
Seraph
740 posts

Seraph
@seraphcooked
Agentic development FTW. Opinions are my own. Predicting the future👀
In the trenches Katılım Eylül 2024
384 Takip Edilen97 Takipçiler


@okx @OKXHelpDesk where is the original post contains the submission guidelines please?
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Seraph retweetledi

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@seraphcooked Hi there ! We're here to help. Could you DM us your UID and relevant detail. Once we receive the details, we'll look into it and assist you further.
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Seraph retweetledi

BREAKING: OpenAI launches GPT-5.6 and says it is more powerful than Claude Mythos.
This is a new family of 3 models: Sol, Terra, and Luna.
Sol is the most powerful and most expensive.
Terra costs half as much as OpenAI's old top model while performing just as well. Luna is the cheapest and fastest, built for simple, high volume tasks.
OpenAI isn't releasing this to everyone yet.
It's starting with a small group of trusted partners only, and OpenAI says this limited rollout is happening at the request of the US government, before a wider public release in the coming weeks.
OpenAI claims Sol matches Claude Mythos on a cybersecurity test called ExploitBench, while using roughly a third of the computing power Mythos needs for the same task.
During testing, Sol could find security flaws in software and figure out some of the pieces needed to exploit them, but it could not put those pieces together into a fully working attack on its own.
To support its safety claims, OpenAI says it spent the equivalent of over 700,000 high end GPUs worth of computing time trying to find ways the model could be misused or tricked, on top of separate human testing.



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