X-Git-Url: https://bilbo.iut-bm.univ-fcomte.fr/and/gitweb/prng_gpu.git/blobdiff_plain/0264ec3e2a52ec399fb117c69cd7d8ba6fc1c16a..26aa4e0cf2939580eae07e8bbad140d527f47234:/prng_gpu.tex?ds=sidebyside diff --git a/prng_gpu.tex b/prng_gpu.tex index 24d5fc6..0279f03 100644 --- a/prng_gpu.tex +++ b/prng_gpu.tex @@ -109,7 +109,7 @@ Let us finish this paragraph by noticing that, in this paper, statistical perfection refers to the ability to pass the whole {\it BigCrush} battery of tests, which is widely considered as the most stringent statistical evaluation of a sequence claimed as random. -This battery can be found into the well-known TestU01 package. +This battery can be found into the well-known TestU01 package~\cite{LEcuyerS07}. Chaos, for its part, refers to the well-established definition of a chaotic dynamical system proposed by Devaney~\cite{Devaney}. @@ -118,7 +118,7 @@ In a previous work~\cite{bgw09:ip,guyeux10} we have proposed a post-treatment on as a chaotic dynamical system. Such a post-treatment leads to a new category of PRNGs. We have shown that proofs of Devaney's chaos can be established for this family, and that the sequence obtained after this post-treatment can pass the -NIST, DieHARD, and TestU01 batteries of tests, even if the inputted generators +NIST~\cite{Nist10}, DieHARD~\cite{Marsaglia1996}, and TestU01~\cite{LEcuyerS07} batteries of tests, even if the inputted generators cannot. The proposition of this paper is to improve widely the speed of the formerly proposed generator, without any lack of chaos or statistical properties. @@ -141,8 +141,8 @@ The remainder of this paper is organized as follows. In Section~\ref{section:re and on an iteration process called ``chaotic iterations'' on which the post-treatment is based. Proofs of chaos are given in Section~\ref{sec:pseudorandom}. -Section~\ref{sec:efficient prng} presents an efficient -implementation of this chaotic PRNG on a CPU, whereas Section~\ref{sec:efficient prng +Section~\ref{sec:efficient PRNG} presents an efficient +implementation of this chaotic PRNG on a CPU, whereas Section~\ref{sec:efficient PRNG gpu} describes the GPU implementation. Such generators are experimented in Section~\ref{sec:experiments}. @@ -173,7 +173,7 @@ A million numbers per second will be simply written as In \cite{Pang:2008:cec} a PRNG based on cellular automata is defined with no requirement to an high precision integer arithmetic or to any bitwise operations. Authors can generate about -3.2MSample/s on a GeForce 7800 GTX GPU, which is quite an old card now. +3.2MSamples/s on a GeForce 7800 GTX GPU, which is quite an old card now. However, there is neither a mention of statistical tests nor any proof of chaos or cryptography in this document. @@ -182,30 +182,35 @@ based on Lagged Fibonacci or Hybrid Taus. They have used these PRNGs for Langevin simulations of biomolecules fully implemented on GPU. Performance of the GPU versions are far better than those obtained with a CPU, and these PRNGs succeed to pass the {\it BigCrush} battery of TestU01. -However the evaluations of the proposed PRNGs are only statistical. +However the evaluations of the proposed PRNGs are only statistical ones. Authors of~\cite{conf/fpga/ThomasHL09} have studied the implementation of some -PRNGs on diferrent computing architectures: CPU, field-programmable gate array -(FPGA), GPU and massively parallel processor. This study is interesting because -it shows the performance of the same PRNGs on different architeture. For -example, the FPGA is globally the fastest architecture and it is also the -efficient one because it provides the fastest number of generated random numbers -per joule. Concerning the GPU, authors can generate betweend 11 and 16GSample/s -with a GTX 280 GPU. The drawback of this work is that those PRNGs only succeed -the {\it Crush} test which is easier than the {\it Big Crush} test. - -Cuda has developped a library for the generation of random numbers called -Curand~\cite{curand11}. Several PRNGs are implemented: -Xorwow~\cite{Marsaglia2003} and some variants of Sobol. Some tests report that -the fastest version provides 15GSample/s on the new Fermi C2050 card. Their -PRNGs fail to succeed the whole tests of TestU01 on only one test. +PRNGs on different computing architectures: CPU, field-programmable gate array +(FPGA), massively parallel processors, and GPU. This study is of interest, because +the performance of the same PRNGs on different architectures are compared. +FPGA appears as the fastest and the most +efficient architecture, providing the fastest number of generated pseudorandom numbers +per joule. +However, we can notice that authors can ``only'' generate between 11 and 16GSamples/s +with a GTX 280 GPU, which should be compared with +the results presented in this document. +We can remark too that the PRNGs proposed in~\cite{conf/fpga/ThomasHL09} are only +able to pass the {\it Crush} battery, which is very easy compared to the {\it Big Crush} one. + +Lastly, Cuda has developed a library for the generation of pseudorandom numbers called +Curand~\cite{curand11}. Several PRNGs are implemented, among +other things +Xorwow~\cite{Marsaglia2003} and some variants of Sobol. The tests reported show that +their fastest version provides 15GSamples/s on the new Fermi C2050 card. +But their PRNGs cannot pass the whole TestU01 battery (only one test is failed). \newline \newline -To the best of our knowledge no GPU implementation have been proven to have chaotic properties. +We can finally remark that, to the best of our knowledge, no GPU implementation have been proven to be chaotic, and the cryptographically secure property is surprisingly never regarded. \section{Basic Recalls} \label{section:BASIC RECALLS} + This section is devoted to basic definitions and terminologies in the fields of topological chaos and chaotic iterations. \subsection{Devaney's Chaotic Dynamical Systems} @@ -426,11 +431,12 @@ As $G_f$, defined on the domain $\llbracket 1 ; \mathsf{N} \rrbracket^{\mathd \rightarrow \mathds{B}^\mathsf{N}$, we can preserve the theoretical properties on $G_f$ during implementations (due to the discrete nature of $f$). It is as if $\mathds{B}^\mathsf{N}$ represents the memory of the computer whereas $\llbracket 1 ; \mathsf{N} -\rrbracket^{\mathds{N}}$ is its input stream (the seeds, for instance). +\rrbracket^{\mathds{N}}$ is its input stream (the seeds, for instance, in PRNG, or a physical noise in TRNG). -\section{Application to pseudorandomness} +\section{Application to Pseudorandomness} \label{sec:pseudorandom} -\subsection{A First pseudorandom Number Generator} + +\subsection{A First Pseudorandom Number Generator} We have proposed in~\cite{bgw09:ip} a new family of generators that receives two PRNGs as inputs. These two generators are mixed with chaotic iterations, @@ -475,7 +481,7 @@ return $y$\; This generator is synthesized in Algorithm~\ref{CI Algorithm}. -It takes as input: a function $f$; +It takes as input: a Boolean function $f$ satisfying Theorem~\ref{Th:Caractérisation des IC chaotiques}; an integer $b$, ensuring that the number of executed iterations is at least $b$ and at most $2b+1$; and an initial configuration $x^0$. It returns the new generated configuration $x$. Internally, it embeds two @@ -500,7 +506,7 @@ We have proven in \cite{bcgr11:ip} that, if and only if $M$ is a double stochastic matrix. \end{theorem} -This former generator as successively passed various batteries of statistical tests, as the NIST tests~\cite{bcgr11:ip}. +This former generator as successively passed various batteries of statistical tests, as the NIST~\cite{bcgr11:ip}, DieHARD~\cite{Marsaglia1996}, and TestU01~\cite{LEcuyerS07}. \subsection{Improving the Speed of the Former Generator} @@ -799,19 +805,28 @@ have $d((S,E),(\tilde S,E))<\epsilon$. \section{Efficient PRNG based on Chaotic Iterations} -\label{sec:efficient prng} +\label{sec:efficient PRNG} -In order to implement efficiently a PRNG based on chaotic iterations it is -possible to improve previous works [ref]. One solution consists in considering -that the strategy used contains all the bits for which the negation is -achieved out. Then in order to apply the negation on these bits we can simply -apply the xor operator between the current number and the strategy. In -order to obtain the strategy we also use a classical PRNG. +Based on the proof presented in the previous section, it is now possible to +improve the speed of the generator formerly presented in~\cite{bgw09:ip,guyeux10}. +The first idea is to consider +that the provided strategy is a pseudorandom Boolean vector obtained by a +given PRNG. +An iteration of the system is simply the bitwise exclusive or between +the last computed state and the current strategy. +Topological properties of disorder exhibited by chaotic +iterations can be inherited by the inputted generator, hoping by doing so to +obtain some statistical improvements while preserving speed. -Here is an example with 16-bits numbers showing how the bitwise operations + +Let us give an example using 16-bits numbers, to clearly understand how the bitwise xor operations are -applied. Suppose that $x$ and the strategy $S^i$ are defined in binary mode. -Then the following table shows the result of $x$ xor $S^i$. +done. +Suppose that $x$ and the strategy $S^i$ are given as +binary vectors. +Table~\ref{TableExemple} shows the result of $x \oplus S^i$. + +\begin{table} $$ \begin{array}{|cc|cccccccccccccccc|} \hline @@ -825,15 +840,15 @@ x \oplus S^i&=&1&1&0&1&1&1&0&0&0&1&1&1&0&1&0&1\\ \hline \end{array} $$ +\caption{Example of an arbitrary round of the proposed generator} +\label{TableExemple} +\end{table} - - -\lstset{language=C,caption={C code of the sequential chaotic iterations based -PRNG},label=algo:seqCIprng} +\lstset{language=C,caption={C code of the sequential PRNG based on chaotic iterations},label=algo:seqCIPRNG} \begin{lstlisting} -unsigned int CIprng() { +unsigned int CIPRNG() { static unsigned int x = 123123123; unsigned long t1 = xorshift(); unsigned long t2 = xor128(); @@ -852,109 +867,116 @@ unsigned int CIprng() { -In listing~\ref{algo:seqCIprng} a sequential version of our chaotic iterations -based PRNG is presented. The xor operator is represented by \textasciicircum. -This function uses three classical 64-bits PRNG: the \texttt{xorshift}, the -\texttt{xor128} and the \texttt{xorwow}. In the following, we call them -xor-like PRNGSs. These three PRNGs are presented in~\cite{Marsaglia2003}. As -each xor-like PRNG used works with 64-bits and as our PRNG works with 32-bits, -the use of \texttt{(unsigned int)} selects the 32 least significant bits whereas -\texttt{(unsigned int)(t3$>>$32)} selects the 32 most significants bits of the -variable \texttt{t}. So to produce a random number realizes 6 xor operations -with 6 32-bits numbers produced by 3 64-bits PRNG. This version successes the -BigCrush of the TestU01 battery~\cite{LEcuyerS07}. +In Listing~\ref{algo:seqCIPRNG} a sequential version of the proposed PRNG based on chaotic iterations + is presented. The xor operator is represented by \textasciicircum. +This function uses three classical 64-bits PRNGs, namely the \texttt{xorshift}, the +\texttt{xor128}, and the \texttt{xorwow}~\cite{Marsaglia2003}. In the following, we call them +``xor-like PRNGs''. +As +each xor-like PRNG uses 64-bits whereas our proposed generator works with 32-bits, +we use the command \texttt{(unsigned int)}, that selects the 32 least significant bits of a given integer, and the code +\texttt{(unsigned int)(t3$>>$32)} in order to obtain the 32 most significant bits of \texttt{t}. + +So producing a pseudorandom number needs 6 xor operations +with 6 32-bits numbers that are provided by 3 64-bits PRNGs. This version successfully passes the +stringent BigCrush battery of tests~\cite{LEcuyerS07}. -\section{Efficient PRNGs based on chaotic iterations on GPU} -\label{sec:efficient prng gpu} +\section{Efficient PRNGs based on Chaotic Iterations on GPU} +\label{sec:efficient PRNG gpu} -In order to benefit from computing power of GPU, a program needs to define -independent blocks of threads which can be computed simultaneously. In general, -the larger the number of threads is, the more local memory is used and the less -branching instructions are used (if, while, ...), the better performance is -obtained on GPU. So with algorithm \ref{algo:seqCIprng} presented in the -previous section, it is possible to build a similar program which computes PRNG -on GPU. In the CUDA~\cite{Nvid10} environment, threads have a local -identificator, called \texttt{ThreadIdx} relative to the block containing them. +In order to take benefits from the computing power of GPU, a program needs to have +independent blocks of threads that can be computed simultaneously. In general, +the larger the number of threads is, the more local memory is used, and the less +branching instructions are used (if, while, ...), the better the performances on GPU is. +Obviously, having these requirements in mind, it is possible to build a program similar to +the one presented in Algorithm \ref{algo:seqCIPRNG}, which computes pseudorandom numbers +on GPU. +To do so, we must firstly recall that in + the CUDA~\cite{Nvid10} environment, threads have a local +identifier called \texttt{ThreadIdx}, which is relative to the block containing them. -\subsection{Naive version for GPU} +\subsection{Naive Version for GPU} -From the CPU version, it is possible to obtain a quite similar version for GPU. -The principe consists in assigning the computation of a PRNG as in sequential to -each thread of the GPU. Of course, it is essential that the three xor-like -PRNGs used for our computation have different parameters. So we chose them -randomly with another PRNG. As the initialisation is performed by the CPU, we -have chosen to use the ISAAC PRNG~\cite{Jenkins96} to initalize all the -parameters for the GPU version of our PRNG. The implementation of the three -xor-like PRNGs is straightforward as soon as their parameters have been -allocated in the GPU memory. Each xor-like PRNGs used works with an internal -number $x$ which keeps the last generated random numbers. Other internal -variables are also used by the xor-like PRNGs. More precisely, the -implementation of the xor128, the xorshift and the xorwow respectively require -4, 5 and 6 unsigned long as internal variables. + +It is possible to deduce from the CPU version a quite similar version adapted to GPU. +The simple principle consists to make each thread of the GPU computing the CPU version of our PRNG. +Of course, the three xor-like +PRNGs used in these computations must have different parameters. +In a given thread, these lasts are +randomly picked from another PRNGs. +The initialization stage is performed by the CPU. +To do it, the ISAAC PRNG~\cite{Jenkins96} is used to set all the +parameters embedded into each thread. + +The implementation of the three +xor-like PRNGs is straightforward when their parameters have been +allocated in the GPU memory. Each xor-like works with an internal +number $x$ that saves the last generated pseudorandom number. Additionally, the +implementation of the xor128, the xorshift, and the xorwow respectively require +4, 5, and 6 unsigned long as internal variables. \begin{algorithm} \KwIn{InternalVarXorLikeArray: array with internal variables of the 3 xor-like PRNGs in global memory\; -NumThreads: Number of threads\;} +NumThreads: number of threads\;} \KwOut{NewNb: array containing random numbers in global memory} \If{threadIdx is concerned by the computation} { retrieve data from InternalVarXorLikeArray[threadIdx] in local variables\; \For{i=1 to n} { - compute a new PRNG as in Listing\ref{algo:seqCIprng}\; + compute a new PRNG as in Listing\ref{algo:seqCIPRNG}\; store the new PRNG in NewNb[NumThreads*threadIdx+i]\; } store internal variables in InternalVarXorLikeArray[threadIdx]\; } -\caption{main kernel for the chaotic iterations based PRNG GPU naive version} +\caption{Main kernel of the GPU ``naive'' version of the PRNG based on chaotic iterations} \label{algo:gpu_kernel} \end{algorithm} -Algorithm~\ref{algo:gpu_kernel} presents a naive implementation of PRNG using -GPU. According to the available memory in the GPU and the number of threads +Algorithm~\ref{algo:gpu_kernel} presents a naive implementation of the proposed PRNG on +GPU. Due to the available memory in the GPU and the number of threads used simultenaously, the number of random numbers that a thread can generate -inside a kernel is limited, i.e. the variable \texttt{n} in -algorithm~\ref{algo:gpu_kernel}. For example, if $100,000$ threads are used and -if $n=100$\footnote{in fact, we need to add the initial seed (a 32-bits number)} -then the memory required to store internals variables of xor-like +inside a kernel is limited (\emph{i.e.}, the variable \texttt{n} in +algorithm~\ref{algo:gpu_kernel}). For instance, if $100,000$ threads are used and +if $n=100$\footnote{in fact, we need to add the initial seed (a 32-bits number)}, +then the memory required to store all of the internals variables of both the xor-like PRNGs\footnote{we multiply this number by $2$ in order to count 32-bits numbers} -and random number of our PRNG is equals to $100,000\times ((4+5+6)\times -2+(1+100))=1,310,000$ 32-bits numbers, i.e. about $52$Mb. +and the pseudorandom numbers generated by our PRNG, is equal to $100,000\times ((4+5+6)\times +2+(1+100))=1,310,000$ 32-bits numbers, that is, approximately $52$Mb. -All the tests performed to pass the BigCrush of TestU01 succeeded. Different -number of threads, called \texttt{NumThreads} in our algorithm, have been tested -upto $10$ millions. -\newline -\newline -{\bf QUESTION : on laisse cette remarque, je suis mitigé !!!} +This generator is able to pass the whole BigCrush battery of tests, for all +the versions that have been tested depending on their number of threads +(called \texttt{NumThreads} in our algorithm, tested until $10$ millions). \begin{remark} -Algorithm~\ref{algo:gpu_kernel} has the advantage to manipulate independent -PRNGs, so this version is easily usable on a cluster of computer. The only thing -to ensure is to use a single ISAAC PRNG. For this, a simple solution consists in -using a master node for the initialization which computes the initial parameters +The proposed algorithm has the advantage to manipulate independent +PRNGs, so this version is easily adaptable on a cluster of computers too. The only thing +to ensure is to use a single ISAAC PRNG. To achieve this requirement, a simple solution consists in +using a master node for the initialization. This master node computes the initial parameters for all the differents nodes involves in the computation. \end{remark} -\subsection{Improved version for GPU} +\subsection{Improved Version for GPU} As GPU cards using CUDA have shared memory between threads of the same block, it is possible to use this feature in order to simplify the previous algorithm, -i.e., using less than 3 xor-like PRNGs. The solution consists in computing only -one xor-like PRNG by thread, saving it into shared memory and using the results +i.e., to use less than 3 xor-like PRNGs. The solution consists in computing only +one xor-like PRNG by thread, saving it into the shared memory, and then to use the results of some other threads in the same block of threads. In order to define which -thread uses the result of which other one, we can use a permutation array which +thread uses the result of which other one, we can use a permutation array that contains the indexes of all threads and for which a permutation has been -performed. In Algorithm~\ref{algo:gpu_kernel2}, 2 permutations arrays are used. +performed. + +In Algorithm~\ref{algo:gpu_kernel2}, two permutations arrays are used. The variable \texttt{offset} is computed using the value of \texttt{permutation\_size}. Then we can compute \texttt{o1} and \texttt{o2} -which represent the indexes of the other threads for which the results are used -by the current thread. In the algorithm, we consider that a 64-bits xor-like -PRNG is used, that is why both 32-bits parts are used. +representing the indexes of the other threads whose results are used +by the current one. In this algorithm, we consider that a 64-bits xor-like +PRNG has been chosen, and so its two 32-bits parts are used. -This version also succeeds to the {\it BigCrush} batteries of tests. +This version also can pass the whole {\it BigCrush} battery of tests. \begin{algorithm} @@ -987,22 +1009,28 @@ version} \subsection{Theoretical Evaluation of the Improved Version} -A run of Algorithm~\ref{algo:gpu_kernel2} consists in three operations having +A run of Algorithm~\ref{algo:gpu_kernel2} consists in an operation ($x=x\oplus t$) having the form of Equation~\ref{equation Oplus}, which is equivalent to the iterative -system of Eq.~\ref{eq:generalIC}. That is, three iterations of the general chaotic -iterations are realized between two stored values of the PRNG. +system of Eq.~\ref{eq:generalIC}. That is, an iteration of the general chaotic +iterations is realized between the last stored value $x$ of the thread and a strategy $t$ +(obtained by a bitwise exclusive or between a value provided by a xor-like() call +and two values previously obtained by two other threads). To be certain that we are in the framework of Theorem~\ref{t:chaos des general}, we must guarantee that this dynamical system iterates on the space $\mathcal{X} = \mathcal{P}\left(\llbracket 1, \mathsf{N} \rrbracket\right)^\mathds{N}\times\mathds{B}^\mathsf{N}$. The left term $x$ obviously belongs into $\mathds{B}^ \mathsf{N}$. -To prevent from any flaws of chaotic properties, we must check that each right -term, corresponding to terms of the strategies, can possibly be equal to any +To prevent from any flaws of chaotic properties, we must check that the right +term (the last $t$), corresponding to the strategies, can possibly be equal to any integer of $\llbracket 1, \mathsf{N} \rrbracket$. -Such a result is obvious for the two first lines, as for the xor-like(), all the -integers belonging into its interval of definition can occur at each iteration. -It can be easily stated for the two last lines by an immediate mathematical -induction. +Such a result is obvious, as for the xor-like(), all the +integers belonging into its interval of definition can occur at each iteration, and thus the +last $t$ respects the requirement. Furthermore, it is possible to +prove by an immediate mathematical induction that, as the initial $x$ +is uniformly distributed (it is provided by a cryptographically secure PRNG), +the two other stored values shmem[o1] and shmem[o2] are uniformly distributed too, +(this can be stated by an immediate mathematical +induction), and thus the next $x$ is finally uniformly distributed. Thus Algorithm~\ref{algo:gpu_kernel2} is a concrete realization of the general chaotic iterations presented previously, and for this reason, it satisfies the @@ -1012,587 +1040,66 @@ Devaney's formulation of a chaotic behavior. \label{sec:experiments} Different experiments have been performed in order to measure the generation -speed. We have used a computer equiped with Tesla C1060 NVidia GPU card and an -Intel Xeon E5530 cadenced at 2.40 GHz for our experiments and we have used -another one equipped with a less performant CPU and a GeForce GTX 280. Both +speed. We have used a first computer equipped with a Tesla C1060 NVidia GPU card +and an +Intel Xeon E5530 cadenced at 2.40 GHz, and +a second computer equipped with a smaller CPU and a GeForce GTX 280. +All the cards have 240 cores. -In Figure~\ref{fig:time_xorlike_gpu} we compare the number of random numbers -generated per second with the xor-like based PRNG. In this figure, the optimized -version use the {\it xor64} described in~\cite{Marsaglia2003}. The naive version -use the three xor-like PRNGs described in Listing~\ref{algo:seqCIprng}. In -order to obtain the optimal performance we removed the storage of random numbers -in the GPU memory. This step is time consuming and slows down the random numbers -generation. Moreover, if one is interested by applications that consume random -numbers directly when they are generated, their storage are completely -useless. In this figure we can see that when the number of threads is greater -than approximately 30,000 upto 5 millions the number of random numbers generated -per second is almost constant. With the naive version, it is between 2.5 and -3GSample/s. With the optimized version, it is approximately equals to -20GSample/s. Finally we can remark that both GPU cards are quite similar. In -practice, the Tesla C1060 has more memory than the GTX 280 and this memory +In Figure~\ref{fig:time_xorlike_gpu} we compare the quantity of pseudorandom numbers +generated per second with various xor-like based PRNG. In this figure, the optimized +versions use the {\it xor64} described in~\cite{Marsaglia2003}, whereas the naive versions +embed the three xor-like PRNGs described in Listing~\ref{algo:seqCIPRNG}. In +order to obtain the optimal performances, the storage of pseudorandom numbers +into the GPU memory has been removed. This step is time consuming and slows down the numbers +generation. Moreover this storage is completely +useless, in case of applications that consume the pseudorandom +numbers directly after generation. We can see that when the number of threads is greater +than approximately 30,000 and lower than 5 millions, the number of pseudorandom numbers generated +per second is almost constant. With the naive version, this value ranges from 2.5 to +3GSamples/s. With the optimized version, it is approximately equal to +20GSamples/s. Finally we can remark that both GPU cards are quite similar, but in +practice, the Tesla C1060 has more memory than the GTX 280, and this memory should be of better quality. +As a comparison, Listing~\ref{algo:seqCIPRNG} leads to the generation of about +138MSample/s when using one core of the Xeon E5530. \begin{figure}[htbp] \begin{center} \includegraphics[scale=.7]{curve_time_xorlike_gpu.pdf} \end{center} -\caption{Number of random numbers generated per second with the xorlike based PRNG} +\caption{Quantity of pseudorandom numbers generated per second with the xorlike-based PRNG} \label{fig:time_xorlike_gpu} \end{figure} -In comparison, Listing~\ref{algo:seqCIprng} allows us to generate about -138MSample/s with only one core of the Xeon E5530. -In Figure~\ref{fig:time_bbs_gpu} we highlight the performance of the optimized -BBS based PRNG on GPU. Performances are less important. On the Tesla C1060 we -obtain approximately 1.8GSample/s and on the GTX 280 about 1.6GSample/s. + +In Figure~\ref{fig:time_bbs_gpu} we highlight the performances of the optimized +BBS-based PRNG on GPU. On the Tesla C1060 we +obtain approximately 1.8GSample/s and on the GTX 280 about 1.6GSample/s, which is +obviously slower than the xorlike-based PRNG on GPU. However, we will show in the +next sections that +this new PRNG has a strong level of security, which is necessary paid by a speed +reduction. \begin{figure}[htbp] \begin{center} \includegraphics[scale=.7]{curve_time_bbs_gpu.pdf} \end{center} -\caption{Number of random numbers generated per second with the BBS based PRNG} +\caption{Quantity of pseudorandom numbers generated per second using the BBS-based PRNG} \label{fig:time_bbs_gpu} \end{figure} -Both these experimentations allows us to conclude that it is possible to -generate a huge number of pseudorandom numbers with the xor-like version and -about tens times less with the BBS based version. The former version has only -chaotic properties whereas the latter also has cryptographically properties. - - -%% \section{Cryptanalysis of the Proposed PRNG} - - -%% Mettre ici la preuve de PCH - -%\section{The relativity of disorder} -%\label{sec:de la relativité du désordre} - -%In the next two sections, we investigate the impact of the choices that have -%lead to the definitions of measures in Sections \ref{sec:chaotic iterations} and \ref{deuxième def}. - -%\subsection{Impact of the topology's finenesse} - -%Let us firstly introduce the following notations. - -%\begin{notation} -%$\mathcal{X}_\tau$ will denote the topological space -%$\left(\mathcal{X},\tau\right)$, whereas $\mathcal{V}_\tau (x)$ will be the set -%of all the neighborhoods of $x$ when considering the topology $\tau$ (or simply -%$\mathcal{V} (x)$, if there is no ambiguity). -%\end{notation} - - - -%\begin{theorem} -%\label{Th:chaos et finesse} -%Let $\mathcal{X}$ a set and $\tau, \tau'$ two topologies on $\mathcal{X}$ s.t. -%$\tau'$ is finer than $\tau$. Let $f:\mathcal{X} \to \mathcal{X}$, continuous -%both for $\tau$ and $\tau'$. - -%If $(\mathcal{X}_{\tau'},f)$ is chaotic according to Devaney, then -%$(\mathcal{X}_\tau,f)$ is chaotic too. -%\end{theorem} - -%\begin{proof} -%Let us firstly establish the transitivity of $(\mathcal{X}_\tau,f)$. - -%Let $\omega_1, \omega_2$ two open sets of $\tau$. Then $\omega_1, \omega_2 \in -%\tau'$, becaus $\tau'$ is finer than $\tau$. As $f$ is $\tau'-$transitive, we -%can deduce that $\exists n \in \mathds{N}, \omega_1 \cap f^{(n)}(\omega_2) = -%\varnothing$. Consequently, $f$ is $\tau-$transitive. - -%Let us now consider the regularity of $(\mathcal{X}_\tau,f)$, \emph{i.e.}, for -%all $x \in \mathcal{X}$, and for all $\tau-$neighborhood $V$ of $x$, there is a -%periodic point for $f$ into $V$. +All these experiments allow us to conclude that it is possible to +generate a very large quantity of pseudorandom numbers statistically perfect with the xor-like version. +In a certain extend, it is the case too with the secure BBS-based version, the speed deflation being +explained by the fact that the former version has ``only'' +chaotic properties and statistical perfection, whereas the latter is also cryptographically secure, +as it is shown in the next sections. -%Let $x \in \mathcal{X}$ and $V \in \mathcal{V}_\tau (x)$ a $\tau-$neighborhood -%of $x$. By definition, $\exists \omega \in \tau, x \in \omega \subset V$. - -%But $\tau \subset \tau'$, so $\omega \in \tau'$, and then $V \in -%\mathcal{V}_{\tau'} (x)$. As $(\mathcal{X}_{\tau'},f)$ is regular, there is a -%periodic point for $f$ into $V$, and the regularity of $(\mathcal{X}_\tau,f)$ is -%proven. -%\end{proof} - -%\subsection{A given system can always be claimed as chaotic} - -%Let $f$ an iteration function on $\mathcal{X}$ having at least a fixed point. -%Then this function is chaotic (in a certain way): - -%\begin{theorem} -%Let $\mathcal{X}$ a nonempty set and $f: \mathcal{X} \to \X$ a function having -%at least a fixed point. -%Then $f$ is $\tau_0-$chaotic, where $\tau_0$ is the trivial (indiscrete) -%topology on $\X$. -%\end{theorem} - - -%\begin{proof} -%$f$ is transitive when $\forall \omega, \omega' \in \tau_0 \setminus -%\{\varnothing\}, \exists n \in \mathds{N}, f^{(n)}(\omega) \cap \omega' \neq -%\varnothing$. -%As $\tau_0 = \left\{ \varnothing, \X \right\}$, this is equivalent to look for -%an integer $n$ s.t. $f^{(n)}\left( \X \right) \cap \X \neq \varnothing$. For -%instance, $n=0$ is appropriate. - -%Let us now consider $x \in \X$ and $V \in \mathcal{V}_{\tau_0} (x)$. Then $V = -%\mathcal{X}$, so $V$ has at least a fixed point for $f$. Consequently $f$ is -%regular, and the result is established. -%\end{proof} - - - - -%\subsection{A given system can always be claimed as non-chaotic} - -%\begin{theorem} -%Let $\mathcal{X}$ be a set and $f: \mathcal{X} \to \X$. -%If $\X$ is infinite, then $\left( \X_{\tau_\infty}, f\right)$ is not chaotic -%(for the Devaney's formulation), where $\tau_\infty$ is the discrete topology. -%\end{theorem} - -%\begin{proof} -%Let us prove it by contradiction, assuming that $\left(\X_{\tau_\infty}, -%f\right)$ is both transitive and regular. - -%Let $x \in \X$ and $\{x\}$ one of its neighborhood. This neighborhood must -%contain a periodic point for $f$, if we want that $\left(\X_{\tau_\infty}, -%f\right)$ is regular. Then $x$ must be a periodic point of $f$. - -%Let $I_x = \left\{ f^{(n)}(x), n \in \mathds{N}\right\}$. This set is finite -%because $x$ is periodic, and $\mathcal{X}$ is infinite, then $\exists y \in -%\mathcal{X}, y \notin I_x$. - -%As $\left(\X_{\tau_\infty}, f\right)$ must be transitive, for all open nonempty -%sets $A$ and $B$, an integer $n$ must satisfy $f^{(n)}(A) \cap B \neq -%\varnothing$. However $\{x\}$ and $\{y\}$ are open sets and $y \notin I_x -%\Rightarrow \forall n, f^{(n)}\left( \{x\} \right) \cap \{y\} = \varnothing$. -%\end{proof} - - - - - - -%\section{Chaos on the order topology} -%\label{sec: chaos order topology} -%\subsection{The phase space is an interval of the real line} - -%\subsubsection{Toward a topological semiconjugacy} - -%In what follows, our intention is to establish, by using a topological -%semiconjugacy, that chaotic iterations over $\mathcal{X}$ can be described as -%iterations on a real interval. To do so, we must firstly introduce some -%notations and terminologies. - -%Let $\mathcal{S}_\mathsf{N}$ be the set of sequences belonging into $\llbracket -%1; \mathsf{N}\rrbracket$ and $\mathcal{X}_{\mathsf{N}} = \mathcal{S}_\mathsf{N} -%\times \B^\mathsf{N}$. - - -%\begin{definition} -%The function $\varphi: \mathcal{S}_{10} \times\mathds{B}^{10} \rightarrow \big[ -%0, 2^{10} \big[$ is defined by: -%\begin{equation} -% \begin{array}{cccl} -%\varphi: & \mathcal{X}_{10} = \mathcal{S}_{10} \times\mathds{B}^{10}& -%\longrightarrow & \big[ 0, 2^{10} \big[ \\ -% & (S,E) = \left((S^0, S^1, \hdots ); (E_0, \hdots, E_9)\right) & \longmapsto & -%\varphi \left((S,E)\right) -%\end{array} -%\end{equation} -%where $\varphi\left((S,E)\right)$ is the real number: -%\begin{itemize} -%\item whose integral part $e$ is $\displaystyle{\sum_{k=0}^9 2^{9-k} E_k}$, that -%is, the binary digits of $e$ are $E_0 ~ E_1 ~ \hdots ~ E_9$. -%\item whose decimal part $s$ is equal to $s = 0,S^0~ S^1~ S^2~ \hdots = -%\sum_{k=1}^{+\infty} 10^{-k} S^{k-1}.$ -%\end{itemize} -%\end{definition} - - - -%$\varphi$ realizes the association between a point of $\mathcal{X}_{10}$ and a -%real number into $\big[ 0, 2^{10} \big[$. We must now translate the chaotic -%iterations $\Go$ on this real interval. To do so, two intermediate functions -%over $\big[ 0, 2^{10} \big[$ must be introduced: - - -%\begin{definition} -%\label{def:e et s} -%Let $x \in \big[ 0, 2^{10} \big[$ and: -%\begin{itemize} -%\item $e_0, \hdots, e_9$ the binary digits of the integral part of $x$: -%$\displaystyle{\lfloor x \rfloor = \sum_{k=0}^{9} 2^{9-k} e_k}$. -%\item $(s^k)_{k\in \mathds{N}}$ the digits of $x$, where the chosen decimal -%decomposition of $x$ is the one that does not have an infinite number of 9: -%$\displaystyle{x = \lfloor x \rfloor + \sum_{k=0}^{+\infty} s^k 10^{-k-1}}$. -%\end{itemize} -%$e$ and $s$ are thus defined as follows: -%\begin{equation} -%\begin{array}{cccl} -%e: & \big[ 0, 2^{10} \big[ & \longrightarrow & \mathds{B}^{10} \\ -% & x & \longmapsto & (e_0, \hdots, e_9) -%\end{array} -%\end{equation} -%and -%\begin{equation} -% \begin{array}{cccc} -%s: & \big[ 0, 2^{10} \big[ & \longrightarrow & \llbracket 0, 9 -%\rrbracket^{\mathds{N}} \\ -% & x & \longmapsto & (s^k)_{k \in \mathds{N}} -%\end{array} -%\end{equation} -%\end{definition} - -%We are now able to define the function $g$, whose goal is to translate the -%chaotic iterations $\Go$ on an interval of $\mathds{R}$. - -%\begin{definition} -%$g:\big[ 0, 2^{10} \big[ \longrightarrow \big[ 0, 2^{10} \big[$ is defined by: -%\begin{equation} -%\begin{array}{cccc} -%g: & \big[ 0, 2^{10} \big[ & \longrightarrow & \big[ 0, 2^{10} \big[ \\ -% & x & \longmapsto & g(x) -%\end{array} -%\end{equation} -%where g(x) is the real number of $\big[ 0, 2^{10} \big[$ defined bellow: -%\begin{itemize} -%\item its integral part has a binary decomposition equal to $e_0', \hdots, -%e_9'$, with: -% \begin{equation} -%e_i' = \left\{ -%\begin{array}{ll} -%e(x)_i & \textrm{ if } i \neq s^0\\ -%e(x)_i + 1 \textrm{ (mod 2)} & \textrm{ if } i = s^0\\ -%\end{array} -%\right. -%\end{equation} -%\item whose decimal part is $s(x)^1, s(x)^2, \hdots$ -%\end{itemize} -%\end{definition} - -%\bigskip - - -%In other words, if $x = \displaystyle{\sum_{k=0}^{9} 2^{9-k} e_k + -%\sum_{k=0}^{+\infty} s^{k} ~10^{-k-1}}$, then: -%\begin{equation} -%g(x) = -%\displaystyle{\sum_{k=0}^{9} 2^{9-k} (e_k + \delta(k,s^0) \textrm{ (mod 2)}) + -%\sum_{k=0}^{+\infty} s^{k+1} 10^{-k-1}}. -%\end{equation} - - -%\subsubsection{Defining a metric on $\big[ 0, 2^{10} \big[$} - -%Numerous metrics can be defined on the set $\big[ 0, 2^{10} \big[$, the most -%usual one being the Euclidian distance recalled bellow: - -%\begin{notation} -%\index{distance!euclidienne} -%$\Delta$ is the Euclidian distance on $\big[ 0, 2^{10} \big[$, that is, -%$\Delta(x,y) = |y-x|^2$. -%\end{notation} - -%\medskip - -%This Euclidian distance does not reproduce exactly the notion of proximity -%induced by our first distance $d$ on $\X$. Indeed $d$ is finer than $\Delta$. -%This is the reason why we have to introduce the following metric: - - - -%\begin{definition} -%Let $x,y \in \big[ 0, 2^{10} \big[$. -%$D$ denotes the function from $\big[ 0, 2^{10} \big[^2$ to $\mathds{R}^+$ -%defined by: $D(x,y) = D_e\left(e(x),e(y)\right) + D_s\left(s(x),s(y)\right)$, -%where: -%\begin{center} -%$\displaystyle{D_e(E,\check{E}) = \sum_{k=0}^\mathsf{9} \delta (E_k, -%\check{E}_k)}$, ~~and~ $\displaystyle{D_s(S,\check{S}) = \sum_{k = 1}^\infty -%\dfrac{|S^k-\check{S}^k|}{10^k}}$. -%\end{center} -%\end{definition} - -%\begin{proposition} -%$D$ is a distance on $\big[ 0, 2^{10} \big[$. -%\end{proposition} - -%\begin{proof} -%The three axioms defining a distance must be checked. -%\begin{itemize} -%\item $D \geqslant 0$, because everything is positive in its definition. If -%$D(x,y)=0$, then $D_e(x,y)=0$, so the integral parts of $x$ and $y$ are equal -%(they have the same binary decomposition). Additionally, $D_s(x,y) = 0$, then -%$\forall k \in \mathds{N}^*, s(x)^k = s(y)^k$. In other words, $x$ and $y$ have -%the same $k-$th decimal digit, $\forall k \in \mathds{N}^*$. And so $x=y$. -%\item $D(x,y)=D(y,x)$. -%\item Finally, the triangular inequality is obtained due to the fact that both -%$\delta$ and $\Delta(x,y)=|x-y|$ satisfy it. -%\end{itemize} -%\end{proof} - - -%The convergence of sequences according to $D$ is not the same than the usual -%convergence related to the Euclidian metric. For instance, if $x^n \to x$ -%according to $D$, then necessarily the integral part of each $x^n$ is equal to -%the integral part of $x$ (at least after a given threshold), and the decimal -%part of $x^n$ corresponds to the one of $x$ ``as far as required''. -%To illustrate this fact, a comparison between $D$ and the Euclidian distance is -%given Figure \ref{fig:comparaison de distances}. These illustrations show that -%$D$ is richer and more refined than the Euclidian distance, and thus is more -%precise. - - -%\begin{figure}[t] -%\begin{center} -% \subfigure[Function $x \to dist(x;1,234) $ on the interval -%$(0;5)$.]{\includegraphics[scale=.35]{DvsEuclidien.pdf}}\quad -% \subfigure[Function $x \to dist(x;3) $ on the interval -%$(0;5)$.]{\includegraphics[scale=.35]{DvsEuclidien2.pdf}} -%\end{center} -%\caption{Comparison between $D$ (in blue) and the Euclidian distane (in green).} -%\label{fig:comparaison de distances} -%\end{figure} - - - - -%\subsubsection{The semiconjugacy} - -%It is now possible to define a topological semiconjugacy between $\mathcal{X}$ -%and an interval of $\mathds{R}$: - -%\begin{theorem} -%Chaotic iterations on the phase space $\mathcal{X}$ are simple iterations on -%$\mathds{R}$, which is illustrated by the semiconjugacy of the diagram bellow: -%\begin{equation*} -%\begin{CD} -%\left(~\mathcal{S}_{10} \times\mathds{B}^{10}, d~\right) @>G_{f_0}>> -%\left(~\mathcal{S}_{10} \times\mathds{B}^{10}, d~\right)\\ -% @V{\varphi}VV @VV{\varphi}V\\ -%\left( ~\big[ 0, 2^{10} \big[, D~\right) @>>g> \left(~\big[ 0, 2^{10} \big[, -%D~\right) -%\end{CD} -%\end{equation*} -%\end{theorem} - -%\begin{proof} -%$\varphi$ has been constructed in order to be continuous and onto. -%\end{proof} - -%In other words, $\mathcal{X}$ is approximately equal to $\big[ 0, 2^\mathsf{N} -%\big[$. - - - - - - -%\subsection{Study of the chaotic iterations described as a real function} - - -%\begin{figure}[t] -%\begin{center} -% \subfigure[ICs on the interval -%$(0,9;1)$.]{\includegraphics[scale=.35]{ICs09a1.pdf}}\quad -% \subfigure[ICs on the interval -%$(0,7;1)$.]{\includegraphics[scale=.35]{ICs07a95.pdf}}\\ -% \subfigure[ICs on the interval -%$(0,5;1)$.]{\includegraphics[scale=.35]{ICs05a1.pdf}}\quad -% \subfigure[ICs on the interval -%$(0;1)$]{\includegraphics[scale=.35]{ICs0a1.pdf}} -%\end{center} -%\caption{Representation of the chaotic iterations.} -%\label{fig:ICs} -%\end{figure} - - - - -%\begin{figure}[t] -%\begin{center} -% \subfigure[ICs on the interval -%$(510;514)$.]{\includegraphics[scale=.35]{ICs510a514.pdf}}\quad -% \subfigure[ICs on the interval -%$(1000;1008)$]{\includegraphics[scale=.35]{ICs1000a1008.pdf}} -%\end{center} -%\caption{ICs on small intervals.} -%\label{fig:ICs2} -%\end{figure} - -%\begin{figure}[t] -%\begin{center} -% \subfigure[ICs on the interval -%$(0;16)$.]{\includegraphics[scale=.3]{ICs0a16.pdf}}\quad -% \subfigure[ICs on the interval -%$(40;70)$.]{\includegraphics[scale=.45]{ICs40a70.pdf}}\quad -%\end{center} -%\caption{General aspect of the chaotic iterations.} -%\label{fig:ICs3} -%\end{figure} - - -%We have written a Python program to represent the chaotic iterations with the -%vectorial negation on the real line $\mathds{R}$. Various representations of -%these CIs are given in Figures \ref{fig:ICs}, \ref{fig:ICs2} and \ref{fig:ICs3}. -%It can be remarked that the function $g$ is a piecewise linear function: it is -%linear on each interval having the form $\left[ \dfrac{n}{10}, -%\dfrac{n+1}{10}\right[$, $n \in \llbracket 0;2^{10}\times 10 \rrbracket$ and its -%slope is equal to 10. Let us justify these claims: - -%\begin{proposition} -%\label{Prop:derivabilite des ICs} -%Chaotic iterations $g$ defined on $\mathds{R}$ have derivatives of all orders on -%$\big[ 0, 2^{10} \big[$, except on the 10241 points in $I$ defined by $\left\{ -%\dfrac{n}{10} ~\big/~ n \in \llbracket 0;2^{10}\times 10\rrbracket \right\}$. - -%Furthermore, on each interval of the form $\left[ \dfrac{n}{10}, -%\dfrac{n+1}{10}\right[$, with $n \in \llbracket 0;2^{10}\times 10 \rrbracket$, -%$g$ is a linear function, having a slope equal to 10: $\forall x \notin I, -%g'(x)=10$. -%\end{proposition} - - -%\begin{proof} -%Let $I_n = \left[ \dfrac{n}{10}, \dfrac{n+1}{10}\right[$, with $n \in \llbracket -%0;2^{10}\times 10 \rrbracket$. All the points of $I_n$ have the same integral -%prat $e$ and the same decimal part $s^0$: on the set $I_n$, functions $e(x)$ -%and $x \mapsto s(x)^0$ of Definition \ref{def:e et s} only depend on $n$. So all -%the images $g(x)$ of these points $x$: -%\begin{itemize} -%\item Have the same integral part, which is $e$, except probably the bit number -%$s^0$. In other words, this integer has approximately the same binary -%decomposition than $e$, the sole exception being the digit $s^0$ (this number is -%then either $e+2^{10-s^0}$ or $e-2^{10-s^0}$, depending on the parity of $s^0$, -%\emph{i.e.}, it is equal to $e+(-1)^{s^0}\times 2^{10-s^0}$). -%\item A shift to the left has been applied to the decimal part $y$, losing by -%doing so the common first digit $s^0$. In other words, $y$ has been mapped into -%$10\times y - s^0$. -%\end{itemize} -%To sum up, the action of $g$ on the points of $I$ is as follows: first, make a -%multiplication by 10, and second, add the same constant to each term, which is -%$\dfrac{1}{10}\left(e+(-1)^{s^0}\times 2^{10-s^0}\right)-s^0$. -%\end{proof} - -%\begin{remark} -%Finally, chaotic iterations are elements of the large family of functions that -%are both chaotic and piecewise linear (like the tent map). -%\end{remark} - - - -%\subsection{Comparison of the two metrics on $\big[ 0, 2^\mathsf{N} \big[$} - -%The two propositions bellow allow to compare our two distances on $\big[ 0, -%2^\mathsf{N} \big[$: - -%\begin{proposition} -%Id: $\left(~\big[ 0, 2^\mathsf{N} \big[,\Delta~\right) \to \left(~\big[ 0, -%2^\mathsf{N} \big[, D~\right)$ is not continuous. -%\end{proposition} - -%\begin{proof} -%The sequence $x^n = 1,999\hdots 999$ constituted by $n$ 9 as decimal part, is -%such that: -%\begin{itemize} -%\item $\Delta (x^n,2) \to 0.$ -%\item But $D(x^n,2) \geqslant 1$, then $D(x^n,2)$ does not converge to 0. -%\end{itemize} - -%The sequential characterization of the continuity concludes the demonstration. -%\end{proof} - - - -%A contrario: - -%\begin{proposition} -%Id: $\left(~\big[ 0, 2^\mathsf{N} \big[,D~\right) \to \left(~\big[ 0, -%2^\mathsf{N} \big[, \Delta ~\right)$ is a continuous fonction. -%\end{proposition} - -%\begin{proof} -%If $D(x^n,x) \to 0$, then $D_e(x^n,x) = 0$ at least for $n$ larger than a given -%threshold, because $D_e$ only returns integers. So, after this threshold, the -%integral parts of all the $x^n$ are equal to the integral part of $x$. - -%Additionally, $D_s(x^n, x) \to 0$, then $\forall k \in \mathds{N}^*, \exists N_k -%\in \mathds{N}, n \geqslant N_k \Rightarrow D_s(x^n,x) \leqslant 10^{-k}$. This -%means that for all $k$, an index $N_k$ can be found such that, $\forall n -%\geqslant N_k$, all the $x^n$ have the same $k$ firsts digits, which are the -%digits of $x$. We can deduce the convergence $\Delta(x^n,x) \to 0$, and thus the -%result. -%\end{proof} - -%The conclusion of these propositions is that the proposed metric is more precise -%than the Euclidian distance, that is: - -%\begin{corollary} -%$D$ is finer than the Euclidian distance $\Delta$. -%\end{corollary} - -%This corollary can be reformulated as follows: - -%\begin{itemize} -%\item The topology produced by $\Delta$ is a subset of the topology produced by -%$D$. -%\item $D$ has more open sets than $\Delta$. -%\item It is harder to converge for the topology $\tau_D$ inherited by $D$, than -%to converge with the one inherited by $\Delta$, which is denoted here by -%$\tau_\Delta$. -%\end{itemize} - - -%\subsection{Chaos of the chaotic iterations on $\mathds{R}$} -%\label{chpt:Chaos des itérations chaotiques sur R} - - - -%\subsubsection{Chaos according to Devaney} - -%We have recalled previously that the chaotic iterations $\left(\Go, -%\mathcal{X}_d\right)$ are chaotic according to the formulation of Devaney. We -%can deduce that they are chaotic on $\mathds{R}$ too, when considering the order -%topology, because: -%\begin{itemize} -%\item $\left(\Go, \mathcal{X}_d\right)$ and $\left(g, \big[ 0, 2^{10} -%\big[_D\right)$ are semiconjugate by $\varphi$, -%\item Then $\left(g, \big[ 0, 2^{10} \big[_D\right)$ is a system chaotic -%according to Devaney, because the semiconjugacy preserve this character. -%\item But the topology generated by $D$ is finer than the topology generated by -%the Euclidian distance $\Delta$ -- which is the order topology. -%\item According to Theorem \ref{Th:chaos et finesse}, we can deduce that the -%chaotic iterations $g$ are indeed chaotic, as defined by Devaney, for the order -%topology on $\mathds{R}$. -%\end{itemize} - -%This result can be formulated as follows. - -%\begin{theorem} -%\label{th:IC et topologie de l'ordre} -%The chaotic iterations $g$ on $\mathds{R}$ are chaotic according to the -%Devaney's formulation, when $\mathds{R}$ has his usual topology, which is the -%order topology. -%\end{theorem} - -%Indeed this result is weaker than the theorem establishing the chaos for the -%finer topology $d$. However the Theorem \ref{th:IC et topologie de l'ordre} -%still remains important. Indeed, we have studied in our previous works a set -%different from the usual set of study ($\mathcal{X}$ instead of $\mathds{R}$), -%in order to be as close as possible from the computer: the properties of -%disorder proved theoretically will then be preserved when computing. However, we -%could wonder whether this change does not lead to a disorder of a lower quality. -%In other words, have we replaced a situation of a good disorder lost when -%computing, to another situation of a disorder preserved but of bad quality. -%Theorem \ref{th:IC et topologie de l'ordre} prove exactly the contrary. -% @@ -1616,7 +1123,7 @@ The notion of {\it secure} PRNGs can now be defined as follows. A cryptographic PRNG $G$ is secure if for any probabilistic polynomial time algorithm $D$, for any positive polynomial $p$, and for all sufficiently large $k$'s, -$$| \mathrm{Pr}[D(G(U_k))=1]-Pr[D(U_{\ell_G(k)}=1]|< \frac{1}{p(N)},$$ +$$| \mathrm{Pr}[D(G(U_k))=1]-Pr[D(U_{\ell_G(k)})=1]|< \frac{1}{p(N)},$$ where $U_r$ is the uniform distribution over $\{0,1\}^r$ and the probabilities are taken over $U_N$, $U_{\ell_G(N)}$ as well as over the internal coin tosses of $D$. @@ -1643,6 +1150,7 @@ We claim now that if this PRNG is secure, then the new one is secure too. \begin{proposition} +\label{cryptopreuve} If $H$ is a secure cryptographic PRNG, then $X$ is a secure cryptographic PRNG too. \end{proposition} @@ -1709,40 +1217,50 @@ proving that $H$ is not secure, a contradiction. \end{proof} +\section{Cryptographical Applications} - -\section{A cryptographically secure prng for GPU} +\subsection{A Cryptographically Secure PRNG for GPU} \label{sec:CSGPU} -It is possible to build a cryptographically secure prng based on the previous -algorithm (algorithm~\ref{algo:gpu_kernel2}). It simply consists in replacing -the {\it xor-like} algorithm by another cryptographically secure prng. In -practice, we suggest to use the BBS algorithm~\cite{BBS} which takes the form: -$$x_{n+1}=x_n^2~ mod~ M$$ where $M$ is the product of two prime numbers. Those -prime numbers need to be congruent to 3 modulus 4. In practice, this PRNG is -known to be slow and not efficient for the generation of random numbers. For -current GPU cards, the modulus operation is the most time consuming -operation. So in order to obtain quite reasonable performances, it is required + +It is possible to build a cryptographically secure PRNG based on the previous +algorithm (Algorithm~\ref{algo:gpu_kernel2}). Due to Proposition~\ref{cryptopreuve}, +it simply consists in replacing +the {\it xor-like} PRNG by a cryptographically secure one. +We have chosen the Blum Blum Shum generator~\cite{BBS} (usually denoted by BBS) having the form: +$$x_{n+1}=x_n^2~ mod~ M$$ where $M$ is the product of two prime numbers. These +prime numbers need to be congruent to 3 modulus 4. BBS is +very slow and only usable for cryptographic applications. + + +The modulus operation is the most time consuming operation for +current GPU cards. +So in order to obtain quite reasonable performances, it is required to use only modulus on 32 bits integer numbers. Consequently $x_n^2$ need to be less than $2^{32}$ and the number $M$ need to be less than $2^{16}$. So in -pratice we can choose prime numbers around 256 that are congruent to 3 modulus +practice we can choose prime numbers around 256 that are congruent to 3 modulus 4. With 32 bits numbers, only the 4 least significant bits of $x_n$ can be -chosen (the maximum number of undistinguishing is less or equals to +chosen (the maximum number of indistinguishable bits is lesser than or equals to $log_2(log_2(x_n))$). So to generate a 32 bits number, we need to use 8 times -the BBS algorithm, with different combinations of $M$ is required. +the BBS algorithm with different combinations of $M$. Currently this PRNG does not succeed to pass all the tests of TestU01. +\subsection{A Secure Asymetric Cryptosystem} + + + + \section{Conclusion} In this paper we have presented a new class of PRNGs based on chaotic -iterations. We have proven that these PRNGs are chaotic in the sense of Devenay. +iterations. We have proven that these PRNGs are chaotic in the sense of Devaney. We also propose a PRNG cryptographically secure and its implementation on GPU. An efficient implementation on GPU based on a xor-like PRNG allows us to generate a huge number of pseudorandom numbers per second (about -20Gsample/s). This PRNG succeeds to pass the hardest batteries of TestU01. +20Gsamples/s). This PRNG succeeds to pass the hardest batteries of TestU01. In future work we plan to extend this work for parallel PRNG for clusters or grid computing. We also plan to improve the BBS version in order to succeed all