Comprehensive sensibilité au contexte Tools for Every Need

Get access to sensibilité au contexte solutions that address multiple requirements. One-stop resources for streamlined workflows.

sensibilité au contexte

  • A framework integrating LLM-driven dialogue into JaCaMo multi-agent systems to enable goal-oriented conversational agents.
    0
    0
    What is Dial4JaCa?
    Dial4JaCa is a Java library plugin for the JaCaMo multi-agent platform that intercepts inter-agent messages, encodes agent intentions, and routes them through LLM backends (OpenAI, local models). It manages dialogue context, updates belief bases, and integrates response generation directly into AgentSpeak(L) reasoning cycles. Developers can customize prompts, define dialogue artifacts, and handle asynchronous calls, enabling agents to interpret user utterances, coordinate tasks, and retrieve external information in natural language. Its modular design supports error handling, logging, and multi-LLM selection, ideal for research, education, and rapid prototyping of conversational MAS.
    Dial4JaCa Core Features
    • LLM integration for AgentSpeak(L)
    • Dialogue artifact definitions
    • Context memory management
    • Prompt and API adapter customization
    • Asynchronous message handling
    • Belief and goal updates
  • MInD provides memory management for LLM-based agents to record, retrieve, and summarize contextual information across sessions.
    0
    0
    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.
Featured