MAXIFE

MAXIFE is a multilingual benchmark evaluating LLMs on instruction following and execution across multiple languages and cultural contexts.

Qwen3.7 Max from Alibaba Cloud / Qwen Team currently leads the MAXIFE leaderboard with a score of 0.892 across 10 evaluated AI models.

About this benchmark

What MAXIFE measures

MAXIFE is a text benchmark that evaluates large language models on general tasks. LLM Stats tracks 10 models on this benchmark, with a maximum possible score of 1. Current average across reported models is 0.8, with the leader reaching 0.9.

Compare leaders on the best AI for general leaderboards.

Alibaba Cloud / Qwen TeamQwen3.7 Max leads with 89.2%, followed by Alibaba Cloud / Qwen TeamQwen3.5-397B-A17B at 88.2% and Alibaba Cloud / Qwen TeamQwen3.6 Plus at 88.2%.

Progress Over Time

Interactive timeline showing model performance evolution on MAXIFE

State-of-the-art frontier
Open
Proprietary

MAXIFE Leaderboard

10 models
ContextCostLicense
1
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
1.0M$1.25 / $3.75
2
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
397B262K$0.60 / $3.60
2
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
1.0M$0.50 / $3.00
4
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
27B262K$0.30 / $2.40
5
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
122B262K$0.40 / $3.20
6
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
35B262K$0.25 / $2.00
7
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
9B
8
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
4B
9
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
2B
10
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
800M
Notice missing or incorrect data?

FAQ

Common questions about MAXIFE.

What is the MAXIFE benchmark?

MAXIFE is a multilingual benchmark evaluating LLMs on instruction following and execution across multiple languages and cultural contexts.

What is the MAXIFE leaderboard?

The MAXIFE leaderboard ranks 10 AI models based on their performance on this benchmark. Currently, Qwen3.7 Max by Alibaba Cloud / Qwen Team leads with a score of 0.892. The average score across all models is 0.789.

What is the highest MAXIFE score?

The highest MAXIFE score is 0.892, achieved by Qwen3.7 Max from Alibaba Cloud / Qwen Team.

How many models are evaluated on MAXIFE?

10 models have been evaluated on the MAXIFE benchmark, with 0 verified results and 10 self-reported results.

What categories does MAXIFE cover?

MAXIFE is categorized under general. The benchmark evaluates text models with multilingual support.

What is the best open-source model on MAXIFE?

Qwen3.5-397B-A17B by Alibaba Cloud / Qwen Team is the top-ranked open-source model on MAXIFE, with a score of 0.882 (rank #2).

Which model offers the best value on MAXIFE?

Among models scoring within 10% of the leader, Qwen3.5-35B-A3B from Alibaba Cloud / Qwen Team is the cheapest, at $0.25 per million input tokens with a score of 0.866.

How recent are the MAXIFE leaderboard results?

The MAXIFE leaderboard was last updated in June 2026 and currently includes 10 evaluated models.

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