Why AI language models choke on too much text
by Timothy B. Lee from Ars Technica - All content on (#6T2F6)
Large language models represent text using tokens, each of which is a few characters. Short words are represented by a single token (like "the" or "it"), whereas larger words may be represented by several tokens (GPT-4o represents "indivisible" with "ind," "iv," and "isible").
When OpenAI released ChatGPT two years ago, it had a memory-known as a context window-of just 8,192 tokens. That works out to roughly 6,000 words of text. This meant that if you fed it more than about 15 pages of text, it would forget" information from the beginning of its context. This limited the size and complexity of tasks ChatGPT could handle.
Today's LLMs are far more capable: