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optimisation de la mémoire

  • Proactive AI Agents is an open-source framework enabling developers to build autonomous multi-agent systems with task planning.
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    What is Proactive AI Agents?
    Proactive AI Agents is a developer-centric framework designed to architect sophisticated autonomous agent ecosystems powered by large language models. It provides out-of-the-box capabilities for agent creation, task decomposition, and inter-agent communication, enabling seamless coordination on complex, multi-step objectives. Each agent can be equipped with custom tools, memory storage, and planning algorithms, empowering them to proactively anticipate user needs, schedule tasks, and adjust strategies dynamically. The framework supports modular integration of new language models, toolkits, and knowledge bases, while offering built-in logging and monitoring features. By abstracting the intricacies of agent orchestration, Proactive AI Agents accelerates the development of AI-driven workflows for research, automation, and enterprise applications.
    Proactive AI Agents Core Features
    • Agent orchestration
    • Task decomposition
    • Proactive planning
    • Custom tool integration
    • Memory management
    • Logging & monitoring
    • Modular LLM integration
  • MInD provides memory management for LLM-based agents to record, retrieve, and summarize contextual information across sessions.
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    What is MInD?
    MInD is a Python-based memory framework designed to augment LLM-driven AI agents with robust memory capabilities. It enables agents to capture user inputs and system events as episodic logs, condense those logs into semantic summaries, and retrieve contextually relevant memories on demand. With configurable retention policies, similarity search, and automated summarization, MInD maintains a persistent knowledge base that agents consult during inference. This ensures they recall prior interactions accurately, adapt responses based on history, and deliver personalized, coherent dialogues across multiple sessions.
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