Improvement of the benchmark at HongShan started in 2022, following ChatGPT’s breakout success, as an inside instrument for assessing which fashions are value investing in. Since then, led by associate Gong Yuan, the staff has steadily expanded the system, bringing in exterior researchers and professionals to assist refine it. Because the undertaking grew extra refined, they determined to launch it to the general public.
Xbench approached the issue with two totally different methods. One is just like conventional benchmarking: an educational check that gauges a mannequin’s aptitude on varied topics. The opposite is extra like a technical interview spherical for a job, assessing how a lot real-world financial worth a mannequin would possibly ship.
Xbench’s strategies for assessing uncooked intelligence at the moment embody two elements: Xbench-ScienceQA and Xbench-DeepResearch. ScienceQA isn’t a radical departure from current postgraduate-level STEM benchmarks like GPQA and SuperGPQA. It consists of questions spanning fields from biochemistry to orbital mechanics, drafted by graduate college students and double-checked by professors. Scoring rewards not solely the appropriate reply but additionally the reasoning chain that results in it.
DeepResearch, against this, focuses on a mannequin’s capacity to navigate the Chinese language-language net. Ten subject-matter consultants created 100 questions in music, historical past, finance, and literature—questions that may’t simply be googled however require important analysis to reply. Scoring favors breadth of sources, factual consistency, and a mannequin’s willingness to confess when there isn’t sufficient information. A query within the publicized assortment is “What number of Chinese language cities within the three northwestern provinces border a overseas nation?” (It’s 12, and solely 33% of fashions examined acquired it proper, if you’re questioning.)
On the corporate’s web site, the researchers mentioned they need to add extra dimensions to the check—for instance, facets like how artistic a mannequin is in its drawback fixing, how collaborative it’s when working with different fashions, and the way dependable it’s.
The staff has dedicated to updating the check questions as soon as 1 / 4 and to keep up a half-public, half-private information set.
To evaluate fashions’ real-world readiness, the staff labored with consultants to develop duties modeled on precise workflows, initially in recruitment and advertising. For instance, one job asks a mannequin to supply 5 certified battery engineer candidates and justify every decide. One other asks it to match advertisers with acceptable short-video creators from a pool of over 800 influencers.
The web site additionally teases upcoming classes, together with finance, authorized, accounting, and design. The query units for these classes haven’t but been open-sourced.
ChatGPT-o3 once more ranks first in each of the present skilled classes. For recruiting, Perplexity Search and Claude 3.5 Sonnet take second and third place, respectively. For advertising, Claude, Grok, and Gemini all carry out effectively.
“It’s actually tough for benchmarks to incorporate issues which might be so laborious to quantify,” says Zihan Zheng, the lead researcher on a brand new benchmark referred to as LiveCodeBench Professional and a scholar at NYU. “However Xbench represents a promising begin.”