CLI + MCP server for Zotero + Obsidian + NotebookLM research pipelines. Run `research-hub init` after install.
Project description
research-hub
One sentence in. Cluster + papers + AI brief out. ~50 seconds. Zotero + Obsidian + NotebookLM, wired together for AI agents — no API key required.
繁體中文 → README.zh-TW.md
📋 Prerequisites (check these first)
| Need | Why | How |
|---|---|---|
| Python 3.10+ | All package code | python --version |
| Obsidian (free) | research-hub writes notes into a vault Obsidian renders | Download at obsidian.md |
| Google account with NotebookLM | Powers the brief generation | Visit notebooklm.google.com once and accept terms |
| Chrome | patchright drives your local Chrome (no separate API key) | Install Chrome — init will probe it |
| Zotero account + API key (researcher/humanities only) | Sync papers + PDFs across devices | zotero.org/settings/keys |
(optional) claude / codex / gemini CLI |
Powers auto --with-crystals for fully automated runs |
Install whichever AI CLI you already use |
research-hub init runs a first-run readiness check at the end that flags whichever of these is missing — no need to memorize the list.
⚡ Install + first run (60 seconds total)
pip install research-hub-pipeline[playwright,secrets]
research-hub init # interactive: persona + Zotero/NLM + readiness check
research-hub notebooklm login # one-time Google sign-in
research-hub auto "harness engineering for LLM agents" # done — 50s later you have 8 papers + a brief
Want fully automated end-to-end (search → ingest → NLM brief → cached AI answers)?
research-hub auto "harness engineering" --with-crystals # auto-pipes through claude/codex/gemini CLI
If a supported LLM CLI is on your PATH, --with-crystals runs the crystal generation step automatically. If not, the prompt is saved to .research_hub/artifacts/<slug>/crystal-prompt.md and the Next Steps banner tells you exactly what to paste where.
Two ways to drive it after install:
| Path | What you do | What runs under the hood |
|---|---|---|
| 🤖 Talk to Claude (recommended) | "Claude, research harness engineering for me" | Claude calls auto_research_topic(...) via MCP — one tool call |
| 💻 One-line CLI | research-hub auto "topic" |
Same orchestrator, called directly |
| 🖱 Click in dashboard | research-hub serve --dashboard → Manage tab |
Same actions, button-driven |
All three drive the same orchestrator. Pick whichever your hands are on.
🤖 Talk to Claude — 30-second setup
Add to claude_desktop_config.json:
{
"mcpServers": {
"research-hub": {
"command": "research-hub",
"args": ["serve"]
}
}
}
Restart Claude Desktop. Then:
You: "Claude, find me 5 papers on agent-based modeling and put them in a notebook." Claude: calls
auto_research_topic(topic="agent-based modeling", max_papers=5)→ 5 papers ingested + NotebookLM brief URL — ~50 s.
You: "What's the SOTA in my llm-evaluation-harness cluster?" Claude: calls
read_crystal("llm-evaluation-harness", "sota-and-open-problems")→ 180-word pre-written answer with citations. ~1 KB read, 0 abstracts fetched at query time.
81 MCP tools in total — full reference: docs/mcp-tools.md. The big ones:
| Tool | What it replaces |
|---|---|
auto_research_topic(topic) |
7-step CLI flow (search → ingest → bundle → upload → generate → download) |
cleanup_garbage(everything=True) |
du -sh .research_hub/bundles/* + manual rm -rf |
tidy_vault() |
doctor --autofix + dedup rebuild + bases emit --force + cleanup preview |
ask_cluster_notebooklm(cluster, question) |
Open NotebookLM tab, paste question, copy answer |
read_crystal(cluster, slot) |
Re-read 20 paper abstracts to answer the same question again |
list_claims(cluster, min_confidence) |
Skim hub overview hoping a claim is in the right paragraph |
add_paper(arxiv_id, cluster) |
Manual Zotero add → manual Obsidian note → manual NotebookLM upload |
📊 At a glance — every feature in one table
| Capability | Command (or MCP tool) | Notes |
|---|---|---|
| Lazy mode — one sentence in, brief out | auto "topic" / auto_research_topic |
search → ingest → NLM brief in ~50s |
| Lazy maintenance | tidy / tidy_vault |
doctor + dedup + bases + cleanup preview |
| GC accumulated junk | cleanup --all --apply / cleanup_garbage |
bundles + debug logs + stale artifacts |
| Ad-hoc NLM Q&A | ask --cluster X "Q?" / ask_cluster_notebooklm |
dual backend (NLM + crystal cache) |
| Pre-computed crystals | crystal emit / apply |
10 canonical Q→A per cluster, ~1 KB/answer |
| Structured memory | memory emit / apply + list_entities/claims/methods |
typed entities, claims with confidence, method taxonomies |
| Live dashboard | serve --dashboard |
6 tabs, persona-aware, Manage tab buttons execute CLI directly |
| 4 personas, 1 codebase | RESEARCH_HUB_PERSONA=researcher|humanities|analyst|internal |
vocabulary + hidden tabs adapt |
| 100% orphan coverage | clusters rebind --emit then --apply |
8-heuristic chain, auto-create-from-folder proposals |
| Health checks (12+) | doctor / doctor --autofix |
mechanical backfills, patchright Chrome probe |
| Multi-backend search | search "query" |
arXiv + Semantic Scholar (default) + Crossref DOI lookup |
| Cluster autosplit | clusters analyze --split-suggestion |
networkx greedy modularity on citation graph |
| Obsidian Bases dashboard | bases emit / emit_cluster_base |
auto-generated .base per cluster (auto-refreshes on ingest) |
| NotebookLM upload | notebooklm upload --cluster X |
patchright + persistent Chrome (no API key, no quota) |
| Citation graph | vault graph-colors |
networkx + Obsidian graph view colors |
| Local file ingest | import-folder /path |
PDF / DOCX / MD / TXT / URL (analyst persona) |
→ Full lazy-mode guide · → All commands · → MCP reference
🖥 What the dashboard looks like
research-hub serve --dashboard opens http://127.0.0.1:8765/ — six tabs, all driven by the same data your CLI sees.
| Overview — treemap + storage map + recent feed + crystals coverage | Library — clusters drilled into sub-topics + per-paper rows |
| Briefings — NotebookLM brief preview + artifact links | Diagnostics — health badges + drift alerts (grouped by kind in v0.48) |
| Manage — every CLI action as a button (rename / merge / split / NLM upload / ask / polish-markdown / bases emit) | Writing — quote capture + draft composer + BibTeX export |
→ Dashboard walkthrough · → All 4 persona variants
🧠 What makes it different
1. Pre-computed answers, not lazy retrieval
Every RAG system still assembles context at query time. research-hub's answer: store the AI's reasoning, not the inputs.
For each cluster you generate ~10 canonical Q→A crystals once with any LLM. Later queries read a pre-written paragraph (~1 KB), not 20 paper abstracts (~30 KB) — 30× compression with quality that doesn't degrade at query time. Underneath, a structured memory layer holds the entities, typed claims with confidence, and method taxonomies that crystals reference. AI agents query via list_entities, list_claims(min_confidence="high"), list_methods — no RAG over prose, structured lookup over structured data.
Example cluster: hub/llm-evaluation-harness/ has 10 crystals + 14 entities + 12 claims + 7 methods. → Why this is not RAG
2. Three control surfaces, one orchestrator
CLI, dashboard buttons, and MCP tools all call the same Python orchestrator. There is no "REST mode" or "API mode" with diverging behavior. Whatever you can do at the shell, Claude can do via MCP, and vice versa.
3. Provider-agnostic by design
No OpenAI / Anthropic API key required. All AI generation uses an emit / apply pattern: emit writes a self-contained prompt to stdout, you paste into your AI of choice (Claude, GPT, Gemini, local model), apply ingests the JSON response. NotebookLM browser automation uses your own logged-in Chrome — no quota, no per-token billing.
📦 Install variants
# Researcher / Humanities (Zotero + NotebookLM)
pip install research-hub-pipeline[playwright,secrets]
# Analyst / Internal KM (no Zotero, import local files)
pip install research-hub-pipeline[import,secrets]
# Everything for development
pip install -e '.[dev,playwright,import,secrets,mcp]'
Python 3.10+. Optional npm install -g defuddle-cli for cleaner URL imports.
📚 Docs
| First 10 minutes | Guided tour for each persona |
| Lazy-mode reference | The 4 one-sentence commands |
| Dashboard walkthrough | Tab-by-tab tour with persona recipes |
| MCP tools reference | All 81 tools, categorized + signatures |
| Personas | 4 persona profiles + per-persona feature matrix |
| Cluster integrity | 6 failure modes × 4 personas mitigation matrix |
| Anti-RAG / crystals | Why pre-computed Q→A beats retrieval |
| NotebookLM setup + troubleshooting | patchright + persistent Chrome (v0.42+) |
| Import folder | Local PDF/DOCX/MD/TXT/URL ingest |
| Papers input schema | Ingestion pipeline reference |
| Upgrade guide | Migrating from older versions |
| Audit reports | audit_v0.26.md … audit_v0.45.md |
| CHANGELOG | Per-version release notes |
🩺 Troubleshooting (first-run problems)
| Symptom | Cause | Fix |
|---|---|---|
research-hub init says chrome WARN patchright cannot launch Chrome |
Chrome not installed, or patchright cannot find it | Install Chrome from chrome.com; rerun research-hub doctor to re-probe |
research-hub notebooklm login opens browser but Google blocks login |
Headless / new device challenge | The browser is patchright (real Chrome) — click "Yes, it's me" on your phone, then complete login normally |
research-hub auto fails at search step with 0 papers |
Topic too narrow, or arXiv/SemSch transient outage | Re-run with --max-papers 20 or rephrase the topic; both backends are fault-tolerant |
research-hub auto fails at nlm.upload with "Generation button not found" |
NotebookLM UI changed, or you're not logged in | Run research-hub notebooklm login again; if persists, file an issue with the nlm-debug-*.jsonl from .research_hub/ |
auto --with-crystals falls back to "no LLM CLI on PATH" |
Neither claude, codex, nor gemini CLI installed |
Install whichever AI CLI you use; or generate crystals manually with crystal emit → paste → crystal apply |
| Claude Desktop doesn't see the MCP server | claude_desktop_config.json not in expected location |
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json · Windows: %APPDATA%\Claude\claude_desktop_config.json · restart Claude Desktop after editing |
init reports zotero WARN but I don't use Zotero |
Default persona is researcher which expects Zotero |
Re-run research-hub init --persona analyst (or internal) — these personas skip Zotero entirely |
For everything else: research-hub doctor --autofix repairs the common mechanical issues; the report tells you which subsystem to look at.
🛠 Status
- Latest: v0.49.0 (2026-04-19) — auto Next Steps banner +
--with-crystalsLLM-CLI bridge + first-run readiness check, seeCHANGELOG.md - Tests: 1537 passing on the fast suite (CI: Linux + Windows + macOS × Python 3.10/3.11/3.12 = 9 jobs)
- MCP tools: 81 (v0.47 added auto / cleanup / tidy as MCP tools; v0.49 extended
auto_research_topicwithdo_crystals/llm_cli) - Dependencies:
pyzotero,pyyaml,requests,rapidfuzz,networkx,platformdirs(all pure-Python) - Optional:
[playwright]for NotebookLM,[import]for local file ingest,[secrets]for OS-keyring credential storage
👩💻 For developers
git clone https://github.com/WenyuChiou/research-hub.git
cd research-hub
pip install -e '.[dev,playwright]'
python -m pytest -q # 1537 passing
Contributing: CONTRIBUTING.md. Security: SECURITY.md.
Package on PyPI: research-hub-pipeline · CLI entry point: research-hub
License
MIT. See LICENSE.
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