The world has been obsessed with the terms "machine learning"
and "deep learning" recently. We use these technologies every day,
with or without our knowledge. Ranging from Google suggestions, to
translations, ads, movie recommendations, friend suggestions, sales
and customer experiences. There are tons of other applications too
so there's no wonder that deep learning and machine learning
specialists, along with data science practitioners, are the most
sought-after talent in the current technology world. But the
problem is that, when you think about learning these technologies,
there is a common misconception that it's a prerequisite to study
lots of maths, statistics, and complex algorithms. It's almost like
someone making you believe that you must learn the working of an
internal combustion engine before you learn how to drive a car. The
fact is that, to drive a car, we just only need to know how to use
the user-friendly control pedals extending from the engine like the
clutch, brake, accelerator, steering wheel, and so on. And with a
bit of experience, you can easily drive a car. The basic know-how
about the internal working of the engine is of course an added
advantage while driving a car, but it's not mandatory.
Similarly, in our deep learning course, we have a perfect balance
between learning the basic concepts and the implementation of the
built-in deep learning classes and functions from the Keras library
using the Python programming language. These classes, functions and
APIs are just like the control pedals from the car engine that we
can use easily to build an efficient deep-learning model. Let's see
how this course is organized and an overview about the list of
topics included. Overall, this is a basic to advanced crash course
in deep learning neural networks and convolutional neural networks
using Keras and Python. Once completed, it's sure to sky-rocket
your current career prospects as this in-demand skill is the
technology of the future. There is a day in the near future itself,
when deep learning models will out-perform human intelligence. So
be ready and let's dive into the world of thinking machines.