IBM Data Analyst Capstone Project Course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

Overview: This capstone course is the final step in IBM's Data Analyst Professional Certificate, designed to validate your end-to-end data analysis skills. Over approximately 5 weeks with a flexible schedule, you'll work through a real-world dataset to complete a comprehensive analytics project. Each module guides you through a key phase of the data analysis pipeline—problem definition, data cleaning, exploration, visualization, and reporting—culminating in a peer-reviewed final submission. Expect to spend roughly 3–5 hours per module, combining hands-on coding in Jupyter Notebook, Python, Pandas, SQL, and Excel with practical decision-making and storytelling. This project is ideal for building a professional portfolio and demonstrating job-ready competencies.

Module 1: Introduction and Project Scenario

Estimated time: 4 hours

  • Understanding the business problem
  • Project overview and goals
  • Reviewing the real-world dataset
  • Defining project objectives and success criteria

Module 2: Data Wrangling and Preprocessing

Estimated time: 5 hours

  • Cleaning and formatting data
  • Handling missing values and duplicates
  • Data validation techniques
  • Using Python and Pandas for data preparation

Module 3: Exploratory Data Analysis (EDA)

Estimated time: 5 hours

  • Identifying patterns and trends in data
  • Detecting outliers and anomalies
  • Applying descriptive statistics
  • Performing EDA using Matplotlib and Seaborn

Module 4: Data Visualization and Reporting

Estimated time: 5 hours

  • Creating effective data visualizations
  • Practicing visual storytelling techniques
  • Building insights dashboards
  • Writing a comprehensive project report in Jupyter Notebook

Module 5: Final Project Submission

Estimated time: 4 hours

  • Compiling analysis results
  • Documenting insights and recommendations
  • Preparing peer-reviewed assignment

Module 6: Final Project

Estimated time: 3 hours

  • Deliverable 1: Complete Jupyter Notebook with cleaned data and code
  • Deliverable 2: Data visualization dashboard and charts
  • Deliverable 3: Final project report with actionable insights

Prerequisites

  • Familiarity with Python, Pandas, and Jupyter Notebooks
  • Experience with SQL and Excel for data manipulation
  • Completion of prior courses in the IBM Data Analyst Professional Certificate

What You'll Be Able to Do After

  • Apply the full data analysis process to real-world datasets
  • Perform data wrangling and cleaning using Python and Pandas
  • Conduct exploratory data analysis with statistical and visualization tools
  • Create compelling data visualizations and dashboards
  • Produce a professional analytics report for portfolio or employment
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