I think part of the problem is that LLMs stop learning at the end of the training phase, while a human never stops taking in new information.
Part of why I think AGI is so far away is because to run the training in real-time like a human, it would take more compute than currently exists. They should be focusing on doing more with less compute to find new more efficient algorithms and architectures, not throwing more and more GPUs at the problem. Right now 10x the GPUs gets you like 5-10% better accuracy on whatever benchmarks, which is not a sustainable direction to go.
The context window is a fixed size. If the conversation gets too long, the start will get pushed out and the AI will not remember anything from the start of the conversation.
It’s more like having a notepad in front of a human, the AI can reference it, but not learn from it.
Also, a key part of how GPT-based LLMs work today is they get the entire context window as their input all at once. Where as a human has to listen/read a word at a time and remember the start of the conversation on their own.
I have a theory that this is one of the reasons LLMs don’t understand the progression of time.
I think part of the problem is that LLMs stop learning at the end of the training phase, while a human never stops taking in new information.
Part of why I think AGI is so far away is because to run the training in real-time like a human, it would take more compute than currently exists. They should be focusing on doing more with less compute to find new more efficient algorithms and architectures, not throwing more and more GPUs at the problem. Right now 10x the GPUs gets you like 5-10% better accuracy on whatever benchmarks, which is not a sustainable direction to go.
How does conversation context work though? Is that memory not a form of learning?
The context window is a fixed size. If the conversation gets too long, the start will get pushed out and the AI will not remember anything from the start of the conversation. It’s more like having a notepad in front of a human, the AI can reference it, but not learn from it.
Also, a key part of how GPT-based LLMs work today is they get the entire context window as their input all at once. Where as a human has to listen/read a word at a time and remember the start of the conversation on their own.
I have a theory that this is one of the reasons LLMs don’t understand the progression of time.