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Multiple criteria decision aid (MCDA) methods are illustrated in
this book through theoretical and computational techniques
utilizing Python. Existing methods are presented in detail with a
step by step learning approach. Theoretical background is given for
TOPSIS, VIKOR, PROMETHEE, SIR, AHP, goal programming, and their
variations. Comprehensive numerical examples are also discussed for
each method in conjunction with easy to follow Python code.
Extensions to multiple criteria decision making algorithms such as
fuzzy number theory and group decision making are introduced and
implemented through Python as well. Readers will learn how to
implement and use each method based on the problem, the available
data, the stakeholders involved, and the various requirements
needed. Focusing on the practical aspects of the multiple criteria
decision making methodologies, this book is designed for
researchers, practitioners and advanced graduate students in the
applied mathematics, information systems, operations research and
business administration disciplines, as well as other engineers and
scientists oriented in interdisciplinary research. Readers will
greatly benefit from this book by learning and applying various
MCDM/A methods. (Adiel Teixeira de Almeida, CDSID-Center for
Decision System and Information Development, Universidade Federal
de Pernambuco, Recife, Brazil) Promoting the development and
application of multicriteria decision aid is essential to ensure
more ethical and sustainable decisions. This book is a great
contribution to this objective. It is a perfect blend of theory and
practice, providing potential users and researchers with the
theoretical bases of some of the best-known methods as well as with
the computing tools needed to practice, to compare and to put these
methods to use. (Jean-Pierre Brans, Vrije Universiteit Brussel,
Brussels, Belgium) This book is intended for researchers,
practitioners and students alike in decision support who wish to
familiarize themselves quickly and efficiently with multicriteria
decision aiding algorithms. The proposed approach is original, as
it presents a selection of methods from the theory to the practical
implementation in Python, including a detailed example. This will
certainly facilitate the learning of these techniques, and
contribute to their effective dissemination in applications.
(Patrick Meyer, IMT Atlantique, Lab-STICC, Univ. Bretagne Loire,
Brest, France)
This book presents real-world decision support systems, i.e.,
systems that have been running for some time and as such have been
tested in real environments and complex situations; the cases are
from various application domains and highlight the best practices
in each stage of the system's life cycle, from the initial
requirements analysis and design phases to the final stages of the
project. Each chapter provides decision-makers with recommendations
and insights into lessons learned so that failures can be avoided
and successes repeated. For this reason unsuccessful cases, which
at some point of their life cycle were deemed as failures for one
reason or another, are also included. All decision support systems
are presented in a constructive, coherent and deductive manner to
enhance the learning effect. It complements the many works that
focus on theoretical aspects or individual module design and
development by offering 'good' and 'bad' practices when developing
and using decision support systems. Combining high-quality research
with real-world implementations, it is of interest to researchers
and professionals in industry alike.
GPU programming in MATLAB is intended for scientists, engineers, or
students who develop or maintain applications in MATLAB and would
like to accelerate their codes using GPU programming without losing
the many benefits of MATLAB. The book starts with coverage of the
Parallel Computing Toolbox and other MATLAB toolboxes for GPU
computing, which allow applications to be ported straightforwardly
onto GPUs without extensive knowledge of GPU programming. The next
part covers built-in, GPU-enabled features of MATLAB, including
options to leverage GPUs across multicore or different computer
systems. Finally, advanced material includes CUDA code in MATLAB
and optimizing existing GPU applications. Throughout the book,
examples and source codes illustrate every concept so that readers
can immediately apply them to their own development.
Multiple criteria decision aid (MCDA) methods are illustrated in
this book through theoretical and computational techniques
utilizing Python. Existing methods are presented in detail with a
step by step learning approach. Theoretical background is given for
TOPSIS, VIKOR, PROMETHEE, SIR, AHP, goal programming, and their
variations. Comprehensive numerical examples are also discussed for
each method in conjunction with easy to follow Python code.
Extensions to multiple criteria decision making algorithms such as
fuzzy number theory and group decision making are introduced and
implemented through Python as well. Readers will learn how to
implement and use each method based on the problem, the available
data, the stakeholders involved, and the various requirements
needed. Focusing on the practical aspects of the multiple criteria
decision making methodologies, this book is designed for
researchers, practitioners and advanced graduate students in the
applied mathematics, information systems, operations research and
business administration disciplines, as well as other engineers and
scientists oriented in interdisciplinary research. Readers will
greatly benefit from this book by learning and applying various
MCDM/A methods. (Adiel Teixeira de Almeida, CDSID-Center for
Decision System and Information Development, Universidade Federal
de Pernambuco, Recife, Brazil) Promoting the development and
application of multicriteria decision aid is essential to ensure
more ethical and sustainable decisions. This book is a great
contribution to this objective. It is a perfect blend of theory and
practice, providing potential users and researchers with the
theoretical bases of some of the best-known methods as well as with
the computing tools needed to practice, to compare and to put these
methods to use. (Jean-Pierre Brans, Vrije Universiteit Brussel,
Brussels, Belgium) This book is intended for researchers,
practitioners and students alike in decision support who wish to
familiarize themselves quickly and efficiently with multicriteria
decision aiding algorithms. The proposed approach is original, as
it presents a selection of methods from the theory to the practical
implementation in Python, including a detailed example. This will
certainly facilitate the learning of these techniques, and
contribute to their effective dissemination in applications.
(Patrick Meyer, IMT Atlantique, Lab-STICC, Univ. Bretagne Loire,
Brest, France)
This book presents real-world decision support systems, i.e.,
systems that have been running for some time and as such have been
tested in real environments and complex situations; the cases are
from various application domains and highlight the best practices
in each stage of the system's life cycle, from the initial
requirements analysis and design phases to the final stages of the
project. Each chapter provides decision-makers with recommendations
and insights into lessons learned so that failures can be avoided
and successes repeated. For this reason unsuccessful cases, which
at some point of their life cycle were deemed as failures for one
reason or another, are also included. All decision support systems
are presented in a constructive, coherent and deductive manner to
enhance the learning effect. It complements the many works that
focus on theoretical aspects or individual module design and
development by offering 'good' and 'bad' practices when developing
and using decision support systems. Combining high-quality research
with real-world implementations, it is of interest to researchers
and professionals in industry alike.
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