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atomicthumbs

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Multi-Stream LLMs: new paper on parallelizing/separating prompts, thinking, I/O

arxiv.org
156 points·by atomicthumbs·2개월 전·16 comments

comments

atomicthumbs
·2개월 전·discuss
i don't think that has anything to do with this paper. isn't parallel tool calling just "assemble several tool calls at once"
atomicthumbs
·2개월 전·discuss
5G NR radios could also be capable of communicating peer to peer long distance if manufacturers (phone or baseband?) wanted them to. It's in the spec.
atomicthumbs
·2개월 전·discuss
New paper out of the Max Planck Institute for Intelligent Systems. If this holds up, it seems big.

Abstract: The continued improvements in language model capability have unlocked their widespread use as drivers of autonomous agents, for example in coding or computer use applications. However, the core of these systems has not changed much since early instruction-tuned models like ChatGPT. Even advanced AI agents function on message exchange formats, successively exchanging messages with users, systems, with itself (i.e. chain-of-thought) and tools in a single stream of computation. This bottleneck to a single stream in chat models leads to a number of limitations: the agent cannot act (generate output) while reading, and in reverse, cannot react to new information while writing. Similarly, the agent cannot act while thinking and cannot think while reading or acting on information. In this work, we show that models can be unblocked by switching from instruction-tuning for sequential message formats to instruction-tuning for multiple, parallel streams of computation, splitting each role into a separate stream. Every forward pass of the language model then simultaneously reads from multiple input streams and generates tokens in multiple output streams, all of which causally depend on earlier timesteps. We argue that this data-driven change remedies a number of usability limitations as outlined above, improves model efficiency through parallelization, improves model security through better separation of concerns and can further improve model monitorability.
atomicthumbs
·2개월 전·discuss
"Hundreds of companies rely on Stainless to generate SDKs, CLIs, and MCP servers—the libraries, command-line tools, and connectors that let developers and agents use an API."

not anymore lol
atomicthumbs
·3개월 전·discuss
is it because amateur radio operators legally have standards they have to comply with?
atomicthumbs
·3개월 전·discuss
[dead]
atomicthumbs
·5개월 전·discuss
you'd think with how often Opus builds two separate code paths without feature parity when you try to vibe code something complex, people wouldn't regard this whole thing so highly
atomicthumbs
·7개월 전·discuss
Yes, I know. I'm pointing out they're comparing a laboratory prototype to a commercial product.
atomicthumbs
·7개월 전·discuss
And how much commercial development have NMC and LFP batteries had since they left the laboratory?
atomicthumbs
·7개월 전·discuss
eBay Seller Research shows that the average sold price for a 5800X3D has increased by about $100 in the past 30 days, from ~$360 to ~$460.
atomicthumbs
·7개월 전·discuss
not really, because all the sousveillance in the world doesn't grant the average joe the power of a single cop
atomicthumbs
·7개월 전·discuss
There are more things in this world than software. Many of them are important!
atomicthumbs
·7개월 전·discuss
100%
atomicthumbs
·7개월 전·discuss
AIs think like a rock flies.
atomicthumbs
·7개월 전·discuss
> Virtually all successful existing sequence models rely on mean squared error (MSE) or dot-product similarity for both their bias and retention. This reliance can make models sensitive to outliers and limit their expressive power.

[...]

> MEMORA: This model focuses on achieving the best possible memory stability by forcing its memory to act like a strict probability map. By using this constraint, it ensures that every time the memory state is updated, the changes are controlled and balanced. This guarantees a clean, stable process for integrating new information.Virtually all successful existing sequence models rely on mean squared error (MSE) or dot-product similarity for both their bias and retention. This reliance can make models sensitive to outliers and limit their expressive power.

so did a Titans write this
atomicthumbs
·7개월 전·discuss
The person you're replying to asked for a source, not an anecdote.
atomicthumbs
·8개월 전·discuss
Those aren't iMessage hardware backdoors.
atomicthumbs
·8개월 전·discuss
Do you have a testable hypothesis about this or are you flailing in the dark?
atomicthumbs
·8개월 전·discuss
these things are popping "ordinary" adults' minds like popcorn kernels and you want to take their safeguards off... why?
atomicthumbs
·8개월 전·discuss
better not use UPS; goods moving under ATA carnet are on their prohibited list