And why didn’t you include the name of the model in your test? Looks like you don’t want me to try it myself. It would be interesting to do so. Of course with values which don’t fit perfectly into 8 bit. What if I define the range from 0 to 47204 for each color channel instead? What if I would use CMY(K) instead of RGB? A good “great” AI must be able to handle all of that. And of course correctly explain what complementary colors are (which you didn’t include either). So yeah - what you provided does not go beyond the output from htmlcolorcodes.com - a very simple website with very simple code. I doubt it requires much power either.
And why didn’t you include the name of the model in your test?
I was using standard RGB hex codes, so I didn’t really need to specify because its the assumed default. If it was something different, I would need to specify. EDIT: oh I just realized you meant the LLM model, not the color model (RYB vs RGB). It was just from ChatGPT, thought the interface would be recognizable enough.
Looks like you don’t want me to try it myself. It would be interesting to do so.
Huh? What do you mean? Go try it!
Of course with values which don’t fit perfectly into 8 bit. What if I define the range from 0 to 47204 for each color channel instead
Yeah, so this is already a thing. 24-bit color (8 bits per color channel) already gives you 16,777,216 colors, which is pretty good, but if you want more precision, you can just use decimal (floating point) numbers for each channel, like sRGB(0.25, 0.5, 1.0) (https://en.wikipedia.org/wiki/SRGB) OR even better would be to use oklch (https://en.wikipedia.org/wiki/Oklab_color_space). This is a solved problem. Or you cold just define your range as 0 to 47204.
So… we’ve gone from “no LLM will ever be able to understand what complementary colors are” to “b-b-but what about arbitrary color models I make up??” And yeah, it will handle those too, you just have to tell it what it is when you prompt it.
And why didn’t you include the name of the model in your test? Looks like you don’t want me to try it myself. It would be interesting to do so. Of course with values which don’t fit perfectly into 8 bit. What if I define the range from 0 to 47204 for each color channel instead? What if I would use CMY(K) instead of RGB? A good “great” AI must be able to handle all of that. And of course correctly explain what complementary colors are (which you didn’t include either). So yeah - what you provided does not go beyond the output from htmlcolorcodes.com - a very simple website with very simple code. I doubt it requires much power either.
I was using standard RGB hex codes, so I didn’t really need to specify because its the assumed default. If it was something different, I would need to specify.EDIT: oh I just realized you meant the LLM model, not the color model (RYB vs RGB). It was just from ChatGPT, thought the interface would be recognizable enough.Huh? What do you mean? Go try it!
Yeah, so this is already a thing. 24-bit color (8 bits per color channel) already gives you 16,777,216 colors, which is pretty good, but if you want more precision, you can just use decimal (floating point) numbers for each channel, like sRGB(0.25, 0.5, 1.0) (https://en.wikipedia.org/wiki/SRGB) OR even better would be to use oklch (https://en.wikipedia.org/wiki/Oklab_color_space). This is a solved problem. Or you cold just define your range as 0 to 47204.
So… we’ve gone from “no LLM will ever be able to understand what complementary colors are” to “b-b-but what about arbitrary color models I make up??” And yeah, it will handle those too, you just have to tell it what it is when you prompt it.
All LLMs still claim that green is the complementary color to red…
Green is the correct answer in the RYB color model, which is traditionally used in art and most commonly taught in schools.
And… wait for it…
And an open-weight model (qwen3:32b)
So you’re:
And you still ignore what I wrote. Because you can’t process how wrong you and your AI are.
😂 multiple LLMs literally gave the exact answer that you claim they can’t correctly give, on the very first try. Checkmate.