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atomicnature

969 カルマ登録 4 年前
Building git-lrc:

https://github.com/HexmosTech/git-lrc

Free, Micro AI Code Reviews That Run on Commit

投稿

組織は知性(人間や人工物)よりも大きな概念です

shrsv.hexmos.com
1 ポイント·投稿者 atomicnature·3 日前·0 コメント

Show HN: git-lrc – Free, Micro AI Code Reviews That Run on Git Commit

github.com
9 ポイント·投稿者 atomicnature·25 日前·0 コメント

Academic-Brain vs. Founder-Brain

fchaubard.github.io
2 ポイント·投稿者 atomicnature·先月·0 コメント

All Lean Books and Where to Find Them

lakesare.brick.do
33 ポイント·投稿者 atomicnature·2 か月前·2 コメント

Rich [Sutton's] Slogans

incompleteideas.net
3 ポイント·投稿者 atomicnature·2 か月前·2 コメント

TLA+ in support of AI code generation

medium.com
1 ポイント·投稿者 atomicnature·3 か月前·0 コメント

Machine Learning Systems: Principles and Practices of Engineering AI Systems

mlsysbook.ai
3 ポイント·投稿者 atomicnature·4 か月前·0 コメント

China developed by defying free trade – not embracing it

theglobalcurrents.com
2 ポイント·投稿者 atomicnature·4 か月前·0 コメント

The future belongs to those who can refute AI, not just generate with AI

learningloom.substack.com
46 ポイント·投稿者 atomicnature·5 か月前·18 コメント

AI Is Stress-Testing Software Engineering as a Profession

learningloom.substack.com
4 ポイント·投稿者 atomicnature·5 か月前·0 コメント

A Brief History of Solving Simultaneous Equations via Matrices

learningloom.substack.com
1 ポイント·投稿者 atomicnature·6 か月前·0 コメント

Isaac Newton on Learning Mathematical Thinking and Reasoning

learningloom.substack.com
2 ポイント·投稿者 atomicnature·6 か月前·0 コメント

INSV Kaundinya – Indian wooden sailing ship built using traditional stitching

bairdmaritime.com
1 ポイント·投稿者 atomicnature·7 か月前·0 コメント

Reimplementing Unix Correct: The Lost Bayesian Spelling Corrector

learningloom.substack.com
2 ポイント·投稿者 atomicnature·7 か月前·0 コメント

Chomsky and the Two Cultures of Statistical Learning (2011)

norvig.com
103 ポイント·投稿者 atomicnature·7 か月前·119 コメント

[untitled]

1 ポイント·投稿者 atomicnature·7 か月前·0 コメント

Who Wins CS Best Paper Awards?

jeffhuang.com
1 ポイント·投稿者 atomicnature·7 か月前·0 コメント

Thoughts on Team Metrics

adrianhesketh.com
2 ポイント·投稿者 atomicnature·7 か月前·0 コメント

AI Assist is now available on Stack Overflow

meta.stackexchange.com
3 ポイント·投稿者 atomicnature·7 か月前·0 コメント

Speech and Language Processing (3rd ed. draft)

web.stanford.edu
64 ポイント·投稿者 atomicnature·7 か月前·13 コメント

コメント

atomicnature
·2 か月前·議論
It's his website -- official I think.
atomicnature
·2 か月前·議論
Just a question to people who may know better than me about this.

I thought the whole point of trying to write out TLA+ is so that you get a better idea of what you want and put it into formal language?

I get that an LLM can assist/help with expressing what we want in formal language a bit, but if one automates all this there is no human intent/design anymore.

If the LLM generates both the design (TLA+) and writes an arbitrary program that satisfies said design -- what exactly have we proved?

What assurance do humans get since human doesn't know or cannot specify what they want.
atomicnature
·4 か月前·議論
What's the difference as you see it?
atomicnature
·5 か月前·議論
If you read the article carefully -- I've dealt with an alternative scenario as well -- where we may have smaller codebases with larger blast radius.

As to disposable software, it's harder to get traction/adaption when things constantly break or are slow or the experience is crappy in general.

To make it simpler - all else being equal - as a user would you prefer using highly reviewed/vetted/reliable software, or otherwise?

My bet is reliability is an invariant -- nobody wishes for software that crashes, leaks your private info, gives faulty output, is laggy to use and so on.
atomicnature
·5 か月前·議論
Try git-lrc, totally free since it uses gemini key. Triggers reviews automatically on git commit.
atomicnature
·5 か月前·議論
Specification languages need big investments essentially - both in technical and educational terms.

Consider something like TLA+. How can we make things such as that - be useful in an LLM orchestration framework, be human friendly - that'd be the question I ask.

So the developer will verify just the spec, and let the LLM match against it in a tougher way than it is possible to do now.
atomicnature
·5 か月前·議論
AI code review has genuinely helpful - especially when we generate code with copilot, etc.

Many times, these GenAI tools can delete/modify code mistakenly.

I use LiveReview's git precommit features - so the review happens right before I commit code automatically. And it has saved me many (100s of) times.

Give LiveReview's Precommit checks a try.
atomicnature
·5 か月前·議論
Go concrete. In FAANG engineering jobs now what % is this factory designer category vs what % is writing some mundane glue code, moving data around in CRUD calls, or putting in a monitoring metric etc?

Once you look at the present engineering org compositions see what's the error in thinking.

There are other analogy issues in your response which I won't nitpick
atomicnature
·5 か月前·議論
I don't agree with the limited point about fast fashion/enthittification, etc.

Quick check: Do you want to go back to pre-industrial era then - when according to you, you had better options for clothing?

Personally, I wouldn't want that - because I believe as a customer, I am better served now (cost/benefit wise) than then.

As to the point about recursive quality decline - I don't take it seriously, I believe in human ingenuity, and believe humans will overcome these obstacles and over time deliver higher quality results at bigger scale/lower costs/faster time cycles.
atomicnature
·5 か月前·議論
Where have I said engineers/architects aren't necessary? My point is that it is easier to get AI to get better than try to improve a million developers. Isn't that a straightforward point?

What the role of an engineer in the new context - I am not speculating on.
atomicnature
·5 か月前·議論
This is the "artisanal clothing argument".

I'd think there'll be a dip in code quality (compared to human) initially due to "AI machinery" due to its immaturity. But over-time on a mass-scale - we are going to see an improvement in the quality of software artifacts.

It is easier to 'discipline' the top 5 AI agents in the planet - rather than try to get a million distributed devs ("artisans") to produce high quality results.

It's like in the clothing or manufacturing industry I think. Artisans were able to produce better individual results than the average industry machinery, at least initially. But overtime - industry machinery could match the average artisan or even beat the average, while decisively beating in scale, speed, energy efficiency and so on.
atomicnature
·7 か月前·議論
It was available earlier. Here's the HN history:

https://hn.algolia.com/?query=Chomsky%20and%20the%20Two%20Cu...

The oldest submission is from 15 y.o ago - that is 2010.

I resubmitted it - thinking - with the success of LLMs - felt this was worth a revisit from "how real-world scientific progress works" point of view.
atomicnature
·7 か月前·議論
You can look into Judea Pearl's definitions of causality for more information.

Pearl defines a ladder of causation:

1. Seeing (association) 2. Doing (intervention) 3. Imagining (counterfactuals)

In his view - most ML algos are at level 1 - they look at data and draw associations, and "agents" have started some steps in level 2 - doing.

The smartest of humans operate mostly in level (3) of abstractions - where they see things, gain experience, and later build up a "strong causal model" of the world and become capable of answering "what if" questions.
atomicnature
·7 か月前·議論
Only one thing comes to mind:

The species as a whole will evolve inevitably; the individual animal may not.
atomicnature
·7 か月前·議論
Leslie Lamport built latex, most of distributed systems such as AWS services depend on formal verification. The job of Science here is to help Engineering with managing complexity and scale. The researchers are doing their jobs
atomicnature
·8 か月前·議論
Why do you think developer enjoyment is orthogonal to productivity and delivery?
atomicnature
·8 か月前·議論
Willful ignorance is a different process. Consider a food analogy.

Of the food we take - cells accept a % of it as nutrients and such, rest is discarded as waste. The cells know how to get this job done - it's a very complex process for sure.

I think it's the same with information content - a % actually is useful for making life happen - whereas the rest should ideally be discarded because it is meaningless from a life perspective. The mind just knows what's important most of the time.

In this case - willful ignorance would be something like intermittent fasting or regulating food intake carefully, since it is a conscious process.

The former process is unconscious and operates at the "cell level" whereas the latter is a conscious process that operates at the "whole-being" level.
atomicnature
·8 か月前·議論
1. The survey seems limited to UK or so. Not sure - it doesn't look like a global report.

2. Don't confuse "enjoyment" with "number of readers". The previous generation may have enjoyed it more - because there were no better options.

3. People over the globe are more educated now, and engaged in knowledge work. They must read to get work done.

4. Don't forget the "pirate book" scene - such as lib gen, Anna's archive, etc. - in developing countries.
atomicnature
·8 か月前·議論
Book sales in general (across all formats) are up I think - so there are still many, many readers around. We just have many new formats (EPUB, audiobooks, reader devices, etc.) and of course population is increasing over the globe. I'm pretty sure we have the highest number of readers on the planet right now than ever before in absolute terms.
atomicnature
·8 か月前·議論
Will this be open source?