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Favicon for Baidu

Baidu Qianfan

Browse models provided by Baidu Qianfan (Terms of Service)

3 models

Tokens processed on OpenRouter

  • Favicon for minimax
    MiniMax: MiniMax M2.5MiniMax M2.5

    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 76.3% on BrowseComp, M2.5 is also more token efficient than previous generations, having been trained to optimize its actions and output through planning.

    by minimaxFeb 12, 2026205K context$0.27/M input tokens$1.08/M output tokens
  • Favicon for z-ai
    Z.ai: GLM 5GLM 5

    GLM-5 is Z.ai’s flagship open-source foundation model engineered for complex systems design and long-horizon agent workflows. Built for expert developers, it delivers production-grade performance on large-scale programming tasks, rivaling leading closed-source models. With advanced agentic planning, deep backend reasoning, and iterative self-correction, GLM-5 moves beyond code generation to full-system construction and autonomous execution.

  • Favicon for deepseek
    DeepSeek: DeepSeek V3.2DeepSeek V3.2

    DeepSeek-V3.2 is a large language model designed to harmonize high computational efficiency with strong reasoning and agentic tool-use performance. It introduces DeepSeek Sparse Attention (DSA), a fine-grained sparse attention mechanism that reduces training and inference cost while preserving quality in long-context scenarios. A scalable reinforcement learning post-training framework further improves reasoning, with reported performance in the GPT-5 class, and the model has demonstrated gold-medal results on the 2025 IMO and IOI. V3.2 also uses a large-scale agentic task synthesis pipeline to better integrate reasoning into tool-use settings, boosting compliance and generalization in interactive environments. Users can control the reasoning behaviour with the boolean.

by z-aiFeb 11, 2026203K context$0.70/M input tokens$2.24/M output tokens
reasoning
enabled
Learn more in our docs
by deepseekDec 1, 2025131K context$0.252/M input tokens$0.378/M output tokens