Data Quality Auditor
Skill Verified ActiveAudit datasets for completeness, consistency, accuracy, and validity. Profile data distributions, detect anomalies and outliers, surface structural issues, and produce an actionable remediation plan.
Ensure the integrity and reliability of datasets by systematically identifying and reporting on quality issues, enabling informed decision-making and preventing downstream analysis errors.
Features
- Comprehensive data profiling (shape, types, distributions)
- Missing value analysis and mechanism classification (MCAR/MAR/MNAR)
- Outlier detection using IQR, Z-score, and modified Z-score methods
- Generation of a Data Quality Score (DQS) with actionable remediation plans
- Support for monitoring threshold generation for data pipelines
Use Cases
- Auditing new datasets before ingestion into analytical pipelines
- Investigating suspected data quality issues in existing datasets
- Establishing data quality benchmarks for ongoing monitoring
- Assessing dataset readiness for machine learning model training
Non-Goals
- Designing or optimizing database schemas
- Building or managing ETL pipelines
- Performing financial model validation
- Performing automated data cleaning without domain review
Installation
First, add the marketplace
/plugin marketplace add alirezarezvani/claude-skills/plugin install data-quality-auditor@claude-code-skillsQuality Score
VerifiedTrust Signals
Similar Extensions
Data Quality Frameworks
97Implement data quality validation with Great Expectations, dbt tests, and data contracts. Use when building data quality pipelines, implementing validation rules, or establishing data contracts.
Senior Data Engineer
95Data engineering skill for building scalable data pipelines, ETL/ELT systems, and data infrastructure. Expertise in Python, SQL, Spark, Airflow, dbt, Kafka, and modern data stack. Includes data modeling, pipeline orchestration, data quality, and DataOps. Use when designing data architectures, building data pipelines, optimizing data workflows, implementing data governance, or troubleshooting data issues.
Explore Data
77Profile 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.
OraClaw Forecast
100Time series forecasting for AI agents. ARIMA and Holt-Winters predictions with confidence intervals. Predict revenue, traffic, prices, or any sequential data. Sub-5ms inference.
Measure Dashboard Requirements
100Specifies requirements for an analytics dashboard including metrics, visualizations, filters, and data sources. Use when requesting dashboards from data teams, defining KPI tracking, or documenting reporting needs.
Meta Observer
100Track skill performance and emerging patterns