An always-on second brain you talk to. Voice notes in Telegram → typed, linked knowledge in your Obsidian vault. Runs 24/7 on the Claude subscription you already have.
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Jun 17, 2026 - Python
An always-on second brain you talk to. Voice notes in Telegram → typed, linked knowledge in your Obsidian vault. Runs 24/7 on the Claude subscription you already have.
Agentic AI memory with Ebbinghaus forgetting curve decay. +16pp better recall than Mem0 on LoCoMo.
GBase — Recursive Self-Improvement Agent Framework. Memory, evolution, quality gates, identity system, and 40+ auto-registered tools.
用Vue写的高效背单词App,方法来自《17天搞定GRE单词》
A Parametric Framework to Generate Visual Illusions using Python
Temporal memory system for AI assistants with human-like forgetting curves. All data stored locally in human-readable formats: JSONL for short-term memory, Markdown (Obsidian-compatible) for long-term. Memories naturally decay unless reinforced. Features knowledge graphs, smart prompting, and MCP server integration for Claude.
Typed memory layer for always-on agents (Claude Code, OpenClaw, Hermes, Codex). Schema-as-code for any Obsidian vault: decay engine, health scoring, link repair, MOC generation.
My Solutions for LeetCode problems schedule according to Ebbinghaus forgetting curve.
The open-source benchmark for LLM memory decay. Measure how Naive, RAG, Chunked RAG, Cascading, and SummaryMemory degrade over 100 conversation turns. Ebbinghaus forgetting curves, 5-provider LLM eval, multi-seed CI. No API key needed.
A (self-hosted) trainer (software / program) to memorize flashcards (question-answer cards) in a webbrowser.
Ebbinghaus memory method helper. / 辅助记忆的 TODO 任务管理应用
Claude Code plugin for full-lifecycle Obsidian knowledge management — vault lint, Karpathy-style query, Ebbinghaus spaced repetition, article ingestion, and GitHub sync.
AEGIS — Agentic AI Learning Platform with Epistemic State Modeling, Ebbinghaus Forgetting Curve, and Cognitive DNA Adaptation.
Ebbinghaus Memo app for storing plain text for repetitions at regular intervals to achieve incredible levels of assimilation of new knowledge
Simulate Ebbinghaus Forgetting Curve to Manage LLM Memory
🧠 A persistent memory RAG chatbot that never forgets. Uses Phi-3-mini LLM, ChromaDB vector database, and Ebbinghaus memory decay curves.
Production-ready long-term memory server for AI agents. Built on memU with Ebbinghaus decay, strength-weighted retrieval, and 100% local LLM support.
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