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<!-- ************************************************************************* -->
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<body>
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<br/><br/>
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<p>
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One of the major goals of dlib is to have documentation that enables
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someone to easily make use of its various components. Ideally,
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you would read a short description of something, understand it immediately,
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and begin using it in your application without any difficulty. Obviously, this
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depends partly on the background of the user. For example, if you have
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never written software before then it probably isn't going to be this easy.
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</p>
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<p>
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This page contains references to books, along with my commentary, which explain most of
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the subjects needed to understand the various parts of the library. In most cases these are
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the books I learned from during the process
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of creating dlib. As always, if you disagree with anything or think I have left out an important
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text then shoot me an <a href="mailto:davis@dlib.net">email</a>.
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</p>
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<br/><br/>
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@ -16,33 +33,84 @@
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<ul>
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<h3>C++</h3>
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<ul>
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<li> <i>Programming: Principles and Practice Using C++</i> by Bjarne Stroustrup </li>
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<li> <i>Effective C++: 55 Specific Ways to Improve Your Programs and Designs</i> (3rd Edition) by Scott Meyers </li>
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<li> <i>More Effective C++: 35 New Ways to Improve Your Programs and Designs</i> by Scott Meyers </li>
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<li> <i>The C++ Standard Library: A Tutorial and Reference</i> by Nicolai M. Josuttis </li>
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<li> <a href="http://stdcxx.apache.org/doc/stdlibref/index.html">Apache C++ Standard Library Reference</a></li>
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<li> <i>Programming: Principles and Practice Using C++</i> by Bjarne Stroustrup
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<ul> This is the sort of book you would use in a freshman introduction-to-programming class.
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So if you are just beginning to study programming and interested in C++ then I think
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it is probably safe to say this is one of the best books you could read. It is both
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recent (2009) and written by the creator of C++. </ul> <br/>
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</li>
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<li> <i>Effective C++: 55 Specific Ways to Improve Your Programs and Designs</i> (3rd Edition) by Scott Meyers
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<ul> This is a great intermediate level C++ book. Most people have heard the jokes about
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how easy it is to shoot yourself in the foot with C++. This book explains many things you
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need to know about the language to avoid doing so on a regular basis. So if you are
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writing C++ software then this is a MUST read. I would go as far as to claim that
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you are a danger to the C++ software you touch unless you know what is in this book.
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I'm not kidding. However, the book isn't just about the quirks of C++. It also discusses many general
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software engineering ideas which have wide applicability. So in this
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respect it is a great book for any software developer to read.
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</ul><br/>
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</li>
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<li> <i>More Effective C++: 35 New Ways to Improve Your Programs and Designs</i> by Scott Meyers
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<ul> Consider this an expansion to Effective C++. If you are going to read the above
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book then you would almost certainly benefit from reading this one as well.
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</ul><br/>
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</li>
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<li> <i>The C++ Standard Library: A Tutorial and Reference</i> by Nicolai M. Josuttis
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<ul> If you are going to buy a reference book on the C++ standard library then this
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is the one to get. I think you
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will find it is better than any of the available online references. So if you find
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yourself frustrated with the online resources, then this is the book for you.
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</ul><br/>
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</li>
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<li> <a href="http://stdcxx.apache.org/doc/stdlibref/index.html">Apache C++ Standard Library Reference</a>
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<ul> What I said aside, this is a good online reference. I often find myself referring to it
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when I do not have the Josuttis book on hand.
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</ul><br/>
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</li>
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</ul>
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<h3>Multithreading</h3>
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<ul>
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<li> <i>Programming with POSIX(R) Threads</i> by David R. Butenhof </li>
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<li> <i>Programming with POSIX Threads</i> by David R. Butenhof
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<ul> When I was an undergrad, this book was my main resource for learning about multithreading.
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It was enjoyable to read (as are all the books on this list I think) and covered everything
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in great depth without becoming overbearing. Also, despite what the title may suggest,
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this book is useful for understanding multithreading broadly, not just multithreading
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on POSIX systems.
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</ul><br/>
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</li>
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</ul>
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<h3>Network Programming</h3>
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<ul>
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<li> <i>Unix Network Programming, Volume 1: The Sockets Networking API</i> (3rd Edition)
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by W. Richard Stevens</li>
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by W. Richard Stevens
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<ul> A lot of people call this book the network programming Bible and
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this praise is well deserved. If you want a deep understanding of how computer networks
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function, including the Internet, then this is the book to read. As with
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the Butenhof book above, this is excellent even for people who do not
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intend to write software for Unix systems.
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</ul><br/>
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</li>
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</ul>
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<h3>WIN32 Programming</h3>
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It has been a long time since I needed to refer to these two books. However,
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they contained information that I couldn't find elsewhere no matter
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how hard I looked. So I recommend them in case you need to create or understand
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some low level win32 code.
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<br/>
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<br/>
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<ul>
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<li> <i>Win32 Programming</i> by Brent E. Rector and Joseph M. Newcomer
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<li> <i>Win32 Programming</i> by Brent E. Rector and Joseph M. Newcomer </li>
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<li> <i>Programming Windows</i> by Charles Petzold </li>
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<li> <a href="http://msdn.microsoft.com/en-us/library/default.aspx">MSDN Library</a>
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<ul> This is Microsoft's online reference documentation. It is very large and sometimes
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confusing. But at the end of the day you should be able to find the documentation
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for just about every function in the entire Windows API.
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</ul><br/>
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</li>
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<li>
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<i>Programming Windows</i> by Charles Petzold
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</li>
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<li> <a href="http://msdn.microsoft.com/en-us/library/default.aspx">MSDN Library</a> is great </li>
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</ul>
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</ul>
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@ -53,26 +121,79 @@
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<h2>Computer Science: Algorithms and Data Structures</h2>
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<ul>
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<li> <i>Introduction to Algorithms</i> by Cormen, Leiserson, Rivest and Stein
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<ul> You should get this book if you are looking for a good discussion of the classic computer science
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algorithms and data structures (e.g. most of the components on the <a href="containers.html">containers</a>
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page).
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</ul><br/>
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</li>
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<li> <i>Algorithms in C++, Parts 1-4: Fundamentals, Data Structure, Sorting, Searching</i>
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(3rd Edition) by Robert Sedgewick
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<ul> This is another good algorithms book. If you are going to get only one book on this
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subject then get the one above. However, when I was learning about these topics I
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used both these books and on many occasions I found it helpful to read the description
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of an algorithm or data structure in both. Where one description was a little vague or
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confusing the other generally filled in the gaps.
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</ul><br/>
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</li>
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<li> <i>Algorithms in C++, Parts 1-4: Fundamentals, Data Structure, Sorting, Searching</i> (3rd Edition) by Robert Sedgewick </li>
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</ul>
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<h2>Lossless Data Compression</h2>
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<ul>
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<li> <i>Text Compression</i> by Bell, Cleary, and Witten </li>
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<li> <i>Text Compression</i> by Bell, Cleary, and Witten
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<ul> When I was studying data compression this was my most useful
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resource. So if you are looking to understand how lossless data compression
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algorithms work then this is the book you want. It is completely self-contained
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and an absolute joy to read. Note that contrary to one of the reviews on
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amazon.com, the book <i>Managing Gigabytes</i> is not the second edition of this book;
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if this topic interests you then be sure you get the 318 page
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book published in 1990.
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</ul><br/>
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</li>
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</ul>
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<h2>General Math</h2>
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<ul>
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<li> <i>Calculus: Single and Multivariable</i> by Hughes-Hallett, Gleason, and McCallum </li>
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<li> <i>Linear Algebra Done Right</i> by Sheldon Jay Axler </li>
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<li> <i>Numerical Linear Algebra</i> by Trefethen and Bau </li>
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<li> <i>Introduction to Real Analysis</i> (third edition) by Bartle and Sherbert </li>
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<li> <i>Linear Algebra Done Right</i> by Sheldon Jay Axler
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<ul> If a matrix seems like an arbitrary grid of numbers or you find that
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you are confused by vectors, matrices, and the various things
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that get done with them then this book will change your whole view of this subject.
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It doesn't teach you any algorithms. Instead, it will give you a general
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framework in which to think about all this stuff. Once you have that down
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everything else will start to make a lot more sense. If all goes well
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you will even start to agree with the following: linear algebra is beautiful. :)
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</ul><br/>
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</li>
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<li> <i>Numerical Linear Algebra</i> by Trefethen and Bau
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<ul> While <i>Linear Algebra Done Right</i> is fairly abstract, this book by
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Trefethen and Bau will
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explain some of the actual algorithms that are often used.
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This is a great second book if you find that you want to know know more about
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the SVD, LU decomposition, or various other algorithms involving linear algebra.
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</ul><br/>
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</li>
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<li> <i>Calculus: Single and Multivariable</i> by Hughes-Hallett, Gleason, and McCallum
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<ul>
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Some of the books below will require and understanding of basic calculus. So
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I'm recommending this book. It was the book I used as an undergrad and I
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remember it being alright. That isn't exactly a glowing review so if you
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are really considering buying a calculus book you may want to check out
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other reviews before picking this one.
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</ul><br/>
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</li>
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<li> <i>Introduction to Real Analysis</i> (third edition) by Bartle and Sherbert
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<ul> At some level real analysis is like a really rigorous repeat of calculus.
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So if you already have an undergraduate education in calculus and
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you are reading things that seem reminiscent of calculus but involve
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stuff you haven't seen before (e.g. sup, inf, "sets of numbers")
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then you may be in need of a real analysis book. This one is quite good and should
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be accessible to someone with the usual undergraduate computer science math background.
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</ul><br/>
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</li>
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</ul>
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@ -80,36 +201,88 @@
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<h2>Optimization</h2>
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The subject of linear algebra is fundamental to optimization. So you must be familiar
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with the contents of a book like <i>Linear Algebra Done Right</i> if you are going to study
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this area. You will also need to know how to find the derivative of a function and
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understand what a derivative is all about. So you will need to know a little bit of
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calculus. Finally, once in a while you will need to know a little bit about real
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analysis. Ultimately, what you need all depends on how deep you want to go.
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<ul>
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<li> <i>Practical Methods of Optimization</i> (second edition) by R. Fletcher 1987 </li>
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<li> <i>Numerical Optimization</i> by Jorge Nocedal and Stephen Wright 2006 </li>
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<li> <i>Introduction to Derivative-Free Optimization</i> by Conn, Scheinberg, and Vicente </li>
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<li> <i>Practical Methods of Optimization</i> (second edition) by R. Fletcher 1987
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<ul> I love this book. When I got it I literally spent my weekends sitting around
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reading it for hours. It is a fascinating and well written introduction to
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the subject of optimization. I cannot recommend it highly enough.
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</ul><br/>
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</li>
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<li> <i>Numerical Optimization</i> by Jorge Nocedal and Stephen Wright 2006
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<ul> This is a more recent text on optimization that is also very good. It
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covers many algorithms not covered by the above book.
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</ul><br/>
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</li>
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<li> <i>Introduction to Derivative-Free Optimization</i> by Conn, Scheinberg, and Vicente
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<ul> If you want to understand algorithms like <a href="algorithms.html#find_min_bobyqa">BOBYQA</a>
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then this is a good recent book on the subject. Note that a book like <i>Practical Methods of Optimization</i>
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is almost certainly a prerequisite for reading this book. As an aside, BOBYQA is not discussed in this book but
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its predecessor, NEWUOA is.
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</ul><br/>
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</li>
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</ul>
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<h2>Machine Learning</h2>
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<ul>
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<li> <i>Artificial Intelligence: A Modern Approach </i> (3rd Edition) by Stuart Russell and Peter Norvig</li>
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<li> <i>Learning with Kernels: Support Vector Machines, Regularization, Optimization, and Beyond </i> by Bernhard Schlkopf and Alexander J. Smola</li>
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<li> <i>Artificial Intelligence: A Modern Approach </i> (3rd Edition) by Stuart Russell and Peter Norvig
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<ul> This book is about the much broader field of AI but it contains an excellent introduction
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to machine learning and it also covers other useful topics like <a href="bayes.html">bayesian networks</a>.
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Moreover, it is very well written and self-contained. So you don't need any particular
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background to be able to learn from it.
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</ul><br/>
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</li>
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<li> <i>Learning with Kernels: Support Vector Machines, Regularization, Optimization, and Beyond </i>
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by Bernhard Schlkopf and Alexander J. Smola
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<ul> Most of the machine learning tools in dlib are implementations of various kernel methods.
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So if you want a book that covers this topic in great depth as well as breadth then this is
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probably the book for you. The most important prerequisite for this book is linear
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algebra. Virtually everything in this book depends on linear algebra in a fundamental way.
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<p>
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The second important subject is optimization. Whenever you see the text
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mention the KKT conditions, duality, "primal variables", or quadratic programming it
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is talking about ideas from optimization. A good book which will explain all this to you
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is <i>Practical Methods of Optimization</i>. Note that this book calls the KKT conditions
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just the "KT" conditions. They are talking about the same thing. Also, duality
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is something that comes up a lot in optimization but in the context of machine learning
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usually people are talking about a particular form known as the Wolfe Dual.
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</p>
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It would also be good (but not critical) to be familiar with real analysis.
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</ul><br/>
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</li>
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<li> <i>Kernel Methods for Pattern Analysis </i> by John Shawe-Taylor and Nello Cristianini
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<ul> asdfsdf alskd flaksjd flaskdj flskaj flaskd flkjs flk sadfl asdflkj as
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df aslkdfj asldkfj asldkf lkds flkajs dflkja sdflkj asdlkjf alsdkj flsakjd fasdjl f
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aslkdfj alskdf alsdkjf lksjadklajsd fklsadj fljkas dfklja sdlfkj asdlkfj asdlkj sadlkjf </ul> <br/> </li>
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<ul> This is another good book about kernel methods. If you have to choose between
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this book and <i>Learning with Kernels</i> I would go with <i>Learning with Kernels</i>. However, it is
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good to have both since reading different presentations of difficult subjects
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usually makes learning them easier.
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</ul><br/>
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</li>
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<li> The Journal of Machine Learning Research and NIPS </li>
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</ul>
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<h2>Image Processing</h2>
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<ul>
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<li> <i>Digital Image Processing</i> by Rafael C. Gonzalez and Richard E. Woods </li>
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<li> <i>Digital Image Processing</i> by Rafael C. Gonzalez and Richard E. Woods
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<ul> This is a terrific introduction to digital image processing if you are looking
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for a place to start learning about this subject.
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By and large this book doesn't require any special prerequisites. Sometimes
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calculus shows up, but not too much.
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</ul><br/>
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</li>
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</ul>
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</body>
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