Conclusion
Thank you for making
it through to the end of Machine Learning
Mathematics: Study Deep Learning through Data Science. How to Build
Artificial Intelligence through Concepts of Statistics, Algorithms, Analysis,
and Data Mining. Let’s hope it was informative and able to provide you
with all of the tools you need to achieve your goals whatever they may be.
The next step is to make the best use of your new-found wisdom on the
mathematical or statistical working of the machine learning technology. The
fourth industrial revolution is allegedly set to
transition the world as we
know it, with machines being operated by humans in a limited capacity
today into a utopian world out of the science fiction movies, where
machines could be indistinguishable from human beings. This transition has
been made possible with the power of machine learning. You now have a
sound understanding of the statistical learning
framework and the crucial
role played by uniform convergence and finite classes in determining
whether a problem can be resolved using machine learning. To truly capture
the essence of machine learning development, expert-level knowledge and
understanding of the underlying statistical framework can mean the
difference between a successful machine learning model and a failed model
that is a time and money sucking machine.
To become
a machine learning expert, a solid understanding of the
statistical and mathematical concepts of this area is just as important as
learning the required programming language.
This may seem daunting to
most beginners but with this book, we have provided a simplified
explanation of the statistical learning framework for ease of understanding.
A primary requirement for the development of a winning machine learning
algorithm is the quality and generation of the required training data set as
well as its learnability by the algorithm.
This is the reason we have
explained the nuances of training Neural Network in explicit details by
building data pipelined from the inception of the project to the
implementation
and scoring of the model, along with different types of
Neural Network training approached. With this knowledge, you are all
equipped to design required machine learning algorithms for your business
needs. If you are a software developer looking to create that next marvelous
application that can learn from the massive amount of open data, competing
with the likes of "Amazon Alexa" and "Apple Siri", you have just gotten
yourself the head start you were always looking for.
If you found this useful you could also like:
PYTHON PROGRAMMING: 2 books in 1: Learning
Python and Python Machine Learning. A Complete
Overview for Beginners. How to Master Python
Coding basics and Effectively Learn Faster
Computer Programming
By Samuel Hack
I would like to thank you for reading this
book and if you enjoyed it I
would appreciate your review on Amazon!