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- cross-posted to:
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"Apertus: a fully open, transparent, multilingual language model
EPFL, ETH Zurich and the Swiss National Supercomputing Centre (CSCS) released Apertus 2 September, Switzerland’s first large-scale, open, multilingual language model — a milestone in generative AI for transparency and diversity.
Researchers from EPFL, ETH Zurich and CSCS have developed the large language model Apertus – it is one of the largest open LLMs and a basic technology on which others can build.
In brief Researchers at EPFL, ETH Zurich and CSCS have developed Apertus, a fully open Large Language Model (LLM) – one of the largest of its kind. As a foundational technology, Apertus enables innovation and strengthens AI expertise across research, society and industry by allowing others to build upon it. Apertus is currently available through strategic partner Swisscom, the AI platform Hugging Face, and the Public AI network. …
The model is named Apertus – Latin for “open” – highlighting its distinctive feature: the entire development process, including its architecture, model weights, and training data and recipes, is openly accessible and fully documented.
AI researchers, professionals, and experienced enthusiasts can either access the model through the strategic partner Swisscom or download it from Hugging Face – a platform for AI models and applications – and deploy it for their own projects. Apertus is freely available in two sizes – featuring 8 billion and 70 billion parameters, the smaller model being more appropriate for individual usage. Both models are released under a permissive open-source license, allowing use in education and research as well as broad societal and commercial applications. …
Trained on 15 trillion tokens across more than 1,000 languages – 40% of the data is non-English – Apertus includes many languages that have so far been underrepresented in LLMs, such as Swiss German, Romansh, and many others. …
Furthermore, for people outside of Switzerland, the external pagePublic AI Inference Utility will make Apertus accessible as part of a global movement for public AI. “Currently, Apertus is the leading public AI model: a model built by public institutions, for the public interest. It is our best proof yet that AI can be a form of public infrastructure like highways, water, or electricity,” says Joshua Tan, Lead Maintainer of the Public AI Inference Utility."



As with all things, nuance and context is required. I don’t think we should be taxing poor people that heavily (if at all), but does that mean I should be against taxing the ultra-wealthy more? Obviously not.
I support copyright to protect developers and not hinder users, hobbyists, or the average person. I don’t support it to only help massive companies who can manipulate the law to protect them from competition, but also not hinder them from stealing from the masses. They can afford to pay. If AI is actually as valuable as they say, the price of paying for the training data is trivial.
Copyright shouldn’t only be helpful to big businesses. It should be most helpful to the average person. We have the opposite here. I support modifying copyright law to bind big businesses and liberate individuals. I don’t need to be totally against it like you imply.
Sadly, we’ll most likely see an influx of regulation right when it’s broadly accessible to the general public to run locally.
Yeah, most likely, and it’ll only bind users and protect the businesses, as always.
It already is broadly accessible to the general public. They just don’t know about it or just accept using one of the cloud versions. It’s trivial to get up and running at this point.
That’s news to me, unless you’re only referring to the smaller models. Any chance you can run a model that exceeds your ram capacity yet?
This is probably the easiest tool I’ve used to run them: https://lmstudio.ai/
There’s tons of models available here, some of them fairly large: https://huggingface.co/
No, I’m pretty sure there’s no way to run any larger than your RAM/VRAM, at least not automatically. You can use storage as RAM, but that’s probably not a good idea. It’s orders of magnitude slower. You’re better off running a smaller model.
I’m not knowledgeable in this area, but I wish there was a way to partition the model and stream the partitions over the input, allowing for some kind of serially processing of models that do exceed memory. Like if I could allocate 32gb of ram, and process a 500gb model but at (500/32) a 15x slower rate.
But we can’t afford to pay. I don’t think open models like the one in the OP article would be developed and released for free to the public if there was a complex process of paying billions of dollars to rightsholders in order to do so. That sort of model would favor a monopoly of centralized services run only by the biggest companies.
The model should take into account income. For an open-source model it should be free. It’s using public data to produce a public product. For a for-profit model it should be paid. If they’re profiting off of public data then they should have to pay for the right to use it.
We can’t afford to make any of this. We don’t have the money for the compute required or to pay for the lawyers to make the law work for us. It should benefit the people, so it needs to change. It needs to be “expanded” (I wouldn’t call it that, rather “modified” but I’ll use your word) in that it currently only protects the wealthy and binds the poor. It should be the opposite.
I don’t think this is entirely true; yeah, large foundational models have training costs that are beyond the reach of individuals, but plenty can be done that is not, or can be done by a relatively small organization. I can’t find a direct price estimate for Apertus, and it looks like they used their own hardware, but it’s mentioned they used ten million gpu hours, and GH200 gpus; I found a source online claiming a rental cost of $1.50 per hour for that hardware, so I think the cost of training this could be loosely estimated to be something around 20 million dollars.
That is a lot of money if you are one person, but it’s an order of magnitude smaller than the settlements of billions of dollars being paid so far by the biggest AI companies for their hasty unauthorized use of copyrighted materials. It’s easy to see how copyright and legal costs could potentially be the bottleneck here preventing smaller actors from participating.
How would that even work though? Yes, copyright currently favors the wealthy, but that’s because the whole concept of applying property rights to ideas inherently favors the wealthy. I can’t imagine how it could be the opposite even in theory, but in practice, it seems clear that any legislation codifying limitations on use and compensation for AI training will be drafted by lobbyists of large corporate rightsholders, at the obvious expense of everyone with an interest in free public ownership and use of AI technology.