Ultimate episodic memory Solutions for Everyone

Discover all-in-one episodic memory tools that adapt to your needs. Reach new heights of productivity with ease.

episodic memory

  • A-Mem provides AI agents with a memory module offering episodic, short-term, and long-term memory storage and retrieval.
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    What is A-Mem?
    A-Mem is designed to seamlessly integrate with Python-based AI agent frameworks, offering three distinct memory modules: episodic memory for per-episode context, short-term memory for immediate past actions, and long-term memory for accumulating knowledge over time. Developers can customize memory capacity, retention policies, and serialization backends such as in-memory or Redis storage. The library includes efficient indexing algorithms to retrieve relevant memories based on similarity and context windows. By inserting A-Mem’s memory handlers into the agent’s perception-action loop, users can store observations, actions, and outcomes, then query past experiences to inform current decisions. This modular design supports rapid experimentation in reinforcement learning, conversational AI, robotics navigation, and other agent-driven tasks requiring context awareness and temporal reasoning.
  • Personal AI for secure, private guidance and inspiration.
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    What is Kin AI?
    Kin is a personal AI designed to enhance your everyday life by providing inspiration, personalized guidance, and practical assistance. Kin focuses on maintaining your privacy and security, ensuring that your personal data remains confidential. With features like semantic and episodic memory, Kin tailors its interactions to meet your individual needs. Whether you're looking to navigate life’s challenges, spark creativity, or simply need someone to talk things through, Kin is here to help.
  • 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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