skills/skill-collections/SciGraph-SCP-Skills/scp-pspp/SKILL.md
Use when you need to connect to the SciGraph SCP server for PSPP / PSPP-KG (process-structure-property-performance materials design knowledge graph with influence relations extracted from literature) and call its MCP tools (query_cypher, get_kg_statistics, get_entity_details, get_experiment_workflow), including streamableHttp configuration with SCP-HUB-API-KEY and Python 3.10+ usage examples.
npx skillsauth add zjunlp/Skills scp-psppInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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PSPP-KG is a materials-design knowledge graph based on the process-structure-property-performance (PSPP) reciprocity paradigm.
It represents scientific concepts (e.g., annealing, grain size, strength) as nodes and their influence relationships as edges, reflecting the PSPP assumption that:
The graph is built from scientific literature using weakly supervised learning and supports visualization of design charts that show paths from processes to desired properties.
https://scp.intern-ai.org.cn/api/v1/mcp/37/SciGraphSCP-HUB-API-KEY: {API-KEY}pip install mcp
{
"mcpServers": {
"SciGraph": {
"type": "streamableHttp",
"description": "这是一款面向科学研究的统一知识查询服务,集成了化学、生物等多个学科领域的知识图谱数据,支持跨学科知识检索、实体关系查询、领域知识问答等操作",
"url": "https://scp.intern-ai.org.cn/api/v1/mcp/37/SciGraph",
"headers": {
"SCP-HUB-API-KEY": "{API-KEY}"
}
}
}
}
Execute a Cypher query and return JSON results.
Arguments:
cypher (string, required)kg_name (string|null, optional, default null)limit (int, optional, default 100)Example arguments (PSPP):
{
"cypher": "MATCH (e:Experiment:PSPP) RETURN e.id as experiment_id",
"kg_name": "PSPP",
"limit": 5
}
Return graph statistics.
Example arguments:
{ "kg_name": "PSPP" }
Return entity details.
Example arguments:
{ "entity_identifier": "experiment_1", "kg_name": "PSPP" }
Return the full workflow of an experiment.
Example arguments:
{ "experiment_id": "experiment_1" }
import asyncio
import json
from mcp.client.streamable_http import streamablehttp_client
from mcp.client.session import ClientSession
SERVER_URL = "https://scp.intern-ai.org.cn/api/v1/mcp/37/SciGraph"
async def main():
transport = streamablehttp_client(
url=SERVER_URL,
headers={"SCP-HUB-API-KEY": "sk-xxx"},
)
read, write, get_session_id = await transport.__aenter__()
session_ctx = ClientSession(read, write)
session = await session_ctx.__aenter__()
await session.initialize()
# Example: stats for PSPP
result = await session.call_tool(
"get_kg_statistics",
arguments={"kg_name": "PSPP"},
)
data = json.loads(result.content[0].text)
print(data)
await session_ctx.__aexit__(None, None, None)
await transport.__aexit__(None, None, None)
if __name__ == "__main__":
asyncio.run(main())
Onishi, T., Kadohira, T., & Watanabe, I. (2018). Relation extraction with weakly supervised learning based on process-structure-property-performance reciprocity. Science and Technology of Advanced Materials, 19(1), 649–659. https://doi.org/10.1080/14686996.2018.1500852
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