Quantum Research Hub Server
БесплатноНе проверенAn MCP server for autonomous quantum computing research that searches arXiv, ingests papers, generates ideas, runs and validates experiments, and produces repor
Описание
An MCP server for autonomous quantum computing research that searches arXiv, ingests papers, generates ideas, runs and validates experiments, and produces reports.
README
A local-first, MCP-powered autonomous research system for quantum computing. It watches arXiv, builds compact paper memory, proposes small testable ideas, generates and runs bounded experiments, validates the results skeptically, and shows everything in a dashboard — all under a budget, with every agent action logged.
Every day it answers: what changed in quantum computing, which papers matter, what ideas are worth testing, and what the agents actually tried.
This is a functional MVP, not a skeleton: arXiv search is real (with a clean injectable adapter for tests), the experiment engine runs a genuine tiny VQE against exact diagonalization, and the validator can reject results.
Highlights
- Researcher MCP server (FastMCP) exposing 17 bounded tools to Claude Code.
- Real arXiv ingestion (
httpx+feedparser) -> compact paper cards with deterministic fallback and an optional Claude model pass. - SQLite storage for papers, chunks, ideas, experiments, runs, agent events, and budget events.
- Local vector paper-memory search using dependency-free hashed embeddings
(
QRH_MEMORY_BACKEND=bm25|hybridremains available). - Orchestrator + 8 agents: Paper Scout, Summarizer, Curator, Idea Generator, Experiment Builder, Runner, Validator/Critic, Reporter.
- Daily run under
low/medium/highbudget profiles -> daily report; scheduler can also write weekly reports. - Real experiment engine: tiny TFIM VQE and tensor-network-structured ansatz templates (numpy), run in a sandboxed, timeout-bounded, approval-gated subprocess.
- Dashboard: Overview, Papers, Ideas, Experiments, Agent Logs, Budget, Reports — available as a zero-dependency stdlib HTTP app (recommended, always runs) and as a Streamlit app.
- Safety first: small CPU smoke runs are autonomous; installs/GPU/long jobs require approval; secrets are scrubbed from experiment subprocesses; ideas must cite source papers; no experiment is valid without a baseline.
Quickstart
The whole MVP runs on a lightweight stack (mcp, pydantic, httpx,
feedparser, numpy, pandas, streamlit, pyyaml). pypdf is optional
(full-text parsing only) — the MVP works without it.
Option A — uv (recommended)
uv sync
cp .env.example .env
uv run python -m researcher_mcp.storage.db init
uv run python scripts/seed_demo.py # demo data so the dashboard is populated
uv run python -m orchestrator.daily_run --profile low
uv run python -m apps.dashboard.server # dashboard → http://127.0.0.1:8533
uv run pytest
Option B — pip / existing interpreter
python -m pip install -e ".[dev]"
cp .env.example .env
python -m researcher_mcp.storage.db init
python scripts/seed_demo.py
python -m orchestrator.daily_run --profile low
python -m apps.dashboard.server # dashboard → http://127.0.0.1:8533
python -m pytest
Option C — one shot
scripts/bootstrap.sh # installs deps, makes .env, inits + seeds the DB
scripts/run_daily.sh --profile low
scripts/dev.sh # seed + launch the dashboard
The shell scripts default to
python3; override withPYTHON="uv run python" scripts/run_daily.sh.
How to run each piece
| Action | Command |
|---|---|
| Initialize the DB | python -m researcher_mcp.storage.db init |
| DB status / reset | python -m researcher_mcp.storage.db status · … reset --yes |
| Seed demo data | python scripts/seed_demo.py |
| Daily research run | python -m orchestrator.daily_run --profile low |
| Daily run (full pipeline w/ experiment) | python -m orchestrator.daily_run --profile medium |
| Daily run (no network/demo) | python -m orchestrator.daily_run --profile low --offline |
| Weekly report | python -m orchestrator.scheduler weekly --profile low |
| Scheduler loop | python -m orchestrator.scheduler loop --profile low --weekly |
| Dashboard (recommended, zero deps) | python -m apps.dashboard.server → http://127.0.0.1:8533 |
| Dashboard (Streamlit) | streamlit run apps/dashboard/Home.py → http://localhost:8501 |
| MCP server | python -m researcher_mcp.server (stdio) |
| Build the concept map | python -m researcher_mcp.indexing.pipeline build --reset |
| Concept-map stats | python -m researcher_mcp.indexing.pipeline stats |
| Export reasoning dataset | python -m researcher_mcp.indexing.dataset_export --format all |
| Tests | python -m pytest |
Dashboard note: the stdlib dashboard (
python -m apps.dashboard.server) has zero third-party dependencies and always runs. The Streamlit dashboard is equivalent but importspyarrow; if your Python env has apyarrowbuilt for a different NumPy major version (a common conda/pip mismatch), Streamlit will fail to import. A cleanuv syncavoids this, or use the stdlib dashboard.
Budget profiles
| profile | papers/day | ideas/day | experiments created | experiments run |
|---|---|---|---|---|
low |
5 | 3 | 0 | 0 |
medium |
15 | 8 | 1 | 1 |
high |
30 | 15 | 2 | 2 |
On
low, the pipeline discovers/ingests/ranks/ideates but does not create or run experiments (cap 0) — by design. Use--profile mediumto exercise the full build → run → validate flow. The seed script usesmedium.
Synthesis engine: conceptual maps → reasoning dataset
Beyond per-paper cards, the hub maintains a concept-map index over the whole corpus and can export it as a first-principles training dataset for scientific reasoning models. Every ingested paper is indexed automatically; you can also (re)build the whole map from stored papers at any time.
Pipeline: papers → concept extraction + term mining → evidence-backed graph → JSONL dataset
- Concepts come from two sources: a curated quantum-computing seed ontology (~95 concepts: methods, ansätze, models, math objects, benchmarks, fields, hardware) and a domain-general term miner (acronym+definition detection, scientific head-noun phrases) that grows the vocabulary from any corpus. Mined candidates are auto-promoted to concepts when well-evidenced.
- Relations are typed (
improves_on,generalizes,applies_to,requires,enables,combines,compared_to,benchmarked_on, plus low-confidenceco_occurs). Each relation persists the exact evidence sentence + char offsets + a confidence score — the supervision signal for training. - Storage is a batched SQLite writer (one connection per build, not one per
row) plus FTS5 full-text indexes.
concept_edgesis re-derived from evidence, so re-indexing is idempotent.
python -m researcher_mcp.indexing.pipeline build --reset # build map from all stored papers
python -m researcher_mcp.indexing.pipeline stats # concept/edge/evidence counts
python -m researcher_mcp.indexing.dataset_export --format all --min-confidence 0.5
Four exported dataset formats (JSONL in data/datasets/, each record carries
provenance back to arXiv IDs + evidence):
| format | unit | teaches |
|---|---|---|
triples |
(source, relation, target) + evidence sentence |
atomic grounded facts |
chains |
multi-hop reasoning trace, evidence per hop | transitive/compositional reasoning |
qa |
grounded question/answer over a concept neighborhood | retrieval-grounded answering |
contrastive |
two papers characterizing the same pair differently | evidence-weighing / disagreement |
MCP tools: build_concept_index, get_index_stats, export_reasoning_dataset,
plus search_concepts, get_concept_graph, get_bridge_concepts,
get_concept_neighborhood, get_top_concepts.
Dataset yield depends on input richness. The relation extractor is deterministic and high-precision but low-recall: on abstracts alone, most concept pairs co-occur without an explicit relation verb in the same sentence, so they become low-confidence
co_occurs(filtered at--min-confidence 0.5). Ingesting full-text PDFs (ingest_paper(..., download_pdf=True)with the
Using the MCP server from Claude Code
Add the server to Claude Code (stdio). Example .mcp.json / client config:
{
"mcpServers": {
"quantum-research-hub": {
"command": "python",
"args": ["-m", "researcher_mcp.server"],
"cwd": "/absolute/path/to/this/repo"
}
}
}
Tools exposed: search_arxiv, ingest_paper, get_paper_card,
search_paper_memory, list_recent_papers, create_idea, list_ideas,
create_experiment_from_idea, get_experiment, list_experiments,
run_experiment, get_experiment_results, validate_experiment,
create_daily_report, create_weekly_report, get_budget_status, get_overview.
Subagent definitions live in .claude/agents/ (paper-scout, curator,
idea-generator, experiment-builder, validator, reporter, architect,
test-engineer, plus paper-summarizer, experiment-runner, dashboard-builder,
mcp-server-engineer).
Safety & approval model
Autonomous: arXiv search, paper-card creation, ranking, idea generation, experiment-folder creation, unit/smoke tests, short CPU runs, dashboard/DB updates.
Requires approval (returns needs_approval, does nothing): package installs,
GPU, jobs > the configured timeout / medium+ runner modes, cloud/paid APIs,
deleting files outside data/ and experiments/runs/, changing safety logic.
Hard rules: every idea cites ≥1 source paper; every experiment has a baseline, metric, seed, and validator note; the variational energy can never drop below the exact ground state (flagged as a bug); experiment subprocesses get a secret-scrubbed environment and a hard wall-clock timeout.
Set QRH_APPROVAL_GRANTED=1 (or pass approve=True to run_experiment) to allow
a single non-small run when you have reviewed it.
Project layout
researcher_mcp/ # MCP server + tools + ingestion + storage (the capability layer)
server.py # FastMCP server (python -m researcher_mcp.server)
config.py # paths, budget profiles, categories, keyword groups
tools/ # arxiv, paper, memory, idea, experiment, runner, budget, dashboard, concept, dataset
ingest/ # arxiv_client, paper_card, chunker, concept_extractor, pdf_* (optional)
indexing/ # writer (batched), term_miner, graph_store, pipeline, dataset_export
storage/ # schema.sql, db.py, models.py (pydantic), repository.py, concept_graph.py, vector_store.py
orchestrator/ # the autonomous daily layer
daily_run.py # python -m orchestrator.daily_run --profile {low,medium,high}
budget_manager.py # enforces caps, records usage
agent_router.py # RunContext + pipeline
reporting.py # daily + weekly report builders
agents/ # the 8 pipeline agents
apps/dashboard/ # server.py (stdlib HTTP, recommended) + Streamlit Home.py + pages/1..6
experiments/
templates/vqe_baseline/ # runnable TFIM-VQE template
templates/tensor_network_ansatz/ # runnable matched-parameter ansatz template
runs/ # generated experiment folders
scripts/ # bootstrap, dev, run_daily, reset_dev_db, run_tests, seed_demo
tests/ # pytest (mocked network)
data/, db/ # artifacts + SQLite (gitignored)
.claude/agents/ # subagent definitions .claude/settings.json
Layout note:
researcher_mcp/andorchestrator/are top-level packages (a flattened version of ARCHITECTURE.md'sservices/...tree) so every documentedpython -m ...command works from the repo root with no install. Module paths are identical to the architecture doc.
What an experiment contains
Each experiments/runs/<id>/ has: experiment.yaml, hypothesis.md,
related_papers.json, plan.md, src/run.py, tests/test_smoke.py,
configs/config.json, results/metrics.json (+ logs/, plots/), report.md,
validator_notes.md. Templates report exact_energy, vqe_energy,
baseline_energy, energy_error, improvement_over_baseline,
parameter_count, seed_stability_std, and runtime_seconds. The tensor
template also reports structured_ansatz_energy, hardware_efficient_energy,
and structured_vs_hardware_delta.
Configuration (.env)
See .env.example. Common knobs: QRH_DB_PATH, QRH_DATA_DIR,
QRH_BUDGET_PROFILE, QRH_LOOKBACK_DAYS, QRH_ARXIV_MIN_INTERVAL,
QRH_EXPERIMENT_TIMEOUT_SECONDS, QRH_APPROVAL_GRANTED, and
QRH_MEMORY_BACKEND.
Optional Claude model pass:
export QRH_ENABLE_MODEL_PASS=1
export ANTHROPIC_API_KEY=...
export QRH_CLAUDE_MODEL=claude-sonnet-4-5
When disabled or unavailable, paper cards, ideas, and reports fall back to the deterministic path. No secrets are required for the offline MVP.
Limitations (MVP)
- The Claude model pass is optional and requires an Anthropic key.
- Circuit-cutting and QML templates are still stubs that fall back to the VQE template.
- The vector memory backend is a local hashed embedding index, not a persistent Chroma/FAISS store yet.
- Full-text PDF parsing requires the optional
pdfextra.
See ARCHITECTURE.md for the full design and CLAUDE.md for the working rules.
Установить Quantum Research Hub Server в Claude Desktop, Claude Code, Cursor
unyly install quantum-research-hub-mcp-serverСтавит в Claude Desktop, Claude Code, Cursor и VS Code — сам разбирается с npx, uvx и сборкой из исходников.
Впервые? Поставь CLI: curl -fsSL https://unyly.org/install | sh
Или настроить вручную
Выполни в терминале:
claude mcp add quantum-research-hub-mcp-server -- uvx --from git+https://github.com/soundwaverohit/quantum-research-hub quantum-research-hubFAQ
Quantum Research Hub Server MCP бесплатный?
Да, Quantum Research Hub Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Quantum Research Hub Server?
Нет, Quantum Research Hub Server работает без API-ключей и переменных окружения.
Quantum Research Hub Server — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Quantum Research Hub Server в Claude Desktop, Claude Code или Cursor?
Открой Quantum Research Hub Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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