Yes, because a lot of AI benchmarking at the moment is something that the companies created for themselves to gauge their own definitions of progress. Which is how OpenAI can spend last year releasing what they think is a massively better model of ChatGPT only to be met with an universal ‘meh, I guess’. From their paying users, even.
What we can conclude is that the US evaporating all their venture capital and also the Gulf’s to build language models does not meaningfully outperform the engineering that some chinese firms do on the side.
To what extent this matters is what’s harder to divine because the language model marketing is overwhelming any practical use for this technology outside of very specific companies making their own very specialized research. The idea that this is a future 100 trillion dollar industry of actual AGI distracts us from what could be a respectable 50 billion dollar industry of very specialized uses in mineral prospecting, manufacturing or QoL for coding.
i don’t know anything about LMArena or their specific methodology but from a cursory glance, it is a crowdsourced blind pairwise testing platform and i’d just assume they are doing it right. based on this, you’d still be correct to be skeptical about their rankings. it’s an elo platform, any result they publish is biased towards their audience preferences and not necessarily indicative of actual head to head performance in your/any specific use case. that being said nothing is perfect, and compared to specific benchmarks it cannot be gamed. you can game it slightly to fit the preferences of the users of LMArena, but i would assume that their taste is not that different than the general population. it is at the very least correlated with actual performance.
my take on the graph is that the gap is really not conclusive to show an actual performance lead. either a. people have a bias towards the models they were exposed to first (a company iterating on their models will likely produce new models with the same type/tone of response) or b. US companies are spending an ungodly amount of money on fine-tuning for marginal gains that are honestly not worth it and has to be done again on a new model.
The big problem with these sites is that you can just tune the model to work really well for these specific tests and that doesn’t necessarily translate into general capabilities. So, a model can do really well on a benchmark and not have comparable performance for real world tasks.
it’s really not a benchmark though. unless i am mistaken this specific graph comes from a blind voting platform. you can absolutely game benchmarks and tests but i do not see how you can meaningfully game a voting platform unless something is wrong with the platform itself.
It’s definitely one of the better approaches for removing bias and making results harder to game, but it still has limitations because of the scope of the problems. A user visits the Arena website and types a prompt into a chat interface, the system randomly selects two different models from the pool of participants. The user then selects the response they liked best.
One of the problems that the user base is skewed toward tech savvy and AI interested users. The evaluation is limited to a single turn chat interaction and does not test long conversations or multi step tasks. So, it’s not really representative of how a model would behave using an agentic tool like opencode.
And that’s where the problem with gaming the test surfaces. You can tune the model for the kinds of short questions that it would encounter in LMArena, but that may not translate into real world scenarios where it has to do things like analyzing codebases or doing step by step problem solving.
yeah absolutely especially considering agentic use cases it’s limited but i still think it’s a valid metric that is at least correlated with performance for purely chatbot users.
Am I justified in looking skeptically at LMArena’s scorings? I’ve got no evidence, but I feel like they are funded by American big tech.
Yes, because a lot of AI benchmarking at the moment is something that the companies created for themselves to gauge their own definitions of progress. Which is how OpenAI can spend last year releasing what they think is a massively better model of ChatGPT only to be met with an universal ‘meh, I guess’. From their paying users, even.
What we can conclude is that the US evaporating all their venture capital and also the Gulf’s to build language models does not meaningfully outperform the engineering that some chinese firms do on the side.
To what extent this matters is what’s harder to divine because the language model marketing is overwhelming any practical use for this technology outside of very specific companies making their own very specialized research. The idea that this is a future 100 trillion dollar industry of actual AGI distracts us from what could be a respectable 50 billion dollar industry of very specialized uses in mineral prospecting, manufacturing or QoL for coding.
i don’t know anything about LMArena or their specific methodology but from a cursory glance, it is a crowdsourced blind pairwise testing platform and i’d just assume they are doing it right. based on this, you’d still be correct to be skeptical about their rankings. it’s an elo platform, any result they publish is biased towards their audience preferences and not necessarily indicative of actual head to head performance in your/any specific use case. that being said nothing is perfect, and compared to specific benchmarks it cannot be gamed. you can game it slightly to fit the preferences of the users of LMArena, but i would assume that their taste is not that different than the general population. it is at the very least correlated with actual performance.
my take on the graph is that the gap is really not conclusive to show an actual performance lead. either a. people have a bias towards the models they were exposed to first (a company iterating on their models will likely produce new models with the same type/tone of response) or b. US companies are spending an ungodly amount of money on fine-tuning for marginal gains that are honestly not worth it and has to be done again on a new model.
The big problem with these sites is that you can just tune the model to work really well for these specific tests and that doesn’t necessarily translate into general capabilities. So, a model can do really well on a benchmark and not have comparable performance for real world tasks.
it’s really not a benchmark though. unless i am mistaken this specific graph comes from a blind voting platform. you can absolutely game benchmarks and tests but i do not see how you can meaningfully game a voting platform unless something is wrong with the platform itself.
It’s definitely one of the better approaches for removing bias and making results harder to game, but it still has limitations because of the scope of the problems. A user visits the Arena website and types a prompt into a chat interface, the system randomly selects two different models from the pool of participants. The user then selects the response they liked best.
One of the problems that the user base is skewed toward tech savvy and AI interested users. The evaluation is limited to a single turn chat interaction and does not test long conversations or multi step tasks. So, it’s not really representative of how a model would behave using an agentic tool like opencode.
And that’s where the problem with gaming the test surfaces. You can tune the model for the kinds of short questions that it would encounter in LMArena, but that may not translate into real world scenarios where it has to do things like analyzing codebases or doing step by step problem solving.
yeah absolutely especially considering agentic use cases it’s limited but i still think it’s a valid metric that is at least correlated with performance for purely chatbot users.
yeah for what it’s actually testing it’s probably as good as you can make it
Very much justified because benchmark maxing is absolutely a thing.