What Is Artificial Intelligence (AI)? | Google Cloud (2024)

Artificial intelligence (AI) is a set of technologies that enable computers to perform a variety of advanced functions, including the ability to see, understand and translate spoken and written language, analyze data, make recommendations, and more.

AI is the backbone of innovation in modern computing, unlocking value for individuals and businesses. For example, optical character recognition (OCR) uses AI to extract text and data from images and documents, turns unstructured content into business-ready structured data, and unlocks valuable insights.

Ready to get started? New customers get $300 in free credits to spend on Google Cloud.

Get started for freeStay informed

Introduction to generative AI

Artificial intelligence is a field of science concerned with building computers and machines that can reason, learn, and act in such a way that would normally require human intelligence or that involves data whose scale exceeds what humans can analyze.

AI is a broad field that encompasses many different disciplines, including computer science, data analytics and statistics, hardware and software engineering, linguistics, neuroscience, and even philosophy and psychology.

On an operational level for business use, AI is a set of technologies that are based primarily on machine learning and deep learning, used for data analytics, predictions and forecasting, object categorization, natural language processing, recommendations, intelligent data retrieval, and more.

How does AI work?

While the specifics vary across different AI techniques, the core principle revolves around data. AI systems learn and improve through exposure to vast amounts of data, identifying patterns and relationships that humans may miss.

This learning process often involves algorithms, which are sets of rules or instructions that guide the AI's analysis and decision-making. In machine learning, a popular subset of AI, algorithms are trained on labeled or unlabeled data to make predictions or categorize information.

Deep learning, a further specialization, utilizes artificial neural networks with multiple layers to process information, mimicking the structure and function of the human brain. Through continuous learning and adaptation, AI systems become increasingly adept at performing specific tasks, from recognizing images to translating languages and beyond.

Want to learn how to get started with AI? Take the free beginner's introduction to generative AI.

Types of artificial intelligence

Artificial intelligence can be organized in several ways, depending on stages of development or actions being performed.

For instance, four stages of AI development are commonly recognized.

  1. Reactive machines: Limited AI that only reacts to different kinds of stimuli based on preprogrammed rules. Does not use memory and thus cannot learn with new data. IBM’s Deep Blue that beat chess champion Garry Kasparov in 1997 was an example of a reactive machine.
  2. Limited memory: Most modern AI is considered to be limited memory. It can use memory to improve over time by being trained with new data, typically through an artificial neural network or other training model. Deep learning, a subset of machine learning, is considered limited memory artificial intelligence.
  3. Theory of mind: Theory of mind AI does not currently exist, but research is ongoing into its possibilities. It describes AI that can emulate the human mind and has decision-making capabilities equal to that of a human, including recognizing and remembering emotions and reacting in social situations as a human would.
  4. Self aware: A step above theory of mind AI, self-aware AI describes a mythical machine that is aware of its own existence and has the intellectual and emotional capabilities of a human. Like theory of mind AI, self-aware AI does not currently exist.

A more useful way of broadly categorizing types of artificial intelligence is by what the machine can do. All of what we currently call artificial intelligence is considered artificial “narrow” intelligence, in that it can perform only narrow sets of actions based on its programming and training. For instance, an AI algorithm that is used for object classification won’t be able to perform natural language processing. Google Search is a form of narrow AI, as is predictive analytics, or virtual assistants.

Artificial general intelligence (AGI) would be the ability for a machine to “sense, think, and act” just like a human. AGI does not currently exist. The next level would be artificial superintelligence (ASI), in which the machine would be able to function in all ways superior to a human.

Artificial intelligence training models

When businesses talk about AI, they often talk about “training data.” But what does that mean? Remember that limited-memory artificial intelligence is AI that improves over time by being trained with new data. Machine learning is a subset of artificial intelligence that uses algorithms to train data to obtain results.

In broad strokes, three kinds of learnings models are often used in machine learning:

Supervised learning is a machine learning model that maps a specific input to an output using labeled training data (structured data). In simple terms, to train the algorithm to recognize pictures of cats, feed it pictures labeled as cats.

Unsupervised learning is a machine learning model that learns patterns based on unlabeled data (unstructured data). Unlike supervised learning, the end result is not known ahead of time. Rather, the algorithm learns from the data, categorizing it into groups based on attributes. For instance, unsupervised learning is good at pattern matching and descriptive modeling.

In addition to supervised and unsupervised learning, a mixed approach called semi-supervised learning is often employed, where only some of the data is labeled. In semi-supervised learning, an end result is known, but the algorithm must figure out how to organize and structure the data to achieve the desired results.

Reinforcement learning is a machine learning model that can be broadly described as “learn by doing.” An “agent” learns to perform a defined task by trial and error (a feedback loop) until its performance is within a desirable range. The agent receives positive reinforcement when it performs the task well and negative reinforcement when it performs poorly. An example of reinforcement learning would be teaching a robotic hand to pick up a ball.

Common types of artificial neural networks

A common type of training model in AI is an artificial neural network, a model loosely based on the human brain.

A neural network is a system of artificial neurons—sometimes called perceptrons—that are computational nodes used to classify and analyze data. The data is fed into the first layer of a neural network, with each perceptron making a decision, then passing that information onto multiple nodes in the next layer. Training models with more than three layers are referred to as “deep neural networks” or “deep learning.” Some modern neural networks have hundreds or thousands of layers. The output of the final perceptrons accomplish the task set to the neural network, such as classify an object or find patterns in data.

Some of the most common types of artificial neural networks you may encounter include:

Feedforward neural networks (FF) are one of the oldest forms of neural networks, with data flowing one way through layers of artificial neurons until the output is achieved. In modern days, most feedforward neural networks are considered “deep feedforward” with several layers (and more than one “hidden” layer). Feedforward neural networks are typically paired with an error-correction algorithm called “backpropagation” that, in simple terms, starts with the result of the neural network and works back through to the beginning, finding errors to improve the accuracy of the neural network. Many simple but powerful neural networks are deep feedforward.

Recurrent neural networks (RNN) differ from feedforward neural networks in that they typically use time series data or data that involves sequences. Unlike feedforward neural networks, which use weights in each node of the network, recurrent neural networks have “memory” of what happened in the previous layer as contingent to the output of the current layer. For instance, when performing natural language processing, RNNs can “keep in mind” other words used in a sentence. RNNs are often used for speech recognition, translation, and to caption images.

Long/short term memory (LSTM) is an advanced form of RNN that can use memory to “remember” what happened in previous layers. The difference between RNNs and LSTM is that LSTM can remember what happened several layers ago, through the use of “memory cells.” LSTM is often used in speech recognition and making predictions.

Convolutional neural networks (CNN) include some of the most common neural networks in modern artificial intelligence. Most often used in image recognition, CNNs use several distinct layers (a convolutional layer, then a pooling layer) that filter different parts of an image before putting it back together (in the fully connected layer). The earlier convolutional layers may look for simple features of an image, such as colors and edges, before looking for more complex features in additional layers.

Generative adversarial networks (GAN) involve two neural networks competing against each other in a game that ultimately improves the accuracy of the output. One network (the generator) creates examples that the other network (the discriminator) attempts to prove true or false. GANs have been used to create realistic images and even make art.

Benefits of AI

Automation

AI can automate workflows and processes or work independently and autonomously from a human team. For example, AI can help automate aspects of cybersecurity by continuously monitoring and analyzing network traffic. Similarly, a smart factory may have dozens of different kinds of AI in use, such as robots using computer vision to navigate the factory floor or to inspect products for defects, create digital twins, or use real-time analytics to measure efficiency and output.

Reduce human error

AI can eliminate manual errors in data processing, analytics, assembly in manufacturing, and other tasks through automation and algorithms that follow the same processes every single time.

Eliminate repetitive tasks

AI can be used to perform repetitive tasks, freeing human capital to work on higher impact problems. AI can be used to automate processes, like verifying documents, transcribing phone calls, or answering simple customer questions like “what time do you close?” Robots are often used to perform “dull, dirty, or dangerous” tasks in the place of a human.

Fast and accurate

AI can process more information more quickly than a human, finding patterns and discovering relationships in data that a human may miss.

Infinite availability

AI is not limited by time of day, the need for breaks, or other human encumbrances. When running in the cloud, AI and machine learning can be “always on,” continuously working on its assigned tasks.

Accelerated research and development

The ability to analyze vast amounts of data quickly can lead to accelerated breakthroughs in research and development. For instance, AI has been used in predictive modeling of potential new pharmaceutical treatments, or to quantify the human genome.

Solve your business challenges with Google Cloud

New customers get $300 in free credits to spend on Google Cloud.

Get started

Sign up for Google Cloud newsletters with product updates, event information, special offers, and more.

Stay informed

Applications and use cases for artificial intelligence

Speech recognition

Automatically convert spoken speech into written text.

Image recognition

Identify and categorize various aspects of an image.

Translation

Translate written or spoken words from one language into another.

Predictive modeling

Mine data to forecast specific outcomes with high degrees of granularity.

Data analytics

Find patterns and relationships in data for business intelligence.

Cybersecurity

Autonomously scan networks for cyber attacks and threats.

Related products and services

Google offers a number of sophisticated artificial intelligence products, solutions, and applications on a trusted cloud platform that enables businesses to easily build and implement AI algorithms and models.

By using products like Vertex AI, CCAI, DocAI, or AI APIs, organizations can make sense of all the data they’re producing, collecting, or otherwise analyzing, no matter what format it’s in, to make actionable business decisions.

  • Explore all AI products and solutionsInnovative AI and machine learning products, solutions, and services powered by Google’s research and technology.
  • Vertex AIBuild, deploy, and scale ML models faster, with pretrained and custom tooling within a unified artificial intelligence platform.
  • Vertex AI Studio Tool for rapidly prototyping and testing generative AI models.
  • Document AIAutomate data capture at scale to reduce document processing costs.
  • AlloyDB AIBuild a wide range of generative AI applications using familiar PostgreSQL and run models in Vertex AI.
  • SolutionContact Center AIDeliver exceptional customer service and increase operational efficiency using artificial intelligence. Enable your virtual agent to converse naturally with customers and expertly assist human agents on complex cases.
  • SolutionDialogflow CXCreate conversational experiences across devices and platforms.
What Is Artificial Intelligence (AI)? | Google Cloud (2024)
Top Articles
Silvergate Capital (SI) Stock Dividend Date & History - TipRanks.com
Investment spotlight: Connext
Sdn Md 2023-2024
Poe T4 Aisling
Chambersburg star athlete JJ Kelly makes his college decision, and he’s going DI
Www.politicser.com Pepperboy News
Evil Dead Rise Showtimes Near Massena Movieplex
Select The Best Reagents For The Reaction Below.
Needle Nose Peterbilt For Sale Craigslist
Craigslist/Phx
Wunderground Huntington Beach
Thotsbook Com
George The Animal Steele Gif
Radio Aleluya Dialogo Pastoral
The most iconic acting lineages in cinema history
Craigslist Farm And Garden Tallahassee Florida
Dignity Nfuse
Roll Out Gutter Extensions Lowe's
Kountry Pumpkin 29
Uta Kinesiology Advising
Icivics The Electoral Process Answer Key
How your diet could help combat climate change in 2019 | CNN
Dr Ayad Alsaadi
Yosemite Sam Hood Ornament
Dark Entreaty Ffxiv
Colonial Executive Park - CRE Consultants
Craigslist Lake Charles
Jesus Revolution Showtimes Near Regal Stonecrest
Temu Seat Covers
Evil Dead Rise Ending Explained
Cosas Aesthetic Para Decorar Tu Cuarto Para Imprimir
Yayo - RimWorld Wiki
Generator Supercenter Heartland
Wells Fargo Bank Florida Locations
Hoofdletters voor God in de NBV21 - Bijbelblog
Sports Clips Flowood Ms
Ourhotwifes
Obsidian Guard's Skullsplitter
The 38 Best Restaurants in Montreal
Dollar Tree's 1,000 store closure tells the perils of poor acquisitions
Infinite Campus Farmingdale
What Is A K 56 Pink Pill?
Callie Gullickson Eye Patches
Weekly Math Review Q2 7 Answer Key
Tgirls Philly
Hkx File Compatibility Check Skyrim/Sse
Rs3 Nature Spirit Quick Guide
BCLJ July 19 2019 HTML Shawn Day Andrea Day Butler Pa Divorce
FedEx Authorized ShipCenter - Edouard Pack And Ship at Cape Coral, FL - 2301 Del Prado Blvd Ste 690 33990
705 Us 74 Bus Rockingham Nc
Electric Toothbrush Feature Crossword
Latest Posts
Article information

Author: Kieth Sipes

Last Updated:

Views: 6455

Rating: 4.7 / 5 (47 voted)

Reviews: 94% of readers found this page helpful

Author information

Name: Kieth Sipes

Birthday: 2001-04-14

Address: Suite 492 62479 Champlin Loop, South Catrice, MS 57271

Phone: +9663362133320

Job: District Sales Analyst

Hobby: Digital arts, Dance, Ghost hunting, Worldbuilding, Kayaking, Table tennis, 3D printing

Introduction: My name is Kieth Sipes, I am a zany, rich, courageous, powerful, faithful, jolly, excited person who loves writing and wants to share my knowledge and understanding with you.