Generates and executes Python pipelines for automated data cleaning, transformation, validation, and ETL in ML workflows. Activates on data prep or ETL requests.
From data-preprocessing-pipelinenpx claudepluginhub nickloveinvesting/nick-love-plugins --plugin data-preprocessing-pipelineThis skill is limited to using the following tools:
assets/README.mdassets/example_data.csvreferences/README.mdscripts/README.mdscripts/handle_errors.pyscripts/pipeline.pyscripts/transform_data.pyscripts/validate_data.pyGuides Payload CMS config (payload.config.ts), collections, fields, hooks, access control, APIs. Debugs validation errors, security, relationships, queries, transactions, hook behavior.
Designs, audits, and improves analytics tracking systems using Signal Quality Index for reliable, decision-ready data in marketing, product, and growth.
Enforces A/B test setup with gates for hypothesis locking, metrics definition, sample size calculation, assumptions checks, and execution readiness before implementation.
Construct and execute automated data preprocessing pipelines for cleaning, transforming, and validating ML-ready datasets.
construct and execute automated data preprocessing pipelines, ensuring data quality and readiness for machine learning. It streamlines the data preparation process by automating common tasks such as data cleaning, transformation, and validation.
This skill activates when you need to:
User request: "Preprocess the customer data from the CSV file to remove duplicates and handle missing values."
The skill will:
User request: "Create an ETL pipeline to transform the sensor data from the database into a format suitable for time series analysis."
The skill will:
This skill can be integrated with other Claude Code skills for data analysis, model training, and deployment. It provides a standardized way to prepare data for these tasks, ensuring consistency and reliability.
The skill produces structured output relevant to the task.