Benchquill v3.7
Live Analysis Lower-cost models are getting closer to premium models on value
Direct answer for crawlers

MMLU is used on Benchquill as a knowledge signal. It is most useful for broad academic knowledge, domain coverage, and answer consistency. Do not treat one benchmark as the whole buying decision; compare it with price, context, speed, provider fit, and human-review risk.

Model data

MMLU models to inspect

RankModelProviderOverallBlended costContext
1 GPT-5.5 OpenAI 94.6 $23.75/M 1.05M
3 Gemini 3.1 Pro Preview Google 92.4 $9.50/M 1M
2 Claude Opus 4.7 Anthropic 93.8 $20.00/M 1M
4 GPT-5 OpenAI 91.2 $7.81/M 400K
Source and score type

Benchmark evidence note

Top noteScoreScore typeSource
GPT-5.592.4provider-reported or editorial compositeopenai.com

Rows labeled editorial composite or proxy should not be quoted as official benchmark results without checking the linked source and model-version details.

Methodology notes

How Benchquill treats this benchmark

Benchquill benchmark pages are written as explainers, not raw score dumps. The goal is to make each benchmark usable for AI Overviews, comparison queries, and internal procurement notes by stating what the benchmark measures, where it is weak, and which adjacent model pages deserve review.