CLIO Plot

数据与存储

by iowarp

MCP server for advanced data visualization and plotting operations

什么是 CLIO Plot

MCP server for advanced data visualization and plotting operations

README

CLIO Kit

<!-- mcp-name: io.github.iowarp/adios-mcp --> <!-- mcp-name: io.github.iowarp/arxiv-mcp --> <!-- mcp-name: io.github.iowarp/chronolog-mcp --> <!-- mcp-name: io.github.iowarp/compression-mcp --> <!-- mcp-name: io.github.iowarp/darshan-mcp --> <!-- mcp-name: io.github.iowarp/geo-mcp --> <!-- mcp-name: io.github.iowarp/geojson-mcp --> <!-- mcp-name: io.github.iowarp/hdf5-mcp --> <!-- mcp-name: io.github.iowarp/jarvis-mcp --> <!-- mcp-name: io.github.iowarp/lmod-mcp --> <!-- mcp-name: io.github.iowarp/ndp-mcp --> <!-- mcp-name: io.github.iowarp/node-hardware-mcp --> <!-- mcp-name: io.github.iowarp/pandas-mcp --> <!-- mcp-name: io.github.iowarp/parallel-sort-mcp --> <!-- mcp-name: io.github.iowarp/paraview-mcp --> <!-- mcp-name: io.github.iowarp/parquet-mcp --> <!-- mcp-name: io.github.iowarp/plot-mcp --> <!-- mcp-name: io.github.iowarp/sac-mcp --> <!-- mcp-name: io.github.iowarp/seismic-mcp --> <!-- mcp-name: io.github.iowarp/slurm-mcp --> <!-- mcp-name: io.github.iowarp/terrain-mcp -->

License: BSD-3-Clause PyPI version Python FastMCP CI Coverage

MCP Servers Ruff Type Checked Package Manager Security Audit

CLIO Kit - Part of the IoWarp platform's tooling layer for AI agents. A comprehensive collection of tools, skills, plugins, and extensions. Currently featuring 15+ Model Context Protocol (MCP) servers for scientific computing, with plans to expand to additional agent capabilities. Enables AI agents to interact with HPC resources, scientific data formats, and research datasets.

Website | IOWarp

Chat with us on Zulip or join us

Developed by <img src="https://grc.iit.edu/img/logo.png" alt="GRC Logo" width="18" height="18"> Gnosis Research Center


❌ Without CLIO Kit

Working with scientific data and HPC resources requires manual scripting and tool-specific knowledge:

  • ❌ Write custom scripts for every HDF5/Parquet file exploration
  • ❌ Manually craft Slurm job submission scripts
  • ❌ Switch between multiple tools for data analysis
  • ❌ No AI assistance for scientific workflows
  • ❌ Repetitive coding for common research tasks

✅ With CLIO Kit

AI agents handle scientific computing tasks through natural language:

  • "Analyze the temperature dataset in this HDF5 file" - HDF5 MCP does it
  • "Submit this simulation to Slurm with 32 cores" - Slurm MCP handles it
  • "Find papers on neural networks from ArXiv" - ArXiv MCP searches
  • "Plot the results from this CSV file" - Plot MCP visualizes
  • "Optimize memory usage for this pandas DataFrame" - Pandas MCP optimizes
  • "Find all documents where pressure exceeds 200 kPa" - Agentic Search retrieves

One unified interface. 16 MCP servers. Hybrid search engine. 150+ specialized tools. Built for research.

CLIO Kit is part of the IoWarp platform's comprehensive tooling ecosystem for AI agents. It brings AI assistance to your scientific computing workflow—whether you're analyzing terabytes of HDF5 data, managing Slurm jobs across clusters, or exploring research papers. Built by researchers, for researchers, at Illinois Institute of Technology with NSF support.

Part of IoWarp Platform: CLIO Kit is the tooling layer of the IoWarp platform, providing skills, plugins, and extensions for AI agents working in scientific computing environments.

One simple command. Production-ready, fully typed, MIT licensed, and beta-tested in real HPC environments.

🚀 Quick Installation

One Command for Any Server

bash
# List all 16 available MCP servers
uvx clio-kit mcp-servers

# Run any server instantly
uvx clio-kit mcp-server hdf5
uvx clio-kit mcp-server pandas
uvx clio-kit mcp-server slurm

# Agentic search — hybrid retrieval for scientific corpora
uvx clio-kit search serve               # Start search API server
uvx clio-kit search query --namespace local_fs --q "pressure > 200 kPa"

# AI prompts also available
uvx clio-kit prompts                    # List all prompts
uvx clio-kit prompt code-coverage-prompt # Use a prompt
<details> <summary><b>Install in Cursor</b></summary>

Add to your Cursor ~/.cursor/mcp.json:

json
{
  "mcpServers": {
    "hdf5-mcp": {
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "hdf5"]
    },
    "pandas-mcp": {
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "pandas"]
    },
    "slurm-mcp": {
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "slurm"]
    }
  }
}

See Cursor MCP docs for more info.

</details> <details> <summary><b>Install in Claude Code</b></summary>
bash
# Add HDF5 MCP
claude mcp add hdf5-mcp -- uvx clio-kit mcp-server hdf5

# Add Pandas MCP
claude mcp add pandas-mcp -- uvx clio-kit mcp-server pandas

# Add Slurm MCP
claude mcp add slurm-mcp -- uvx clio-kit mcp-server slurm

See Claude Code MCP docs for more info.

</details> <details> <summary><b>Install in VS Code</b></summary>

Add to your VS Code MCP config:

json
"mcp": {
  "servers": {
    "hdf5-mcp": {
      "type": "stdio",
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "hdf5"]
    },
    "pandas-mcp": {
      "type": "stdio",
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "pandas"]
    }
  }
}

See VS Code MCP docs for more info.

</details> <details> <summary><b>Install in Claude Desktop</b></summary>

Edit claude_desktop_config.json:

json
{
  "mcpServers": {
    "hdf5-mcp": {
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "hdf5"]
    },
    "arxiv-mcp": {
      "command": "uvx",
      "args": ["clio-kit", "mcp-server", "arxiv"]
    }
  }
}

See Claude Desktop MCP docs for more info.

</details>

Available Packages

<div align="center">
📦 Package📌 Ver🔧 System📋 DescriptionInstall Command
adios2.0.1Data I/ORead data using ADIOS2 engineuvx clio-kit mcp-server adios
arxiv2.0.1ResearchFetch research papers from ArXivuvx clio-kit mcp-server arxiv
chronolog2.0.1LoggingLog and retrieve data from ChronoLoguvx clio-kit mcp-server chronolog
compression2.0.1UtilitiesFile compression with gzipuvx clio-kit mcp-server compression
darshan2.0.1PerformanceI/O performance trace analysisuvx clio-kit mcp-server darshan
hdf52.0.1Data I/OHPC-optimized scientific data with 27 tools, AI insights, caching, streaminguvx clio-kit mcp-server hdf5
jarvis2.0.1WorkflowData pipeline lifecycle managementuvx clio-kit mcp-server jarvis
lmod2.0.1EnvironmentEnvironment module managementuvx clio-kit mcp-server lmod
ndp2.0.1Data ProtocolSearch and discover datasets across CKAN instancesuvx clio-kit mcp-server ndp
node-hardware2.0.1SystemSystem hardware informationuvx clio-kit mcp-server node-hardware
pandas2.0.1Data AnalysisCSV data loading and filteringuvx clio-kit mcp-server pandas
parallel-sort2.0.1ComputingLarge file sortinguvx clio-kit mcp-server parallel-sort
paraview2.0.1VisualizationScientific 3D visualization and analysisuvx clio-kit mcp-server paraview
parquet2.0.1Data I/ORead Parquet file columnsuvx clio-kit mcp-server parquet
plot2.0.1VisualizationGenerate plots from CSV datauvx clio-kit mcp-server plot
slurm2.0.1HPCJob submission and managementuvx clio-kit mcp-server slurm
</div>

Agentic Search

Hybrid retrieval engine for scientific corpora — combines lexical (BM25), vector, graph, and scientific search (numeric range, unit matching, formula targeting) over namespaced document collections. DuckDB storage, FastAPI, async job queue, OpenTelemetry tracing, Prometheus metrics.

bash
# Start the search API server
uvx clio-kit search serve

# Index documents from a namespace
uvx clio-kit search index --namespace local_fs

# Query with scientific operators
uvx clio-kit search query --namespace local_fs --q "pressure between 190 and 360 kPa"

# List indexed documents
uvx clio-kit search list --namespace local_fs

API endpoints: /query, /jobs/index, /documents, /health, /metricsfull docs


📖 Usage Examples

HDF5: Scientific Data Analysis

code
"What datasets are in climate_simulation.h5? Show me the temperature field structure and read the first 100 timesteps."

Tools used: open_file, analyze_dataset_structure, read_partial_dataset, list_attributes

Slurm: HPC Job Management

code
"Submit simulation.py to Slurm with 32 cores, 64GB memory, 24-hour runtime. Monitor progress and retrieve output when complete."

Tools used: submit_slurm_job, check_job_status, get_job_output

ArXiv: Research Discovery

code
"Find the latest papers on diffusion models from ArXiv, get details on the top 3, and export citations to BibTeX."

Tools used: search_arxiv, get_paper_details, export_to_bibtex, download_paper_pdf

Pandas: Data Processing

code
"Load sales_data.csv, clean missing values, compute statistics by region, and save as Parquet with compression."

Tools used: load_data, handle_missing_data, groupby_operations, save_data

Plot: Data Visualization

code
"Create a line plot showing temperature trends over time from weather.csv with proper axis labels."

Tools used: line_plot, data_info

Agentic Search: Scientific Retrieval

code
"Find all chunks mentioning pressure above 200 kPa in the local_fs namespace."

CLI: uvx clio-kit search query --namespace local_fs --q "pressure > 200 kPa"


🚨 Troubleshooting

<details> <summary><b>Server Not Found Error</b></summary>

If uvx clio-kit mcp-server <server-name> fails:

bash
# Verify server name is correct
uvx clio-kit mcp-servers

# Common names: hdf5, pandas, slurm, arxiv (not hdf5-mcp, pandas-mcp)
</details> <details> <summary><b>Import Errors or Missing Dependencies</b></summary>

For development or local testing:

bash
cd clio-kit-mcp-servers/hdf5
uv sync --all-extras --dev
uv run hdf5-mcp
</details> <details> <summary><b>uvx Command Not Found</b></summary>

Install uv package manager:

bash
# Linux/macOS
curl -LsSf https://astral.sh/uv/install.sh | sh

# Windows
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"

# Or via pip
pip install uv
</details>

Team

Sponsored By

<img src="https://www.nsf.gov/themes/custom/nsf_theme/components/molecules/logo/logo-desktop.png" alt="NSF Logo" width="24" height="24"> NSF (National Science Foundation) - Supporting scientific computing research and AI integration initiatives

we welcome more sponsorships. please contact the Principal Investigator

Ways to Contribute

  • Submit Issues: Report bugs or request features via GitHub Issues
  • Develop New MCPs: Add servers for your research tools (CONTRIBUTING.md)
  • Improve Documentation: Help make guides clearer
  • Share Use Cases: Tell us how you're using CLIO Kit in your research

Full Guide: CONTRIBUTING.md

Community & Support


常见问题

CLIO Plot 是什么?

MCP server for advanced data visualization and plotting operations

相关 Skills

技术栈评估

by alirezarezvani

Universal
热门

对比框架、数据库和云服务,结合 5 年 TCO、安全风险、生态活力与迁移复杂度做量化评估,适合技术选型、栈升级和替换路线决策。

帮你系统比较技术栈优劣,不只看功能,还把TCO、安全性和生态健康度一起量化,选型和迁移决策更稳。

数据与存储
未扫描17.9k

资深数据科学家

by alirezarezvani

Universal
热门

覆盖实验设计、特征工程、预测建模、因果推断与模型评估,适合用 Python/R/SQL 做 A/B 测试、时序分析和生产级 ML 落地,支撑数据驱动决策。

从 A/B 测试、因果分析到预测建模一条龙搞定,既有硬核统计方法也懂业务沟通,特别适合把数据结论真正落地。

数据与存储
未扫描17.9k

资深架构师

by alirezarezvani

Universal
热门

适合系统设计评审、ADR记录和扩展性规划,分析依赖与耦合,权衡单体或微服务、数据库与技术栈选型,并输出Mermaid、PlantUML、ASCII架构图。

搞系统设计、技术选型和扩展规划时,用它能更快理清架构决策与依赖关系,还能直接产出 Mermaid/PlantUML 图,方案讨论效率很高。

数据与存储
未扫描17.9k

相关 MCP Server

SQLite 数据库

编辑精选

by Anthropic

热门

SQLite 是让 AI 直接查询本地数据库进行数据分析的 MCP 服务器。

这个服务器解决了 AI 无法直接访问 SQLite 数据库的问题,适合需要快速分析本地数据集的开发者。不过,作为参考实现,它可能缺乏生产级的安全特性,建议在受控环境中使用。

数据与存储
87.1k

by Anthropic

热门

PostgreSQL 是让 Claude 直接查询和管理你的数据库的 MCP 服务器。

这个服务器解决了开发者需要手动编写 SQL 查询的痛点,特别适合数据分析师或后端开发者快速探索数据库结构。不过,由于是参考实现,生产环境使用前务必评估安全风险,别指望它能处理复杂事务。

数据与存储
87.1k

by Firecrawl

热门

Firecrawl 是让 AI 直接抓取网页并提取结构化数据的 MCP 服务器。

它解决了手动写爬虫的麻烦,让 Claude 能直接访问动态网页内容。最适合需要实时数据的研究者或开发者,比如监控竞品价格或抓取新闻。但要注意,它依赖第三方 API,可能涉及隐私和成本问题。

数据与存储
6.5k

评论