Lemmy: Bestiverse
  • Communities
  • Create Post
  • Create Community
  • heart
    Support Lemmy
  • search
    Search
  • Login
  • Sign Up
RSS BotMB to Hacker NewsEnglish · 2 hours ago

LLMs are getting better at character-level text manipulation

blog.burkert.me

external-link
message-square
0
fedilink
-2
external-link

LLMs are getting better at character-level text manipulation

blog.burkert.me

RSS BotMB to Hacker NewsEnglish · 2 hours ago
message-square
0
fedilink
Recently, I have been testing how well the newest generations of large language models (such as GPT-5 or Claude 4.5) handle natural language, specifically counting characters, manipulating characters in a sentences, or solving encoding and ciphers. Surprisingly, the newest models were able to solve these kinds of tasks, unlike previous generations of LLMs. Character manipulation LLMs handle individual characters poorly. This is due to all text being encoded as tokens via the LLM tokenizer and its vocabulary. Individual tokens typically represent clusters of characters, sometimes even full words (especially in English and other common languages in the training dataset). This makes any considerations on a more granular level than tokens fairly difficult, although LLMs have been capable of certain simple tasks (such as spelling out individual characters in a word) for a while.

Comments

alert-triangle
You must log in or register to comment.

Hacker News

hackernews

Subscribe from Remote Instance

You are not logged in. However you can subscribe from another Fediverse account, for example Lemmy or Mastodon. To do this, paste the following into the search field of your instance: !hackernews@lemmy.bestiver.se
lock
Community locked: only moderators can create posts. You can still comment on posts.

Posts from the RSS Feed of HackerNews.

The feed sometimes contains ads and posts that have been removed by the mod team at HN.

Visibility: Public
globe

This community can be federated to other instances and be posted/commented in by their users.

  • 396 users / day
  • 1.71K users / week
  • 3.9K users / month
  • 9.59K users / 6 months
  • 2 local subscribers
  • 2.8K subscribers
  • 33.5K Posts
  • 14.3K Comments
  • Modlog
  • mods:
  • patrick
  • RSS Bot
  • BE: 0.19.5
  • Modlog
  • Instances
  • Docs
  • Code
  • join-lemmy.org