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What is the role of Python or R in Data Analytics?

Python and R are two of the most popular programming languages in Data Analytics because they are flexible and have robust data-handling strengths. Python is well known for being easy to use, readable, and having vast libraries such as Pandas, NumPy, Matplotlib, and Seaborn that render data manipulation, analysis, and visualization ease. It is also highly efficient for combining analytics with web applications, machine learning, and automation.

R, however, is built specifically for statistical analysis and visualization. It provides a rich collection of packages such as ggplot2, dplyr, and Shiny, allowing sophisticated statistical modeling, data exploration, and interactive dashboards.

Both languages assist analysts in efficiently cleaning, processing, and interpreting large datasets. They support predictive modeling, pattern discovery, and data-driven decision-making, which make them essential tools for businesses, researchers, and organizations that want to derive actionable insights from data.

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