blob: f1984f05d8fa0bb68d6ca548643910bb2759471f [file] [log] [blame]
#!/bin/bash
#-------------------------------------------------------------
#
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#-------------------------------------------------------------
# ./genRandLogRegData_LTStats.sh myperftest SPARK 1 LOGISTIC &>> logs/genBinomialData.out
# ./genRandLogRegData_LTStats.sh myperftest SPARK 150 LOGISTIC &>> logs/genMultinomialData.out
# ./genRandLogRegData_LTStats.sh myperftest SPARK 1 REGRESSION &>> logs/genRegressionData.out
if [ "$1" == "" -o "$2" == "" ]; then echo "Usage: $0 <hdfsDataDir> <MR | SPARK | ECHO> e.g. $0 perftest SPARK" ; exit 1 ; fi
if [ "$2" == "SPARK" ]; then CMD="./sparkDML.sh "; DASH="-"; elif [ "$2" == "MR" ]; then CMD="hadoop jar SystemML.jar " ; else CMD="echo " ; fi
if [ "$3" == "1" ]; then BASE=$1/binomial ; else BASE=$1/multinomial ; fi
if [ "$4" == "LOGISTIC" ]; then DATAGEN_SCRIPT=../datagen/genRandData4LogReg_LTstats.dml ; else DATAGEN_SCRIPT=../datagen/genRandData4LinearReg_LTstats.dml ; fi
NUM_CATEGORY=$3
FORMAT="binary"
DENSE_SP=0.9
SPARSE_SP=0.01
export HADOOP_CLIENT_OPTS="-Xmx2048m -Xms2048m -Xmn256m"
#generate XS scenarios (80MB)
SUFFIX=10k_1k
${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=10000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$DENSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_dense X=${BASE}/X${SUFFIX}_dense Y=${BASE}/y${SUFFIX}_dense Xt=${BASE}/X${SUFFIX}_dense_test Yt=${BASE}/y${SUFFIX}_dense_test fmt=$FORMAT
${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=10000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$SPARSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_sparse X=${BASE}/X${SUFFIX}_sparse Y=${BASE}/y${SUFFIX}_sparse Xt=${BASE}/X${SUFFIX}_sparse_test Yt=${BASE}/y${SUFFIX}_sparse_test fmt=$FORMAT
##generate S scenarios (800MB)
#SUFFIX=100k_1k
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=100000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$DENSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_dense X=${BASE}/X${SUFFIX}_dense Y=${BASE}/y${SUFFIX}_dense Xt=${BASE}/X${SUFFIX}_dense_test Yt=${BASE}/y${SUFFIX}_dense_test fmt=$FORMAT
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=100000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$SPARSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_sparse X=${BASE}/X${SUFFIX}_sparse Y=${BASE}/y${SUFFIX}_sparse Xt=${BASE}/X${SUFFIX}_sparse_test Yt=${BASE}/y${SUFFIX}_sparse_test fmt=$FORMAT
#
##generate M scenarios (8GB)
#SUFFIX=1M_1k
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=1000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$DENSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_dense X=${BASE}/X${SUFFIX}_dense Y=${BASE}/y${SUFFIX}_dense Xt=${BASE}/X${SUFFIX}_dense_test Yt=${BASE}/y${SUFFIX}_dense_test fmt=$FORMAT
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=1000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$SPARSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_sparse X=${BASE}/X${SUFFIX}_sparse Y=${BASE}/y${SUFFIX}_sparse Xt=${BASE}/X${SUFFIX}_sparse_test Yt=${BASE}/y${SUFFIX}_sparse_test fmt=$FORMAT
#
##generate L scenarios (80GB)
#SUFFIX=10M_1k
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=10000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$DENSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_dense X=${BASE}/X${SUFFIX}_dense Y=${BASE}/y${SUFFIX}_dense Xt=${BASE}/X${SUFFIX}_dense_test Yt=${BASE}/y${SUFFIX}_dense_test fmt=$FORMAT
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=10000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$SPARSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_sparse X=${BASE}/X${SUFFIX}_sparse Y=${BASE}/y${SUFFIX}_sparse Xt=${BASE}/X${SUFFIX}_sparse_test Yt=${BASE}/y${SUFFIX}_sparse_test fmt=$FORMAT
#
##generate XL scenarios (800GB)
#SUFFIX=100M_1k
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=100000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$DENSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_dense X=${BASE}/X${SUFFIX}_dense Y=${BASE}/y${SUFFIX}_dense Xt=${BASE}/X${SUFFIX}_dense_test Yt=${BASE}/y${SUFFIX}_dense_test fmt=$FORMAT
#${CMD} -f $DATAGEN_SCRIPT $DASH-nvargs N=100000000 nf=1000 Nt=5000 nc=$NUM_CATEGORY Xmin=0.0 Xmax=1.0 spars=$SPARSE_SP avgLTmin=-3.0 avgLTmax=1.0 stdLT=1.25 iceptmin=0.0 iceptmax=0.0 B=${BASE}/w${SUFFIX}_sparse X=${BASE}/X${SUFFIX}_sparse Y=${BASE}/y${SUFFIX}_sparse Xt=${BASE}/X${SUFFIX}_sparse_test Yt=${BASE}/y${SUFFIX}_sparse_test fmt=$FORMAT
#