How Future PCs Will Work ❓

Analytics Vidhya · Intermediate ·🧠 Large Language Models ·1y ago

Key Takeaways

Explains the new computing paradigm with large language models acting like CPUs, using tokens instead of bytes, and having a context window instead of RAM, known as the Large Language Model OS

Full Transcript

I think the nature of computation basically is changing and uh we're kind of have like a new Computing Paradigm that we're entering into and this is very rare I kind of almost feel like as the 1980s of computing all over again and instead of having a central processing unit that uh you know works on instructions over bytes we have these large language models which are kind of like the central processing unit uh working on tokens which are little string pieces instead and uh then in addition to that we have a contact window of tokens instead of a ram of bytes and we have equivalence of dis and everything else so it's a bit like a computer and this is the orchestrator and that's why I call this like the large language model lmos and uh I've sort of like tweeted about this in some more detail before and so I see this as a new computer that we're all learning how to program and uh what it's good at what it's not as good at how to incorporate into products and really how to squeeze the most out of it

Original Description

Andrej Karpathy, OpenAI Co-founder and former employee, explains the new computing paradigm: "We're entering a new computing paradigm with large language models acting like CPUs, using tokens instead of bytes, and having a context window instead of RAM. This is the Large Language Model OS (LMOS)" #ai #ainews #ai2024
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