NeuroWeave Timeline
FreeNot checkedProcess memory for AI agents and humans that remembers the evolution of a project. Provides MCP tools to create timeline events, search history, explain files,
About
Process memory for AI agents and humans that remembers the evolution of a project. Provides MCP tools to create timeline events, search history, explain files, and visualize the evolution graph.
README
Process memory for AI agents and humans. NWT remembers how a project became what it is — not just what it is now.
CI License: MIT Python 3.10+ PyPI: NWtimeline MCP Release v0.2.0 GitHub stars
Most tools remember results. NWT remembers evolution.
Traditional memory: User → Context → Summary → Memory
Timeline memory: User → Action → Timeline Event → Evolution Graph
Every meaningful action in your project — a decision, a refactor, a file creation, a bug fix — becomes a node in a durable timeline. The links between nodes form an Evolution Graph that explains why the project looks the way it does today.
💬 What you can ask
| Question | One-liner |
|---|---|
| Why does this file exist? | nwt explain activation.py |
| Why was this architecture chosen? | nwt search "architecture decision" |
| What happened three months ago? | nwt history |
| What decisions led to the current design? | nwt story |
| Show me the evolution graph | nwt graph |
| What did that commit actually do? | nwt git-hook-status |
| What changed between two events? | nwt diff 1 5 |
| Merge small consecutive events | nwt compact |
AI agents reach the same answers over MCP — see MCP integration.
🌱 Auto-grow: timeline from git commit
The single biggest reason NWT timelines are empty is friction. The v0.2 fix is a post-commit hook that logs an event on every commit — no human or agent typing required.
nwt init
nwt install-git-hook
git commit -m "Refactor retrieval layer" -m "Reason: lookup latency was high"
nwt: logged [12] Refactor retrieval layer
Add --strict to refuse events without a Reason: line, and
--ai-command "claude -p" to let an external model fill the reason
when the human didn't. See docs/git-hook.md.
🚀 30-second quick start
pip install -e .
cd your-project
nwt init
nwt log "Add activation engine" \
--files activation.py \
--reason "retrieval was slow"
nwt history
nwt graph
That's it. Storage is plain JSON under .nwt/. No database, no
embeddings, no vendor lock-in, no daemon.
👀 A tour of the output
nwt history — what happened, in order
[1] 2026-06-15 Project scaffolded [setup, milestone]
reason: Kickoff the MVP
files: pyproject.toml, README.md
[2] 2026-06-15 Add memory engine [core, milestone]
reason: Need a place to put things
files: memory.py
[3] 2026-06-15 Add activation spreading [memory, optimization]
reason: Retrieval was sequential and slow
files: activation.py, retriever.py
[4] 2026-06-15 Add decay mechanism [memory]
reason: Stale nodes should fade
files: activation.py
[5] 2026-06-15 Vectorize activation [refactor, performance]
reason: Loop was the hot path in profiling
files: activation.py
nwt graph — the evolution as a tree
○ 1 Project scaffolded
│
│ 2 Add memory engine
├─ sibling → [ 4] Add decay mechanism
└─ extends → [ 3] Add activation spreading
│
│ 3 Add activation spreading
│
│ 5 Vectorize activation
nwt story — 100 events compressed to one page
# memory-engine-demo — evolution summary
span: 2026-06-15 → 2026-06-15 (5 events)
milestones:
- 1 Project scaffolded — Kickoff the MVP
- 2 Add memory engine — Need a place to put things
- 3 Add activation spreading — Retrieval was sequential and slow
- 4 Add decay mechanism — Stale nodes should fade
- 5 Vectorize activation — Loop was the hot path in profiling
spine file: activation.py
decisions (events with stated reasons):
- [1] Project scaffolded: Kickoff the MVP
- [2] Add memory engine: Need a place to put things
...
nwt explain activation.py — why a file exists
# activation.py
created in: event 3
modified in: 4, 5
reason:
Retrieval was sequential and slow
🆕 New features (v0.3)
Event importance
Events now have an importance field: low, normal (default), high, milestone.
nwt log "Fix login bug" --summary "..." --importance high
nwt log "Project launched" --summary "..." --importance milestone
The story command groups events by importance.
nwt diff — compare two events
nwt diff 1 5
# Output:
# Diff: [1] → [5]
# Events: 5 between these points
# Added: new_feature.py
# Modified: main.py
nwt compact — merge small events
When you have many small consecutive events with the same tags, compact them:
nwt compact
# Compacted: 50 → 35 events (merged 15)
Options:
--time-window 3600— group events within 1 hour (default)--min-group 3— minimum group size to merge (default)
🧩 How it works
NWT lives in your project as a single .nwt/ directory:
your-project/
└── .nwt/
├── metadata.json # project name, schema version
├── .counter.json # next event id
├── timeline/ # one JSON file per event
│ ├── 000001.json
│ ├── 000002.json
│ └── ...
├── relations/ # typed edges out of each source event
├── snapshots/ # reserved for v0.2
└── indices/ # derived, rebuildable
├── files.json
└── tags.json
Everything is JSON, atomically written. The whole workspace is
grep-friendly and git diff-friendly. See
docs/architecture.md for the rationale.
🔌 MCP integration
For agent developers — NWT ships an MCP server exposing the same answers as tools:
| Tool | Returns |
|---|---|
| create_event | A persisted event with id and timestamp |
| search_history | Matching events across task/summary/reason/files/tags |
| get_project_story | Compressed project story (milestones, decisions, spine file) |
| explain_file | Created/modified-in + earliest reason for a file |
Wire it up in your MCP client:
{
"mcpServers": {
"nwt": {
"command": "nwt-mcp",
"env": { "NWT_ROOT": "/absolute/path/to/your/project" }
}
}
}
The server picks the workspace from $NWT_ROOT if set, else its own
cwd. See docs/mcp.md for the recommended agent loop:
- Session start: call
get_project_storyto load context. - For unfamiliar files: call
explain_filerather than reading cold. - As work is done: call
create_eventwith areasonexplaining why. - When uncertain: call
search_historywith a hypothesis from the current code.
📦 安装
# from a clone (editable)
git clone https://github.com/Thatgfsj/neuroweave-timeline
cd neuroweave-timeline
pip install -e .
# from PyPI (coming soon)
pip install NWtimeline
需要 Python 3.10+。CLI 依赖于 click;MCP 服务器依赖于 mcp。两者都是自动安装的。
安装开发依赖(pytest)并运行测试套件:
pip install -e ".[dev]"
pytest -q
🗺️ Roadmap
v0.2 (this release) is the "auto-grow" cut: git hook integration, strict mode, file biography, and event templates. The timeline fills itself now.
- v0.3 — agent integration. Drive NWT through Claude Code, Cursor, and OpenAI Agents to find the gaps.
- v0.4 — multi-agent collaboration history (concurrency-safe writes, per-author identity).
- v0.5 — NWC integration, only if NWT earns it on its own.
See docs/roadmap.md and docs/standalone.md for the full story.
🤝 Contributing
Issues and PRs are welcome. The whole project is ~1,500 lines of Python plus docs — easy to read end-to-end. Start with docs/architecture.md for the layout and CONTRIBUTING.md for the workflow.
🔒 Security
NWT stores only what you give it, on disk, in your project's .nwt/.
It does not phone home, does not read environment variables other
than NWT_ROOT, and writes nowhere else. The .gitignore refuses
to track tokens, keys, or .env files. See
SECURITY.md for the full policy.
📄 License
MIT — see LICENSE.
Install NeuroWeave Timeline in Claude Desktop, Claude Code & Cursor
unyly install neuroweave-timelineInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add neuroweave-timeline -- uvx NWtimelineFAQ
Is NeuroWeave Timeline MCP free?
Yes, NeuroWeave Timeline MCP is free — one-click install via Unyly at no cost.
Does NeuroWeave Timeline need an API key?
No, NeuroWeave Timeline runs without API keys or environment variables.
Is NeuroWeave Timeline hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install NeuroWeave Timeline in Claude Desktop, Claude Code or Cursor?
Open NeuroWeave Timeline on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
by modelcontextprotocolSpring AI MCP Server
Provides auto-configuration for setting up an MCP server in Spring Boot applications.
llm-analysis-assistant
A very streamlined mcp client that supports calling and monitoring stdio/sse/streamableHttp, and can also view request responses through the /logs page. It also
by xuzexin-hzCompare NeuroWeave Timeline with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All ai MCPs
