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Fast-Track Data Analytics 3 in 1- Excel Python + ChatGPT 3.5

  • Development
  • Jan 05, 2025
SynopsisFast-Track Data Analytics 3 in 1: Excel Python + ChatGPT 3.5,...
Fast-Track Data Analytics 3 in 1- Excel Python + ChatGPT 3.5  No.1

Fast-Track Data Analytics 3 in 1: Excel Python + ChatGPT 3.5, available at $19.99, has an average rating of 3.75, with 81 lectures, 44 quizzes, based on 93 reviews, and has 1233 subscribers.

You will learn about Learn Pythons syntax, data types, variables, and operators to construct simple programs and execute basic functions. To manage program flow, use loops and conditional statements like if, elif, and else. Learn to use Python lists, dictionaries, tuples, and sets. Learn to access, change, and manipulate these structures for various programming needs. Understand and apply techniques for cleaning and preparing raw data in Excel. Learn to identify and handle missing data, outliers, and inconsistencies. Utilize Excel functions and tools for data validation and transformation. Explore fundamental statistical concepts and their application in Excel. Learn to perform descriptive statistics, inferential statistics, and hypothesis testing using Excel functions and tools. Understand how to interpret and communicate statistical results effectively. Design and build interactive dashboards in Excel for effective data visualization. Learn to use PivotTables, PivotCharts, and slicers to create dynamic and user-friendly dashboards. Explore various data visualization techniques available in Excel, including charts, graphs. Learn and apply the data analysis methodology, from data cleaning to hypothesis testing, in real-world applications. Increase your critical thinking and problem-solving skills for data analysis, decision-making, and recommendation. Use value counts, percentage, group by, pivot tables, correlation, and regression professionally and realistically. Solve over 60+ real-world data analytical questions to practice applying data analysis to various circumstances. Emphasize practical application to gain valuable insights from data and create educated judgments and suggestions. This course is ideal for individuals who are Data Enthusiasts and Aspiring Analysts or Python and Excel Enthusiasts It is particularly useful for Data Enthusiasts and Aspiring Analysts or Python and Excel Enthusiasts.

Enroll now: Fast-Track Data Analytics 3 in 1: Excel Python + ChatGPT 3.5

Summary

Title: Fast-Track Data Analytics 3 in 1: Excel Python + ChatGPT 3.5

Price: $19.99

Average Rating: 3.75

Number of Lectures: 81

Number of Quizzes: 44

Number of Published Lectures: 81

Number of Published Quizzes: 44

Number of Curriculum Items: 126

Number of Published Curriculum Objects: 126

Original Price: $27.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn Pythons syntax, data types, variables, and operators to construct simple programs and execute basic functions.
  • To manage program flow, use loops and conditional statements like if, elif, and else.
  • Learn to use Python lists, dictionaries, tuples, and sets.
  • Learn to access, change, and manipulate these structures for various programming needs.
  • Understand and apply techniques for cleaning and preparing raw data in Excel.
  • Learn to identify and handle missing data, outliers, and inconsistencies.
  • Utilize Excel functions and tools for data validation and transformation.
  • Explore fundamental statistical concepts and their application in Excel.
  • Learn to perform descriptive statistics, inferential statistics, and hypothesis testing using Excel functions and tools.
  • Understand how to interpret and communicate statistical results effectively.
  • Design and build interactive dashboards in Excel for effective data visualization.
  • Learn to use PivotTables, PivotCharts, and slicers to create dynamic and user-friendly dashboards.
  • Explore various data visualization techniques available in Excel, including charts, graphs.
  • Learn and apply the data analysis methodology, from data cleaning to hypothesis testing, in real-world applications.
  • Increase your critical thinking and problem-solving skills for data analysis, decision-making, and recommendation.
  • Use value counts, percentage, group by, pivot tables, correlation, and regression professionally and realistically.
  • Solve over 60+ real-world data analytical questions to practice applying data analysis to various circumstances.
  • Emphasize practical application to gain valuable insights from data and create educated judgments and suggestions.
  • Who Should Attend

  • Data Enthusiasts and Aspiring Analysts
  • Python and Excel Enthusiasts
  • Target Audiences

  • Data Enthusiasts and Aspiring Analysts
  • Python and Excel Enthusiasts
  • Chapter 1: Introduction

    Welcome to the comprehensive and dynamic course, “Data Analysis 2 in 1: Excel & Python for A-Z Data Analysis.” This meticulously crafted program is designed to empower learners with a versatile skill set, encompassing the efficient data manipulation capabilities of Excel, the scalability and coding flexibility of Python, and the intuitive coding assistance from ChatGPT. As technology continues to evolve, proficiency in multiple tools becomes essential. This course aims to provide a holistic understanding of the data analysis workflow, ensuring that learners can seamlessly transition from Excel to Python, while also adding a touch of AI for an enhanced coding experience.

    Chapter 2: Excel Mastery

    The course kicks off with a deep dive into Excel, teaching you to wield its powerful features for data cleaning, transformation, and visualization. From managing missing data and outliers to leveraging advanced Excel functions and tools for statistical analysis, you’ll gain a solid foundation in Excel’s capabilities. The focus on interactive dashboard creation using PivotTables, PivotCharts, and various visualization techniques will empower you to present insights in a compelling and user-friendly manner.

    Chapter 3: Python Basics and Beyond

    Building on your Excel skills, the course introduces Python programming basics. You’ll learn the syntax, data types, and control structures, enabling you to construct simple programs. The emphasis is on practical application – generating, copying/pasting, adjusting, and running code with ease. Python’s ability to handle large datasets becomes evident, making it the tool of choice for scenarios where Excel’s limitations are surpassed. This section ensures you’re proficient in both tools, providing adaptability in real-world data analysis scenarios.

    Chapter 4: Statistical Analysis and Interpretation

    As the course progresses, you’ll delve into fundamental statistical concepts, applying them using both Excel and Python. Descriptive statistics, inferential statistics, and hypothesis testing are covered comprehensively. You’ll learn not just how to perform these analyses but, crucially, how to interpret and communicate the results effectively. This knowledge forms the backbone of making informed decisions and recommendations based on data-driven insights.

    Chapter 5: Real-world Application and Problem-solving

    The final section of the course is dedicated to real-world application. You’ll tackle over 60+ data analytical questions, honing your skills in solving practical problems. Value counts, percentage calculations, grouping data, and utilizing advanced statistical techniques become second nature. Emphasis is placed on critical thinking and problem-solving, ensuring that you not only understand the tools and techniques but can confidently apply them to various circumstances. By the course’s conclusion, you’ll be equipped to navigate the complete data analysis workflow with mastery and confidence.

    Course Curriculum

    Chapter 1: Understanding the concept of data analysis

    Lecture 1: Introduction to data analysis

    Lecture 2: Steps in data analysis workflow

    Lecture 3: Get special handbooks

    Chapter 2: Understanding the concept of statistical analysis

    Lecture 1: Introduction to statistical analysis

    Lecture 2: Various aspects of hypothesis testing

    Lecture 3: Complete hypothesis testing workflow

    Chapter 3: Excel – Data Cleaning and Manipulation

    Lecture 1: Identify and replacing missing values

    Lecture 2: Practice file – Missing values

    Lecture 3: Dealing with inconsistent values

    Lecture 4: Practice file – Inconsistent values

    Lecture 5: Dealing with outliers

    Lecture 6: Practice data – Outliers

    Lecture 7: Dealing with duplicated values

    Lecture 8: Practice data – Duplicated values

    Chapter 4: Excel – Exploratory Data Analysis

    Lecture 1: Install Excel Data Analysis Tool pack (If Necessary)

    Lecture 2: Frequency and percentage analysis

    Lecture 3: Practice file – Frequency and percentage analysis

    Lecture 4: Descriptive analysis (mean, std. dev., skewness, etc.)

    Lecture 5: Practice file – Descriptive analysis

    Lecture 6: Group by analysis in excel pivot table

    Lecture 7: Practice file – Group by analysis

    Lecture 8: Crosstabulation analysis in excel pivot table

    Lecture 9: Practice file – Crosstabulation analysis

    Chapter 5: Excel – Statistical Analysis and Hypothesis Testing

    Lecture 1: Independent sample t-test

    Lecture 2: Practice file – Independent sample t-test

    Lecture 3: Paired sample t-test

    Lecture 4: Practice file – Paired sample t-test

    Lecture 5: Analysis of variance (ANOVA)

    Lecture 6: Practice file – ANOVA

    Lecture 7: Pearson correlation analysis

    Lecture 8: Practice file – Correlation analysis

    Lecture 9: Multiple linear regression analysis

    Lecture 10: Practice file – Regression analysis

    Chapter 6: Excel – Putting All Insights in One Place

    Lecture 1: Creating canvas for dashboard

    Lecture 2: Creating the final dashboard

    Lecture 3: Practice file – Dashboard

    Chapter 7: Setting Up Your Data Analysis Environment

    Lecture 1: Installing Python and Jupyter Notebook

    Lecture 2: Setting Up The AI Environment: ChatGPT

    Lecture 3: Practice dataset and quizz instructions

    Chapter 8: Python – Programming Fundamentals Level 1

    Lecture 1: Your First Python Code: Getting Started

    Lecture 2: Variables and naming conventions

    Lecture 3: Data types: integers, float, strings, boolean

    Lecture 4: Type conversion and casting

    Lecture 5: Arithmetic operators (+, -, *, /, %, **)

    Lecture 6: Comparison operators (>, =, <=, ==, !=)

    Lecture 7: Logical operators (and, or, not)

    Chapter 9: Python – Programming Fundamentals Level 2

    Lecture 1: Lists: creation, indexing, slicing, modifying

    Lecture 2: Sets: unique elements, operations

    Lecture 3: Dictionaries: key-value pairs, methods

    Lecture 4: Conditional statements (if, elif, else)

    Lecture 5: Logical expressions in conditions

    Lecture 6: Looping structures (for loops, while loops)

    Lecture 7: Defining, Creating and Calling functions

    Chapter 10: Python – Cleaning Data from Scratch

    Lecture 1: Importing dataset into Jupyter Notebook

    Lecture 2: Imputing missing values with SimpleImputer

    Lecture 3: Finding and dealing with inconsistent data

    Lecture 4: Identify and assign correct dataset

    Lecture 5: Dealing with duplicate values

    Chapter 11: Python – Various Data Manipulation Methods

    Lecture 1: Sorting and arranging dataset

    Lecture 2: Conditional Filtering of dataset

    Lecture 3: Merging extra data with the dataset

    Lecture 4: Concatenating variables within dataset

    Chapter 12: Python – Exploratory Data Analysis

    Instructors

  • Fast-Track Data Analytics 3 in 1- Excel Python + ChatGPT 3.5  No.2
    Analytix AI
    Unleashing the Power of Data with AI for Informed Insights.
  • Rating Distribution

  • 1 stars: 3 votes
  • 2 stars: 1 votes
  • 3 stars: 6 votes
  • 4 stars: 7 votes
  • 5 stars: 76 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!