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version 1.6, 2001/11/28 09:05:57 version 1.11, 2002/02/25 01:02:14
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 % $OpenXM: OpenXM/doc/Papers/dag-noro-proc.tex,v 1.5 2001/11/28 08:46:54 noro Exp $  % $OpenXM: OpenXM/doc/Papers/dag-noro-proc.tex,v 1.10 2002/01/04 06:06:09 noro Exp $
 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%  %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
 % This is a sample input file for your contribution to a multi-  % This is a sample input file for your contribution to a multi-
 % author book to be published by Springer Verlag.  % author book to be published by Springer Verlag.
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 \usepackage{epsfig}  \usepackage{epsfig}
 \def\cont{{\rm cont}}  \def\cont{{\rm cont}}
 \def\GCD{{\rm GCD}}  \def\GCD{{\rm GCD}}
   \def\Q{{\bf Q}}
 %  %
 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%  %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
   
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 % allows abbreviation of title, if the full title is too long  % allows abbreviation of title, if the full title is too long
 % to fit in the running head  % to fit in the running head
 %  %
 \author{Masayuki Noro\inst{1}}  \author{Masayuki Noro}
 %  %
 %\authorrunning{Masayuki Noro}  %\authorrunning{Masayuki Noro}
 % if there are more than two authors,  % if there are more than two authors,
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 \maketitle              % typesets the title of the contribution  \maketitle              % typesets the title of the contribution
   
 \begin{abstract}  %\begin{abstract}
 OpenXM \cite{OPENXM} is an infrastructure for exchanging mathematical  %Risa/Asir is software for polynomial computation. It has been
 data.  It defines a client-server architecture for parallel and  %developed for testing experimental polynomial algorithms, and now it
 distributed computation.  Risa/Asir is software for polynomial  %acts also as a main component in the OpenXM package \cite{noro:OPENXM}.
 computation. It has been developed for testing new algorithms, and now  %OpenXM is an infrastructure for exchanging mathematical
 it acts as both a client and a server in the OpenXM package. In this  %data.  It defines a client-server architecture for parallel and
 article we present an overview of Risa/Asir and review several  %distributed computation. In this article we present an overview of
 techniques for improving performances of Groebner basis computation.  %Risa/Asir and review several techniques for improving performances of
 We also show Risa/Asir's OpenXM interfaces and their usages by  %Groebner basis computation over {\bf Q}. We also show Risa/Asir's
 examples.  %OpenXM interfaces and their usages.
 \end{abstract}  %\end{abstract}
   
 \section{A computer algebra system Risa/Asir}  \section{Introduction}
   
 \subsection{What is Risa/Asir?}  %Risa/Asir $B$O(B, $B?t(B, $BB?9`<0$J$I$KBP$9$k1i;;$r<BAu$9$k(B engine,
   %$B%f!<%68@8l$r<BAu$9$k(B parser and interpreter $B$*$h$S(B,
   %$BB>$N(B application $B$H$N(B interaction $B$N$?$a$N(B OpenXM interface $B$+$i$J$k(B
   %computer algebra system $B$G$"$k(B.
   Risa/Asir is a computer algebra system which consists of an engine for
   operations on numbers and polynomials, a parser and an interpreter for
   the user language, and a communication interface called OpenXM API for
   interaction with other applications.
   %engine $B$G$O(B, $B?t(B, $BB?9`<0$J$I$N(B arithmetics $B$*$h$S(B, $BB?9`<0(B
   %GCD, $B0x?tJ,2r(B, $B%0%l%V%J4pDl7W;;$,<BAu$5$l$F$$$k(B. $B$3$l$i$OAH$_9~$_4X?t(B
   %$B$H$7$F%f!<%68@8l$+$i8F$S=P$5$l$k(B.
   The engine implements fundamental arithmetics on numbers and polynomials,
   polynomial GCD, polynomial factorizations and Groebner basis computations,
   etc. These can be called from the user language as builtin functions.
   %Risa/Asir $B$N%f!<%68@8l$O(B C $B8@8l(B like $B$JJ8K!$r$b$A(B, $BJQ?t$N7?@k8@$,(B
   %$B$J$$(B, $B%j%9%H=hM}$*$h$S<+F0(B garbage collection $B$D$-$N%$%s%?%W%j%?(B
   %$B8@8l$G$"$k(B. $B%f!<%68@8l%W%m%0%i%`$O(B parser $B$K$h$jCf4V8@8l$K(B
   %$BJQ49$5$l(B, interpreter $B$K$h$j2r<a<B9T$5$l$k(B. interpreter $B$K$O(B
   %gdb $BIw$N(B debugger $B$,AH$_9~$^$l$F$$$k(B.
   The user language has C-like syntax, without type declarations
   of variables, with list processing and with automatic garbage collection.
   The interpreter is equipped with a {\tt gdb}-like debugger.
   %$B$3$l$i$N5!G=$O(B OpenXM interface $B$rDL$7$FB>$N(B application $B$+$i$b;HMQ2D(B
   %$BG=$G$"$k(B. OpenXM \cite{noro:RFC100} $B$O?t3X%=%U%H%&%'%"$N(B client-server
   %$B7?$NAj8_8F$S=P$7$N$?$a$N(B $B%W%m%H%3%k$G$"$k(B.
   These functions can be called from other applications via OpenXM API.
   OpenXM \cite{noro:RFC100} is a protocol for client-server
   communications between mathematical software.  We are distributing
   OpenXM package \cite{noro:OPENXM}, which is a collection of various
   clients and servers comlient to the OpenXM protocol specification.
   
 Risa/Asir \cite{RISA} is software mainly for polynomial  %Risa/Asir $B$OB?9`<00x?tJ,2r(B, $B%,%m%"727W;;(B \cite{noro:ANY}, $B%0%l%V%J4pDl(B
 computation. Its major functions are polynomial factorization and  %$B7W;;(B \cite{noro:NM,noro:NY}, $B=`AG%$%G%"%kJ,2r(B \cite{noro:SY}, $B0E9f(B
 Groebner basis computation, whose core parts are implemented as  %\cite{noro:IKNY} $B$K$*$1$k<B83E*%"%k%4%j%:%`(B $B$r%F%9%H$9$k$?$a$N%W%i%C%H(B
 built-in functions.  Some higher algorithms such as primary ideal  %$B%U%)!<%`$H$7$F3+H/$5$l$F$-$?(B. $B$^$?(B, OpenXM API $B$rMQ$$$F(B parallel
 decomposition or Galois group computation are built on them by the  %distributed computation $B$N<B83$K$bMQ$$$i$l$F$$$k(B.  $B:,44$r$J$9$N$OB?9`(B
 user language called Asir language. Asir language can be regarded as C  %$B<00x?tJ,2r$*$h$S%0%l%V%J4pDl7W;;$G$"$k(B.  $BK\9F$G$O(B, $BFC$K(B, $B%0%l%V%J4pDl(B
 language without type declaration of variables, with list processing,  %$B7W;;$K4X$7$F(B, $B$=$N4pK\$*$h$S(B {\bf Q} $B>e$G$N7W;;$N:$Fq$r9nI~$9$k$?$a$N(B
 and with automatic garbage collection. A built-in {\tt gdb}-like user  %$B$5$^$6$^$J9)IW$*$h$S$=$N8z2L$K$D$$$F=R$Y$k(B.  $B$^$?(B, Risa/Asir $B$O(B OpenXM
 language debugger is available. It is open source and the source code  %package $B$K$*$1$k<gMW$J(B component $B$N0l$D$G$"$k(B. Risa/Asir $B$r(B client $B$"(B
 and binaries are available via {\tt ftp} or {\tt CVS}.  Risa/Asir is  %$B$k$$$O(B server $B$H$7$FMQ$$$kJ,;6JBNs7W;;$K$D$$$F(B, $B<BNc$r$b$H$K2r@b$9$k(B.
 not only a standalone computer algebra system but also a main  Risa/Asir has been used for implementing and testing experimental
 component in OpenXM package \cite{OPENXM}, which is a collection of  algorithms such as polynomial factorizations, splitting field and
 various software compliant to OpenXM protocol specification.  OpenXM  Galois group computations \cite{noro:ANY}, Groebner basis computations
 is an infrastructure for exchanging mathematical data and Risa/Asir  \cite{noro:REPL,noro:NOYO} primary ideal decomposition \cite{noro:SY}
 has three kind of OpenXM interfaces : client interfaces, an OpenXM  and cryptgraphy \cite{noro:IKNY}.  In these applications the important
 server, and a subroutine library. Our goals of developing Risa/Asir  funtions are polynomial factorization and Groebner basis
 are as follows:  computation. We focus on Groebner basis computation and we review its
   fundamentals and vaious efforts for improving efficiency especially
   over $\Q$. Risa/Asir is also a main component of OpenXM package and
   it has been used for parallel distributed computation with OpenXM API.
   We will explain how one can execute parallel distributed computation
   by using Risa/Asir as a client or a server.
   
 \begin{enumerate}  \section{Efficient Groebner basis computation over {\bf Q}}
 \item Providing a platform for testing new algorithms  \label{tab:gbtech}
   
 Risa/Asir has been a platform for testing experimental algorithms in  In this section we review several practical techniques to improve
 polynomial factorization, computation related to Groebner basis,  Groebner basis computation over {\bf Q}, which are easily
 cryptography and quantifier elimination. As to Groebner basis, we have  implemented but may not be well known.
 been mainly interested in problems over {\bf Q} and we tried applying  We use the following notations.
 various modular techniques to overcome difficulties caused by huge  \begin{description}
 intermediate coefficients. We have had several results and they have  \item $<$ : a term order in the set of monomials. It is a total order such that
 been implemented in Risa/Asir.  
   
 \item General purpose open system   $\forall t, 1 \le t$ and $\forall s, t, u, s<t \Rightarrow us<ut$.
   \item $Id(F)$ : a polynomial ideal generated by a polynomial set $F$.
   \item $HT(f)$ : the head term of a polynomial with respect to a term order.
   \item $HC(f)$ : the head coefficient of a polynomial with respect to a term order.
   \item $T(f)$ : terms with non zero coefficients in $f$.
   \item $Spoly(f,g)$ : the S-polynomial of $\{f,g\}$
   
 We need a lot of functions to make Risa/Asir a general purpose  $Spoly(f,g) = T_{f,g}/HT(f)\cdot f/HC(f) -T_{f,g}/HT(g)\cdot g/HC(g)$, where
 computer algebra system.  In recent years we can obtain various high  $T_{f,g} = LCM(HT(f),HT(g))$.
 performance applications or libraries as free software. We wrapped  \item $\phi_p$ : the canonical projection from ${\bf Z}$ onto $GF(p)$.
 such software as OpenXM servers and we started to release a collection  \end{description}
 of such servers and clients as the OpenXM package in 1997. Risa/Asir  
 is now a main client in the package.  
   
 \item Environment for parallel and distributed computation  \subsection{Groebner basis computation and its improvements}
   
 The origin of OpenXM is a protocol for doing parallel distributed  A Groebner basis of an ideal $Id(F)$ can be computed by the Buchberger
 computations by connecting multiple Risa/Asir's over TCP/IP. OpenXM is  algorithm. The key oeration in the algorithm is the following
 also designed to provide an environment efficient parallel distributed  division by a polynomial set.
 computation. Currently only client-server communication is available,  \begin{tabbing}
 but we are preparing a specification OpenXM-RFC 102 allowing  while \= $\exists g \in G$, $\exists t \in T(f)$ such that $HT(g)|t$ do\\
 client-client communication, which will enable us to execute wider        \> $f \leftarrow f - t/HT(g) \cdot c/HC(g) \cdot g$, \quad
 range of parallel algorithms efficiently.        where $c$ is the coeffcient of $t$ in $f$
 \end{enumerate}  \end{tabbing}
   This division terminates for any term order.
   With this division, we can show the most primitive version of the
   Buchberger algorithm.
   \begin{tabbing}
   Input : a finite polynomial set $F$\\
   Output : a Groebner basis $G$ of $Id(F)$ with respect to a term order $<$\\
   $G \leftarrow F$; \quad $D \leftarrow \{\{f,g\}| f, g \in G, f \neq g \}$\\
   while \= $D \neq \emptyset$ do \\
         \> $\{f,g\} \leftarrow$ an element of $D$; \quad
             $D \leftarrow D \setminus \{P\}$\\
         \> $R \leftarrow$ a remainder of $Spoly(f,g)$ on division by $G$\\
         \> if $R \neq 0$ then $D \leftarrow D \cup \{\{f,R\}| f \in G\}$; \quad
            $G \leftarrow G \cup \{R\}$\\
   end do\\
   return G
   \end{tabbing}
   Though this algorithm gives a Groebner basis of $Id(F)$,
   it is not practical at all. We need lots of techniques to make
   it practical. The following are major improvements:
   \begin{itemize}
   \item Useless pair detection
   
 \subsection{Groebner basis and the related computation}  We don't have to process all the pairs in $D$ and several useful
   criteria for detecting useless pairs were proposed (cf. \cite{noro:BW}).
   
 Currently Risa/Asir can only deal with polynomial ring. Operations on  \item Selection strategy
 modules over polynomial rings have not yet supported.  However, both  
 commutative polynomial rings and Weyl algebra are supported and one  
 can compute Groebner basis in both rings over the rationals, fields of  
 rational functions and finite fields. In the early stage of our  
 development, our effort was mainly devoted to improve the efficiency  
 of computation over the rationals. Our main tool is modular  
 computation. For Buchberger algorithm we adopted the trace lifting  
 algorithm by Traverso \cite{TRAV} and elaborated it by applying our  
 theory on a correspondence between Groebner basis and its modular  
 image \cite{NOYO}. We also combine the trace lifting with  
 homogenization to stabilize selection strategies, which enables us to  
 compute several examples efficiently which is hard to compute without  
 such a combination.  Our modular method can be applied to the change  
 of ordering algorithm and rational univariate representation.  We also  
 made a test implementation of $F_4$ algorithm \cite{F4}. Later we will  
 show timing data on Groebner basis computation.  
   
 \subsection{Polynomial factorization}  The selection of $\{f,g\}$ greatly affects the subsequent computation.
   The typical strategies are the normal startegy \cite{noro:BUCH}
   and the sugar strategy \cite{noro:SUGAR}.
   The latter was proposed for efficient computation under a non
   degree-compatible order.
   
 Here we briefly review functions on polynomial factorization.  For  \item Modular methods
 univariate factorization over {\bf Q}, the classical  
 Berlekamp-Zassenhaus algorithm is implemented.  Efficient algorithms  
 recently proposed have not yet implemented.  For Univariate factorizer  
 over algebraic number fields, Trager's algorithm \cite{TRAGER} is  
 implemented with some modifications.  Its major applications are  
 splitting field and Galois group computation of polynomials over the  
 rationals \cite{ANY}. For such purpose a tower of simple extensions  
 are suitable because factors represented over a simple extension often  
 have huge coefficients.  For univariate factorization over finite  
 fields, equal degree factorization and Cantor-Zassenhaus algorithm are  
 implemented. We can use various representation of finite fields:  
 $GF(p)$ with a machine integer prime $p$, $GF(p)$ and $GF(p^n)$ with  
 any odd prime $p$, $GF(2^n)$ with a bit-array representation of  
 polynomials over $GF(2)$ and $GF(p^n)$ with small $p^n$ represented by  
 a primitive root.  For multivariate factorization over the rationals,  
 the classical EZ(Extended Zassenhaus) type algorithm is implemented.  
   
 \subsection{Other functions}  Even if we apply several criteria, it is difficult to detect all pairs
 By applying Groebner basis computation and polynomial factorization,  whose S-polynomials are reduced to zero, and the cost to process them
 we have implemented several higher level algorithms. A typical  often occupies a major part in the whole computation. The trace
 application is primary ideal decomposition of polynomial ideals over  algorithms \cite{noro:TRAV} were proposed to reduce such cost. This
 {\bf Q}, which needs both functions.  Shimoyama-Yokoyama algorithm  will be explained in more detail in Section \ref{sec:gbhomo}.
 \cite{SY} for primary decomposition is written in the user language.  
 Splitting field and Galois group computation \cite{ANY} are closely  
 related and are also important applications of polynomial  
 factorization.  
   
 \section{Techniques for efficient Groebner basis computation over {\bf Q}}  \item Change of ordering
 \label{gbtech}  
   
 In this section we review several practical techniques to improve  For elimination, we need a Groebner basis with respect to a non
 Groebner basis computation over {\bf Q}, which are easily  degree-compatible order, but it is often hard to compute it by the
 implemented but may not be well known.  Buchberger algorithm. If the ideal is zero dimensional, we can apply a
 We use the following notations.  change of ordering algorithm \cite{noro:FGLM} for a Groebner basis
 \begin{description}  with respect to any order and we can obtain a Groebner basis with
 \item $Id(F)$ : a polynomial ideal generated by $F$  respect to a desired order.
 \item $\phi_p$ : the canonical projection from ${\bf Z}$ onto $GF(p)$  
 \item $HT(f)$ : the head term of a polynomial with respect to a term order  
 \item $HC(f)$ : the head coefficient of a polynomial with respect to a term order  
 \end{description}  
   
   \end{itemize}
   By implementing these techniques, one can obtain Groebner bases for
   wider range of inputs. Nevertheless there are still intractable
   problems with these classical tools. In the subsequent sections
   we show several methods for further improvements.
   
 \subsection{Combination of homogenization and trace lifting}  \subsection{Combination of homogenization and trace lifting}
   \label{sec:gbhomo}
   
 Traverso's trace lifting algorithm can be  The trace lifting algorithm can be
 formulated in an abstract form as follows \cite{FPARA}.  formulated in an abstract form as follows (c.f. \cite{noro:FPARA}).
 \begin{tabbing}  \begin{tabbing}
 Input : a finite subset $F \subset {\bf Z}[X]$\\  Input : a finite subset $F \subset {\bf Z}[X]$\\
 Output : a Groebner basis $G$ of $Id(F)$ with respect to a term order $<$\\  Output : a Groebner basis $G$ of $Id(F)$ with respect to a term order $<$\\
Line 252  The input is homogenized to suppress intermediate coef
Line 281  The input is homogenized to suppress intermediate coef
 of intermediate basis elements.  The number of zero normal forms may  of intermediate basis elements.  The number of zero normal forms may
 increase by the homogenization, but they are detected over  increase by the homogenization, but they are detected over
 $GF(p)$. Finally, by dehomogenizing the candidate we can expect that  $GF(p)$. Finally, by dehomogenizing the candidate we can expect that
 lots of redundant elements can be removed.  We will show later that this is  lots of redundant elements can be removed.
 surely efficient for some input polynomial sets.  
   
 \subsection{Minimal polynomial computation by modular method}  \subsection{Minimal polynomial computation by modular method}
   
 Let $I$ be a zero-dimensional ideal in $R={\bf Q}[x_1,\ldots,x_n]$.  Let $I$ be a zero-dimensional ideal in $R={\bf Q}[x_1,\ldots,x_n]$.
 Then the minimal polynomial $m(x_i)$ of a variable $x_i$ in $R/I$ can  Then the minimal polynomial $m(x_i)$ of a variable $x_i$ in $R/I$ can
 be computed by a partial FGLM \cite{FGLM}, but it often takes long  be computed by a partial FGLM \cite{noro:FGLM}, but it often takes long
 time if one searches $m(x_i)$ incrementally over {\bf Q}.  In this  time if one searches $m(x_i)$ incrementally over {\bf Q}.  In this
 case we can apply a simple modular method to compute the minimal  case we can apply a simple modular method to compute the minimal
 polynomial.  polynomial.
 \begin{tabbing}  \begin{tabbing}
 Input : a Groebner basis $G$ of $I$, a variable $x_i$\\  Input : a Groebner basis $G$ of $I$, a variable $x_i$\\
 Output : the minimal polynomial of $x$ in $R/I$\\  Output : the minimal polynomial of $x_i$ in $R/I$\\
 do \= \\  do \= \\
 \> $p \leftarrow$ a new prime such that $p \not{|} HC(g)$ for all $g \in G$\\  \> $p \leftarrow$ a new prime such that $p \not{|} HC(g)$ for all $g \in G$\\
 \> $m_p \leftarrow$ the minimal polynomial of $x_i$ in $GF(p)[x_1,\ldots,x_n]/Id(\phi_p(G))$\\  \> $m_p \leftarrow$ the minimal polynomial of $x_i$ in $GF(p)[x_1,\ldots,x_n]/Id(\phi_p(G))$\\
Line 276  In this algorithm, $m_p$ can be obtained by a partial 
Line 305  In this algorithm, $m_p$ can be obtained by a partial 
 $GF(p)$ because $\phi_p(G)$ is a Groebner basis. Once we know the  $GF(p)$ because $\phi_p(G)$ is a Groebner basis. Once we know the
 candidate of $\deg(m(x_i))$, $m(x_i)$ can be determined by solving a  candidate of $\deg(m(x_i))$, $m(x_i)$ can be determined by solving a
 system of linear equations via the method of indeterminate  system of linear equations via the method of indeterminate
 coefficient. Arguments on \cite{NOYO} ensures that $m(x_i)$ is what we  coefficient, and it can be solved efficiently by $p$-adic method.
 want if it exists. Note that the full FGLM can also be computed by the  Arguments on \cite{noro:NOYO} ensures that $m(x_i)$ is what we want if it
 same method.  exists. Note that the full FGLM can also be computed by the same
   method.
   
 \subsection{Integer contents reduction}  \subsection{Integer contents reduction}
   \label{sec:gbcont}
   
 In some cases the cost to remove integer contents during normal form  In some cases the cost to remove integer contents during normal form
 computations is dominant. We can remove the content of an integral  computations is dominant. We can remove the content of an integral
 polynomial $f$ efficiently by the following method \cite{REPL}.  polynomial $f$ efficiently by the following method \cite{noro:REPL}.
 \begin{tabbing}  \begin{tabbing}
 Input : an integral polynomial $f$\\  Input : an integral polynomial $f$\\
 Output : a pair $(\cont(f),f/\cont(f))$\\  Output : a pair $(\cont(f),f/\cont(f))$\\
 $g_0 \leftarrow$ an estimate of $\cont(f)$ such that $\cont(f)|g_0$\\  $g_0 \leftarrow$ an estimate of $\cont(f)$ such that $\cont(f)|g_0$\\
 Write $f$ as $f = g_0q+r$ by division with remainder for each coefficient\\  Write $f$ as $f = g_0q+r$ by division with remainder by $g_0$ for each coefficient\\
 If $r = 0$ then return $(g_0,q)$\\  If $r = 0$ then return $(g_0,q)$\\
 else return $(g,g_0/g \cdot q + r/g)$, where $g = \GCD(g_0,\cont(r))$  else return $(g,g_0/g \cdot q + r/g)$, where $g = \GCD(g_0,\cont(r))$
 \end{tabbing}  \end{tabbing}
 By separating the set of coefficients of $f$ into two subsets and by  By separating the set of coefficients of $f$ into two subsets and by
 computing GCD of sums in the elements in the subsets we can estimate  computing GCD of sums of the elements in each subset we can estimate
 $g_0$ with high accuracy. Then other components are easily computed.  $g_0$ with high accuracy. Then other components are easily computed.
   
 %\subsection{Demand loading of reducers}  %\subsection{Demand loading of reducers}
Line 306  $g_0$ with high accuracy. Then other components are ea
Line 337  $g_0$ with high accuracy. Then other components are ea
 %cost for reading basis elements from disk is often negligible because  %cost for reading basis elements from disk is often negligible because
 %of the cost for coefficient computations.  %of the cost for coefficient computations.
   
 \section{Risa/Asir performance}  \subsection{Performances of Groebner basis computation}
   
 We show timing data on Risa/Asir for Groebner basis computation  We show timing data on Risa/Asir for Groebner basis computation.  The
 and polynomial factorization. The measurements were made on  measurements were made on a PC with PentiumIII 1GHz and 1Gbyte of main
 a PC with PentiumIII 1GHz and 1Gbyte of main memory. Timings  memory. Timings are given in seconds. In the tables `---' means it was
 are given in seconds. In the tables `---' means it was not  not measured.  $C_n$ is the cyclic $n$ system and $K_n$ is the Katsura
 measured.  $n$ system, both are famous bench mark problems \cite{noro:BENCH}.  $McKay$
   \cite{noro:REPL} is a system whose Groebner basis is hard to compute over
   {\bf Q}.  In Risa/Asir we have a test implemention of $F_4$ algorithm
   \cite{noro:F4} and we also show its current performance.  The term order is
   graded reverse lexicographic order.
   
 \subsection{Groebner basis computation}  Table \ref{tab:gbmod} shows timing data for Groebner basis computation
   over $GF(32003)$.  $F_4$ implementation in Risa/Asir outperforms
   Buchberger algorithm implementation, but it is still several times
   slower than $F_4$ implementation in FGb \cite{noro:FGB}.
   
 Table \ref{gbmod} and Table \ref{gbq} show timing data for Groebner  Table \ref{tab:gbq} shows timing data for Groebner basis computation over
 basis computation over $GF(32003)$ and over {\bf Q} respectively.  $\Q$, where we compare the timing data under various configuration of
 $C_n$ is the cyclic $n$ system and $K_n$ is the Katsura $n$ system,  algorithms. {\bf TR}, {\bf Homo}, {\bf Cont} means trace lifting,
 both are famous bench mark problems \cite{BENCH}.  We also measured  homogenization and contents reduction respectively.
 the timing for $McKay$ system over {\bf Q} \cite{REPL}.  the term  \ref{tab:gbq} also shows timings of minimal polynomial
 order is graded reverse lexicographic order.  In the both tables, the  computation for zero-dimensional ideals.  Table \ref{tab:gbq} shows that
 first three rows are timings for the Buchberger algorithm, and the  it is difficult or practically impossible to compute Groebner bases of
 last two rows are timings for $F_4$ algorithm. As to the Buchberger  $C_7$, $C_8$ and $McKay$ without the methods described in Section
 algorithm over $GF(32003)$, Singular\cite{SINGULAR} shows the best  \ref{sec:gbhomo} and \ref{sec:gbcont}.
 performance among the three systems. $F_4$ implementation in Risa/Asir  Though $F_4$ implementation in Risa/Asir over {\bf Q} is still
 is faster than the Buchberger algorithm implementation in Singular,  experimental, the timing of $McKay$ is greatly reduced.
 but it is still several times slower than $F_4$ implementation in FGb  Fig. \ref{tab:f4vsbuch} explains why $F_4$ is efficient in this case.  The
 \cite{FGB}.  In Table \ref{gbq}, $C_7$ and $McKay$ can be computed by  figure shows that the Buchberger algorithm produces normal forms with
 the Buchberger algorithm with the methods described in Section  huge coefficients for S-polynomials after the 250-th one, which are
 \ref{gbtech}.  It is obvious that $F_4$ implementation in Risa/Asir  the computations in degree 16.  However, we know that the reduced
 over {\bf Q} is too immature. Nevertheless the timing of $McKay$ is  basis elements have much smaller coefficients after removing contents.
 greatly reduced.  Fig. \ref{f4vsbuch} explains why $F_4$ is efficient  As $F_4$ algorithm automatically produces the reduced ones, the degree
 in this case.  The figure shows that the Buchberger algorithm produces  16 computation is quite easy in $F_4$.
 normal forms with huge coefficients for S-polynomials after the 250-th  
 one, which are the computations in degree 16.  However, we know that  
 the reduced basis elements have much smaller coefficients after  
 removing contents.  As $F_4$ algorithm automatically produces the  
 reduced ones, the degree 16 computation is quite easy in $F_4$.  
   
 \begin{table}[hbtp]  \begin{table}[hbtp]
 \begin{center}  \begin{center}
 \begin{tabular}{|c||c|c|c|c|c|c|c|} \hline  \begin{tabular}{|c||c|c|c|c|c|c|c|} \hline
                 & $C_7$ & $C_8$ & $K_7$ & $K_8$ & $K_9$ & $K_{10}$ & $K_{11}$ \\ \hline                  & $C_7$ & $C_8$ & $K_7$ & $K_8$ & $K_9$ & $K_{10}$ & $K_{11}$ \\ \hline
 Asir $Buchberger$       & 31 & 1687  & 2.6  & 27 & 294  & 4309 & --- \\ \hline  Asir $Buchberger$       & 31 & 1687  & 2.6  & 27 & 294  & 4309 & --- \\ \hline
 Singular & 8.7 & 278 & 0.6 & 5.6 & 54 & 508 & 5510 \\ \hline  %Singular & 8.7 & 278 & 0.6 & 5.6 & 54 & 508 & 5510 \\ \hline
 CoCoA 4 & 241 & $>$ 5h & 3.8 & 35 & 402 &7021  & --- \\ \hline\hline  %CoCoA 4 & 241 & $>$ 5h & 3.8 & 35 & 402 &7021  & --- \\ \hline\hline
 Asir $F_4$      & 5.3 & 129 & 0.5  & 4.5 & 31  & 273 & 2641 \\ \hline  Asir $F_4$      & 5.3 & 129 & 0.5  & 4.5 & 31  & 273 & 2641 \\ \hline
 FGb(estimated)  & 0.9 & 23 & 0.1 & 0.8 & 6 & 51 & 366 \\ \hline  FGb(estimated)  & 0.9 & 23 & 0.1 & 0.8 & 6 & 51 & 366 \\ \hline
 \end{tabular}  \end{tabular}
 \end{center}  \end{center}
 \caption{Groebner basis computation over $GF(32003)$}  \caption{Groebner basis computation over $GF(32003)$}
 \label{gbmod}  \label{tab:gbmod}
 \end{table}  \end{table}
   
 \begin{table}[hbtp]  \begin{table}[hbtp]
 \begin{center}  \begin{center}
 \begin{tabular}{|c||c|c|c|c|c|c|} \hline  \begin{tabular}{|c||c|c|c|c|c|} \hline
                 & $C_7$ & $Homog. C_7$ & $C_8$ & $K_7$ & $K_8$ & $McKay$ \\ \hline                  & $C_7$ & $C_8$ & $K_7$ & $K_8$ & $McKay$ \\ \hline
 Asir $Buchberger$       & 389 & 594 & 54000 & 29 & 299 & 34950 \\ \hline  TR+Homo+Cont & 389 & 54000 & 29 & 299 & 34950 \\ \hline
 Singular & --- & 15247 & --- & 7.6 & 79 & $>$ 20h \\ \hline  TR+Homo & --- & --- & --- & --- & --- \\ \hline
 CoCoA 4 & --- & 13227 & --- & 57 & 709 & --- \\ \hline\hline  TR & --- & --- & --- & --- & --- \\ \hline \hline
 Asir $F_4$      &  989 & 456 & --- & 90 & 991 & 4939 \\ \hline  Minipoly & --- & --- & --- & --- & N/A \\ \hline
 FGb(estimated)  & 8 &11 & 288 &  0.6 & 5 & 10 \\ \hline  %Singular & --- & 15247 & --- & 7.6 & 79 & $>$ 20h \\ \hline
   %CoCoA 4 & --- & 13227 & --- & 57 & 709 & --- \\ \hline\hline
   %Asir $F_4$     &  989 & 456 & --- & 90 & 991 & 4939 \\ \hline
   %FGb(estimated) & 8 &11 & 288 &  0.6 & 5 & 10 \\ \hline
 \end{tabular}  \end{tabular}
 \end{center}  \end{center}
 \caption{Groebner basis computation over {\bf Q}}  \caption{Groebner basis and minimal polynomial computation over {\bf Q}}
 \label{gbq}  \label{tab:gbq}
 \end{table}  \end{table}
   
 \begin{figure}[hbtp]  \begin{figure}[hbtp]
Line 377  FGb(estimated) & 8 &11 & 288 &  0.6 & 5 & 10 \\ \hline
Line 412  FGb(estimated) & 8 &11 & 288 &  0.6 & 5 & 10 \\ \hline
 \epsffile{blen.ps}  \epsffile{blen.ps}
 \end{center}  \end{center}
 \caption{Maximal coefficient bit length of intermediate bases}  \caption{Maximal coefficient bit length of intermediate bases}
 \label{f4vsbuch}  \label{tab:f4vsbuch}
 \end{figure}  \end{figure}
   
 Table \ref{minipoly} shows timing data for the minimal polynomial  %Table \ref{minipoly} shows timing data for the minimal polynomial
 computation over {\bf Q}. Singular provides a function {\tt finduni}  %computations of all variables over {\bf Q} by the modular method.
 for computing the minimal polynomial in each variable in ${\bf  %\begin{table}[hbtp]
 Q}[x_1,\ldots,x_n]/I$ for zero dimensional ideal $I$. The modular  %\begin{center}
 method used in Asir is efficient when the resulting minimal  %\begin{tabular}{|c||c|c|c|c|c|} \hline
 polynomials have large coefficients and we can verify the fact from Table  %               & $C_6$ & $C_7$ & $K_6$ & $K_7$ & $K_8$ \\ \hline
 \ref{minipoly}.  %Singular & 0.9 & 846 & 307 & 60880 & ---  \\ \hline
 \begin{table}[hbtp]  %Asir & 1.5 & 182 & 12 & 164 & 3420  \\ \hline
 \begin{center}  %\end{tabular}
 \begin{tabular}{|c||c|c|c|c|c|} \hline  %\end{center}
                 & $C_6$ & $C_7$ & $K_6$ & $K_7$ & $K_8$ \\ \hline  %\caption{Minimal polynomial computation}
 Singular & 0.9 & 846 & 307 & 60880 & ---  \\ \hline  %\label{minipoly}
 Asir & 1.5 & 182 & 12 & 164 & 3420  \\ \hline  %\end{table}
 \end{tabular}  
 \end{center}  
 \caption{Minimal polynomial computation}  
 \label{minipoly}  
 \end{table}  
   
 \subsection{Polynomial factorization}  %\subsection{Polynomial factorization}
   %
 %Table \ref{unifac} shows timing data for univariate factorization over  %Table \ref{unifac} shows timing data for univariate factorization over
 %{\bf Q}.  $N_{i,j}$ is an irreducible polynomial which are hard to  %{\bf Q}.  $N_{i,j}$ is an irreducible polynomial which are hard to
 %factor by the classical algorithm. $N_{i,j}$ is a norm of a polynomial  %factor by the classical algorithm. $N_{i,j}$ is a norm of a polynomial
 %and $\deg(N_i) = i$ with $j$ modular factors. Risa/Asir is  %and $\deg(N_i) = i$ with $j$ modular factors. Risa/Asir is
 %disadvantageous in factoring polynomials of this type because the  %disadvantageous in factoring polynomials of this type because the
 %algorithm used in Risa/Asir has exponential complexity. In contrast,  %algorithm used in Risa/Asir has exponential complexity. In contrast,
 %CoCoA 4\cite{COCOA} and NTL-5.2\cite{NTL} show nice performances  %CoCoA 4\cite{noro:COCOA} and NTL-5.2\cite{noro:NTL} show nice performances
 %because they implement recently developed algorithms.  %because they implement recently developed algorithms.
 %  %
 %\begin{table}[hbtp]  %\begin{table}[hbtp]
Line 424  Asir & 1.5 & 182 & 12 & 164 & 3420  \\ \hline
Line 454  Asir & 1.5 & 182 & 12 & 164 & 3420  \\ \hline
 %\caption{Univariate factorization over {\bf Q}}  %\caption{Univariate factorization over {\bf Q}}
 %\label{unifac}  %\label{unifac}
 %\end{table}  %\end{table}
   %
 Table \ref{multifac} shows timing data for multivariate  %Table \ref{multifac} shows timing data for multivariate factorization
 factorization over {\bf Q}.  %over {\bf Q}.  $W_{i,j,k}$ is a product of three multivariate
 $W_{i,j,k}$ is a product of three multivariate polynomials  %polynomials $Wang[i]$, $Wang[j]$, $Wang[k]$ given in a data file {\tt
 $Wang[i]$, $Wang[j]$, $Wang[k]$ given in a data file  %fctrdata} in Asir library directory. It is also included in Risa/Asir
 {\tt fctrdata} in Asir library directory. It is also included  %source tree and located in {\tt asir2000/lib}.  These examples have
 in Risa/Asir source tree and located in {\tt asir2000/lib}.  %leading coefficients of large degree which vanish at 0 which tend to
 For these examples Risa/Asir shows reasonable performance  %cause so-called the leading coefficient problem the bad zero
 compared with other famous systems.  %problem. Risa/Asir's implementation carefully treats such cases and it
 \begin{table}[hbtp]  %shows reasonable performance compared with other famous systems.
 \begin{center}  %\begin{table}[hbtp]
 \begin{tabular}{|c||c|c|c|c|c|} \hline  %\begin{center}
         & $W_{1,2,3}$ & $W_{4,5,6}$ & $W_{7,8,9}$ & $W_{10,11,12}$ & $W_{13,14,15}$ \\ \hline  %\begin{tabular}{|c||c|c|c|c|c|} \hline
 variables & 3 & 5 & 5 & 5 & 4 \\ \hline  %       & $W_{1,2,3}$ & $W_{4,5,6}$ & $W_{7,8,9}$ & $W_{10,11,12}$ & $W_{13,14,15}$ \\ \hline
 monomials & 905 & 41369 & 51940 & 30988 & 3344 \\ \hline\hline  %variables & 3 & 5 & 5 & 5 & 4 \\ \hline
 Asir    & 0.2 & 4.7 & 14 & 17 & 0.4 \\ \hline  %monomials & 905 & 41369 & 51940 & 30988 & 3344 \\ \hline\hline
   %Asir   & 0.2 & 4.7 & 14 & 17 & 0.4 \\ \hline
 %Singular& $>$15min     & ---   & ---& ---& ---\\ \hline  %Singular& $>$15min     & ---   & ---& ---& ---\\ \hline
 CoCoA 4 & 5.2 & $>$15min        & $>$15min & $>$15min & 117 \\ \hline\hline  %CoCoA 4 & 5.2 & $>$15min       & $>$15min & $>$15min & 117 \\ \hline\hline
 Mathematica 4& 0.2      & 16    & 23 & 36 & 1.1 \\ \hline  %Mathematica 4& 0.2     & 16    & 23 & 36 & 1.1 \\ \hline
 Maple 7& 0.5    & 18    & 967  & 48 & 1.3 \\ \hline  %Maple 7& 0.5   & 18    & 967  & 48 & 1.3 \\ \hline
 \end{tabular}  %\end{tabular}
 \end{center}  %\end{center}
 \caption{Multivariate factorization over {\bf Q}}  %\caption{Multivariate factorization over {\bf Q}}
 \label{multifac}  %\label{multifac}
 \end{table}  %\end{table}
 As to univariate factorization over {\bf Q},  %As to univariate factorization over {\bf Q}, the univariate factorizer
 the univariate factorizer implements only classical  %implements old algorithms and its behavior is what one expects,
 algorithms and its behavior is what one expects,  %that is, it shows average performance in cases where there are little
 that is, it shows average performance in cases  %extraneous factors, but shows poor performance for hard to factor
 where there are little extraneous factors, but  %polynomials with many extraneous factors.
 shows poor performance for hard to factor polynomials.  
   
 \section{OpenXM and Risa/Asir OpenXM interfaces}  \section{OpenXM and Risa/Asir OpenXM interfaces}
   
Line 462  shows poor performance for hard to factor polynomials.
Line 492  shows poor performance for hard to factor polynomials.
   
 OpenXM stands for Open message eXchange protocol for Mathematics.  OpenXM stands for Open message eXchange protocol for Mathematics.
 From the viewpoint of protocol design, it can be regarded as a child  From the viewpoint of protocol design, it can be regarded as a child
 of OpenMath \cite{OPENMATH}.  However our approach is somewhat  of OpenMath \cite{noro:OPENMATH}.  However our approach is somewhat
 different. Our main purpose is to provide an environment for  different. Our main purpose is to provide an environment for
 integrating {\it existing} mathematical software systems. OpenXM  integrating {\it existing} mathematical software systems. OpenXM
 RFC-100 \cite{RFC100} defines a client-server architecture.  Under  RFC-100 \cite{noro:RFC100} defines a client-server architecture.  Under
 this specification, a client invokes an OpenXM ({\it OX}) server.  The  this specification, a client invokes an OpenXM ({\it OX}) server.  The
 client can send OpenXM ({\it OX}) messages to the server.  OX messages  client can send OpenXM ({\it OX}) messages to the server.  OX messages
 consist of {\it data} and {\it command}. Data is encoded according to  consist of {\it data} and {\it command}. Data is encoded according to
Line 482  hybrid server.
Line 512  hybrid server.
 OpenXM RFC-100 also defines methods for session management. In particular  OpenXM RFC-100 also defines methods for session management. In particular
 the method to reset a server is carefully designed and it provides  the method to reset a server is carefully designed and it provides
 a robust way of using servers both for interactive and non-interactive  a robust way of using servers both for interactive and non-interactive
 purposes.  purposes.
   
 \subsection{OpenXM client interface of {\tt asir}}  \subsection{OpenXM API in Risa/Asir user language}
   
 Risa/Asir is a main client in OpenXM package.  The application {\tt  Risa/Asir is a main client in OpenXM package.  The application {\tt
 asir} can access to OpenXM servers via several built-in interface  asir} can access to OpenXM servers via several built-in interface
Line 504  We show a typical OpenXM session.
Line 534  We show a typical OpenXM session.
 [[1,1],[x^4+y*x^3+y^2*x^2+y^3*x+y^4,1],  [[1,1],[x^4+y*x^3+y^2*x^2+y^3*x+y^4,1],
 [x^4-y*x^3+y^2*x^2-y^3*x+y^4,1],[x-y,1],[x+y,1]]  [x^4-y*x^3+y^2*x^2-y^3*x+y^4,1],[x-y,1],[x+y,1]]
 [5] ox_cmo_rpc(P,"fctr,",x^10000-2^10000*y^10000);  [5] ox_cmo_rpc(P,"fctr,",x^10000-2^10000*y^10000);
 /* call factorizer; an utility function */  /* call factorizer; a utility function */
 0  0
 [6] ox_reset(P); /* reset the computation in the server */  [6] ox_reset(P); /* reset the computation in the server */
 1  1
Line 516  We show a typical OpenXM session.
Line 546  We show a typical OpenXM session.
   
 An application {\tt ox\_asir} is a wrapper of {\tt asir} and provides  An application {\tt ox\_asir} is a wrapper of {\tt asir} and provides
 all the functions of {\tt asir} to OpenXM clients. It completely  all the functions of {\tt asir} to OpenXM clients. It completely
 implements the OpenXM reset protocol and also provides remote  implements the OpenXM reset protocol and also allows remote
 debugging of user programs running on the server. As an example we  debugging of user programs running on the server. As an example we
 show a program for checking whether a polynomial set is a Groebner  show a program for checking whether a polynomial set is a Groebner
 basis or not. A client executes {\tt gbcheck()} and servers execute  basis or not. A client executes {\tt gbcheck()} and servers execute
 {\tt sp\_nf\_for\_gbcheck()} which is a simple normal form computation  {\tt sp\_nf\_for\_gbcheck()} which is a simple normal form computation
 of a S-polynomial. First of all the client collects all critical pairs  of an S-polynomial. First of all the client collects all critical pairs
 necessary for the check. Then the client requests normal form  necessary for the check. Then the client requests normal form
 computations to idling servers. If there are no idling servers the  computations to idling servers. If there are no idling servers the
 clients waits for some servers to return results by {\tt  clients waits for some servers to return results by {\tt
Line 563  def gbcheck(B,V,O,Procs) {
Line 593  def gbcheck(B,V,O,Procs) {
 }  }
 \end{verbatim}  \end{verbatim}
   
 \subsection{Asir OpenXM library {\tt libasir.a}}  \subsection{OpenXM C language API in {\tt libasir.a}}
   
 Asir OpenXM library {\tt libasir.a} includes functions simulating the  Risa/Asir subroutine library {\tt libasir.a} contains functions
 stack machine commands supported in {\tt ox\_asir}.  By linking {\tt  simulating the stack machine commands supported in {\tt ox\_asir}.  By
 libasir.a} an application can use the same functions as in {\tt  linking {\tt libasir.a} an application can use the same functions as
 ox\_asir} without accessing to {\tt ox\_asir} via TCP/IP. There is  in {\tt ox\_asir} without accessing to {\tt ox\_asir} via
 also a stack, which can be manipulated by library functions. In  TCP/IP. There is also a stack, which can be manipulated by the library
 order to make full use of this interface, one has to prepare  functions. In order to make full use of this interface, one has to
 conversion functions between CMO and the data structures proper to the  prepare conversion functions between CMO and the data structures
 application.  A function {\tt asir\_ox\_pop\_string()} is provided to  proper to the application itself.  A function {\tt
 convert CMO to a human readable form, which may be sufficient for a  asir\_ox\_pop\_string()} is provided to convert CMO to a human
 simple use of this interface.  readable form, which may be sufficient for a simple use of this
   interface.
   
 \section{Concluding remarks}  \section{Concluding remarks}
 We have shown the current status of Risa/Asir and its OpenXM  %We have shown the current status of Risa/Asir and its OpenXM
 interfaces. As a result of our policy of development, it is true that  %interfaces. As a result of our policy of development, it is true that
 Risa/Asir does not have abundant functions. However it is a completely  %Risa/Asir does not have abundant functions. However it is a completely
 open system and its total performance is not bad. Especially on  %open system and its total performance is not bad. Especially on
 Groebner basis computation over {\bf Q}, many techniques for improving  %Groebner basis computation over {\bf Q}, many techniques for improving
 practical performances have been implemented. As the OpenXM interface  %practical performances have been implemented. As the OpenXM interface
 specification is completely documented, we can easily add another  %specification is completely documented, we can easily add another
 function to Risa/Asir by wrapping an existing software system as an OX  %function to Risa/Asir by wrapping an existing software system as an OX
 server, and vice versa. User program debugger can be used both for  %server, and other clients can call functions in Risa/Asir by
 local and remote debugging. By combining the debugger and the function  %implementing the OpenXM client interface.  With the remote debugging
 to reset servers, one will be able to enjoy parallel and distributed  %and the function to reset servers, one will be able to enjoy parallel
 computation with OpenXM facilities.  %and distributed computation with OpenXM facilities.
 %  %
   We have shown that many techniques for
   improving practical performances are implemented in Risa/Asir's
   Groebner basis engine.  Though another important function, the
   polynomial factorizer only implements classical algorithms, its
   performance is comparable with or superior to that of Maple or
   Mathematica and is still practically useful.  By preparing OpenXM
   interface or simply linking the Asir OpenXM library, one can call
   these efficient functions from any application.  Risa/Asir is a
   completely open system.  It is open source software
   and the OpenXM interface specification is completely documented, one
   can easily write interfaces to call functions in Risa/Asir and one
   will be able to enjoy parallel and distributed computation.
   
   
 \begin{thebibliography}{7}  \begin{thebibliography}{7}
 %  %
 \addcontentsline{toc}{section}{References}  \addcontentsline{toc}{section}{References}
   
 \bibitem{ANY}  \bibitem{noro:ANY}
 Anay, H., Noro, M., Yokoyama, K. (1996)  Anay, H., Noro, M., Yokoyama, K. (1996)
 Computation of the Splitting fields and the Galois Groups of Polynomials.  Computation of the Splitting fields and the Galois Groups of Polynomials.
 Algorithms in Algebraic geometry and Applications,  Algorithms in Algebraic geometry and Applications,
 Birkh\"auser (Proceedings of MEGA'94), 29--50.  Birkh\"auser (Proceedings of MEGA'94), 29--50.
   
 \bibitem{FPARA}  \bibitem{noro:FPARA}
 Jean-Charles Faug\`ere (1994)  Jean-Charles Faug\`ere (1994)
 Parallelization of Groebner basis.  Parallelization of Groebner basis.
 Proceedings of PASCO'94, 124--132.  Proceedings of PASCO'94, 124--132.
   
 \bibitem{F4}  \bibitem{noro:F4}
 Jean-Charles Faug\`ere (1999)  Jean-Charles Faug\`ere (1999)
 A new efficient algorithm for computing Groebner bases  ($F_4$).  A new efficient algorithm for computing Groebner bases  ($F_4$).
 Journal of Pure and Applied Algebra (139) 1-3 , 61--88.  Journal of Pure and Applied Algebra (139) 1-3 , 61--88.
   
 \bibitem{FGLM}  \bibitem{noro:FGLM}
 Faug\`ere, J.-C. et al. (1993)  Faug\`ere, J.-C. et al. (1993)
 Efficient computation of zero-dimensional Groebner bases by change of ordering.  Efficient computation of zero-dimensional Groebner bases by change of ordering.
 Journal of Symbolic Computation 16, 329--344.  Journal of Symbolic Computation 16, 329--344.
   
 \bibitem{RFC100}  \bibitem{noro:RFC100}
 M. Maekawa, et al. (2001)  M. Maekawa, et al. (2001)
 The Design and Implementation of OpenXM-RFC 100 and 101.  The Design and Implementation of OpenXM-RFC 100 and 101.
 Proceedings of ASCM2001, World Scientific, 102--111.  Proceedings of ASCM2001, World Scientific, 102--111.
   
 \bibitem{RISA}  \bibitem{noro:RISA}
 Noro, M. et al. (1994-2001)  Noro, M. et al. (1994-2001)
 A computer algebra system Risa/Asir.  A computer algebra system Risa/Asir.
 {\tt http://www.openxm.org}, {\tt http://www.math.kobe-u.ac.jp/Asir/asir.html}.  {\tt http://www.openxm.org}, {\tt http://www.math.kobe-u.ac.jp/Asir/asir.html}.
   
 \bibitem{REPL}  \bibitem{noro:REPL}
 Noro, M., McKay, J. (1997)  Noro, M., McKay, J. (1997)
 Computation of replicable functions on Risa/Asir.  Computation of replicable functions on Risa/Asir.
 Proceedings of PASCO'97, ACM Press, 130--138.  Proceedings of PASCO'97, ACM Press, 130--138.
   
 \bibitem{NOYO}  \bibitem{noro:NOYO}
 Noro, M., Yokoyama, K. (1999)  Noro, M., Yokoyama, K. (1999)
 A Modular Method to Compute the Rational Univariate  A Modular Method to Compute the Rational Univariate
 Representation of Zero-Dimensional Ideals.  Representation of Zero-Dimensional Ideals.
 Journal of Symbolic Computation, 28, 1, 243--263.  Journal of Symbolic Computation, 28, 1, 243--263.
   
 \bibitem{OPENXM}  \bibitem{noro:OPENXM}
 OpenXM committers (2000-2001)  OpenXM committers (2000-2001)
 OpenXM package.  OpenXM package.
 {\tt http://www.openxm.org}.  {\tt http://www.openxm.org}.
   
 \bibitem{SY}  \bibitem{noro:RUR}
   Rouillier, R. (1996)
   R\'esolution des syst\`emes z\'ero-dimensionnels.
   Doctoral Thesis(1996), University of Rennes I, France.
   
   \bibitem{noro:SY}
 Shimoyama, T., Yokoyama, K. (1996)  Shimoyama, T., Yokoyama, K. (1996)
 Localization and Primary Decomposition of Polynomial Ideals.  Localization and Primary Decomposition of Polynomial Ideals.
 Journal of Symbolic Computation, 22, 3, 247--277.  Journal of Symbolic Computation, 22, 3, 247--277.
   
 \bibitem{TRAGER}  \bibitem{noro:TRAGER}
 Trager, B.M. (1976)  Trager, B.M. (1976)
 Algebraic Factoring and Rational Function Integration.  Algebraic Factoring and Rational Function Integration.
 Proceedings of SYMSAC 76, 219--226.  Proceedings of SYMSAC 76, 219--226.
   
 \bibitem{TRAV}  \bibitem{noro:TRAV}
 Traverso, C. (1988)  Traverso, C. (1988)
 Groebner trace algorithms.  Groebner trace algorithms.
 LNCS {\bf 358} (Proceedings of ISSAC'88), Springer-Verlag, 125--138.  LNCS {\bf 358} (Proceedings of ISSAC'88), Springer-Verlag, 125--138.
   
 \bibitem{BENCH}  \bibitem{noro:BENCH}
 {\tt http://www.math.uic.edu/\~\,jan/demo.html}.  {\tt http://www.math.uic.edu/\~\,jan/demo.html}.
   
 \bibitem{COCOA}  \bibitem{noro:COCOA}
 {\tt http://cocoa.dima.unige.it/}.  {\tt http://cocoa.dima.unige.it/}.
   
 \bibitem{FGB}  \bibitem{noro:FGB}
 {\tt http://www-calfor.lip6.fr/\~\,jcf/}.  {\tt http://www-calfor.lip6.fr/\~\,jcf/}.
   
 %\bibitem{NTL}  %\bibitem{noro:NTL}
 %{\tt http://www.shoup.net/}.  %{\tt http://www.shoup.net/}.
   
 \bibitem{OPENMATH}  \bibitem{noro:OPENMATH}
 {\tt http://www.openmath.org/}.  {\tt http://www.openmath.org/}.
   
 \bibitem{SINGULAR}  \bibitem{noro:SINGULAR}
 {\tt http://www.singular.uni-kl.de/}.  {\tt http://www.singular.uni-kl.de/}.
   
 \end{thebibliography}  \end{thebibliography}

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