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How I keep up with AI progress

Last Updated: 30th June 2025

Generative AI has been the fastest moving technology I have seen in my lifetime. Its also happens to be terribly misunderstood.

We have already seen large companies and even governments ship dysfunctional or even dangerous AI products. Sufficiently uninformed people misunderstand how to apply AI with concretely negative consequences.

The most common errors of misunderstanding are either underestimation (“it’s all hype that will blow over”) or overestimation (“I don’t need programmers anymore”). These patterns are rooted in a lack of a solid understanding of the technology and how it is evolving over time.

It’s surprisingly challenging to build a clear understanding of AI. We are in one of the most polluted information environments. If you’re not being deliberate about it, you are likely exposed to a lot of misinformation that overstates or dismisses AI capabilities.

To help with this, I’ve curated a list of sources that make up an information pipeline that I consider balanced and healthy. If you’re late to the game, consider this a good starting point.

Table of Contents

General guidelines

Starting Points

Andrej Karpathy (Twitter and YouTube)

Official announcements, blogs and papers from those building AI

Even though these labs sometimes get a bad rap for hyping up AI capabilities, their official announcements have a lot of valuable and generally accurate information on the capabilities of AI.

Always look out for the announcements from OpenAI, Google DeepMind, Anthropic, DeepSeek, Meta AI, xAI and Qwen.

Most labs usually have a bunch of useful resources that help deepen your understanding of LLM capabilities.

If you see anyone making an explosive claim about capabilities, or quoting some research from these labs, I always bypass the person making the claim and read it straight from the source, with the surrounding context.

A caveat: the cookbooks may not represent the ideal way to do things in my experience, even if they are an excellent starting point. We’re all still figuring this out. Your own experience of putting AI capabilities into production backed by data trumps everything.

It’s occasionally worth keeping tabs on smaller players like Nous Research, Allen AI, Prime Intellect, Pleias (open source, open research), Cohere (enterprise) and Goodfire (interpretability research). A lot of them go into technical depth that I don’t have the prerequisites to fully understand, but it gave me some sense of what’s happening outside the frontier labs and my AI engineering bubble. Interestingly, I have noticed (especially with the first few examples) these labs are willing to talk more about what exactly they are doing compared to frontier labs.

High signal people to follow

These are people who have contributed to the AI Engineering ecosystem in various ways, either by building open source tooling or putting in the work of integrating these AI models. Often, I’ve found more detailed and helpful recommendations than what the official cookbooks and guides suggest.

I tend to not listen to podcasts or follow the news, but a tiny dose of it to follow AI developments was warranted. These are my preferred sources.

Twitter / X

Esoterica

Prompt Whisperers and Latent space explorers: Janus, Wyatt Walls, Claude Backrooms (1, 2, 3)

Do I chug water from a firehose?

It seems like a lot of work to keep up with all of that, but in practice it really isn’t.

I go through my twitter feed like one would a newspaper. Some things catch my eye immediately, and others are glossed over or opened in a tab to be read later. It might be 15 to 20 minutes of work, but I haven’t done a time-check.

It helps that my twitter feed has a lot of thoughtful commentary on particular announcements, papers or articles that provide more context on what’s worth paying attention to. If I find someone who has shared something interesting, I follow them and also go through their other work. This is not very different from how I would discover music.

I actually find this kind of foraging quite fun, and I don’t consider it as “work”. I grew up on science fiction stories. Artificial Intelligence is something I’ve been fascinated with ever since I was a kid, and it’s endlessly fascinating and awe-inspiring to see powerful AI being built piece by piece in front of me, within my lifetime.

I hope this list gives you a starting point to get you excited the way I am.

I have made the above recommendations as a twitter / X list, which should make it easy to follow all the people above.

Link to list.

Coming soon: RSS-friendly list.