Top 10 Uses of Machine Learning (2024)

Machine learning (ML) may have taken a back seat to Gen AI in the current furore around the technology, but the process is an important underpinning of many AI applications.

It has had a longer time to establish itself in many industries, either influencing their development or creating entirely different uses or products within them.

Now thanks to AI developments as a whole, the industry is developing beyond its functions we have become accustomed to and new applications are being made.

In recognition of this, AI Magazine takes a look at 10 of the top uses of ML currently in play.

10. Virtual personal assistants

Key business: Apple

These AI-powered digital helpers have been evolving since the early 2010s to manage tasks, answer queries, and control smart home devices

Virtual personal assistants have become an integral part of our daily lives, offering seamless access to information through text or voice interfaces. These AI-powered assistants analyse queries, gather relevant data from various sources, and provide personalised responses based on user history and preferences.

Employing sophisticated ML techniques such as speech recognition, natural language processing, and text-to-speech conversion, virtual assistants continuously improve their understanding and interaction capabilities.

A key player in this field is Apple, with its virtual assistant Siri. According to Apple, Siri handles over 25 billion requests monthly across 36 countries, demonstrating the widespread adoption and utility of this technology in enhancing user productivity and convenience.

9. Online fraud recognition

Key business: Visa

The advanced AI systems have been rapidly analysing transactions since the late 2000s

In the realm of financial security, ML plays a crucial role in detecting and preventing online fraud. Every transaction triggers a complex analysis of the customer's profile, searching for anomalies or suspicious patterns that might indicate fraudulent activity.

This real-time scrutiny allows financial institutions to protect their customers and maintain the integrity of digital transactions. The sophistication of these ML models enables them to adapt to new fraud techniques, constantly evolving to stay ahead of cybercriminals.

Visa, a global leader in digital payments, utilises advanced ML algorithms in its fraud detection systems. According to Visa, their AI-powered fraud prevention technology has helped financial institutions prevent an estimated US$25bn in annual fraud.

8. Stock market and day trading

Key business: Bloomberg

ML algorithms, that have been revolutionising financial markets since the 1980s, now process terabytes of data in milliseconds for trading decisions

The application of ML in stock market analysis and day trading has revolutionised investment strategies. ML algorithms excel at processing vast amounts of financial data, identifying patterns, and making predictions that inform crucial investment decisions.

These systems can automate portfolio management, optimise buy and sell timings, and even execute trades based on predefined criteria. The ability to rapidly analyse market trends and react to real-time data gives ML-powered trading systems a significant edge in the fast-paced world of finance.

Bloomberg, a major player in financial software and media, offers ML-powered analytics tools to traders and investors. Their ML models processes 2.8 million securities,10 times per day, providing invaluable insights for investment decisions.

7. Catching malware

Key business: CrowdStrike

ML has helped the cybersecurity field evolve from signature-based to behaviour-based detection

The process of using machine learning (ML) to detect malware consists of two basic stages. First, it involves analysing suspicious activities within a given environment to generate a comprehensive set of features.

Second, the system is trained using machine and deep learning techniques on these generated features to detect future cyberattacks effectively. This approach allows for more dynamic and adaptive malware detection compared to traditional signature-based methods.

Cybersecurity company CrowdStrike employs ML in its malware detection systems. According to CrowdStrike, their Falcon platform leverages ML to analyse over 30 billion events daily, enabling them to detect and prevent threats in real-time.

6. Catching email spam

Key business: Microsoft

This technology, which has been progressing since the 1990s, now using complex algorithms to block billions of unwanted messages daily

One of the most ubiquitous applications of ML is in email spam detection. Email service providers employ sophisticated ML algorithms to classify incoming messages, effectively filtering out unwanted spam.

These systems continuously learn from user behaviour and feedback, improving their accuracy over time. The ability to adapt to new spam tactics ensures that users' inboxes remain protected from evolving threats.

Microsoft, with its Outlook email service, utilises advanced ML algorithms for spam detection. Microsoft reports that their AI-powered security systems processes more than 400 billion emails each month and blocks 10 million spam.

5. Self-driving cars

Key business: Tesla

Autonomous vehicles represent the most ambitious application of ML

The development of self-driving cars represents one of the most ambitious applications of ML. These vehicles rely heavily on unsupervised learning algorithms to collect and process information from cameras and sensors, enabling them to understand their surroundings and make real-time decisions.

The ML systems must interpret complex environments, predict the behaviour of other road users, and navigate safely under various conditions.

Tesla, a pioneer in electric and autonomous vehicles, is at the forefront of this technology. According to Tesla, their vehicles have driven over 47 billion miles in Autopilot mode, continuously improving their ML models with real-world data.

4. E-commerce product recommendations

Key business: Amazon

These AI-driven personalisation engines now drive significant portions of e-commerce revenue.

E-commerce platforms leverage ML algorithms to provide personalised product recommendations, significantly enhancing the shopping experience. These systems track customer behaviour, including past purchases, browsing habits, and cart history, to generate tailored suggestions.

The sophisticated ML models can identify patterns and preferences that may not be immediately apparent, leading to more accurate and relevant recommendations. Amazon, the e-commerce giant, is renowned for its product recommendation system.

Amazon reports that 35% of its sales come from personalised recommendations, highlighting the effectiveness of ML in driving e-commerce revenue.

3. Predict traffic patterns

Key business: Google

The models, analysing traffic patterns since the early 2000s, now provide real-time route optimisation in navigation apps

ML has transformed traffic prediction and management, offering more accurate and dynamic forecasts of traffic patterns. By analysing vast amounts of real-time and historical data, ML models can predict upcoming traffic conditions and identify the fastest routes for travellers.This application not only improves individual journey times but also contributes to overall traffic management and urban planning.

Google Maps, a widely used navigation application, employs ML algorithms for traffic prediction.

Google claims that their ML models can predict traffic conditions with over 97% accuracy, helping millions of users navigate more efficiently.

2. Speech recognition

Key business: Nuance Communications

Top 10 Uses of Machine Learning (1)

Speech recognition technology, powered by ML, has become increasingly prevalent in our daily lives. ML software can accurately measure and interpret spoken words, converting speech signals into digital data for further processing.

This technology forms the backbone of various applications, from virtual assistants to transcription services and voice-controlled devices. The continuous improvement in accuracy and language understanding has made speech recognition an indispensable tool in human-computer interaction.

Nuance Communications, a leader in speech recognition technology, provides ML-powered solutions used in various industries. According to Nuance, their speech recognition systems process over 14 billion customer interactions annually across 75 languages and dialects.

1. Image recognition

Key business: NVIDIA

Top 10 Uses of Machine Learning (2)

At the forefront of ML applications is image recognition, a technique that enables computers to identify and categorise objects or features within digital images. This technology has far-reaching implications across various sectors, from security and healthcare to retail and entertainment.

Image recognition systems can perform tasks such as facial recognition, object detection, and pattern identification with remarkable accuracy. The ability to process and understand visual data at scale has opened up new possibilities in fields like autonomous vehicles, medical imaging, and augmented reality.

NVIDIA, a leader in AI and graphics processing, provides cutting-edge image recognition solutions. NVIDIA reports that their ML-powered image recognition systems, such as NVIDIA DRIVE PX Pegasus, can process over 320 trillion operations per second, enabling real-time analysis of complex visual data.

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Top 10 Uses of Machine Learning (2024)

FAQs

What are the common uses of machine learning? ›

Here are some examples of what machine learning is used for:
  • Robotic process automation. RPA combined with machine learning creates intelligent automation that's capable of automating complex tasks, such as processing mortgage applications.
  • Sales optimization. ...
  • Customer service. ...
  • Security. ...
  • Digital marketing. ...
  • Fraud prevention.

Where is ML used in real life? ›

Many stock market transactions use ML. AI and ML use decades of stock market data to forecast trends and suggest whether to buy or sell. ML can also conduct algorithmic trading without human intervention. Around 60-73% of stock market trading is conducted by algorithms that can trade at high volume and speed.

What are the five applications of machine learning? ›

Applications of Machine Learning
  • Image Recognition.
  • Speech Recognition.
  • Recommender Systems.
  • Fraud Detection.
  • Self Driving Cars.
  • Medical Diagnosis.
  • Stock Market Trading.
  • Virtual Try On.
May 5, 2023

Where is machine learning used the most? ›

Here are examples of machine learning at work in our daily life that provide value in many ways—some large and some small.
  1. Facial recognition. ...
  2. Product recommendations. ...
  3. Email automation and spam filtering. ...
  4. Financial accuracy. ...
  5. Social media optimization. ...
  6. Healthcare advancement. ...
  7. Mobile voice to text and predictive text.

How is ML used in day-to-day life? ›

Image recognition is another machine learning technique that appears in our day-to-day life. With the use of ML, programs can identify an object or person in an image based on the intensity of the pixels. This type of facial recognition is used for password protection methods like Face ID and in law enforcement.

What is the primary use of machine learning? ›

Simply put, machine learning allows the user to feed a computer algorithm an immense amount of data and have the computer analyze and make data-driven recommendations and decisions based on only the input data.

What is real time use of ML? ›

Real-time machine learning applications handle real-time data streams to make time-critical decisions such as those required of user-facing applications, fraud prediction, recommender systems, and predictive maintenance, to name a few.

Does Netflix use ML? ›

"Netflix uses machine learning (ML) to personalize promotional content and optimize its creation process. Their media-focused ML infrastructure enables efficient access and processing of media data, large-scale model training, and model productization.

What are four examples of machine learning? ›

Machine learning and its algorithms consists of four main types: supervised learning, unsupervised learning, semi-supervised learning and reinforcement learning. Here's what to know about each type and a few ways they are used.

How is machine learning used today? ›

Machine learning is used in internet search engines, email filters to sort out spam, websites to make personalised recommendations, banking software to detect unusual transactions, and lots of apps on our phones such as voice recognition.

What are the 4 types of machine learning applications? ›

There are four types of machine learning algorithms: supervised, semi-supervised, unsupervised and reinforcement.

What is the main goal of machine learning? ›

The Goals of Machine Learning.

(1) To make the computers smarter, more intelligent. The more direct objective in this aspect is to develop systems (programs) for specific practical learning tasks in application domains. (2) To dev elop computational models of human learning process and perform computer simulations.

What are the real world applications of machine learning? ›

Applications of machine learning include: Data Analysis: Machine learning is used to analyze financial data. Self-driving vehicles: Machine learning is also being used in the development of self-driving vehicles. Business Applications: Machine learning is being used to improve financial decisions.

What industries will benefit from machine learning? ›

In a recent article published by House of Bots, they identified a few key industries that will benefit from Machine Learning in 2019. These include Education, Digital Marketing and Healthcare. Techjury outlined other benefactors such as Agriculture, Real Estate, Insurance, Defence, Aerospace, Media and Hospitality.

How is ML used in industry? ›

In the manufacturing context, machine learning algorithms are applied to process large volumes of data about the production, equipment, and products to help optimize time-consuming aspects of the manufacturing process, including quality control, equipment maintenance, and product design.

What is machine learning best for? ›

Machine learning methods

Supervised machine learning relies on patterns to predict values on unlabeled data. It is most often used in automation, over large amounts of data records or in cases where there are too many data inputs for humans to process effectively.

What is the use of machine learning in industry? ›

Machine learning algorithms analyze supply chain data to optimize inventory levels, forecast demand, and improve logistics planning. By optimizing inventory levels and streamlining logistics processes, ML enables businesses to reduce costs, improve delivery times, and enhance overall supply chain efficiency.

What are the uses of machine? ›

Machines can carry out our tasks in a faster, quicker, and more efficient way. Our phones, laptops, refrigerators, microwaves, etc. are all examples of machines which help us in carrying out various tasks with ease.

What are the three popular types of machine learning? ›

Machine learning involves showing a large volume of data to a machine to learn, make predictions, find patterns, or classify data. The three machine learning types are supervised, unsupervised, and reinforcement learning.

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