11-16-2024, 09:26 AM
Exploratory Data Analysis In Python, Pandas & Excel
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.53 GB | Duration: 2h 42m
Analyze data quickly and easily with Python's powerful pandas library! All datasets included -- beginners welcome!
[b]What you'll learn[/b]
Exploratory data analysis with Excel, Pandas & Python
A course about how to approach a dataset for the first time
How to perform EDA Analysis with Power Query
Apply your skills to real-life business cases
Data Analysis & Exploratory Data Analysis
[b]Requirements[/b]
Basic / intermediate experience with Microsoft Excel or another spreadsheet software (common functions, vlookups, Pivot Tables etc)
[b]Description[/b]
Master Data Analysis: Python, Statistics, EDA, Feature Engineering, Power BI, and SQL Server in Comprehensive B in Comprehensive Bootcamp. Step-by-step projects with clear explanations. EDA is an important step of data science and machine learning.With this course, the student will learn:How to visualize information that is hidden inside the datasetHow to visualize the correlation and the importance of the columns of a datasetSome useful Python librariesThis is the best course for people who have just learnt python basics(prerequisite for this course) and want to become Data Analyst/Data Scientist.Before diving into data modeling, it's crucial to understand your data. EDA is the process of analyzing data sets to summarize their main characteristics, often with visual methods. You'll learn how to identify trends, patterns, and outliers using visualization tools like Matplotlib and Seaborn. This step is essential for uncovering insights and ensuring data quality.Everyone who want to step into Data Science/Data Analytics. Learn to build interactive and insightful dashboards using Power BI, applying DAX for complex calculations, and integrating real-world data to produce reports.Resolve common issues in broken or incomplete data sets. Learn python in detail and get exposure. good luck and hands on python.
Overview
Section 1: Basics Concepts Data Analysis
Lecture 1 Introduction to Data Analysis
Lecture 2 Understanding Data
Lecture 3 Understanding Data II
Lecture 4 Role of data in business
Lecture 5 Rise of Data Driven Culture
Lecture 6 Role of Data Engineer
Lecture 7 Role of Business Intelligence Analyst
Section 2: Understanding Data Analyst Job Description
Lecture 8 Data Analyst Job Description
Lecture 9 Data Analysis Tools
Section 3: Understanding Different Roles in Data Science Field
Lecture 10 Data Analyst Role
Lecture 11 Role of Data Scientist
Section 4: Exploratory Data Analysis with Power Query
Lecture 12 introduction to Power query
Lecture 13 Data Tranformation with Power Query
Lecture 14 Custom Column Creation Transformation
Lecture 15 How to Apply if condition
Lecture 16 Fill Series with Power Query
Lecture 17 Delimeters Remove
Lecture 18 How to Append Excel Sheet in 1 Master Sheet
Section 5: Exploratory Data Analysis with Excel
Lecture 19 EDA with Microsoft Excel
Lecture 20 Live Operation with Power Query
Lecture 21 How to change Data Types
Section 6: Final Assignment for Exploratory Data Analysis
Lecture 22 Final Assignments for EDA
Section 7: Introduction to Pandas Library
Lecture 23 What is Pandas
Lecture 0 How to Install Python
Lecture 24 How to Import Libraries in VS Code
Lecture 25 How to save data set
Lecture 26 how to get column information
Lecture 27 How to perform Descriptive Analysis
Lecture 28 How to get unique values
Lecture 29 How to filter Data
Lecture 30 How to filter specific Records
Lecture 31 Data Filter
Lecture 32 Null value Sum
Lecture 33 How to group Data
Lecture 34 How to Replace Null Values
Section 8: Data Visualization
Lecture 35 Data Visualization Count Plot
Lecture 36 Histogram Plot
Lecture 37 Bar Plot
Lecture 38 Scatter Plot
Lecture 39 Box Plot
Section 9: Pandas Cheat Sheet
Lecture 40 Pandas Cheat Sheet
Lecture 41 what is data cleaning
Section 10: Final Assignment for Pandas
Lecture 42 Final Assignment for Pandas
Data analysts and business analysts