Data Munging to Wrangling - 7 Steps to Mastering Data Preparation for Data Science
Offered By: PASS Data Community Summit via YouTube
Course Description
Overview
Learn the essential steps and techniques for mastering data preparation in data science projects through this comprehensive conference talk. Explore the critical importance of data quality in AI and machine learning systems, and discover why data scientists spend up to 80% of their time on data preparation and cleaning. Gain insights into the seven key steps for effective data munging and wrangling, including sourcing, preparing, transforming, and cleaning data. Understand best practices for implementing a robust data preparation process to ensure clean, consistent, and accurate data for training machine learning models. Enhance your skills in handling the crucial pre-processing phase of AI/ML projects and improve the predictive power of your trained models.
Syllabus
Data Munging to Wrangling - 7 Steps to Mastering Data Preparation for Data Science - Natasha Balac
Taught by
PASS Data Community Summit
Related Courses
Passion Driven StatisticsWesleyan University via Coursera Machine Learning With Big Data
University of California, San Diego via Coursera Big Data - Capstone Project
University of California, San Diego via Coursera Data Science at Scale - Capstone Project
University of Washington via Coursera Анализ данных: финальный проект
Moscow Institute of Physics and Technology via Coursera