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theredbeard

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1 points·by theredbeard·4 mesi fa·0 comments

[untitled]

1 points·by theredbeard·4 mesi fa·0 comments

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1 points·by theredbeard·5 mesi fa·0 comments

[untitled]

1 points·by theredbeard·5 mesi fa·0 comments

I traced 3,177 API calls to see what 4 AI coding tools put in the context window

theredbeard.io
36 points·by theredbeard·5 mesi fa·4 comments

Show HN: Context Lens: View your CLI's agent context in realtime

github.com
1 points·by theredbeard·5 mesi fa·0 comments

Show HN: Context Lens: Devtools for your agent context

github.com
3 points·by theredbeard·5 mesi fa·2 comments

Are we becoming QA for the machine?

medium.com
1 points·by theredbeard·5 mesi fa·0 comments

Show HN: Context Lens – See what's inside your AI agent's context window

github.com
2 points·by theredbeard·5 mesi fa·1 comments

comments

theredbeard
·4 mesi fa·discuss
We haven’t been inching closer to users writing a half-decent ticket in decades though.
theredbeard
·4 mesi fa·discuss
This is because for some reason all agentic systems think that slapping cron on it is enough, but that completely ignores decades of knowledge about prospective memory. Take a look at https://theredbeard.io/blog/the-missing-memory-type/ for a write-up on exactly that.
theredbeard
·4 mesi fa·discuss
What in the ChatGPT is this?
theredbeard
·4 mesi fa·discuss
I’m getting pretty decent at spotting LLM text. This doesn’t contain the obvious tells at least.
theredbeard
·4 mesi fa·discuss
It’s a self fulfilling prophecy. They’re extremely expensive so they must be good so they must be worth it. And because at that level measurement is extremely subjective it’s mainly about the vibes.

Like everything it’s just marketing.
theredbeard
·4 mesi fa·discuss
I’m sorry but no attempt was made here. It contains all the red flags in the first few paragraphs.
theredbeard
·4 mesi fa·discuss
A vibe? It’s completely obvious AI slop with no attempt to make it legible. They didn’t even prompt out the emdashes. For such a cool finding this is extremely disappointing.
theredbeard
·5 mesi fa·discuss
It's a fair question. I've had problems with Gemini 3 due to rate limiting, and I've been working on this for a while now. I'm planning Gemini 3 for a follow up.
theredbeard
·5 mesi fa·discuss
It’s not groundbreaking in a technological sense. The codebase is actually a bit of a monstrosity. But it removed guardrails that were artificially put on these LLMs which suddenly gave it an entire new dimension and the timing was right.
theredbeard
·5 mesi fa·discuss
I built this because I was curious what Claude sends to the API, how subagents get work delegated and what contexts look like. Interesting to see how small part of the context the user interaction really is typically.
theredbeard
·5 mesi fa·discuss
I built this because I was curious what Claude sends to the API, how subagents get work delegated and how contexts look like. Interesting to see how small part of the context the user interaction really is typically.
theredbeard
·5 mesi fa·discuss
No worries, the italics did heavy lifting.
theredbeard
·5 mesi fa·discuss
Gitlab.com is the obvious rec.
theredbeard
·5 mesi fa·discuss
What could go wrong?!
theredbeard
·5 mesi fa·discuss
Skipping the investigation phase to jump straight to solutions has killed projects for decades. Requirements docs nobody reads, analysis nobody does, straight to coding because that feels like progress. AI makes this pattern incredibly attractive: you get something that looks like a solution in seconds. Why spend hours understanding the problem when you can have code right now?

The article's point about AI code being "someone else's code" hits different when you realize neither of you built the context. I've been measuring what actually happens inside AI coding sessions; over 60% of what the model sees is file contents and command output, stuff you never look at. Nobody did the work of understanding by building / designing it. You're reviewing code that nobody understood while writing it, and the model is doing the same.

This is why the evaluation problem is so problematic. You skipped building context to save time, but now you need that context to know if the output is any good. The investigation you didn't do upfront is exactly what you need to review the AI's work.
theredbeard
·5 mesi fa·discuss
OSS was already brutal for new contributors before AI. You'd spend hours on a good-faith PR and get ignored for months, or get torn apart in review because you didn't know the unwritten conventions. The signal-to-noise ratio sucked but at least maintainers would eventually look at your stuff.

Now with AI-generated spam everywhere, maintainers have even more reason to be suspicious of unknown names. Vouch solves their problem, but think about what it means for someone trying to break in. You need someone to vouch for you before you can contribute, but how do you get someone to vouch for you if you can't contribute?

I get why maintainers need this. But we're formalizing a system that makes OSS even more of an insider's club. The cold start problem doesn't really get any warmer like this.