![]() |
|
Learn The Fundamentals Of Data Analytics (Without Coding!) - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Learn The Fundamentals Of Data Analytics (Without Coding!) (/Thread-Learn-The-Fundamentals-Of-Data-Analytics-Without-Coding) |
Learn The Fundamentals Of Data Analytics (Without Coding!) - BaDshaH - 09-20-2023 ![]() Published 9/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 3.97 GB | Duration: 4h 3m Become a Data Analyst and explore data with descriptive statistics and data visualization! [b]What you'll learn[/b] The basics of descriptive statistics (which allows you to summarize information) Data visualization (which allows data to be represented graphically) Traps to avoid (when analyzing data and which it is easy to fall into) Data analysis in the business environment [b]Requirements[/b] There are no prerequisites for this course. [b]Description[/b] If you want to master the fundamentals of Data Analysis, this course is perfect for you!To interpret a massive amount of data that nobody understands, you need to know the basics of data analysis.My name is Louis, and I have been a data analyst for several years now.In this course, we will review all the fundamental concepts to analyze data.This course is designed for three categories of people:Firstly, data analysts who are already working in companies and would like to further master the fundamentals.Secondly, students who have taken statistics courses and would like to explore more practical cases.And finally, the curious ones who are interested in a deep understanding of data.In this course, we will cover:The basics of descriptive statistics (which allows us to summarize information).Data visualization (which allows us to represent data graphically).Pitfalls to avoid when analyzing data and common mistakes to be aware of.Finally, we will talk about data analysis in business.For those without technical skills, don't worry, this course is designed to be accessible to all levels, without requiring any prior knowledge of programming or the use of specific tools.The objective of this course is for you to truly understand the fundamentals of data analysis.You will be guided through your learning in a dynamic environment.This course aims to be clear and well-structured. You will find:Theoretical concepts explained progressively.Many examples to illustrate the theory.Regular reminders to make connections between sections.If you want to master the fundamentals of data analysis, this course is perfect for you!Are you ready to begin? See you very soon! Overview Section 1: Introduction Lecture 1 Structure of the course Section 2: The basics of Descriptive Statistics Lecture 2 Definition of Data Analysis Lecture 3 Data Tables, Database and Views Lecture 4 Definition of Descriptive Statistics Lecture 5 Vocabulary of Descriptive Statistics Lecture 6 Frequency and Percentage Lecture 7 The mode Lecture 8 The mean Lecture 9 The median Lecture 10 The quartiles Lecture 11 The range and the interquartile range Lecture 12 The variance and the standard deviation Lecture 13 Measures of skewness Lecture 14 Measures of kurtosis Lecture 15 The correlation Section 3: Data Visualization Lecture 16 Definition of Data Visualization Lecture 17 Bar charts and histograms Lecture 18 Box plots Lecture 19 Line charts Lecture 20 Stacked area charts Lecture 21 Pie charts Lecture 22 Scatter plots Lecture 23 Sankey diagrams Lecture 24 The correlation matrix Lecture 25 Other examples of data visualization Section 4: Pitfalls to avoid Lecture 26 How to lie with Statistics Lecture 27 Correlation does not imply causation Lecture 28 The dangers of the mean Lecture 29 The trap of seasonality Lecture 30 The misleading axis Lecture 31 Sample size too small Lecture 32 The selection bias Lecture 33 The trap of one dimensional analysis Lecture 34 The Simpson's paradox Section 5: Data Analysis in Business Lecture 35 The corporate Data Analysis "jargon" Lecture 36 The best tools for data analysis Lecture 37 AB testing Lecture 38 Qualitative study Lecture 39 Do I need to be good at maths ? at stats ? at coding ? at AI ? Data analysts who already work in a company and who would like to master the fundamentals more,Students who have taken statistics courses and would like to go further by exploring more practical cases,The curious who are interested in an in-depth understanding of data Homepage Download From Rapidgator Download From Nitroflare Download From DDownload |