Choose a model to open its comparison page.
Qwen3 Coder API pricing covers 73 API providers, from $0.0041/M to $19980.00/M. Qwen3 Coder free API options are available from 5 providers. The page also shows measured API speed and first-token latency.
Alibaba Qwen3 Coder is a code-specialized variant in the Qwen series, optimized for code generation, debugging, and software development tasks.
Input and output token limits for this model, plus how it ranks on long-context understanding.
Third-party OpenRouter endpoint data, shown separately from LMSpeed measurements. Some 30-minute live performance fields only appear after syncing with an OpenRouter API key.
| Provider endpoint | Input | Output | 1d uptime | 30m latency | 30m throughput | Context / output |
|---|---|---|---|---|---|---|
Alibaba alibaba/opensource | $0.975/M | $4.88/M | 100.0% | — | — | 262.1K tokens / 65.5K tokens |
Novita novita/fp8 | $0.380/M | $1.55/M | 99.8% | — | — | 262.1K tokens / 65.5K tokens |
DeepInfra deepinfra/turbo | $0.300/M | $1/M | 99.3% | — | — | 262.1K tokens / 65.5K tokens |
WandB wandb/bf16 | $1/M | $1.50/M | 98.4% | — | — | 262.1K tokens / 262.1K tokens |
Venice venice/fp8 | $0.350/M | $1.50/M | 96.0% | — | — | 256K tokens / 65.5K tokens |
Google google-vertex/us-south1 | $0.220/M | $1.80/M | 57.7% | — | — | 262.1K tokens / 65.5K tokens |
Compare Qwen3 Coder API pricing across 68 providers. Prices range from $0.0041/M to $19980.00/M. 6345ywz API offers the lowest rate at $0.0041/M. 5 providers offer free API credits or a free tier.
| Provider | Health | Model Variant | Group | Input ($/M) | Output ($/M) | Speed (t/s) | First token | Audit |
|---|---|---|---|---|---|---|---|---|
L1 100% | qwen3-coder | default | $0.411/M | $1.64/M | — | — | — | |
Dext API Free | L1 100% | qwen3-coder | 公益 | Free | Free | — | — | — |
L1 100% | qwen/qwen3-coder | 0倍倍率分组 | $0.0041/M Cache read$0.0004/M | $0.016/M | — | — | — | |
L1 100% | qwen3-coder | default | $0.764/M | $3.06/M | — | — | — | |
L1 100% | qwen3-coder | default | $0.010/request | - | — | — | — | |
L1 100% | qwen/qwen3-coder | other | $0.125/M Cache read$0.012/M | $0.500/M | — | — | — | |
L1 100% | qwen3-coder | other | $0.187/M | $0.750/M | — | — | — | |
L1 100% | qwen3-coder | default | $0.822/M | $3.29/M | — | — | — | |
L1 100% | qwen/qwen3-coder | default | $1.96/M | $7.83/M | — | — | — | |
L1 100% | qwen/qwen3-coder:free | default | $0.0050/request | - | — | — | — | |
L1 100% | qwen3-coder | default | $0.411/M | $1.64/M | — | — | — | |
L1 100% | qwen3-coder | default | $0.658/M | $2.63/M | — | — | — | |
L1 100% | qwen3-coder | default | $0.764/M | $3.06/M | — | — | — | |
L1 100% | qwen3-coder:480b | default | $6.00/request | - | — | — | — | |
L1 100% | qwen3-coder | default | $10.27/M | $10.27/M | — | — | — | |
L1 100% | qwen3-coder | default | $10.27/M | $10.27/M | — | — | — | |
L1 100% | qwen/qwen3-coder:free | default | $75.00/M | $75.00/M | — | — | — | |
L1 100% | qwen3-coder | default | $75.00/M | $75.00/M | — | — | — | |
L1 100% | qwen/qwen3-coder | default | $75.00/M | $75.00/M | — | — | — | |
猫羽霖API Free | L1 99% | qwen/qwen3-coder:free | Free | Free | Free | — | — | — |
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