Transform Data: Cleanse, Encode, Validate
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Transform Data: Cleanse, Encode, Validate
This course is part of Blueprint to Bytecode: Architecting Scalable AI Systems Specialization
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What you'll learn
Evaluate and encode categorical features using optimal strategies while measuring and documenting data quality with Great Expectations.
Clean messy real-world fields and build transformation lineage in Python and pandas to produce reliable, model-ready datasets.
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March 2026
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There is 1 module in this course
This course teaches you how to transform real-world datasets into reliable analytical assets through practical, reproducible data-cleaning techniques. Youβll learn how to evaluate categorical features and select optimal encoding strategies, measure and document data quality, and apply effective approaches to handle missing values. Using Python and pandas, you'll practice assessing cardinality, implementing target encoding, validating completeness with Great Expectations, and building transparent transformation lineage. Youβll also clean messy fields such as ages, salary outliers, and dates to ensure consistent model-ready outputs. Designed for analysts, data engineers, and ML practitioners, this course equips you with the job-ready skills needed to prepare high-quality datasets that support trustworthy insights and predictive modeling.
This course teaches you how to transform real-world datasets into reliable analytical assets through practical, reproducible data-cleaning techniques. Youβll learn how to evaluate categorical features and select optimal encoding strategies, measure and document data quality, and apply effective approaches to handle missing values. Using Python and pandas, you'll practice assessing cardinality, implementing target encoding, validating completeness with Great Expectations, and building transparent transformation lineage. Youβll also clean messy fields such as ages, salary outliers, and dates to ensure consistent model-ready outputs. Designed for analysts, data engineers, and ML practitioners, this course equips you with the job-ready skills needed to prepare high-quality datasets that support trustworthy insights and predictive modeling.
What's included
5 videos4 readings4 assignments
5 videosβ’Total 24 minutes
- Welcome and What Encoding Really Solvesβ’5 minutes
- Cardinality Essentials and a Practical Guide to Target Encodingβ’6 minutes
- Data Quality Metrics and Quick Validation with Great Expectationsβ’5 minutes
- Why Missing Data Happens and Why Fixing It Is a Decisionβ’5 minutes
- Congratulations and Continuous Learning Journeyβ’4 minutes
4 readingsβ’Total 28 minutes
- Encoding Options Explained Simplyβ’8 minutes
- Encoding Decision Frameworkβ’4 minutes
- Lineage Documentation: Tracking Your Transformationsβ’8 minutes
- Diagnosing and Handling Missing Data Thoughtfully β’8 minutes
4 assignmentsβ’Total 75 minutes
- Graded Quiz: Encoding, Quality & Missing-Value Masteryβ’20 minutes
- Hands-On Activity: Pick the Right Encoder for Product IDsβ’10 minutes
- Hands-On Activity: Validating Data Quality and Interpreting Results with Great Expectations β’25 minutes
- Hands-On Activity: Clean and Prepare a Messy HR Datasetβ’20 minutes
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