MiniMax: minimax-m2.7:free

minimax-m2.7:free
20.5萬 上下文13.1萬 輸出工具結構化
發布日期 Mar 18, 2026知識截止 2026更新時間 Mar 18, 2026

MiniMax-M2 is a compact, high-efficiency large language model optimized for end-to-end coding and agentic workflows. With 10 billion activated parameters (230 billion total), it delivers near-frontier intelligence across general reasoning, tool use, and multi-step task execution while maintaining low latency and deployment efficiency. The model excels in code generation, multi-file editing, compile-run-fix loops, and test-validated repair, showing strong results on SWE-Bench Verified, Multi-SWE-Bench, and Terminal-Bench. It also performs competitively in agentic evaluations such as BrowseComp and GAIA, effectively handling long-horizon planning, retrieval, and recovery from execution errors. Benchmarked by Artificial Analysis, MiniMax-M2 ranks among the top open-source models for composite intelligence, spanning mathematics, science, and instruction-following. Its small activation footprint enables fast inference, high concurrency, and improved unit economics, making it well-suited for large-scale agents, developer assistants, and reasoning-driven applications that require responsiveness and cost efficiency. To avoid degrading this model's performance, MiniMax highly recommends preserving reasoning between turns. Learn more about using reasoning_details to pass back reasoning in our docs.

模式 chat分詞器 OtherMiniMaxAI/MiniMax-M2.7

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上下文視窗 204.8K tokens相容端點 openai供應商 MiniMax

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支援的參數

所有提供方:為該模型提供服務的每個上游都支援。部分提供方:取決於處理請求的上游。預設值:未設定時傳送的值。

參數提供方預設值
frequency_penalty部分提供方預設不傳送
include_reasoning所有提供方-
logit_bias部分提供方-
logprobs部分提供方-
max_tokens所有提供方-
min_p部分提供方-
presence_penalty部分提供方預設不傳送
reasoning所有提供方-
repetition_penalty部分提供方預設不傳送
response_format部分提供方-
seed部分提供方-
stop部分提供方-
structured_outputs部分提供方-
temperature所有提供方1
tool_choice所有提供方-
tools所有提供方-
top_k部分提供方預設不傳送
top_logprobs部分提供方-
top_p所有提供方0.95

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