agent frameworks

  • Plano-Orchestrator: Fast Multi-Agent Orchestration


    I built Plano(A3B) - 200 ms latency for multi-agent systems with frontier performancePlano-Orchestrator is a newly launched family of large language models (LLMs) designed for fast and efficient multi-agent orchestration, developed by the Katanemo research team. It acts as a supervisory agent, determining which agents should handle a user request and in what order, making it ideal for multi-domain scenarios such as general chat, coding tasks, and extended conversations. This system is optimized for low-latency production deployments, ensuring safe and efficient delivery of agent tasks while enhancing real-world performance. Integrated into Plano, a models-native proxy and dataplane for agents, it aims to improve the "glue work" often needed in multi-agent systems.

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  • MiniMax M2.1: Enhanced Coding & Reasoning Model


    MiniMax Releases M2.1: An Enhanced M2 Version with Features like Multi-Coding Language Support, API Integration, and Improved Tools for Structured CodingMiniMax has unveiled M2.1, an enhanced version of its M2 model, which offers significant improvements in coding and reasoning capabilities. The M2 model was already recognized for its efficiency and speed, operating at a fraction of the cost of competitors like Claude Sonnet. M2.1 builds upon this by providing better code quality, smarter instruction following, and cleaner reasoning. It excels in multilingual coding performance, achieving high scores on benchmarks like SWE-Multilingual and VIBE-Bench, and offers robust compatibility with various coding tools and frameworks, making it ideal for both coding and broader applications like documentation and writing. The model's standout feature is its ability to separate reasoning from the final response, offering transparency into its decision-making process. This separation aids in debugging and building trust, particularly in complex workflows. M2.1 also demonstrates advanced capabilities in handling structured coding prompts with multiple constraints, showcasing its proficiency in producing production-quality code. The model's interleaved thinking allows it to dynamically plan and adapt within complex workflows, further enhancing its utility for real-world coding and AI-native teams. In comparison to OpenAI's GPT-5.2, MiniMax M2.1 shows superior performance in tasks requiring semantic understanding and instruction adherence. It provides a more comprehensive and contextually aware output, particularly in tasks involving filtering and translation. This highlights M2.1's ability to deliver high-quality, structured outputs across various tasks, reinforcing its position as a versatile and powerful tool for developers and AI teams. This matters because it represents a significant step forward in the development of AI models that are not only efficient and cost-effective but also capable of handling complex, real-world tasks with precision and clarity.

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