mirror of git://gcc.gnu.org/git/gcc.git
				
				
				
			
		
			
				
	
	
		
			391 lines
		
	
	
		
			12 KiB
		
	
	
	
		
			Java
		
	
	
	
			
		
		
	
	
			391 lines
		
	
	
		
			12 KiB
		
	
	
	
		
			Java
		
	
	
	
| /* java.util.Random
 | |
|    Copyright (C) 1998, 1999, 2000, 2001 Free Software Foundation, Inc.
 | |
| 
 | |
| This file is part of GNU Classpath.
 | |
| 
 | |
| GNU Classpath is free software; you can redistribute it and/or modify
 | |
| it under the terms of the GNU General Public License as published by
 | |
| the Free Software Foundation; either version 2, or (at your option)
 | |
| any later version.
 | |
| 
 | |
| GNU Classpath is distributed in the hope that it will be useful, but
 | |
| WITHOUT ANY WARRANTY; without even the implied warranty of
 | |
| MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the GNU
 | |
| General Public License for more details.
 | |
| 
 | |
| You should have received a copy of the GNU General Public License
 | |
| along with GNU Classpath; see the file COPYING.  If not, write to the
 | |
| Free Software Foundation, Inc., 59 Temple Place, Suite 330, Boston, MA
 | |
| 02111-1307 USA.
 | |
| 
 | |
| Linking this library statically or dynamically with other modules is
 | |
| making a combined work based on this library.  Thus, the terms and
 | |
| conditions of the GNU General Public License cover the whole
 | |
| combination.
 | |
| 
 | |
| As a special exception, the copyright holders of this library give you
 | |
| permission to link this library with independent modules to produce an
 | |
| executable, regardless of the license terms of these independent
 | |
| modules, and to copy and distribute the resulting executable under
 | |
| terms of your choice, provided that you also meet, for each linked
 | |
| independent module, the terms and conditions of the license of that
 | |
| module.  An independent module is a module which is not derived from
 | |
| or based on this library.  If you modify this library, you may extend
 | |
| this exception to your version of the library, but you are not
 | |
| obligated to do so.  If you do not wish to do so, delete this
 | |
| exception statement from your version. */
 | |
| 
 | |
| 
 | |
| package java.util;
 | |
| 
 | |
| /**
 | |
|  * This class generates pseudorandom numbers.  It uses the same
 | |
|  * algorithm as the original JDK-class, so that your programs behave
 | |
|  * exactly the same way, if started with the same seed.
 | |
|  *
 | |
|  * The algorithm is described in <em>The Art of Computer Programming,
 | |
|  * Volume 2</em> by Donald Knuth in Section 3.2.1.
 | |
|  *
 | |
|  * If two instances of this class are created with the same seed and
 | |
|  * the same calls to these classes are made, they behave exactly the
 | |
|  * same way.  This should be even true for foreign implementations
 | |
|  * (like this), so every port must use the same algorithm as described
 | |
|  * here.
 | |
|  *
 | |
|  * If you want to implement your own pseudorandom algorithm, you
 | |
|  * should extend this class and overload the <code>next()</code> and
 | |
|  * <code>setSeed(long)</code> method.  In that case the above
 | |
|  * paragraph doesn't apply to you.
 | |
|  *
 | |
|  * This class shouldn't be used for security sensitive purposes (like 
 | |
|  * generating passwords or encryption keys.  See <code>SecureRandom</code>
 | |
|  * in package <code>java.security</code> for this purpose.
 | |
|  *
 | |
|  * For simple random doubles between 0.0 and 1.0, you may consider using
 | |
|  * Math.random instead.
 | |
|  *
 | |
|  * @see java.security.SecureRandom
 | |
|  * @see Math#random()
 | |
|  * @author Jochen Hoenicke */
 | |
| public class Random implements java.io.Serializable
 | |
| {
 | |
|   /**
 | |
|    * True if the next nextGaussian is available.  This is used by
 | |
|    * nextGaussian, which generates two gaussian numbers by one call,
 | |
|    * and returns the second on the second call.  
 | |
|    * @see #nextGaussian.  */
 | |
|   private boolean haveNextNextGaussian;
 | |
|   /**
 | |
|    * The next nextGaussian if available.  This is used by nextGaussian,
 | |
|    * which generates two gaussian numbers by one call, and returns the
 | |
|    * second on the second call.
 | |
|    * @see #nextGaussian.
 | |
|    */
 | |
|   private double nextNextGaussian;
 | |
|   /**
 | |
|    * The seed.  This is the number set by setSeed and which is used
 | |
|    * in next.
 | |
|    * @see #next
 | |
|    */
 | |
|   private long seed;
 | |
| 
 | |
|   private static final long serialVersionUID = 3905348978240129619L;
 | |
| 
 | |
|   /**
 | |
|    * Creates a new pseudorandom number generator.  The seed is initialized
 | |
|    * to the current time as follows.
 | |
|    * <pre>
 | |
|    * setSeed(System.currentTimeMillis());
 | |
|    * </pre>
 | |
|    * @see System#currentTimeMillis()
 | |
|    */
 | |
|   public Random()
 | |
|   {
 | |
|     setSeed(System.currentTimeMillis());
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Creates a new pseudorandom number generator, starting with the
 | |
|    * specified seed. This does:
 | |
|    * <pre>
 | |
|    * setSeed(seed);
 | |
|    * </pre>
 | |
|    * @param seed the initial seed.
 | |
|    */
 | |
|   public Random(long seed)
 | |
|   {
 | |
|     setSeed(seed);
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Sets the seed for this pseudorandom number generator.  As described
 | |
|    * above, two instances of the same random class, starting with the
 | |
|    * same seed, should produce the same results, if the same methods
 | |
|    * are called.  The implementation for java.util.Random is:
 | |
|    * <pre>
 | |
|    * public synchronized void setSeed(long seed) {
 | |
|    *     this.seed = (seed ^ 0x5DEECE66DL) & ((1L << 48) - 1);
 | |
|    *     haveNextNextGaussian = false;
 | |
|    * }
 | |
|    * </pre>
 | |
|    */
 | |
|   public synchronized void setSeed(long seed)
 | |
|   {
 | |
|     this.seed = (seed ^ 0x5DEECE66DL) & ((1L << 48) - 1);
 | |
|     haveNextNextGaussian = false;
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom number.  This returns
 | |
|    * an int value whose <code>bits</code> low order bits are
 | |
|    * independent chosen random bits (0 and 1 are equally likely).
 | |
|    * The implementation for java.util.Random is:
 | |
|    * <pre>
 | |
|    * protected synchronized int next(int bits) {
 | |
|    *     seed = (seed * 0x5DEECE66DL + 0xBL) & ((1L << 48) - 1);
 | |
|    *     return (int) (seed >>> (48 - bits));
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @param bits the number of random bits to generate.  Must be in range
 | |
|    * 1..32.
 | |
|    * @return the next pseudorandom value.
 | |
|    * @since JDK1.1
 | |
|    */
 | |
|   protected synchronized int next(int bits)
 | |
|     /*{ require { 1 <= bits && bits <=32 :: 
 | |
|        "bits "+bits+" not in range [1..32]" } } */
 | |
|   {
 | |
|     seed = (seed * 0x5DEECE66DL + 0xBL) & ((1L << 48) - 1);
 | |
|     return (int) (seed >>> (48 - bits));
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Fills an array of bytes with random numbers.  All possible values
 | |
|    * are (approximately) equally likely.
 | |
|    * The JDK documentation gives no implementation, but it seems to be:
 | |
|    * <pre>
 | |
|    * public void nextBytes(byte[] bytes) {
 | |
|    *     for (int i=0; i< bytes.length; i+=4) {
 | |
|    *         int random = next(32);
 | |
|    *         for (int j=0; i+j< bytes.length && j<4; j++)
 | |
|    *             bytes[i+j] = (byte) (random & 0xff)
 | |
|    *             random >>= 8;
 | |
|    *         }
 | |
|    *     }
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @param bytes The byte array that should be filled.
 | |
|    * @since JDK1.1
 | |
|    */
 | |
|   public void nextBytes(byte[] bytes)
 | |
|     /*{ require { bytes != null :: "bytes is null"; } } */
 | |
|   {
 | |
|     int random;
 | |
|     /* Do a little bit unrolling of the above algorithm. */
 | |
|     int max = bytes.length & ~0x3;
 | |
|     for (int i = 0; i < max; i += 4)
 | |
|       {
 | |
| 	random = next(32);
 | |
| 	bytes[i] = (byte) random;
 | |
| 	bytes[i + 1] = (byte) (random >> 8);
 | |
| 	bytes[i + 2] = (byte) (random >> 16);
 | |
| 	bytes[i + 3] = (byte) (random >> 24);
 | |
|       }
 | |
|     if (max < bytes.length)
 | |
|       {
 | |
| 	random = next(32);
 | |
| 	for (int j = max; j < bytes.length; j++)
 | |
| 	  {
 | |
| 	    bytes[j] = (byte) random;
 | |
| 	    random >>= 8;
 | |
| 	  }
 | |
|       }
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom number.  This returns
 | |
|    * an int value whose 32 bits are independent chosen random bits
 | |
|    * (0 and 1 are equally likely).  The implementation for
 | |
|    * java.util.Random is:
 | |
|    * <pre>
 | |
|    * public int nextInt() {
 | |
|    *     return next(32);
 | |
|    * }
 | |
|    * </pre>
 | |
|    *
 | |
|    * @return the next pseudorandom value.  */
 | |
|   public int nextInt()
 | |
|   {
 | |
|     return next(32);
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom number.  This returns
 | |
|    * a value between 0(inclusive) and <code>n</code>(exclusive), and
 | |
|    * each value has the same likelihodd (1/<code>n</code>).
 | |
|    * (0 and 1 are equally likely).  The implementation for
 | |
|    * java.util.Random is:
 | |
|    * <pre>
 | |
|    * public int nextInt(int n) {
 | |
|    *     if (n<=0)
 | |
|    *         throw new IllegalArgumentException("n must be positive");
 | |
|    *     if ((n & -n) == n)  // i.e., n is a power of 2
 | |
|    *         return (int)((n * (long)next(31)) >> 31);
 | |
|    *     int bits, val;
 | |
|    *     do {
 | |
|    *         bits = next(32);
 | |
|    *         val = bits % n;
 | |
|    *     } while(bits - val + (n-1) < 0);
 | |
|    *     return val;
 | |
|    * }
 | |
|    * </pre>
 | |
|    * This algorithm would return every value with exactly the same 
 | |
|    * probability, if the next()-method would be a perfect random number
 | |
|    * generator.
 | |
|    * 
 | |
|    * The loop at the bottom only accepts a value, if the random
 | |
|    * number was between 0 and the highest number less then 1<<31,
 | |
|    * which is divisible by n.  The probability for this is high for small
 | |
|    * n, and the worst case is 1/2 (for n=(1<<30)+1).
 | |
|    *
 | |
|    * The special treatment for n = power of 2, selects the high bits of 
 | |
|    * the random number (the loop at the bottom would select the low order
 | |
|    * bits).  This is done, because the low order bits of linear congruential
 | |
|    * number generators (like the one used in this class) are known to be 
 | |
|    * ``less random'' than the high order bits.
 | |
|    *
 | |
|    * @param n the upper bound.
 | |
|    * @exception IllegalArgumentException if the given upper bound is negative
 | |
|    * @return the next pseudorandom value.  
 | |
|    */
 | |
|   public int nextInt(int n)
 | |
|     /*{ require { n > 0 :: "n must be positive"; } } */
 | |
|   {
 | |
|     if (n <= 0)
 | |
|       throw new IllegalArgumentException("n must be positive");
 | |
|     if ((n & -n) == n)		// i.e., n is a power of 2
 | |
|       return (int) ((n * (long) next(31)) >> 31);
 | |
|     int bits, val;
 | |
|     do
 | |
|       {
 | |
| 	bits = next(32);
 | |
| 	val = bits % n;
 | |
|       }
 | |
|     while (bits - val + (n - 1) < 0);
 | |
|     return val;
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom long number.  All bits of this
 | |
|    * long are independently chosen and 0 and 1 have equal likelihood.
 | |
|    * The implementation for java.util.Random is:
 | |
|    * <pre>
 | |
|    * public long nextLong() {
 | |
|    *     return ((long)next(32) << 32) + next(32);
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @return the next pseudorandom value.  
 | |
|    */
 | |
|   public long nextLong()
 | |
|   {
 | |
|     return ((long) next(32) << 32) + next(32);
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom boolean.  True and false have
 | |
|    * the same probability.  The implementation is:
 | |
|    * <pre>
 | |
|    * public boolean nextBoolean() {
 | |
|    *     return next(1) != 0;
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @return the next pseudorandom boolean.
 | |
|    */
 | |
|   public boolean nextBoolean()
 | |
|   {
 | |
|     return next(1) != 0;
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom float uniformly distributed
 | |
|    * between 0.0f (inclusive) and 1.0 (exclusive).  The
 | |
|    * implementation is as follows.
 | |
|    * <pre>
 | |
|    * public float nextFloat() {
 | |
|    *     return next(24) / ((float)(1 << 24));
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @return the next pseudorandom float.  */
 | |
|   public float nextFloat()
 | |
|   {
 | |
|     return next(24) / ((float) (1 << 24));
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom double uniformly distributed
 | |
|    * between 0.0f (inclusive) and 1.0 (exclusive).  The
 | |
|    * implementation is as follows.
 | |
|    * <pre>
 | |
|    * public double nextDouble() {
 | |
|    *     return (((long)next(26) << 27) + next(27)) / (double)(1 << 53);
 | |
|    * }
 | |
|    * </pre>
 | |
|    * @return the next pseudorandom double.  */
 | |
|   public double nextDouble()
 | |
|   {
 | |
|     return (((long) next(26) << 27) + next(27)) / (double) (1L << 53);
 | |
|   }
 | |
| 
 | |
|   /**
 | |
|    * Generates the next pseudorandom, Gaussian (normally) distributed 
 | |
|    * double value, with mean 0.0 and standard deviation 1.0.
 | |
|    * The algorithm is as follows.
 | |
|    * <pre>
 | |
|    * public synchronized double nextGaussian() {
 | |
|    *     if (haveNextNextGaussian) {
 | |
|    *         haveNextNextGaussian = false;
 | |
|    *         return nextNextGaussian;
 | |
|    *     } else {
 | |
|    *         double v1, v2, s;
 | |
|    *         do {
 | |
|    *             v1 = 2 * nextDouble() - 1; // between -1.0 and 1.0
 | |
|    *             v2 = 2 * nextDouble() - 1; // between -1.0 and 1.0
 | |
|    *             s = v1 * v1 + v2 * v2;
 | |
|    *         } while (s >= 1);
 | |
|    *         double norm = Math.sqrt(-2 * Math.log(s)/s);
 | |
|    *         nextNextGaussian = v2 * norm;
 | |
|    *         haveNextNextGaussian = true;
 | |
|    *         return v1 * norm;
 | |
|    *     }
 | |
|    * }
 | |
|    * </pre>
 | |
|    * This is described in section 3.4.1 of <em>The Art of Computer
 | |
|    * Programming, Volume 2</em> by Donald Knuth.
 | |
|    *
 | |
|    * @return the next pseudorandom Gaussian distributed double.  
 | |
|    */
 | |
|   public synchronized double nextGaussian()
 | |
|   {
 | |
|     if (haveNextNextGaussian)
 | |
|       {
 | |
| 	haveNextNextGaussian = false;
 | |
| 	return nextNextGaussian;
 | |
|       }
 | |
|     else
 | |
|       {
 | |
| 	double v1, v2, s;
 | |
| 	do
 | |
| 	  {
 | |
| 	    v1 = 2 * nextDouble() - 1;	// between -1.0 and 1.0
 | |
| 	    v2 = 2 * nextDouble() - 1;	// between -1.0 and 1.0
 | |
| 	    s = v1 * v1 + v2 * v2;
 | |
| 	  }
 | |
| 	while (s >= 1);
 | |
| 	double norm = Math.sqrt(-2 * Math.log(s) / s);
 | |
| 	nextNextGaussian = v2 * norm;
 | |
| 	haveNextNextGaussian = true;
 | |
| 	return v1 * norm;
 | |
|       }
 | |
|   }
 | |
| }
 |