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Persistent user identity across AI tools. Stores preferences, lessons, and decisions as local JSON; 13 core MCP tools share them with Claude Code, Cursor, Codex
Persistent user identity across AI tools. Stores preferences, lessons, and decisions as local JSON; 13 core MCP tools share them with Claude Code, Cursor, Codex, and any MCP client. Knowledge governance (staging→verified), AES-256-GCM encryption, cross-tool sync. pip install piia-engram

Tell AI once — your preferences, standards, and lessons follow you across Claude Code, Cursor, Codex, and any MCP-compatible tool. AI proposes knowledge; you approve what sticks. Local-first, no cloud, no account.
cross-tool memory | local-first | Claude Code | Codex | Cursor | Windsurf | MCP
License: Apache 2.0 Python 3.10+ MCP Compatible PyPI Downloads
Listed in: Official MCP Registry awesome-mcp-servers awesome-agents Awesome-MCP-ZH
TL;DR: piia-engram stores your identity, preferences, lessons learned, and key decisions as local JSON files — and shares them with every AI tool through MCP. Set up once, every AI tool remembers you. No cloud, no lock-in, Apache 2.0.
Your AI forgets you every time you switch tools or start a new chat. piia-engram fixes that.
Every time you open a new chat window, switch from Claude Code to Codex, update your AI tool, or move into a different project, you're back to zero:
This happens because AI memory today is locked inside each platform. It belongs to the tool, not to you. The tool updates, resets, or gets replaced — and your context disappears with it.
piia-engram gives you persistent memory that lives on your machine, independent of any AI tool. You tell it once who you are, how you work, and what you've learned. Every MCP-compatible tool reads the same context. New chat, new tool, new version — your identity persists.
piia-engram is not an agent memory database. Tools like Mem0, Zep, and Letta store task context and session history for AI agents. piia-engram stores who you are as a person — your identity, preferences, hard-won lessons, and key decisions. It's a different layer: not what happened in a task, but who is behind every task.
| Without piia-engram | With piia-engram |
|---|---|
| New chat window = start from zero | Every conversation already knows you |
| AI tool updates and your preferences vanish | Your identity lives on your machine, survives any update |
| Switching tools loses accumulated context | Claude Code, Codex, and Cursor read the same memory |
| Past mistakes get repeated | Lessons learned follow you across tools and sessions |
| Memory is locked inside one product | Data stays local, editable, and portable |
piia-engram is built for developers who use multiple AI coding tools and are tired of re-explaining themselves.
If you switch between Claude Code, Codex, and Cursor — your code standards, architecture decisions, and hard-won lessons reset every time. piia-engram makes every tool start from the same understanding of who you are.
If you open 10+ AI chat windows a week — each one starts from zero. piia-engram gives every conversation your full context from the first message.
If you've lost preferences after a tool update — your identity lives on your machine, not inside any platform. Updates, resets, and migrations don't touch your memory.
Investment analysts Decisions get made but reasoning gets lost. piia-engram stores the full reasoning chain so six months later, "why did I pass on that?" has a real answer — and your analytical framework travels with you across every new analysis.
System architects Architecture decisions need context: what you chose, what you ruled out, and why. piia-engram keeps living Architecture Decision Records that travel with you across companies and projects, queryable by any AI tool.
Backend developers API quirks, integration gotchas, performance trade-offs — tacit knowledge that normally lives in your head and resets when you change jobs. piia-engram turns it into a searchable library that persists across everything.
Frontend and design Design philosophy rarely gets documented in a way AI tools can use. piia-engram stores your real standards, UX lessons from real users, and the reasoning behind component decisions — so every project starts where your last one ended.
Vibe coders You build with AI and move fast. The problem: every new session your AI starts from scratch — different style choices, inconsistent patterns, re-explaining the same preferences. piia-engram makes every tool consistent from session one: your stack, your patterns, your voice, already there.
All data lives under ~/.engram/ as plain JSON and Markdown files you can open, edit, back up, or migrate yourself.
Most memory tools are passive — you put things in, they give them back. piia-engram is also active.
Knowledge inheritance across projects
Describe a new project in plain text. get_knowledge_inheritance returns a curated starter pack of the most relevant lessons and decisions from everything you have ever worked on. Your tenth project benefits from all nine before it — one tool call away.
Passive knowledge capture
Paste a session summary into extract_session_insights and piia-engram extracts and stores the lessons and decisions. No manual note-taking. Knowledge accumulates through normal AI conversations.
Works with tools that do not support MCP
ChatGPT, Gemini, Kimi — get_identity_card exports a ready-to-paste Markdown identity card. Your context travels even to tools that cannot connect directly.
Automatic playbook extraction
Finish a multi-step workflow — release to PyPI, deploy to Cloudflare, publish to MCP Registry — and piia-engram detects it at session end. It generates a structured draft playbook (steps, pitfalls, trigger keywords) and saves it to a staging area. Next time you do the same task, the AI finds the playbook and follows it, skipping the mistakes you already solved. No manual recording required — Engram starts the draft, you confirm, AI completes. See Playbook Auto-Extraction below.
Local tools registry
AI tools constantly search for local programs, runtimes, and CLIs. register_tool records what's installed and where; find_tool retrieves it instantly. No more which python every session — the environment map persists across tools and conversations.
Knowledge health and discoveryget_knowledge_overview surfaces stale lessons (not reviewed in 30+ days), computes a 0–100 health score across four dimensions (freshness, quality, coverage, cleanliness), and flags gaps worth revisiting. suggest_merges scans your entire knowledge base for near-duplicates and returns actionable merge commands. link_knowledge connects related lessons and decisions into a navigable knowledge graph.
pip install piia-engram
engram setup
The setup wizard will:
CLAUDE.md, .cursorrules, AGENTS.md) so AI proactively calls EngramCLAUDE.md / .cursorrules filesRestart your AI tool after setup. The first conversation will call get_user_context automatically — your AI already knows you.
Check health anytime:
engram doctor # diagnose all tools
engram doctor --fix # auto-repair issues + inject missing instructions
# Automatic (recommended)
engram setup
# Or manual:
claude mcp add piia-engram -- python -m piia_engram.mcp_server
Add to ~/.cursor/mcp.json:
{
"mcpServers": {
"piia-engram": {
"command": "python",
"args": ["-m", "piia_engram.mcp_server"]
}
}
}
Add to ~/.codex/mcp.json:
{
"mcpServers": {
"piia-engram": {
"command": "python",
"args": ["-m", "piia_engram.mcp_server"]
}
}
}
Plugin manifest note (Codex CLI 0.130.0+): piia-engram ships a
.claude-plugin/plugin.jsonwhose schema is also recognized by Codex CLI. Native one-command plugin install via Codex's marketplace flow isn't supported yet (Codex expects a multi-plugin marketplace manifest at the repo root, which would conflict with the single-plugin manifest used by other tools). For now, configure Codex via the~/.codex/mcp.jsonsnippet above — it's the supported path and works on every Codex version.
Add to claude_desktop_config.json:
{
"mcpServers": {
"piia-engram": {
"command": "python",
"args": ["-m", "piia_engram.mcp_server"]
}
}
}
Any tool that supports MCP over stdio works. Use this config:
{
"mcpServers": {
"piia-engram": {
"command": "python",
"args": ["-m", "piia_engram.mcp_server"]
}
}
}
For tools without MCP support (ChatGPT, Gemini, Kimi): run get_identity_card in any MCP tool and paste the exported Markdown card into your chat.
You → "Help me refactor this auth module"
# WITHOUT piia-engram: AI starts from scratch
AI → "What language? What framework? What's your testing preference?"
# WITH piia-engram: AI already knows you
AI → "Based on your preference for pytest + 90% coverage, and your
lesson about always separating auth middleware from business
logic (from the March incident), here's my approach..."
After setup, run engram doctor to verify everything is connected:
$ engram doctor
Detected 3 AI tool(s):
[ok] Claude Code — Engram configured
[ok] Cursor — Engram configured
[ok] Codex — Engram configured
[ok] All configured tools look healthy.
── Functional Checks ──
[ok] piia_engram.core importable
[ok] Engram initialized (~/.engram)
[ok] Identity loaded (role: Senior Backend Developer)
[ok] quick_context.md ready (4096 bytes)
[ok] MCP server: 17 tools registered
pip install --upgrade piia-engram
After upgrading, piia-engram automatically migrates any stale MCP configs the next time its server starts (stdio mode). If your AI tool still shows an "MCP disconnected" error after restarting, run:
piia-engram doctor # show what's wrong
piia-engram doctor --fix # auto-repair and fix in one step
Then restart the affected AI tool. The doctor command checks Claude Code, Cursor, and Claude Desktop configs and removes any outdated server entries.
Run piia-engram on your own server and connect from anywhere.
# Install with remote support
pip install piia-engram[remote]
# Generate an auth token
python -c "import secrets; print(secrets.token_urlsafe(32))"
# Save the output, e.g. "abc123..."
# Start in SSE mode
ENGRAM_AUTH_TOKEN=abc123... python -m piia_engram.mcp_server --transport sse --host 0.0.0.0 --port 8767
{
"mcpServers": {
"piia-engram": {
"url": "http://your-server:8767/sse",
"headers": {
"Authorization": "Bearer abc123..."
}
}
}
}
{
"mcpServers": {
"piia-engram": {
"url": "http://your-server:8767/sse",
"headers": {
"Authorization": "Bearer abc123..."
}
}
}
}
Security notes:
127.0.0.1 for localhost only. Use 0.0.0.0 only behind a reverse proxy.ENGRAM_CORS_ORIGINS to restrict cross-origin access (e.g. https://your-domain.com).piia-engram ships 72 MCP tools. By default, only the 16 Tier-1 Core tools are loaded to keep the AI's context clean. To unlock all 72 tools, add ENGRAM_TOOLS=all to your MCP config:
{
"mcpServers": {
"piia-engram": {
"command": "python",
"args": ["-m", "piia_engram.mcp_server"],
"env": { "ENGRAM_TOOLS": "all" }
}
}
}
| Tool | Purpose |
|---|---|
get_user_context |
Startup — Load identity + knowledge at session start (supports token_budget for context size control) |
wrap_up_session |
Session end — Save insights + sync at session end |
memory_store |
Writeback — Unified write endpoint: routes to add_lesson / add_decision / add_playbook by kind |
add_lesson |
Store a reusable lesson learned |
add_decision |
Record a key decision with reasoning |
add_playbook |
Record an operational playbook (multi-step procedure with trigger keywords) |
search_knowledge |
Retrieval — Search lessons, decisions, and playbooks (supports filters_json for domain/tier/date filtering) |
get_relevant_knowledge |
Find knowledge relevant to current project |
get_identity_card |
Export Markdown identity card for non-MCP tools |
update_identity |
Update profile, preferences, or quality standards |
get_project_context |
Read a saved project snapshot |
save_project_snapshot |
Persist project state for future sessions |
get_recent_context |
Recover lost session context after restart |
| Tool | Purpose |
|---|---|
register_tool |
Register a local tool, runtime, or CLI to the environment map |
find_tool |
Look up a registered tool by name |
list_tools |
List all registered tools (optionally filter by category) |
save_agent_context |
Save AI session checkpoint (also runs automatically) |
list_agent_sessions |
Browse saved session records across tools |
refresh_quick_context |
Refresh local quick_context.md snapshot for offline/cross-tool use |
get_profile |
Read user profile (safe=true by default) |
get_work_style |
Read work style preferences |
get_preferences |
Read communication and workflow preferences |
get_trust_boundaries |
Read data access boundaries |
get_quality_standards |
Read quality expectations |
get_playbooks |
List saved operational playbooks |
get_playbook |
Get full content of a single playbook by ID |
get_recent_playbooks |
List playbooks by most recent use |
update_playbook |
Update playbook steps, triggers, or other fields |
archive_playbook |
Archive a playbook that is no longer used |
prepare_playbook_execution |
Generate an executable plan with parameter substitution |
update_execution_step |
Mark a step as completed, skipped, or failed |
get_execution_status |
View current execution progress of a playbook |
get_lessons |
List reusable lessons learned |
get_decisions |
List key decisions and reasons |
get_domains |
Read domain experience stats |
get_knowledge_inheritance |
Build cross-project knowledge starter pack |
list_projects |
List saved project snapshots |
extract_session_insights |
Extract lessons and decisions from session text |
bulk_add_knowledge |
Add multiple lessons or decisions in one call |
ingest_notes |
Parse free-form notes into structured knowledge |
update_knowledge |
Update a lesson or decision by ID |
archive_knowledge |
Archive a lesson or decision by ID |
review_knowledge |
Mark a knowledge item as reviewed |
merge_knowledge |
Merge a duplicate into the primary item |
link_knowledge |
Create a bidirectional link between items |
unlink_knowledge |
Remove a bidirectional knowledge link |
get_knowledge_overview |
Knowledge digest, health report, stale checks |
get_related_knowledge |
Follow links between knowledge items |
find_similar_knowledge |
Find similar items by content |
suggest_merges |
Scan for near-duplicates with actionable merge commands |
get_stale_knowledge |
List items that need review |
export_knowledge_report |
Export a readable Markdown knowledge report |
request_outline_review |
Generate an interactive HTML review page |
apply_review |
Process review results (promote/archive staging items) |
export_engram |
Export a full backup |
import_engram |
Import a backup |
export_engram_to_openclaw |
Export OpenClaw-compatible files |
import_engram_from_openclaw |
Import OpenClaw-compatible files |
read_web_content |
Read webpage via local Reader service |
get_audit_log |
Get recent audit log entries |
start_project |
Start a project with inherited knowledge |
add_relation |
Create a typed, directed relation between knowledge items (decision threads) |
remove_relation |
Remove a typed relation (undo of add_relation) |
get_decision_thread |
Reconstruct how a decision evolved step by step |
get_decision_history |
Query the full revision history of a decision by question text |
get_permission_profile |
View all callers' trust levels and access boundaries |
set_caller_trust |
Set or change a caller's trust level |
revoke_caller |
Revoke a caller's future access (forward-only) |
export_feedback_report |
Generate an anonymous beta feedback report |
piia-engram can detect multi-step workflows you complete during a session and automatically draft structured playbooks — no manual recording required.
wrap_up_session or save_agent_context, piia-engram scans for procedural workflow signals: checkpoint steps, action verbs, and trigger keywords.search_knowledge matches the trigger keywords and returns the playbook. The AI follows the proven steps instead of improvising.Playbook auto-extraction is not fully automatic. piia-engram detects the workflow and generates a rough draft — but the draft stays in staging until you explicitly confirm it. Once confirmed, AI tools can refine and follow the playbook autonomously. This keeps humans in the loop for quality control while eliminating the manual work of writing operational procedures.
| Level | Signal | AI Behavior |
|---|---|---|
| high | 3+ checkpoint steps from save_agent_context |
AI notifies you: "Detected a reusable workflow, draft playbook generated." |
| medium | Text-based detection (trigger keywords + action verbs) | AI saves silently to staging, no notification. |
Before any draft is stored, piia-engram automatically redacts:
Bearer, sk-, ghp_, etc.)Users can disable or re-enable playbook auto-extraction at any time:
The AI calls update_identity(field="preferences", ...) to toggle playbook_auto_extract. Default is enabled.
You can always create playbooks manually with add_playbook, regardless of the auto-extraction setting. The kill switch only affects automatic detection during wrap_up_session.
~/.engram/
|-- schema_version.json
|-- identity/
| |-- profile.json
| |-- preferences.json
| |-- quality_standards.json
| `-- trust_boundaries.json
|-- knowledge/
| |-- lessons.json
| |-- decisions.json
| `-- domains.json
|-- playbooks/
| |-- _index.json
| `-- {playbook_id}.json
|-- tools/
| `-- registry.json
|-- projects/
| `-- {project_id}.json
|-- contexts/
| `-- {tool_name}/
| `-- {session_id}.md
|-- exports/
`-- compat/
`-- openclaw/
| Tool | Integration | Confidence |
|---|---|---|
| Claude Code | MCP over stdio | ✅ Verified |
| Codex | MCP over stdio | ✅ Verified |
| Cursor | MCP over stdio | ✅ Verified |
| Claude Desktop | MCP over stdio | ✅ Verified |
| Windsurf | MCP over stdio | Expected to work |
| GitHub Copilot | MCP over stdio | Expected to work |
| Cline | MCP over stdio | Expected to work |
| Roo Code | MCP over stdio | Expected to work |
| Amazon Q | MCP over stdio | Expected to work |
| Augment | MCP over stdio | Expected to work |
| Zed | MCP over stdio | Expected to work |
| OpenClaw | SOUL.md / MEMORY.md / USER.md import and export | ✅ Verified |
| ChatGPT / Gemini / Kimi | Markdown identity card fallback | 🔧 Usable |
| Feature | piia-engram | Claude Memory | Manual CLAUDE.md |
Mem0 | Letta (MemGPT) |
|---|---|---|---|---|---|
| Primary purpose | User identity across tools | Per-conversation memory | Per-project notes | Agent vector memory | Agent self-editing memory |
| Cross-tool by design | ✅ MCP-native (16 core tools) | ❌ Claude only | ❌ tool-specific | ⚠ requires per-tool wiring | ⚠ requires per-tool wiring |
| Storage | Local JSON in ~/.engram/ |
Cloud | Local | Vector DB + Mem0 Cloud | Postgres or Letta Cloud |
| Local-first by default | ✅ | ❌ | ✅ | ⚠ Cloud is the default | ⚠ Cloud is the default |
| Encryption at rest | ✅ AES-256-GCM, PBKDF2 600k (opt-in) | depends on Cloud | ❌ plain Markdown | depends on store config | depends on Postgres config |
| Knowledge tiers (user gate) | ✅ staging → verified | ❌ | ❌ | ❌ | ❌ |
| Conflict detection | ✅ | ❌ | ❌ | ❌ | ❌ |
| MCP-native | ✅ | n/a | n/a | ⚠ third-party | ⚠ third-party |
| Price | Free, Apache 2.0 | Subscription-bundled | Free | Free / Cloud tiers | Free / Cloud tiers |
📊 For the full side-by-side, including when to choose a competitor over piia-engram, see docs/comparison.md.
These are factual claims about piia-engram itself, refreshed each minor release.
| v3.35.0 (2026-05-29) | |
|---|---|
| Supported AI tools | 13 (4 verified + 7 expected-to-work + OpenClaw + ChatGPT fallback) |
| MCP tools | 16 Core (loaded by default) + 56 Advanced (opt-in via ENGRAM_TOOLS=all) |
| Knowledge types | 3 (lessons, decisions, playbooks) |
| Tests passing | 1439 (unit + integration) |
| Code coverage | 96% total; mcp_server 99%, setup_wizard 93%, storage 100%, core 95% |
Lines in core.py |
2134 (facade + mixins total ~6000; down from 4277 monolith pre-v3.14.1 — see architecture.md) |
| PBKDF2 iterations | 600,000 (OWASP 2023+ floor; legacy 100k still decrypts) |
| Encryption | AES-256-GCM, per-value random salt + nonce |
| Cold-start time | < 100 ms typical (local JSON, no network) |
| Network calls from core | 0 by default — except optional read_web_content and opt-in anonymous usage statistics (local + optional remote — see privacy details) |
piia-engram is a human-directed, AI-assisted open-source project.
| Contributor | Role |
|---|---|
| @Patdolitse | Creator, product direction, strategy, ownership |
| Claude Code | Architecture, task planning, code review assistance |
| Codex | Implementation, testing, documentation assistance |
What MCP server lets me share memory between Claude Code and Cursor?
piia-engram. Install with pip install piia-engram && engram setup, and both tools read the same identity, preferences, and lessons from ~/.engram/. No cloud, no sync service — they both read local JSON files through MCP.
What is piia-engram? piia-engram is a persistent memory layer for AI tools. It stores your identity, preferences, code standards, lessons learned, and key decisions as local JSON files on your machine. Every MCP-compatible AI tool (Claude Code, Codex, Cursor, Windsurf, Claude Desktop) reads the same context, so new chats, tool updates, and tool switches never erase who you are.
How is piia-engram different from the official MCP memory server?
The official @modelcontextprotocol/server-memory stores a generic knowledge graph of entities and relations. piia-engram is specialized for developer identity: it has structured fields for your profile, code standards, quality bar, lessons learned, and key decisions — plus 72 tools for knowledge lifecycle management (search, review, merge, inherit across projects). If you need general-purpose entity memory, use the official server. If you want every AI tool to know your coding preferences and past mistakes, use piia-engram.
How is piia-engram different from agent memory tools like Mem0, Zep, or Letta? Those tools store task context and session history for AI agents — what happened during a workflow. piia-engram stores who you are as a person — your identity, preferences, hard-won lessons, and key decisions. It's a different layer: identity persists across tools, sessions, and projects, while task memory is scoped to a single agent run. Your data is local JSON files you own and can edit directly.
Why not just use AGENTS.md / CLAUDE.md / .cursorrules? Those config files are great for repo-specific rules (build steps, coding conventions). piia-engram is for you — your preferences, lessons, and decisions that follow you across every repo and every AI tool. They complement each other: use AGENTS.md for the project, piia-engram for the person. See the full comparison in docs/comparison.md.
Can I use piia-engram with multiple AI tools at once?
Yes. That's the primary use case. piia-engram uses local file storage (~/.engram/) with atomic writes and file locking. Claude Code, Cursor, Codex, and any other MCP client can connect simultaneously. A lesson recorded in Claude Code is immediately available in Cursor.
Which AI tools does piia-engram support?
Any MCP-compatible tool: Claude Code, OpenAI Codex, Cursor, Claude Desktop, Windsurf, GitHub Copilot, Cline, Roo Code, Amazon Q, Augment, Zed, and more. For tools without MCP support (ChatGPT, Gemini, Kimi), export a Markdown identity card with get_identity_card and paste it in.
Where is my data stored?
All data lives in ~/.engram/ on your local machine as plain JSON and Markdown files. No cloud, no account, no subscription. You can open, edit, back up, or migrate the files yourself. Optional AES-256-GCM encryption is available via pip install piia-engram[secure].
How do I install piia-engram?
pip install piia-engram
engram setup
The setup wizard detects your AI tools and configures MCP automatically. Restart your AI tool after setup. The AI will call get_user_context at the start of each session.
After upgrading, my AI tool shows "MCP server disconnected". How do I fix it?
Run engram doctor --fix in a terminal, then restart your AI tool. This command scans all known MCP config files, removes outdated server entries, and repairs broken paths in one step.
Does piia-engram send data to the cloud?
No. All core tools make zero network requests. Optional anonymous usage statistics (tool call counts, never content) can be enabled during setup but are off by default. You can inspect the payload with engram telemetry preview and disable anytime with engram telemetry off. See PRIVACY.md for the full data flow diagram, what is and isn't collected, and your data rights.
How many MCP tools does piia-engram provide? Two tiers, designed so most users only see 16 tools:
| Tier | Tools | What they do | Loaded by |
|---|---|---|---|
| Core | 16 | Identity, knowledge read/write, project context, session recovery, diagnostics | Default |
| Advanced | 56 | Knowledge review, merge, decision threads, permission management, tools registry, import/export, audit | ENGRAM_TOOLS=all |
Most users never need to enable Advanced tools — Core covers everyday use.
Is piia-engram free? Yes. Free and open source under the Apache 2.0 license. No subscription, no cloud tiers, no vendor lock-in.
piia-engram is functional and actively used, but some things it intentionally does not do yet:
| Area | Current State | Planned |
|---|---|---|
| File safety | Atomic JSON writes with a shared portalocker file lock | Broader stress testing |
| Access control | restricted_fields filters profile in get_user_context, get_profile (default safe=true), get_identity_card, and resource endpoints |
Per-caller ACL blocked by MCP caller identity |
| Encryption | Optional field-level AES-256-GCM encryption via ENGRAM_SECRET env var. Install pip install piia-engram[secure]. |
Full-disk encryption for all files (v4.0) |
| Audit logging | Optional access audit log via ENGRAM_AUDIT=1 env var. Logs to ~/.engram/audit.log. |
Per-caller audit (blocked by MCP spec) |
| Caller identity | MCP protocol doesn't pass tool identity | Blocked by MCP spec |
| Concurrent writes | Protected by file lock + atomic replace for piia-engram JSON writes | Network-filesystem edge cases not guaranteed |
What this means in practice:
~/.engram/ can read your datarestricted_fields reduces what piia-engram emits in cold-start context, but it is not encryption or a true ACLThis is not a warning to avoid piia-engram — it's an honest description of what it is: a local memory layer for personal AI context. For personal use, it works well today.
Encrypt sensitive profile fields (email, phone, location, etc.) at rest:
pip install piia-engram[secure]
export ENGRAM_SECRET="your-strong-passphrase"
Encrypted fields are stored as enc:v1:... in JSON files. Without ENGRAM_SECRET, piia-engram works normally with plaintext (backward compatible).
Track all read/write operations:
export ENGRAM_AUDIT=1
Logs are written to ~/.engram/audit.log in JSON-lines format. Query with get_audit_log tool or grep.
engram setup # Interactive install wizard
piia-engram doctor # Check config health (all AI tools)
piia-engram doctor --fix # Auto-repair any issues found
piia-engram stats # Show project growth metrics (GitHub + PyPI)
piia-engram stats --log # Append stats snapshot to local log
engram telemetry # Manage anonymous usage statistics
engram privacy # Show what data piia-engram stores and where
Contributions, issues, and feedback are welcome.
See CONTRIBUTING.md.
Apache 2.0. piia-engram is free software. Your memory belongs to you.
Run in your terminal:
claude mcp add patdolitse-piia-engram -- npx pro tip
Just installed Patdolitse/piia-engram? Say to Claude: "remember why I installed Patdolitse/piia-engramand what I want to try" — it'll save into your Vault.
how this works →Security
Low riskAutomated heuristic from public metadata — not a security guarantee.