EverMemOS

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EverMemOS: Open-source memory system for AI agents. Go beyond retrieval to proactive, deep contextual perception for truly coherent interactions.0
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What is EverMemOS ?

EverMemOS is an open-source, enterprise-grade intelligent memory system designed for advanced conversational AI agents. It addresses the core challenge of context degradation in long interactions by transforming static data retrieval into proactive, contextual understanding. For developers and enterprises, EverMemOS enables AI agents to move beyond merely "looking back" at history and instead use long-term memory to guide current actions and decisions, resulting in highly personalized and coherent interactions.

Key Features

EverMemOS operates through a cognitive loop of Memory Construction and Memory Perception, ensuring that every AI response is grounded in deep, traceable context.

Key Features

FeatureDescription
🧠 Structured Memory ConstructionBuilds retrievable long-term memory from raw chat data using Atomic Memory Units (MemCells). This process organizes fragmented conversations into thematic, multi-level memories covering episodes, profiles, preferences, and semantic knowledge.
🔗 Hybrid Intelligent RetrievalLeverages a multi-modal approach combining Semantic Retrieval (Milvus vector database) and Keyword Search (Elasticsearch BM25). Results are fused efficiently using the Reciprocal Rank Fusion (RRF) algorithm to ensure high precision and recall across diverse query types.
🎓 LLM-Guided Agentic RecallFor complex queries, the system automatically employs an Agentic strategy. The LLM generates 2-3 complementary queries, retrieves and fuses results in parallel, and proactively identifies missing information, effectively filling retrieval blind spots for comprehensive context.
💾 Dynamic Living ProfilesMoves beyond static records by providing real-time user profile updates. Every interaction subtly refines the AI's understanding of user preferences, communication style, and focus points, allowing the agent to continuously learn who the user is.
⚙️ Flexible Deployment OptionsBuilt on Python 3.10+ and supported by Docker, EverMemOS utilizes a robust, open-source stack (MongoDB, Elasticsearch, Milvus, Redis) for reliable, scalable deployment in enterprise environments.

Use Cases

EverMemOS is engineered to solve complex real-world challenges where deep context and situational awareness are critical for AI performance.

1. Maintaining Coherent Narrative in Group Chats

In multi-threaded conversations, traditional systems often confuse context between different topics. EverMemOS automatically links conversation fragments by theme and participant, allowing the AI to naturally distinguish between "Project A progress discussions" and "Team B strategy planning." This ensures the agent maintains coherent contextual logic within each theme, transforming scattered phrases into complete, actionable narratives.

2. Enabling Evidence-Based, Proactive Recommendations

The system's Evidence-Based Perception layer allows the AI to proactively capture deep connections between current tasks and past memories. For example, when a user asks for general "food recommendations," the AI can recall the key information: "You had dental surgery two days ago," and automatically adjust its suggestions to avoid unsuitable or uncomfortable options. This elevates the interaction from simple retrieval to genuine contextual awareness.

3. Benchmarking and Performance Validation

Developers can utilize the integrated evaluation pipeline to test memory systems against standard datasets (LoCoMo, LongMemEval, PersonaMem). This modular framework supports comprehensive testing across the entire workflow (add, search, answer, evaluate), enabling rigorous A/B testing and performance analysis to validate memory improvements before deployment.


EverMemOS is not simply a storage layer; it is a cognitive engine designed to enhance LLM reasoning through informed memory application.

Foresight Driven by Understanding

While most memory systems focus on retrieval, EverMemOS specializes in Perception. This means the system doesn't just surface relevant keywords; it actively captures deep, interconnected context to enable the AI to "think thoroughly" at critical moments. This shift from simple data recall to intelligent perception is what drives its high-quality, relevant outputs.

Proven Reasoning Accuracy

Our approach, built upon the EverMemOS framework, has demonstrated superior performance on complex reasoning tasks. On the industry-standard LoCoMo benchmark, EverMemOS achieved a reasoning accuracy of 92.3% (as evaluated by LLM-Judge), significantly outperforming comparable methods in real-world contextual analysis.

Enterprise-Grade Open Source Foundation

Licensed under Apache 2.0, EverMemOS offers a highly modular, transparent, and scalable architecture. Its design, including dedicated Agentic, Memory, and Retrieval layers, facilitates easy integration into existing enterprise LLM workflows, backed by standard, high-performance open-source databases (Milvus, Elasticsearch).

Conclusion

EverMemOS provides the crucial long-term cognitive foundation necessary for building truly intelligent conversational agents. By prioritizing structured memory construction, intelligent perception, and traceable reasoning, EverMemOS ensures your AI never forgets, making every conversation built on previous understanding.


More information on EverMemOS

Launched
2025-10
Pricing Model
Free
Starting Price
Global Rank
Follow
Month Visit
<5k
Tech used
EverMemOS was manually vetted by our editorial team and was first featured on 2025-11-18.
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EverMemOS 替代方案

更多 替代方案
  1. MemOS:专为大型语言模型打造的工业级内存操作系统。赋予您的AI持久自适应的长期记忆能力,并释放持续学习的强大潜能。开源。

  2. 让AI代理不再遗忘!Memori 是面向开发者的开源记忆引擎,为更智能、更高效的AI应用提供持久上下文。

  3. 赋予您的AI智能体完美的长期记忆。MemoryOS 提供深度、个性化的上下文,助力实现真正类人互动。

  4. 智能体促进类人推理能力,是构建 AGI 和理解人类自身的重大进展。记忆是人类处理任务的核心要素,在构建 AI 智能体时也应给予同等重视。memary 模拟人类记忆,旨在推动这些智能体的发展。

  5. Supermemory 赋予您的 LLM 以长期记忆能力。告别无状态的文本生成,您的 LLM 将能从文件、聊天记录和工具中精准调取所需事实,从而确保其回复始终保持一致性、上下文关联性,并更具个性化。