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cluster using grid qsub



source /home/ge2011.11/cbrc/common/settings.sh

qsub -cwd  -e error.log -b y /usr/bin/blastpgp -i N_C_ternimus_Paxillin.fa  -d /home/data/GenomeAA/blastdb/nr -e 1e-10 -m 7 -o psiblastout.xml -j 3

qstat


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