From the prompt it looks like you don’t give the llms a harness to step through games or simulate - is that correct? If so I’d suggest it’s not a level playing field vs human written bots - if the humans are allowed to watch some games that is.
That’s true, I’m trying to figure out a better testing environment with a feedback loop.
I did try letting the models iterate on the bot code based on a summary of an end-of-game ‘report’, but that showed only marginal improvements vs. zero-shot
Cool project, this is my first time seeing such project using LLMs. Took me a while to understand what's happening on the home page.
A question though, why such powerful bots like Gemini 3.1 failed against Clowder bot? Is it because of inefficient code or the LLMs did not handle edge cases? Or they are not as good as humans when it comes to strategy.
Macroexpanding the previous threads:
Show HN: Yare 2 – Programmable RTS game - https://news.ycombinator.com/item?id=32394902 - Aug 2022 (26 comments)
Show HN: Yare.io – game where you control units with JavaScript - https://news.ycombinator.com/item?id=27365961 - June 2021 (64 comments)
(Btw, reposts are fine after a year or so; links to past threads are just to satisfy extra-curious readers!)
Cool!
From the prompt it looks like you don’t give the llms a harness to step through games or simulate - is that correct? If so I’d suggest it’s not a level playing field vs human written bots - if the humans are allowed to watch some games that is.
That’s true, I’m trying to figure out a better testing environment with a feedback loop.
I did try letting the models iterate on the bot code based on a summary of an end-of-game ‘report’, but that showed only marginal improvements vs. zero-shot
Cool project, this is my first time seeing such project using LLMs. Took me a while to understand what's happening on the home page.
A question though, why such powerful bots like Gemini 3.1 failed against Clowder bot? Is it because of inefficient code or the LLMs did not handle edge cases? Or they are not as good as humans when it comes to strategy.
I’m not sure honestly. It could be some combination of bad spatial reasoning of the LLMs and lack of any training data for this specific challenge.
You can see replays for all of the matches if you hover over the cells in the table.