Since 1990 is the technological development was
significantly enhanced a significant improvement was evident in performing
different tasks. The concept of artificial intelligence in the area of science
is closer to fiction. However, the main idea is no longer a fiction, but it is
a reality that has induced impact on daily life (Poola, 2017). Machine learning is
a process in which neural networks are used for external processes as well as
actual processes for the real neurons. Artificial intelligence has a wide range
of application in real life and according to the future perspective, it will
overwhelm the science and fiction (Jordan & Mitchell,
2015).
The combination of artificial intelligence with machine learning enables
complex data processing and provides accurate information (Shabbir & Anwer,
2015).
With the development and innovation of artificial intelligence, the golden age
of artificial intelligence dominated the focus of technology in an improved
way. Notably, the artificial intelligence integration improved activities of
people along with connectedness. The term artificial intelligence also refers
to the ability and capability to resolve the issues. The integration of
artificial intelligence is related to different functions such as memory, planning,
language, attention, and person perception (Brookings. edu, 2015). In the previous 10 years, stages of evolution
of intelligence are becoming an interesting subject of research. Machine
learning can be described as a discipline that is focused on two main
interrelated questions including a procedure to construct computer system that
automatically improve the experience and fundamental statistical computer
additional information on theoretical laws for the computer system in the organization
(Intellipaat. com,
2018).
Machine learning addresses the practical implementation of computer software
and fundamental scientific applications. In the past two decades, the progress
of machine learning is dramatically improved with the widespread uses of
artificial intelligence. Many developers working with artificial intelligence
systems are now considering applications of machine learning (Interesting
engineering. com, 2017). The effect and advancement of machine
learning are broadly accepted in the computer science field and industries that
are concerned with the consumer services, data-intensive issues, controlling of
logistic change, and diagnosing the fault in the complex systems (Blockdelta.
io, 2018).
In different respects, machine learning methods are developed to analyze
experimental data embedded with functions to improve the accuracy of
experience. In the case of sustainable
organizational performance, the machine algorithm is developed to deal with a
variety of problems and data (Shabbir & Anwer,
2015).
The conceptual machine learning algorithms are provided with the optimize
performance metric and training experiences of the program. The machine
learning algorithms can be used to deal with the decision trees, general
language programs, and mathematical functions in the organization (Forbes.
com, 2018).
The evolution converters methods are developed to evaluate
the generator successive conditions and deal with different approaches. The
purpose of the present work is to define future influences of artificial
intelligence in our daily life. With the
passage of time, technology and artificial intelligence are growing by leaps
and bounds (Shabbir & Anwer,
2015).
Despite the facts of proper use of technology for unemployment and
overdependence, technology holds a bright future for the users. It can be
concluded that technology is shaping our future in a better way. In the
sequence of this condition, present work is based on an evaluation of the data
for individual performance and project management processes in different organizations
(Jordan & Mitchell,
2015).
Under these considerations, the aim of present work is to identify the
frameworks regarding the future perspective of machine learning and artificial
intelligence and how it transforms the lives of users (Shabbir
& Anwer, 2015; Jordan & Mitchell, 2015).
Aims and objectives of Influence of artificial intelligence
Artificial intelligence has substantially improved the lives
of users in many ways. There is a number of applications associated with the
implementation of artificial intelligence in organizations and real life (Jordan
& Mitchell, 2015).
The implementation of artificial intelligence leads to time-saving conditions
and increases the output of the business from day by day human activities the
development in artificial intelligence as well as machine learning procedures
directed human effort to be reduced in many ways. The other applications are
automatic transport system, computerized methods, and involvement of human
beings in dangerous jobs (Shabbir & Anwer,
2015).
It can be considered that the dramatic influence of artificial intelligence on
human life open the doors of wonders related to the automatic process and
activities. Different types of methods and manuals are used to complete the
process. Looking forward to the automatic system of artificial intelligence in
different procedures to be completed by reducing actual activities, enabling
the process proceeds to move forward, and development of industries, the role of artificial intelligence and
machine learning is universally improved (Poola, 2017). The concern of
present work is to identify the role of artificial intelligence and machine
learning in human beings. Deep learning is considered for the development of
technology and scratch surface frontiers applications in business. The sophisticated machines are developed, and
these machines can do work with the minimum human interventions. The major goal
of the present research is to provide a guideline related to machine learning,
dimensions and parameters of data points, complexity in the process, and
classical computational resources to resolve the problems under defined
frameworks (Shabbir & Anwer,
2015).
The present deals with probability approximated correction and polynomial-time
computation constraints to develop a relationship between learning algorithm,
training data size, error rates, the advancement of research with lower bound
conditions (Shabbir & Anwer,
2015).
Time frames of Influence of artificial intelligence
The artificial intelligence is quickly becoming a reality.
The statistical analysis of business and industry is the shows change of
artificial intelligence and higher uses in the industries. Implementation of state of art technologies
under artificial intelligence alters the way of thinking and interaction with
everyday procedures for instance manufacturing process, education, healthcare,
investment in startups, big data, full market overview, voice search, virtual
digital assistants, and recognition of statistical analysis about current state
and future scope (Jordan
& Mitchell, 2015; Shabbir & Anwer, 2015). The statistical
analysis about the role of artificial intelligence in present as well as in
future perspective are mentioned below,
By 2025, the expectation with the global artificial
intelligence market is about 16 billion dollars and previously in 2016, it was
1.4 billion dollars (Bigdata-madesimple.
com, 2016).
By 2030, the expected growth in global GDP is 15.7 trillion
dollars.
Increase in productivity is expected to be 40% (Forbes.
com, 2018).
In the past two decades, artificial intelligent status grew
about 14 times more.
By comparing with 2000 statistics, investment in artificial
intelligence startups increased 6 times more.
About 77% of devices are featured with state of the art
technology (Intellipaat. com,
2018).
Google statistical analysis has strong believed about the
next year 2020, that robots will work the same as complex human behaviors such
as flirting and joking (Shabbir & Anwer,
2015).
The statistics show the dependence of new system on artificial
intelligence and how technology is evolving to improve the functionality and
working conditions of organizations (Shabbir & Anwer,
2015).
Data collection of Influence of artificial intelligence
Currently artificial intelligence as the capability to
intimate with human Intelligence and to perform a different task through proper
procedures. The abilities of artificial intelligence are to perform different
types of solving problems of taking the decisions and thinking about the
learning procedures. The artificial intelligent machines and systems are in a
position to deal with the tasks and exercise errors. Currently artificial intelligence
applications in robotic cars, controlling traffic, minimizing speeds, taking
tension, and controlling the traffic (Shabbir & Anwer,
2015).
The research considered the use of artificial intelligence,
technological development, and machine learning in different research areas. In
order to identify the future perspective of artificial intelligence and machine
learning, numerous consultations were carried out from secondary data such as
journal articles, website and academic researches (Shabbir & Anwer,
2015).
Connected with the conditions, the research embraces a new form of analysis
based upon the previous research. There
are two methods use in the present to collect the data and information about
the implementation of artificial intelligence and machine learning processes (Jordan
& Mitchell, 2015).
The first method is previously defined as secondary sources of information
while on the other hand, the second method is to collect the data and
information from the survey (Totalphase. com, 2017).
Data analysis of Influence of artificial intelligence
The artificial intelligence is creeping into the lives of
human beings speedily through scanning machines and GPS navigations. The implementation of artificial
intelligence in the business have a higher contribution in potentializing of
different areas of business, for instance, technical processes, customer
service, administration, finance, sales, service, marketing, along with various
factors (Shabbir & Anwer,
2015).
No doubt with the past few years, the digital efforts were not isolated by
technical processes in the companies. The digital efforts will be no longer
isolated projects of the companies but also involves technology is at different
levels at artificial intelligence to improve their competitiveness (Bigdata-madesimple.
com, 2016).
Artificial intelligence integrates the system activities to the business. The
major role of artificial intelligence is on the replacement of human beings
from the organization and workplaces. It enables the workers to develop
creativity and potential at their maximum peak (Shabbir & Anwer,
2015).
Introducing to new technologies in Companies, electronic action traceability
and security considerations are required to take in confidence of Management.
The present work deals with the improvement of artificial intelligence an
efficiency of people while performing the works through machines and
controlling the process (Shabbir & Anwer,
2015).
This condition leads to a question about the level of performances in human
beings, economic levels, and other conditions of work. The present work is
about the future perspective of artificial intelligence Technologies and to
compare it with human intelligence. In
the present work, we considered all the applied fields and develop the
potential analysis of artificial intelligence technique, potential management,
benefits, and improvement in the system (Jordan & Mitchell,
2015).
Future of Influence of artificial intelligence
Intelligence and machine learning becoming emerging
Technologies that advance the systems. Considerable
attention is drawn towards the impact of public policy and Employment through
artificial business in the workplace (Bigdata-madesimple.
com, 2016).
Some researchers worked on the impact of artificial intelligence on the
development of robotics and if the Robotics becomes more advanced is it
possible to take the jobs and what will be the impact of emerging technology on
the public policy and Employment rates (Shabbir & Anwer,
2015).
The present consideration includes improvement in emerging Technologies related
to services cost of available good quality and speed. This technology replaces
a large number of workers and minimizes the workforce. The impact of automation
system through modern technologies is evidence through economic conditions (Shabbir
& Anwer, 2015).
World wild number of industrial developments is considered in service sectors
fraction processes and computer algorithms. The business operation improves due
to the higher trend of Technology in the workplace (Forbes. com, 2018). Some of the
researchers and experts do not agree with the impact of automation technology
on the workflows while on the other hand, some suggest segregation of
unemployment through their services (Interesting
engineering. com, 2017).
The automation Technologies have a higher focus on the benefits of employment
flexible Technology, the use of artificial intelligence in the industry expands
and Income Tax credits. Perhaps, during the whole research work, proactive
questions were raised in the paper about the future perspective of uses and
activities (Shabbir & Anwer,
2015).
The increase in the improvement of artificial intelligence
management systems is increasing. The idea of creating artificial intelligence
levels the system to be working in a simple way and deliberate with the
different advantages and different advantages. Many researchers identified
different ideas of artificial intelligence that can be improved by considering
different solutions for conditions (Jordan & Mitchell,
2015).
The use of artificial intelligence increases profitability and generates higher
economic growth rates. Addition two different innovative work the aim of
artificial intelligence is too robotic technology in the industries. Artificial
intelligence has revolutionized companies and system of production increases in
the work (Shabbir & Anwer,
2015).
Higher opportunities for work are developed that makes a procedure and work
easier as compared to the previous Technology (Jordan & Mitchell,
2015).
The role of human beings in the development of artificial intelligence is highly
exclusive. The artificial intelligence machine system is ethical and moral
values of the system increases with positive outcomes and higher engagement of
customers and people with the production process (Poola, 2017). The advantages of
artificial intelligence colonization of people living in different areas and
have potential efforts to fight with free space with critical terms. Artificial
intelligence has advantages in self-replicating procedures and investigation of
different Technologies such as teleportation and cellular level travel (Intellipaat.
com, 2018).
The impact of artificial intelligence is higher in economic condition and
execute stock trades for different Technologies in case of service sector
computer algorithms are executing the sufficiently higher role. The
technologies are becoming capable to do applications (Interestingengineering.
com, 2017).
Different experts are agreeing on the size of the impact of digital
Technologies places four unemployment and Staging process. Flexible security is
an idea to deal with education Healthcare and Housing assistance. The expansion
of incomes and credits is proactively based on education and worth of the
business (Intellipaat. com,
2018).
Application of Artificial intelligence
Self-driving cars of Influence of artificial intelligence
Artificial intelligence has boosted the transport system
advancement in the technology is observed by considering self-driving Cars.
Advancement in technology has utilized different safety processes development
processes and car making procedures (Brookings. edu, 2015). The self-driving
car moves around the ways. The technology is used to navigate crossroads and to
reduce accidental issues. The technology behind self-driving Cars improves the
lives of others and increases safety conditions for the people sitting in the
car. A number of accidents are occurring due to substantially reduced concern
and skills of driving (Blockdelta. io, 2018). The technology used
in self-driving Cars is multiple times greater than previous searches. The
factors that contribute to accidents include alcohol, drugs, lack of
experience, aggressive driving, over speeding, ignorance of road signs, study
reactions, and overcompensation over different conditions (Jordan & Mitchell,
2015).
Statistical analysis shows that total accidents occurring during the alcoholic
conditions and drug abuse are 40%. Consequently, more than 1100 drivers lost
their lives along with the passengers, therefore, the implementation of self-driving
Cars is especially required. From 2012, the US Department of Transportation is
working on different levels of automated cars such as trains and buses (Shabbir & Anwer, 2015; Jordan &
Mitchell, 2015).
Involvement in Dangerous Jobs of Influence of artificial
intelligence
Artificial intelligence had developed
reports that are human beings in critical conditions and hazardous
situations. These robots are taking
positions of human being and doing dangerous jobs such as defusing bombs. The development of robots to deal with
diffusion of bombs is highly required to increase the life rates (Shabbir
& Anwer, 2015).
In these very boards are serving thousands of lives by doing dangerous jobs. Eventually,
The Other applications include processing with toxic substances, working under
intense heat, significant benefits of knowledge for environmental conditions,
and safety measures for human beings to have protection from harm (Jordan
& Mitchell, 2015).
The research conducted by BBC defined hazardous jobs conducted
by robots. The technological drones are being developed to deal with the
physical process of defusing the bombs and having control over the human being
lives (Shabbir & Anwer,
2015).
AI integration is used to improve the machine function. The research conducted
by Robot Worx explained the role and process of robotic welding to deal with
safety features and to prevent human beings from working with dangerous fumes (Jordan
& Mitchell, 2015).
Computerize methods of Influence of artificial intelligence
The role of artificial intelligence is improved in
computerized methods to perceive daily activities. The use of the navigation
system and GPS system by the drivers is an example of artificial intelligence
role in human life. The minimum occurrence of error is considered and observed
in the prediction of the computer-based system (Intellipaat. com,
2018).
Furthermore, artificial intelligence has used financial and banking management,
organization of statistical data,
reducing the number of errors and issues and utilization of state of the
art technology to reduce the number of errors and to improve the strategist of
achievement. Besides other factors, artificial intelligence has a higher wall
in medical research and diagnosis of complex disorders. Artificial intelligence
has access to human health risks and medical research by using artificial
intelligence lead to having an influence on the study of saving a life (Jordan & Mitchell, 2015; Poola, 2017).
Reduced Human Efforts by Influence of artificial
intelligence
Implementation of artificial intelligence have an essential
role in human life and to perform human activities. The consistent rate of
production increases with effective strategies and management in the workplace.
Implementation of artificial intelligence in the work process, promises the error-free work, speeding up of
the process, accuracy in the results, and production improvement ability (Shabbir
& Anwer, 2015).
The companies and management systems keep a record of work, extract the data,
and the decision-making process is based upon the data collected in the
company. Mainly, the role of artificial intelligence is associated with the
production and processing of industries for having business development and
good times. Artificial intelligence saves the time of human beings from solving
complicated issues significantly improve the lives of the users of ai
technologies (Jordan & Mitchell,
2015).
Cyborg technology of Influence of artificial intelligence
The human brain and body have limited functionalities and
works for a complex situation.
Researcher Shimon Whiteson initiative to deal with the future of human
beings by considering the state of the art technology (Totalphase. com, 2017). The use of
computers in workplaces can increase natural ability to do work and this
possible in enhancement is known as cyborg technology. There are different
conditions according to convenience practical purposes. Under certain
conditions, the brain works as a robotic limb and control significant
conditions (Bigdata-madesimple.
com, 2016).
Recommendation from evidence on Influence of artificial
intelligence
Before the release of an artificial intelligence system,
organizations should rigorously test for ensuring that they will not amplify
errors and biases due to any problems with algorithms, training data, and other
parts involved in the system design. Considering the fact that this is
consistently changing field, assumptions and methods of testing together with
results should be documented openly with transparent versioning for
accommodating new findings and updates. Organizations developing and profiting
from these systems must be accountable for leading the tests including
pre-release trials. This field is far from involving standardized methods and
that is the reason why testing methods should be open for discussion and
scrutiny. This openness will be quite significant if the field of artificial
intelligence is to develop robust methods of testing over time.
After the release of an artificial intelligence system, the
organization should continuously monitor its usage across different communities
and contexts. The outcomes and methods of monitoring must be defined through
rigorous and open processes, and have to be accountable to the public. In high
stakes contexts of decision-making, the experiences and views of marginalized
communities must be prioritized. Making sure that algorithmic and AI systems
are safe is very complex and has to be an ongoing procedure through the life
cycle of the system at hand. It is completely different from a compliance
checkbox that can easily be. Monitoring across dynamic contexts and use-cases
are necessary for ensuring that AI systems do not introduce bias and errors as
cultural domains and assumptions change and shift. It is also significant to
keep it in check that not many models of AI have a general purpose where they
might utilize add-ons like facial recognition for plug-and-play. It means that
organizations providing general-purpose models of AI can also consider the
choice of licensing for an approved use where risks and downsides have been
considered.
More policy and research making is required on the
utilization of artificial intelligence systems in the monitoring and management
of the workplace including HR and hiring. Specific attention must be given to
the potential effect of an AI system on labor practices and rights and must
concentrate on the potential for unintended reinforcement and behavioral
manipulation of bias in promotion and hiring. The discussion around labor and
artificial intelligence normally focus on the displacement of labor, which is
quite a serious issue. However, it is also very important to keep the track of
just how algorithmic and AI systems are utilized within the workplaces at
present for everything from rating performance to surveillance and behavioral
nudging. Given the potential of artificial intelligence system in entrenching
existing biases and reducing diversity, more work is definitely required for
understanding how artificial intelligence is incorporated into practices,
structures, scheduling, hiring, and management of workplaces.
It is also important to the development of various standards
for tracking development, performance, and the utilization of datasets throughout
the life cycle. This is crucial for better monitoring and understanding issues
of representational skews and bias. In
addition to the development of better records for just how a dataset of
training was maintained and created, measurement researchers and social
scientists within the bias study field of AI should continue to test the
existing datasets of training and work for understanding biases and blind sport
that might already bet at the work. Artificial intelligence depends on data at
a large-scale for making predictions and detecting patterns. Human history is
reflected by this data and also reflects prejudices and biases from the dataset
of training. Techniques of machine learning excel at picking such statistical
designs, normally omitting the diverse outlier for generalizing common cases.
Therefore, it is significant that research about bias should not consider data
at the face value and it must begin by understanding where data utilized for
training systems of AI came from and validating the assumptions and methods
that shape a certain dataset over a specific time period. With an understanding
of this, bias and errors reflected in data can be understood in a better way
while also developing ways of mitigating them during the collection and creation
of data.
AI bias mitigation and research should be expanded beyond a
simple and narrow technical approach. Issues related to bias are structural and
long-term, and contending with them seems to necessitate in-depth
interdisciplinary research. Furthermore, the technical approach looking for a
one-time solution for a fairness risk, oversimplify the complexity of a social
system. In different domains such as criminal justice, healthcare, or
education, bias's legacies and movements towards strong equality have their own
practices and histories. These legacies cannot be resolved without depending on
the domain expertise. Addressing fairness will need interdisciplinary methods
and collaboration across different areas and disciplines.
The recent increment in the work in algorithmic and AI bias
is actually an excellent sign. However, taking a purely technical approach is
still not safe. After all, there is a risk that networks and systems are only
optimized without any understanding of what to optimize for. It means that
computer scientists can learn more about the underlying inequalities in terms
of the structure that shape the data and contextual incorporation of artificial
intelligence systems by collaborating with the experts of the domain in fields
like communication, anthropology, sociology, medicine, and law. Powerful
standards for understanding and auditing the use of artificial intelligence is
complex systems is needed urgently. The development of such standards will need
the perspective of diverse coalitions and disciplines. The procedure by which
such types of standards are developed must be accountable publicly and subject
to revision and review in a periodic manner.
At present, there are no established procedures for the
assessment and measurement of the effects of artificial intelligence systems as
they are utilized in certain social contexts. This is quite a significant
issue, considering the determinations that AI systems are impacting across
various domains. The development of such methods and standards should be the
top priority for the field of AI. Conferences, universities, and companies
along with other stakeholders in the field of artificial intelligence should
release data on the involvement of minorities and women in the development and
research of AI. Now, many seem to recognize that the present absence of
diversity in artificial intelligence is an important issue which is required
for measuring the progress. And beyond this, a deeper assessment of the
cultures at workplaces is needed in the technology industry that needs going
beyond the simple recruitment of minorities and women towards creating more
inclusive workplaces.
The perspectives and assumptions of those who develop
systems of artificial intelligence will shape them. Often, developers of
artificial intelligence are male with similar backgrounds in terms of training
and education. However, beyond the general diversity statistics of the
technology industry, there are some efforts for better understanding of the
problem of diversity in the field of artificial intelligence. If artificial
intelligence is to be widely relevant, fair, and safe, efforts must be focused
on tracking inclusion and diversity while ensuring that the culture in which
artificial intelligence is being designed is welcoming to all types of experts.
The industry of artificial intelligence should be recruit professionals from
areas beyond engineering and computer science while making sure that they have
the power of making decisions. With the movement of AI towards diverse
institutional and social domains, affecting the emerging high-stake decisions,
time and effort must be concentrated on the integration of legal scientists,
social scientists, and others with the domain expertise capable of guiding the
integration and creation of artificial intelligence into established practices
and long-standing networks.
Just as a lawyer cannot optimize a DNN or deep neural
network, a technical AI engineer or researcher cannot also be expected to be
professionals in the criminal justice or any other type of social domain where
the technical system is being incorporated. Domain experts must be there for
helping the prime process of decision making while ensuring that systems of AI
don't misunderstand the contexts, complex histories, and processes in sectors
like education, health, and law. Ethical codes with the objective of steering
the field of artificial intelligence must be supported by strong accountability
mechanisms and oversight. Furthermore, more work is required on how to connect
high-level guidelines and principles of ethics for best practices to the
development processes, release cycles of product, and promotion on a daily
basis.
Various groups of computing industry are developing the
codes of ethics for ensuring the development fair and safe artificial
intelligence but these codes are generally voluntary and high –level, asking
the developers of AI to prioritize the general or common good. However, such
codes will have to be interlinked to clear and precise systems of
accountability while remaining aware of the power asymmetries and incentive
structure at work in the industry of AI.
Sustainable organizational performance of Influence of
artificial intelligence
One of the most significant and powerful examples of modern
environmentalism's limits is to push for green energy. For combating climate
change and other types of pollution, it is significant to shift to geothermal,
nuclear, wind, and solar sources of energy. However, while the technology
exists to obtain a large area of energy from these sources, utilities and
businesses have trouble integrating them into daily operations. Each method of
generation is suited to companies in different areas and with distinct use
needs of energy. Figuring out just which solution will offer the required
outcomes takes a lot of time and efforts, and has a great potential for error.
Applications of AI can determine how to implement green energy far more
effectively and quickly than human planners are capable of. Companies can feed
that data regarding energy to an application of AI which can compare these
patterns to all the available sources of sustainable energy, and identifying
the one which meets the requirements of organization properly while generating
extra-costs as minimum as possible. Artificial intelligence can also determine
the potential roadblocks in the process of adoptions so companies are prepare
to minimize those issues.
In addition to the climate and pollution change, humanity is
actually having a profound impact on wildlife ecosystems and populations. As
the usage of land is increasing, it is becoming less for the life of plants and
animals that play a significant role in the regional and local environments.
Although private initiatives and local governments try to limit this type of
threats, understanding what areas and resources need to be saved for wildlife
population is the key to effectively protect ecosystems. Systems of artificial
intelligence have the capability of resolving this issue. By analyzing the
extensive data on migration and feeding patterns of wildlife, AI applications
can offer intelligence on what areas should be saved for keeping the wildlife
ecosystem safe. This way, sustainability can be maintained with the use of
artificial intelligence (Villa, Ceroni,
Bagstad, Johnson, & Krivov, 2009).
Conclusion on Influence of artificial intelligence
Overall, it
can be said that artificial intelligence plays a very important role in not
only supporting technologies but also enhancing the capabilities of
organizations operating at different levels. Artificial intelligence as
technology is quite close to fiction as it enables the development of
applications that are beyond the traditional processes of development. Artificial
intelligence has substantially improved the lives of users in many ways. There
is a number of applications associated with the implementation of artificial
intelligence in organizations and real life. Currently artificial intelligence
as the capability to intimate with human Intelligence and to perform a
different task through proper procedures. The abilities of artificial
intelligence are to perform different types of solving problems of taking the
decisions and thinking about the learning procedures. AI not only plays an
integral role in the development of applications but it also assists in the
maintenance of sustainability of the environment. Organizations can use
applications of artificial intelligence to keep sustainability in check.
However, it is very important to consider testing artificial intelligence
various times before making it public. The impact of artificial intelligence is
higher in economic conditions and executes stock trades for different technologies
in case of service sector computer algorithms are executing the sufficiently
higher role. The artificial intelligence is even creeping into the lives of
human beings speedily through scanning machines and GPS navigations.
References of Influence of artificial intelligence
Bigdata-madesimple.
com. (2016, 08 18). The future of Artificial Intelligence: 6 ways it will
impact everyday life. Retrieved from bigdata-madesimple.com:
https://bigdata-madesimple.com/the-future-of-artificial-intelligence-6-ways-it-will-impact-everyday-life/
Blockdelta. io. (2018, 09 19). Artificial Intelligence and
its Impact on Daily Life. Retrieved from www.blockdelta.io:
https://www.blockdelta.io/artificial-intelligence-and-its-impact-on-daily-life/
Brookings. edu. (2015, 10 26). How robots, artificial
intelligence, and machine learning will affect employment and public policy.
Retrieved from www.brookings.edu:
https://www.brookings.edu/blog/techtank/2015/10/26/how-robots-artificial-intelligence-and-machine-learning-will-affect-employment-and-public-policy/
Forbes. com. (2018, 03 07). The Impact Of Artificial
Intelligence In The Everyday Lives Of Consumers. Retrieved from www.forbes.com:
https://www.forbes.com/sites/forbestechcouncil/2018/03/07/the-impact-of-artificial-intelligence-in-the-everyday-lives-of-consumers/#cd1e2136f314
Intellipaat. com. (2018, 03 05). How will Artificial
Intelligence Impact our Lives in the Future? Retrieved from intellipaat.com:
https://intellipaat.com/blog/how-will-artificial-intelligence-impact-our-lives/
Interestingengineering. com. (2017, 08 31). 17 Everyday
Applications of Artificial Intelligence in 2017. Retrieved from
interestingengineering. com:
https://interestingengineering.com/17-everyday-applications-of-artificial-intelligence-in-2017
Jordan, M. I., & Mitchell, T. M. (2015). Machine
learning: Trends, perspectives, and prospects. Review, 349(6245), 255-301.
Poola, I. (2017). How Artificial Intelligence in Impacting
Real Life Every day. International Journal of Advance Research and Development,
02(10), 96-100.
Shabbir, J., & Anwer, T. (2015). Artificial Intelligence
and its Role in Near Future. JOURNAL OF LATEX CLASS FILES, 14(08), 1-11.
Totalphase. com. (2017, 05 23). The Impact of Technology in
Our Lives and The Future of Technology. Retrieved from www.totalphase.com:
https://www.totalphase.com/blog/2017/05/impact-technology-lives-future-technology/
Villa, F., Ceroni, M., Bagstad, K., Johnson, G., &
Krivov, S. (2009). ARIES (Artificial Intelligence for Ecosystem Services): A
new tool for ecosystem services assessment, planning, and valuation. 11Th
annual BIOECON conference on economic instruments to enhance the conservation
and sustainable use of biodiversity, conference proceedings.