Haley Moller
31 posts

Haley Moller
@HaleyMoller
Notes toward an anthropology of AI-era San Francisco
San Francisco, CA شامل ہوئے Temmuz 2020
78 فالونگ48 فالوورز
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Haley Moller ری ٹویٹ کیا

study calculus. seriously.
not because it’s “academic” but because it rewires how you see the world.
• limits → teach you how things behave at the edge
• derivatives → measure change, motion, growth
• integrals → accumulation, area, total effect
• differential equations → how real systems evolve over time
once you see the world in rates of change and accumulation, everything looks different. physics makes sense. control theory makes sense. even economics starts clicking.
and don’t wait for a classroom to save you.
• pick a textbook
• watch lectures
• solve problems by hand
• struggle alone until it hurts
self learning is slow at first. then it compounds.
no one is coming to structure your mind for you.

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@TonyBenge70 Fair enough...the FDA was meant as an analogy, not a blueprint. The point is that we need some independent body with the authority to evaluate AI systems before they're deployed at scale. What that looks like institutionally is exactly the debate worth having.
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@HaleyMoller Bad example. Same FDA that pushed Covid vaccine safety? Ummm hard pass as this useless group is captured by big pharmaceutical companies.
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I'd push back on the premise slightly...limiting destructive potential and limiting intelligence aren't necessarily the same constraint. Alignment research is premised on exactly that distinction. The harder question is whether we can solve alignment faster than we can build power, and whether anyone is actually trying.
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@HaleyMoller I'm not sure it's possible to limit the destructive potential of an AI without limiting its intelligence. Slow and careful development seems prudent to mitigate risk, but pointless unless China plays along; and China (rightfully) sees AI as their golden ticket.
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Haley Moller ری ٹویٹ کیا

“This raises an obvious question: how much of Anthropic’s reluctance to make Mythos widely available is due to security concerns, as opposed to the more prosaic reality that Anthropic simply doesn’t have enough compute?” @stratechery @benthompson
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@garrytan Yes. If AI is going to be open and widely accessible, it needs public oversight, not oversight by the companies selling it. That is why we need an FDA for AI.
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AI needs open markets and open access not whatever is happening here
Peter Steinberger 🦞@steipete
Yeah folks, it's gonna be harder in the future to ensure OpenClaw still works with Anthropic models.
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Haley Moller ری ٹویٹ کیا

Haley Moller ری ٹویٹ کیا

*Finally* read through @samwhoo's blog on LLM quantization.
It's incredible.
For many (even in tech) the understanding of how LLMs work stops at the surface level. Sam is helping us all go deeper, digging into the interesting facets of how AI models truly work.
Read it!
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Anthropic’s new Project Glasswing announcement contains the central problem of AI governance in miniature: the companies building these systems are also positioning themselves to define the terms of their safety. If AI is becoming critical infrastructure, we need an FDA for AI.
My new piece: x.com/HaleyMoller/st…
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@AnthropicAI So the same companies building these systems (and profiting off of them) are also defining what “safe” means?
We didn’t let pharmaceutical companies regulate their own drugs. We built the FDA. AI is becoming infrastructure; it needs the same logic.
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Introducing Project Glasswing: an urgent initiative to help secure the world’s most critical software.
It’s powered by our newest frontier model, Claude Mythos Preview, which can find software vulnerabilities better than all but the most skilled humans.
anthropic.com/glasswing
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@garrytan Open source is cool, but is no one concerned about how easily tools like this could be repurposed for large-scale attacks or abuse?
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Golden age of open source is here
ℏεsam@Hesamation
bro created an AI job search system for Claude Code that scored 700+ job applications and actually got him a job. AND IT'S NOW OPEN-SOURCE. It scans multiple company career pages, rewrites your CV per job, and even fills application forms. The repo has: > 14 skill modes (evaluate, scan, PDF, ...) > Go terminal dashboard > ATS-optimized PDF generation via Playwright > 45+ companies pre-configured (Anthropic, OpenAI, ElevenLabs, Stripe...) GitHub: github.com/santifer/caree…
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Given how good large language models are at so many things, why can’t they write well? Read my answer to this question here: substack.com/home/post/p-19…
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