data-pro-max

SKILL.md

Data Pro Max - Data Analysis Intelligence

An AI orchestrator that provides intelligent recommendations for data analysis, visualization, and reporting. It automatically activates for data-intensive tasks and coordinates specialized sub-skills.

1. Integrated Skill Cores

Data Pro Max coordinates these specialized skills:

Core Skill Functionality Location
data-manipulation T-Layer (Preparation, Weights, Map) πŸ“¦ data/skills/
data-analysis-suite All Stats, Causal & Science πŸ“¦ data/skills/
geoprocessing-brazil Geo-spatial & Mapping πŸ“¦ data/skills/
data-viz Statistical Visualization πŸ“¦ data/skills/
document-converter Format Conversion (Import/Export) πŸ“¦ data/skills/
duckdb-sql-master High-performance SQL on local files πŸ“¦ data/skills/
time-series-analysis Validation & metrics for sequence data πŸ“¦ data/skills/
clustering-toolkit Advanced PCA+DBSCAN grouping πŸ“¦ data/skills/
context-optimizer Document decomposition into .agent πŸ“¦ data/skills/

Shared Skills (deployed via manifest)

Skill Purpose Location
brainstorming Creative ideation & design πŸ”— .agent/skills/ β†’ manifest
document-mastery Writing quality & Mermaid diagrams πŸ”— .agent/skills/ β†’ manifest

Agent-Only Skills (NOT deployed)

Skill Purpose Location
skill-creator Creating and packaging new skills 🏠 .agent/skills/
notebooklm Querying Google NotebookLM notebooks 🏠 .agent/skills/

2. Master Workflows (Slash Commands)

Command Workflow Location
/project-onboarding Initial setup & rules πŸ“¦ Packaged (datapro setup)
/survey-analysis-pipeline End-to-end execution πŸ“¦ Packaged (datapro setup)
/project-harvest Learning extraction β†’ assets/harvest/ πŸ“¦ Packaged (datapro setup)
/document-study Deep analysis of papers/methodology πŸ“¦ Packaged (datapro setup)
/notebook-generation Dual-layered automated notebook reporting πŸ“¦ Packaged (datapro setup)
/project-evolution Absorb harvest into Data-Pro-Skill 🏠 Local (this repo only)

3. High-Performance Workflow

graph TD
    A[User Request] --> B[Data Discovery]
    B --> C{Orchestrator}
    C -->|Transformation| D1[data-manipulation]
    C -->|Statistical| D2[data-analysis-suite]
    D1 --> D2
    C -->|Spatial| E[geoprocessing-brazil]
    C -->|SQL/Large Data| F[duckdb-sql-master]
    D1 & D2 & E & F --> G[data-viz]
    G --> H[document-mastery]
    H --> I[document-converter]
    I --> J[Final Report]

4. Operational Best Practices

Step 1: Integrated Pipeline

Use @data-manipulation for preparation (mapping, cleaning, weighting) and @data-analysis-suite for specialized statistics. Consult the references/*.md inside each skill for specific methodologies.

Step 2: Consistent Aesthetics

Always use data-viz for chart generation to ensure consistent styling and 300 DPI quality.

Step 3: Global Language Policy

All technical artifacts, code comments, and documentation produced MUST be written in English.


[!IMPORTANT] This repository uses a References Pattern for complex skills. If a task requires specialized stats, read the corresponding file in data-analysis-suite/references/ first.

Weekly Installs
13
GitHub Stars
5
First Seen
Feb 15, 2026
Installed on
opencode13
gemini-cli13
github-copilot13
codex13
kimi-cli13
amp13