Data Analyst Plugin
插件 活跃Write SQL, explore datasets, and generate insights faster. Build visualizations and dashboards, and turn raw data into clear stories for stakeholders.
Empower users to interact with data effectively, transforming raw data into actionable insights, clear visualizations, and reliable analyses through specialized tools.
功能
- Write optimized SQL across multiple dialects
- Explore dataset structure, quality, and patterns
- Create publication-quality static and interactive visualizations
- Build self-contained HTML dashboards
- Validate analyses for accuracy, methodology, and bias
使用场景
- Translating natural language data requests into SQL queries.
- Investigating new datasets to understand their shape, quality, and potential for analysis.
- Generating charts and reports for stakeholders to communicate findings.
- Ensuring the reliability and accuracy of data-driven conclusions before sharing.
非目标
- Performing complex statistical modeling beyond standard analysis and hypothesis testing.
- Managing or connecting to data warehouses directly (requires separate MCP configuration).
- Acting as a full BI platform or data warehousing tool.
工作流
- Understand the data question or analysis goal.
- Query data warehouse or process provided data (CSV, paste).
- Explore data structure, quality, and distributions.
- Write optimized SQL for the specified dialect.
- Generate visualizations or dashboards.
- Validate findings and methodology.
- Present insights and recommendations.
实践
- SQL best practices
- Data visualization design
- Statistical analysis methodology
- Data quality assessment
先决条件
- Connected data warehouse MCP server (recommended for full functionality)
- Python 3 environment
Maintenance
- warning:Dependency ManagementThe plugin utilizes Python libraries, but no explicit lockfiles or detailed dependency management strategy (like Dependabot configuration) is evident in the provided source files, raising concerns about vulnerability updates.
Trust
- warning:Issues AttentionIn the last 90 days, 29 issues were opened and 4 were closed, indicating slow response times from maintainers and potential neglect of open issues.
Code Execution
- info:ValidationWhile the code structure suggests input is handled, explicit use of schema validation libraries (like Zod or Pydantic) for all arguments and outputs is not clearly demonstrated in the provided snippets.
Execution
- warning:Pinned dependenciesThe plugin uses Python scripts which lack explicit shebangs or side-effect headers, and dependency pinning via lockfiles is not evident, raising concerns about interpreter compatibility and reproducibility.
安装
请先添加 Marketplace
/plugin marketplace add anthropics/knowledge-work-plugins/plugin install data@knowledge-work-plugins包含 10 个扩展
Skill (10)
Answer data questions -- from quick lookups to full analyses. Use when looking up a single metric, investigating what's driving a trend or drop, comparing segments over time, or preparing a formal data report for stakeholders.
Build an interactive HTML dashboard with charts, filters, and tables. Use when creating an executive overview with KPI cards, turning query results into a shareable self-contained report, building a team monitoring snapshot, or needing multiple charts with filters in one browser-openable file.
Create publication-quality visualizations with Python. Use when turning query results or a DataFrame into a chart, selecting the right chart type for a trend or comparison, generating a plot for a report or presentation, or needing an interactive chart with hover and zoom.
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.
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.
Profile and explore a dataset to understand its shape, quality, and patterns. Use when encountering a new table or file, checking null rates and column distributions, spotting data quality issues like duplicates or suspicious values, or deciding which dimensions and metrics to analyze.
Write correct, performant SQL across all major data warehouse dialects (Snowflake, BigQuery, Databricks, PostgreSQL, etc.). Use when writing queries, optimizing slow SQL, translating between dialects, or building complex analytical queries with CTEs, window functions, or aggregations.
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.
QA an analysis before sharing -- methodology, accuracy, and bias checks. Use when reviewing an analysis before a stakeholder presentation, spot-checking calculations and aggregation logic, verifying a SQL query's results look right, or assessing whether conclusions are actually supported by the data.
Write optimized SQL for your dialect with best practices. Use when translating a natural-language data need into SQL, building a multi-CTE query with joins and aggregations, optimizing a query against a large partitioned table, or getting dialect-specific syntax for Snowflake, BigQuery, Postgres, etc.
质量评分
类似扩展
Xlsx Processing Openai
99Spreadsheet reading, creation, editing, and analysis with visual quality control
Cortex
99Persistent memory and cognitive profiling for Claude Code — thermodynamic memory with heat/decay, intent-aware retrieval, biological plasticity, codebase intelligence, and cognitive profiling. 47 MCP tools with enriched schemas. PostgreSQL + pgvector in CLI mode; automatic SQLite fallback in Cowork/sandboxed mode. Curated wiki (ADRs, specs, lessons) with audit-artefact filtering. Consolidate is set-based SQL batched — decay/plasticity/pruning run 100-500× faster on large stores. Workflow graph with caller-qualified CALLS chains rendering full method-to-method dependencies (native tree-sitter, no AP required). Side panel humanized for non-technical users. Ingests codebase analysis (ai-automatised-pipeline) and PRDs (prd-spec-generator) into wiki + memory + knowledge graph. Docker image available.
Database Design
99Database architecture, schema design, and SQL optimization for production systems
Snowflake Development
98Snowflake SQL, data pipelines (Dynamic Tables, Streams+Tasks), Cortex AI functions, Snowpark Python, and dbt integration. Includes query helper script, 3 reference guides, and troubleshooting.
Gh Star History
97可视化 GitHub star 历史记录和区域细分,生成交互式图表
Database Migrations
95Database migration automation, observability, and cross-database migration strategies