@GitHub_Daily: I increasingly feel that the biggest issue with Claude Code or Codex is no longer its inability to write code. Rather, it can't remember the solutions we discussed in conversations, the pitfalls we encountered, or the project development progress. I stumbled upon an open-source Claude Code plugin from EverOS that gives AI…
Summary
This article introduces the open-source EverOS project, which provides long-term memory capabilities for AI coding assistants like Claude Code. It automatically saves conversation history and retrieves memories in new conversations. Additionally, it includes multiple application examples.
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More and more, I feel that the biggest problem with Claude Code or Codex is no longer that they can’t write code. It’s that they can’t remember the solutions we discussed, the pitfalls we encountered, or the project development progress. I stumbled upon EverOS, which open-sourced a Claude Code plugin that gives AI a self-evolving long-term memory. GitHub: http://github.com/EverMind-AI/EverOS… After installing the plugin with a single command, every conversation with Claude Code is automatically saved, and new conversations automatically retrieve memory. It also provides a GitHub-style memory panel to view past conversation content with Claude for each project at any time. Moreover, the EverOS repository contains over 20 real-world application cases, and the Claude Code plugin is just one of them. There are also learning companion assistants, memory assistance for Alzheimer’s patients, AI wearable devices, etc., all using the EverOS memory framework. All cases are open-source and available; we can directly clone the code to learn from it, or do secondary development to make it our own. If you need it, take a look, and also Star EverOS to follow more open-source real-world cases in the future.
EverMind-AI/EverOS
Source: https://github.com/EverMind-AI/EverOS
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Website (https://evermind.ai) · Documentation (https://docs.evermind.ai) · Blog (https://evermind.ai/blogs)
Table of Contents
- Project Overview
- Use Cases
- Quick Start
- Architecture Methods
- Benchmarks
- Evaluation
- Citations
- Stay Tuned
- Contributing
Project Overview
EverOS is a unified home for applying, building, and evaluating long-term memory in self-evolving agents. The repository is organized around three essential parts:
| Part | What it gives you | Start here |
|---|---|---|
| Use cases | Apps, demos, and integrations showing how memory changes real agent workflows. | use-cases/ |
| Architecture methods | Memory systems and algorithms you can run, extend, or compare. | methods/ |
| Benchmarks | Open evaluation suites for memory quality and agent self-evolution. | benchmarks/ |
At the center of EverOS is EverCore, a long-term memory operating system for agents. If you are new to the project, scan the use cases first to see what memory enables, then follow the Quick Start to run EverCore locally. The architecture and benchmark sections below give you the deeper reference material when you are ready to compare systems or reproduce results.
Use Cases
Use cases show what persistent memory makes possible in real products and workflows. Some examples are packaged in this repository; others point to external demos or integrations you can study and adapt.
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Rokid AI Assistant with EverOS
Connect to EverOS within Rokid Glasses enabling long-term memory for all of your smart activities. Coming soon
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Creative Assistant with Memory
Creative assistant with long-term memory, never forget your crativities anymore. Coming soon
banner-gif (https://github.com/xunyud/Earth-Online)
Earth Online Memory Game
Earth Online is a memory-aware productivity game that turns everyday planning into a living quest log. Code (https://github.com/xunyud/Earth-Online)
banner-gif (https://github.com/golutra/golutra)
Multi-Agent Orchestration Platform
Golutra presents a multi-agent workforce for engineering teams, extending the IDE model from a single assistant to coordinated agents. Code (https://github.com/golutra/golutra)
banner-gif (https://github.com/Yangtze-Seventh/taste-verse)
Your Personal Tasting Universe
Record, visualize, and explore your tasting journey through an immersive 3D star map. Code (https://github.com/Yangtze-Seventh/taste-verse)
banner-gif (https://github.com/kellyvv/OpenHer)
EverOS Open Her
Build AI that feels. Open-source persona engine — personality emerges from neural drives, not prompts. Inspired by Her. Code (https://github.com/kellyvv/OpenHer)
banner-gif (https://chromewebstore.google.com/detail/ruminer-browser-agent/lbccjohfpdpimbhpckljimgolndfmfif)
Browser Agent for Personal Memory
Ruminer brings persistent memory to a browser agent so it can carry personal context across web tasks. Plugin (https://chromewebstore.google.com/detail/ruminer-browser-agent/lbccjohfpdpimbhpckljimgolndfmfif)
banner-gif (https://github.com/nanxingw/EverMem)
EverMem Sync with EverOS
One command to connect any AI coding CLI to EverMemOS long-term memory. Code (https://github.com/nanxingw/EverMem)
banner-gif (https://github.com/mco-org/mco)
MCO - Orchestrate AI Coding Agents
MCO equips your primary agent with an agent team that can work together to solve complex tasks. Code (https://github.com/mco-org/mco)
banner-gif (https://github.com/onenewborn/StudyBuddy-public)
Study Buddy with Self-Evolving Memory
Study proactively with an agent that has self-evolving memory. Code (https://github.com/onenewborn/StudyBuddy-public)
banner-gif (https://github.com/TonyLiangDesign/MemoCare)
Alzheimer’s Memory Assistant
Empowering individuals with advanced memory support and daily assistance. Code (https://github.com/TonyLiangDesign/MemoCare)
banner-gif (https://github.com/AlexL1024/NeuralConnect)
Memory-Driven Multi-Agent NPC Experience
An iOS sci-fi mystery game where players explore and uncover the truth. Code (https://github.com/AlexL1024/NeuralConnect)
banner-gif (https://github.com/elontusk5219-prog/Mobi)
Mobi Companion
An iOS app where users create, nurture, and live with a personalized AI companion called Mobi. Code (https://github.com/elontusk5219-prog/Mobi)
banner-gif (https://github.com/JaMesLiMers/EvermemCompetition-Spiro)
AI Wearable with Memory
A context-native AI wearable that listens to everyday life and converts conversations into memory. Code (https://github.com/JaMesLiMers/EvermemCompetition-Spiro)
banner-gif (https://github.com/EverMind-AI/EverOS/tree/0f49826ba0f9a94e1974c97614a46a68e0a08b52/evermemos-openclaw-plugin)
OpenClaw Agent Memory
A 24/7 agent workflow with continuous learning memory across sessions. Plugin (https://github.com/EverMind-AI/EverOS/tree/0f49826ba0f9a94e1974c97614a46a68e0a08b52/evermemos-openclaw-plugin)
banner-gif (https://github.com/TEN-framework/ten-framework/tree/main/ai_agents/agents/examples/voice-assistant-with-everos)
Live2D Character with Memory
Add long-term memory to a real-time Live2D character, powered by TEN Framework (https://github.com/TEN-framework/ten-framework). Code (https://github.com/TEN-framework/ten-framework/tree/main/ai_agents/agents/examples/voice-assistant-with-everos)
banner-gif (https://screenshot-analysis-vercel.vercel.app/)
Computer-Use with Memory
Run screenshot-based analysis with computer-use and store the results in memory. Live Demo (https://screenshot-analysis-vercel.vercel.app/)
Game of Thrones Memories
A demonstration of AI memory infrastructure through an interactive Q&A experience with A Game of Thrones. Code
Claude Code Plugin
Persistent memory for Claude Code. Automatically saves and recalls context from past coding sessions. Code
banner-gif (https://main.d2j21qxnymu6wl.amplifyapp.com/graph.html)
Memory Graph Visualization
Explore stored entities and relationships in a graph interface. Frontend demo; backend integration is in progress. Live Demo (https://main.d2j21qxnymu6wl.amplifyapp.com/graph.html)
Quick Start
Choose the path that matches your goal:
git clone https://github.com/EverMind-AI/EverOS.git
cd EverOS
| Goal | Component | Entry Point |
|---|---|---|
| Build agents with long-term memory | EverCore | methods/EverCore/ |
| Explore the hypergraph memory architecture | HyperMem | methods/HyperMem/ |
| Evaluate memory system quality | EverMemBench | benchmarks/EverMemBench/ |
| Measure agent self-evolution | EvoAgentBench | benchmarks/EvoAgentBench/ |
| Adapt an example app or integration | Use cases | use-cases/ |
Each component has its own installation guide, dependency configuration, and usage examples.
EverCore
The fastest way to run a memory system locally is to start with EverCore:
cd methods/EverCore
# Start Docker services
docker compose up -d
# Install dependencies
curl -LsSf https://astral.sh/uv/install.sh | sh
uv sync
# Configure API keys
cp env.template .env
# Edit .env and set:
# - LLM_API_KEY (for memory extraction)
# - VECTORIZE_API_KEY (for embedding/rerank)
# Start server
uv run python src/run.py
# Verify installation
curl http://localhost:1995/health
# Expected response: {"status": "healthy", ...}
Server runs at http://localhost:1995 · Full Setup Guide
Basic Usage
Store and retrieve memories with simple Python code:
import requests
API_BASE = "http://localhost:1995/api/v1"
# 1. Store a conversation memory
requests.post(f"{API_BASE}/memories", json={
"message_id": "msg_001",
"create_time": "2025-02-01T10:00:00+00:00",
"sender": "user_001",
"content": "I love playing soccer on weekends"
})
# 2. Search for relevant memories
response = requests.get(f"{API_BASE}/memories/search", json={
"query": "What sports does the user like?",
"user_id": "user_001",
"memory_types": ["episodic_memory"],
"retrieve_method": "hybrid"
})
result = response.json().get("result", {})
for memory_group in result.get("memories", []):
print(f"Memory: {memory_group}")
More Examples · API Reference (https://docs.evermind.ai/api-reference/introduction) · Interactive Demos
Architecture Methods
These are the memory architectures currently included in EverOS. Use them as runnable systems, research references, or starting points for your own agent memory layer.
EverCore
A self-organizing memory operating system inspired by biological imprinting. Extracts, structures, and retrieves long-term knowledge from conversations so agents can remember, understand, and continuously evolve.
LoCoMo 93.05% · LongMemEval 83.00%
Paper (https://arxiv.org/abs/2601.02163) · Docs
HyperMem
A hypergraph-based hierarchical memory architecture that captures high-order associations through hyperedges, with topic, event, and fact layers for coarse-to-fine conversation retrieval.
LoCoMo 92.73%
Paper (https://arxiv.org/abs/2604.08256) · Docs
Benchmarks
These benchmarks provide shared standards for measuring memory quality and agent self-evolution across systems.
EverMemBench
Three-layer memory quality evaluation: factual recall, applied reasoning, and personalized generalization.
Paper (https://arxiv.org/abs/2602.01313) · Dataset (https://huggingface.co/datasets/EverMind-AI/EverMemBench-Dynamic) · Docs
EvoAgentBench
Agent self-evolution evaluation through longitudinal growth curves, transfer efficiency, error avoidance, and skill-hit quality.
Dataset (https://huggingface.co/datasets/EverMind-AI/EvoAgentBench) · Docs
Evaluation
Use the evaluation runner to reproduce EverCore results or compare another memory system against the same benchmark tasks.
Benchmark Results
EverOS Benchmark Results
Supported Benchmarks
- LoCoMo (https://github.com/snap-research/locomo) — Long-context memory benchmark with single/multi-hop reasoning
- LongMemEval (https://huggingface.co/datasets/xiaowu0162/longmemeval-cleaned) — Multi-session conversation evaluation
- PersonaMem (https://huggingface.co/datasets/bowen-upenn/PersonaMem) — Persona-based memory evaluation
Run Evaluations
cd methods/EverCore
# Install evaluation dependencies
uv sync --group evaluation
# Run smoke test (quick verification)
uv run python -m evaluation.cli --dataset locomo --system everos --smoke
# Run full evaluation
uv run python -m evaluation.cli --dataset locomo --system everos
# View results
cat evaluation/results/locomo-everos/report.txt
Full Evaluation Guide · Complete Results (https://huggingface.co/datasets/EverMind-AI/everos_Eval_Results)
Citations
If EverOS helps your research, please cite the relevant paper:
@article{hu2026evermemos,
title = {EverMemOS: A Self-Organizing Memory Operating System for Structured Long-Horizon Reasoning},
author = {Chuanrui Hu and Xingze Gao and Zuyi Zhou and Dannong Xu and Yi Bai and Xintong Li and Hui Zhang and Tong Li and Chong Zhang and Lidong Bing and Yafeng Deng},
journal = {arXiv preprint arXiv:2601.02163},
year = {2026}
}
@article{yue2026hypermem,
title = {HyperMem: Hypergraph Memory for Long-Term Conversations},
author = {Juwei Yue and Chuanrui Hu and Jiawei Sheng and Zuyi Zhou and Wenyuan Zhang and Tingwen Liu and Li Guo and Yafeng Deng},
journal = {arXiv preprint arXiv:2604.08256},
year = {2026}
}
@article{hu2026evaluating,
title = {Evaluating Long-Horizon Memory for Multi-Party Collaborative Dialogues},
author = {Chuanrui Hu and Tong Li and Xingze Gao and Hongda Chen and Yi Bai and Dannong Xu and Tianwei Lin and Xiaohong Li and Yunyun Han and Jian Pei and Yafeng Deng},
journal = {arXiv preprint arXiv:2602.01313},
year = {2026}
}
Stay Tuned
Star the repo or join the community links above to follow new architecture methods, benchmark releases, and memory-enabled use cases.
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Contributing
Contributions are welcome across the whole repository: architecture methods, benchmark coverage, use-case examples, documentation, and bug fixes. Browse Issues (https://github.com/EverMind-AI/EverOS/issues) to find a good entry point, then open a PR when you are ready.
Welcome all kinds of contributions 🎉
Help make EverOS better. Code, documentation, benchmark reports, use-case write-ups, and integration examples are all valuable. Share your projects on social media to inspire others.
Connect with one of the EverOS maintainers @elliotchen200 (https://x.com/elliotchen200) on X or @cyfyifanchen (https://github.com/cyfyifanchen) on GitHub for project updates, discussions, and collaboration opportunities.
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Code Contributors
EverOS Contributors (https://github.com/EverMind-AI/EverOS/graphs/contributors)
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Contribution Guidelines
Read the Contribution Guidelines for setup, pull request expectations, and use-case submission notes. For responsible disclosure, see the Security Policy.
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License, Conduct, and Acknowledgments
Apache 2.0 (https://github.com/EverMind-AI/EverOS/blob/main/LICENSE) • Code of Conduct • Acknowledgments
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