- Be proficient in data analytics tool and skill
- Career change to data analyst
-
Data tools:
- Python(jupyter notebook)
- Excel, PowerBI
- SQL
- API integration
-
Visulizatio & data storytelling
-
Metholdology
- Statistics
- AB testing
- AARRR funnel
-
Engineering (extra)
- Cloud:EC2
- Pipline tool: DBT, Airflow
Dataquest is a data science bootcamp that offers career path courses, skill paths courses, and free introductory courses.
- Text lecture: Reading is faster than watching video, contronl my own tempo
- Project-based: goal-oriented learning
- Real data: close to real world scenario
Data Analyst in Python - 99 Lessons · 20 Projects
Outline | Section | Done |
---|---|---|
Part 1: Introduction to Python | Introduction to Python | x |
For Loops and Conditional Statements in Python | x | |
Dictionaries, Frequency Tables, and Functions in Python | x | |
Python Functions and Learn Jupyter Notebook | x | |
Python for Data Science: Intermediate | x | |
Part 2: Intermediate Python and Pandas | Pandas and NumPy Fundamentals | x |
Data Visualization Fundamentals | x | |
Storytelling Data Visualization and Information Design | ||
Part 3: Data Cleaning in Python | Data Cleaning and Analysis | |
Data Cleaning in Python: Advanced | ||
Data Cleaning Project Walkthrough | ||
Part 4: The Command Line | Elements of the Command Line | |
Text Processing in the Command Line | ||
Part 5: Working with Data Sources | SQL Fundamentals | |
Intermediate SQL for Data Analysis | ||
APIs and Web Scraping in Python | x | |
Data Analysis in Business | ||
Part 6: Probability and Statistics | Statistics Fundamentals | |
Intermediate Statistics: Averages and Variability | ||
Probability: Fundamentals | ||
Conditional Probability | ||
Hypothesis Testing: Fundamentals | ||
Part 7: Advanced Topics in Data Analysis | Command Line: Intermediate | |
Git and Version Control | ||
Part 8: Capstone Project | Data Analyst in Python Capstone Project | |