By fuww
Write SQL, explore datasets, and generate insights faster. Build visualizations and dashboards, and turn raw data into clear stories for stakeholders. Configured for FashionUnited with BigQuery data warehouse, Looker Studio dashboards, and Plausible analytics.
npx claudepluginhub fuww/knowledge-work-pluginsAnswer data questions -- from quick lookups to full analyses
Build an interactive HTML dashboard with charts, filters, and tables
Create publication-quality visualizations with Python
Profile and explore a dataset to understand its shape, quality, and patterns
Generate fashion industry market reports from BigQuery and GraphQL API data
QA an analysis before sharing -- methodology, accuracy, and bias checks
Write optimized SQL for your dialect with best practices
Generate or improve a company-specific data analysis skill by extracting tribal knowledge from analysts. BOOTSTRAP MODE - Triggers: "Create a data context skill", "Set up data analysis for our warehouse", "Help me create a skill for our database", "Generate a data skill for [company]" → Discovers schemas, asks key questions, generates initial skill with reference files ITERATION MODE - Triggers: "Add context about [domain]", "The skill needs more info about [topic]", "Update the data skill with [metrics/tables/terminology]", "Improve the [domain] reference" → Loads existing skill, asks targeted questions, appends/updates reference files Use when data analysts want Claude to understand their company's specific data warehouse, terminology, metrics definitions, and common query patterns.
Profile and explore datasets to understand their shape, quality, and patterns before analysis. Use when encountering a new dataset, assessing data quality, discovering column distributions, identifying nulls and outliers, or deciding which dimensions to analyze.
QA an analysis before sharing with stakeholders — methodology checks, accuracy verification, and bias detection. Use when reviewing an analysis for errors, checking for survivorship bias, validating aggregation logic, or preparing documentation for reproducibility.
Create effective data visualizations with Python (matplotlib, seaborn, plotly). Use when building charts, choosing the right chart type for a dataset, creating publication-quality figures, or applying design principles like accessibility and color theory.
Fashion industry domain knowledge for data analysis and content creation. Includes fashion week calendars (Paris, Milan, London, New York, etc.), trade fair schedules (Premiere Vision, Texworld, ISPO, Pitti), seasonal planning cycles, and industry terminology. Use when analyzing fashion data, creating editorial calendars, writing fashion content, or interpreting market trends.
Build self-contained interactive HTML dashboards with Chart.js, dropdown filters, and professional styling. Use when creating dashboards, building interactive reports, or generating shareable HTML files with charts and filters that work without a server.
Write correct, performant BigQuery SQL for FashionUnited data analysis. Includes templates for job posting metrics, editorial analytics, advertising performance, marketplace catalog, and Top 100 indices. Also supports other SQL dialects when needed.
Apply statistical methods including descriptive stats, trend analysis, outlier detection, and hypothesis testing. Use when analyzing distributions, testing for significance, detecting anomalies, computing correlations, or interpreting statistical results.
Write SQL, explore datasets, and generate insights faster. Build visualizations and dashboards, and turn raw data into clear stories for stakeholders.
External network access
Connects to servers outside your machine
Requires secrets
Needs API keys or credentials to function
Share bugs, ideas, or general feedback.
Analytics pipeline orchestrator covering instrumentation, modeling, and dashboards
AI-powered product analytics: ask a business question, get validated findings, publication-quality charts, and a slide deck.
Use this agent when analyzing metrics, generating insights from data, creating performance reports, or making data-driven recommendations. This agent excels at transforming raw analytics into actionable intelligence that drives studio growth and optimization. Examples:\n\n<example>\nContext: Monthly performance review needed
Use this agent when analyzing metrics, generating insights from data, creating performance reports, or making data-driven recommendations. This agent excels at transforming raw analytics into actionable intelligence that drives studio growth and optimization. Examples:\n\n<example>\nContext: Monthly performance review needed
Connect to Looker and interact with your data using LookML.