lb

252 posts

lb

lb

@lukasbuhler

Building an AI agent that is truly yours! Find me on Urbit: ~lavlyn-litmeg

Zurich, Switzerland Katılım Ağustos 2013
466 Takip Edilen374 Takipçiler
Jonas Templestein
Jonas Templestein@jonas·
I had such a great time at @aiDotEngineer Europe last week ! Except for one thing: My workshop went terribly because I vibe-slopped a little bit too hard half an hour before it started and was too frazzled to recover So I promised everyone I'd make a video recording of what it was meant to be. Here's that video! This video is relatively long and aimed at the workshop audience. But if there's any interest, I'll make a 3 minute version In short, I believe that (maybe) 1. Agent harnesses should be modelled as stream processors that call append({ event}) and stream() an append only event log 2. All state in agent harnesses should be event-sourced 3. Harness plugins are just stream processors, too, and can run on other machines from the "harness" itself 4. All agents should have a public URL that events can be posted to 5. You should be able to append the source code of a stream processor to a stream and then it magically runs on that stream To prove it, we make a "coding agent" built on @tan_stack AI and @cramforce 's just-bash and deploy it to a real stream at events.iterate.com And because @badlogicgames told us to use our brain more, I though I'd try to actually write the code by hand You can try this yourself by using this repo here github.com/iterate/ai-eng…
English
6
9
69
11.2K
lb
lb@lukasbuhler·
Meta agents are next in AI, not swarms. Meta agents are agents that code and deploy other agents.
English
1
0
1
40
lb
lb@lukasbuhler·
If you want to get to the bottom of why there is a rift between Trump and Elon, read Jane Jacobs, "Systems of Survival". It'll all make sense.
English
0
0
1
110
lb
lb@lukasbuhler·
What if an AI could have access to ALL your private data? Would it mend your mind? ....something little I've been working on the last few months with the amazing people at @mindpalaceai. (That's why you haven't seen me around much.)
MindPalace@mindpalaceai

MindPalace has been achieved internally All members of the team have integrated their messages, browsers and notes and are using MindPalace to eliminate friction between thought and action To be among the first wave of MindMaxxers, join the waitlist at mindpalace.ai

English
3
0
10
798
lb
lb@lukasbuhler·
@karthikv792 Very good paper! It's actually kind of sad that you have to convince people of the fact that LLMs have to be grounded in some sort of non-probabilistic world structure. It's so obviously true. But the implication of what an LLM-verifier loop can attain is also quite profound.
English
0
0
5
356
lb retweetledi
Karthik Valmeekam
Karthik Valmeekam@karthikv792·
Curious about the limits of #LLMs in planning and reasoning? Discover how something as simple as stacking blocks can halt the #LLMArmageddon! Join our #NeurIPS23⭐️SPOTLIGHT⭐️poster to delve into the planning abilities of LLMs in direct and LLM-Modulo settings.
Karthik Valmeekam tweet mediaKarthik Valmeekam tweet mediaKarthik Valmeekam tweet media
English
4
8
67
47K
lb
lb@lukasbuhler·
Hear me out! The solution to AI alignment: just add, "be nice!"
English
0
0
1
163
lb
lb@lukasbuhler·
@nathanmarz Yes! This is the engineering hill I’d die on.
English
0
0
1
260
Nathan Marz
Nathan Marz@nathanmarz·
There's a common belief that computation and storage should be separated. In reality they're tightly interrelated, and their historical separation is a huge driver of complexity. Separating computation and storage will eventually be as archaic as manually writing assembly code.
English
12
9
66
8.3K
lb
lb@lukasbuhler·
What you’re seeing is not the real thing, but a scripted and animated video, *vaguely* resembling real text prompts that are much less impressive on their own (but still good and interesting of course).
English
0
0
1
108
lb
lb@lukasbuhler·
Thousands of planets had to undergo a substantial migration…and it just worked!
English
0
0
1
169
lb
lb@lukasbuhler·
@tloncorporation just released a massive refactor of Groups—months in the making to speed everything up—and it went over without a hitch.
English
1
1
15
2.9K
lb
lb@lukasbuhler·
I watched the Boy and the Heron a few days ago. I’m still in total shock, it’s hard to explain, but it’s an otherworldly experience. It’s difficult to imagine a more symbolically pregnant film that is at the same time whimsical and joyfully beautiful.
English
0
0
6
331
lb
lb@lukasbuhler·
👀 Matches gpt-3.5-turbo...with 7B params... scratches head.
lb tweet media
AK@_akhaliq

🎩 Magicoder: Source Code Is All You Need @Gradio demo is out local demo: github.com/ise-uiuc/magic… introduce Magicoder, a series of fully open-source (code, weights, and data) Large Language Models (LLMs) for code that significantly closes the gap with top code models while having no more than 7B parameters. Magicoder models are trained on 75K synthetic instruction data using OSS-Instruct, a novel approach to enlightening LLMs with open-source code snippets to generate high-quality instruction data for code. Our main motivation is to mitigate the inherent bias of the synthetic data generated by LLMs by empowering them with a wealth of open-source references for the production of more diverse, realistic, and controllable data. The orthogonality of OSS-Instruct and other data generation methods like Evol-Instruct further enables us to build an enhanced MagicoderS. Both Magicoder and MagicoderS substantially outperform state-of-the-art code models with similar or even larger sizes on a wide range of coding benchmarks, including Python text-to-code generation, multilingual coding, and data-science program completion. Notably, MagicoderS-CL-7B based on CodeLlama even surpasses the prominent ChatGPT on HumanEval+ (66.5 vs. 65.9 in pass@1). Overall, OSS-Instruct opens a new direction for low-bias and high-quality instruction tuning using abundant open-source references.

English
0
0
2
212
lb
lb@lukasbuhler·
@HumanizerSequel Exactly, you want an always-on agent that takes action based on your intent, without you having to probe it every time. For that to work, however, you'd really have to be able to trust your sidekick.
English
0
0
1
166
Sam H
Sam H@HumanizerSequel·
By default my computer should have a side bar where these agents interpret what I’m doing and offer commentary — but I could interact with directly if I want to. @lukasbuhler
English
1
0
4
185
lb
lb@lukasbuhler·
@elonmusk marketing stunt of the century!
English
0
0
0
57
Elon Musk
Elon Musk@elonmusk·
Beats a Porsche 911 while towing a 911
English
18.2K
50.4K
461.3K
73.9M