Human writting will come at a premium. I don't think LLM-generated prose goes away at all; the scary part is that I'm starting to catch people adopt the same tropes and language patterns in their speech/writing, manufactured contrarianism for example seems rampant in social media and blog posts ... but I guess nobody is talking about that :D.
> Software is quietly becoming a probabilistic system, and almost no one is saying it out loud.
AI generated or at least heavily edited would be my guess. Although, I'm with you at this point hard to tell, I'm seeing those AI filler phrases or over use words like "here is what actually happening" more and more and not only on blog posts but social media, video content, podcasts.
> LLM-generated projects, articles, blogs are low-effort products lacking authenticity.
I think this is mostly true but not completely true, LLMs are a tool and right now we are learning how to use it, how to use it well and more importantly how not to use them.
You are absolutely right! Here is a shorter version of the article (hint: is still the same lenght and has all the tells) .... But seriously, is one thing on blogpost and articles but I'm starting to hear it in podcast and videos too, pay attention the speech sounds unnatural:
“Here’s what actually matters.”
“Let’s break it down.”
“The key takeaway is…”
“The bottom line is…”
“What this really means is…”
Also hearing this a lot:
“Here’s what nobody is talking about.”
“Here’s the part people miss.”
“What most people don’t realize is…”
You confused AWS with Amazon distribution and warehouses, and you are doubling down ? Likely or not, much of the world's infrastructure runs on or through AWS data centers. Attacks like this can cause significant disruption.
My take on the real reason behind the OpenClaw acquisition:
OpenClaw isn't a chatbot; it's a 24/7 autonomous system that connects to your email, calendar, messaging platforms, and web browser, chaining multi-step workflows together with persistent memory across sessions. Every one of those operations consumes API tokens; the architecture ensures that consumption is extraordinary.
Interesting idea but I found out that AI is pretty inconsistent on how it structures or breakdowns commits, highlighy dependand on the model and/or user prompting. So there is a chance you might only get to replay single move or commits that are large enough to make it harder to know whats happening
Watching how a lot of people are using and deploying AI and Agentic coding made think about the Tommyknockers, a series/book from Stephen King; there is a quote in particular that really fits.
"As I say, we've never been very good understanders. We're not a race of super-Einsteins. Thomas Edison in space would be closer, I think."
-- Bobbi Anderson, The Tommyknockers (Stephen King, 1987)
@_dwt don't worry you didn't I appreciate good discussion and criticism. The publication is new and I'm still trying to calibrate my voice and style for it.
>I don't know how to encourage the kind of review that AI code generation seems to require. Historically we've been able to rely on the fact that (bluntly) programming is "g-loaded": smart programmers probably wrote better code, with clearer comments, formatted better, and documented better. Now, results that look great are a prompt away in each category, which breaks some subconscious indicators reviewers pick up on.
I don't anyone knows for sure, we all are on the same boat trying to figure it out how to best work with AI; the pace of change is making it so incredibly difficult to keep or try things. I'm trying a bunch of stuff at the same time:
-https://structpr.dev/ - to try to rethink how we approach PR reading, organizing review (dog-fooding it right now so is mostly alpha)
- I have an article schedule next week talking about StrongDMs Software factory, there are some interesting ideas there like test holdouts
- Some experiments in the Elixir stack for code generation and verification that go beyond it looks great. AI can definetively create code that _looks_ great but there is plenty of research that shows a lot of AI generated code and test can have a high degree of false confidence.
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