Preparing Archive
hierarchical-agent-memory
Scoped CLAUDE.md memory system that reduces context token spend. Creates directory-level context files, tracks savings via dashboard, and routes agents to the right sub-context.
Architectural Overview
"This module is grounded in security patterns and exposes 1 core capabilities across 1 execution phases."
Hierarchical Agent Memory (HAM)
Scoped memory system that gives AI coding agents a cheat sheet for each directory instead of re-reading your entire project every prompt. Root CLAUDE.md holds global context (~200 tokens), subdirectory CLAUDE.md files hold scoped context (~250 tokens each), and a .memory/ layer stores decisions, patterns, and an inbox for unconfirmed inferences.
When to Use This Skill
- Use when you want to reduce input token costs across Claude Code sessions
- Use when your project has 3+ directories and the agent keeps re-reading the same files
- Use when you want directory-scoped context instead of one monolithic CLAUDE.md
- Use when you want a dashboard to visualize token savings, session history, and context health
- Use when setting up a new project and want structured agent memory from day one
How It Works
Step 1: Setup ("go ham")
Auto-detects your project platform and maturity, then generates the memory structure:
project/
├── CLAUDE.md # Root context (~200 tokens)
├── .memory/
│ ├── decisions.md # Architecture Decision Records
│ ├── patterns.md # Reusable patterns
│ ├── inbox.md # Inferred items awaiting confirmation
│ └── audit-log.md # Audit history
└── src/
├── api/CLAUDE.md # Scoped context for api/
├── components/CLAUDE.md
└── lib/CLAUDE.md
Step 2: Context Routing
The root CLAUDE.md includes a routing section that tells the agent exactly which sub-context to load:
## Context Routing
→ api: src/api/CLAUDE.md
→ components: src/components/CLAUDE.md
→ lib: src/lib/CLAUDE.md
The agent reads root, then immediately loads the relevant subdirectory context — no guessing.
Step 3: Dashboard ("ham dashboard")
Launches a web dashboard at localhost:7777 that visualizes:
- Token savings (HAM-on vs HAM-off sessions)
- Daily token and cost trends
- Per-directory session breakdown
- Context file health (missing/stale/inherited CLAUDE.md coverage)
- Routing compliance (how often the agent follows the routing map)
- Carbon/energy estimates
Commands
| Trigger | What it does |
|---|---|
go ham |
Set up HAM — auto-detect platform, generate CLAUDE.md files |
ham savings |
Show token and cost savings report |
ham dashboard |
Launch the interactive web dashboard |
ham audit |
Health check on memory files |
ham insights |
Generate actionable insights from session data |
ham route |
Add/update Context Routing section in root CLAUDE.md |
ham carbon |
Show energy and carbon efficiency data |
Examples
Example 1: First-time setup
User: go ham
Agent: HAM setup complete. Created 8 files.
- CLAUDE.md (root)
- .memory/decisions.md
- .memory/patterns.md
- .memory/inbox.md
- src/api/CLAUDE.md
- src/components/CLAUDE.md
- src/lib/CLAUDE.md
- src/utils/CLAUDE.md
Baseline captured in .memory/baseline.json
Run "HAM savings" to see your token and cost savings.
Example 2: Checking savings
User: ham savings
Agent:
Before HAM: ~7,500 tokens/prompt
After HAM: ~450 tokens/prompt
Savings: 7,050 tokens (94%)
Monthly projection (1,500 prompts):
Sonnet: ~$31.73 saved
Opus: ~$158.63 saved
Best Practices
- Keep root CLAUDE.md under 60 lines / 250 tokens
- Keep subdirectory CLAUDE.md files under 75 lines each
- Run
ham auditevery 2 weeks to catch stale or missing context files - Use
ham routeafter adding new directories to keep routing current - Review
.memory/inbox.mdperiodically — confirm or reject inferred items
Limitations
- Token estimates use ~4 chars = 1 token approximation, not a real tokenizer
- Baseline savings comparisons are estimates based on typical agent behavior
- Dashboard requires Node.js 18+ and reads session data from
~/.claude/projects/ - Context routing detection relies on CLAUDE.md read order in session JSONL files
- Does not auto-update subdirectory CLAUDE.md content — you maintain those manually or via
ham audit - Carbon estimates use regional grid averages, not real-time energy data
Related Skills
agent-memory-systems— general agent memory architecture patternsagent-memory-mcp— MCP-based memory integration
Primary Stack
TypeScript
Tooling Surface
Guide only
Workspace Path
.agents/skills/hierarchical-agent-memory
Operational Ecosystem
The complete hardware and software toolchain required.
Module Topology
Antigravity Core
Principal Engineering Agent
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