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Flipbook
Flipbook
A generative visual internet
·flipbook.page·
Flipbook
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1000063774.jpg
The purpose of writing...
·up.raindrop.io·
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1000063773.png
perhaps the worst sentence ever written, winner of the Philosophy and Literature Bad Writing Contest in1998, penned by Judith Butler
·up.raindrop.io·
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En defensa de las clases ‘incómodas’
En defensa de las clases ‘incómodas’
Muchos estudiantes prefieren la clase magistral: con escuchar la explicación creen que han aprendido. Pero la incertidumbre y la incomodidad de otras metodologías consiguen un aprendizaje más profundo.
·theconversation.com·
En defensa de las clases ‘incómodas’
Modular: The Claude C Compiler: What It Reveals About the Future of Software
Modular: The Claude C Compiler: What It Reveals About the Future of Software
Compilers occupy a special place in computer science. They're a canonical course in computer science education — a rite of passage. Building one forces you to confront how software actually works: languages, abstractions, hardware, and the boundary between human intent and machine execution.
·modular.com·
Modular: The Claude C Compiler: What It Reveals About the Future of Software
The Hot Mess of AI: How Does Misalignment Scale With Model...
The Hot Mess of AI: How Does Misalignment Scale With Model...
As AI becomes more capable, we entrust it with more general and consequential tasks. The risks from failure grow more severe with increasing task scope. It is therefore important to understand how extremely capable AI models will fail: Will they fail by systematically pursuing goals we do not intend? Or will they fail by being a hot mess, and taking nonsensical actions that do not further any goal? We operationalize this question using a bias-variance decomposition of the errors made by AI models: An AI's \emph{incoherence} on a task is measured over test-time randomness as the fraction of its error that stems from variance rather than bias in task outcome. Across all tasks and frontier models we measure, the longer models spend reasoning and taking actions, \emph{the more incoherent} their failures become. Incoherence changes with model scale in a way that is experiment dependent. However, in several settings, larger, more capable models are more incoherent than smaller models. Consequently, scale alone seems unlikely to eliminate incoherence. Instead, as more capable AIs pursue harder tasks, requiring more sequential action and thought, our results predict failures to be accompanied by more incoherent behavior. This suggests a future where AIs sometimes cause industrial accidents (due to unpredictable misbehavior), but are less likely to exhibit consistent pursuit of a misaligned goal. This increases the relative importance of alignment research targeting reward hacking or goal misspecification.
·arxiv.org·
The Hot Mess of AI: How Does Misalignment Scale With Model...
Context Widows
Context Widows
or, of GPUs, LPUs, and Goal Displacement
·artificialbureaucracy.substack.com·
Context Widows
Making Software: Shaders.
Making Software: Shaders.
How to draw high fidelity graphics when all you have is an x and y coordinate.
·makingsoftware.com·
Making Software: Shaders.
Seeing like a software company
Seeing like a software company
The big idea of James C. Scott’s Seeing Like A State can be expressed in three points: Modern organizations exert control by maximising “legibility”: by…
·seangoedecke.com·
Seeing like a software company
Home | Parlant
Home | Parlant
Built safe & compliant AI customer interactions using open-source foundations
·parlant.io·
Home | Parlant