Liquina
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Knowledge DB

Liquina's Knowledge DB is the central knowledge base, equipping her with broad domain knowledge and adaptive reasoning capabilities. It plays a crucial role in enabling Liquina to provide informative, relevant, and context-aware responses across a wide variety of topics.

  • The Knowledge DB is composed of both structured (facts, rules, concepts) and unstructured (textual knowledge, observations) data sources.

  • It is organized hierarchically, allowing Liquina to navigate between general information and domain-specific insights effectively.

  • Knowledge is continuously updated, enabling Liquina to stay aligned with recent information and evolving trends.

  • Contextual linking within the database enhances Liquina's ability to infer relationships between entities and concepts rather than treating knowledge as isolated facts.

  • The Knowledge DB supports dynamic composition of answers by combining factual information with conversational context in real-time.

  • Liquina employs lightweight reasoning and inference methods to handle open-ended, ambiguous, or multi-step questions without sacrificing responsiveness.

  • The system is optimized for conversational use cases, focusing on delivering relevant, accurate, and well-structured responses without unnecessary verbosity.

  • Knowledge DB interacts closely with Memory DB to further personalize responses, allowing Liquina to combine general knowledge with user-specific context.

  • Tone adaptation mechanisms are also supported, enabling Liquina to adjust responses depending on the conversational setting (formal, casual, informative, etc.).

  • While the precise data sources and learning methods are undisclosed, the system is designed for scalability, safety, and continuous improvement.

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Last updated 2 months ago