data▌
145 indexed skills · max 10 per page
data-visualizer
daffy0208/ai-dev-standards · Productivity
Interactive charts, dashboards, and data visualizations with Recharts, Chart.js, and D3.js. \n \n Supports three major libraries: Recharts for React projects, Chart.js for framework-agnostic use, and D3.js for custom, publication-quality graphics \n Covers 10+ chart types including line, bar, pie, area, scatter, and heatmaps, with guidance on when to use each \n Includes dashboard patterns for KPI cards, real-time monitoring with Server-Sent Events, and interactive filtering with drill-down capa
data-quality-frameworks
sickn33/antigravity-awesome-skills · Productivity
Production patterns for implementing data quality with Great Expectations, dbt tests, and data contracts to ensure reliable data pipelines.
football-data
machina-sports/sports-skills · Productivity
Soccer data across 13 leagues with standings, schedules, match stats, xG, transfers, and player profiles — no API keys required. \n \n Covers 13 leagues including Premier League, La Liga, Bundesliga, Serie A, Ligue 1, MLS, Champions League, World Cup, and others \n Provides match-level data: lineups, team statistics, timelines (goals, cards, substitutions), and expected goals (xG) for top 5 leagues only \n Includes player profiles, season leaders, transfer history via Transfermarkt, and injury/d
pandas-data-analysis
pluginagentmarketplace/custom-plugin-python · Productivity
Data manipulation, analysis, and visualization with Pandas, NumPy, and Matplotlib. \n \n Covers DataFrame and Series creation, indexing, filtering, and type conversions for structured data handling \n Includes data cleaning techniques: missing value handling, deduplication, string operations, and date/time parsing \n Provides GroupBy aggregation, pivot tables, multi-level indexing, and window functions for exploratory analysis \n Integrates Matplotlib and Seaborn for statistical plotting, trend
parallel-data-enrichment
parallel-web/parallel-agent-skills · Productivity
Bulk enrichment of company, people, or product data with web-sourced fields like CEO names, funding, and contact info. \n \n Accepts inline JSON data or CSV files; outputs enriched results to CSV \n Runs asynchronously with progress tracking via monitoring URL and polling commands \n Requires parallel-cli tool and internet access; handles large datasets with configurable timeouts \n Supports flexible field requests through natural language intent descriptions (e.g., \"CEO name and founding year\
analyzing-data
astronomer/agents · Productivity
Query your data warehouse to answer business questions with cached patterns and concept mappings. \n \n Supports pattern lookup and caching for repeated question types, with outcome recording to improve future queries \n Includes concept-to-table mapping cache and table schema discovery via INFORMATION_SCHEMA or codebase grep \n Provides run_sql() and run_sql_pandas() kernel functions returning Polars or Pandas DataFrames for analysis \n CLI commands for managing concept, pattern, and table cach
explore-data
anthropics/knowledge-work-plugins · Productivity
If you see unfamiliar placeholders or need to check which tools are connected, see CONNECTORS.md.
data-scraper-agent
affaan-m/everything-claude-code · Productivity
Build a production-ready, AI-powered data collection agent for any public data source. Runs on a schedule, enriches results with a free LLM, stores to a database, and improves over time.
data-model-creation
tencentcloudbase/skills · Productivity
Advanced data modeling tool for complex multi-table schemas with automated relationship management and ER diagram generation. \n \n Designed for enterprise-level scenarios requiring multi-entity relationships, foreign key automation, and visual documentation; most simple table creation should use relational-database-tool directly with SQL \n Generates Mermaid class diagrams following strict type mapping, naming conventions, and constraint rules for consistent schema design \n Supports required/u
data-analysis
bytedance/deer-flow · Productivity
SQL-powered analysis of Excel and CSV files with schema inspection, aggregation, and multi-format export. \n \n Execute arbitrary SQL queries against uploaded data, including joins across multiple files, window functions, and pivot-style aggregations \n Inspect file structure (sheets, columns, data types, row counts) and generate statistical summaries (mean, median, stddev, percentiles, null counts) for numeric and string columns \n Export query results to CSV, JSON, or Markdown; results are cac