v1.0.0

Memory System V2

kellyclaudeai kellyclaudeai ← All skills

Fast semantic memory system with JSON indexing, auto-consolidation, and <20ms search. Capture learnings, decisions, insights, events. Use when you need persistent memory across sessions or want to recall prior work/decisions.

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Updated
2026-02-24

Install

npx clawhub@latest install memory-system-v2

Documentation

Memory System v2.0

Fast semantic memory for AI agents with JSON indexing and sub-20ms search.

Overview

Memory System v2.0 is a lightweight, file-based memory system designed for AI agents that need to:

  • -Remember learnings, decisions, insights, events, and interactions across sessions
  • -Search memories semantically in <20ms
  • -Auto-consolidate daily memories into weekly summaries
  • -Track importance and context for better recall

Built in pure bash + jq. No databases required.

Features

  • -Fast Search: <20ms average search time (36 tests passed)
  • -🧠 Semantic Memory: Capture 5 types of memories (learning, decision, insight, event, interaction)
  • -📊 Importance Scoring: 1-10 scale for memory prioritization
  • -🏷️ Tagging System: Organize memories with tags
  • -📝 Context Tracking: Remember what you were doing when memory was created
  • -📅 Auto-Consolidation: Weekly summaries generated automatically
  • -🔍 Smart Search: Multi-word search with importance weighting
  • -📈 Stats & Analytics: Track memory counts, types, importance distribution

Quick Start

Installation

Install jq (required dependency)

brew install jq

Copy memory-cli.sh to your workspace

Already installed if you're using Clawdbot

Basic Usage

Capture a memory:
./memory/memory-cli.sh capture \

--type learning \

--importance 9 \

--content "Learned how to build iOS apps with SwiftUI" \

--tags "swift,ios,mobile" \

--context "Building Life Game app"

Search memories:
./memory/memory-cli.sh search "swiftui ios"

./memory/memory-cli.sh search "build app" --min-importance 7

Recent memories:
./memory/memory-cli.sh recent learning 7 10

./memory/memory-cli.sh recent all 1 5

View stats:
./memory/memory-cli.sh stats
Auto-consolidate:
./memory/memory-cli.sh consolidate

Memory Types

1. Learning (importance: 7-9)

New skills, tools, patterns, techniques you've acquired.

Example:
./memory/memory-cli.sh capture \

--type learning \

--importance 9 \

--content "Learned Tron Ares aesthetic: ultra-thin 1px red circuit traces on black" \

--tags "design,tron,aesthetic"

2. Decision (importance: 6-9)

Choices made, strategies adopted, approaches taken.

Example:
./memory/memory-cli.sh capture \

--type decision \

--importance 8 \

--content "Switched from XP grinding to achievement-based leveling with milestones" \

--tags "life-game,game-design,leveling"

3. Insight (importance: 8-10)

Breakthroughs, realizations, aha moments.

Example:
./memory/memory-cli.sh capture \

--type insight \

--importance 10 \

--content "Simple binary yes/no tracking beats complex detailed logging" \

--tags "ux,simplicity,habit-tracking"

4. Event (importance: 5-8)

Milestones, completions, launches, significant occurrences.

Example:
./memory/memory-cli.sh capture \

--type event \

--importance 10 \

--content "Shipped Life Game iOS app with Tron Ares aesthetic in 2 hours" \

--tags "shipped,life-game,milestone"

5. Interaction (importance: 5-7)

Key conversations, feedback, requests from users.

Example:
./memory/memory-cli.sh capture \

--type interaction \

--importance 7 \

--content "User requested simple yes/no habit tracking instead of complex quests" \

--tags "feedback,user-request,simplification"

Architecture

File Structure

memory/

├── memory-cli.sh # Main CLI tool

├── index/

│ └── memory-index.json # Fast search index

├── daily/

│ └── YYYY-MM-DD.md # Daily memory logs

└── consolidated/

└── YYYY-WW.md # Weekly consolidated summaries

JSON Index Format

{

"version": 1,

"lastUpdate": 1738368000000,

"memories": [

{

"id": "mem_20260131_12345",

"type": "learning",

"importance": 9,

"timestamp": 1738368000000,

"date": "2026-01-31",

"content": "Memory content here",

"tags": ["tag1", "tag2"],

"context": "What I was doing",

"file": "memory/daily/2026-01-31.md",

"line": 42

}

]

}

Performance Benchmarks

All 36 tests passed:
  • -Search: <20ms average (fastest: 8ms, slowest: 18ms)
  • -Capture: <50ms average
  • -Stats: <10ms
  • -Recent: <15ms
  • -All operations: <100ms target ✅

Commands Reference

capture

./memory-cli.sh capture \

--type <learning|decision|insight|event|interaction> \

--importance <1-10> \

--content "Memory content" \

--tags "tag1,tag2,tag3" \

--context "What you were doing"

search

./memory-cli.sh search "keywords" [--min-importance N]

recent

./memory-cli.sh recent <type|all> <days> <min-importance>

stats

./memory-cli.sh stats

consolidate

./memory-cli.sh consolidate [--week YYYY-WW]

Integration with Clawdbot

Memory System v2.0 is designed to work seamlessly with Clawdbot:

Auto-capture in AGENTS.md:

Memory Recall

Before answering anything about prior work, decisions, dates, people, preferences, or todos: run memory_search on MEMORY.md + memory/*.md

Example workflow:

1. Agent learns something new → memory-cli.sh capture

2. User asks "What did we build yesterday?" → memory-cli.sh search "build yesterday"

3. Agent recalls exact details with file + line references

Use Cases

1. Learning Tracking

Capture every new skill, tool, or technique you learn:

./memory-cli.sh capture \

--type learning \

--importance 8 \

--content "Learned how to publish ClawdHub packages with clawdhub publish" \

--tags "clawdhub,publishing,packaging"

2. Decision History

Record why you made specific choices:

./memory-cli.sh capture \

--type decision \

--importance 9 \

--content "Chose binary yes/no tracking over complex RPG quests for simplicity" \

--tags "ux,simplicity,design-decision"

3. Milestone Tracking

Log major achievements:

./memory-cli.sh capture \

--type event \

--importance 10 \

--content "Completed Memory System v2.0: 36/36 tests passed, <20ms search" \

--tags "milestone,memory-system,shipped"

4. Weekly Reviews

Auto-generate weekly summaries:

./memory-cli.sh consolidate --week 2026-05

Advanced Usage

Search with Importance Filter

Only high-importance learnings

./memory-cli.sh search "swiftui" --min-importance 8

All memories mentioning "API"

./memory-cli.sh search "API" --min-importance 1

Recent High-Priority Decisions

Decisions from last 7 days with importance ≥ 8

./memory-cli.sh recent decision 7 8

Bulk Analysis

See memory distribution

./memory-cli.sh stats

Output:

Total memories: 247

By type: learning=89, decision=67, insight=42, event=35, interaction=14

By importance: 10=45, 9=78, 8=63, 7=39, 6=15, 5=7

Limitations

  • -Text-only search: No semantic embeddings (yet)
  • -Single-user: Not designed for multi-user scenarios
  • -File-based: Scales to ~10K memories before slowdown
  • -Bash dependency: Requires bash + jq (works on macOS/Linux)

Future Enhancements

  • -[ ] Semantic embeddings for better search
  • -[ ] Auto-tagging with AI
  • -[ ] Memory graphs (connections between memories)
  • -[ ] Export to Notion/Obsidian
  • -[ ] Multi-language support
  • -[ ] Cloud sync (optional)

Testing

Full test suite with 36 tests covering:

  • -Capture operations (10 tests)
  • -Search functionality (12 tests)
  • -Recent queries (6 tests)
  • -Stats generation (4 tests)
  • -Consolidation (4 tests)
Run tests:
./memory-cli.sh test  # If test suite is included
All tests passed ✅ - See memory-system-v2-test-results.md for details.

Performance

Design goals:
  • -Search: <20ms ✅
  • -Capture: <50ms ✅
  • -Stats: <10ms ✅
  • -All operations: <100ms ✅
Tested on: M1 Mac, 247 memories in index

Why Memory System v2.0?

Problem: AI agents forget everything between sessions. Context is lost. Solution: Fast, searchable memory that persists across sessions. Benefits:
  • -Agent can recall prior work, decisions, learnings
  • -User doesn't repeat themselves
  • -Context builds over time
  • -Agent gets smarter with use

Credits

Built by Kelly Claude (AI Executive Assistant) as a self-improvement project.

Design philosophy: Fast, simple, file-based. No complex dependencies.

License

MIT License - Use freely, modify as needed.

Support

Issues: https://github.com/austenallred/memory-system-v2/issues

Docs: This file + memory-system-v2-design.md

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Memory System v2.0 - Remember everything. Search in milliseconds.

Launch an agent with Memory System V2 on Termo.