Kimi K2.5 vs Qwen3.7 Max
On provider list prices, Kimi K2.5 costs $0.50 per million input tokens against $1.25 for Qwen3.7 Max: 2.5x apart. Output is $2.80 against $3.75 (1.3x). On Allocate both bill at list plus the 7% transaction fee.
Specifications and provider list prices from the Allocate catalog, checked 2026-07-08. Billed price is list plus the 7% transaction fee.
What the numbers say
Take 1,000,000 requests a month at 1,200 input and 350 output tokens each. That workload costs $1,580 a month on Kimi K2.5 and $2,813 on Qwen3.7 Max at list: a gap of $1,233, or 1.8x.
Qwen3.7 Max reads 1M tokens per request against 256K for Kimi K2.5, 3.8x the window. That decides which one can take whole documents without splitting them.
Choose Kimi K2.5 for
- Whole-document reasoning
- Long-context retrieval
- Open-weight fine-tuning
Choose Qwen3.7 Max for
- The longer context window (1M vs 256K tokens)
- Published cached-input pricing ($0.13 per M tokens)
Common questions
Which is cheaper, Kimi K2.5 or Qwen3.7 Max?
Kimi K2.5, on this workload shape. At list prices it is $0.50/$2.80 per million tokens in and out against $1.25/$3.75 for Qwen3.7 Max. Billed on Allocate: $0.54/$3.00 against $1.34/$4.01, list plus 7%.
Which has the bigger context window?
Qwen3.7 Max: 1,000,000 tokens (1M) against 262,144 (256K) for Kimi K2.5.
Can I fine-tune Kimi K2.5 or Qwen3.7 Max?
Kimi K2.5 publishes open weights (Not listed) and can be fine-tuned on your own data. Qwen3.7 Max is a closed model served over API; its weights are not available.
Related comparisons
Run the numbers on your workload
Or don’t choose. On Allocate a route name is the contract: point yours at one model today, swap to the other tomorrow, and compare them on your live traffic with per-token metering.