|
Showing 1 - 4 of
4 matches in All Departments
Artificial intelligence (AI) in its various forms -- machine
learning, chatbots, robots, agents, etc. -- is increasingly being
seen as a core component of enterprise business workflow and
information management systems. The current promise and hype around
AI are being driven by software vendors, academic research
projects, and startups. However, we posit that the greatest promise
and potential for AI lies in the enterprise with its applications
touching all organizational facets. With increasing business
process and workflow maturity, coupled with recent trends in cloud
computing, datafication, IoT, cybersecurity, and advanced
analytics, there is an understanding that the challenges of
tomorrow cannot be solely addressed by today's people, processes,
and products. There is still considerable mystery, hype, and fear
about AI in today's world. A considerable amount of current
discourse focuses on a dystopian future that could adversely affect
humanity. Such opinions, with understandable fear of the unknown,
don't consider the history of human innovation, the current state
of business and technology, or the primarily augmentative nature of
tomorrow's AI. This book demystifies AI for the enterprise. It
takes readers from the basics (definitions, state-of-the-art, etc.)
to a multi-industry journey, and concludes with expert advice on
everything an organization must do to succeed. Along the way, we
debunk myths, provide practical pointers, and include best
practices with applicable vignettes. AI brings to enterprise the
capabilities that promise new ways by which professionals can
address both mundane and interesting challenges more efficiently,
effectively, and collaboratively (with humans). The opportunity for
tomorrow's enterprise is to augment existing teams and resources
with the power of AI in order to gain competitive advantage,
discover new business models, establish or optimize new revenues,
and achieve better customer and user satisfaction.
Artificial intelligence (AI) in its various forms -- machine
learning, chatbots, robots, agents, etc. -- is increasingly being
seen as a core component of enterprise business workflow and
information management systems. The current promise and hype around
AI are being driven by software vendors, academic research
projects, and startups. However, we posit that the greatest promise
and potential for AI lies in the enterprise with its applications
touching all organizational facets. With increasing business
process and workflow maturity, coupled with recent trends in cloud
computing, datafication, IoT, cybersecurity, and advanced
analytics, there is an understanding that the challenges of
tomorrow cannot be solely addressed by today's people, processes,
and products. There is still considerable mystery, hype, and fear
about AI in today's world. A considerable amount of current
discourse focuses on a dystopian future that could adversely affect
humanity. Such opinions, with understandable fear of the unknown,
don't consider the history of human innovation, the current state
of business and technology, or the primarily augmentative nature of
tomorrow's AI. This book demystifies AI for the enterprise. It
takes readers from the basics (definitions, state-of-the-art, etc.)
to a multi-industry journey, and concludes with expert advice on
everything an organization must do to succeed. Along the way, we
debunk myths, provide practical pointers, and include best
practices with applicable vignettes. AI brings to enterprise the
capabilities that promise new ways by which professionals can
address both mundane and interesting challenges more efficiently,
effectively, and collaboratively (with humans). The opportunity for
tomorrow's enterprise is to augment existing teams and resources
with the power of AI in order to gain competitive advantage,
discover new business models, establish or optimize new revenues,
and achieve better customer and user satisfaction.
Healthcare transformation requires us to continually look at new
and better ways to manage insights - both within and outside the
organization today. Increasingly, the ability to glean and
operationalize new insights efficiently as a byproduct of an
organization's day-to-day operations is becoming vital to hospitals
and health systems ability to survive and prosper. One of the
long-standing challenges in healthcare informatics has been the
ability to deal with the sheer variety and volume of disparate
healthcare data and the increasing need to derive veracity and
value out of it. Demystifying Big Data and Machine Learning for
Healthcare investigates how healthcare organizations can leverage
this tapestry of big data to discover new business value, use
cases, and knowledge as well as how big data can be woven into
pre-existing business intelligence and analytics efforts. This book
focuses on teaching you how to: Develop skills needed to identify
and demolish big-data myths Become an expert in separating hype
from reality Understand the V's that matter in healthcare and why
Harmonize the 4 C's across little and big data Choose data fi
delity over data quality Learn how to apply the NRF Framework
Master applied machine learning for healthcare Conduct a guided
tour of learning algorithms Recognize and be prepared for the
future of artificial intelligence in healthcare via best practices,
feedback loops, and contextually intelligent agents (CIAs) The
variety of data in healthcare spans multiple business workflows,
formats (structured, un-, and semi-structured), integration at
point of care/need, and integration with existing knowledge. In
order to deal with these realities, the authors propose new
approaches to creating a knowledge-driven learning
organization-based on new and existing strategies, methods and
technologies. This book will address the long-standing challenges
in healthcare informatics and provide pragmatic recommendations on
how to deal with them.
Healthcare transformation requires us to continually look at new
and better ways to manage insights - both within and outside the
organization today. Increasingly, the ability to glean and
operationalize new insights efficiently as a byproduct of an
organization's day-to-day operations is becoming vital to hospitals
and health systems ability to survive and prosper. One of the
long-standing challenges in healthcare informatics has been the
ability to deal with the sheer variety and volume of disparate
healthcare data and the increasing need to derive veracity and
value out of it. Demystifying Big Data and Machine Learning for
Healthcare investigates how healthcare organizations can leverage
this tapestry of big data to discover new business value, use
cases, and knowledge as well as how big data can be woven into
pre-existing business intelligence and analytics efforts. This book
focuses on teaching you how to: Develop skills needed to identify
and demolish big-data myths Become an expert in separating hype
from reality Understand the V's that matter in healthcare and why
Harmonize the 4 C's across little and big data Choose data fi
delity over data quality Learn how to apply the NRF Framework
Master applied machine learning for healthcare Conduct a guided
tour of learning algorithms Recognize and be prepared for the
future of artificial intelligence in healthcare via best practices,
feedback loops, and contextually intelligent agents (CIAs) The
variety of data in healthcare spans multiple business workflows,
formats (structured, un-, and semi-structured), integration at
point of care/need, and integration with existing knowledge. In
order to deal with these realities, the authors propose new
approaches to creating a knowledge-driven learning
organization-based on new and existing strategies, methods and
technologies. This book will address the long-standing challenges
in healthcare informatics and provide pragmatic recommendations on
how to deal with them.
|
You may like...
Tenet
John David Washington, Robert Pattinson, …
DVD
(1)
R51
Discovery Miles 510
Loot
Nadine Gordimer
Paperback
(2)
R205
R164
Discovery Miles 1 640
|