Machine learning is a type of artificial intelligence that provides computers with the ability to learn without being explicitly programmed. It’s most often used in conjunction with large data sets and statistical techniques, but it can also be applied to smaller problems. Machine learning relies on algorithms (computer programs) that allow computers to “think” like humans do when faced with a problem. These algorithms are able to analyze data and draw conclusions from it, allowing a computer or other device to make predictions about future events based on its past experiences.
Definition of Machine Learning
In the simplest terms, machine learning is a subset of artificial intelligence that gives computers the ability to learn without being explicitly programmed.
In other words, it allows computers to become more accurate in predicting outcomes without being explicitly programmed. Machine learning has many applications and can be used in everything from powering search engines like Google or Facebook to detecting fraud on your credit card statement.
Benefits of Machine Learning
The benefits of machine learning are numerous and far-reaching. Here’s a list of some of the most common ones:
- Reduce the cost of business by reducing manual labor costs, such as those associated with data entry and quality assurance
- Increase revenue by improving customer experience, search results or sales/marketing efforts
- Improve product quality by detecting errors before they happen or finding areas where there’s room for improvement (e.g., “this feature doesn’t work well” or “the app crashes when someone tries X”)
- Improve operational efficiency by automating repetitive tasks like data analysis so that employees can focus on other things like strategy development or strategic planning instead
Disadvantages of Machine Learning
While there are many benefits to machine learning, it’s not without its drawbacks. One of the biggest disadvantages of machine learning is that computers can be trained to be racist or sexist. In one example, researchers used deep neural networks (DNN) to train a computer to identify objects in photos. When they tested their system on more than 100,000 images from ImageNet–a large database of images categorized by humans–they found that their DNN learned some surprising things about race and gender:
The DNN was better at identifying pictures of white men than black women; it also classified pictures of black women as animals more often than those of white men. This shows how even though DNNs are designed only with data from their training set and have no explicit bias built into them, they may still pick up patterns from real-world situations and use them when making decisions later on down the road
Machine learning has its benefits and it’s also not without its disadvantages.
Machine learning is a branch of artificial intelligence that uses computers to improve their performance by learning from data. It’s often referred to as a type of predictive modeling, where the computer makes predictions about future events based on what it has learned from past experience or observations.
Machine learning is used in many applications including robotics, speech recognition, bioinformatics (the study of biological data), finance and more recently cryptocurrency trading bots.
Machine learning is an exciting field and will continue to grow in popularity. The benefits of machine learning are clear, but it’s important that you understand the potential pitfalls as well. If you want to learn more about this topic then check out our article on machine learning benefits and disadvantages!