MiniMax M2.7
MiniMax M2.7 on Zumik: live pricing, context, and caching, routable by id or alias through one OpenAI-compatible endpoint.
At a glance.
| Provider | Fireworks AI |
| Family | minimax_m2 |
| Released | 2026-04 |
| License | Open weights |
| Context window | 197K tokens |
| Max output | 197K tokens |
| Parameters | 229B |
| Modalities | text |
| Tool calling | Yes |
| Reasoning mode | Yes |
| Caching | automatic |
| Batch discount | No batch tier |
What reuse looks like here.
Pricing, context, and capabilities for MiniMax M2.7 are live, but it is outside the flagship set Zumik benchmarks in depth, so measured reuse, capture, and warm TTFT are not shown yet. Run a workload estimate or route it by id to start collecting traces.
What you actually pay once caching works.
At a typical 55% prefix reuse, a million input tokens on MiniMax M2.7 effectively costs $0.17 instead of $0.30 - blending to roughly $0.43 with a 25% output share. There is no batch tier, so cost control here leans on caching and routing.
Estimate it for your workloadRoute it directly by id, or let an alias pick it when it wins under policy.
Same OpenAI client, this model.
from openai import OpenAI
client = OpenAI(base_url="https://api.zumik.ai/v1", api_key="zk_live_...")
r = client.responses.create(
model="minimax-m2p7",
input="Draft a fix for the failing test.",
)
print(r.usage.input_tokens_cached) # confirm reuseMiniMax M2.7, answered.
How much does MiniMax M2.7 cost?
MiniMax M2.7 is $0.30 per million input tokens and $1.20 per million output tokens through Zumik. Cache reads are $0.06 per million, a 80% discount on input.
What is MiniMax M2.7's context window?
MiniMax M2.7 supports a 197K-token context window with up to 197K output tokens.
Run MiniMax M2.7 with reuse measured.
Point an OpenAI client at Zumik and see exactly how much of this model's input you are reusing.