From octave-sources-request at bevo dot che dot wisc dot edu Sun Aug 1 19:59:17 1999 Subject: Octave module for the Mersenne Twister MT19337 RNG [2/] From: Dirk Eddelbuettel To: octave-sources at bevo dot che dot wisc dot edu Cc: matumoto at math dot keio dot ac dot jp, Cokus@math.washington.edu Date: Sun, 1 Aug 1999 20:58:47 -0400 (EDT) --VTvOno/Xxd Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit My apologies for omitting the actual files in the previous mail. --VTvOno/Xxd Content-Type: application/octet-stream Content-Disposition: attachment; filename="octave-mt.tar.gz" Content-Transfer-Encoding: base64 H4sIAGPgpDcAA+xba3fbRpLN1/BX9Hpm16QMQngDtGyf0BJlMxElHZKaJCebsSGyScICAS4A itYks799b1UDkKiHJ84oyc6eRSKy2ei+Xe+qBtpZmEyXhT6ZfPHbXaZheI4jvhDC9F3j5jdd pu/YrhCe75qma/mGgy7DNbwvhPEb0lRf67wIMyG+kNPpJ8f9o/v/oldjd1dklQ2Idrst5jKR WVhIcZZEszRb8u10KZL18lxmuVjnUTIXxUKKAX7KJJFivInyQmaiORi3AEiY32bhaoWuSTqV 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charset=us-ascii Content-Transfer-Encoding: 7bit -- According to the latest figures, 43% of all statistics are totally worthless. --VTvOno/Xxd--