There
is an ever-increasing demand for storing different types of data in
organizations. Be it a small or big organization, employers want to keep
records of their employees, customers, accounts, feedback, and so on.
However, maintaining such an enormous collection of data is not possible
without the help of data science. This video course will help you to learn
the important concepts and theories of applied data science that you need to
know to store, manipulate, and visualize huge chunks of data.
The course starts with an introduction to
applied data science and a tutorial on how to set up a Jupyter notebook.
You’ll then go on to understand linear regression using Boston data. As you
advance, you’ll discover data visualization techniques and explore time
series and data evaluation. You'll also get to grips with extended data
analysis with the help of a temperature analysis activity. Toward the end,
you’ll be introduced to k-means clustering and gain a solid understanding of
decision trees.
By the end of this
course, you’ll be well-versed with applied data science concepts and be able
to apply your skills in the real world.
All the codes and supporting files for this course will be available
at- https://github.com/PacktPublishing/Projects-in-Data-Science