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Qwen3.7 Max benchmarks, pricing, and LLM comparison.

Compare Qwen3.7 Max vs GPT, Claude, Gemini, DeepSeek, open-weight, and frontier AI models using public benchmark scores, token pricing, context window, and access details.

Rank #8AskClash overall score: 65.3
$2.50 / $7.50Input and output token price, when published. Context: 1M.
APIBilling and access path cached for this model row.

Qwen3.7 Max benchmark snapshot

AskClash combines public LLM benchmark cells into a weighted percentile score and penalizes missing coverage so narrow rows do not dominate better-measured models.

Overall65.3
Benchmark cells9
Context1M
CreatorAlibaba

Qwen3.7 Max public benchmark scores

Cached benchmark values can include HLE, GPQA, SWE-bench, SWE-Pro, SWE-Atlas, Terminal-Bench, MCP Atlas, MMMU-Pro, ARC-AGI-2, Tau2, and model-specific coding or agent scores.

HLE

41.4 score

GPQA

92.4 score

IFEval

94.3 score

SWE-bench

80.4 score

Terminal-Bench

69.7 score

LiveCodeBench

91.6 score

MCP Atlas

76.4 score

Tau2

94.7 score

Qwen3.7 Max vs other AI models

Use these comparison links to evaluate Qwen3.7 Max against nearby LLMs by benchmark score, price, context window, and provider.

Related AI and tech coverage

Cached AskClash article matches that can provide release, provider, benchmark, pricing, or market context around this model.

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Last cached leaderboard date: May 22, 2026. This model page is generated from the AskClash LLM Leaderboard cache and linked from the live leaderboard.