DeepLearning.AI Data Analytics Professional Certificate Course Syllabus
Full curriculum breakdown — modules, lessons, estimated time, and outcomes.
Overview: This professional certificate offers a comprehensive, beginner-friendly introduction to data analytics, combining foundational theory with hands-on practice in Python, SQL, and generative AI. Learners will progress through six modules covering the full data lifecycle—from data collection and wrangling to analysis, visualization, and AI-enhanced storytelling. With a project-driven structure, the course prepares learners for real-world analytics tasks. Estimated total time: 120–150 hours, designed for self-paced learning with lifetime access.
Module 1: Foundations of Data Analytics
Estimated time: 15 hours
- Introduction to data analytics and its role in business strategy
- Understanding the data analytics process and data lifecycle
- Key data roles and responsibilities in organizations
- Types of data and methods of data collection
- Introduction to Python and SQL in analytics workflows
Module 2: Statistics and Data Wrangling
Estimated time: 20 hours
- Descriptive statistics and probability fundamentals
- Hypothesis testing and statistical inference
- Data wrangling concepts and best practices
- Cleaning and preparing datasets for analysis
- Techniques for handling missing or inconsistent data
Module 3: Data Analysis and Visualization with Python
Estimated time: 25 hours
- Using pandas and NumPy for data manipulation
- Performing exploratory data analysis to uncover trends
- Creating visualizations with matplotlib and seaborn
- Automating analysis workflows using Python scripts
- Interpreting visual outputs for decision-making
Module 4: SQL for Data Analytics
Estimated time: 20 hours
- Writing SQL queries to filter and sort data
- Joining and aggregating data from multiple tables
- Using subqueries and nested queries for complex analysis
- Integrating SQL with Python for end-to-end workflows
- Querying real-world datasets to extract insights
Module 5: Generative AI in Analytics
Estimated time: 15 hours
- Integrating generative AI tools into the analytics pipeline
- Using AI to summarize findings and generate reports
- Enhancing data storytelling with AI-driven insights
- Automating repetitive data tasks using AI assistants
- Understanding ethical considerations and limitations of AI in analytics
Module 6: Data Analytics Capstone Project
Estimated time: 30 hours
- Analyze a real-world dataset from start to finish using Python and SQL
- Create data visualizations to support key business insights
- Present findings using AI-generated narratives and reports
Prerequisites
- Familiarity with basic computer operations
- No prior programming experience required, but comfort with technology is helpful
- Basic understanding of business concepts is beneficial
What You'll Be Able to Do After
- Perform end-to-end data analysis using Python and SQL
- Apply statistical thinking to real-world data problems
- Create compelling data visualizations and narratives
- Use generative AI tools to enhance analytical workflows
- Build a portfolio-ready capstone project demonstrating job-ready skills