Data Science with R Certified Course

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About Course

Course Description: 

This  Data Science with R course introduces learners to data science fundamentals using R programming. Designed for beginners and professionals alike, it focuses on data wrangling, exploratory data analysis, statistical modeling, machine learning, and data visualization using the R ecosystem. By the end of the course, students will be capable of handling real-world data projects using R.

Key Features of Course Divine:

  • Collaboration with E‑Cell IIT Tirupati
  • 1:1 Online Mentorship Platform
  • Credit-Based Certification
  • Live Classes Led by Industry Experts
  • Live, Real-World Projects
  • 100% Placement Support
  • Potential Interview Training
  • Resume-Building Activities

Career Opportunities After Data Science with R Certified Course:

  • Data Analyst
  • Data Scientist
  • Business Intelligence Analyst
  • Machine Learning Engineer
  • Quantitative Analyst
  • Research Scientist
  • Data Engineer
  • Marketing Analyst

Essential Skills you will Develop Data Science with R Certified Course:

  • Statistical Analysis
  • Data Manipulation
  • Data Visualization
  • Programming in R
  • Machine Learning
  • Exploratory Data Analysis

Tools Covered:

  • tidy verse – A collection of packages
  • caret – For building and evaluating machine learning models.
  • table – High-performance data manipulation package.
  • shiny – To build interactive web applications and dashboards.
  • lubricate – For working with date-time data.
  • stringer – For text data cleaning and manipulation.

Syllabus:

Module 1: Introduction to Data Science and R What is Data Science? Applications and Workflow of Data Science Installing R and Studio Basic R Programming: Variables, Data Types, and Operators.

Module 2: Data Structures in R Vectors, Lists, Matrices, Arrays, and Data Frames Indexing and Subletting Factors and Their Use in Data Analysis.

Module 3: Data Import and Export Reading and Writing CSV, Excel, JSON, and Text Files Connecting to Databases (e.g., MySQL, SQLite) Data Scraping and API Data Access.

Module 4: Data Cleaning and Preprocessing Handling Missing Values Data Transformation with String Manipulation using Date-Time Handling using.

Module 5: Exploratory Data Analysis (EDA) Summary Statistics and Distributions Univariate and Bivariate Analysis Outlier Detection and Handling Data Visualization.

Module 6: Statistical Analysis with R Probability Distributions Hypothesis Testing (t-test, chi-square test, ANOVA) Correlation and Covariance Linear and Logistic Regression.

Module 7: Machine Learning with R Supervised vs. Unsupervised Learning Model Building with Decision Trees, Random Forest Clustering: k-means and Hierarchical Clustering Model Evaluation (confusion matrix, ROC, AUC).

Module 8: Advanced Visualization and Reporting Interactive Dashboards with Advanced Plotting with Creating Reproducible Reports using.

Module 9: Time Series and Text Mining  Time Series Analysis with  Introduction to Natural Language Processing with Sentiment Analysis.

Module 10: Capstone Project and Industry Applications Real-world dataset analysis project Domain-specific use cases: Healthcare, Finance, Marketing Best Practices in Data Science Projects Resume & Interview Preparation for Data Science Roles.

Industry Projects:

  • Customer Churn Prediction – Telecom Industry
  • Sales Forecasting – Retail Sector
  • Credit Risk Modeling – Banking

 Who is this program for?

  • Students and Fresh Graduates
  • Working Professionals
  • Statisticians and Analysts

How To Apply:

Mobile: 9100348679

Email: coursedivine@gmail.com

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