The recursive self, explained

Reddit - Artificial Intelligence 1 min read

About this article

looking for anyone to give any critiques or tell me that something here is incorrect. this is the work of a year how I scaffold on a true self to a large language model. just as I finished this I saw an Mit paper proposing that recursive llms are the answer to so many problems. submitted by /u/Individual_Visit_756 [link] [comments]

You've been blocked by network security.To continue, log in to your Reddit account or use your developer tokenIf you think you've been blocked by mistake, file a ticket below and we'll look into it.Log in File a ticket

Originally published on May 04, 2026. Curated by AI News.

Related Articles

Llms

Excellent discussion about LLM scaling [D]

I came across an excellent in depth discussion of memory and compute scaling analysis for LLMs. One takeaway is that running LLMs locally...

Reddit - Machine Learning · 1 min ·
[2602.03216] Token Sparse Attention: Efficient Long-Context Inference with Interleaved Token Selection
Llms

[2602.03216] Token Sparse Attention: Efficient Long-Context Inference with Interleaved Token Selection

Abstract page for arXiv paper 2602.03216: Token Sparse Attention: Efficient Long-Context Inference with Interleaved Token Selection

arXiv - Machine Learning · 4 min ·
[2601.21214] Scaling Reasoning Hop Exposes Weaknesses: Demystifying and Improving Hop Generalization in Large Language Models
Llms

[2601.21214] Scaling Reasoning Hop Exposes Weaknesses: Demystifying and Improving Hop Generalization in Large Language Models

Abstract page for arXiv paper 2601.21214: Scaling Reasoning Hop Exposes Weaknesses: Demystifying and Improving Hop Generalization in Larg...

arXiv - Machine Learning · 4 min ·
[2510.23557] Minimizing Human Intervention in Online Classification
Llms

[2510.23557] Minimizing Human Intervention in Online Classification

Abstract page for arXiv paper 2510.23557: Minimizing Human Intervention in Online Classification

arXiv - Machine Learning · 4 min ·
More in Llms: This Week Guide Trending

No comments

No comments yet. Be the first to comment!

Stay updated with AI News

Get the latest news, tools, and insights delivered to your inbox.

Daily or weekly digest • Unsubscribe anytime