Over the past few years, it seems that artificial intelligence is already everywhere:
● Algorithms can recognize not only faces but also read emotions.
● Crewless buses and cars are tested on the streets.
● Managers offer an AI-based essay writer service.
● If you call a large company, there is a high probability of talking with machine technology instead of real people.
Why are artificial intelligence technologies so actively developed, famous and essential? You will learn more about this in this article.
What is Machine Learning in Simple Words
Over the past 15 years, machine learning has become widespread, but most people are unaware of its role in everyday life. Many of us use applications based on AI technology and machine learning daily. These technologies have already revolutionized many industries, for example, enabling virtual assistants such as Siri and enabling traffic forecasting using Google Maps.
Machine learning is a specialized way of teaching computers without resorting to programming. In part, this is similar to teaching an infant, which learns to classify objects and events to determine their relationship independently.
Machine learning opens up new possibilities for computers in solving problems previously performed by humans and teaches a computer system to make accurate predictions when entering data. Technology stimulates the growth of the potential of artificial intelligence, being its irreplaceable assistant. The extraordinary success of machine learning has led AI researchers and experts to choose this method by default for solving problems today.
Top Reasons Why Machine Learning Is Popular In 2021
Now machine learning technologies are used by the world’s leading technology companies, for example, Alibaba, Apple, Facebook, Netflix. Why? Here are five facts why machine learning is the digital leader in 2021.
AI and Machine Learning Are Inseparable
Today, machine learning has evolved and changed its purpose. Initially, all scientists argued that machine learning grew out of AI and consisted of methods that solve problems based on data or experience. For example, machine learning includes genetic algorithms and swarm intelligence that learns from their environment.
However, in the 2000s, these methods split from AI and created their own area called metaheuristics, or computational intelligence. Now machine learning is not transformed artificial intelligence – the technology has become a full-fledged industry with unique methods that learn from data.
Machine learning involves the processing of a large number of examples by the system, during which it distinguishes figures and uses them to predict the characteristics of modern data. In other words, it is the process of endowing AI with “consciousness,” the ability to memorize and analyze. Machine learning has grown into statistical learning, and therefore, AI cannot exist without machine learning.
Machine Learning Lets You Manage Abundant Data
As the entire world went digital, the amount of data increased. We’ve all heard the phrase “information overload.” This means that people receive too much information from emails, social networks, media, blogs, podcasts, etc. Many websites find it difficult to keep up with time and have an acute lack of helpful content. Machine learning provides techniques for finding relevant content to reduce information overload.
The platforms we interact with collect data describing these interactions. This information can be valuable to many organizations. The data collected makes it possible to understand how easy it is for the user to navigate the website and what should be changed. Machine learning offers techniques for turning large amounts of information into concise information that you can manage.
Some companies collect data about people, including biological indicators such as heart rate, breathing, pulse, steps, conversations, etc. For example, phones have built-in sensors that can determine location, orientation, or age. Thanks to this approach, scientists can answer questions that have not been answered in science. Machine learning helps to manage this data, providing the ability to model situations, problems using abundant data.
Machine Learning Offers Unlimited Applications
The beauty of machine learning is that its uses are endless. Here are some of the ML features:
● Transactional and Identity Data.
● Metrics of applications, hosts, virtual machines, servers.
● User-level data.
● Infrastructure and diagnostic data.
These are all well suited to machine learning and have a predictable format. Machine learning comes in handy where fast data analysis and analytics are essential. The technology can transform how we detect trends or anomalies in large datasets and provide valuable results in different areas.
Machine Learning Helps Fight Cancer
Based on machine learning, scientists are creating products for detecting malignant neoplasms. How does ML cancer diagnostics work? A large number of images are collected in datasets. These are datasets, which began to be used to train machine learning algorithms.
The doctor uploads the image to the system, prioritizing the examinations – from the most probable pathology to the lowest. So the doctor will first look at the pictures of patients in whom the system predicted a neoplasm. The doctor can also study the image on which the AI has highlighted the pathology zone with a marker and add his commentary to the image’s description.
Scientists actively use machine learning to expose breast, lung, skin, blood, and liver cancers. A prime example is the Mia Algorithm for Breast Screening. The first results of more than 40,000 mammograms showed that if Mia were used as a second radiologist, the overall repeat rate for two readings would be 4–5%, and the cancer detection rate would be 8.4 per 1,000 patients. Thus, ML diagnostics are the best tool for clinical decision-making.
Machine Learning Expands Human Capabilities
Machine learning is revolutionizing customer service today. Any company has many queries divided into a limited number of categories, and many of them are easily predictable. Chatbots based on machine learning algorithms help them more and more accurately respond to customer requests.
Technology cuts wait times and reduces dissatisfaction, which makes businesses more efficient. These chatbots allow account managers to handle unique complaints and requests that do require human intervention.
Machine learning has only one risk – ignoring this technology. 2021 is a year for people to explore and unlock the valuable power of machine learning to contribute to the development of the world.