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Overview of Data Science course
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Module 1- Introduction
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Session 1- Introduction to Artificial Intelligence
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Session 2- What is Data Science and roadmap to become a Data Scientist
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Session 3- Databases and Terms
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Module 2- Introduction to R programming
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Session 1- Installation of R studio
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Session 2- Introduction to Programming Language and Understanding R
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Session 3- Data types in R
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Session 4- Operators in R
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Session 5- Conditional Statements
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Session 6- Loops
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Session 7- Functions in R
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Session 8- Lab - R programming
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Module 3- Probability
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Session 1- Introduction to Probability _ Concepts
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Session 2- Probability Uses _ Introduction to Distributions
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Session 3- Discrete Distributions
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Session 4- Continuous Distributions
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Module 4- Data Preprocessing in R
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Session 1- Data Preprocessing _ Data Cleaning
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Session 2- Data Integration
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Session 3- Data Transformation
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Session 4- Preprocessing Implementation
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Module 5- Data Manipulation in R
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Session 1- Apply Family
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Session 2- Dplyr Package
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Session 3- Data Manipulation Implementation
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Module 6- Statistics and Feature Engineering
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Session 1- Statistics Introduction
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Session 2- Statistics Concepts
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Module 7- Introduction to Visualization
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Session 1- Basic Plots
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Session 2- Advance Plots
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Session 3- Visualization on Data
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Module 8- Tableau
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Session 1- Introduction and Installation
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Session 2- Introduction and Data Sources _ Working with Worksheets
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Session 3- Data Filtering _ Sorting
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Session 4- Creating Charts _ Visualization
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Session 5- Dashboarding & Advance Visualizations
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Module 9- Machine Learning
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Session 1- Machine Learning and Concepts
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Session 2- Supervised Machine Learning
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Session 3- Classification _ Techniques
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Session 4- Regression _ Techniques
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Session 5- Unsupervised Machine Learning
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Session 6- Clustering Implementation
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Session 7- Classification and Regression Implementation
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Module 10- Ensemble Method, Deep Learning and Evaluation Metrics
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Session 1- Ensemble Methods
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Session 2- Deep Learning Introduction
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Session 3- Random Forest Implementation
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Resources (Reference files used in lectures)
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Congratulations!
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Data Science Project
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DATA SCIENCE COURSE PROJECT_Description
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CREDIT_CARD_DATASET
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Data Science Final Exam
Preview - Data Science with R
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