models.fyi

Side by side, same effort tier

Pick up to four models. Every column is evaluated at the tier you choose (resolved to the nearest tier each model supports), so the comparison is what you'd actually deploy.

MetricGPT-5.6 Luna
High
Qwen3-235B-A22B
High
Claude Opus 4.6
High
Intelligence Index72.872.578.0
Cost / typical task$0.035$0.023$0.24
$/M in · out$1 · $6$0.70 · $2.80$5 · $25
Context window1.05M128K1M
Median speed230 tok/s70 tok/s55 tok/s
MMLU-Pro83.683.086.0
GPQA Diamond78.781.085.0
Humanity's Last Exam23.018.025.0
AIME 202581.886.090.0
SWE-bench Verified69.868.076.0
LiveCodeBench76.676.080.0
τ²-bench74.974.083.0
IFEval89.587.091.0

Hover a benchmark name for what it measures — full plain-language guide on /benchmarks· preview data.