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Course overview
Lesson Overview

2.26 – Handling Missing Data in Datasets: Missing data can distort model predictions and reduce accuracy. This lesson focuses on strategies for identifying and addressing incomplete records. Techniques include imputation, deletion, and interpolation based on context. Statistical methods like mean or median replacement preserve dataset balance. More advanced options use predictive modeling to estimate missing values. Managing gaps ensures algorithms learn from reliable information. Clean, complete datasets enhance performance and confidence in results. Handling missing data is a critical skill for maintaining model integrity in real-world machine learning projects.

About this course

A complete 500+ lesson journey from AI fundamentals to advanced machine learning, deep learning, generative AI, deployment, ethics, business applications, and cutting-edge research. Perfect for both beginners and seasoned AI professionals.

This course includes:
  • Step-by-step AI development and deployment projects
  • Practical coding examples with popular AI frameworks
  • Industry use cases and real-world case studies

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