Requesty

minimax-m2.5

MiniMax M2.5 is built for state-of-the-art coding, agentic tool use, search, and office work, extensively trained with reinforcement learning across hundreds of thousands of real-world environments to plan like an architect and generalize across unfamiliar scaffolding and tools. It delivers significantly faster task completion, improved token efficiency, and exceptional cost-effectiveness, making it well-suited for production-scale agentic applications and complex, multi-step workflows.

πŸ”§Tool calling⚑Caching

Specifications

Context window197K tokens
Max output25K tokens
API typechat
AddedApr 2, 2026
Model IDfireworks/minimax-m2.5
Data retentionNo
Used for trainingNo
Provider locationπŸ‡ΊπŸ‡Έ US

Benchmarks

Benchmarks haven't been published yet for this exact variant.

Some variants (region-specific deployments, highspeed tiers) share benchmarks with their base model β€” check the base model page or the Fireworks AI models overview.

Pricing

Input / 1M
$0.30
Output / 1M
$1.20
Cache write
β€”
Cache read / 1M
$0.03
Estimated cost
100K input + 10K output$0.0420
1M input + 100K output$0.42
10M input + 1M output$4.20

Requesty charges exactly what the upstream provider charges β€” no markup, no per-request fees. Prompt caching and smart routing can reduce effective cost by 30-80%.

Quickstart

Drop-in compatible with the OpenAI SDK. Change the base URL, swap in your Requesty API key, and set the model to fireworks/minimax-m2.5.

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from openai import OpenAI client = OpenAI( api_key="YOUR_REQUESTY_API_KEY", base_url="https://router.requesty.ai/v1", ) response = client.chat.completions.create( model="fireworks/minimax-m2.5", messages=[ {"role": "user", "content": "Explain quantum computing in one paragraph."}, ], ) print(response.choices[0].message.content)

Other Fireworks AI models

Frequently asked questions

How much does minimax-m2.5 cost?
minimax-m2.5 is priced at $0.30 per million input tokens and $1.20 per million output tokens when accessed via Requesty. Prompt caching is supported, which can cut effective input cost by up to 90% on repeated context. Requesty charges exactly what the upstream provider charges β€” we don't add markup.
What is the context window of minimax-m2.5?
minimax-m2.5 has a context window of 197K tokens, with a maximum output of 25K tokens per response. That's roughly 262 words of input you can fit in a single prompt.
What can minimax-m2.5 do?
minimax-m2.5 supports tool calling, prompt caching. You can call it through any OpenAI-compatible client by pointing base_url to Requesty.
How do I use minimax-m2.5 with the OpenAI SDK?
Install the OpenAI SDK, set base_url to "https://router.requesty.ai/v1", set your API key to your Requesty key, and set the model to "fireworks/minimax-m2.5". The Quickstart above shows Python, JavaScript and cURL snippets.

Access minimax-m2.5 through Requesty

One API key, 400+ models, OpenAI-compatible. No markup on provider prices, automatic failover, and smart caching built-in.