an eight-year-old girl was among those killed
an eight-year-old girl was among those killed
Calling what attention transformers do memorization is wildly inaccurate.
*Unless we’re talking about semantic memory.
It honestly blows my mind that people look at a neutral network that’s even capable of recreating short works it was trained on without having access to that text during generation… and choose to focus on IP law.
The issue is that next to the transformed output, the not-transformed input is being in use in a commercial product.
Are you only talking about the word repetition glitch?
How do you imagine those works are used?
It’s called learning, and I wish people did more of it.
This is an inaccurate understanding of what’s going on. Under the hood is a neutral network with weights and biases, not a database of copyrighted work. That neutral network was trained on a HEAVILY filtered training set (as mentioned above, 45 terabytes was reduced to 570 GB for GPT3). Getting it to bug out and generate full sections of training data from its neutral network is a fun parlor trick, but you’re not going to use it to pirate a book. People do that the old fashioned way by just adding type:pdf to their common web search.
You’ve made a lot of confident assertions without supporting them. Just like an LLM! :)
Just taking GPT 3 as an example, its training set was 45 terabytes, yes. But that set was filtered and processed down to about 570 GB. GPT 3 was only actually trained on that 570 GB. The model itself is about 700 GB. Much of the generalized intelligence of an LLM comes from abstraction to other contexts.
Table 2.2 shows the final mixture of datasets that we used in training. The CommonCrawl data was downloaded from 41 shards of monthly CommonCrawl covering 2016 to 2019, constituting 45TB of compressed plaintext before filtering and 570GB after filtering, roughly equivalent to 400 billion byte-pair-encoded tokens. Language Models are Few-Shot Learners
*Did some more looking, and that model size estimate assumes 32 bit float. It’s actually 16 bit, so the model size is 350GB… technically some compression after all!
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Equating LLMs with compression doesn’t make sense. Model sizes are larger than their training sets. if it requires “hacking” to extract text of sufficient length to break copyright, and the platform is doing everything they can to prevent it, that just makes them like every platform. I can download © material from YouTube (or wherever) all day long.
Aye, flux [pro] via glif.app, though it’s funny, sometimes I get better results from the smaller [schnell] model, depending on the use case.
The more the original work is transformed, the more likely it is to be considered fair use rather than infringement.
No c, just grok, originally from Stranger in a Strange Land. But a more technical definition is provided and expanded upon in the paper. Mystery easily dispelled!
Did you read the paper? Or at least have an llm explain it?
Have you tried video editing? You can do a lot with a good song and curiosity.