1 \input texinfo @c -*-texinfo-*-
3 @setfilename ginac.info
4 @settitle GiNaC, an open framework for symbolic computation within the C++ programming language
11 @c I hate putting "@noindent" in front of every paragraph.
19 * ginac: (ginac). C++ library for symbolic computation.
23 This is a tutorial that documents GiNaC @value{VERSION}, an open
24 framework for symbolic computation within the C++ programming language.
26 Copyright (C) 1999-2005 Johannes Gutenberg University Mainz, Germany
28 Permission is granted to make and distribute verbatim copies of
29 this manual provided the copyright notice and this permission notice
30 are preserved on all copies.
33 Permission is granted to process this file through TeX and print the
34 results, provided the printed document carries copying permission
35 notice identical to this one except for the removal of this paragraph
38 Permission is granted to copy and distribute modified versions of this
39 manual under the conditions for verbatim copying, provided that the entire
40 resulting derived work is distributed under the terms of a permission
41 notice identical to this one.
45 @c finalout prevents ugly black rectangles on overfull hbox lines
47 @title GiNaC @value{VERSION}
48 @subtitle An open framework for symbolic computation within the C++ programming language
49 @subtitle @value{UPDATED}
50 @author The GiNaC Group:
51 @author Christian Bauer, Alexander Frink, Richard Kreckel, Jens Vollinga
54 @vskip 0pt plus 1filll
55 Copyright @copyright{} 1999-2005 Johannes Gutenberg University Mainz, Germany
57 Permission is granted to make and distribute verbatim copies of
58 this manual provided the copyright notice and this permission notice
59 are preserved on all copies.
61 Permission is granted to copy and distribute modified versions of this
62 manual under the conditions for verbatim copying, provided that the entire
63 resulting derived work is distributed under the terms of a permission
64 notice identical to this one.
73 @node Top, Introduction, (dir), (dir)
74 @c node-name, next, previous, up
77 This is a tutorial that documents GiNaC @value{VERSION}, an open
78 framework for symbolic computation within the C++ programming language.
81 * Introduction:: GiNaC's purpose.
82 * A Tour of GiNaC:: A quick tour of the library.
83 * Installation:: How to install the package.
84 * Basic Concepts:: Description of fundamental classes.
85 * Methods and Functions:: Algorithms for symbolic manipulations.
86 * Extending GiNaC:: How to extend the library.
87 * A Comparison With Other CAS:: Compares GiNaC to traditional CAS.
88 * Internal Structures:: Description of some internal structures.
89 * Package Tools:: Configuring packages to work with GiNaC.
95 @node Introduction, A Tour of GiNaC, Top, Top
96 @c node-name, next, previous, up
98 @cindex history of GiNaC
100 The motivation behind GiNaC derives from the observation that most
101 present day computer algebra systems (CAS) are linguistically and
102 semantically impoverished. Although they are quite powerful tools for
103 learning math and solving particular problems they lack modern
104 linguistic structures that allow for the creation of large-scale
105 projects. GiNaC is an attempt to overcome this situation by extending a
106 well established and standardized computer language (C++) by some
107 fundamental symbolic capabilities, thus allowing for integrated systems
108 that embed symbolic manipulations together with more established areas
109 of computer science (like computation-intense numeric applications,
110 graphical interfaces, etc.) under one roof.
112 The particular problem that led to the writing of the GiNaC framework is
113 still a very active field of research, namely the calculation of higher
114 order corrections to elementary particle interactions. There,
115 theoretical physicists are interested in matching present day theories
116 against experiments taking place at particle accelerators. The
117 computations involved are so complex they call for a combined symbolical
118 and numerical approach. This turned out to be quite difficult to
119 accomplish with the present day CAS we have worked with so far and so we
120 tried to fill the gap by writing GiNaC. But of course its applications
121 are in no way restricted to theoretical physics.
123 This tutorial is intended for the novice user who is new to GiNaC but
124 already has some background in C++ programming. However, since a
125 hand-made documentation like this one is difficult to keep in sync with
126 the development, the actual documentation is inside the sources in the
127 form of comments. That documentation may be parsed by one of the many
128 Javadoc-like documentation systems. If you fail at generating it you
129 may access it from @uref{http://www.ginac.de/reference/, the GiNaC home
130 page}. It is an invaluable resource not only for the advanced user who
131 wishes to extend the system (or chase bugs) but for everybody who wants
132 to comprehend the inner workings of GiNaC. This little tutorial on the
133 other hand only covers the basic things that are unlikely to change in
137 The GiNaC framework for symbolic computation within the C++ programming
138 language is Copyright @copyright{} 1999-2005 Johannes Gutenberg
139 University Mainz, Germany.
141 This program is free software; you can redistribute it and/or
142 modify it under the terms of the GNU General Public License as
143 published by the Free Software Foundation; either version 2 of the
144 License, or (at your option) any later version.
146 This program is distributed in the hope that it will be useful, but
147 WITHOUT ANY WARRANTY; without even the implied warranty of
148 MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
149 General Public License for more details.
151 You should have received a copy of the GNU General Public License
152 along with this program; see the file COPYING. If not, write to the
153 Free Software Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston,
157 @node A Tour of GiNaC, How to use it from within C++, Introduction, Top
158 @c node-name, next, previous, up
159 @chapter A Tour of GiNaC
161 This quick tour of GiNaC wants to arise your interest in the
162 subsequent chapters by showing off a bit. Please excuse us if it
163 leaves many open questions.
166 * How to use it from within C++:: Two simple examples.
167 * What it can do for you:: A Tour of GiNaC's features.
171 @node How to use it from within C++, What it can do for you, A Tour of GiNaC, A Tour of GiNaC
172 @c node-name, next, previous, up
173 @section How to use it from within C++
175 The GiNaC open framework for symbolic computation within the C++ programming
176 language does not try to define a language of its own as conventional
177 CAS do. Instead, it extends the capabilities of C++ by symbolic
178 manipulations. Here is how to generate and print a simple (and rather
179 pointless) bivariate polynomial with some large coefficients:
183 #include <ginac/ginac.h>
185 using namespace GiNaC;
189 symbol x("x"), y("y");
192 for (int i=0; i<3; ++i)
193 poly += factorial(i+16)*pow(x,i)*pow(y,2-i);
195 cout << poly << endl;
200 Assuming the file is called @file{hello.cc}, on our system we can compile
201 and run it like this:
204 $ c++ hello.cc -o hello -lcln -lginac
206 355687428096000*x*y+20922789888000*y^2+6402373705728000*x^2
209 (@xref{Package Tools}, for tools that help you when creating a software
210 package that uses GiNaC.)
212 @cindex Hermite polynomial
213 Next, there is a more meaningful C++ program that calls a function which
214 generates Hermite polynomials in a specified free variable.
218 #include <ginac/ginac.h>
220 using namespace GiNaC;
222 ex HermitePoly(const symbol & x, int n)
224 ex HKer=exp(-pow(x, 2));
225 // uses the identity H_n(x) == (-1)^n exp(x^2) (d/dx)^n exp(-x^2)
226 return normal(pow(-1, n) * diff(HKer, x, n) / HKer);
233 for (int i=0; i<6; ++i)
234 cout << "H_" << i << "(z) == " << HermitePoly(z,i) << endl;
240 When run, this will type out
246 H_3(z) == -12*z+8*z^3
247 H_4(z) == -48*z^2+16*z^4+12
248 H_5(z) == 120*z-160*z^3+32*z^5
251 This method of generating the coefficients is of course far from optimal
252 for production purposes.
254 In order to show some more examples of what GiNaC can do we will now use
255 the @command{ginsh}, a simple GiNaC interactive shell that provides a
256 convenient window into GiNaC's capabilities.
259 @node What it can do for you, Installation, How to use it from within C++, A Tour of GiNaC
260 @c node-name, next, previous, up
261 @section What it can do for you
263 @cindex @command{ginsh}
264 After invoking @command{ginsh} one can test and experiment with GiNaC's
265 features much like in other Computer Algebra Systems except that it does
266 not provide programming constructs like loops or conditionals. For a
267 concise description of the @command{ginsh} syntax we refer to its
268 accompanied man page. Suffice to say that assignments and comparisons in
269 @command{ginsh} are written as they are in C, i.e. @code{=} assigns and
272 It can manipulate arbitrary precision integers in a very fast way.
273 Rational numbers are automatically converted to fractions of coprime
278 369988485035126972924700782451696644186473100389722973815184405301748249
280 123329495011708990974900260817232214728824366796574324605061468433916083
287 Exact numbers are always retained as exact numbers and only evaluated as
288 floating point numbers if requested. For instance, with numeric
289 radicals is dealt pretty much as with symbols. Products of sums of them
293 > expand((1+a^(1/5)-a^(2/5))^3);
294 1+3*a+3*a^(1/5)-5*a^(3/5)-a^(6/5)
295 > expand((1+3^(1/5)-3^(2/5))^3);
297 > evalf((1+3^(1/5)-3^(2/5))^3);
298 0.33408977534118624228
301 The function @code{evalf} that was used above converts any number in
302 GiNaC's expressions into floating point numbers. This can be done to
303 arbitrary predefined accuracy:
307 0.14285714285714285714
311 0.1428571428571428571428571428571428571428571428571428571428571428571428
312 5714285714285714285714285714285714285
315 Exact numbers other than rationals that can be manipulated in GiNaC
316 include predefined constants like Archimedes' @code{Pi}. They can both
317 be used in symbolic manipulations (as an exact number) as well as in
318 numeric expressions (as an inexact number):
324 9.869604401089358619+x
328 11.869604401089358619
331 Built-in functions evaluate immediately to exact numbers if
332 this is possible. Conversions that can be safely performed are done
333 immediately; conversions that are not generally valid are not done:
344 (Note that converting the last input to @code{x} would allow one to
345 conclude that @code{42*Pi} is equal to @code{0}.)
347 Linear equation systems can be solved along with basic linear
348 algebra manipulations over symbolic expressions. In C++ GiNaC offers
349 a matrix class for this purpose but we can see what it can do using
350 @command{ginsh}'s bracket notation to type them in:
353 > lsolve(a+x*y==z,x);
355 > lsolve(@{3*x+5*y == 7, -2*x+10*y == -5@}, @{x, y@});
357 > M = [ [1, 3], [-3, 2] ];
361 > charpoly(M,lambda);
363 > A = [ [1, 1], [2, -1] ];
366 [[1,1],[2,-1]]+2*[[1,3],[-3,2]]
369 > B = [ [0, 0, a], [b, 1, -b], [-1/a, 0, 0] ];
370 > evalm(B^(2^12345));
371 [[1,0,0],[0,1,0],[0,0,1]]
374 Multivariate polynomials and rational functions may be expanded,
375 collected and normalized (i.e. converted to a ratio of two coprime
379 > a = x^4 + 2*x^2*y^2 + 4*x^3*y + 12*x*y^3 - 3*y^4;
380 12*x*y^3+2*x^2*y^2+4*x^3*y-3*y^4+x^4
381 > b = x^2 + 4*x*y - y^2;
384 8*x^5*y+17*x^4*y^2+43*x^2*y^4-24*x*y^5+16*x^3*y^3+3*y^6+x^6
386 4*x^3*y-y^2-3*y^4+(12*y^3+4*y)*x+x^4+x^2*(1+2*y^2)
388 12*x*y^3-3*y^4+(-1+2*x^2)*y^2+(4*x+4*x^3)*y+x^2+x^4
393 You can differentiate functions and expand them as Taylor or Laurent
394 series in a very natural syntax (the second argument of @code{series} is
395 a relation defining the evaluation point, the third specifies the
398 @cindex Zeta function
402 > series(sin(x),x==0,4);
404 > series(1/tan(x),x==0,4);
405 x^(-1)-1/3*x+Order(x^2)
406 > series(tgamma(x),x==0,3);
407 x^(-1)-Euler+(1/12*Pi^2+1/2*Euler^2)*x+
408 (-1/3*zeta(3)-1/12*Pi^2*Euler-1/6*Euler^3)*x^2+Order(x^3)
410 x^(-1)-0.5772156649015328606+(0.9890559953279725555)*x
411 -(0.90747907608088628905)*x^2+Order(x^3)
412 > series(tgamma(2*sin(x)-2),x==Pi/2,6);
413 -(x-1/2*Pi)^(-2)+(-1/12*Pi^2-1/2*Euler^2-1/240)*(x-1/2*Pi)^2
414 -Euler-1/12+Order((x-1/2*Pi)^3)
417 Here we have made use of the @command{ginsh}-command @code{%} to pop the
418 previously evaluated element from @command{ginsh}'s internal stack.
420 Often, functions don't have roots in closed form. Nevertheless, it's
421 quite easy to compute a solution numerically, to arbitrary precision:
426 > fsolve(cos(x)-x,x,0,2);
427 0.7390851332151606416553120876738734040134117589007574649658
429 > X=fsolve(f,x,-10,10);
430 2.2191071489137460325957851882042901681753665565320678854155
432 -6.372367644529809108115521591070847222364418220770475144296E-58
435 Notice how the final result above differs slightly from zero by about
436 @math{6*10^(-58)}. This is because with 50 decimal digits precision the
437 root cannot be represented more accurately than @code{X}. Such
438 inaccuracies are to be expected when computing with finite floating
441 If you ever wanted to convert units in C or C++ and found this is
442 cumbersome, here is the solution. Symbolic types can always be used as
443 tags for different types of objects. Converting from wrong units to the
444 metric system is now easy:
452 140613.91592783185568*kg*m^(-2)
456 @node Installation, Prerequisites, What it can do for you, Top
457 @c node-name, next, previous, up
458 @chapter Installation
461 GiNaC's installation follows the spirit of most GNU software. It is
462 easily installed on your system by three steps: configuration, build,
466 * Prerequisites:: Packages upon which GiNaC depends.
467 * Configuration:: How to configure GiNaC.
468 * Building GiNaC:: How to compile GiNaC.
469 * Installing GiNaC:: How to install GiNaC on your system.
473 @node Prerequisites, Configuration, Installation, Installation
474 @c node-name, next, previous, up
475 @section Prerequisites
477 In order to install GiNaC on your system, some prerequisites need to be
478 met. First of all, you need to have a C++-compiler adhering to the
479 ANSI-standard @cite{ISO/IEC 14882:1998(E)}. We used GCC for development
480 so if you have a different compiler you are on your own. For the
481 configuration to succeed you need a Posix compliant shell installed in
482 @file{/bin/sh}, GNU @command{bash} is fine. Perl is needed by the built
483 process as well, since some of the source files are automatically
484 generated by Perl scripts. Last but not least, Bruno Haible's library
485 CLN is extensively used and needs to be installed on your system.
486 Please get it either from @uref{ftp://ftp.santafe.edu/pub/gnu/}, from
487 @uref{ftp://ftpthep.physik.uni-mainz.de/pub/gnu/, GiNaC's FTP site} or
488 from @uref{ftp://ftp.ilog.fr/pub/Users/haible/gnu/, Bruno Haible's FTP
489 site} (it is covered by GPL) and install it prior to trying to install
490 GiNaC. The configure script checks if it can find it and if it cannot
491 it will refuse to continue.
494 @node Configuration, Building GiNaC, Prerequisites, Installation
495 @c node-name, next, previous, up
496 @section Configuration
497 @cindex configuration
500 To configure GiNaC means to prepare the source distribution for
501 building. It is done via a shell script called @command{configure} that
502 is shipped with the sources and was originally generated by GNU
503 Autoconf. Since a configure script generated by GNU Autoconf never
504 prompts, all customization must be done either via command line
505 parameters or environment variables. It accepts a list of parameters,
506 the complete set of which can be listed by calling it with the
507 @option{--help} option. The most important ones will be shortly
508 described in what follows:
513 @option{--disable-shared}: When given, this option switches off the
514 build of a shared library, i.e. a @file{.so} file. This may be convenient
515 when developing because it considerably speeds up compilation.
518 @option{--prefix=@var{PREFIX}}: The directory where the compiled library
519 and headers are installed. It defaults to @file{/usr/local} which means
520 that the library is installed in the directory @file{/usr/local/lib},
521 the header files in @file{/usr/local/include/ginac} and the documentation
522 (like this one) into @file{/usr/local/share/doc/GiNaC}.
525 @option{--libdir=@var{LIBDIR}}: Use this option in case you want to have
526 the library installed in some other directory than
527 @file{@var{PREFIX}/lib/}.
530 @option{--includedir=@var{INCLUDEDIR}}: Use this option in case you want
531 to have the header files installed in some other directory than
532 @file{@var{PREFIX}/include/ginac/}. For instance, if you specify
533 @option{--includedir=/usr/include} you will end up with the header files
534 sitting in the directory @file{/usr/include/ginac/}. Note that the
535 subdirectory @file{ginac} is enforced by this process in order to
536 keep the header files separated from others. This avoids some
537 clashes and allows for an easier deinstallation of GiNaC. This ought
538 to be considered A Good Thing (tm).
541 @option{--datadir=@var{DATADIR}}: This option may be given in case you
542 want to have the documentation installed in some other directory than
543 @file{@var{PREFIX}/share/doc/GiNaC/}.
547 In addition, you may specify some environment variables. @env{CXX}
548 holds the path and the name of the C++ compiler in case you want to
549 override the default in your path. (The @command{configure} script
550 searches your path for @command{c++}, @command{g++}, @command{gcc},
551 @command{CC}, @command{cxx} and @command{cc++} in that order.) It may
552 be very useful to define some compiler flags with the @env{CXXFLAGS}
553 environment variable, like optimization, debugging information and
554 warning levels. If omitted, it defaults to @option{-g
555 -O2}.@footnote{The @command{configure} script is itself generated from
556 the file @file{configure.ac}. It is only distributed in packaged
557 releases of GiNaC. If you got the naked sources, e.g. from CVS, you
558 must generate @command{configure} along with the various
559 @file{Makefile.in} by using the @command{autogen.sh} script. This will
560 require a fair amount of support from your local toolchain, though.}
562 The whole process is illustrated in the following two
563 examples. (Substitute @command{setenv @var{VARIABLE} @var{value}} for
564 @command{export @var{VARIABLE}=@var{value}} if the Berkeley C shell is
567 Here is a simple configuration for a site-wide GiNaC library assuming
568 everything is in default paths:
571 $ export CXXFLAGS="-Wall -O2"
575 And here is a configuration for a private static GiNaC library with
576 several components sitting in custom places (site-wide GCC and private
577 CLN). The compiler is persuaded to be picky and full assertions and
578 debugging information are switched on:
581 $ export CXX=/usr/local/gnu/bin/c++
582 $ export CPPFLAGS="$(CPPFLAGS) -I$(HOME)/include"
583 $ export CXXFLAGS="$(CXXFLAGS) -DDO_GINAC_ASSERT -ggdb -Wall -pedantic"
584 $ export LDFLAGS="$(LDFLAGS) -L$(HOME)/lib"
585 $ ./configure --disable-shared --prefix=$(HOME)
589 @node Building GiNaC, Installing GiNaC, Configuration, Installation
590 @c node-name, next, previous, up
591 @section Building GiNaC
592 @cindex building GiNaC
594 After proper configuration you should just build the whole
599 at the command prompt and go for a cup of coffee. The exact time it
600 takes to compile GiNaC depends not only on the speed of your machines
601 but also on other parameters, for instance what value for @env{CXXFLAGS}
602 you entered. Optimization may be very time-consuming.
604 Just to make sure GiNaC works properly you may run a collection of
605 regression tests by typing
611 This will compile some sample programs, run them and check the output
612 for correctness. The regression tests fall in three categories. First,
613 the so called @emph{exams} are performed, simple tests where some
614 predefined input is evaluated (like a pupils' exam). Second, the
615 @emph{checks} test the coherence of results among each other with
616 possible random input. Third, some @emph{timings} are performed, which
617 benchmark some predefined problems with different sizes and display the
618 CPU time used in seconds. Each individual test should return a message
619 @samp{passed}. This is mostly intended to be a QA-check if something
620 was broken during development, not a sanity check of your system. Some
621 of the tests in sections @emph{checks} and @emph{timings} may require
622 insane amounts of memory and CPU time. Feel free to kill them if your
623 machine catches fire. Another quite important intent is to allow people
624 to fiddle around with optimization.
626 By default, the only documentation that will be built is this tutorial
627 in @file{.info} format. To build the GiNaC tutorial and reference manual
628 in HTML, DVI, PostScript, or PDF formats, use one of
637 Generally, the top-level Makefile runs recursively to the
638 subdirectories. It is therefore safe to go into any subdirectory
639 (@code{doc/}, @code{ginsh/}, @dots{}) and simply type @code{make}
640 @var{target} there in case something went wrong.
643 @node Installing GiNaC, Basic Concepts, Building GiNaC, Installation
644 @c node-name, next, previous, up
645 @section Installing GiNaC
648 To install GiNaC on your system, simply type
654 As described in the section about configuration the files will be
655 installed in the following directories (the directories will be created
656 if they don't already exist):
661 @file{libginac.a} will go into @file{@var{PREFIX}/lib/} (or
662 @file{@var{LIBDIR}}) which defaults to @file{/usr/local/lib/}.
663 So will @file{libginac.so} unless the configure script was
664 given the option @option{--disable-shared}. The proper symlinks
665 will be established as well.
668 All the header files will be installed into @file{@var{PREFIX}/include/ginac/}
669 (or @file{@var{INCLUDEDIR}/ginac/}, if specified).
672 All documentation (info) will be stuffed into
673 @file{@var{PREFIX}/share/doc/GiNaC/} (or
674 @file{@var{DATADIR}/doc/GiNaC/}, if @var{DATADIR} was specified).
678 For the sake of completeness we will list some other useful make
679 targets: @command{make clean} deletes all files generated by
680 @command{make}, i.e. all the object files. In addition @command{make
681 distclean} removes all files generated by the configuration and
682 @command{make maintainer-clean} goes one step further and deletes files
683 that may require special tools to rebuild (like the @command{libtool}
684 for instance). Finally @command{make uninstall} removes the installed
685 library, header files and documentation@footnote{Uninstallation does not
686 work after you have called @command{make distclean} since the
687 @file{Makefile} is itself generated by the configuration from
688 @file{Makefile.in} and hence deleted by @command{make distclean}. There
689 are two obvious ways out of this dilemma. First, you can run the
690 configuration again with the same @var{PREFIX} thus creating a
691 @file{Makefile} with a working @samp{uninstall} target. Second, you can
692 do it by hand since you now know where all the files went during
696 @node Basic Concepts, Expressions, Installing GiNaC, Top
697 @c node-name, next, previous, up
698 @chapter Basic Concepts
700 This chapter will describe the different fundamental objects that can be
701 handled by GiNaC. But before doing so, it is worthwhile introducing you
702 to the more commonly used class of expressions, representing a flexible
703 meta-class for storing all mathematical objects.
706 * Expressions:: The fundamental GiNaC class.
707 * Automatic evaluation:: Evaluation and canonicalization.
708 * Error handling:: How the library reports errors.
709 * The Class Hierarchy:: Overview of GiNaC's classes.
710 * Symbols:: Symbolic objects.
711 * Numbers:: Numerical objects.
712 * Constants:: Pre-defined constants.
713 * Fundamental containers:: Sums, products and powers.
714 * Lists:: Lists of expressions.
715 * Mathematical functions:: Mathematical functions.
716 * Relations:: Equality, Inequality and all that.
717 * Integrals:: Symbolic integrals.
718 * Matrices:: Matrices.
719 * Indexed objects:: Handling indexed quantities.
720 * Non-commutative objects:: Algebras with non-commutative products.
721 * Hash Maps:: A faster alternative to std::map<>.
725 @node Expressions, Automatic evaluation, Basic Concepts, Basic Concepts
726 @c node-name, next, previous, up
728 @cindex expression (class @code{ex})
731 The most common class of objects a user deals with is the expression
732 @code{ex}, representing a mathematical object like a variable, number,
733 function, sum, product, etc@dots{} Expressions may be put together to form
734 new expressions, passed as arguments to functions, and so on. Here is a
735 little collection of valid expressions:
738 ex MyEx1 = 5; // simple number
739 ex MyEx2 = x + 2*y; // polynomial in x and y
740 ex MyEx3 = (x + 1)/(x - 1); // rational expression
741 ex MyEx4 = sin(x + 2*y) + 3*z + 41; // containing a function
742 ex MyEx5 = MyEx4 + 1; // similar to above
745 Expressions are handles to other more fundamental objects, that often
746 contain other expressions thus creating a tree of expressions
747 (@xref{Internal Structures}, for particular examples). Most methods on
748 @code{ex} therefore run top-down through such an expression tree. For
749 example, the method @code{has()} scans recursively for occurrences of
750 something inside an expression. Thus, if you have declared @code{MyEx4}
751 as in the example above @code{MyEx4.has(y)} will find @code{y} inside
752 the argument of @code{sin} and hence return @code{true}.
754 The next sections will outline the general picture of GiNaC's class
755 hierarchy and describe the classes of objects that are handled by
758 @subsection Note: Expressions and STL containers
760 GiNaC expressions (@code{ex} objects) have value semantics (they can be
761 assigned, reassigned and copied like integral types) but the operator
762 @code{<} doesn't provide a well-defined ordering on them. In STL-speak,
763 expressions are @samp{Assignable} but not @samp{LessThanComparable}.
765 This implies that in order to use expressions in sorted containers such as
766 @code{std::map<>} and @code{std::set<>} you have to supply a suitable
767 comparison predicate. GiNaC provides such a predicate, called
768 @code{ex_is_less}. For example, a set of expressions should be defined
769 as @code{std::set<ex, ex_is_less>}.
771 Unsorted containers such as @code{std::vector<>} and @code{std::list<>}
772 don't pose a problem. A @code{std::vector<ex>} works as expected.
774 @xref{Information About Expressions}, for more about comparing and ordering
778 @node Automatic evaluation, Error handling, Expressions, Basic Concepts
779 @c node-name, next, previous, up
780 @section Automatic evaluation and canonicalization of expressions
783 GiNaC performs some automatic transformations on expressions, to simplify
784 them and put them into a canonical form. Some examples:
787 ex MyEx1 = 2*x - 1 + x; // 3*x-1
788 ex MyEx2 = x - x; // 0
789 ex MyEx3 = cos(2*Pi); // 1
790 ex MyEx4 = x*y/x; // y
793 This behavior is usually referred to as @dfn{automatic} or @dfn{anonymous
794 evaluation}. GiNaC only performs transformations that are
798 at most of complexity
806 algebraically correct, possibly except for a set of measure zero (e.g.
807 @math{x/x} is transformed to @math{1} although this is incorrect for @math{x=0})
810 There are two types of automatic transformations in GiNaC that may not
811 behave in an entirely obvious way at first glance:
815 The terms of sums and products (and some other things like the arguments of
816 symmetric functions, the indices of symmetric tensors etc.) are re-ordered
817 into a canonical form that is deterministic, but not lexicographical or in
818 any other way easy to guess (it almost always depends on the number and
819 order of the symbols you define). However, constructing the same expression
820 twice, either implicitly or explicitly, will always result in the same
823 Expressions of the form 'number times sum' are automatically expanded (this
824 has to do with GiNaC's internal representation of sums and products). For
827 ex MyEx5 = 2*(x + y); // 2*x+2*y
828 ex MyEx6 = z*(x + y); // z*(x+y)
832 The general rule is that when you construct expressions, GiNaC automatically
833 creates them in canonical form, which might differ from the form you typed in
834 your program. This may create some awkward looking output (@samp{-y+x} instead
835 of @samp{x-y}) but allows for more efficient operation and usually yields
836 some immediate simplifications.
838 @cindex @code{eval()}
839 Internally, the anonymous evaluator in GiNaC is implemented by the methods
842 ex ex::eval(int level = 0) const;
843 ex basic::eval(int level = 0) const;
846 but unless you are extending GiNaC with your own classes or functions, there
847 should never be any reason to call them explicitly. All GiNaC methods that
848 transform expressions, like @code{subs()} or @code{normal()}, automatically
849 re-evaluate their results.
852 @node Error handling, The Class Hierarchy, Automatic evaluation, Basic Concepts
853 @c node-name, next, previous, up
854 @section Error handling
856 @cindex @code{pole_error} (class)
858 GiNaC reports run-time errors by throwing C++ exceptions. All exceptions
859 generated by GiNaC are subclassed from the standard @code{exception} class
860 defined in the @file{<stdexcept>} header. In addition to the predefined
861 @code{logic_error}, @code{domain_error}, @code{out_of_range},
862 @code{invalid_argument}, @code{runtime_error}, @code{range_error} and
863 @code{overflow_error} types, GiNaC also defines a @code{pole_error}
864 exception that gets thrown when trying to evaluate a mathematical function
867 The @code{pole_error} class has a member function
870 int pole_error::degree() const;
873 that returns the order of the singularity (or 0 when the pole is
874 logarithmic or the order is undefined).
876 When using GiNaC it is useful to arrange for exceptions to be caught in
877 the main program even if you don't want to do any special error handling.
878 Otherwise whenever an error occurs in GiNaC, it will be delegated to the
879 default exception handler of your C++ compiler's run-time system which
880 usually only aborts the program without giving any information what went
883 Here is an example for a @code{main()} function that catches and prints
884 exceptions generated by GiNaC:
889 #include <ginac/ginac.h>
891 using namespace GiNaC;
899 @} catch (exception &p) @{
900 cerr << p.what() << endl;
908 @node The Class Hierarchy, Symbols, Error handling, Basic Concepts
909 @c node-name, next, previous, up
910 @section The Class Hierarchy
912 GiNaC's class hierarchy consists of several classes representing
913 mathematical objects, all of which (except for @code{ex} and some
914 helpers) are internally derived from one abstract base class called
915 @code{basic}. You do not have to deal with objects of class
916 @code{basic}, instead you'll be dealing with symbols, numbers,
917 containers of expressions and so on.
921 To get an idea about what kinds of symbolic composites may be built we
922 have a look at the most important classes in the class hierarchy and
923 some of the relations among the classes:
925 @image{classhierarchy}
927 The abstract classes shown here (the ones without drop-shadow) are of no
928 interest for the user. They are used internally in order to avoid code
929 duplication if two or more classes derived from them share certain
930 features. An example is @code{expairseq}, a container for a sequence of
931 pairs each consisting of one expression and a number (@code{numeric}).
932 What @emph{is} visible to the user are the derived classes @code{add}
933 and @code{mul}, representing sums and products. @xref{Internal
934 Structures}, where these two classes are described in more detail. The
935 following table shortly summarizes what kinds of mathematical objects
936 are stored in the different classes:
939 @multitable @columnfractions .22 .78
940 @item @code{symbol} @tab Algebraic symbols @math{a}, @math{x}, @math{y}@dots{}
941 @item @code{constant} @tab Constants like
948 @item @code{numeric} @tab All kinds of numbers, @math{42}, @math{7/3*I}, @math{3.14159}@dots{}
949 @item @code{add} @tab Sums like @math{x+y} or @math{a-(2*b)+3}
950 @item @code{mul} @tab Products like @math{x*y} or @math{2*a^2*(x+y+z)/b}
951 @item @code{ncmul} @tab Products of non-commutative objects
952 @item @code{power} @tab Exponentials such as @math{x^2}, @math{a^b},
957 @code{sqrt(}@math{2}@code{)}
960 @item @code{pseries} @tab Power Series, e.g. @math{x-1/6*x^3+1/120*x^5+O(x^7)}
961 @item @code{function} @tab A symbolic function like
968 @item @code{lst} @tab Lists of expressions @{@math{x}, @math{2*y}, @math{3+z}@}
969 @item @code{matrix} @tab @math{m}x@math{n} matrices of expressions
970 @item @code{relational} @tab A relation like the identity @math{x}@code{==}@math{y}
971 @item @code{indexed} @tab Indexed object like @math{A_ij}
972 @item @code{tensor} @tab Special tensor like the delta and metric tensors
973 @item @code{idx} @tab Index of an indexed object
974 @item @code{varidx} @tab Index with variance
975 @item @code{spinidx} @tab Index with variance and dot (used in Weyl-van-der-Waerden spinor formalism)
976 @item @code{wildcard} @tab Wildcard for pattern matching
977 @item @code{structure} @tab Template for user-defined classes
982 @node Symbols, Numbers, The Class Hierarchy, Basic Concepts
983 @c node-name, next, previous, up
985 @cindex @code{symbol} (class)
986 @cindex hierarchy of classes
989 Symbolic indeterminates, or @dfn{symbols} for short, are for symbolic
990 manipulation what atoms are for chemistry.
992 A typical symbol definition looks like this:
997 This definition actually contains three very different things:
999 @item a C++ variable named @code{x}
1000 @item a @code{symbol} object stored in this C++ variable; this object
1001 represents the symbol in a GiNaC expression
1002 @item the string @code{"x"} which is the name of the symbol, used (almost)
1003 exclusively for printing expressions holding the symbol
1006 Symbols have an explicit name, supplied as a string during construction,
1007 because in C++, variable names can't be used as values, and the C++ compiler
1008 throws them away during compilation.
1010 It is possible to omit the symbol name in the definition:
1015 In this case, GiNaC will assign the symbol an internal, unique name of the
1016 form @code{symbolNNN}. This won't affect the usability of the symbol but
1017 the output of your calculations will become more readable if you give your
1018 symbols sensible names (for intermediate expressions that are only used
1019 internally such anonymous symbols can be quite useful, however).
1021 Now, here is one important property of GiNaC that differentiates it from
1022 other computer algebra programs you may have used: GiNaC does @emph{not} use
1023 the names of symbols to tell them apart, but a (hidden) serial number that
1024 is unique for each newly created @code{symbol} object. In you want to use
1025 one and the same symbol in different places in your program, you must only
1026 create one @code{symbol} object and pass that around. If you create another
1027 symbol, even if it has the same name, GiNaC will treat it as a different
1044 // prints "x^6" which looks right, but...
1046 cout << e.degree(x) << endl;
1047 // ...this doesn't work. The symbol "x" here is different from the one
1048 // in f() and in the expression returned by f(). Consequently, it
1053 One possibility to ensure that @code{f()} and @code{main()} use the same
1054 symbol is to pass the symbol as an argument to @code{f()}:
1056 ex f(int n, const ex & x)
1065 // Now, f() uses the same symbol.
1068 cout << e.degree(x) << endl;
1069 // prints "6", as expected
1073 Another possibility would be to define a global symbol @code{x} that is used
1074 by both @code{f()} and @code{main()}. If you are using global symbols and
1075 multiple compilation units you must take special care, however. Suppose
1076 that you have a header file @file{globals.h} in your program that defines
1077 a @code{symbol x("x");}. In this case, every unit that includes
1078 @file{globals.h} would also get its own definition of @code{x} (because
1079 header files are just inlined into the source code by the C++ preprocessor),
1080 and hence you would again end up with multiple equally-named, but different,
1081 symbols. Instead, the @file{globals.h} header should only contain a
1082 @emph{declaration} like @code{extern symbol x;}, with the definition of
1083 @code{x} moved into a C++ source file such as @file{globals.cpp}.
1085 A different approach to ensuring that symbols used in different parts of
1086 your program are identical is to create them with a @emph{factory} function
1089 const symbol & get_symbol(const string & s)
1091 static map<string, symbol> directory;
1092 map<string, symbol>::iterator i = directory.find(s);
1093 if (i != directory.end())
1096 return directory.insert(make_pair(s, symbol(s))).first->second;
1100 This function returns one newly constructed symbol for each name that is
1101 passed in, and it returns the same symbol when called multiple times with
1102 the same name. Using this symbol factory, we can rewrite our example like
1107 return pow(get_symbol("x"), n);
1114 // Both calls of get_symbol("x") yield the same symbol.
1115 cout << e.degree(get_symbol("x")) << endl;
1120 Instead of creating symbols from strings we could also have
1121 @code{get_symbol()} take, for example, an integer number as its argument.
1122 In this case, we would probably want to give the generated symbols names
1123 that include this number, which can be accomplished with the help of an
1124 @code{ostringstream}.
1126 In general, if you're getting weird results from GiNaC such as an expression
1127 @samp{x-x} that is not simplified to zero, you should check your symbol
1130 As we said, the names of symbols primarily serve for purposes of expression
1131 output. But there are actually two instances where GiNaC uses the names for
1132 identifying symbols: When constructing an expression from a string, and when
1133 recreating an expression from an archive (@pxref{Input/Output}).
1135 In addition to its name, a symbol may contain a special string that is used
1138 symbol x("x", "\\Box");
1141 This creates a symbol that is printed as "@code{x}" in normal output, but
1142 as "@code{\Box}" in LaTeX code (@xref{Input/Output}, for more
1143 information about the different output formats of expressions in GiNaC).
1144 GiNaC automatically creates proper LaTeX code for symbols having names of
1145 greek letters (@samp{alpha}, @samp{mu}, etc.).
1147 @cindex @code{subs()}
1148 Symbols in GiNaC can't be assigned values. If you need to store results of
1149 calculations and give them a name, use C++ variables of type @code{ex}.
1150 If you want to replace a symbol in an expression with something else, you
1151 can invoke the expression's @code{.subs()} method
1152 (@pxref{Substituting Expressions}).
1154 @cindex @code{realsymbol()}
1155 By default, symbols are expected to stand in for complex values, i.e. they live
1156 in the complex domain. As a consequence, operations like complex conjugation,
1157 for example (@pxref{Complex Conjugation}), do @emph{not} evaluate if applied
1158 to such symbols. Likewise @code{log(exp(x))} does not evaluate to @code{x},
1159 because of the unknown imaginary part of @code{x}.
1160 On the other hand, if you are sure that your symbols will hold only real values, you
1161 would like to have such functions evaluated. Therefore GiNaC allows you to specify
1162 the domain of the symbol. Instead of @code{symbol x("x");} you can write
1163 @code{realsymbol x("x");} to tell GiNaC that @code{x} stands in for real values.
1166 @node Numbers, Constants, Symbols, Basic Concepts
1167 @c node-name, next, previous, up
1169 @cindex @code{numeric} (class)
1175 For storing numerical things, GiNaC uses Bruno Haible's library CLN.
1176 The classes therein serve as foundation classes for GiNaC. CLN stands
1177 for Class Library for Numbers or alternatively for Common Lisp Numbers.
1178 In order to find out more about CLN's internals, the reader is referred to
1179 the documentation of that library. @inforef{Introduction, , cln}, for
1180 more information. Suffice to say that it is by itself build on top of
1181 another library, the GNU Multiple Precision library GMP, which is an
1182 extremely fast library for arbitrary long integers and rationals as well
1183 as arbitrary precision floating point numbers. It is very commonly used
1184 by several popular cryptographic applications. CLN extends GMP by
1185 several useful things: First, it introduces the complex number field
1186 over either reals (i.e. floating point numbers with arbitrary precision)
1187 or rationals. Second, it automatically converts rationals to integers
1188 if the denominator is unity and complex numbers to real numbers if the
1189 imaginary part vanishes and also correctly treats algebraic functions.
1190 Third it provides good implementations of state-of-the-art algorithms
1191 for all trigonometric and hyperbolic functions as well as for
1192 calculation of some useful constants.
1194 The user can construct an object of class @code{numeric} in several
1195 ways. The following example shows the four most important constructors.
1196 It uses construction from C-integer, construction of fractions from two
1197 integers, construction from C-float and construction from a string:
1201 #include <ginac/ginac.h>
1202 using namespace GiNaC;
1206 numeric two = 2; // exact integer 2
1207 numeric r(2,3); // exact fraction 2/3
1208 numeric e(2.71828); // floating point number
1209 numeric p = "3.14159265358979323846"; // constructor from string
1210 // Trott's constant in scientific notation:
1211 numeric trott("1.0841015122311136151E-2");
1213 std::cout << two*p << std::endl; // floating point 6.283...
1218 @cindex complex numbers
1219 The imaginary unit in GiNaC is a predefined @code{numeric} object with the
1224 numeric z1 = 2-3*I; // exact complex number 2-3i
1225 numeric z2 = 5.9+1.6*I; // complex floating point number
1229 It may be tempting to construct fractions by writing @code{numeric r(3/2)}.
1230 This would, however, call C's built-in operator @code{/} for integers
1231 first and result in a numeric holding a plain integer 1. @strong{Never
1232 use the operator @code{/} on integers} unless you know exactly what you
1233 are doing! Use the constructor from two integers instead, as shown in
1234 the example above. Writing @code{numeric(1)/2} may look funny but works
1237 @cindex @code{Digits}
1239 We have seen now the distinction between exact numbers and floating
1240 point numbers. Clearly, the user should never have to worry about
1241 dynamically created exact numbers, since their `exactness' always
1242 determines how they ought to be handled, i.e. how `long' they are. The
1243 situation is different for floating point numbers. Their accuracy is
1244 controlled by one @emph{global} variable, called @code{Digits}. (For
1245 those readers who know about Maple: it behaves very much like Maple's
1246 @code{Digits}). All objects of class numeric that are constructed from
1247 then on will be stored with a precision matching that number of decimal
1252 #include <ginac/ginac.h>
1253 using namespace std;
1254 using namespace GiNaC;
1258 numeric three(3.0), one(1.0);
1259 numeric x = one/three;
1261 cout << "in " << Digits << " digits:" << endl;
1263 cout << Pi.evalf() << endl;
1275 The above example prints the following output to screen:
1279 0.33333333333333333334
1280 3.1415926535897932385
1282 0.33333333333333333333333333333333333333333333333333333333333333333334
1283 3.1415926535897932384626433832795028841971693993751058209749445923078
1287 Note that the last number is not necessarily rounded as you would
1288 naively expect it to be rounded in the decimal system. But note also,
1289 that in both cases you got a couple of extra digits. This is because
1290 numbers are internally stored by CLN as chunks of binary digits in order
1291 to match your machine's word size and to not waste precision. Thus, on
1292 architectures with different word size, the above output might even
1293 differ with regard to actually computed digits.
1295 It should be clear that objects of class @code{numeric} should be used
1296 for constructing numbers or for doing arithmetic with them. The objects
1297 one deals with most of the time are the polymorphic expressions @code{ex}.
1299 @subsection Tests on numbers
1301 Once you have declared some numbers, assigned them to expressions and
1302 done some arithmetic with them it is frequently desired to retrieve some
1303 kind of information from them like asking whether that number is
1304 integer, rational, real or complex. For those cases GiNaC provides
1305 several useful methods. (Internally, they fall back to invocations of
1306 certain CLN functions.)
1308 As an example, let's construct some rational number, multiply it with
1309 some multiple of its denominator and test what comes out:
1313 #include <ginac/ginac.h>
1314 using namespace std;
1315 using namespace GiNaC;
1317 // some very important constants:
1318 const numeric twentyone(21);
1319 const numeric ten(10);
1320 const numeric five(5);
1324 numeric answer = twentyone;
1327 cout << answer.is_integer() << endl; // false, it's 21/5
1329 cout << answer.is_integer() << endl; // true, it's 42 now!
1333 Note that the variable @code{answer} is constructed here as an integer
1334 by @code{numeric}'s copy constructor but in an intermediate step it
1335 holds a rational number represented as integer numerator and integer
1336 denominator. When multiplied by 10, the denominator becomes unity and
1337 the result is automatically converted to a pure integer again.
1338 Internally, the underlying CLN is responsible for this behavior and we
1339 refer the reader to CLN's documentation. Suffice to say that
1340 the same behavior applies to complex numbers as well as return values of
1341 certain functions. Complex numbers are automatically converted to real
1342 numbers if the imaginary part becomes zero. The full set of tests that
1343 can be applied is listed in the following table.
1346 @multitable @columnfractions .30 .70
1347 @item @strong{Method} @tab @strong{Returns true if the object is@dots{}}
1348 @item @code{.is_zero()}
1349 @tab @dots{}equal to zero
1350 @item @code{.is_positive()}
1351 @tab @dots{}not complex and greater than 0
1352 @item @code{.is_integer()}
1353 @tab @dots{}a (non-complex) integer
1354 @item @code{.is_pos_integer()}
1355 @tab @dots{}an integer and greater than 0
1356 @item @code{.is_nonneg_integer()}
1357 @tab @dots{}an integer and greater equal 0
1358 @item @code{.is_even()}
1359 @tab @dots{}an even integer
1360 @item @code{.is_odd()}
1361 @tab @dots{}an odd integer
1362 @item @code{.is_prime()}
1363 @tab @dots{}a prime integer (probabilistic primality test)
1364 @item @code{.is_rational()}
1365 @tab @dots{}an exact rational number (integers are rational, too)
1366 @item @code{.is_real()}
1367 @tab @dots{}a real integer, rational or float (i.e. is not complex)
1368 @item @code{.is_cinteger()}
1369 @tab @dots{}a (complex) integer (such as @math{2-3*I})
1370 @item @code{.is_crational()}
1371 @tab @dots{}an exact (complex) rational number (such as @math{2/3+7/2*I})
1375 @subsection Numeric functions
1377 The following functions can be applied to @code{numeric} objects and will be
1378 evaluated immediately:
1381 @multitable @columnfractions .30 .70
1382 @item @strong{Name} @tab @strong{Function}
1383 @item @code{inverse(z)}
1384 @tab returns @math{1/z}
1385 @cindex @code{inverse()} (numeric)
1386 @item @code{pow(a, b)}
1387 @tab exponentiation @math{a^b}
1390 @item @code{real(z)}
1392 @cindex @code{real()}
1393 @item @code{imag(z)}
1395 @cindex @code{imag()}
1396 @item @code{csgn(z)}
1397 @tab complex sign (returns an @code{int})
1398 @item @code{numer(z)}
1399 @tab numerator of rational or complex rational number
1400 @item @code{denom(z)}
1401 @tab denominator of rational or complex rational number
1402 @item @code{sqrt(z)}
1404 @item @code{isqrt(n)}
1405 @tab integer square root
1406 @cindex @code{isqrt()}
1413 @item @code{asin(z)}
1415 @item @code{acos(z)}
1417 @item @code{atan(z)}
1418 @tab inverse tangent
1419 @item @code{atan(y, x)}
1420 @tab inverse tangent with two arguments
1421 @item @code{sinh(z)}
1422 @tab hyperbolic sine
1423 @item @code{cosh(z)}
1424 @tab hyperbolic cosine
1425 @item @code{tanh(z)}
1426 @tab hyperbolic tangent
1427 @item @code{asinh(z)}
1428 @tab inverse hyperbolic sine
1429 @item @code{acosh(z)}
1430 @tab inverse hyperbolic cosine
1431 @item @code{atanh(z)}
1432 @tab inverse hyperbolic tangent
1434 @tab exponential function
1436 @tab natural logarithm
1439 @item @code{zeta(z)}
1440 @tab Riemann's zeta function
1441 @item @code{tgamma(z)}
1443 @item @code{lgamma(z)}
1444 @tab logarithm of gamma function
1446 @tab psi (digamma) function
1447 @item @code{psi(n, z)}
1448 @tab derivatives of psi function (polygamma functions)
1449 @item @code{factorial(n)}
1450 @tab factorial function @math{n!}
1451 @item @code{doublefactorial(n)}
1452 @tab double factorial function @math{n!!}
1453 @cindex @code{doublefactorial()}
1454 @item @code{binomial(n, k)}
1455 @tab binomial coefficients
1456 @item @code{bernoulli(n)}
1457 @tab Bernoulli numbers
1458 @cindex @code{bernoulli()}
1459 @item @code{fibonacci(n)}
1460 @tab Fibonacci numbers
1461 @cindex @code{fibonacci()}
1462 @item @code{mod(a, b)}
1463 @tab modulus in positive representation (in the range @code{[0, abs(b)-1]} with the sign of b, or zero)
1464 @cindex @code{mod()}
1465 @item @code{smod(a, b)}
1466 @tab modulus in symmetric representation (in the range @code{[-iquo(abs(b)-1, 2), iquo(abs(b), 2)]})
1467 @cindex @code{smod()}
1468 @item @code{irem(a, b)}
1469 @tab integer remainder (has the sign of @math{a}, or is zero)
1470 @cindex @code{irem()}
1471 @item @code{irem(a, b, q)}
1472 @tab integer remainder and quotient, @code{irem(a, b, q) == a-q*b}
1473 @item @code{iquo(a, b)}
1474 @tab integer quotient
1475 @cindex @code{iquo()}
1476 @item @code{iquo(a, b, r)}
1477 @tab integer quotient and remainder, @code{r == a-iquo(a, b)*b}
1478 @item @code{gcd(a, b)}
1479 @tab greatest common divisor
1480 @item @code{lcm(a, b)}
1481 @tab least common multiple
1485 Most of these functions are also available as symbolic functions that can be
1486 used in expressions (@pxref{Mathematical functions}) or, like @code{gcd()},
1487 as polynomial algorithms.
1489 @subsection Converting numbers
1491 Sometimes it is desirable to convert a @code{numeric} object back to a
1492 built-in arithmetic type (@code{int}, @code{double}, etc.). The @code{numeric}
1493 class provides a couple of methods for this purpose:
1495 @cindex @code{to_int()}
1496 @cindex @code{to_long()}
1497 @cindex @code{to_double()}
1498 @cindex @code{to_cl_N()}
1500 int numeric::to_int() const;
1501 long numeric::to_long() const;
1502 double numeric::to_double() const;
1503 cln::cl_N numeric::to_cl_N() const;
1506 @code{to_int()} and @code{to_long()} only work when the number they are
1507 applied on is an exact integer. Otherwise the program will halt with a
1508 message like @samp{Not a 32-bit integer}. @code{to_double()} applied on a
1509 rational number will return a floating-point approximation. Both
1510 @code{to_int()/to_long()} and @code{to_double()} discard the imaginary
1511 part of complex numbers.
1514 @node Constants, Fundamental containers, Numbers, Basic Concepts
1515 @c node-name, next, previous, up
1517 @cindex @code{constant} (class)
1520 @cindex @code{Catalan}
1521 @cindex @code{Euler}
1522 @cindex @code{evalf()}
1523 Constants behave pretty much like symbols except that they return some
1524 specific number when the method @code{.evalf()} is called.
1526 The predefined known constants are:
1529 @multitable @columnfractions .14 .30 .56
1530 @item @strong{Name} @tab @strong{Common Name} @tab @strong{Numerical Value (to 35 digits)}
1532 @tab Archimedes' constant
1533 @tab 3.14159265358979323846264338327950288
1534 @item @code{Catalan}
1535 @tab Catalan's constant
1536 @tab 0.91596559417721901505460351493238411
1538 @tab Euler's (or Euler-Mascheroni) constant
1539 @tab 0.57721566490153286060651209008240243
1544 @node Fundamental containers, Lists, Constants, Basic Concepts
1545 @c node-name, next, previous, up
1546 @section Sums, products and powers
1550 @cindex @code{power}
1552 Simple rational expressions are written down in GiNaC pretty much like
1553 in other CAS or like expressions involving numerical variables in C.
1554 The necessary operators @code{+}, @code{-}, @code{*} and @code{/} have
1555 been overloaded to achieve this goal. When you run the following
1556 code snippet, the constructor for an object of type @code{mul} is
1557 automatically called to hold the product of @code{a} and @code{b} and
1558 then the constructor for an object of type @code{add} is called to hold
1559 the sum of that @code{mul} object and the number one:
1563 symbol a("a"), b("b");
1568 @cindex @code{pow()}
1569 For exponentiation, you have already seen the somewhat clumsy (though C-ish)
1570 statement @code{pow(x,2);} to represent @code{x} squared. This direct
1571 construction is necessary since we cannot safely overload the constructor
1572 @code{^} in C++ to construct a @code{power} object. If we did, it would
1573 have several counterintuitive and undesired effects:
1577 Due to C's operator precedence, @code{2*x^2} would be parsed as @code{(2*x)^2}.
1579 Due to the binding of the operator @code{^}, @code{x^a^b} would result in
1580 @code{(x^a)^b}. This would be confusing since most (though not all) other CAS
1581 interpret this as @code{x^(a^b)}.
1583 Also, expressions involving integer exponents are very frequently used,
1584 which makes it even more dangerous to overload @code{^} since it is then
1585 hard to distinguish between the semantics as exponentiation and the one
1586 for exclusive or. (It would be embarrassing to return @code{1} where one
1587 has requested @code{2^3}.)
1590 @cindex @command{ginsh}
1591 All effects are contrary to mathematical notation and differ from the
1592 way most other CAS handle exponentiation, therefore overloading @code{^}
1593 is ruled out for GiNaC's C++ part. The situation is different in
1594 @command{ginsh}, there the exponentiation-@code{^} exists. (Also note
1595 that the other frequently used exponentiation operator @code{**} does
1596 not exist at all in C++).
1598 To be somewhat more precise, objects of the three classes described
1599 here, are all containers for other expressions. An object of class
1600 @code{power} is best viewed as a container with two slots, one for the
1601 basis, one for the exponent. All valid GiNaC expressions can be
1602 inserted. However, basic transformations like simplifying
1603 @code{pow(pow(x,2),3)} to @code{x^6} automatically are only performed
1604 when this is mathematically possible. If we replace the outer exponent
1605 three in the example by some symbols @code{a}, the simplification is not
1606 safe and will not be performed, since @code{a} might be @code{1/2} and
1609 Objects of type @code{add} and @code{mul} are containers with an
1610 arbitrary number of slots for expressions to be inserted. Again, simple
1611 and safe simplifications are carried out like transforming
1612 @code{3*x+4-x} to @code{2*x+4}.
1615 @node Lists, Mathematical functions, Fundamental containers, Basic Concepts
1616 @c node-name, next, previous, up
1617 @section Lists of expressions
1618 @cindex @code{lst} (class)
1620 @cindex @code{nops()}
1622 @cindex @code{append()}
1623 @cindex @code{prepend()}
1624 @cindex @code{remove_first()}
1625 @cindex @code{remove_last()}
1626 @cindex @code{remove_all()}
1628 The GiNaC class @code{lst} serves for holding a @dfn{list} of arbitrary
1629 expressions. They are not as ubiquitous as in many other computer algebra
1630 packages, but are sometimes used to supply a variable number of arguments of
1631 the same type to GiNaC methods such as @code{subs()} and some @code{matrix}
1632 constructors, so you should have a basic understanding of them.
1634 Lists can be constructed by assigning a comma-separated sequence of
1639 symbol x("x"), y("y");
1642 // now, l is a list holding the expressions 'x', '2', 'y', and 'x+y',
1647 There are also constructors that allow direct creation of lists of up to
1648 16 expressions, which is often more convenient but slightly less efficient:
1652 // This produces the same list 'l' as above:
1653 // lst l(x, 2, y, x+y);
1654 // lst l = lst(x, 2, y, x+y);
1658 Use the @code{nops()} method to determine the size (number of expressions) of
1659 a list and the @code{op()} method or the @code{[]} operator to access
1660 individual elements:
1664 cout << l.nops() << endl; // prints '4'
1665 cout << l.op(2) << " " << l[0] << endl; // prints 'y x'
1669 As with the standard @code{list<T>} container, accessing random elements of a
1670 @code{lst} is generally an operation of order @math{O(N)}. Faster read-only
1671 sequential access to the elements of a list is possible with the
1672 iterator types provided by the @code{lst} class:
1675 typedef ... lst::const_iterator;
1676 typedef ... lst::const_reverse_iterator;
1677 lst::const_iterator lst::begin() const;
1678 lst::const_iterator lst::end() const;
1679 lst::const_reverse_iterator lst::rbegin() const;
1680 lst::const_reverse_iterator lst::rend() const;
1683 For example, to print the elements of a list individually you can use:
1688 for (lst::const_iterator i = l.begin(); i != l.end(); ++i)
1693 which is one order faster than
1698 for (size_t i = 0; i < l.nops(); ++i)
1699 cout << l.op(i) << endl;
1703 These iterators also allow you to use some of the algorithms provided by
1704 the C++ standard library:
1708 // print the elements of the list (requires #include <iterator>)
1709 std::copy(l.begin(), l.end(), ostream_iterator<ex>(cout, "\n"));
1711 // sum up the elements of the list (requires #include <numeric>)
1712 ex sum = std::accumulate(l.begin(), l.end(), ex(0));
1713 cout << sum << endl; // prints '2+2*x+2*y'
1717 @code{lst} is one of the few GiNaC classes that allow in-place modifications
1718 (the only other one is @code{matrix}). You can modify single elements:
1722 l[1] = 42; // l is now @{x, 42, y, x+y@}
1723 l.let_op(1) = 7; // l is now @{x, 7, y, x+y@}
1727 You can append or prepend an expression to a list with the @code{append()}
1728 and @code{prepend()} methods:
1732 l.append(4*x); // l is now @{x, 7, y, x+y, 4*x@}
1733 l.prepend(0); // l is now @{0, x, 7, y, x+y, 4*x@}
1737 You can remove the first or last element of a list with @code{remove_first()}
1738 and @code{remove_last()}:
1742 l.remove_first(); // l is now @{x, 7, y, x+y, 4*x@}
1743 l.remove_last(); // l is now @{x, 7, y, x+y@}
1747 You can remove all the elements of a list with @code{remove_all()}:
1751 l.remove_all(); // l is now empty
1755 You can bring the elements of a list into a canonical order with @code{sort()}:
1764 // l1 and l2 are now equal
1768 Finally, you can remove all but the first element of consecutive groups of
1769 elements with @code{unique()}:
1774 l3 = x, 2, 2, 2, y, x+y, y+x;
1775 l3.unique(); // l3 is now @{x, 2, y, x+y@}
1780 @node Mathematical functions, Relations, Lists, Basic Concepts
1781 @c node-name, next, previous, up
1782 @section Mathematical functions
1783 @cindex @code{function} (class)
1784 @cindex trigonometric function
1785 @cindex hyperbolic function
1787 There are quite a number of useful functions hard-wired into GiNaC. For
1788 instance, all trigonometric and hyperbolic functions are implemented
1789 (@xref{Built-in Functions}, for a complete list).
1791 These functions (better called @emph{pseudofunctions}) are all objects
1792 of class @code{function}. They accept one or more expressions as
1793 arguments and return one expression. If the arguments are not
1794 numerical, the evaluation of the function may be halted, as it does in
1795 the next example, showing how a function returns itself twice and
1796 finally an expression that may be really useful:
1798 @cindex Gamma function
1799 @cindex @code{subs()}
1802 symbol x("x"), y("y");
1804 cout << tgamma(foo) << endl;
1805 // -> tgamma(x+(1/2)*y)
1806 ex bar = foo.subs(y==1);
1807 cout << tgamma(bar) << endl;
1809 ex foobar = bar.subs(x==7);
1810 cout << tgamma(foobar) << endl;
1811 // -> (135135/128)*Pi^(1/2)
1815 Besides evaluation most of these functions allow differentiation, series
1816 expansion and so on. Read the next chapter in order to learn more about
1819 It must be noted that these pseudofunctions are created by inline
1820 functions, where the argument list is templated. This means that
1821 whenever you call @code{GiNaC::sin(1)} it is equivalent to
1822 @code{sin(ex(1))} and will therefore not result in a floating point
1823 number. Unless of course the function prototype is explicitly
1824 overridden -- which is the case for arguments of type @code{numeric}
1825 (not wrapped inside an @code{ex}). Hence, in order to obtain a floating
1826 point number of class @code{numeric} you should call
1827 @code{sin(numeric(1))}. This is almost the same as calling
1828 @code{sin(1).evalf()} except that the latter will return a numeric
1829 wrapped inside an @code{ex}.
1832 @node Relations, Integrals, Mathematical functions, Basic Concepts
1833 @c node-name, next, previous, up
1835 @cindex @code{relational} (class)
1837 Sometimes, a relation holding between two expressions must be stored
1838 somehow. The class @code{relational} is a convenient container for such
1839 purposes. A relation is by definition a container for two @code{ex} and
1840 a relation between them that signals equality, inequality and so on.
1841 They are created by simply using the C++ operators @code{==}, @code{!=},
1842 @code{<}, @code{<=}, @code{>} and @code{>=} between two expressions.
1844 @xref{Mathematical functions}, for examples where various applications
1845 of the @code{.subs()} method show how objects of class relational are
1846 used as arguments. There they provide an intuitive syntax for
1847 substitutions. They are also used as arguments to the @code{ex::series}
1848 method, where the left hand side of the relation specifies the variable
1849 to expand in and the right hand side the expansion point. They can also
1850 be used for creating systems of equations that are to be solved for
1851 unknown variables. But the most common usage of objects of this class
1852 is rather inconspicuous in statements of the form @code{if
1853 (expand(pow(a+b,2))==a*a+2*a*b+b*b) @{...@}}. Here, an implicit
1854 conversion from @code{relational} to @code{bool} takes place. Note,
1855 however, that @code{==} here does not perform any simplifications, hence
1856 @code{expand()} must be called explicitly.
1858 @node Integrals, Matrices, Relations, Basic Concepts
1859 @c node-name, next, previous, up
1861 @cindex @code{integral} (class)
1863 An object of class @dfn{integral} can be used to hold a symbolic integral.
1864 If you want to symbolically represent the integral of @code{x*x} from 0 to
1865 1, you would write this as
1867 integral(x, 0, 1, x*x)
1869 The first argument is the integration variable. It should be noted that
1870 GiNaC is not very good (yet?) at symbolically evaluating integrals. In
1871 fact, it can only integrate polynomials. An expression containing integrals
1872 can be evaluated symbolically by calling the
1876 method on it. Numerical evaluation is available by calling the
1880 method on an expression containing the integral. This will only evaluate
1881 integrals into a number if @code{subs}ing the integration variable by a
1882 number in the fourth argument of an integral and then @code{evalf}ing the
1883 result always results in a number. Of course, also the boundaries of the
1884 integration domain must @code{evalf} into numbers. It should be noted that
1885 trying to @code{evalf} a function with discontinuities in the integration
1886 domain is not recommended. The accuracy of the numeric evaluation of
1887 integrals is determined by the static member variable
1889 ex integral::relative_integration_error
1891 of the class @code{integral}. The default value of this is 10^-8.
1892 The integration works by halving the interval of integration, until numeric
1893 stability of the answer indicates that the requested accuracy has been
1894 reached. The maximum depth of the halving can be set via the static member
1897 int integral::max_integration_level
1899 The default value is 15. If this depth is exceeded, @code{evalf} will simply
1900 return the integral unevaluated. The function that performs the numerical
1901 evaluation, is also available as
1903 ex adaptivesimpson(const ex & x, const ex & a, const ex & b, const ex & f,
1906 This function will throw an exception if the maximum depth is exceeded. The
1907 last parameter of the function is optional and defaults to the
1908 @code{relative_integration_error}. To make sure that we do not do too
1909 much work if an expression contains the same integral multiple times,
1910 a lookup table is used.
1912 If you know that an expression holds an integral, you can get the
1913 integration variable, the left boundary, right boundary and integrant by
1914 respectively calling @code{.op(0)}, @code{.op(1)}, @code{.op(2)}, and
1915 @code{.op(3)}. Differentiating integrals with respect to variables works
1916 as expected. Note that it makes no sense to differentiate an integral
1917 with respect to the integration variable.
1919 @node Matrices, Indexed objects, Integrals, Basic Concepts
1920 @c node-name, next, previous, up
1922 @cindex @code{matrix} (class)
1924 A @dfn{matrix} is a two-dimensional array of expressions. The elements of a
1925 matrix with @math{m} rows and @math{n} columns are accessed with two
1926 @code{unsigned} indices, the first one in the range 0@dots{}@math{m-1}, the
1927 second one in the range 0@dots{}@math{n-1}.
1929 There are a couple of ways to construct matrices, with or without preset
1930 elements. The constructor
1933 matrix::matrix(unsigned r, unsigned c);
1936 creates a matrix with @samp{r} rows and @samp{c} columns with all elements
1939 The fastest way to create a matrix with preinitialized elements is to assign
1940 a list of comma-separated expressions to an empty matrix (see below for an
1941 example). But you can also specify the elements as a (flat) list with
1944 matrix::matrix(unsigned r, unsigned c, const lst & l);
1949 @cindex @code{lst_to_matrix()}
1951 ex lst_to_matrix(const lst & l);
1954 constructs a matrix from a list of lists, each list representing a matrix row.
1956 There is also a set of functions for creating some special types of
1959 @cindex @code{diag_matrix()}
1960 @cindex @code{unit_matrix()}
1961 @cindex @code{symbolic_matrix()}
1963 ex diag_matrix(const lst & l);
1964 ex unit_matrix(unsigned x);
1965 ex unit_matrix(unsigned r, unsigned c);
1966 ex symbolic_matrix(unsigned r, unsigned c, const string & base_name);
1967 ex symbolic_matrix(unsigned r, unsigned c, const string & base_name,
1968 const string & tex_base_name);
1971 @code{diag_matrix()} constructs a diagonal matrix given the list of diagonal
1972 elements. @code{unit_matrix()} creates an @samp{x} by @samp{x} (or @samp{r}
1973 by @samp{c}) unit matrix. And finally, @code{symbolic_matrix} constructs a
1974 matrix filled with newly generated symbols made of the specified base name
1975 and the position of each element in the matrix.
1977 Matrix elements can be accessed and set using the parenthesis (function call)
1981 const ex & matrix::operator()(unsigned r, unsigned c) const;
1982 ex & matrix::operator()(unsigned r, unsigned c);
1985 It is also possible to access the matrix elements in a linear fashion with
1986 the @code{op()} method. But C++-style subscripting with square brackets
1987 @samp{[]} is not available.
1989 Here are a couple of examples for constructing matrices:
1993 symbol a("a"), b("b");
2007 cout << matrix(2, 2, lst(a, 0, 0, b)) << endl;
2010 cout << lst_to_matrix(lst(lst(a, 0), lst(0, b))) << endl;
2013 cout << diag_matrix(lst(a, b)) << endl;
2016 cout << unit_matrix(3) << endl;
2017 // -> [[1,0,0],[0,1,0],[0,0,1]]
2019 cout << symbolic_matrix(2, 3, "x") << endl;
2020 // -> [[x00,x01,x02],[x10,x11,x12]]
2024 @cindex @code{transpose()}
2025 There are three ways to do arithmetic with matrices. The first (and most
2026 direct one) is to use the methods provided by the @code{matrix} class:
2029 matrix matrix::add(const matrix & other) const;
2030 matrix matrix::sub(const matrix & other) const;
2031 matrix matrix::mul(const matrix & other) const;
2032 matrix matrix::mul_scalar(const ex & other) const;
2033 matrix matrix::pow(const ex & expn) const;
2034 matrix matrix::transpose() const;
2037 All of these methods return the result as a new matrix object. Here is an
2038 example that calculates @math{A*B-2*C} for three matrices @math{A}, @math{B}
2043 matrix A(2, 2), B(2, 2), C(2, 2);
2051 matrix result = A.mul(B).sub(C.mul_scalar(2));
2052 cout << result << endl;
2053 // -> [[-13,-6],[1,2]]
2058 @cindex @code{evalm()}
2059 The second (and probably the most natural) way is to construct an expression
2060 containing matrices with the usual arithmetic operators and @code{pow()}.
2061 For efficiency reasons, expressions with sums, products and powers of
2062 matrices are not automatically evaluated in GiNaC. You have to call the
2066 ex ex::evalm() const;
2069 to obtain the result:
2076 // -> [[1,2],[3,4]]*[[-1,0],[2,1]]-2*[[8,4],[2,1]]
2077 cout << e.evalm() << endl;
2078 // -> [[-13,-6],[1,2]]
2083 The non-commutativity of the product @code{A*B} in this example is
2084 automatically recognized by GiNaC. There is no need to use a special
2085 operator here. @xref{Non-commutative objects}, for more information about
2086 dealing with non-commutative expressions.
2088 Finally, you can work with indexed matrices and call @code{simplify_indexed()}
2089 to perform the arithmetic:
2094 idx i(symbol("i"), 2), j(symbol("j"), 2), k(symbol("k"), 2);
2095 e = indexed(A, i, k) * indexed(B, k, j) - 2 * indexed(C, i, j);
2097 // -> -2*[[8,4],[2,1]].i.j+[[-1,0],[2,1]].k.j*[[1,2],[3,4]].i.k
2098 cout << e.simplify_indexed() << endl;
2099 // -> [[-13,-6],[1,2]].i.j
2103 Using indices is most useful when working with rectangular matrices and
2104 one-dimensional vectors because you don't have to worry about having to
2105 transpose matrices before multiplying them. @xref{Indexed objects}, for
2106 more information about using matrices with indices, and about indices in
2109 The @code{matrix} class provides a couple of additional methods for
2110 computing determinants, traces, characteristic polynomials and ranks:
2112 @cindex @code{determinant()}
2113 @cindex @code{trace()}
2114 @cindex @code{charpoly()}
2115 @cindex @code{rank()}
2117 ex matrix::determinant(unsigned algo=determinant_algo::automatic) const;
2118 ex matrix::trace() const;
2119 ex matrix::charpoly(const ex & lambda) const;
2120 unsigned matrix::rank() const;
2123 The @samp{algo} argument of @code{determinant()} allows to select
2124 between different algorithms for calculating the determinant. The
2125 asymptotic speed (as parametrized by the matrix size) can greatly differ
2126 between those algorithms, depending on the nature of the matrix'
2127 entries. The possible values are defined in the @file{flags.h} header
2128 file. By default, GiNaC uses a heuristic to automatically select an
2129 algorithm that is likely (but not guaranteed) to give the result most
2132 @cindex @code{inverse()} (matrix)
2133 @cindex @code{solve()}
2134 Matrices may also be inverted using the @code{ex matrix::inverse()}
2135 method and linear systems may be solved with:
2138 matrix matrix::solve(const matrix & vars, const matrix & rhs,
2139 unsigned algo=solve_algo::automatic) const;
2142 Assuming the matrix object this method is applied on is an @code{m}
2143 times @code{n} matrix, then @code{vars} must be a @code{n} times
2144 @code{p} matrix of symbolic indeterminates and @code{rhs} a @code{m}
2145 times @code{p} matrix. The returned matrix then has dimension @code{n}
2146 times @code{p} and in the case of an underdetermined system will still
2147 contain some of the indeterminates from @code{vars}. If the system is
2148 overdetermined, an exception is thrown.
2151 @node Indexed objects, Non-commutative objects, Matrices, Basic Concepts
2152 @c node-name, next, previous, up
2153 @section Indexed objects
2155 GiNaC allows you to handle expressions containing general indexed objects in
2156 arbitrary spaces. It is also able to canonicalize and simplify such
2157 expressions and perform symbolic dummy index summations. There are a number
2158 of predefined indexed objects provided, like delta and metric tensors.
2160 There are few restrictions placed on indexed objects and their indices and
2161 it is easy to construct nonsense expressions, but our intention is to
2162 provide a general framework that allows you to implement algorithms with
2163 indexed quantities, getting in the way as little as possible.
2165 @cindex @code{idx} (class)
2166 @cindex @code{indexed} (class)
2167 @subsection Indexed quantities and their indices
2169 Indexed expressions in GiNaC are constructed of two special types of objects,
2170 @dfn{index objects} and @dfn{indexed objects}.
2174 @cindex contravariant
2177 @item Index objects are of class @code{idx} or a subclass. Every index has
2178 a @dfn{value} and a @dfn{dimension} (which is the dimension of the space
2179 the index lives in) which can both be arbitrary expressions but are usually
2180 a number or a simple symbol. In addition, indices of class @code{varidx} have
2181 a @dfn{variance} (they can be co- or contravariant), and indices of class
2182 @code{spinidx} have a variance and can be @dfn{dotted} or @dfn{undotted}.
2184 @item Indexed objects are of class @code{indexed} or a subclass. They
2185 contain a @dfn{base expression} (which is the expression being indexed), and
2186 one or more indices.
2190 @strong{Please notice:} when printing expressions, covariant indices and indices
2191 without variance are denoted @samp{.i} while contravariant indices are
2192 denoted @samp{~i}. Dotted indices have a @samp{*} in front of the index
2193 value. In the following, we are going to use that notation in the text so
2194 instead of @math{A^i_jk} we will write @samp{A~i.j.k}. Index dimensions are
2195 not visible in the output.
2197 A simple example shall illustrate the concepts:
2201 #include <ginac/ginac.h>
2202 using namespace std;
2203 using namespace GiNaC;
2207 symbol i_sym("i"), j_sym("j");
2208 idx i(i_sym, 3), j(j_sym, 3);
2211 cout << indexed(A, i, j) << endl;
2213 cout << index_dimensions << indexed(A, i, j) << endl;
2215 cout << dflt; // reset cout to default output format (dimensions hidden)
2219 The @code{idx} constructor takes two arguments, the index value and the
2220 index dimension. First we define two index objects, @code{i} and @code{j},
2221 both with the numeric dimension 3. The value of the index @code{i} is the
2222 symbol @code{i_sym} (which prints as @samp{i}) and the value of the index
2223 @code{j} is the symbol @code{j_sym} (which prints as @samp{j}). Next we
2224 construct an expression containing one indexed object, @samp{A.i.j}. It has
2225 the symbol @code{A} as its base expression and the two indices @code{i} and
2228 The dimensions of indices are normally not visible in the output, but one
2229 can request them to be printed with the @code{index_dimensions} manipulator,
2232 Note the difference between the indices @code{i} and @code{j} which are of
2233 class @code{idx}, and the index values which are the symbols @code{i_sym}
2234 and @code{j_sym}. The indices of indexed objects cannot directly be symbols
2235 or numbers but must be index objects. For example, the following is not
2236 correct and will raise an exception:
2239 symbol i("i"), j("j");
2240 e = indexed(A, i, j); // ERROR: indices must be of type idx
2243 You can have multiple indexed objects in an expression, index values can
2244 be numeric, and index dimensions symbolic:
2248 symbol B("B"), dim("dim");
2249 cout << 4 * indexed(A, i)
2250 + indexed(B, idx(j_sym, 4), idx(2, 3), idx(i_sym, dim)) << endl;
2255 @code{B} has a 4-dimensional symbolic index @samp{k}, a 3-dimensional numeric
2256 index of value 2, and a symbolic index @samp{i} with the symbolic dimension
2257 @samp{dim}. Note that GiNaC doesn't automatically notify you that the free
2258 indices of @samp{A} and @samp{B} in the sum don't match (you have to call
2259 @code{simplify_indexed()} for that, see below).
2261 In fact, base expressions, index values and index dimensions can be
2262 arbitrary expressions:
2266 cout << indexed(A+B, idx(2*i_sym+1, dim/2)) << endl;
2271 It's also possible to construct nonsense like @samp{Pi.sin(x)}. You will not
2272 get an error message from this but you will probably not be able to do
2273 anything useful with it.
2275 @cindex @code{get_value()}
2276 @cindex @code{get_dimension()}
2280 ex idx::get_value();
2281 ex idx::get_dimension();
2284 return the value and dimension of an @code{idx} object. If you have an index
2285 in an expression, such as returned by calling @code{.op()} on an indexed
2286 object, you can get a reference to the @code{idx} object with the function
2287 @code{ex_to<idx>()} on the expression.
2289 There are also the methods
2292 bool idx::is_numeric();
2293 bool idx::is_symbolic();
2294 bool idx::is_dim_numeric();
2295 bool idx::is_dim_symbolic();
2298 for checking whether the value and dimension are numeric or symbolic
2299 (non-numeric). Using the @code{info()} method of an index (see @ref{Information
2300 About Expressions}) returns information about the index value.
2302 @cindex @code{varidx} (class)
2303 If you need co- and contravariant indices, use the @code{varidx} class:
2307 symbol mu_sym("mu"), nu_sym("nu");
2308 varidx mu(mu_sym, 4), nu(nu_sym, 4); // default is contravariant ~mu, ~nu
2309 varidx mu_co(mu_sym, 4, true); // covariant index .mu
2311 cout << indexed(A, mu, nu) << endl;
2313 cout << indexed(A, mu_co, nu) << endl;
2315 cout << indexed(A, mu.toggle_variance(), nu) << endl;
2320 A @code{varidx} is an @code{idx} with an additional flag that marks it as
2321 co- or contravariant. The default is a contravariant (upper) index, but
2322 this can be overridden by supplying a third argument to the @code{varidx}
2323 constructor. The two methods
2326 bool varidx::is_covariant();
2327 bool varidx::is_contravariant();
2330 allow you to check the variance of a @code{varidx} object (use @code{ex_to<varidx>()}
2331 to get the object reference from an expression). There's also the very useful
2335 ex varidx::toggle_variance();
2338 which makes a new index with the same value and dimension but the opposite
2339 variance. By using it you only have to define the index once.
2341 @cindex @code{spinidx} (class)
2342 The @code{spinidx} class provides dotted and undotted variant indices, as
2343 used in the Weyl-van-der-Waerden spinor formalism:
2347 symbol K("K"), C_sym("C"), D_sym("D");
2348 spinidx C(C_sym, 2), D(D_sym); // default is 2-dimensional,
2349 // contravariant, undotted
2350 spinidx C_co(C_sym, 2, true); // covariant index
2351 spinidx D_dot(D_sym, 2, false, true); // contravariant, dotted
2352 spinidx D_co_dot(D_sym, 2, true, true); // covariant, dotted
2354 cout << indexed(K, C, D) << endl;
2356 cout << indexed(K, C_co, D_dot) << endl;
2358 cout << indexed(K, D_co_dot, D) << endl;
2363 A @code{spinidx} is a @code{varidx} with an additional flag that marks it as
2364 dotted or undotted. The default is undotted but this can be overridden by
2365 supplying a fourth argument to the @code{spinidx} constructor. The two
2369 bool spinidx::is_dotted();
2370 bool spinidx::is_undotted();
2373 allow you to check whether or not a @code{spinidx} object is dotted (use
2374 @code{ex_to<spinidx>()} to get the object reference from an expression).
2375 Finally, the two methods
2378 ex spinidx::toggle_dot();
2379 ex spinidx::toggle_variance_dot();
2382 create a new index with the same value and dimension but opposite dottedness
2383 and the same or opposite variance.
2385 @subsection Substituting indices
2387 @cindex @code{subs()}
2388 Sometimes you will want to substitute one symbolic index with another
2389 symbolic or numeric index, for example when calculating one specific element
2390 of a tensor expression. This is done with the @code{.subs()} method, as it
2391 is done for symbols (see @ref{Substituting Expressions}).
2393 You have two possibilities here. You can either substitute the whole index
2394 by another index or expression:
2398 ex e = indexed(A, mu_co);
2399 cout << e << " becomes " << e.subs(mu_co == nu) << endl;
2400 // -> A.mu becomes A~nu
2401 cout << e << " becomes " << e.subs(mu_co == varidx(0, 4)) << endl;
2402 // -> A.mu becomes A~0
2403 cout << e << " becomes " << e.subs(mu_co == 0) << endl;
2404 // -> A.mu becomes A.0
2408 The third example shows that trying to replace an index with something that
2409 is not an index will substitute the index value instead.
2411 Alternatively, you can substitute the @emph{symbol} of a symbolic index by
2416 ex e = indexed(A, mu_co);
2417 cout << e << " becomes " << e.subs(mu_sym == nu_sym) << endl;
2418 // -> A.mu becomes A.nu
2419 cout << e << " becomes " << e.subs(mu_sym == 0) << endl;
2420 // -> A.mu becomes A.0
2424 As you see, with the second method only the value of the index will get
2425 substituted. Its other properties, including its dimension, remain unchanged.
2426 If you want to change the dimension of an index you have to substitute the
2427 whole index by another one with the new dimension.
2429 Finally, substituting the base expression of an indexed object works as
2434 ex e = indexed(A, mu_co);
2435 cout << e << " becomes " << e.subs(A == A+B) << endl;
2436 // -> A.mu becomes (B+A).mu
2440 @subsection Symmetries
2441 @cindex @code{symmetry} (class)
2442 @cindex @code{sy_none()}
2443 @cindex @code{sy_symm()}
2444 @cindex @code{sy_anti()}
2445 @cindex @code{sy_cycl()}
2447 Indexed objects can have certain symmetry properties with respect to their
2448 indices. Symmetries are specified as a tree of objects of class @code{symmetry}
2449 that is constructed with the helper functions
2452 symmetry sy_none(...);
2453 symmetry sy_symm(...);
2454 symmetry sy_anti(...);
2455 symmetry sy_cycl(...);
2458 @code{sy_none()} stands for no symmetry, @code{sy_symm()} and @code{sy_anti()}
2459 specify fully symmetric or antisymmetric, respectively, and @code{sy_cycl()}
2460 represents a cyclic symmetry. Each of these functions accepts up to four
2461 arguments which can be either symmetry objects themselves or unsigned integer
2462 numbers that represent an index position (counting from 0). A symmetry
2463 specification that consists of only a single @code{sy_symm()}, @code{sy_anti()}
2464 or @code{sy_cycl()} with no arguments specifies the respective symmetry for
2467 Here are some examples of symmetry definitions:
2472 e = indexed(A, i, j);
2473 e = indexed(A, sy_none(), i, j); // equivalent
2474 e = indexed(A, sy_none(0, 1), i, j); // equivalent
2476 // Symmetric in all three indices:
2477 e = indexed(A, sy_symm(), i, j, k);
2478 e = indexed(A, sy_symm(0, 1, 2), i, j, k); // equivalent
2479 e = indexed(A, sy_symm(2, 0, 1), i, j, k); // same symmetry, but yields a
2480 // different canonical order
2482 // Symmetric in the first two indices only:
2483 e = indexed(A, sy_symm(0, 1), i, j, k);
2484 e = indexed(A, sy_none(sy_symm(0, 1), 2), i, j, k); // equivalent
2486 // Antisymmetric in the first and last index only (index ranges need not
2488 e = indexed(A, sy_anti(0, 2), i, j, k);
2489 e = indexed(A, sy_none(sy_anti(0, 2), 1), i, j, k); // equivalent
2491 // An example of a mixed symmetry: antisymmetric in the first two and
2492 // last two indices, symmetric when swapping the first and last index
2493 // pairs (like the Riemann curvature tensor):
2494 e = indexed(A, sy_symm(sy_anti(0, 1), sy_anti(2, 3)), i, j, k, l);
2496 // Cyclic symmetry in all three indices:
2497 e = indexed(A, sy_cycl(), i, j, k);
2498 e = indexed(A, sy_cycl(0, 1, 2), i, j, k); // equivalent
2500 // The following examples are invalid constructions that will throw
2501 // an exception at run time.
2503 // An index may not appear multiple times:
2504 e = indexed(A, sy_symm(0, 0, 1), i, j, k); // ERROR
2505 e = indexed(A, sy_none(sy_symm(0, 1), sy_anti(0, 2)), i, j, k); // ERROR
2507 // Every child of sy_symm(), sy_anti() and sy_cycl() must refer to the
2508 // same number of indices:
2509 e = indexed(A, sy_symm(sy_anti(0, 1), 2), i, j, k); // ERROR
2511 // And of course, you cannot specify indices which are not there:
2512 e = indexed(A, sy_symm(0, 1, 2, 3), i, j, k); // ERROR
2516 If you need to specify more than four indices, you have to use the
2517 @code{.add()} method of the @code{symmetry} class. For example, to specify
2518 full symmetry in the first six indices you would write
2519 @code{sy_symm(0, 1, 2, 3).add(4).add(5)}.
2521 If an indexed object has a symmetry, GiNaC will automatically bring the
2522 indices into a canonical order which allows for some immediate simplifications:
2526 cout << indexed(A, sy_symm(), i, j)
2527 + indexed(A, sy_symm(), j, i) << endl;
2529 cout << indexed(B, sy_anti(), i, j)
2530 + indexed(B, sy_anti(), j, i) << endl;
2532 cout << indexed(B, sy_anti(), i, j, k)
2533 - indexed(B, sy_anti(), j, k, i) << endl;
2538 @cindex @code{get_free_indices()}
2540 @subsection Dummy indices
2542 GiNaC treats certain symbolic index pairs as @dfn{dummy indices} meaning
2543 that a summation over the index range is implied. Symbolic indices which are
2544 not dummy indices are called @dfn{free indices}. Numeric indices are neither
2545 dummy nor free indices.
2547 To be recognized as a dummy index pair, the two indices must be of the same
2548 class and their value must be the same single symbol (an index like
2549 @samp{2*n+1} is never a dummy index). If the indices are of class
2550 @code{varidx} they must also be of opposite variance; if they are of class
2551 @code{spinidx} they must be both dotted or both undotted.
2553 The method @code{.get_free_indices()} returns a vector containing the free
2554 indices of an expression. It also checks that the free indices of the terms
2555 of a sum are consistent:
2559 symbol A("A"), B("B"), C("C");
2561 symbol i_sym("i"), j_sym("j"), k_sym("k"), l_sym("l");
2562 idx i(i_sym, 3), j(j_sym, 3), k(k_sym, 3), l(l_sym, 3);
2564 ex e = indexed(A, i, j) * indexed(B, j, k) + indexed(C, k, l, i, l);
2565 cout << exprseq(e.get_free_indices()) << endl;
2567 // 'j' and 'l' are dummy indices
2569 symbol mu_sym("mu"), nu_sym("nu"), rho_sym("rho"), sigma_sym("sigma");
2570 varidx mu(mu_sym, 4), nu(nu_sym, 4), rho(rho_sym, 4), sigma(sigma_sym, 4);
2572 e = indexed(A, mu, nu) * indexed(B, nu.toggle_variance(), rho)
2573 + indexed(C, mu, sigma, rho, sigma.toggle_variance());
2574 cout << exprseq(e.get_free_indices()) << endl;
2576 // 'nu' is a dummy index, but 'sigma' is not
2578 e = indexed(A, mu, mu);
2579 cout << exprseq(e.get_free_indices()) << endl;
2581 // 'mu' is not a dummy index because it appears twice with the same
2584 e = indexed(A, mu, nu) + 42;
2585 cout << exprseq(e.get_free_indices()) << endl; // ERROR
2586 // this will throw an exception:
2587 // "add::get_free_indices: inconsistent indices in sum"
2591 @cindex @code{expand_dummy_sum()}
2592 A dummy index summation like
2599 can be expanded for indices with numeric
2600 dimensions (e.g. 3) into the explicit sum like
2602 $a_1b^1+a_2b^2+a_3b^3 $.
2605 a.1 b~1 + a.2 b~2 + a.3 b~3.
2607 This is performed by the function
2610 ex expand_dummy_sum(const ex & e, bool subs_idx = false);
2613 which takes an expression @code{e} and returns the expanded sum for all
2614 dummy indices with numeric dimensions. If the parameter @code{subs_idx}
2615 is set to @code{true} then all substitutions are made by @code{idx} class
2616 indices, i.e. without variance. In this case the above sum
2625 $a_1b_1+a_2b_2+a_3b_3 $.
2628 a.1 b.1 + a.2 b.2 + a.3 b.3.
2632 @cindex @code{simplify_indexed()}
2633 @subsection Simplifying indexed expressions
2635 In addition to the few automatic simplifications that GiNaC performs on
2636 indexed expressions (such as re-ordering the indices of symmetric tensors
2637 and calculating traces and convolutions of matrices and predefined tensors)
2641 ex ex::simplify_indexed();
2642 ex ex::simplify_indexed(const scalar_products & sp);
2645 that performs some more expensive operations:
2648 @item it checks the consistency of free indices in sums in the same way
2649 @code{get_free_indices()} does
2650 @item it tries to give dummy indices that appear in different terms of a sum
2651 the same name to allow simplifications like @math{a_i*b_i-a_j*b_j=0}
2652 @item it (symbolically) calculates all possible dummy index summations/contractions
2653 with the predefined tensors (this will be explained in more detail in the
2655 @item it detects contractions that vanish for symmetry reasons, for example
2656 the contraction of a symmetric and a totally antisymmetric tensor
2657 @item as a special case of dummy index summation, it can replace scalar products
2658 of two tensors with a user-defined value
2661 The last point is done with the help of the @code{scalar_products} class
2662 which is used to store scalar products with known values (this is not an
2663 arithmetic class, you just pass it to @code{simplify_indexed()}):
2667 symbol A("A"), B("B"), C("C"), i_sym("i");
2671 sp.add(A, B, 0); // A and B are orthogonal
2672 sp.add(A, C, 0); // A and C are orthogonal
2673 sp.add(A, A, 4); // A^2 = 4 (A has length 2)
2675 e = indexed(A + B, i) * indexed(A + C, i);
2677 // -> (B+A).i*(A+C).i
2679 cout << e.expand(expand_options::expand_indexed).simplify_indexed(sp)
2685 The @code{scalar_products} object @code{sp} acts as a storage for the
2686 scalar products added to it with the @code{.add()} method. This method
2687 takes three arguments: the two expressions of which the scalar product is
2688 taken, and the expression to replace it with. After @code{sp.add(A, B, 0)},
2689 @code{simplify_indexed()} will replace all scalar products of indexed
2690 objects that have the symbols @code{A} and @code{B} as base expressions
2691 with the single value 0. The number, type and dimension of the indices
2692 don't matter; @samp{A~mu~nu*B.mu.nu} would also be replaced by 0.
2694 @cindex @code{expand()}
2695 The example above also illustrates a feature of the @code{expand()} method:
2696 if passed the @code{expand_indexed} option it will distribute indices
2697 over sums, so @samp{(A+B).i} becomes @samp{A.i+B.i}.
2699 @cindex @code{tensor} (class)
2700 @subsection Predefined tensors
2702 Some frequently used special tensors such as the delta, epsilon and metric
2703 tensors are predefined in GiNaC. They have special properties when
2704 contracted with other tensor expressions and some of them have constant
2705 matrix representations (they will evaluate to a number when numeric
2706 indices are specified).
2708 @cindex @code{delta_tensor()}
2709 @subsubsection Delta tensor
2711 The delta tensor takes two indices, is symmetric and has the matrix
2712 representation @code{diag(1, 1, 1, ...)}. It is constructed by the function
2713 @code{delta_tensor()}:
2717 symbol A("A"), B("B");
2719 idx i(symbol("i"), 3), j(symbol("j"), 3),
2720 k(symbol("k"), 3), l(symbol("l"), 3);
2722 ex e = indexed(A, i, j) * indexed(B, k, l)
2723 * delta_tensor(i, k) * delta_tensor(j, l);
2724 cout << e.simplify_indexed() << endl;
2727 cout << delta_tensor(i, i) << endl;
2732 @cindex @code{metric_tensor()}
2733 @subsubsection General metric tensor
2735 The function @code{metric_tensor()} creates a general symmetric metric
2736 tensor with two indices that can be used to raise/lower tensor indices. The
2737 metric tensor is denoted as @samp{g} in the output and if its indices are of
2738 mixed variance it is automatically replaced by a delta tensor:
2744 varidx mu(symbol("mu"), 4), nu(symbol("nu"), 4), rho(symbol("rho"), 4);
2746 ex e = metric_tensor(mu, nu) * indexed(A, nu.toggle_variance(), rho);
2747 cout << e.simplify_indexed() << endl;
2750 e = delta_tensor(mu, nu.toggle_variance()) * metric_tensor(nu, rho);
2751 cout << e.simplify_indexed() << endl;
2754 e = metric_tensor(mu.toggle_variance(), nu.toggle_variance())
2755 * metric_tensor(nu, rho);
2756 cout << e.simplify_indexed() << endl;
2759 e = metric_tensor(nu.toggle_variance(), rho.toggle_variance())
2760 * metric_tensor(mu, nu) * (delta_tensor(mu.toggle_variance(), rho)
2761 + indexed(A, mu.toggle_variance(), rho));
2762 cout << e.simplify_indexed() << endl;
2767 @cindex @code{lorentz_g()}
2768 @subsubsection Minkowski metric tensor
2770 The Minkowski metric tensor is a special metric tensor with a constant
2771 matrix representation which is either @code{diag(1, -1, -1, ...)} (negative
2772 signature, the default) or @code{diag(-1, 1, 1, ...)} (positive signature).
2773 It is created with the function @code{lorentz_g()} (although it is output as
2778 varidx mu(symbol("mu"), 4);
2780 e = delta_tensor(varidx(0, 4), mu.toggle_variance())
2781 * lorentz_g(mu, varidx(0, 4)); // negative signature
2782 cout << e.simplify_indexed() << endl;
2785 e = delta_tensor(varidx(0, 4), mu.toggle_variance())
2786 * lorentz_g(mu, varidx(0, 4), true); // positive signature
2787 cout << e.simplify_indexed() << endl;
2792 @cindex @code{spinor_metric()}
2793 @subsubsection Spinor metric tensor
2795 The function @code{spinor_metric()} creates an antisymmetric tensor with
2796 two indices that is used to raise/lower indices of 2-component spinors.
2797 It is output as @samp{eps}:
2803 spinidx A(symbol("A")), B(symbol("B")), C(symbol("C"));
2804 ex A_co = A.toggle_variance(), B_co = B.toggle_variance();
2806 e = spinor_metric(A, B) * indexed(psi, B_co);
2807 cout << e.simplify_indexed() << endl;
2810 e = spinor_metric(A, B) * indexed(psi, A_co);
2811 cout << e.simplify_indexed() << endl;
2814 e = spinor_metric(A_co, B_co) * indexed(psi, B);
2815 cout << e.simplify_indexed() << endl;
2818 e = spinor_metric(A_co, B_co) * indexed(psi, A);
2819 cout << e.simplify_indexed() << endl;
2822 e = spinor_metric(A_co, B_co) * spinor_metric(A, B);
2823 cout << e.simplify_indexed() << endl;
2826 e = spinor_metric(A_co, B_co) * spinor_metric(B, C);
2827 cout << e.simplify_indexed() << endl;
2832 The matrix representation of the spinor metric is @code{[[0, 1], [-1, 0]]}.
2834 @cindex @code{epsilon_tensor()}
2835 @cindex @code{lorentz_eps()}
2836 @subsubsection Epsilon tensor
2838 The epsilon tensor is totally antisymmetric, its number of indices is equal
2839 to the dimension of the index space (the indices must all be of the same
2840 numeric dimension), and @samp{eps.1.2.3...} (resp. @samp{eps~0~1~2...}) is
2841 defined to be 1. Its behavior with indices that have a variance also
2842 depends on the signature of the metric. Epsilon tensors are output as
2845 There are three functions defined to create epsilon tensors in 2, 3 and 4
2849 ex epsilon_tensor(const ex & i1, const ex & i2);
2850 ex epsilon_tensor(const ex & i1, const ex & i2, const ex & i3);
2851 ex lorentz_eps(const ex & i1, const ex & i2, const ex & i3, const ex & i4,
2852 bool pos_sig = false);
2855 The first two functions create an epsilon tensor in 2 or 3 Euclidean
2856 dimensions, the last function creates an epsilon tensor in a 4-dimensional
2857 Minkowski space (the last @code{bool} argument specifies whether the metric
2858 has negative or positive signature, as in the case of the Minkowski metric
2863 varidx mu(symbol("mu"), 4), nu(symbol("nu"), 4), rho(symbol("rho"), 4),
2864 sig(symbol("sig"), 4), lam(symbol("lam"), 4), bet(symbol("bet"), 4);
2865 e = lorentz_eps(mu, nu, rho, sig) *
2866 lorentz_eps(mu.toggle_variance(), nu.toggle_variance(), lam, bet);
2867 cout << simplify_indexed(e) << endl;
2868 // -> 2*eta~bet~rho*eta~sig~lam-2*eta~sig~bet*eta~rho~lam
2870 idx i(symbol("i"), 3), j(symbol("j"), 3), k(symbol("k"), 3);
2871 symbol A("A"), B("B");
2872 e = epsilon_tensor(i, j, k) * indexed(A, j) * indexed(B, k);
2873 cout << simplify_indexed(e) << endl;
2874 // -> -B.k*A.j*eps.i.k.j
2875 e = epsilon_tensor(i, j, k) * indexed(A, j) * indexed(A, k);
2876 cout << simplify_indexed(e) << endl;
2881 @subsection Linear algebra
2883 The @code{matrix} class can be used with indices to do some simple linear
2884 algebra (linear combinations and products of vectors and matrices, traces
2885 and scalar products):
2889 idx i(symbol("i"), 2), j(symbol("j"), 2);
2890 symbol x("x"), y("y");
2892 // A is a 2x2 matrix, X is a 2x1 vector
2893 matrix A(2, 2), X(2, 1);
2898 cout << indexed(A, i, i) << endl;
2901 ex e = indexed(A, i, j) * indexed(X, j);
2902 cout << e.simplify_indexed() << endl;
2903 // -> [[2*y+x],[4*y+3*x]].i
2905 e = indexed(A, i, j) * indexed(X, i) + indexed(X, j) * 2;
2906 cout << e.simplify_indexed() << endl;
2907 // -> [[3*y+3*x,6*y+2*x]].j
2911 You can of course obtain the same results with the @code{matrix::add()},
2912 @code{matrix::mul()} and @code{matrix::trace()} methods (@pxref{Matrices})
2913 but with indices you don't have to worry about transposing matrices.
2915 Matrix indices always start at 0 and their dimension must match the number
2916 of rows/columns of the matrix. Matrices with one row or one column are
2917 vectors and can have one or two indices (it doesn't matter whether it's a
2918 row or a column vector). Other matrices must have two indices.
2920 You should be careful when using indices with variance on matrices. GiNaC
2921 doesn't look at the variance and doesn't know that @samp{F~mu~nu} and
2922 @samp{F.mu.nu} are different matrices. In this case you should use only
2923 one form for @samp{F} and explicitly multiply it with a matrix representation
2924 of the metric tensor.
2927 @node Non-commutative objects, Hash Maps, Indexed objects, Basic Concepts
2928 @c node-name, next, previous, up
2929 @section Non-commutative objects
2931 GiNaC is equipped to handle certain non-commutative algebras. Three classes of
2932 non-commutative objects are built-in which are mostly of use in high energy
2936 @item Clifford (Dirac) algebra (class @code{clifford})
2937 @item su(3) Lie algebra (class @code{color})
2938 @item Matrices (unindexed) (class @code{matrix})
2941 The @code{clifford} and @code{color} classes are subclasses of
2942 @code{indexed} because the elements of these algebras usually carry
2943 indices. The @code{matrix} class is described in more detail in
2946 Unlike most computer algebra systems, GiNaC does not primarily provide an
2947 operator (often denoted @samp{&*}) for representing inert products of
2948 arbitrary objects. Rather, non-commutativity in GiNaC is a property of the
2949 classes of objects involved, and non-commutative products are formed with
2950 the usual @samp{*} operator, as are ordinary products. GiNaC is capable of
2951 figuring out by itself which objects commutate and will group the factors
2952 by their class. Consider this example:
2956 varidx mu(symbol("mu"), 4), nu(symbol("nu"), 4);
2957 idx a(symbol("a"), 8), b(symbol("b"), 8);
2958 ex e = -dirac_gamma(mu) * (2*color_T(a)) * 8 * color_T(b) * dirac_gamma(nu);
2960 // -> -16*(gamma~mu*gamma~nu)*(T.a*T.b)
2964 As can be seen, GiNaC pulls out the overall commutative factor @samp{-16} and
2965 groups the non-commutative factors (the gammas and the su(3) generators)
2966 together while preserving the order of factors within each class (because
2967 Clifford objects commutate with color objects). The resulting expression is a
2968 @emph{commutative} product with two factors that are themselves non-commutative
2969 products (@samp{gamma~mu*gamma~nu} and @samp{T.a*T.b}). For clarification,
2970 parentheses are placed around the non-commutative products in the output.
2972 @cindex @code{ncmul} (class)
2973 Non-commutative products are internally represented by objects of the class
2974 @code{ncmul}, as opposed to commutative products which are handled by the
2975 @code{mul} class. You will normally not have to worry about this distinction,
2978 The advantage of this approach is that you never have to worry about using
2979 (or forgetting to use) a special operator when constructing non-commutative
2980 expressions. Also, non-commutative products in GiNaC are more intelligent
2981 than in other computer algebra systems; they can, for example, automatically
2982 canonicalize themselves according to rules specified in the implementation
2983 of the non-commutative classes. The drawback is that to work with other than
2984 the built-in algebras you have to implement new classes yourself. Symbols
2985 always commutate and it's not possible to construct non-commutative products
2986 using symbols to represent the algebra elements or generators. User-defined
2987 functions can, however, be specified as being non-commutative.
2989 @cindex @code{return_type()}
2990 @cindex @code{return_type_tinfo()}
2991 Information about the commutativity of an object or expression can be
2992 obtained with the two member functions
2995 unsigned ex::return_type() const;
2996 unsigned ex::return_type_tinfo() const;
2999 The @code{return_type()} function returns one of three values (defined in
3000 the header file @file{flags.h}), corresponding to three categories of
3001 expressions in GiNaC:
3004 @item @code{return_types::commutative}: Commutates with everything. Most GiNaC
3005 classes are of this kind.
3006 @item @code{return_types::noncommutative}: Non-commutative, belonging to a
3007 certain class of non-commutative objects which can be determined with the
3008 @code{return_type_tinfo()} method. Expressions of this category commutate
3009 with everything except @code{noncommutative} expressions of the same
3011 @item @code{return_types::noncommutative_composite}: Non-commutative, composed
3012 of non-commutative objects of different classes. Expressions of this
3013 category don't commutate with any other @code{noncommutative} or
3014 @code{noncommutative_composite} expressions.
3017 The value returned by the @code{return_type_tinfo()} method is valid only
3018 when the return type of the expression is @code{noncommutative}. It is a
3019 value that is unique to the class of the object and usually one of the
3020 constants in @file{tinfos.h}, or derived therefrom.
3022 Here are a couple of examples:
3025 @multitable @columnfractions 0.33 0.33 0.34
3026 @item @strong{Expression} @tab @strong{@code{return_type()}} @tab @strong{@code{return_type_tinfo()}}
3027 @item @code{42} @tab @code{commutative} @tab -
3028 @item @code{2*x-y} @tab @code{commutative} @tab -
3029 @item @code{dirac_ONE()} @tab @code{noncommutative} @tab @code{TINFO_clifford}
3030 @item @code{dirac_gamma(mu)*dirac_gamma(nu)} @tab @code{noncommutative} @tab @code{TINFO_clifford}
3031 @item @code{2*color_T(a)} @tab @code{noncommutative} @tab @code{TINFO_color}
3032 @item @code{dirac_ONE()*color_T(a)} @tab @code{noncommutative_composite} @tab -
3036 Note: the @code{return_type_tinfo()} of Clifford objects is only equal to
3037 @code{TINFO_clifford} for objects with a representation label of zero.
3038 Other representation labels yield a different @code{return_type_tinfo()},
3039 but it's the same for any two objects with the same label. This is also true
3042 A last note: With the exception of matrices, positive integer powers of
3043 non-commutative objects are automatically expanded in GiNaC. For example,
3044 @code{pow(a*b, 2)} becomes @samp{a*b*a*b} if @samp{a} and @samp{b} are
3045 non-commutative expressions).
3048 @cindex @code{clifford} (class)
3049 @subsection Clifford algebra
3052 Clifford algebras are supported in two flavours: Dirac gamma
3053 matrices (more physical) and generic Clifford algebras (more
3056 @cindex @code{dirac_gamma()}
3057 @subsubsection Dirac gamma matrices
3058 Dirac gamma matrices (note that GiNaC doesn't treat them
3059 as matrices) are designated as @samp{gamma~mu} and satisfy
3060 @samp{gamma~mu*gamma~nu + gamma~nu*gamma~mu = 2*eta~mu~nu} where
3061 @samp{eta~mu~nu} is the Minkowski metric tensor. Dirac gammas are
3062 constructed by the function
3065 ex dirac_gamma(const ex & mu, unsigned char rl = 0);
3068 which takes two arguments: the index and a @dfn{representation label} in the
3069 range 0 to 255 which is used to distinguish elements of different Clifford
3070 algebras (this is also called a @dfn{spin line index}). Gammas with different
3071 labels commutate with each other. The dimension of the index can be 4 or (in
3072 the framework of dimensional regularization) any symbolic value. Spinor
3073 indices on Dirac gammas are not supported in GiNaC.
3075 @cindex @code{dirac_ONE()}
3076 The unity element of a Clifford algebra is constructed by
3079 ex dirac_ONE(unsigned char rl = 0);
3082 @strong{Please notice:} You must always use @code{dirac_ONE()} when referring to
3083 multiples of the unity element, even though it's customary to omit it.
3084 E.g. instead of @code{dirac_gamma(mu)*(dirac_slash(q,4)+m)} you have to
3085 write @code{dirac_gamma(mu)*(dirac_slash(q,4)+m*dirac_ONE())}. Otherwise,
3086 GiNaC will complain and/or produce incorrect results.
3088 @cindex @code{dirac_gamma5()}
3089 There is a special element @samp{gamma5} that commutates with all other
3090 gammas, has a unit square, and in 4 dimensions equals
3091 @samp{gamma~0 gamma~1 gamma~2 gamma~3}, provided by
3094 ex dirac_gamma5(unsigned char rl = 0);
3097 @cindex @code{dirac_gammaL()}
3098 @cindex @code{dirac_gammaR()}
3099 The chiral projectors @samp{(1+/-gamma5)/2} are also available as proper
3100 objects, constructed by
3103 ex dirac_gammaL(unsigned char rl = 0);
3104 ex dirac_gammaR(unsigned char rl = 0);
3107 They observe the relations @samp{gammaL^2 = gammaL}, @samp{gammaR^2 = gammaR},
3108 and @samp{gammaL gammaR = gammaR gammaL = 0}.
3110 @cindex @code{dirac_slash()}
3111 Finally, the function
3114 ex dirac_slash(const ex & e, const ex & dim, unsigned char rl = 0);
3117 creates a term that represents a contraction of @samp{e} with the Dirac
3118 Lorentz vector (it behaves like a term of the form @samp{e.mu gamma~mu}
3119 with a unique index whose dimension is given by the @code{dim} argument).
3120 Such slashed expressions are printed with a trailing backslash, e.g. @samp{e\}.
3122 In products of dirac gammas, superfluous unity elements are automatically
3123 removed, squares are replaced by their values, and @samp{gamma5}, @samp{gammaL}
3124 and @samp{gammaR} are moved to the front.
3126 The @code{simplify_indexed()} function performs contractions in gamma strings,
3132 symbol a("a"), b("b"), D("D");
3133 varidx mu(symbol("mu"), D);
3134 ex e = dirac_gamma(mu) * dirac_slash(a, D)
3135 * dirac_gamma(mu.toggle_variance());
3137 // -> gamma~mu*a\*gamma.mu
3138 e = e.simplify_indexed();
3141 cout << e.subs(D == 4) << endl;
3147 @cindex @code{dirac_trace()}
3148 To calculate the trace of an expression containing strings of Dirac gammas
3149 you use one of the functions
3152 ex dirac_trace(const ex & e, const std::set<unsigned char> & rls,
3153 const ex & trONE = 4);
3154 ex dirac_trace(const ex & e, const lst & rll, const ex & trONE = 4);
3155 ex dirac_trace(const ex & e, unsigned char rl = 0, const ex & trONE = 4);
3158 These functions take the trace over all gammas in the specified set @code{rls}
3159 or list @code{rll} of representation labels, or the single label @code{rl};
3160 gammas with other labels are left standing. The last argument to
3161 @code{dirac_trace()} is the value to be returned for the trace of the unity
3162 element, which defaults to 4.
3164 The @code{dirac_trace()} function is a linear functional that is equal to the
3165 ordinary matrix trace only in @math{D = 4} dimensions. In particular, the
3166 functional is not cyclic in
3169 dimensions when acting on
3170 expressions containing @samp{gamma5}, so it's not a proper trace. This
3171 @samp{gamma5} scheme is described in greater detail in
3172 @cite{The Role of gamma5 in Dimensional Regularization}.
3174 The value of the trace itself is also usually different in 4 and in
3182 varidx mu(symbol("mu"), 4), nu(symbol("nu"), 4), rho(symbol("rho"), 4);
3183 ex e = dirac_gamma(mu) * dirac_gamma(nu) *
3184 dirac_gamma(mu.toggle_variance()) * dirac_gamma(rho);
3185 cout << dirac_trace(e).simplify_indexed() << endl;
3192 varidx mu(symbol("mu"), D), nu(symbol("nu"), D), rho(symbol("rho"), D);
3193 ex e = dirac_gamma(mu) * dirac_gamma(nu) *
3194 dirac_gamma(mu.toggle_variance()) * dirac_gamma(rho);
3195 cout << dirac_trace(e).simplify_indexed() << endl;
3196 // -> 8*eta~rho~nu-4*eta~rho~nu*D
3200 Here is an example for using @code{dirac_trace()} to compute a value that
3201 appears in the calculation of the one-loop vacuum polarization amplitude in
3206 symbol q("q"), l("l"), m("m"), ldotq("ldotq"), D("D");
3207 varidx mu(symbol("mu"), D), nu(symbol("nu"), D);
3210 sp.add(l, l, pow(l, 2));
3211 sp.add(l, q, ldotq);
3213 ex e = dirac_gamma(mu) *
3214 (dirac_slash(l, D) + dirac_slash(q, D) + m * dirac_ONE()) *
3215 dirac_gamma(mu.toggle_variance()) *
3216 (dirac_slash(l, D) + m * dirac_ONE());
3217 e = dirac_trace(e).simplify_indexed(sp);
3218 e = e.collect(lst(l, ldotq, m));
3220 // -> (8-4*D)*l^2+(8-4*D)*ldotq+4*D*m^2
3224 The @code{canonicalize_clifford()} function reorders all gamma products that
3225 appear in an expression to a canonical (but not necessarily simple) form.
3226 You can use this to compare two expressions or for further simplifications:
3230 varidx mu(symbol("mu"), 4), nu(symbol("nu"), 4);
3231 ex e = dirac_gamma(mu) * dirac_gamma(nu) + dirac_gamma(nu) * dirac_gamma(mu);
3233 // -> gamma~mu*gamma~nu+gamma~nu*gamma~mu
3235 e = canonicalize_clifford(e);
3237 // -> 2*ONE*eta~mu~nu
3241 @cindex @code{clifford_unit()}
3242 @subsubsection A generic Clifford algebra
3244 A generic Clifford algebra, i.e. a
3248 dimensional algebra with
3252 satisfying the identities
3254 $e_i e_j + e_j e_i = M(i, j) + M(j, i) $
3257 e~i e~j + e~j e~i = M(i, j) + M(j, i)
3259 for some bilinear form (@code{metric})
3260 @math{M(i, j)}, which may be non-symmetric (see arXiv:math.QA/9911180)
3261 and contain symbolic entries. Such generators are created by the
3265 ex clifford_unit(const ex & mu, const ex & metr, unsigned char rl = 0,
3266 bool anticommuting = false);
3269 where @code{mu} should be a @code{varidx} class object indexing the
3270 generators, an index @code{mu} with a numeric value may be of type
3272 Parameter @code{metr} defines the metric @math{M(i, j)} and can be
3273 represented by a square @code{matrix}, @code{tensormetric} or @code{indexed} class
3274 object. Optional parameter @code{rl} allows to distinguish different
3275 Clifford algebras, which will commute with each other. The last
3276 optional parameter @code{anticommuting} defines if the anticommuting
3279 $e_i e_j + e_j e_i = 0$)
3282 e~i e~j + e~j e~i = 0)
3284 will be used for contraction of Clifford units. If the @code{metric} is
3285 supplied by a @code{matrix} object, then the value of
3286 @code{anticommuting} is calculated automatically and the supplied one
3287 will be ignored. One can overcome this by giving @code{metric} through
3288 matrix wrapped into an @code{indexed} object.
3290 Note that the call @code{clifford_unit(mu, minkmetric())} creates
3291 something very close to @code{dirac_gamma(mu)}, although
3292 @code{dirac_gamma} have more efficient simplification mechanism.
3293 @cindex @code{clifford::get_metric()}
3294 The method @code{clifford::get_metric()} returns a metric defining this
3296 @cindex @code{clifford::is_anticommuting()}
3297 The method @code{clifford::is_anticommuting()} returns the
3298 @code{anticommuting} property of a unit.
3300 If the matrix @math{M(i, j)} is in fact symmetric you may prefer to create
3301 the Clifford algebra units with a call like that
3304 ex e = clifford_unit(mu, indexed(M, sy_symm(), i, j));
3307 since this may yield some further automatic simplifications. Again, for a
3308 metric defined through a @code{matrix} such a symmetry is detected
3311 Individual generators of a Clifford algebra can be accessed in several
3317 varidx nu(symbol("nu"), 4);
3319 ex M = diag_matrix(lst(1, -1, 0, s));
3320 ex e = clifford_unit(nu, M);
3321 ex e0 = e.subs(nu == 0);
3322 ex e1 = e.subs(nu == 1);
3323 ex e2 = e.subs(nu == 2);
3324 ex e3 = e.subs(nu == 3);
3329 will produce four anti-commuting generators of a Clifford algebra with properties
3331 $e_0^2=1 $, $e_1^2=-1$, $e_2^2=0$ and $e_3^2=s$.
3334 @code{pow(e0, 2) = 1}, @code{pow(e1, 2) = -1}, @code{pow(e2, 2) = 0} and
3335 @code{pow(e3, 2) = s}.
3338 @cindex @code{lst_to_clifford()}
3339 A similar effect can be achieved from the function
3342 ex lst_to_clifford(const ex & v, const ex & mu, const ex & metr,
3343 unsigned char rl = 0, bool anticommuting = false);
3344 ex lst_to_clifford(const ex & v, const ex & e);
3347 which converts a list or vector
3349 $v = (v^0, v^1, ..., v^n)$
3352 @samp{v = (v~0, v~1, ..., v~n)}
3357 $v^0 e_0 + v^1 e_1 + ... + v^n e_n$
3360 @samp{v~0 e.0 + v~1 e.1 + ... + v~n e.n}
3363 directly supplied in the second form of the procedure. In the first form
3364 the Clifford unit @samp{e.k} is generated by the call of
3365 @code{clifford_unit(mu, metr, rl, anticommuting)}. The previous code may be rewritten
3366 with the help of @code{lst_to_clifford()} as follows
3371 varidx nu(symbol("nu"), 4);
3373 ex M = diag_matrix(lst(1, -1, 0, s));
3374 ex e0 = lst_to_clifford(lst(1, 0, 0, 0), nu, M);
3375 ex e1 = lst_to_clifford(lst(0, 1, 0, 0), nu, M);
3376 ex e2 = lst_to_clifford(lst(0, 0, 1, 0), nu, M);
3377 ex e3 = lst_to_clifford(lst(0, 0, 0, 1), nu, M);
3382 @cindex @code{clifford_to_lst()}
3383 There is the inverse function
3386 lst clifford_to_lst(const ex & e, const ex & c, bool algebraic = true);
3389 which takes an expression @code{e} and tries to find a list
3391 $v = (v^0, v^1, ..., v^n)$
3394 @samp{v = (v~0, v~1, ..., v~n)}
3398 $e = v^0 c_0 + v^1 c_1 + ... + v^n c_n$
3401 @samp{e = v~0 c.0 + v~1 c.1 + ... + v~n c.n}
3403 with respect to the given Clifford units @code{c} and with none of the
3404 @samp{v~k} containing Clifford units @code{c} (of course, this
3405 may be impossible). This function can use an @code{algebraic} method
3406 (default) or a symbolic one. With the @code{algebraic} method the @samp{v~k} are calculated as
3408 $(e c_k + c_k e)/c_k^2$. If $c_k^2$
3411 @samp{(e c.k + c.k e)/pow(c.k, 2)}. If @samp{pow(c.k, 2)}
3413 is zero or is not @code{numeric} for some @samp{k}
3414 then the method will be automatically changed to symbolic. The same effect
3415 is obtained by the assignment (@code{algebraic = false}) in the procedure call.
3417 @cindex @code{clifford_prime()}
3418 @cindex @code{clifford_star()}
3419 @cindex @code{clifford_bar()}
3420 There are several functions for (anti-)automorphisms of Clifford algebras:
3423 ex clifford_prime(const ex & e)
3424 inline ex clifford_star(const ex & e) @{ return e.conjugate(); @}
3425 inline ex clifford_bar(const ex & e) @{ return clifford_prime(e.conjugate()); @}
3428 The automorphism of a Clifford algebra @code{clifford_prime()} simply
3429 changes signs of all Clifford units in the expression. The reversion
3430 of a Clifford algebra @code{clifford_star()} coincides with the
3431 @code{conjugate()} method and effectively reverses the order of Clifford
3432 units in any product. Finally the main anti-automorphism
3433 of a Clifford algebra @code{clifford_bar()} is the composition of the
3434 previous two, i.e. it makes the reversion and changes signs of all Clifford units
3435 in a product. These functions correspond to the notations
3450 used in Clifford algebra textbooks.
3452 @cindex @code{clifford_norm()}
3456 ex clifford_norm(const ex & e);
3459 @cindex @code{clifford_inverse()}
3460 calculates the norm of a Clifford number from the expression
3462 $||e||^2 = e\overline{e}$.
3465 @code{||e||^2 = e \bar@{e@}}
3467 The inverse of a Clifford expression is returned by the function
3470 ex clifford_inverse(const ex & e);
3473 which calculates it as
3475 $e^{-1} = \overline{e}/||e||^2$.
3478 @math{e^@{-1@} = \bar@{e@}/||e||^2}
3487 then an exception is raised.
3489 @cindex @code{remove_dirac_ONE()}
3490 If a Clifford number happens to be a factor of
3491 @code{dirac_ONE()} then we can convert it to a ``real'' (non-Clifford)
3492 expression by the function
3495 ex remove_dirac_ONE(const ex & e);
3498 @cindex @code{canonicalize_clifford()}
3499 The function @code{canonicalize_clifford()} works for a
3500 generic Clifford algebra in a similar way as for Dirac gammas.
3502 The next provided function is
3504 @cindex @code{clifford_moebius_map()}
3506 ex clifford_moebius_map(const ex & a, const ex & b, const ex & c,
3507 const ex & d, const ex & v, const ex & G,
3508 unsigned char rl = 0, bool anticommuting = false);
3509 ex clifford_moebius_map(const ex & M, const ex & v, const ex & G,
3510 unsigned char rl = 0, bool anticommuting = false);
3513 It takes a list or vector @code{v} and makes the Moebius (conformal or
3514 linear-fractional) transformation @samp{v -> (av+b)/(cv+d)} defined by
3515 the matrix @samp{M = [[a, b], [c, d]]}. The parameter @code{G} defines
3516 the metric of the surrounding (pseudo-)Euclidean space. This can be an
3517 indexed object, tensormetric, matrix or a Clifford unit, in the later
3518 case the optional parameters @code{rl} and @code{anticommuting} are ignored
3519 even if supplied. The returned value of this function is a list of
3520 components of the resulting vector.
3522 @cindex @code{clifford_max_label()}
3523 Finally the function
3526 char clifford_max_label(const ex & e, bool ignore_ONE = false);
3529 can detect a presence of Clifford objects in the expression @code{e}: if
3530 such objects are found it returns the maximal
3531 @code{representation_label} of them, otherwise @code{-1}. The optional
3532 parameter @code{ignore_ONE} indicates if @code{dirac_ONE} objects should
3533 be ignored during the search.
3535 LaTeX output for Clifford units looks like
3536 @code{\clifford[1]@{e@}^@{@{\nu@}@}}, where @code{1} is the
3537 @code{representation_label} and @code{\nu} is the index of the
3538 corresponding unit. This provides a flexible typesetting with a suitable
3539 defintion of the @code{\clifford} command. For example, the definition
3541 \newcommand@{\clifford@}[1][]@{@}
3543 typesets all Clifford units identically, while the alternative definition
3545 \newcommand@{\clifford@}[2][]@{\ifcase #1 #2\or \tilde@{#2@} \or \breve@{#2@} \fi@}
3547 prints units with @code{representation_label=0} as
3554 with @code{representation_label=1} as
3561 and with @code{representation_label=2} as
3569 @cindex @code{color} (class)
3570 @subsection Color algebra
3572 @cindex @code{color_T()}
3573 For computations in quantum chromodynamics, GiNaC implements the base elements
3574 and structure constants of the su(3) Lie algebra (color algebra). The base
3575 elements @math{T_a} are constructed by the function
3578 ex color_T(const ex & a, unsigned char rl = 0);
3581 which takes two arguments: the index and a @dfn{representation label} in the
3582 range 0 to 255 which is used to distinguish elements of different color
3583 algebras. Objects with different labels commutate with each other. The
3584 dimension of the index must be exactly 8 and it should be of class @code{idx},
3587 @cindex @code{color_ONE()}
3588 The unity element of a color algebra is constructed by
3591 ex color_ONE(unsigned char rl = 0);
3594 @strong{Please notice:} You must always use @code{color_ONE()} when referring to
3595 multiples of the unity element, even though it's customary to omit it.
3596 E.g. instead of @code{color_T(a)*(color_T(b)*indexed(X,b)+1)} you have to
3597 write @code{color_T(a)*(color_T(b)*indexed(X,b)+color_ONE())}. Otherwise,
3598 GiNaC may produce incorrect results.
3600 @cindex @code{color_d()}
3601 @cindex @code{color_f()}
3605 ex color_d(const ex & a, const ex & b, const ex & c);
3606 ex color_f(const ex & a, const ex & b, const ex & c);
3609 create the symmetric and antisymmetric structure constants @math{d_abc} and
3610 @math{f_abc} which satisfy @math{@{T_a, T_b@} = 1/3 delta_ab + d_abc T_c}
3611 and @math{[T_a, T_b] = i f_abc T_c}.
3613 These functions evaluate to their numerical values,
3614 if you supply numeric indices to them. The index values should be in
3615 the range from 1 to 8, not from 0 to 7. This departure from usual conventions
3616 goes along better with the notations used in physical literature.
3618 @cindex @code{color_h()}
3619 There's an additional function
3622 ex color_h(const ex & a, const ex & b, const ex & c);
3625 which returns the linear combination @samp{color_d(a, b, c)+I*color_f(a, b, c)}.
3627 The function @code{simplify_indexed()} performs some simplifications on
3628 expressions containing color objects:
3633 idx a(symbol("a"), 8), b(symbol("b"), 8), c(symbol("c"), 8),
3634 k(symbol("k"), 8), l(symbol("l"), 8);
3636 e = color_d(a, b, l) * color_f(a, b, k);
3637 cout << e.simplify_indexed() << endl;
3640 e = color_d(a, b, l) * color_d(a, b, k);
3641 cout << e.simplify_indexed() << endl;
3644 e = color_f(l, a, b) * color_f(a, b, k);
3645 cout << e.simplify_indexed() << endl;
3648 e = color_h(a, b, c) * color_h(a, b, c);
3649 cout << e.simplify_indexed() << endl;
3652 e = color_h(a, b, c) * color_T(b) * color_T(c);
3653 cout << e.simplify_indexed() << endl;
3656 e = color_h(a, b, c) * color_T(a) * color_T(b) * color_T(c);
3657 cout << e.simplify_indexed() << endl;
3660 e = color_T(k) * color_T(a) * color_T(b) * color_T(k);
3661 cout << e.simplify_indexed() << endl;
3662 // -> 1/4*delta.b.a*ONE-1/6*T.a*T.b
3666 @cindex @code{color_trace()}
3667 To calculate the trace of an expression containing color objects you use one
3671 ex color_trace(const ex & e, const std::set<unsigned char> & rls);
3672 ex color_trace(const ex & e, const lst & rll);
3673 ex color_trace(const ex & e, unsigned char rl = 0);
3676 These functions take the trace over all color @samp{T} objects in the
3677 specified set @code{rls} or list @code{rll} of representation labels, or the
3678 single label @code{rl}; @samp{T}s with other labels are left standing. For
3683 e = color_trace(4 * color_T(a) * color_T(b) * color_T(c));
3685 // -> -I*f.a.c.b+d.a.c.b
3690 @node Hash Maps, Methods and Functions, Non-commutative objects, Basic Concepts
3691 @c node-name, next, previous, up
3694 @cindex @code{exhashmap} (class)
3696 For your convenience, GiNaC offers the container template @code{exhashmap<T>}
3697 that can be used as a drop-in replacement for the STL
3698 @code{std::map<ex, T, ex_is_less>}, using hash tables to provide faster,
3699 typically constant-time, element look-up than @code{map<>}.
3701 @code{exhashmap<>} supports all @code{map<>} members and operations, with the
3702 following differences:
3706 no @code{lower_bound()} and @code{upper_bound()} methods
3708 no reverse iterators, no @code{rbegin()}/@code{rend()}
3710 no @code{operator<(exhashmap, exhashmap)}
3712 the comparison function object @code{key_compare} is hardcoded to
3715 the constructor @code{exhashmap(size_t n)} allows specifying the minimum
3716 initial hash table size (the actual table size after construction may be
3717 larger than the specified value)
3719 the method @code{size_t bucket_count()} returns the current size of the hash
3722 @code{insert()} and @code{erase()} operations invalidate all iterators
3726 @node Methods and Functions, Information About Expressions, Hash Maps, Top
3727 @c node-name, next, previous, up
3728 @chapter Methods and Functions
3731 In this chapter the most important algorithms provided by GiNaC will be
3732 described. Some of them are implemented as functions on expressions,
3733 others are implemented as methods provided by expression objects. If
3734 they are methods, there exists a wrapper function around it, so you can
3735 alternatively call it in a functional way as shown in the simple
3740 cout << "As method: " << sin(1).evalf() << endl;
3741 cout << "As function: " << evalf(sin(1)) << endl;
3745 @cindex @code{subs()}
3746 The general rule is that wherever methods accept one or more parameters
3747 (@var{arg1}, @var{arg2}, @dots{}) the order of arguments the function
3748 wrapper accepts is the same but preceded by the object to act on
3749 (@var{object}, @var{arg1}, @var{arg2}, @dots{}). This approach is the