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_jayhack_

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Ultracoding: The Next Frontier

jay.ai
3 points·by _jayhack_·26 dni temu·0 comments

LLMs are not the black box you were promised

jay.ai
56 points·by _jayhack_·w zeszłym miesiącu·41 comments

comments

_jayhack_
·11 dni temu·discuss
The content on "priming" (significant pillar of the book) has collapsed as part of the reproducibility crisis in psychology. More here: https://replicationindex.com/2017/02/02/reconstruction-of-a-...
_jayhack_
·w zeszłym miesiącu·discuss
Deep Learning is a Black Box and Here's Why You Should Use Random Forests Because They Are Interpretable

This was the mantra of applied machine learning c. 2010 - 2024 for anyone paying attention. No longer the case.
_jayhack_
·w zeszłym miesiącu·discuss
For some definitions of better, yes. Chinese is more token efficient for representing fixed text, for example, although this does not always lead to better performance on downstream tasks.
_jayhack_
·w zeszłym miesiącu·discuss
As the author - this was adapted from a thread posted on X in March (linked in article). AI did the adaptation, I wrote the original article. It seems like it inserted grammatically correct hyphens, otherwise the copy is mine.
_jayhack_
·w zeszłym miesiącu·discuss
Hello, I am the author - this is not an LLM-generated article, I wrote this by hand and had an LLM adapt it from a thread on X. You can see the original thread here: https://x.com/mathemagic1an/status/2035850046735098065

> the fact that language models have human-interpretable representations and neurons has been known since BERT... Circuits research also does not come from Anthropic... The article does not claim Anthropic invented the field, rather that they have had important contributions to it. This is intended as an overview into a specific set of ideas that are working for mechanistic interpretability. Not a formal literature review.
_jayhack_
·3 miesiące temu·discuss
Would love to understand how you compare to other providers like Modal, Daytona, Blaxel, E2B and Vercel. I think most other agent builders will have the same question. Can you provide a feature/performance comparison matrix to make this easier?
_jayhack_
·6 miesięcy temu·discuss
Great article. For another fantastic explainer on optics, see 3Blue1Brown's video on refraction: https://www.youtube.com/watch?v=KTzGBJPuJwM
_jayhack_
·8 miesięcy temu·discuss
> static analysis tools that produce flowcharts and diagrams like this have existed since antiquity, and I'm not seeing any new real innovation other than "letting the LLM produce it".

Inherent limitation of static analysis-only visualization tools is lack of flexibility/judgement on what should and should not be surfaced in the final visualization.

The produced visualizations look like machine code themselves. Advantage of having LLMs produce code visualizations is the judgement/common sense on the resolution things should be presented at, so they are intuitive and useful.
_jayhack_
·9 miesięcy temu·discuss
Vector embedding is not an invention of the last decade. Featurization in ML goes back to the 60s - even deep learning-based featurization is decades old at a minimum. Like everything else in ML this became much more useful with data and compute scale
_jayhack_
·10 miesięcy temu·discuss
Gary Marcus has been taking victory laps on this since mid-2023, nothing to see here. Patently obvious to all that there will be additional innovations on top of LLMs such as test-time compute, which nonetheless are structured around LLMs and complementary