2. Course 2 - Data Analysis And Visualisation [... Info

: The first step involves gathering data from diverse sources—SQL databases, CSV files, APIs, or web scraping. Because real-world data is often "messy," analysts spend a significant portion of their time cleaning it. This includes handling missing values, removing duplicates, and ensuring consistent formatting.

: It simplifies complex datasets, making trends and anomalies immediately apparent. 2. Course 2 - Data Analysis and Visualisation [...

: Python and R are the industry standards. Python’s libraries—such as Pandas for manipulation, Matplotlib and Seaborn for static plotting, and Plotly for interactive charts—make it a versatile choice for data scientists. : The first step involves gathering data from