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 1. Blogs
 2. A Simple Guide to Machine Learning


A SIMPLE GUIDE TO MACHINE LEARNING

Blogs


A SIMPLE GUIDE TO MACHINE LEARNING

xpresso.ai Team

sales@abzooba.com
 * July 1, 2022July 1, 2022
 * by xpresso.ai Team

3 min read
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Machine learning and artificial intelligence have completely transformed the
technology sector. They are responsible for a major transformation in digital
manufacturing and other industries. Machine learning models are now some of the
most sought-after products in the world for many major companies. However, what
is machine learning? How does machine learning work? What are the machine
learning categories you need to know about?

These are the questions you need to know and answer before you can start making
sense of this industry. It is a massive one, and understanding how a machine
learning program is made is crucial to being successful in the modern world. How
do machine learning models work? This is also a major question you need to know
when going into this industry. Finally, you should also know how do machine
learning models work. These are the things that will completely transform the
way you look and feel about the industry.




CATEGORIES IN MACHINE LEARNING

Machine learning is a category of artificial intelligence that deals with
teaching AI agents how to solve problems and make predictions based on previous
data. There are many subfields in machine learning, depending on what you’re
trying to build. You have supervised machine learning and unsupervised machine
learning as to major subfields to know. You also have reinforcement machine
learning as well. The end goal of all of these categories is to put a machine
learning model into production, which is how all of it eventually works.

In terms of machine learning, you also have neural networks, natural language
processing, and deep learning. Deep learning is especially interesting as it is
one of the growing fields in this industry because of the number of available
accelerators. As computing power increases, machine learning models will become
more robust and useful in business.


USING MACHINE LEARNING IN BUSINESS

Companies have found many ways of using machine learning models in their
business. In fact, there are even companies that are built on machine learning.
For example, Google is a trillion-dollar company that uses a machine learning
program to rank search engine pages and show advertising.

It uses a combination of supervised machine learning, unsupervised machine
learning, and even reinforcement machine learning. There are many companies like
Google, and it is only one of the big ones utilizing machine learning models to
provide the best benefits possible. Machine learning models are useful for
websites all the way to banks. It is even creating the industry of self-driving
cars.


BENEFITS AND PROBLEMS IN ML

Despite all of these benefits, machine learning models are not without problems.
Machine learning is becoming a major challenge because these models are
essentially black boxes. Explainability and bias are now two major things
companies need to worry about when implementing machine learning models inside
their businesses. That is because these companies are using machine learning
models to make major decisions that have an impact on real lives.

People using various services want to know that the machine learning program is
being fair to them when it makes its decision. No one wants to be the victim of
bias in the machine learning models. As time goes on, these problems will also
need to be solved with regulation and more government involvement. These only
complicate the process, which is why it is crucial to understand every aspect of
it.

ABOUT THE AUTHOR

xpresso.ai Team Enterprise AI/ML Application Lifecycle Management Platform
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