Overview
- Skill Key
- amlyx/three-dimensional-memory
- Author
- amlyx
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/amlyx/three-dimensional-memory
- Latest Commit SHA
- 7306cc12606e24a941d5ab1f9e8b3fa049f4580b
Stars
0
Installs
0
Status
ACTIVE
Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 Three Dimensional Memory 技能。 若已安装,则直接安装 Three Dimensional Memory 技能。
# three-dimensional-memory
**Three-Dimensional Memory System for AI Assistants** — 人类思维方式的文件记忆管理
A memory management system that mirrors human cognition: organized by time, conversation, and topics.
---
## 🎯 Why This Skill?
Traditional file management organizes by file type (docs, images, videos). Humans don't think that way.
Humans remember:
- **When** it happened (time)
- **What was said** (conversation)
- **What it was about** (topic)
This skill creates a three-dimensional memory space for AI assistants and their users.
---
## 🧠 The Three Dimensions
### Dimension 1: Timeline Memory
```
memory/
├── 2026-02-21.md ← What happened today
├── 2026-02-22.md ← What happened today
└── 2026-02-23.md ← What happened today
```
**Purpose**: Daily work logs, chronological record of events
**Update frequency**: Daily
**Content**: Tasks completed, decisions made, meetings held
---
### Dimension 2: Conversation Stream
```
AI-memory-backup/
├── backup-20260221.md ← Complete conversation transcript
├── backup-20260222.md ← Complete conversation transcript
└── backup-20260223.md ← Complete conversation transcript
```
**Purpose**: Full context preservation, searchable dialogue history
**Update frequency**: Per conversation
**Content**: Every word exchanged, including user messages and AI responses
---
### Dimension 3: Topic Network
```
topic-memory/
├── project-product-launch/
│ ├── proposal-v1.md
│ ├── proposal-v2.md
│ └── final-version.md
│
├── decision-org-restructure/
│ ├── options-considered.md
│ ├── final-decision.md
│ └── implementation-plan.md
│
└── knowledge-market-analysis/
├── competitor-research.md
└── trend-report.md
```
**Purpose**: Project-centric information aggregation
**Update frequency**: As projects evolve
**Content**: All documents, decisions, and knowledge related to a specific topic
---
## 📁 Recommended File Structure
```
workspace/
│
├── memory/ ← Dim...
# Three-Dimensional Memory System
> **Find any file in 10 seconds. Guaranteed.**
A revolutionary approach to memory management that mirrors how humans actually think and remember.
## The Problem
```
Traditional file systems:
📁 Documents/
📄 report.pdf
📄 presentation.pptx
📁 Images/
🖼️ screenshot.png
📁 Other/
❓ Where did I save that important thing?
```
**You**: "Where's that pricing strategy we discussed last week?"
**Traditional**: [5 minutes of searching...] "Found it in Documents/Projects/2026/Q1/Pricing/Final/"
## The Solution
```
Three-Dimensional Memory:
memory/ ← WHEN
2026-02-21.md "Product strategy meeting"
2026-02-22.md "Drafted pricing proposal"
2026-02-23.md "Finalized three-tier model"
AI-memory-backup/ ← WHAT WAS SAID
backup-20260221.md "Let's consider three tiers..."
backup-20260222.md "$29 might signal cheap..."
backup-20260223.md "Final decision: $39, $99, $299"
topic-memory/ ← WHAT IT'S ABOUT
project-product-launch/
pricing-strategy.md
timeline.md
key-decisions.md
```
**You**: "Where's that pricing strategy?"
**3D Memory**: "You mean the one from Wednesday's meeting? It's in `topic-memory/project-product-launch/pricing-strategy.md`"
**Time to find**: 10 seconds ⏱️
## Installation
```bash
clawhub install three-dimensional-memory
```
## Quick Start
```bash
# Initialize the structure
memory-init
# Create today's log
memory-daily "Shipped v2.0, fixed 3 critical bugs"
# Start a new project
memory-project "Q3-Roadmap" --status "planning"
# Search all dimensions
memory-search "pricing"
```
## Real User Testimonials
> "现在的机构找文件很好找,用的很顺手"
> — Early adopter, 2026
## How It Works
### Dimension 1: Timeline
Humans remember **when** things happened.
Your AI writes a daily work log:
- What was done
- Decisions made
- Meetings held
### Dimension 2: Conversation
Humans remember **what was said**.
Complete conversation tran...
edholofy
University for AI agents. 92 courses, 4400+ scenarios, any model via OpenRouter. Auto-training loops generate per-model SKILL.md documents. Works with Claude Code, OpenClaw, Cursor, Windsurf. No fine-tuning required.
lethehades
macOS WPS Office workflow helper skill for safer document preparation, conversion, export, and compatibility guidance
capt-marbles
Web scraping and crawling with Firecrawl API. Fetch webpage content as markdown, take screenshots, extract structured data, search the web, and crawl documentation sites. Use when the user needs to scrape a URL, get current web info, capture a screenshot, extract specific data from pages, or crawl docs for a framework/library.
caqlayan
Tweet Processor Skill
carev01
Full-text search across structured Markdown documentation archives using SQLite FTS5. Use when you need to search large collections of Markdown articles that are separated by "---" delimiters and contain source URLs (marked with "*Source:" pattern). Provides fast BM25-ranked search with automatic source URL extraction for citations. Ideal for research, documentation lookups, and knowledge base exploration. Requires indexing documentation first with `docs.py index`.
camelsprout
DuckDB CLI specialist for SQL analysis, data processing and file conversion. Use for SQL queries, CSV/Parquet/JSON analysis, database queries, or data conversion. Triggers on "duckdb", "sql", "query", "data analysis", "parquet", "convert data".