9 godzin(y) temu -
[center]![[Obrazek: 513f8ae136a88a704ccfab2138c09f37.jpg]](https://i126.fastpic.org/big/2025/1224/37/513f8ae136a88a704ccfab2138c09f37.jpg)
Master Data Analysis And Eda For Machine Learning Projects
Published 12/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 193.21 MB[/center]
| Duration: 0h 44m
Master Exploratory Data Analysis with Python to build strong foundations for Machine Learning & AI projects
What you'll learn
Master exploratory data analysis (EDA) to understand exploratory data patterns before applying machine learning models.
Perform exploratory data analysis in Python using pandas for real-world python data analysis workflows.
Build strong EDA workflows that support accurate machine learning python and AI ML model development.
Analyze data distributions, outliers, and relationships for reliable data science and ML decision making.
Prepare clean, insight-driven datasets that improve machine learning, AI, and end-to-end data analysis results.
Requirements
Basic understanding of Python
Familiarity with variables, loops, and functions
No prior experience in EDA, machine learning, or data science is required
Description
What is Exploratory Data Analysis (EDA)?Exploratory Data Analysis (EDA) is the most critical first step in any data analysis, data science, or machine learning project. EDA allows you to explore, understand, and validate your exploratory data before applying models. Through visualizations, statistics, and structured exploration, EDA helps uncover patterns, trends, anomalies, missing values, and outliers that directly impact model performance.In this course, you will learn exploratory data analysis EDA from scratch using Python, focusing on real-world machine learning and AI ML project workflows.Importance of EDA in Data Science & Machine LearningEDA is not optional - it is mandatory for reliable machine learning python pipelines. Many ML failures happen not because of algorithms, but because EDA was ignored or done incorrectly.EDA helps you:Understand data behavior before modelingImprove feature selection and engineeringReduce bias and noise in datasetsIncrease accuracy and stability of ML modelsSupport better decisions in AI, ML, and data engineeringWhether you are working in python data analysis, data science, or machine learning A-Z, strong EDA skills separate average practitioners from professionals.EDA Workflow (Step-by-Step)You will follow a professional EDA workflow used in industry-level machine learning projects
ataset understanding & structureUnivariate analysisBivariate & multivariate analysisMissing value detectionOutlier identificationData distribution & imbalance checksFeature relationships & correlationsInsights for ML readinessEach step is demonstrated using exploratory data analysis in Python.EDA Libraries CoveredYou will gain hands-on experience with industry-standard python EDA tools
andas for data manipulationNumPy for numerical analysisMatplotlib & Seaborn for visualizationStatistical techniques used in data analysis and machine learningThese tools form the backbone of modern python, ML, and AI workflows.Key Benefits of Exploratory Data Analysis (EDA)By completing this course, you will be able to
erform confident exploratory data analysisDetect hidden issues before model trainingImprove machine learning accuracyMake better feature engineering decisionsBuild strong foundations for AI and MLWork effectively in data science and data engineering rolesTransition smoothly into advanced machine learning python projectsCourse Progress & Future ChaptersCurrently, one foundational chapter is uploaded covering core EDA concepts.This course includes nearly 10 planned chapters, each with practical, real-world datasets.Outlines for upcoming chapters will be added progressively as new content is uploaded, ensuring continuous learning and updates.
Beginners starting python for data science and machine learning,Students enrolled in machine learning A-Z or AI ML learning paths,Aspiring data analysts wanting strong EDA and data analysis skills,ML beginners who struggle with exploratory data analysis EDA,Professionals transitioning into data science or data engineering,Anyone using pandas and Python for real-world exploratory data tasks
![[Obrazek: 513f8ae136a88a704ccfab2138c09f37.jpg]](https://i126.fastpic.org/big/2025/1224/37/513f8ae136a88a704ccfab2138c09f37.jpg)
Master Data Analysis And Eda For Machine Learning Projects
Published 12/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 193.21 MB[/center]
| Duration: 0h 44m
Master Exploratory Data Analysis with Python to build strong foundations for Machine Learning & AI projects
What you'll learn
Master exploratory data analysis (EDA) to understand exploratory data patterns before applying machine learning models.
Perform exploratory data analysis in Python using pandas for real-world python data analysis workflows.
Build strong EDA workflows that support accurate machine learning python and AI ML model development.
Analyze data distributions, outliers, and relationships for reliable data science and ML decision making.
Prepare clean, insight-driven datasets that improve machine learning, AI, and end-to-end data analysis results.
Requirements
Basic understanding of Python
Familiarity with variables, loops, and functions
No prior experience in EDA, machine learning, or data science is required
Description
What is Exploratory Data Analysis (EDA)?Exploratory Data Analysis (EDA) is the most critical first step in any data analysis, data science, or machine learning project. EDA allows you to explore, understand, and validate your exploratory data before applying models. Through visualizations, statistics, and structured exploration, EDA helps uncover patterns, trends, anomalies, missing values, and outliers that directly impact model performance.In this course, you will learn exploratory data analysis EDA from scratch using Python, focusing on real-world machine learning and AI ML project workflows.Importance of EDA in Data Science & Machine LearningEDA is not optional - it is mandatory for reliable machine learning python pipelines. Many ML failures happen not because of algorithms, but because EDA was ignored or done incorrectly.EDA helps you:Understand data behavior before modelingImprove feature selection and engineeringReduce bias and noise in datasetsIncrease accuracy and stability of ML modelsSupport better decisions in AI, ML, and data engineeringWhether you are working in python data analysis, data science, or machine learning A-Z, strong EDA skills separate average practitioners from professionals.EDA Workflow (Step-by-Step)You will follow a professional EDA workflow used in industry-level machine learning projects
ataset understanding & structureUnivariate analysisBivariate & multivariate analysisMissing value detectionOutlier identificationData distribution & imbalance checksFeature relationships & correlationsInsights for ML readinessEach step is demonstrated using exploratory data analysis in Python.EDA Libraries CoveredYou will gain hands-on experience with industry-standard python EDA tools
andas for data manipulationNumPy for numerical analysisMatplotlib & Seaborn for visualizationStatistical techniques used in data analysis and machine learningThese tools form the backbone of modern python, ML, and AI workflows.Key Benefits of Exploratory Data Analysis (EDA)By completing this course, you will be able to
erform confident exploratory data analysisDetect hidden issues before model trainingImprove machine learning accuracyMake better feature engineering decisionsBuild strong foundations for AI and MLWork effectively in data science and data engineering rolesTransition smoothly into advanced machine learning python projectsCourse Progress & Future ChaptersCurrently, one foundational chapter is uploaded covering core EDA concepts.This course includes nearly 10 planned chapters, each with practical, real-world datasets.Outlines for upcoming chapters will be added progressively as new content is uploaded, ensuring continuous learning and updates.Beginners starting python for data science and machine learning,Students enrolled in machine learning A-Z or AI ML learning paths,Aspiring data analysts wanting strong EDA and data analysis skills,ML beginners who struggle with exploratory data analysis EDA,Professionals transitioning into data science or data engineering,Anyone using pandas and Python for real-world exploratory data tasks
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