gemini-2.5-pro vs kimi-k2
Side-by-side comparison of gemini-2.5-pro and kimi-k2 — benchmarks, pricing, context window and capabilities. Both are accessible through Requesty's unified API. gemini-2.5-pro outperforms kimi-k2 on 6 of 7 shared benchmarks.

gemini-2.5-pro
Input / 1M
$1.25
Output / 1M
$10.00
Context
1.0M
Model ID
google/gemini-2.5-pro

kimi-k2
Input / 1M
$0.60
Output / 1M
$2.50
Context
262K
Model ID
vertex/kimi-k2
Benchmark comparison
MMLU Proknowledge
gemini-2.5-pro86.2%
kimi-k282.3%
GPQA Diamondreasoning
gemini-2.5-pro84.0%
kimi-k270.0%
HumanEvalcoding
gemini-2.5-pro93.2%
kimi-k289.9%
SWE-Bench Verifiedcoding
gemini-2.5-pro63.8%
kimi-k265.8%
MATHmath
gemini-2.5-pro91.4%
kimi-k289.2%
AIME 2024math
gemini-2.5-pro88.0%
kimi-k280.1%
MMMUmultimodal
gemini-2.5-pro81.7%
kimi-k2—
LiveBenchreasoning
gemini-2.5-pro73.6%
kimi-k268.3%
τ-bench Retailagentic
gemini-2.5-pro69.8%
kimi-k2—
Scores sourced from official model cards, Artificial Analysis, and public leaderboards. Benchmarks measure specific skills and don't capture every aspect of model quality.
Pricing & specifications
| gemini-2.5-pro | kimi-k2 | |
|---|---|---|
| Input price / 1M | $1.25 | $0.60 |
| Output price / 1M | $10.00 | $2.50 |
| Context window | 1.0M tokens | 262K tokens |
| Max output | 66K tokens | 262K tokens |
| Vision input | Yes | Yes |
| Tool calling | Yes | Yes |
| Reasoning | Yes | Yes |
| Prompt caching | Yes | Yes |
| Computer use | — | — |
| Provider | Google LLC (Gemini API) | Google LLC (Vertex AI) |
Questions people ask
Is gemini-2.5-pro better than kimi-k2?
gemini-2.5-pro outperforms kimi-k2 on 6 of 7 shared benchmarks. See the benchmark comparison above for specifics — gemini-2.5-pro and kimi-k2 have different strengths across reasoning, coding, math and multimodal tasks.
Which is cheaper — gemini-2.5-pro or kimi-k2?
kimi-k2 is cheaper. gemini-2.5-pro costs $1.25/$10.00 per 1M input/output tokens, while kimi-k2 costs $0.60/$2.50.
Can I use gemini-2.5-pro and kimi-k2 through the same API?
Yes. Requesty provides a single OpenAI-compatible API that routes to both. Change just the "model" parameter to switch — "google/gemini-2.5-pro" or "vertex/kimi-k2" — no other code changes needed.
What are the context windows?
gemini-2.5-pro supports up to 1.0M tokens of context. kimi-k2 supports up to 262K tokens. Longer context means you can feed larger documents or codebases in a single prompt, though quality often degrades past 128K for most models.
Switch between gemini-2.5-pro and kimi-k2 with one line of code
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