#### Practical Data Science with R 2nd Edition

The Data Science Process Data science is an interdisciplinary practice that draws on methods such as data engineering, descriptive statistics,…

Skip to content # Quiet Book Space

# Tech Books

#### Practical Data Science with R 2nd Edition

#### Algorithms of the Intelligent Web, 2nd Edition

#### Algorithms and Data Structures In Action Version 13

#### Bitcoin – Supply limit: ₿21,000,000

#### MECHANICAL ENGINEERING EXAM PREP 1 Edition

#### You missed

**Practical Data Science with R 2nd Edition **

- Tue. Mar 21st, 2023

A quiet space where enjoying reading books

Tech Books in IT industry. It contains programming language books, UX (User Experience) books, and so on.

The Data Science Process Data science is an interdisciplinary practice that draws on methods such as data engineering, descriptive statistics,…

Intelligent networks mean different things to different people. To some, it represents the evolution of the Web into a more…

Data Structure To begin our journey, we first need to agree on a common language for describing and evaluating algorithms. …

What is Bitcoin? Bitcoin is a digital cash system. It allows people to move Bitcoins (the monetary unit of Bitcoin)…

Problems and Solutions Mechanical Engineering Mechanical engineering is a broad field that is founded on the fundamentals of physics, mathematics,…

New Books Are Here!

Data science is an interdisciplinary practice that draws on methods such as data engineering, descriptive statistics, data mining, machine learning, and predictive analytics. Like data science, operations research focuses on executing data-driven decisions and managing their results.

R is open source software which can run well on multiple platforms, like Unix, Linux, Apple’s macOS, and Microsoft Windows. R is a rich and broad language, and there are usually many ways to accomplish the same task. This represents an initial learning curve, as it is difficult to understand what R programs mean until you are familiar with the notation. However, reviewing some of the basic notations is well rewarded, which is good for understanding the R to learn data science methods and practices.