166 lines
		
	
	
		
			7.6 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
		
		
			
		
	
	
			166 lines
		
	
	
		
			7.6 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
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								@node    Introduction, Tutorial, Top, Top
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								@chapter Introduction
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								This manual documents version @value{VERSION} of FFTW, the
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								@emph{Fastest Fourier Transform in the West}.  FFTW is a comprehensive
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								collection of fast C routines for computing the discrete Fourier
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								transform (DFT) and various special cases thereof.
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								@cindex discrete Fourier transform
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								@cindex DFT
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								@itemize @bullet
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								@item FFTW computes the DFT of complex data, real data, even-
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								  or odd-symmetric real data (these symmetric transforms are usually
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								  known as the discrete cosine or sine transform, respectively), and the
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								  discrete Hartley transform (DHT) of real data.
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								@item  The input data can have arbitrary length.  
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								       FFTW employs @Onlogn{} algorithms for all lengths, including
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								       prime numbers.
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								@item  FFTW supports arbitrary multi-dimensional data.
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								@item  FFTW supports the SSE, SSE2, AVX, AVX2, AVX512, KCVI, Altivec, VSX, and
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								       NEON vector instruction sets.
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								@item  FFTW includes parallel (multi-threaded) transforms
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								       for shared-memory systems.
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								@item  Starting with version 3.3, FFTW includes distributed-memory parallel
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								       transforms using MPI.
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								@end itemize
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								We assume herein that you are familiar with the properties and uses of
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								the DFT that are relevant to your application.  Otherwise, see
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								e.g. @cite{The Fast Fourier Transform and Its Applications} by E. O. Brigham
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								(Prentice-Hall, Englewood Cliffs, NJ, 1988).
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								@uref{http://www.fftw.org, Our web page} also has links to FFT-related
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								information online.
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								@cindex FFTW
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								@c TODO: revise.  We don't need to brag any longer
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								@c
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								@c FFTW is usually faster (and sometimes much faster) than all other
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								@c freely-available Fourier transform programs found on the Net.  It is
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								@c competitive with (and often faster than) the FFT codes in Sun's
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								@c Performance Library, IBM's ESSL library, HP's CXML library, and
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								@c Intel's MKL library, which are targeted at specific machines.
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								@c Moreover, FFTW's performance is @emph{portable}.  Indeed, FFTW is
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								@c unique in that it automatically adapts itself to your machine, your
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								@c cache, the size of your memory, your number of registers, and all the
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								@c other factors that normally make it impossible to optimize a program
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								@c for more than one machine.  An extensive comparison of FFTW's
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								@c performance with that of other Fourier transform codes has been made,
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								@c and the results are available on the Web at
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								@c @uref{http://fftw.org/benchfft, the benchFFT home page}.
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								@c @cindex benchmark
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								@c @fpindex benchfft
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								In order to use FFTW effectively, you need to learn one basic concept
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								of FFTW's internal structure: FFTW does not use a fixed algorithm for
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								computing the transform, but instead it adapts the DFT algorithm to
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								details of the underlying hardware in order to maximize performance.
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								Hence, the computation of the transform is split into two phases.
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								First, FFTW's @dfn{planner} ``learns'' the fastest way to compute the
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								transform on your machine.  The planner
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								@cindex planner
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								produces a data structure called a @dfn{plan} that contains this
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								@cindex plan
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								information.  Subsequently, the plan is @dfn{executed}
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								@cindex execute
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								to transform the array of input data as dictated by the plan.  The
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								plan can be reused as many times as needed.  In typical
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								high-performance applications, many transforms of the same size are
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								computed and, consequently, a relatively expensive initialization of
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								this sort is acceptable.  On the other hand, if you need a single
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								transform of a given size, the one-time cost of the planner becomes
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								significant.  For this case, FFTW provides fast planners based on
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								heuristics or on previously computed plans.
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								FFTW supports transforms of data with arbitrary length, rank,
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								multiplicity, and a general memory layout.  In simple cases, however,
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								this generality may be unnecessary and confusing.  Consequently, we
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								organized the interface to FFTW into three levels of increasing
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								generality.
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								@itemize @bullet
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								@item The @dfn{basic interface} computes a single 
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								      transform of contiguous data.
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								@item The @dfn{advanced interface} computes transforms 
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								      of multiple or strided arrays.
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								@item The @dfn{guru interface} supports the most general data 
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								      layouts, multiplicities, and strides.
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								@end itemize
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								We expect that most users will be best served by the basic interface,
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								whereas the guru interface requires careful attention to the
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								documentation to avoid problems.
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								@cindex basic interface
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								@cindex advanced interface
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								@cindex guru interface 
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								Besides the automatic performance adaptation performed by the planner,
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								it is also possible for advanced users to customize FFTW manually.  For
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								example, if code space is a concern, we provide a tool that links only
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								the subset of FFTW needed by your application.  Conversely, you may need
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								to extend FFTW because the standard distribution is not sufficient for
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								your needs.  For example, the standard FFTW distribution works most
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								efficiently for arrays whose size can be factored into small primes
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								(@math{2}, @math{3}, @math{5}, and @math{7}), and otherwise it uses a
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								slower general-purpose routine.  If you need efficient transforms of
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								other sizes, you can use FFTW's code generator, which produces fast C
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								programs (``codelets'') for any particular array size you may care
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								about.
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								@cindex code generator
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								@cindex codelet
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								For example, if you need transforms of size
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								@ifinfo
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								@math{513 = 19 x 3^3},
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								@end ifinfo
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								@tex
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								$513 = 19 \cdot 3^3$,
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								@end tex
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								@html
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								513 = 19*3<sup>3</sup>,
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								@end html
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								you can customize FFTW to support the factor @math{19} efficiently.
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								For more information regarding FFTW, see the paper, ``The Design and
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								Implementation of FFTW3,'' by M. Frigo and S. G. Johnson, which was an
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								invited paper in @cite{Proc. IEEE} @b{93} (2), p. 216 (2005).  The
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								code generator is described in the paper ``A fast Fourier transform
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								compiler'',
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								@cindex compiler
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								by M. Frigo, in the @cite{Proceedings of the 1999 ACM SIGPLAN Conference
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								on Programming Language Design and Implementation (PLDI), Atlanta,
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								Georgia, May 1999}.  These papers, along with the latest version of
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								FFTW, the FAQ, benchmarks, and other links, are available at
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								@uref{http://www.fftw.org, the FFTW home page}.  
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								The current version of FFTW incorporates many good ideas from the past
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								thirty years of FFT literature.  In one way or another, FFTW uses the
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								Cooley-Tukey algorithm, the prime factor algorithm, Rader's algorithm
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								for prime sizes, and a split-radix algorithm (with a
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								``conjugate-pair'' variation pointed out to us by Dan Bernstein).
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								FFTW's code generator also produces new algorithms that we do not
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								completely understand.
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								@cindex algorithm
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								The reader is referred to the cited papers for the appropriate
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								references.
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								The rest of this manual is organized as follows.  We first discuss the
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								sequential (single-processor) implementation.  We start by describing
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								the basic interface/features of FFTW in @ref{Tutorial}.  
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								Next, @ref{Other Important Topics} discusses data alignment
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								(@pxref{SIMD alignment and fftw_malloc}),
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								the storage scheme of multi-dimensional arrays
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								(@pxref{Multi-dimensional Array Format}), and FFTW's mechanism for
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								storing plans on disk (@pxref{Words of Wisdom-Saving Plans}).  Next,
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								@ref{FFTW Reference} provides comprehensive documentation of all
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								FFTW's features.  Parallel transforms are discussed in their own
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								chapters: @ref{Multi-threaded FFTW} and @ref{Distributed-memory FFTW
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								with MPI}.  Fortran programmers can also use FFTW, as described in
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								@ref{Calling FFTW from Legacy Fortran} and @ref{Calling FFTW from
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								Modern Fortran}.  @ref{Installation and Customization} explains how to
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								install FFTW in your computer system and how to adapt FFTW to your
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								needs.  License and copyright information is given in @ref{License and
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								Copyright}.  Finally, we thank all the people who helped us in
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								@ref{Acknowledgments}.
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