1 min readfrom Machine Learning

Would having a dedicated programming language specifically for LLMs be a viable solution? [D]

What if there was a new programming language where the meaning of each token was so dense (or perhaps so specific) that an LLM could write robust code with fewer tokens and faster inference?

Assuming there’s enough training data, do you think something like this allow an LLM to write better code faster?

Rationale:

1) It would allow for faster inference. Fewer tokens required to do the same thing in Python = finish faster.

2) It would allow for more information in a 1M context window. Whatever you could fit in 1M tokens of Python, you could do 100x that in this theoretical language.

3) It would effectively remove the “noise” from human readable language (semi-colons, curly braces for example) which I would think would make the LLMs coding ability stronger. I could be wrong about this of course.

submitted by /u/Spongebubs
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