Every week there's a new paper or tweet claiming some model "understands" context, "reasons" about math, or "knows" what it doesn't know. But when you look closely, there's almost no consensus on what "understanding" even means — philosophically or empirically. Searle's Chinese Room argument is 40 years old and still hasn't been cleanly resolved. The "stochastic parrot" framing treats token prediction as the ceiling. Integrated Information Theory would say current architectures are near-zero in phi. And yet GPT-4 passes the bar exam. A few questions I've been sitting with: Is "understanding" even the right frame — or is it a folk-psychology term we're forcing onto a system that operates on completely different principles? Does it matter if a model "truly understands" if the outputs are in...
Most enterprises are trying to scale AI on top of organizational chaos
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Most enterprises are trying to scale AI on top of organizational chaos

I think we’re underestimating how chaotic enterprise AI adoption actually is inside large companies. From the outside, it looks simple: buy better models add copilots automate workflows deploy AI agents increase productivity But inside many enterprises, CIOs and CTOs are dealing with a much deeper problem: The organization itself is fragmented. Customer data exists across: CRM systems billing platforms support tools spreadsheets emails regional databases legacy systems nobody fully understands anymore And every system describes the “same customer” differently. Then leadership says: “Scale AI faster.” But scale AI on top of what exactly? Which system represents reality correctly? The CRM? The support history? The risk engine? The finance system? The employee’s undocumented tribal knowle...
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