Model Comparison
o4-mini (high)
vs. Qwen3 Max
Comparing 2 AI models · 12 benchmarks · OpenAI, Alibaba
Recommended Pick
Strongest on: Value, Input price, Output price
Best Value
o4-mini (high)
100.0 value score
70.8 reasoning / $1.93/1M
Lowest Price
o4-mini (high)
$1.10/1M input price
Best Reasoning
o4-mini (high)
70.8 reasoning score
Blends available reasoning benchmarks
Composite Indices
Higher is better; speed and price are normalized
Standard Benchmarks
Only benchmarks with data are shown
Differences That Matter
Best value
o4-mini (high) has the strongest quality-to-price mix at 100.0 out of 100 value points.
Price gap
o4-mini (high) is 1.1x cheaper on input tokens than Qwen3 Max.
Speed gap
o4-mini (high) generates about 3.9x as many tokens per second as Qwen3 Max.
Reasoning gap
o4-mini (high) leads Qwen3 Max by 16.2 points on reasoning.
Top-pick rationale
o4-mini (high) wins 15 measurable categories, including Value, Input price, Output price, Blended price.
Response Face-Off
Run one prompt through the selected models and compare response quality with live speed and cost context.
o4-mini (high)
OpenAI
TTFT
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Time
—
tok/s
—
Tokens
—
Cost
—
Qwen3 Max
Alibaba
TTFT
—
Time
—
tok/s
—
Tokens
—
Cost
—
Which answer was more useful?
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Full Comparison
| Metric | Top Pick Op o4-mini (high) | Al Qwen3 Max |
|---|---|---|
| Pricing per 1M tokens | ||
| Input Cost | $1.10/1M | $1.20/1M |
| Output Cost | $4.40/1M | $6.00/1M |
| Blended (3:1) | $1.93/1M | $2.40/1M |
| Specifications | ||
| Organization | OpenAI | Alibaba |
| Release Date | Apr 16, 2025 | Sep 23, 2025 |
| Performance & Speed | ||
| Throughput | 187.3 tok/s | 47.8 tok/s |
| TTFT | 18672ms | 1906ms |
| Latency | 18672ms | 1906ms |
| Composite Indices | ||
| Value Score | 100.0 | 61.8 |
| Reasoning Score | 70.8 | 54.6 |
| Intelligence | 25.6 | 24.0 |
| Math | 90.7 | 80.7 |
| Standard Benchmarks | ||
| GPQA | 78.4% | 76.4% |
| MMLU Pro | 83.2% | 84.1% |
| HLE | 17.5% | 11.1% |
| LiveCodeBench | 85.9% | 76.7% |
| MATH 500 | 98.9% | — |
| AIME 2025 | 90.7% | 80.7% |
| AIME (Original) | 94.0% | — |
| SciCode | 46.5% | 38.3% |
| LCR | 55.0% | 46.7% |
| IFBench | 68.7% | 44.1% |
| TAU-bench v2 | 55.6% | 74.3% |
| TerminalBench Hard | 15.2% | 20.5% |
Key Takeaways
o4-mini (high) offers the best value at $1.10/1M,making it ideal for high-volume applications and cost-conscious projects.
o4-mini (high) has the strongest reasoning profile with a 70.8 reasoning score,combining the available reasoning-heavy benchmarks.
All models support context windows of ∞+ tokens,suitable for processing lengthy documents and maintaining extended conversations.
When to Choose Each Model
o4-mini (high)
- Cost-sensitive applications
- High-volume processing
- Complex reasoning tasks
- Research & analysis
Qwen3 Max
- General-purpose AI
- Versatile applications