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AI Model Leaderboards

Live rankings across ARC-AGI-2, HLE, AIME 2025, SWE-bench Verified, and more — browse composite scores or drill into math, coding, and agent categories.

View benchmark detailsUpdated on 2026-05-02 07:14:49

As of 2026-05, AA Intelligence Index leaders include GPT-5.5 (xhigh), GPT-5.5 (high), Opus 4.7 (max), based on 10 standardized capability benchmarks.

On the user-preference side, LMArena Text Generation currently ranks Opus 4.7 (thinking), Claude Opus 4.6 (thinking), Claude Opus 4.6 near the top via anonymous A/B voting.

Scroll down for per-benchmark breakdowns in math, coding, and agent categories. See Data Methodology for scoring details, or browse LLM Blogs for in-depth commentary.

Composite Rankings

There is no single, universally agreed-upon comprehensive AI model ranking, so we selected two representative leaderboards that approach the question from different angles. Artificial Analysis Intelligence Index aggregates scores from 10 standardized benchmarks (coding, math, reasoning, etc.) to measure objective capability. LMArena (formerly Chatbot Arena) ranks models by Elo ratings derived from anonymous crowd-sourced A/B voting, reflecting real-world user preference. Together they offer both an objective and a subjective perspective.

AA Intelligence Index

Full ranking

Composite of 10 standardized benchmarks across coding, math, science, reasoning, and agentic tasks.

Updated 2026-05-10

#ModelScore
1
OpenAI
GPT-5.5 (xhigh)OpenAI
60
2
OpenAI
GPT-5.5 (high)OpenAI
59
3
Anthropic
Opus 4.7 (max)Anthropic
57
4
Google Deep Mind
Gemini 3.1 Pro PreviewGoogle Deep Mind
57
5
OpenAI
GPT-5.5 (medium)OpenAI
57
6
Moonshot AI
Kimi K2.6Moonshot AI
54
7
X
MiMo-V2.5-ProXiaomi
54
8
OpenAI
GPT-5.3 Codex (xhigh)OpenAI
54
9
xAI
Grok 4.3xAI
53
10
F
Muse SparkFacebook AI研究实验室
52
Source: Artificial Analysis

LMArena Text Generation

Full ranking

Elo ratings from anonymous crowdsourced A/B voting, reflecting real user preference for response quality.

Updated 2026-05-07

#ModelElo
1
Anthropic
Opus 4.7 (thinking)Anthropic
1503
2
Anthropic
Claude Opus 4.6 (thinking)Anthropic
1502
3
Anthropic
Claude Opus 4.6Anthropic
1498
4
Google Deep Mind
Gemini 3.1 Pro PreviewGoogle Deep Mind
1492
5
Anthropic
Opus 4.7Anthropic
1491
6
F
Muse SparkFacebook AI研究实验室
1490
7
Google Deep Mind
Gemini 3.0 Pro (Preview 11-2025)Google Deep Mind
1486
8
OpenAI
gpt-5.5-highOpenAI
1484
9
xAI
grok-4.20-beta1xAI
1480
10
OpenAI
gpt-5.2-chat-latest-20260210OpenAI
1477
Source: LMArena

Per-Benchmark Rankings

Filter by math, coding, agent, and more. Switch benchmarks below or jump into a category leaderboard for the full ranking. View all benchmarks.

Benchmark Tracks
Overall
ARC-AGI-2HLEMMLU ProOpen Benchmark Directory
Math
AIME 2025FrontierMathMATH-500Open Math Leaderboard
Coding
SWE-bench VerifiedLiveCodeBenchSWE-Bench ProOpen Coding Leaderboard
Agent
τ²-BenchTerminal Bench 2.0Aider-PolyglotOpen Agent Leaderboard
Model Size:All3B and below7B13B34B65B100B and above
Model Type:AllReasoning ModelsFoundation ModelsInstruction/Chat ModelsCoding Models
Source:AllOpen SourceClosed Source
Origin:AllChina

LLM Performance Results

Data source: DataLearnerAI
Scores shown are the best result across all evaluation modes. Click a model name for the full breakdown.
RankModelLicense
阿里巴巴
Qwen3-Next
阿里巴巴
—————Free commercial
智谱AI
GLM 5.1
智谱AI
52.30————Free commercial
Facebook AI研究实验室
Llama3-70B
Facebook AI研究实验室
—————Free commercial
4
Facebook AI研究实验室
Llama3-70B-Instruct
Facebook AI研究实验室
—————Free commercial
5
Facebook AI研究实验室
Llama3.1-70B
Facebook AI研究实验室
—————Free commercial
6
Facebook AI研究实验室
Llama3.1-70B-Instruct
Facebook AI研究实验室
—————Free commercial
7
阿里巴巴
Qwen2.5-72B
阿里巴巴
—————Free commercial
8
Facebook AI研究实验室
Llama3.3-70B-Instruct
Facebook AI研究实验室
—————Free commercial
9
DeepSeek-AI
DeepSeek-R1-Distill-Llama-70B
DeepSeek-AI
—————Free commercial
10
腾讯AI实验室
Hunyuan-A13B-Instruct
腾讯AI实验室
—————Free commercial
11
华为
Pangu Pro MoE
华为
—————Free commercial
Qwen3-Next
阿里巴巴
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
GLM 5.1
智谱AI
HLE52.30
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
Llama3-70B
Facebook AI研究实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
4
Llama3-70B-Instruct
Facebook AI研究实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
5
Llama3.1-70B
Facebook AI研究实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
6
Llama3.1-70B-Instruct
Facebook AI研究实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
7
Qwen2.5-72B
阿里巴巴
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
8
Llama3.3-70B-Instruct
Facebook AI研究实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
9
DeepSeek-R1-Distill-Llama-70B
DeepSeek-AI
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
10
Hunyuan-A13B-Instruct
腾讯AI实验室
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
11
Pangu Pro MoE
华为
HLE—
ARC-AGI-2—
FrontierMath - Tier 4—
SWE-bench Verified—
τ²-Bench—
Free commercial
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Leaderboard FAQ

01

Where does the leaderboard data come from?

Scores are aggregated from primary sources: official model cards, technical reports, papers, vendor blog posts, and reproducible third-party evaluations. Each row links back to the underlying model detail page where the source is cited.

02

Why do scores for the same model differ across benchmarks?

Each benchmark measures a different capability — reasoning (HLE, ARC-AGI-2), math (AIME, FrontierMath), coding (SWE-bench Verified), agent use (τ²-Bench), and so on. A model tuned for one capability may perform very differently on another, which is exactly why we surface per-benchmark scores rather than a single number.

03

How often is the leaderboard updated?

Data is revalidated every 5 minutes, and new models or evaluation results are added as soon as they are published. The "Updated on" indicator at the top of the page reflects the most recent data refresh.

04

How should I read the composite ranking?

The composite view aggregates a model's standing across multiple core benchmarks. It is a useful first filter, but for production decisions you should drill into the specific benchmark closest to your workload — for example, SWE-bench Verified for coding agents, or τ²-Bench for tool-use scenarios.

05

How do I compare an open-source model with a closed API model?

Use the license filter at the top to mix open and closed models in the same view, then look at the same benchmark column for both. Beyond raw scores, consider total cost of ownership: API pricing for closed models vs. self-hosting cost for open weights.