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	<title>Illinois Genetic Algorithms Laboratory</title>
	<link>http://www.illigal.uiuc.edu/web/books</link>
	<description>Books</description>
	<pubDate>Sun, 15 Jul 2007 17:40:13 +0000</pubDate>
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	<language>en</language>
			<item>
		<title>The Entrepreneurial Engineer</title>
		<link>http://www.illigal.uiuc.edu/web/books/2007/06/24/the-entrepreneurial-engineer/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2007/06/24/the-entrepreneurial-engineer/#comments</comments>
		<pubDate>Sun, 24 Jun 2007 18:05:47 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Engineering]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2007/06/24/the-entrepreneurial-engineer/</guid>
		<description><![CDATA[Entrepreneurial times call for The Entrepreneurial Engineer
In an age when technology and business are merging as never before, today&#8217;s engineers need skills matched with the times. Today, career success as an engineer is determined as much by an ability to communicate with coworkers, sell ideas, and manage time as by talent at manipulating a Laplace [...]]]></description>
			<content:encoded><![CDATA[<p><strong>Entrepreneurial times call for <em>The Entrepreneurial Engineer</em></strong></p>
<p>In an age when technology and business are merging as never before, today&#8217;s engineers need skills matched with the times. Today, career success as an engineer is determined as much by an ability to communicate with coworkers, sell ideas, and manage time as by talent at manipulating a Laplace transform, coding a Java(r) object, or analyzing a statically indeterminate structure.</p>
<p>This book covers those nontechnical skills needed by today&#8217;s entrepreneurial engineers who mix strong technical know-how, business and organizational prowess, and an alert eye for opportunity. Author David Goldberg unlocks the keys to ten core competencies at the heart of what entrepreneurial engineers need to master to be effective in a fast-moving world of deals, teams, startups, and innovating corporations. You&#8217;ll discover how to:</p>
<ul>
<li>Feel the essence-and the joys-of engineering</li>
<li>Examine personal motivation and set goals</li>
<li>Master time management and organization</li>
<li>Write fast and well under pressure</li>
<li>Prepare and deliver effective presentations</li>
<li>Understand and practice good human relations</li>
<li>Act ethically in matters large, small, and engineering</li>
<li>Assess technology opportunities</li>
<li>Understand teams, leadership, culture, and the organization of organizations</li>
</ul>
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		<title>Genetic Algorithms in Search, Optimization, and Machine Learning</title>
		<link>http://www.illigal.uiuc.edu/web/books/2007/02/24/genetic-algorithms-in-search-optimization-and-machine-learning/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2007/02/24/genetic-algorithms-in-search-optimization-and-machine-learning/#comments</comments>
		<pubDate>Sun, 25 Feb 2007 00:34:14 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2007/06/24/genetic-algorithms-in-search-optimization-and-machine-learning/</guid>
		<description><![CDATA[Reviews from amazon.com:
David Goldberg&#8217;s Genetic Algorithms in Search, Optimization and Machine Learning is by far the bestselling introduction to genetic algorithms. Goldberg is one of the preeminent researchers in the field&#8211;he has published over 100 research articles on genetic algorithms and is a student of John Holland, the father of genetic algorithms&#8211;and his deep understanding [...]]]></description>
			<content:encoded><![CDATA[<p><em>Reviews from amazon.com:</em><br />
David Goldberg&#8217;s Genetic Algorithms in Search, Optimization and Machine Learning is by far the bestselling introduction to genetic algorithms. Goldberg is one of the preeminent researchers in the field&#8211;he has published over 100 research articles on genetic algorithms and is a student of John Holland, the father of genetic algorithms&#8211;and his deep understanding of the material shines through. The book contains a complete listing of a simple genetic algorithm in Pascal, which C programmers can easily understand. The book covers all of the important topics in the field, including crossover, mutation, classifier systems, and fitness scaling, giving a novice with a computer science background enough information to implement a genetic algorithm and describe genetic algorithms to a friend.</p>
<p><a href="http://www.illigal.uiuc.edu/web/deg"><u>Goldberg, David E.</u><br />
</a></p>
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		<title>Scalable Optimization via Probabilistic Modeling: From Algorithms to Applications (Studies in Computational Intelligence)</title>
		<link>http://www.illigal.uiuc.edu/web/books/2006/11/14/scalable-optimization-via-probabilistic-modeling-from-algorithms-to-applications-studies-in-computational-intelligence/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2006/11/14/scalable-optimization-via-probabilistic-modeling-from-algorithms-to-applications-studies-in-computational-intelligence/#comments</comments>
		<pubDate>Tue, 14 Nov 2006 20:55:32 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2006/11/14/scalable-optimization-via-probabilistic-modeling-from-algorithms-to-applications-studies-in-computational-intelligence/</guid>
		<description><![CDATA[This book focuses like a laser beam on one of the hottest topics in evolutionary computation over the last decade or so: estimation of distribution algorithms (EDAs). EDAs are an important current technique that is leading to breakthroughs in genetic and evolutionary computation and in optimization more generally. I&#8217;m putting Scalable Optimization via Probabilistic Modeling [...]]]></description>
			<content:encoded><![CDATA[<p><P>This book focuses like a laser beam on one of the hottest topics in evolutionary computation over the last decade or so: estimation of distribution algorithms (EDAs). EDAs are an important current technique that is leading to breakthroughs in genetic and evolutionary computation and in optimization more generally. I&#8217;m putting Scalable Optimization via Probabilistic Modeling in a prominent place in my library, and I urge you to do so as well. This volume summarizes the state of the art at the same time it points to where that art is going. Buy it, read it, and take its lessons to heart.</p>
<p> <strong>David E Goldberg, University of Illinois at Urbana-Champaign</strong></p>
<p>This book is an excellent compilation of carefully selected topics in estimation of distribution algorithms&#8212;search algorithms that combine ideas from evolutionary algorithms and machine learning. The book covers a broad spectrum of important subjects ranging from design of robust and scalable optimization algorithms to efficiency enhancements and applications of these algorithms. The book should be of interest to theoreticians and practitioners alike, and is a must-have resource for those interested in stochastic optimization in general, and genetic and evolutionary algorithms in particular.<br />
<strong>John R. Koza, Stanford University</strong> </p>
<p>This edited book portrays population-based optimization algorithms and applications, covering the entire gamut of optimization problems having single and multiple objectives, discrete and continuous variables, serial and parallel computations, and simple and complex function models. Anyone interested in population-based optimization methods, either knowingly or unknowingly, use some form of an estimation of distribution algorithm (EDA). This book is an eye-opener and a must-read text, covering easy-to-read yet erudite articles on established and emerging EDA methodologies from real experts in the field.<br />
<strong>Kalyanmoy Deb, Indian Institute of Technology Kanpur</strong></p>
<p>This book is an excellent comprehensive resource on estimation of distribution algorithms. It can serve as the primary EDA resource for practitioner or researcher. The book includes chapters from all major contributors to EDA state-of-the-art and covers the spectrum from EDA design to applications. These algorithms strategically combine the advantages of genetic and evolutionary computation with the advantages of statistical, model building machine learning techniques. EDAs are useful to solve classes of difficult real-world problems in a robust and scalable manner.<br />
<strong>Una-May O&#8217;Reilly, Massachusetts Institute of Technology</strong> </p>
<p>Machine-learning methods continue to stir the public&#8217;s imagination due to its futuristic implications. But, probability-based optimization methods can have great impact now on many scientific multiscale and engineering design problems, especially true with use of efficient and competent genetic algorithms (GA) which are the basis of the present volume. Even though efficient and competent GAs outperform standard techniques and prevent negative issues, such as solution stagnation, inherent in the older but more well-known GAs, they remain less known or embraced in the scientific and engineering communities. To that end, the editors have brought together a selection of experts that (1) introduce the current methodology and lexicography of the field with illustrative discussions and highly useful references, (2) exemplify these new techniques that dramatic improve performance in provable hard problems, and (3) provide real-world applications of these techniques, such as antenna design. As one who has strayed into the use of genetic algorithms and genetic programming for multiscale modeling in materials science, I can say it would have been personally more useful if this would have come out five years ago, but, for my students, it will be a boon.<br />
<strong>Duane D. Johnson, University of Illinois at Urbana-Champaign</strong></p>
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		<title>Rule-Based Evolutionary Online Learning Systems: A Principled Approach to LCS Analysis and Design (Studies in Fuzziness and Soft Computing)</title>
		<link>http://www.illigal.uiuc.edu/web/books/2005/12/22/rule-based-evolutionary-online-learning-systems-a-principled-approach-to-lcs-analysis-and-design-studies-in-fuzziness-and-soft-computing/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2005/12/22/rule-based-evolutionary-online-learning-systems-a-principled-approach-to-lcs-analysis-and-design-studies-in-fuzziness-and-soft-computing/#comments</comments>
		<pubDate>Thu, 22 Dec 2005 21:07:17 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2005/12/22/rule-based-evolutionary-online-learning-systems-a-principled-approach-to-lcs-analysis-and-design-studies-in-fuzziness-and-soft-computing/</guid>
		<description><![CDATA[The book offers a comprehensive introduction to learning classifier systems (LCS) &#8211; or more generally, rule-based evolutionary online learning systems. LCSs learn interactively &#8211; much like a neural network &#8211; but with an increased adaptivity and flexibility. This book provides the necessary background knowledge on problem types, genetic algorithms, and reinforcement learning as well as [...]]]></description>
			<content:encoded><![CDATA[<p>The book offers a comprehensive introduction to learning classifier systems (LCS) &ndash; or more generally, rule-based evolutionary online learning systems. LCSs learn interactively &ndash; much like a neural network &ndash; but with an increased adaptivity and flexibility. This book provides the necessary background knowledge on problem types, genetic algorithms, and reinforcement learning as well as a principled, modular analysis approach to understand, analyze, and design LCSs. The analysis is exemplarily carried through on the XCS classifier system &ndash; the currently most prominent system in LCS research. Several enhancements are introduced to XCS and evaluated. An application suite is provided including classification, reinforcement learning and data-mining problems. Reconsidering John Holland&rsquo;s original vision, the book finally discusses the current potentials of LCSs for successful applications in cognitive science and related areas.</p>
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		<title>Hierarchical Bayesian Optimization Algorithm : Toward a New Generation of Evolutionary Algorithms (Studies in Fuzziness and Soft Computing)</title>
		<link>http://www.illigal.uiuc.edu/web/books/2005/03/24/hierarchical-bayesian-optimization-algorithm-toward-a-new-generation-of-evolutionary-algorithms-studies-in-fuzziness-and-soft-computing/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2005/03/24/hierarchical-bayesian-optimization-algorithm-toward-a-new-generation-of-evolutionary-algorithms-studies-in-fuzziness-and-soft-computing/#comments</comments>
		<pubDate>Thu, 24 Mar 2005 20:44:23 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2005/03/24/hierarchical-bayesian-optimization-algorithm-toward-a-new-generation-of-evolutionary-algorithms-studies-in-fuzziness-and-soft-computing/</guid>
		<description><![CDATA[Book Description Hierarchical Bayesian Optimization Algorithm: Toward a New Generation of Evolutionary Algorithms provides a framework for the design of competent optimization techniques by combining advanced evolutionary algorithms with state-of-the-art machine learning techniques. The primary focus of the book is on two algorithms that replace traditional variation operators of evolutionary algorithms by learning and sampling [...]]]></description>
			<content:encoded><![CDATA[<p><strong>Book Description </strong>Hierarchical Bayesian Optimization Algorithm: Toward a New Generation of Evolutionary Algorithms provides a framework for the design of competent optimization techniques by combining advanced evolutionary algorithms with state-of-the-art machine learning techniques. The primary focus of the book is on two algorithms that replace traditional variation operators of evolutionary algorithms by learning and sampling Bayesian networks: the Bayesian optimization algorithm (BOA) and the hierarchical BOA (hBOA) . They provide a scalable solution to a broad class of problems. The book provides an overview of evolutionary algorithms that use probabilistic models to guide their search, motivates and describes BOA and hBOA in a way accessible to a wide audience and presents numerous results confirming that they are revolutionary approaches to black-box optimization.</p>
<p><u><a href="http://www.cs.umsl.edu/~pelikan/index.html">Pelikan, Martin</a></u></p>
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		<title>Optimization for Engineering Design: Algorithms and Examples</title>
		<link>http://www.illigal.uiuc.edu/web/books/2004/02/29/optimization-for-engineering-design-algorithms-and-examples/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2004/02/29/optimization-for-engineering-design-algorithms-and-examples/#comments</comments>
		<pubDate>Mon, 01 Mar 2004 01:33:10 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2004/02/29/optimization-for-engineering-design-algorithms-and-examples/</guid>
		<description><![CDATA[From the author:Presents a number of traditional and nontraditional (genetic algorithms and simulated annealing) optimization techniques in an easy-to-understand step-by-step format. Algorithms are supported with numerical examples and computer codes. Note: This book is not available at Amazon.com.
Related Posts]]></description>
			<content:encoded><![CDATA[<p><strong>From the author:</strong><br />Presents a number of traditional and nontraditional (genetic algorithms and simulated annealing) optimization techniques in an easy-to-understand step-by-step format. Algorithms are supported with numerical examples and computer codes. <em>Note:</em> This book is not available at Amazon.com.</p>
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		<title>Representations for Genetic and Evolutionary Algorithms</title>
		<link>http://www.illigal.uiuc.edu/web/books/2002/08/10/representations-for-genetic-and-evolutionary-algorithms/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2002/08/10/representations-for-genetic-and-evolutionary-algorithms/#comments</comments>
		<pubDate>Sat, 10 Aug 2002 20:25:45 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2002/08/10/representations-for-genetic-and-evolutionary-algorithms/</guid>
		<description><![CDATA[Book DescriptionIn the field of genetic and evolutionary algorithms (GEAs), much theory and empirical study has been heaped upon operators and test problems, but problem representation has often been taken as given. This monograph breaks with this tradition and studies a number of critical elements of a theory of representations for GEAs and applies them [...]]]></description>
			<content:encoded><![CDATA[<p><strong>Book Description</strong><br />In the field of genetic and evolutionary algorithms (GEAs), much theory and empirical study has been heaped upon operators and test problems, but problem representation has often been taken as given. This monograph breaks with this tradition and studies a number of critical elements of a theory of representations for GEAs and applies them to the empirical study of various important idealized test functions and problems of commercial import. The book considers basic concepts of representations, such as redundancy, scaling and locality and describes how GEAs&#8217; performance is influenced. Using the developed theory representations can be analyzed and designed in a theory-guided manner. The theoretical concepts are used as examples for efficiently solving integer optimization problems and network design problems. The results show that proper representations are crucial for GEAs&#8217; success. </p>
<p><a href="http://wi.oec.uni-bayreuth.de/mitarbeiter/rothlauf/"><u>Rothlauf, Franz</font></u></a>.</p>
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		<title>The Design of Innovation (Genetic Algorithms and Evolutionary Computation)</title>
		<link>http://www.illigal.uiuc.edu/web/books/2002/06/30/the-design-of-innovation-genetic-algorithms-and-evolutionary-computation/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2002/06/30/the-design-of-innovation-genetic-algorithms-and-evolutionary-computation/#comments</comments>
		<pubDate>Sun, 30 Jun 2002 20:38:07 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2002/06/30/the-design-of-innovation-genetic-algorithms-and-evolutionary-computation/</guid>
		<description><![CDATA[Book Summary THE DESIGN OF INNOVATION shows how to design and implement competent genetic algorithms&#8212;genetic algorithms that solve hard problems quickly, reliably, and accurately&#8212;and how the invention of competent genetic algorithms amounts to the creation of an effective computational theory of human innovation. For the specialist in genetic algorithms and evolutionary computation, this book combines [...]]]></description>
			<content:encoded><![CDATA[<p><strong>Book Summary </strong><em>THE DESIGN OF INNOVATION</em> shows how to design and implement competent genetic algorithms&mdash;genetic algorithms that solve hard problems quickly, reliably, and accurately&mdash;and how the invention of competent genetic algorithms amounts to the creation of an effective computational theory of human innovation. For the specialist in genetic algorithms and evolutionary computation, this book combines over two decades of hard-won research results in a single volume to provide a comprehensive step-by-step guide to designing genetic algorithms that scale well with problem size and difficulty. For the innovation researcher&mdash;whether from the social and behavioral sciences, the natural sciences, the humanities, or the arts&mdash;this unique book gives a consistent and valuable mathematical and computational viewpoint for understanding certain aspects of human innovation. For all readers, <em>THE DESIGN OF INNOVATION</em> provides an entr&eacute;e into the world of competent genetic algorithms and innovation through a methodology of invention borrowed from the Wright brothers. Combining careful decomposition, cost-effective, little analytical models, and careful design, the road to competence is paved with easily understood examples, simulations, and results from the literature.</p>
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		<title>OmeGA: A Competent Genetic Algorithm for Solving Permutation and Scheduling Problems</title>
		<link>http://www.illigal.uiuc.edu/web/books/2002/01/30/omega-a-competent-genetic-algorithm-for-solving-permutation-and-scheduling-problems/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2002/01/30/omega-a-competent-genetic-algorithm-for-solving-permutation-and-scheduling-problems/#comments</comments>
		<pubDate>Thu, 31 Jan 2002 00:34:16 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2002/01/30/omega-a-competent-genetic-algorithm-for-solving-permutation-and-scheduling-problems/</guid>
		<description><![CDATA[Genetic Algorithms and Evolutionary Computation, Volume 6.
Book Description
OmeGA: A Competent Genetic Algorithm for Solving Permutation and Scheduling Problemsaddresses two increasingly important areas in GA implementation and practice. OmeGA, or the ordering messy genetic algorithm, combines some of the latest in competent GA technology to solve scheduling and other permutation problems. Competent GAs are those designed [...]]]></description>
			<content:encoded><![CDATA[<p>Genetic Algorithms and Evolutionary Computation, Volume 6.</p>
<p><strong>Book Description</strong><br />
<em>OmeGA: A Competent Genetic Algorithm for Solving Permutation and Scheduling Problems</em>addresses two increasingly important areas in GA implementation and practice. OmeGA, or the ordering messy genetic algorithm, combines some of the latest in competent GA technology to solve scheduling and other permutation problems. Competent GAs are those designed for principled solutions of hard problems, quickly, reliably, and accurately. Permutation and scheduling problems are difficult combinatorial optimization problems with commercial import across a variety of industries. This book approaches both subjects systematically and clearly. The first part of the book presents the clearest description of messy GAs written to date along with an innovative adaptation of the method to ordering problems. The second part of the book investigates the algorithm on boundedly difficult test functions, showing principled scale up as problems become harder and longer. Finally, the book applies the algorithm to a test function drawn from the literature of scheduling.</p>
<p><a href="http://www.illigal.uiuc.edu/~dimitri/"><u>Knjazew, Dimitri</font></u></a>.</p>
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		<title>Anticipatory Learning Classifier Systems</title>
		<link>http://www.illigal.uiuc.edu/web/books/2002/01/25/anticipatory-learning-classifier-systems/</link>
		<comments>http://www.illigal.uiuc.edu/web/books/2002/01/25/anticipatory-learning-classifier-systems/#comments</comments>
		<pubDate>Sat, 26 Jan 2002 01:01:00 +0000</pubDate>
		<dc:creator>admin</dc:creator>
		
		<category><![CDATA[Genetic algorithms]]></category>

		<guid isPermaLink="false">http://www.illigal.uiuc.edu/web/books/2002/01/25/anticipatory-learning-classifier-systems/</guid>
		<description><![CDATA[Genetic Algorithms and Evolutionary Computation, Volume 
Book Description
Anticipatory Learning Classifier Systems describes the state of the art of anticipatory learning classifier systems-adaptive rule learning systems that autonomously build anticipatory environmental models. An anticipatory model specifies all possible action-effects in an environment with respect to given situations. It can be used to simulate anticipatory adaptive behavior. [...]]]></description>
			<content:encoded><![CDATA[<p>Genetic Algorithms and Evolutionary Computation, Volume </p>
<p><strong>Book Description</strong><br />
<em>Anticipatory Learning Classifier Systems</em> describes the state of the art of anticipatory learning classifier systems-adaptive rule learning systems that autonomously build anticipatory environmental models. An anticipatory model specifies all possible action-effects in an environment with respect to given situations. It can be used to simulate anticipatory adaptive behavior. <em>Anticipatory Learning Classifier Systems</em> highlights how anticipations influence cognitive systems and illustrates the use of anticipations for (1) faster reactivity, (2) adaptive behavior beyond reinforcement learning, (3) attentional mechanisms, (4) simulation of other agents and (5) the implementation of a motivational module. The book focuses on a particular evolutionary model learning mechanism, a combination of a directed specializing mechanism and a genetic generalizing mechanism. Experiments show that anticipatory adaptive behavior can be simulated by exploiting the evolving anticipatory model for even faster model learning, planning applications, and adaptive behavior beyond reinforcement learning. <em>Anticipatory Learning Classifier Systems</em> gives a detailed algorithmic description as well as a program documentation of a C++ implementation of the system. It is an excellent reference for researchers interested in adaptive behavior and machine learning from a cognitive science perspective as well as those who are interested in combining evolutionary learning mechanisms for learning and optimization tasks.</p>
<p><a href="http://www-illigal.ge.uiuc.edu/~butz/"><u>Butz, Martin</font></u></a>.</p>
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