Artificial intelligence (AI) is the simulation of human intelligence
processes by machines, especially computer systems. These processes
include learning (the acquisition of information and rules for using the
information), reasoning (using rules to reach approximate or definite
conclusions) and self-correction. Particular applications of AI include expert systems, speech recognition
and
machine vision.
AI can be categorized as either weak or strong.
Weak AI, also known as narrow AI, is an AI system that is designed and
trained for a particular task. Virtual personal assistants, such as
Apple's Siri, are a form of weak AI. Strong AI, also known as artificial
general intelligence, is an AI system with generalized human cognitive
abilities. When presented with an unfamiliar task, a strong AI system is
able to find a solution without human intervention.
Because hardware, software and staffing costs for AI can be
expensive, many vendors are including AI components in their standard
offerings, as well as access to Artificial Intelligence as a Service (AIaaS)
platforms. AI as a Service allows individuals and companies to
experiment with AI for various business purposes and sample multiple
platforms before making a commitment. Popular AI cloud offerings include
Amazon AI services, IBM Watson Assistant, Microsoft Cognitive Services and Google AI services.
While AI tools present a range of new functionality for businesses
,the
use of artificial intelligence raises ethical questions. This is
because deep learning algorithms, which underpin many of the most
advanced AI tools, are only as smart as the data they are given in
training. Because a human selects what data should be used for training
an AI program, the potential for human bias is inherent and must be
monitored closely.
Some industry experts believe that the term artificial intelligence
is too closely linked to popular culture, causing the general public to
have unrealistic fears about artificial intelligence and improbable
expectations about how it will change the workplace and life in general.
Researchers and marketers hope the label augmented intelligence,
which has a more neutral connotation, will help people understand that
AI will simply improve products and services, not replace the humans
that use them.
Types of artificial intelligence
Arend Hintze, an assistant professor of integrative biology and
computer science and engineering at Michigan State University,
categorizes AI into four types, from the kind of AI systems that exist
today to sentient systems, which do not yet exist. His categories are as
follows:
Type 1: Reactive machines. An example is Deep Blue, the IBM chess
program that beat Garry Kasparov in the 1990s. Deep Blue can identify
pieces on the chess board and make predictions, but it has no memory and
cannot use past experiences to inform future ones. It analyzes possible
moves --
its
own and
its
opponent -- and chooses the most strategic move. Deep Blue and Google's AlphaGO were designed for narrow purposes and cannot easily be applied to another situation.
Type 2: Limited memory. These AI systems can use past experiences to inform future decisions. Some of the decision-making functions in self-driving cars
are designed this way. Observations inform actions happening in the
not-so-distant future, such as a car changing lanes. These observations
are not stored permanently.
Type 3: Theory of mind. This psychology term refers to the understanding that others have their own beliefs, desires
and
intentions that impact the decisions they make. This kind of AI does not yet exist.
Type 4:Self-awareness. In this
category, AI systems have a sense of self, have consciousness. Machines
with self-awareness understand their current state and can use the
information to infer what others are feeling. This type of AI does not
yet exist
.
What's the difference between AI and cognitive computing?
Examples
of AI technology
AI is incorporated into a variety of different types of technology. Here are seven examples.
Automation: What makes a system or process function automatically. For example, robotic process automation
(RPA) can be programmed to perform high-volume, repeatable tasks that
humans normally performed. RPA is different from IT automation in that
it can adapt to changing circumstances.
Machine learning: The science of getting a computer to act without programming
.
Deep
learning is a subset of machine learning that, in very
simple terms, can be thought of as the automation of predictive
analytics. There are three types of machine learning algorithms:
Supervised learning: Data sets are labeled so that patterns can be detected and used to label new data sets
Unsupervised learning: Data sets aren't labeled and are sorted according to similarities or differences
Reinforcement learning: Data sets aren't labeled but, after performing an action or several actions, the AI system is given feedback
Machine vision: The science of allowing computers
to see. This technology captures and analyzes visual information using a
camera, analog-to-digital conversion
and
digital signal processing. It is often compared to human
eyesight, but machine vision isn't bound by biology and can be
programmed to see through walls, for example. It is used in a range of
applications from signature identification to medical image analysis.
Computer vision, which is focused on machine-based image processing, is
often conflated with machine vision.
Natural language processing (NLP): The processing of human -- and not
computer
-- language by a computer program. One of the older and
best known
examples of NLP is spam detection, which looks at the subject
line and the text of an email and decides if it's junk. Current
approaches to NLP are based on machine learning. NLP tasks include text
translation, sentiment analysis
and
speech recognition.
Robotics: A field of engineering focused on the
design and manufacturing of robots. Robots are often used to perform
tasks that are difficult for humans to perform or perform consistently.
They are used in assembly lines for car production or by NASA to move
large objects in space. Researchers are also using machine learning to
build robots that can interact in social settings.
Self-driving cars: These use a combination of computer vision, image recognition
and
deep learning to build automated skill at piloting a vehicle
while staying in a given lane and avoiding unexpected obstructions, such
as pedestrians.
AI applications
Artificial intelligence has made its way into a number of areas. Here are six examples.
AI in healthcare. The biggest bets are on
improving patient outcomes and reducing costs. Companies are applying
machine learning to make better and faster diagnoses than humans. One of
the
best known
healthcare technologies is IBM Watson.
It understands natural language and is capable of responding to
questions asked of it. The system mines patient data and other available
data sources to form a hypothesis, which it then presents with a
confidence scoring schema. Other AI applications include chatbots,
a computer program used online to answer questions and assist
customers, to help schedule follow-up appointments or aid patients
through the billing process, and virtual health assistants that provide
basic medical feedback.
AI in business. Robotic process automation is
being applied to highly repetitive tasks normally performed by humans.
Machine learning algorithms are being integrated into analytics and CRM
platforms to uncover information on how to better serve customers.
Chatbots have been incorporated into websites to provide immediate
service to customers. Automation of job positions has also become a
talking point among academics and IT analysts.
AI in education. AI can automate grading, giving
educators more time. AI can assess students and adapt to their needs,
helping them work at their own pace. AI tutors can provide additional
support to students, ensuring they stay on track. AI could change where
and how students learn, perhaps even replacing some teachers.
AI in finance. AI in personal finance
applications, such as Mint or Turbo Tax, is disrupting financial
institutions. Applications such as these collect personal data and
provide financial advice. Other programs, such as IBM Watson, have been
applied to the process of buying a home. Today,
software
performs much of the trading on Wall Street.
AI in law. The discovery process, sifting through
of
documents, in law is often overwhelming for humans. Automating
this process is a more efficient use of time. Startups are also building
question-and-answer computer assistants that can sift
programmed-to-answer questions by examining the taxonomy and ontology
associated with a database.
AI in manufacturing. This is an area that has been at the forefront of incorporating robots into the workflow. Industrial robots used to perform single tasks and were separated from human workers, but as
the technology
advanced that changed
.
How AI affects marketing operations
Security
and ethical concerns
The application of AI in the realm of self-driving cars raises
security as well as ethical concerns. Cars can be hacked, and when an
autonomous vehicle is involved in an accident, liability is unclear.
Autonomous vehicles may also be put in a position where an accident is
unavoidable, forcing the programming to make an ethical decision about
how to minimize damage.
Another major concern is the potential for abuse of AI tools. Hackers
are starting to use sophisticated machine learning tools to gain access
to sensitive systems, complicating the issue of security beyond its
current state.
Deep learning-based video and audio generation tools also present bad actors with the tools necessary to create so-called
deepfakes
, convincingly fabricated videos of public figures saying or doing things that never took place
.
How data bias impacts AI outputs
Regulation
of AI technology
Despite these potential risks, there are few regulations governing the
use
AI tools, and where laws do exist, the typically pertain to AI
only indirectly. For example, federal Fair Lending regulations require
financial institutions to explain credit decisions to potential
customers, which limit the extent to which lenders can use deep learning
algorithms, which by their nature are typically opaque. Europe's GDPR
puts strict limits on how enterprises can use consumer data, which
impedes the training and functionality of many consumer-facing AI
applications.
0 Comments