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Mastering Data Science with R: From Beginner to Master.

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Desmond Otieno Onam

29:50:13

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  • 1.1 Beginners R Programming Assignment.docx
  • 1.2 Introduction to Data Science and R Programming.pdf
  • 1. Introduction to Data Science and R Programming.mp4
    01:49:19
  • 2.1 Introduction to Data Preparation Assignment.docx
  • 2.2 Introduction to data presentation.pdf
  • 2. Introduction to Data Preparation.mp4
    01:47:00
  • 3.1 Data and Introduction to Functions.docx
  • 3.2 Data and Introduction to Functions.pdf
  • 3. Data and Introduction to Functions.mp4
    01:30:25
  • 4.1 Functions assignment.docx
  • 4.2 Functions.pdf
  • 4. Functions.mp4
    01:32:44
  • 1.1 Introduction to R statements Assignment.docx
  • 1.2 Introduction to R statements.pdf
  • 1. Introduction to R statements.mp4
    01:18:01
  • 2.1 Data Import Assignment.docx
  • 2.2 Data Import.pdf
  • 2. Data Import.mp4
    01:46:59
  • 3.1 Data Export and Missing Values - Assignment.docx
  • 3.2 Data Export and Missing Values.pdf
  • 3. Data Export and missing Values.mp4
    01:38:58
  • 4.1 Correlations Assignment.docx
  • 4.2 Correlations.pdf
  • 4. Correlations.mp4
    01:32:01
  • 1.1 Introduction to visualization assignemnt.docx
  • 1.2 introduction to visualization.pdf
  • 1. Introduction to Visualization.mp4
    01:39:52
  • 2.1 Charts Assignment.docx
  • 2.2 Charts.pdf
  • 2. Charts.mp4
    01:21:00
  • 3.1 Assignment Comparing Means in R.docx
  • 3.2 COMPARING MEANS.pdf
  • 3. Comparing Means.mp4
    01:33:05
  • 4.1 Assignment Introduction to ANOVA in R.docx
  • 4.2 INTRODUCTION TO ANOVA.pdf
  • 4. Introduction to ANOVA.mp4
    01:13:49
  • 1.1 Regression Analysis Assignment.docx
  • 1.2 Regression Analysis.pptx
  • 1. Regression Analysis.mp4
    01:42:35
  • 2.1 Decision Trees and Random Forest Assignment.docx
  • 2.2 Decision Trees and Random Forest.pptx
  • 2. Decision Trees and Random Forest.mp4
    01:36:31
  • 3.1 Unsupervised Machine Learning Assignment .docx
  • 3.2 UNSUPERVISED MACHINE LEARNING.pptx
  • 3. Unsupervised Machine Learning.mp4
    01:32:13
  • 4.1 End-to-End Machine Learning Project in R .pptx
  • 4. End-to-end Machine Learning project in R.mp4
    01:41:29
  • 1.1 Time Series Analysis Assignment.docx
  • 1.2 TIME SERIES ANALYSIS.pptx
  • 1. Time Series Analysis.mp4
    34:59
  • 2.1 Time Series Analysis continued Assignment.docx
  • 2.2 TIME SERIES ANALYSIS CONTINUED.pptx
  • 2. Time Series Analysis Continued.mp4
    01:38:22
  • 3.1 Dashboards in R - Assignment.docx
  • 3.2 Dashboards In R.pptx
  • 3. Dashboards In R.mp4
    01:07:05
  • 4.1 Capstone Project.docx
  • 4.2 R MARKDOWNS AND NOTEBOOKS.pptx
  • 4. R Markdown and Notebooks.mp4
    01:13:46
  • Description


    R programming for Data Science

    What You'll Learn?


    • Introduction to data science and R Programming
    • Intermediate R Programming and working with files
    • Data Visualization and Comparing means with Statistics
    • Machine Learning
    • Time Series Analysis, working with Dashboards and Reporting in R

    Who is this for?


  • Beginner R programming and Data Science Enthusiasts
  • What You Need to Know?


  • No Programming Experience needed
  • You need a little understanding of Statistics
  • More details


    Description

    Data Science with R is a comprehensive course designed to equip learners with the essential skills and knowledge to perform data analysis, machine learning, and time series analysis using the R programming language. Participants will start with an introduction to R and its data types, followed by learning data preparation techniques using dplyr functions. The course will then delve into programming concepts, data analysis, and machine learning with a strong emphasis on hands-on practice. Throughout the course, participants will explore various statistical methods, such as regression analysis, decision trees, random forest, and clustering, to make data-driven decisions and gain insights from data. Furthermore, learners will be guided through the end-to-end machine learning process, including data preprocessing, model selection, training, evaluation, and tuning. The course will also cover advanced topics, including time series analysis, where participants will learn to work with temporal data, detect trends, and seasonality, and make predictions using time series models. Additionally, learners will discover how to create interactive dashboards.


    Course Objectives: 1. Master R Programming: Develop a strong foundation in R programming, including data manipulation, control structures, importing and exporting data, and working with various data structures. 2. Data Analysis Techniques: Learn essential data analysis techniques, such as scatter plots, box plots, bar charts, histograms, and correlation, to explore and visualize data for insights. 3. Regression Analysis: Understand the principles of simple and multiple linear regression, stepwise regression, and generalized linear models to make predictions and understand relationships between variables. 4. Decision Trees and Random Forest: Explore classification trees, build decision trees, and implement random forests for predictive modeling and ensemble learning. 5. Unsupervised Machine Learning: Master unsupervised learning algorithms, including k-means clustering and hierarchical clustering, to discover patterns and groups within data. 6. End-to-End Machine Learning Project: Gain hands-on experience in the complete machine learning process, from data preprocessing to model training, evaluation, and tuning, culminating in a comprehensive machine learning project. 7. Time Series Analysis: Acquire skills in handling time series data, decomposing time series, forecasting with exponential smoothing and Holt-Winters method, and modeling stationary time series using autoregressive (AR) and moving average (MA) models. 8. Interactive Dashboards and Reporting: Learn to create interactive dashboards using R Shiny and build dynamic reports with R Markdown for reproducible and visually engaging data presentations.

    Who this course is for:

    • Beginner R programming and Data Science Enthusiasts

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    Desmond Otieno Onam
    Desmond Otieno Onam
    Instructor's Courses
    Innovative, technically-astute Machine Learning Data Engineer with a stellar career history in application design, predictive modeling, data mining, and machine learning algorithms. Highly experienced in writing, debugging, and understanding large codes and deep learning algorithms, as well as building complex neural networks through various programming languages. Possess an unbridled passion for machine learning with comprehensive knowledge of machine learning concepts and other related technologies. Extensive expertise and high proficiency with structures, semi-structured and unstructured data, using a broad range of data science programming languages and big data tools, including R, Python, Spark, SQL, PowerBI, Scikit Learn, and Hadoop Map Reduce. Adept at using pandas, NumPy, Seaborn, SciPy, matplotlib, sci-kit-learn, and NLTK in Python to develop various machine learning algorithms. Experienced data science professional with a proven track record in training, delivering courses, and mentoring trainees in the fields of data science and analytics, Machine Learning, and Data Engineering.Awarded “Best Machine Learning Data Engineering and Web3 Tutor” at 10 Academy for delivering outstanding data engineering, web3, and machine learning courses to students.Awarded “Best Data Science Internship Instructor” at SNVA Edutech, Careerera for best mentoring, instructing, and guiding interns in Data Science through project creation and simulation of real-world projects.Attained 96% client satisfaction and Best mentor at NextHikes for delivering outstanding Data Science Analytics projects on time, and guiding interns in the department of Data Science as a Lead Data Scientist.Attained 90%+ client satisfaction by developing customized data science training programs for clients across various industries and projects in freelance.Featured in Africa's Voices Foundation as a creative and awarded for better solutions in creating automated analysis that eased the data analytics work.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 20
    • duration 29:50:13
    • Release Date 2024/05/18