Language: English (US)
Data Science With Case Study
https://www.udemy.com/course/r-programming-language-for-data-scientists-data-science-tm/
1. R Programming Language for Data Scientists (Data Science) Overview:- This course introduces the R programming language specifically tailored for Data Science applications. It covers the fundamentals of R and its application in data analysis, visualization, and machine learning. Learning Outcomes:- Master the basics of R programming. Apply R in data manipulation, visualization, and modeling. 2. Data Science Session 1 Overview:- The first session introduces core concepts of Data Science, including data collection, preprocessing, and exploration. Learning Outcomes:- Understand the foundational concepts of Data Science. Learn how to collect and prepare data for analysis. 3. Data Science Session 2 Overview:- This session delves deeper into data analysis techniques and introduces the basics of statistical modeling. Learning Outcomes:- Explore advanced data analysis techniques. Begin working with statistical models in Data Science. 4. Data Science Process Overview Overview:- Provides a comprehensive overview of the Data Science process, from data collection to model deployment. Learning Outcomes:- Gain a holistic understanding of the Data Science workflow. Learn about each stage of the Data Science process. 5. Data Scientist Overview:- Focuses on the role of a Data Scientist, covering key skills, tools, and methodologies used in the field. Learning Outcomes:- Understand the responsibilities and skillset of a Data Scientist. Get acquainted with essential tools and techniques. 6. Data Scientist AIML End to End Overview:- Explores the end-to-end process of applying Artificial Intelligence and Machine Learning in Data Science projects. Learning Outcomes:- Learn how to integrate AI and ML techniques in Data Science workflows. Complete an end-to-end AIML project. 7. Data Science Process Overview Overview:- Another overview focused on reinforcing the understanding of the Data Science process. Learning Outcomes:- Solidify your understanding of the Data Science lifecycle. Review key concepts and stages in the process. 8. Data Science Process Overview End to End AIML Overview:- This session provides a detailed walkthrough of the entire Data Science process with an emphasis on AIML integration. Learning Outcomes:- Master the end-to-end Data Science process. Apply AIML techniques to real-world Data Science problems. 9. Introduction to R for Data Science Overview:- Introduces R programming with a focus on its application in Data Science, including data manipulation and visualization. Learning Outcomes:- Get started with R programming for Data Science. Learn to use R for basic data analysis tasks. 10. R Programming Basics AIML End to End Overview:- Covers the basic syntax and structures of R, with a focus on applying them in AIML contexts. Learning Outcomes:- Learn the fundamentals of R programming. Apply R in basic AIML tasks and projects. 11. R Programming Part 2 Overview:- This section builds on the basics, introducing more advanced R programming techniques, including data wrangling and modeling. Learning Outcomes: Develop advanced R programming skills. Implement complex data wrangling and modeling tasks using R.
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