In this video, we dive into Exploratory Data Analysis (EDA) using powerful Python libraries like pandas, numpy, matplotlib, and seaborn. Whether you're a beginner or brushing up your data science skills, this step-by-step guide will help you understand your dataset better and prepare it for modeling.
Support me:
BuyMeACoffee: https://buymeacoffee.com/dsfe
Patreon: / dsfeorg
Ko-fi: https://ko-fi.com/dsfe
Follow me:
Twitter: https://x.com/dsfeorg
Github: https://github.com/dsfeorg
Topics Covered:
1. Data Inspection: Get a first look at your dataset
2. Data Validation: Identify and resolve inconsistencies
3. Data Summarization: Use descriptive statistics to understand distributions
4. Handling Missing Data: Clean, remove, impute missing data effectively
5. Exploring Categorical Data: Analyze and visualize categorical features
6. Exploring Numeric Data: Dig into numeric trends and patterns
7. Handling Outliers: Detect and manage extreme values
Python libraries Used: pandas, numpy, matplotlib, seaborn
Chapters:
0:00 Introduction
1:52 Data Inspection
5:43 Data Validation
9:11 Data Summarization
12:15 Handling missing data
15:22 Imputing missing data
16:00 Exploring categorical data
20:00 Exploring numerical data
21:53 Handling Outliers
Datasets:
Penguins data: https://github.com/dsfeorg/EDA_python...
Modified penguins data: https://github.com/dsfeorg/EDA_python...
Salaries data: https://github.com/dsfeorg/EDA_python...
By the end of this tutorial, you’ll have a solid foundation in EDA and be ready to extract insights from any dataset.
Don’t forget to Like, Share, and Subscribe for more data science content!
#pandaslibrary #python #dataanalysis
На этой странице сайта вы можете посмотреть видео онлайн Exploratory Data Analysis in Python | pandas, numpy, matplotlib, seaborn длительностью часов минут секунд в хорошем качестве, которое загрузил пользователь Data Science For Everyone 31 Май 2025, поделитесь ссылкой с друзьями и знакомыми, на youtube это видео уже посмотрели 3,440 раз и оно понравилось 166 зрителям. Приятного просмотра!