lossless-claude
Shared memory infrastructure for coding agents
DAG-based summarization, SQLite-backed message persistence, promoted long-term memory, MCP retrieval tools
Website •
Runtime Model •
Installation •
MCP Tools •
Development
lossless-claude replaces sliding-window forgetfulness with a persistent memory runtime for both humans and agents.
- Every message is stored in a project SQLite database.
- Older context is compacted into a DAG of summaries instead of being dropped.
- Durable decisions and findings are promoted into cross-session memory.
- Claude Code and Codex have native hook integrations, while VS Code uses connector-based workflows on the same backend today.
Humans and agents use the same backend. The integration surface differs by client, but the memory model is shared.
This repo started as a fork of lossless-claw by Martian Engineering, adapted for Claude Code. The LCM model and DAG architecture originate from the Voltropy paper.
Runtime Model
flowchart LR
subgraph Clients["Clients"]
CC["Claude Code<br/>hooks + MCP"]
CX["Codex<br/>native hooks"]
end
CC --> D["lossless-claude daemon"]
CX --> D
D --> DB[("project SQLite DAG")]
D --> PM[("promoted memory FTS5")]
D --> TOOLS["MCP tools<br/>search / grep / expand / describe / store / stats / doctor"]
Capabilities by integration path
| Claude Code | Yes | Yes | Yes, via transcript/hooks | Yes | Primary hook-based integration |
| GitHub Copilot (VS Code) | No | Yes, via skill/rules | No | No | Repo-local skill can teach Copilot to call lcm, but there is no automatic restore or turn capture yet |
| Codex | Yes | Yes | Yes, via native hooks | Yes, thresholded | lcm connectors install codex writes native Codex hooks for restore, prompt hints, passive learning, rolling transcript snapshots, and thresholded compaction |
LCM Model
| Persist | Raw messages are stored in SQLite per conversation |
| Summarize | Older messages are grouped into leaf summaries |
| Condense | Summaries roll up into higher-level DAG nodes |
| Promote | Durable insights are copied into cross-session memory |
| Restore | New sessions recover context from summaries and promoted memory |
| Recall | Agents query, expand, and inspect memory on demand |
Nothing is dropped. Raw messages remain in the database. Summaries point back to their sources. Promoted memory remains searchable across sessions.
flowchart TD
A["conversation / tool output"] --> B["persist raw messages"]
B --> C["compact into leaf summaries"]
C --> D["condense into deeper DAG nodes"]
C --> E["promote durable insights"]
D --> F["restore future context"]
E --> F
F --> G["search / grep / describe / expand / store"]
Installation
Prerequisites
- Node.js 22+
- Claude Code if you want hook-based automation
- GitHub Copilot in VS Code if you want VS Code integration
- Codex CLI if you want Codex connector installation, summarization, or transcript import
Claude Code
Install the lcm binary first:
npm install -g @donadiosolutions/lcm
claude plugin add github:donadiosolutions/lcm
lcm install
lcm install writes config, registers hooks, installs slash commands, registers MCP, and verifies the daemon.
VS Code (GitHub Copilot)
Install the lcm binary first:
npm install -g @donadiosolutions/lcm
Then install the repo-local Copilot connector:
lcm connectors install github-copilot
lcm connectors doctor github-copilot
This creates a workspace skill under .github/skills/lcm-memory/SKILL.md so Copilot can search and store memory through the lcm CLI.
Codex
Install the lcm binary first:
npm install -g @donadiosolutions/lcm
Then install the Codex connector:
lcm connectors install codex
lcm connectors doctor codex
This writes .codex/hooks.json and enables [features].codex_hooks = true in .codex/config.toml. The native hooks use:
SessionStart | lcm restore --client codex | Restore project memory at startup, resume, or clear |
UserPromptSubmit | lcm user-prompt --client codex | Inject relevant memory before each prompt |
PostToolUse | lcm post-tool --client codex | Capture passive learning signals from tool use |
Stop | lcm session-snapshot --client codex | Ingest Codex transcript deltas and compact when the configured token threshold is reached |
Import older Codex sessions when needed:
lcm import --codex
lcm import --provider all
If you also want MCP inside Codex, run lcm connectors install codex --type mcp. Today that prints the TOML block you must add manually to .codex/config.toml.
See docs/vscode-codex.md for the current VS Code/Codex setup path and remaining limitations.
Hooks
Claude Code uses plugin-managed hooks. All Claude Code hooks auto-heal: each validates that all required entries remain registered and repairs missing entries before continuing. Codex uses native hooks from .codex/hooks.json.
PreCompact | lcm compact --hook | Intercepts compaction and writes DAG summaries |
SessionStart | lcm restore | Restores project context, recent summaries, and promoted memory |
SessionEnd | lcm session-end | Ingests the completed Claude transcript |
UserPromptSubmit | lcm user-prompt | Searches memory and injects prompt-time hints |
flowchart LR
SS["SessionStart"] --> CONV["Conversation"]
CONV --> UP["UserPromptSubmit<br/>(each prompt)"]
UP --> CONV
CONV --> PC["PreCompact<br/>(if context fills)"]
PC --> CONV
CONV --> SE["SessionEnd"]
MCP Tools
lcm_search | Hybrid search across episodic memory (SQLite) and semantic memory |
lcm_grep | Regex or full-text search across raw messages and summaries |
lcm_expand | Decompress a summary node into its source content by traversing the DAG |
lcm_describe | Inspect metadata and lineage of a memory node (depth, token count, parent/child links) |
lcm_store | Persist durable memory manually with optional tags |
lcm_stats | Show token savings, compression ratios, and usage statistics |
lcm_doctor | Diagnose daemon, hooks, MCP registration, and summarizer setup |
CLI
lcm install
lcm uninstall
lcm doctor
lcm diagnose
lcm status
lcm -V
lcm search "query"
lcm grep "pattern"
lcm describe <nodeId>
lcm expand <nodeId>
lcm store "content"
lcm stats
lcm stats -v
lcm stats --pool
lcm compact
lcm compact --all
lcm promote
lcm promote --all
lcm import
lcm import --all
lcm import --codex
lcm import --provider all
lcm export
lcm import-knowledge <f>
lcm connectors list
lcm connectors install <a>
lcm connectors remove <a>
lcm connectors doctor
lcm sensitive add <pat>
lcm sensitive add --global
lcm sensitive list
lcm sensitive test <str>
lcm sensitive purge --yes
lcm daemon start --detach
lcm compact --hook
lcm restore
lcm session-end
lcm user-prompt
lcm post-tool
lcm mcp
Configuration
All environment variables are optional. The default summarizer mode is auto.
LCM_SUMMARY_PROVIDER | auto | auto, claude-process, codex-process, anthropic, openai, or disabled |
LCM_SUMMARY_MODEL | unset | Optional model override for the selected summarizer provider |
LCM_CONTEXT_THRESHOLD | 0.75 | Context fill ratio that triggers compaction |
LCM_FRESH_TAIL_COUNT | 32 | Most recent raw messages protected from compaction |
LCM_LEAF_MIN_FANOUT | 8 | Minimum raw messages per leaf summary |
LCM_CONDENSED_MIN_FANOUT | 4 | Minimum summaries per condensed node |
LCM_INCREMENTAL_MAX_DEPTH | 0 | Automatic condensation depth |
LCM_LEAF_CHUNK_TOKENS | 20000 | Maximum source tokens per leaf compaction pass |
LCM_LEAF_TARGET_TOKENS | 1200 | Target size for leaf summaries |
LCM_CONDENSED_TARGET_TOKENS | 2000 | Target size for condensed summaries |
LCM_MAX_EXPAND_TOKENS | 4000 | Token cap for DAG expansion via lcm_expand |
LCM_LARGE_FILE_TOKEN_THRESHOLD | 25000 | File size (tokens) above which content is extracted to disk |
LCM_AUTOCOMPACT_DISABLED | false | Set to true to disable automatic compaction after each turn |
LCM_ENABLED | true | Set to false to disable the plugin while keeping it registered |
auto resolves per caller:
lcm -> claude-process
- explicit config or
LCM_SUMMARY_PROVIDER override always takes precedence
See docs/configuration.md for tuning notes and deeper operational guidance.
Development
npm install
npm run build
npx vitest
npx tsc --noEmit
Repository layout
bin/
lcm.ts CLI entry point (binary: lcm)
src/
compaction.ts DAG compaction engine
connectors/ client integration adapters
daemon/ HTTP daemon, lifecycle, config, routes
db/ SQLite schema + promoted memory
hooks/ Claude hook handlers + auto-heal
llm/ summarizer backends
mcp/ MCP server + tool definitions
store/ conversation and summary persistence
installer/
install.ts setup wizard
uninstall.ts cleanup
test/
... Vitest suites
Privacy
All conversation data is stored locally in ~/.lossless-claude/. Nothing is sent to any lossless-claude server.
If you configure an external summarizer (claude-process, anthropic, openai, etc.), messages are sent to that provider for summarization — after built-in secret redaction. lossless-claude scrubs common secret patterns (API keys, tokens, passwords) from message content before writing to SQLite and before sending to the summarizer.
Add project-specific patterns with lcm sensitive add "MY_PATTERN". See docs/privacy.md for full details.
Technical Notes
- Claude Code integration is hook-first.
- The daemon is shared; the memory backend is client-agnostic.
- The repo carries the original lossless-claw lineage; the current runtime is Claude Code oriented.
Acknowledgments
This project is a fork of lossless-claude, which itself stands on the shoulders of lossless-claw, the original implementation by Martian Engineering. This fork keeps the DAG-based compaction architecture, the LCM memory model, and the foundational design decisions while emphasizing security hardening and broader agent support, explicitly including Codex alongside Claude Code.
The underlying theory comes from the LCM paper by Voltropy.
License
MIT