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A pip-installable client and CLI for literature-grounded scientific research workflows on top of the hosted SciNet API.
📄 arXiv · 🔑 Get API Token · 🩺 API Health
SciNet is a research map you can use from the command line. Give it a topic, an idea, an author, or a paper trail, and it helps you look up literature, gather graph-backed evidence, and turn the result into readable reports and reusable JSON artifacts.
Behind that simple workflow is a large scientific knowledge graph. SciNet connects papers, authors, institutions, venues, keywords, citations, and a four-level research taxonomy from domains down to topics. That means a search is not limited to matching words: it can follow how research areas, people, concepts, and papers relate to one another.
This repository packages that capability as a lightweight SciNet client. New users can install it with pip, register an API token, and start running literature-grounded research tasks without setting up Neo4j, maintaining graph data, or touching backend infrastructure.
SciNet spans a broad research landscape, from medicine and social sciences to engineering, computer science, materials science, mathematics, and more.
The graph links papers with authors, institutions, sources, keywords, citations, related work, and the domain-field-subfield-topic hierarchy.
With the client, SciNet becomes a practical research assistant for:
- graph-aware paper search: combine keywords, semantic matching, title anchors, references, and graph propagation instead of stopping at plain keyword matching;
- research workflow automation: run literature review, idea grounding, idea evaluation, idea generation, trend analysis, related-author retrieval, and researcher profiling;
- agent-friendly outputs: keep reproducible machine-readable artifacts such as
request.jsonandresponse.json, plus user-facingsummary.txtandreport.md; - editable CLI skills: inspect, copy, modify, and rerun common downstream workflows as reusable JSON skills.
- ✨ Overview
- 📑 Table of Contents
- 🚀 Quick Start
- 🔑 API Token
- 🧩 Supported Tasks
- 🛠️ CLI-First Workflow
- 🧰 Editable Skills
- 🐍 Python SDK
- 📦 Outputs and Artifacts
- 📂 Repository Layout
- 🧯 Troubleshooting
- 📝 TODO
- ✍️ Citation
- 📄 License
Install directly from GitHub:
pip install "git+https://github.com/zjunlp/SciNet.git#subdirectory=scinet"For isolated CLI usage:
pipx install "git+https://github.com/zjunlp/SciNet.git#subdirectory=scinet"After installation:
scinet -hOpen:
http://scinet.openkg.cn/register
Complete email verification and copy your personal token.
Quick link: 🔑 API Token.
At minimum, configure the hosted SciNet API endpoint and your personal token.
Linux / macOS:
export SCINET_API_BASE_URL="http://scinet.openkg.cn"
export SCINET_API_KEY="your-personal-scinet-token"
export SCINET_TIMEOUT=900
export SCINET_RUNS_DIR="./runs"Windows CMD:
set SCINET_API_BASE_URL=http://scinet.openkg.cn
set SCINET_API_KEY=your-personal-scinet-token
set SCINET_TIMEOUT=900
set SCINET_RUNS_DIR=.\runsCompatibility variables:
KG2API_BASE_URL=http://scinet.openkg.cn
KG2API_API_KEY=your-personal-scinet-tokenFor new setups, prefer SCINET_*.
📕 Optional: use your own LLM for keyword extraction
export LLM_PROVIDER="chat_completions"
export LLM_API_KEY="your-provider-api-key"
export LLM_BASE_URL="https://your-provider-or-gateway.example/v1"
export LLM_MODEL="your-model-name"
# Optional when your provider uses a custom endpoint or auth header:
# export LLM_CHAT_COMPLETIONS_URL="https://your-provider-or-gateway.example/v1/chat/completions"
# export LLM_AUTH_HEADER="x-api-key: your-provider-api-key"
export SCINET_LLM_TIMEOUT=30
export SCINET_LLM_TEMPERATURE=0
export SCINET_LLM_MAX_TOKENS=512This step is optional. Configure it only when you want SciNet to use your LLM API to turn a free-form query into better search keywords.
Keep LLM_PROVIDER=chat_completions, then replace LLM_API_KEY, LLM_BASE_URL, and LLM_MODEL with your provider values. If your provider gives a full chat-completions endpoint, set LLM_CHAT_COMPLETIONS_URL; if it requires a custom auth header, set LLM_AUTH_HEADER.
Leave the LLM values empty if you do not need this. SciNet will use built-in keyword extraction, and normal search, review, idea, trend, and researcher workflows still run.
User-editable template: .env.example. Set these variables only if you want LLM-assisted keyword extraction.
🖊 Optional: OpenAlex metadata support
export OA_API_KEY=""
export OPENALEX_MAILTO=""OpenAlex is useful when you want extra metadata or PDF-related support. It is not required for the main CLI examples in this README. If you leave these variables empty, normal SciNet retrieval still works.
User-editable template: .env.example. Set these only if you want OpenAlex-assisted metadata support.
🖌 Optional: GROBID for local PDF workflows
GROBID is only needed when you process local PDF files. It reads scientific PDFs and extracts titles, authors, abstracts, and references. If you are only running the text-based CLI commands above, you can skip this section.
Start GROBID locally:
docker pull lfoppiano/grobid:latest
docker run -d --rm --name grobid -p 8070:8070 lfoppiano/grobid:latest
curl http://127.0.0.1:8070/api/isaliveThen set:
export GROBID_BASE_URL="http://127.0.0.1:8070"Windows CMD:
set GROBID_BASE_URL=http://127.0.0.1:8070User-editable template: .env.example. Leave GROBID_BASE_URL empty unless you process local PDFs.
Runtime variables:
| Variable | Required For | Notes |
|---|---|---|
SCINET_API_BASE_URL |
all hosted SciNet tasks | Hosted SciNet API base URL. |
SCINET_API_KEY |
all hosted SciNet tasks | Sent as X-API-Key and Authorization: Bearer. |
LLM_PROVIDER |
optional frontend enhancement | Keep as chat_completions. |
LLM_API_KEY |
optional frontend enhancement | Your provider key; leave empty for local or no-auth services. |
LLM_BASE_URL |
optional frontend enhancement | Provider base URL, usually ending in /v1. |
LLM_CHAT_COMPLETIONS_URL |
optional frontend enhancement | Use only when your provider gives a full endpoint. |
LLM_MODEL |
optional frontend enhancement | Model name from your provider. |
LLM_AUTH_HEADER |
optional frontend enhancement | Use only for custom auth, for example x-api-key: your-provider-api-key. |
LLM_HTTP_HEADERS |
optional frontend enhancement | Optional extra headers as JSON. |
GROBID_BASE_URL |
PDF tasks | Needed for --pdf-path workflows. |
OA_API_KEY |
optional | OpenAlex metadata/PDF support. |
OPENALEX_MAILTO |
optional | OpenAlex contact email. |
scinet health
scinet configscinet search-papers \
--query "open world agent" \
--keyword "high:open world agent" \
--top-k 10SciNet uses personal API tokens for public access.
Visit:
http://scinet.openkg.cn/register
Steps:
- enter your name, email, organization, and use case;
- click Send code;
- check your inbox for the verification code;
- enter the code and create a token;
- copy the returned
scinet_xxxtoken.
The token is shown only once.
curl -H "Authorization: Bearer $SCINET_API_KEY" \
http://scinet.openkg.cn/v1/auth/token/statuscurl -H "Authorization: Bearer $SCINET_API_KEY" \
"http://scinet.openkg.cn/v1/auth/usage?days=7"| Command | Scenario | Main Output |
|---|---|---|
scinet search-papers |
Paper search | Related papers and Markdown report |
scinet related-authors |
Related-author discovery | Candidate authors and scores |
scinet author-papers |
Author paper lookup | Papers by a specified author |
scinet support-papers |
Support-paper retrieval | Evidence papers for candidate authors |
scinet paper-search |
Lightweight low-level paper search | Fast paper candidates |
scinet literature-review |
Literature review | Core paper pool, timeline, writing hints |
scinet idea-grounding |
Idea grounding | Similar works and differentiation evidence |
scinet idea-evaluate |
Idea evaluation | Evidence for novelty, feasibility, and soundness |
scinet idea-generate |
Idea generation | Topic combinations and idea seeds |
scinet trend-report |
Trend analysis | Evolution evidence and representative works |
scinet researcher-review |
Researcher background review | Research trajectory and representative works |
scinet skill |
Editable skill registry | Reusable workflow presets |
SciNet is CLI-first: you can start with one command, inspect the saved artifacts, and then move into larger research workflows. If you are new, run help once, try a basic retrieval, then choose one of the downstream workflows below.
Documentation: 📚 SciNet Documentation. Use it to check API setup, CLI commands, parameter meanings, and runnable examples.
scinet -h
scinet search-papers -h
scinet literature-review -h
scinet skill -hSciNet supports two input styles. For formal runs, prefer expert parameters because every field is explicit and easier to reproduce. Natural-language input is useful for quick trials or exploratory use.
scinet --timeout 900 search-papers \
--retrieval-mode hybrid \
--query "open world agent" \
--domain "artificial intelligence" \
--time-range 2020-2024 \
--keyword "high:open world agent" \
--keyword "middle:embodied agent" \
--title "middle:Voyager: An Open-Ended Embodied Agent with Large Language Models" \
--reference "low:JARVIS-1: Open-World Multi-task Agents with Memory-Augmented Multimodal Language Models" \
--top-k 5 \
--top-keywords 0 \
--max-titles 0 \
--max-refs 0 \
--bias-keyword high \
--bias-related high \
--bias-exploration low \
--ranking-profile precision \
--report-max-items 5Use --text when you want SciNet to parse the request from a short instruction. You can still add structured hints such as keyword[high]: ... in the text.
scinet --timeout 900 search-papers \
--retrieval-mode hybrid \
--text "Find papers related to open world agent in artificial intelligence since 2020. Return 3 papers.
keyword[high]: open world agent" \
--top-k 3 \
--top-keywords 1 \
--max-titles 0 \
--max-refs 0Use this when you want a quick, evidence-backed paper list for one topic.
scinet search-papers \
--query "open world agent" \
--domain "artificial intelligence" \
--time-range 2020-2024 \
--keyword "high:open world agent" \
--top-k 5 \
--top-keywords 0 \
--max-titles 0 \
--max-refs 0Each workflow prints a concise terminal summary and saves full artifacts under runs/<run_id>/.
Build an initial reading list and get evidence for writing a literature review.
scinet literature-review \
--query "retrieval augmented generation" \
--domain "artificial intelligence" \
--time-range 2020-2025 \
--keyword "high:retrieval augmented generation" \
--top-k 10Check whether a proposed research idea is novel, feasible, and well supported by existing work.
scinet idea-evaluate \
--idea "LLM-based multi-perspective evaluation for scientific research ideas" \
--domain "artificial intelligence" \
--time-range 2020-2025 \
--keyword "high:idea evaluation" \
--keyword "middle:LLM as a judge" \
--top-k 10Explore promising topic combinations and generate candidate research directions.
scinet idea-generate \
--query "knowledge editing for large language models" \
--domain "artificial intelligence" \
--time-range 2020-2025 \
--keyword "high:knowledge editing" \
--keyword "middle:large language models" \
--keyword "low:continual learning" \
--top-k 10Trace how a topic has developed and identify representative works along the way.
scinet trend-report \
--query "retrieval augmented generation" \
--domain "artificial intelligence" \
--time-range 2020-2025 \
--keyword "high:retrieval augmented generation" \
--keyword "middle:knowledge graph" \
--top-k 10Summarize a researcher's publication trajectory and representative papers.
scinet researcher-review \
--author "Yoshua Bengio" \
--limit 10 \
--no-abstract| Mode | Meaning | Best For |
|---|---|---|
keyword |
Keyword-driven KG retrieval | Clear terminology |
semantic |
Semantic retrieval | Broad semantic matching |
title |
Title-anchor retrieval | Known paper titles |
hybrid |
Keyword + semantic + title + graph walk | Default and recommended |
If --retrieval-mode is omitted, SciNet uses hybrid.
Use anchors when you already know a strong keyword, title, or reference and want the graph search to start from it.
--keyword "high:open world agent"
--title "middle:Voyager: An Open-Ended Embodied Agent with Large Language Models"
--reference "low:JARVIS-1: Open-World Multi-task Agents with Memory-Augmented Multimodal Language Models"| Parameter | Meaning |
|---|---|
--bias-keyword |
Keyword association strength |
--bias-non-seed-keyword |
Non-seed keyword expansion |
--bias-citation |
Citation edge strength |
--bias-related |
Paper relatedness strength |
--bias-authorship |
Author-paper relation strength |
--bias-coauthorship |
Coauthor network strength |
--bias-cooccurrence |
Keyword co-occurrence strength |
--bias-exploration |
Graph exploration level |
--ranking-profile |
Ranking preference: precision, balanced, discovery, impact |
Recommended safe defaults:
--top-k 10
--top-keywords 0
--max-titles 0
--max-refs 0
--bias-exploration lowSciNet skills are JSON presets for downstream research workflows. They make complex workflows easier to inspect, reuse, and customize.
scinet skill list
scinet skill show literature-review
scinet skill run literature-review --query "open world agent" --keyword "high:open world agent"
scinet skill run --dry-run literature-review --query "open world agent" --keyword "high:open world agent"Create a custom skill:
scinet skill init my-review --from literature-reviewThis creates:
./skills/my-review.json
Edit it, then run:
scinet skill run my-review --query "your topic"User-defined skills are loaded from:
./skills/*.json~/.scinet/skills/*.json- directories specified by
SCINET_SKILLS_DIR
User-defined skills can override built-in skills with the same name.
SciNet also provides a lightweight Python client.
from scinet import SciNetClient
client = SciNetClient()
print(client.health())
result = client.search_papers(
query="open world agent",
keywords=[{"text": "open world agent", "score": 10}],
top_k=3,
)
print(result)You can also pass credentials directly:
from scinet import SciNetClient
client = SciNetClient(
base_url="http://scinet.openkg.cn",
api_key="your-personal-scinet-token",
)
print(client.token_status())Terminal output is concise and table-based. Full outputs are saved under:
runs/<run_id>/
Common artifacts:
| File | Description |
|---|---|
plan.json |
Structured search plan |
request.json |
Full request sent to SciNet API |
response.json |
Raw backend response |
summary.txt |
Short summary |
report.md |
User-facing Markdown report |
metadata.json |
Runtime metadata |
The tree below highlights the main user-facing areas of the repository. Generated outputs and local cache folders are omitted.
SciNet/
README.md / README_zh.md # project documentation
.env.example # root runtime configuration template
requirements.txt
run_scinet.py # lightweight local runner
docs/api/ # unified static API and CLI documentation site
imgs/ # README figures
scinet/ # pip-installable SciNet client package
pyproject.toml
src/scinet/ # packaged CLI, client, config, and skills
core/ search/ tasks/ # retrieval planning and workflow logic
evidence/ llm/ renderers/ # PDF evidence, optional LLM, report rendering
examples/ tests/
references/search/ # reference KG search implementation
runs/ # generated CLI outputs
Your token is missing or invalid.
echo $SCINET_API_KEY
export SCINET_API_KEY="your-personal-scinet-token"Windows CMD:
set SCINET_API_KEY=your-personal-scinet-tokenCheck the email address, spam folder, and resend interval.
Use lightweight settings:
--top-k 3
--top-keywords 0
--max-titles 0
--max-refs 0
--bias-exploration lowUse the virtual environment executable directly:
.venv\Scripts\scinet.exe -hor reinstall:
.venv\Scripts\python.exe -m pip install -e .- CLI Tools. Add more user-facing CLI capabilities so downstream users and AI agents can invoke retrieval workflows without touching database internals.
- Skills. Package reusable agent skills for common scientific discovery workflows and expose best practices as easier-to-load components.
- More Knowledge. Integrate more knowledge forms beyond paper-centric entities, such as datasets, code, standards, theorems, and experimental experience.
- Benchmark and Evaluation. Build dedicated benchmarks and evaluation protocols for downstream scientific research tasks supported by SciNet.
- Dynamic Update Improve dynamic knowledge updates toward a more systematic and frequent refresh mechanism.
If you find SciNet helpful, please cite:
This project is licensed under the MIT License. See LICENSE for details.

