Bootcamp On Data Science Using R Language - 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: Bootcamp On Data Science Using R Language (/Thread-Bootcamp-On-Data-Science-Using-R-Language) |
Bootcamp On Data Science Using R Language - nieriorefasow63 - 12-20-2023 Bootcamp On Data Science Using R Language Published 12/2023 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 4.11 GB | Duration: 7h 13m Building Data Science Pipelines What you'll learn Definition of Data Science Data Collection & Pre-processing Statistics Predictive Modelling Requirements None Description Data science is a multidisciplinary field that uses a combination of techniques, algorithms, processes, and systems to extract meaningful insights and knowledge from structured and unstructured data. Data science is of significant importance in today's world due to its transformative impact on various aspects of business, research, and decision-making. It incorporates elements of statistics, computer science, domain expertise, and data analysis to analyse and interpret complex data. Data science enables organizations to make informed decisions based on data analysis rather than relying solely on intuition or experience. This leads to more accurate and effective decision-making processes. During this course, students will learn the entire process of developing a data science project. During this course, students will learn the nuances of Data science, data collection, data cleaning, data visualization, Significance of statistics and Machine learning etc. We will be using r programming language to develop data pipelines. R is a programming language and environment specifically designed for statistical computing and graphics. It is open-source and widely used by statisticians, data scientists, researchers, and analysts for data analysis, statistical modelling, and visualization. R has a rich ecosystem of packages and libraries that extend its functionality. These packages cover a wide range of domains, from machine learning and data manipulation to bioinformatics and finance. So, let's buckle up!!! Overview Section 1: About the Program Lecture 1 Course Introduction Lecture 2 Course Outline Section 2: Introduction to Data Science Lecture 3 What is Data Science? Lecture 4 What is Data? Lecture 5 What's the Job with Data Lecture 6 Data Science Tools & Technologies Lecture 7 Data Science Process Flow Lecture 8 Applications of Data Science Section 3: Foundations of R Lecture 9 Introduction to R Language Lecture 10 Installation of R Language and R Studio Lecture 11 Handling R Environment Lecture 12 Setting Working Directory Lecture 13 Data Types and Variables Lecture 14 Arithmetic Operations Lecture 15 Data Frames Section 4: Data Collection Lecture 16 Data Science Methodology Lecture 17 Data Collection Techniques Lecture 18 Introduction to Web Scraping Lecture 19 Web Scraping Using R Language Section 5: Data Pre-processing Lecture 20 Significance of Data Pre-processing Lecture 21 Checking Data Formats Lecture 22 Handling Missing Data Lecture 23 Handling Categorical Data Lecture 24 Outlier Analysis Lecture 25 Data Scaling Section 6: Descriptive Statistics Lecture 26 Significance of Statistics in Data Science Lecture 27 Descriptive Statistics Tools for Data Science Lecture 28 Measure of Central Tendency Lecture 29 Variation in Data Lecture 30 Association of Variables Section 7: Inferential Statistics Lecture 31 What is Inferential Statistics? Lecture 32 Confidence Intervals Lecture 33 Confidence Intervals in R Language Lecture 34 Student T-Distribution Lecture 35 T-Test in R Language Lecture 36 Hypothesis Testing Lecture 37 Hypothesis Testing in R Language Section 8: Predictive Modelling Lecture 38 What is Predictive Analytics? Lecture 39 Introduction to Linear Regression Lecture 40 Simple Linear Regression in R Language Lecture 41 Introduction to Multiple Linear Regression Lecture 42 Multiple Linear Regression in R Language Section 9: Classification Lecture 43 Introduction to Classification Models Lecture 44 Introduction to Logistic Regression Lecture 45 Implementation of Logistic Regression Lecture 46 Introduction to Random Forest Classification Lecture 47 Random Forest Classification in R Language Section 10: Dimensionality Reduction Lecture 48 Introduction to Dimensionality Reduction Lecture 49 Introduction to Principle Component Analysis Lecture 50 Principle Component Analysis in R Language Section 11: About the Program Lecture 51 Course Conclusion Anyone interested in the field of Data Science HOMEPAGE DOWNLOAD |