Machine learning is one of the most common forms of artificial intelligence. Discover some of the ways it’s being used today.
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Machine learning is a subset of AI with applications that include recommendation engines, fraud detection, and translation software.
Many industries, including finance, tech, media, and medicine, use machine learning algorithms in their operations.
Other technologies that use machine learning include image recognition, chatbots, self-driving cars, and AI personal assistants.
You can create machine learning algorithms if you work as a data scientist, machine learning engineer, or AI engineer.
Learn more about machine learning and how it is used. Afterward, if you want to learn more about machine learning, consider enrolling in Stanford and DeepLearning.AI's Machine Learning Specialization. You may start building machine learning models in just two months by using scikit-learn, TensorFlow, and unsupervised learning techniques.
Machine learning is a subfield of artificial intelligence (AI) that uses models created from algorithms trained on data sets to perform relatively complex tasks that traditionally could only be performed by humans, such as making predictions or categorizing information. As a result, machine learning is one of the most ubiquitous forms of AI used today and accounts for many of the recent advances in the goods and services that people use every day.
Machine learning has impacted nearly every industry, and its adoption is expected to grow exponentially in the coming years. According to research published by Grand View Research, the global market size for machine learning is projected to reach around $282.13 billion by 2030 [1].
The growing impact of AI and machine learning means that professionals capable of effectively working with them are often in high demand. This includes jobs like data scientists, machine learning engineers, AI engineers, and data engineers.
Read more: Machine Learning vs. AI: Differences, Uses, and Benefits
Machine learning is everywhere. Yet, while you likely interact with it practically every day, you may not be aware of it. To help you get a better idea of how it’s used, here are 10 real-world applications of machine learning.
One of the most common uses of machine learning is image recognition. To do this, data professionals train machine learning algorithms on data sets to produce models capable of recognizing and categorizing certain images. These models are used for a wide range of purposes, including identifying specific plants, landmarks, and even individuals from photographs.
Some common applications that use machine learning for image recognition purposes include Instagram, Facebook, and TikTok.
Translation is a natural fit for machine learning. The large amount of written material available in digital formats effectively amounts to a massive data set that can be used to create machine learning models capable of translating texts from one language to another. Known as machine translation, AI professionals create models capable of translation in many ways, including through the use of rule-based, statistical, and syntax-based models, neural networks, and hybrid approaches.
Some popular applications of machine translation include Google Translate, Amazon Translate, and Microsoft Translator.
Financial institutions process millions of transactions daily. Perhaps unsurprisingly, it can be difficult for them to know which are legitimate and which are fraudulent.
As more and more people use online banking services and cashless payment methods, the number of fraudulent transactions has similarly risen. However, according to a 2026 report from TransUnion, one in six people in the US claims to be a victim of fraud despite the number of fraud attempts dropping by 23 percent from 2024 to 2025, indicating a shift toward more sophisticated, AI-driven attempts with a larger return on investment (ROI) [2].
AI can help financial institutions detect potentially fraudulent transactions and save consumers from false charges by flagging those that seem suspicious or out of the ordinary. Mastercard, for example, uses AI to flag potential scams in real-time and even predict some before they happen to protect consumers from theft in certain situations.
Effective communication is key for almost all businesses operating today. Whether they’re helping customers troubleshoot problems or identifying the best products for their unique needs, many organizations rely on customer support to ensure that their clients get the help they need.
The cost of supporting a well-trained workforce of customer support specialists can make it difficult for many organizations to provide their customers with the resources they require. As a result, many customer support specialists may find their schedules inefficiently packed with customers who face a wide range of needs, from those that can be easily addressed in a matter of minutes to those that require additional time.
AI-powered chatbots can provide organizations with the additional support they need by assisting customers with their most basic needs. Using natural language processing, these chatbots are capable of responding to consumers' unique queries and directing them to the appropriate resources so that customer support specialists can assist those with the trickiest of needs.
Read more: What Is a Chatbot? Definition, Types, and Examples
Generative AI is capable of quickly producing original content, such as text, images, and video, with simple prompts. Many organizations and individuals use generative AI like ChatGPT and DALL-E for a wide range of reasons, including creating web copy, designing visuals, or even producing promotional videos.
Yet, while generative AI can produce many impressive results, it also has the potential to produce material with false or misleading claims. If you’re using generative AI for your work, consequently, it’s advised that you provide an appropriate level of scrutiny to it before releasing it to the wider public.
ChatGPT is a large language model that is built from machine learning and AI technology, though it is not the only application of machine learning. Many applications in machine learning come from data science, where the focus is on analysis and prediction.
Whether you’re driving a car, kneading dough, or going for a long run, it’s sometimes easier to operate a smart device with your voice than to stop and use your hands to input commands. Machine learning makes it possible for many smart devices to recognize speech so users can complete tasks without touching them, such as calling a friend, setting a timer, or searching for a specific show on a streaming service.
Today, speech recognition is a relatively common feature of many widely available smart devices like Google's Nest speakers and Amazon’s Blink home security system.
Perhaps one of the more “futuristic” technological advancements in recent years has been the development of self-driving cars. While such a concept was once considered science fiction, today, there are several commercially available cars with semi-autonomous driving features, such as Tesla’s Model S and BMW’s X5. Manufacturers are hard at work to make fully autonomous cars a reality for commuters over the next decade.
The dynamics of creating a self-driving car are complex – and indeed still being developed – but they’re primarily reliant on machine learning and computer vision to function. As the car drives from one place to another, it uses computer vision to survey its environment and machine learning algorithms to make decisions on the go.
Everyone could use a bit of extra help. That’s why many smart devices come equipped with AI personal assistants to assist users with common tasks like scheduling appointments, calling a contact, or taking notes. Whether people realize it or not, whenever they use Siri, Alexa, or Google Assistant to complete these kinds of tasks, they’re taking advantage of machine learning-powered software.
Businesses and marketers spend a significant amount of resources trying to connect consumers with the right products at the right time. After all, if they can show customers the kinds of products or content that meet their needs at the precise moment they need them, they’re more likely to make a purchase or simply stay on their platform.
In the past, sales representatives at brick-and-mortar stores would match consumers with the kinds of products they’d be interested in. However, as online and digital shopping become the norm, organizations need to provide the same level of guidance for Internet users.
To do it, modern online retailers and streaming platforms use recommendation engines that produce personalized results for consumers based on information like their geographic location and previous purchases. Some common platforms that use machine learning-based recommendation engines include Amazon, Netflix, and Instagram.
The health care industry is awash in big data. From electronic health records to diagnostic images, health facilities are repositories of valuable medical data that can be used to train machine learning algorithms in order to diagnose medical conditions. In fact, while some researchers are already using machine learning to identify cancerous growths in medical scans, others are using it to create software that can help health care professionals make more accurate diagnoses.
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Watch on YouTube: Career Spotlight: Machine Learning Engineer
Hear from an expert: AI Creativity Unleashed: Expert Insights from Vanderbilt’s Dr. Jules White
Study terms: Artificial Intelligence (AI) Terms & Definitions
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Grand View Research. “Machine Learning Market (2025 - 2030), https://www.grandviewresearch.com/industry-analysis/machine-learning-market.” Accessed June 9, 2026.
TransUnion. “As AI-Driven Fraud Grows More Sophisticated, Advanced Digital Defense Becomes Essential, https://newsroom.transunion.com/h1-2026-update-to-the-top-fraud-trends-report/.” Accessed June 9, 2026.
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