MinimaxfastTool use

MiniMax M2.5 (free)

MiniMax-M2.5 is a SOTA large language model designed for real-world productivity. Trained in a diverse range of complex real-world digital working environments, M2.5 builds upon the coding expertise of M2.1 to extend into general office work, reaching fluency in generating and operating Word, Excel, and Powerpoint files, context switching between diverse software environments, and working across different agent and human teams. Scoring 80.2% on SWE-Bench Verified, 51.3% on Multi-SWE-Bench, and 7

197K context·~147K words·197K max output
Context window197Ktokens
Max output197Ktokens

Context window

This model accepts 197K tokens in one request (~147K words of text).

Context window size197K tokens
4K32K128K1M10M

What fits in one request

  • Short document
    About 1,500 words of text
    Fits
  • Long document
    About 37K words of text
    Fits
  • Small codebase
    About 150K words of text
    Won't fit
  • Full novel
    About 375K words of text
    Won't fit

Specifications

Context size, pricing, and release info in one place.

Context window
196,608 tokens (197K)
Max output tokens
196,608 tokens (197K)
Speed tier
fast
Provider
Minimax
Release date
Feb 2026

Capabilities

See which features this model supports, such as vision, tools, and streaming.

Supported (4)
Tool use
Supported
Function calling
Supported
Extended thinking
Supported
Streaming
Supported
Not supported (4)
Vision
Not supported
Web search
Not supported
Batch API
Not supported
Prompt caching
Not supported

Best for

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Frequently asked questions

Short answers about context size and how this model behaves.

MiniMax M2.5 (free) has a context window of 196K tokens (196,608 tokens). This covers most professional use cases including large code files, lengthy reports, and long conversation histories.

More from Minimax

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Example: a multi-turn chat session

Without Mem0~128K tokens sent
Full history
Repeated info
Old context
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Key memories
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