| The big one, OPT-175B, isn't an open model. The word "open" in technology means that everyone has equal access (viz. "open source software" and "open source hardware"). The article says that research access will be provided upon request for "academic researchers; those affiliated with organizations in government, civil society, and academia; and those in industry research laboratories.". Don't assume any good intent from Facebook. This is obviously the same strategy large proprietary software companies have been using for a long time to reinforce their monopolies/oligopolies. They want to embed themselves in the so-called "public sector" (academia and state institutions), so that they get free advertising for taxpayer money. Ordinary people like most of us here won't be able to use it despite paying taxes. Some primary mechanisms of this advertising method: 1. Schools and universities frequently use the discounted or gratis access they have to give courses for students, often causing students to be only specialized in the monopolist's proprietary software/services. 2. State institutions will require applicants to be well-versed in monopolist's proprietary software/services because they are using it. 3. Appearance of academic papers that reference this software/services will attract more people to use them. Some examples of companies utilizing this strategy: Microsoft - Gives Microsoft Office 365 access for "free" to schools and universities. Mathworks - Gives discounts to schools and universities. Autodesk (CAD software) - Gives gratis limited-time "student" (noncommercial) licenses. Altium (EDA software) - Gives gratis limited-time licenses to university students. Cadence (EDA software) - Gives a discount for its EDA software to universities. EDIT: Previously my first sentence stated that the models aren't open - in fact, only OPT-175B is not (but the other ones are much smaller). |
30B parameter models are already large enough to exhibit some of the more interesting emergent phenomena of LLMs. Quantized to 8 bits, it might be possible to squeeze into 2, better three 3090s. But the models also seem undercooked, slightly to strongly under-performing GPT-3 in a lot of tasks. To further train the same model is now looking at > 100 GB, possibly 200GB of VRAM. Point being, this is no small thing they're offering and certainly preferable to being put on a waiting list for a paid API. The 6.7B and 13B parameter models seem the best bang for your buck as an individual.