this post was submitted on 14 Jan 2024
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AI girlfriend bots are already flooding OpenAI’s GPT store::OpenAI’s store rules are already being broken, illustrating that regulating GPTs could be hard to control

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[–] paraphrand@lemmy.world 35 points 10 months ago (18 children)

Once LLMs can have perfect memory of past conversations, we are going to see a lot of companion bots. Running into the context window sucks.

[–] ExLisper@linux.community 8 points 10 months ago (13 children)

Is it even feasible with this technology? You can't have infinite prompts so you would have to adjust the weights dynamically, right? But would that produce the effect of memory? I don't think so. I think it will take another major breakthrough before we have personal models with memory.

[–] Akisamb@programming.dev 2 points 10 months ago (1 children)

There are two issues with large prompts. One is linked to the current language technology, were the computation time and memory usage scale badly with prompt size. This is being solved by projects such as RWKV or mamba, but these remain unproven at large sizes (more than 100 billion parameters). Somebody will have to spend some millions to train one.

The other issue will probably be harder to solve. There is less high quality long context training data. Most datasets were created for small context models.

[–] paraphrand@lemmy.world 2 points 10 months ago (1 children)

The other issue will probably be harder to solve. There is less high quality long context training data. Most datasets were created for small context models.

I never considered that this was a dynamic that was involved. Thats interesting. So each piece of data fed into a model during training also has to fit into a “context window” of a certain size too?

[–] Akisamb@programming.dev 3 points 10 months ago

Yes to your question, but that's not what I was saying.

Here is one of the most popular training datasets : https://pile.eleuther.ai/

If you look at the pdf describing the dataset, you'll find the mean length of these documents to be somewhat short with mean length being less than 20kb (20000 characters) for most documents.

You are asking for a model to retain a memory for the whole duration of a discussion, which can be very long. If I chat for one hour I'll type approximately 8400 words, or around 42KB. Longer than most documents in the training set. If I chat for 20 hours, It'll be longer than almost all the documents in the training set. The model needs to learn how to extract information from a long context and it can't do that well if the documents on which it trained are short.

You are also right that during training the text is cut off. A value I often see is 2k to 8k tokens. This is arbitrary, some models are trained with a cut off of 200k tokens. You can use models on context lengths longer than that what they were trained on (with some caveats) but performance falls of badly.

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