About Course

This course provides a comprehensive understanding of advanced data analytics techniques used to extract meaningful insights from large datasets. Students will learn statistical analysis, predictive modeling, machine learning concepts, and data visualization techniques using modern tools such as Python, SQL, and BI platforms. By the end of the course, learners will be able to analyze complex datasets and build data-driven decision-making solutions for real-world business problems.

Course Learning Objectives

After completing this course, students will be able to:

  • Apply advanced statistical methods to analyze datasets

  • Build predictive models using machine learning techniques

  • Perform data cleaning and transformation

  • Analyze large datasets using Python and SQL

  • Create interactive dashboards and data visualizations

  • Interpret analytical results to support business decisions

  • Implement end-to-end data analytics workflows


Target Audience

  • Data Analysts

  • Business Intelligence Professionals

  • Data Scientists

  • Software Engineers interested in data analytics

  • Business professionals working with large datasets


Prerequisites

  • Basic knowledge of statistics

  • Basic programming knowledge (Python preferred)

  • Understanding of databases and SQL

  • Familiarity with spreadsheets (Excel/Google Sheets)

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What Will You Learn?

  • Course Assessment
  • Assignments – 30%
  • Quizzes – 20%
  • Capstone Project – 40%
  • Participation – 10%

Course Content

Module 1 – Introduction to Advanced Data Analytics
Duration: 3 Hours Topics: Overview of Data Analytics Types of Analytics (Descriptive, Diagnostic, Predictive, Prescriptive) Data Analytics Lifecycle Tools and Technologies used in Data Analytics Real-world Data Analytics Case Studies Assignment: Analyze a small dataset and identify potential insights.

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