How to dock in DOCK3.8: Difference between revisions
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= IMPORTANT - UPDATED DOCUMENTATION = | |||
https://wiki.docking.org/index.php/SUBDOCK_DOCK3.8 | |||
= OLD DOCUMENTATION = | |||
How to dock in DOCK 3.8.0 | How to dock in DOCK 3.8.0 | ||
Related page: Docking Analysis with DOCK 3.8 | |||
http://wiki.docking.org/index.php/Docking_Analysis_in_DOCK3.8 | |||
DOCK 3.8. | [[How to install DOCK 3.8]] | ||
== Checkpointing & Restartability in DOCK3.8 == | |||
DOCK 3.8 can be interrupted safely and restarted, which allows more flexibility when submitting docking jobs. | |||
For example, you could set QSUB_ARGS="-l s_rt=00:05:00 -l h_rt=00:07:00" (or SBATCH_ARGS="--time=00:07:00") | For example, you could set QSUB_ARGS="-l s_rt=00:05:00 -l h_rt=00:07:00" (or SBATCH_ARGS="--time=00:07:00") | ||
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Another advantage is that the job can be interrupted at any time on AWS and it will checkpoint and be restartable. | Another advantage is that the job can be interrupted at any time on AWS and it will checkpoint and be restartable. | ||
== Running the Script == | == Submitting Jobs/Running the Script == | ||
New subdock scripts are here: | New subdock scripts are here: | ||
Line 39: | Line 51: | ||
An NFS path to a DOCK binary executable (NOT a wrapper script). | An NFS path to a DOCK binary executable (NOT a wrapper script). | ||
==== DOCKFILES ==== | ==== DOCKFILES ==== | ||
An NFS path to the dockfiles (INDOCK, spheres, receptor files, grids, etc.) being used for this docking run. Note that INDOCK is expected to be part of these files | An NFS path to the dockfiles (INDOCK, spheres, receptor files, grids, etc.) being used for this docking run. Note that INDOCK is expected to be part of these files. | ||
=== Optional Arguments === | === Optional Arguments === | ||
Line 69: | Line 73: | ||
Additional arguments to provide to sge's qsub, if using the sge version of subdock.bash | Additional arguments to provide to sge's qsub, if using the sge version of subdock.bash | ||
==== SHRTCACHE_USE_ENV ==== | |||
At script runtime, have SHRTCACHE be set to the value of another environment variable, whose name is the value of SHRTCACHE_USE_ENV. This is useful for example if the scheduler sets up a directory for your job to perform work in, e.g Wynton's TMPDIR. | |||
== Examples == | == Examples == | ||
Line 75: | Line 83: | ||
<nowiki> | <nowiki> | ||
export INPUT_SOURCE=example.in | export INPUT_SOURCE=/path/to/example.in | ||
export | export EXPORT_DEST=/path/to/output | ||
export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 | export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 | ||
export DOCKFILES=dockfiles.example | export DOCKFILES=/path/to/dockfiles.example | ||
export SHRTCACHE=/dev/shm | export SHRTCACHE=/dev/shm | ||
export LONGCACHE=/tmp | export LONGCACHE=/tmp | ||
export SBATCH_ARGS="--time=02:00:00" | export SBATCH_ARGS="--time=02:00:00" | ||
$DOCKBASE/docking/submit/slurm/subdock.bash | bash $DOCKBASE/docking/submit/slurm/subdock.bash | ||
</nowiki> | </nowiki> | ||
Line 89: | Line 97: | ||
<nowiki> | <nowiki> | ||
export INPUT_SOURCE=example.in | export INPUT_SOURCE=/path/to/example.in | ||
export | export EXPORT_DEST=/path/to/output | ||
export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 | export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 | ||
export DOCKFILES=dockfiles.example | export DOCKFILES=/path/to/dockfiles.example | ||
export | export SHRTCACHE_USE_ENV=TMPDIR | ||
export LONGCACHE=/scratch | export LONGCACHE=/scratch | ||
export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00" | export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00" | ||
$DOCKBASE/docking/submit/sge/subdock.bash | bash $DOCKBASE/docking/submit/sge/subdock.bash | ||
</nowiki> | </nowiki> | ||
== Note on using SHRTCACHE and LONGCACHE == | |||
You should avoid using global networked directories for SHRTCACHE, these would be directories prefixed with /nfs/ on BKS and directories starting with /wynton/ on wynton. SHRTCACHE is used for writing out logs & job output in real time- a high latency network disk is inappropriate for this task. If running many jobs in parallel, there is a good chance that the network disk will be overloaded from all the jobs trying to send write requests simultaneously. I feel the difference between RAM, network directories and local directories is misunderstood, so I'll explain it with an analogy: | |||
Imagine you just finished washing your clothes and you need to put them away. | |||
Writing data to RAM (or /dev/shm) is like dropping them in a basket next to the washing machine. | |||
Writing data to your local disk is like walking to your closet to put them away. | |||
Writing data to a network disk is like walking to your neighbor's house and putting them away in his closet. | |||
Now, networked disks don't perform much worse than local disks (your neighbor is just next door, after all), but what if everyone in the neighborhood put their stuff away in your neighbor's closet? For one there would be a line of people out his front door, meaning it would take you way longer to put away your clothes. Your neighbor also would probably not be happy with this arrangement, just like the wynton admins will not be happy if you set SHRTCACHE/LONGCACHE to a /wynton directory. | |||
== Developer Example: Building your own db2.tgz files & Submitting jobs == | |||
What you need: | |||
# One or more db2(.gz) files | |||
# An nfs directory(s) to store: | |||
## docking input/output | |||
## dockfiles | |||
## dock executable | |||
# subdock & rundock scripts | |||
Create a list of all the db2 files you want to run docking against. The example below is merely a suggestion, make the list in any way you please so long as each entry is a *full* path (relative to your working directory) to a db2 (or db2.gz) file. | |||
<nowiki> | |||
find $MY_DB2_SOURCE -type f -name "*.db2*" > my_db2_list</nowiki> | |||
Split this list into reasonably sized chunks, our standard is 5000 but you can make them as large or small as you like. Do be careful about making the chunks larger- 5000 db2s is already quite heavy. | |||
<nowiki> | |||
>> split -a 3 --lines=5000 my_db2_list db2_chunk. | |||
>> ls | |||
db2_chunk_aaa | |||
db2_chunk_aab | |||
db2_chunk_aac | |||
... | |||
my_db2_list</nowiki> | |||
Create a db2.tgz archive from each of these lists. | |||
<nowiki> | |||
for db2_chunk in db2_chunk.*; do | |||
tar -czf $db2_chunk.db2.tgz --files-from $db2_chunk | |||
done</nowiki> | |||
If you already have premade db2.tgz files, for example from the zinc22 3D archive, start the tutorial here. | |||
Create a list of every db2.tgz archive. Each job will evaluate one db2.tgz archive. Again, this example is a suggestion applicable only if you've been following the tutorial up to this point. | |||
<nowiki> | |||
find . -type f -name "db2_chunk.*.db2.tgz" > job_input_list</nowiki> | |||
Now all you need to do is specify your docking parameters and launch the jobs. Set INPUT_SOURCE to be the job_input_list created in the previous step. | |||
SGE | |||
<nowiki> | |||
export DOCKEXEC=<dock executable path> | |||
export DOCKFILES=<dockfiles path> | |||
export EXPORT_DEST=<output directory path> | |||
# optional arguments for the job controller. Note that these arguments are examples and not the only configuration recommended | |||
export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00 -l mem_free=2G" | |||
export INPUT_SOURCE=job_input_list | |||
bash <scripts directory>/sge/subdock.bash</nowiki> | |||
SLURM | |||
<nowiki> | |||
export DOCKEXEC=<dock executable path> | |||
export DOCKFILES=<dockfiles path> | |||
export EXPORT_DEST=<output directory path> | |||
export SBATCH_ARGS="--time=00:30:00 --mem-per-cpu=2G" | |||
export INPUT_SOURCE=job_input_list | |||
bash <scripts directory>/slurm/subdock.bash</nowiki> | |||
=== Large Docking Jobs === | |||
If your list of db2.tgz files is very large you may want to further split it. Each db2.tgz file in the job_input_list represents a job submitted to the queue, and often there is a limit on how many jobs can be queued at once. | |||
In order to avoid this problem, we will need an automatic solution to split up our job_input_list and submit batches of jobs only when there is space left in the queue. | |||
For example, imagine we want to submit in batches of 10,000 and limit total jobs to 50,000 (with a package size of 5000 this is 250M molecules in the queue maximum, submitting 50M at a time). The example I have shows how you would do this in slurm. | |||
<nowiki> | |||
#!/bin/bash | |||
### submit_all_slurm.bash | |||
BINDIR=$(dirname $0) | |||
BATCH_SIZE=10000 | |||
MAX_QUEUED=50000 | |||
# the script is more portable if we provide the various parameters as arguments instead of hard-coding | |||
INPUT_LIST=$1 | |||
BASE_EXPORT_DEST=$2 # this is the directory where further subdirectories will be created that contain docking job results | |||
export DOCKEXEC=$3 | |||
export DOCKFILES=$4 | |||
# we can use our EXPORT_DEST as staging grounds for our input | |||
mkdir -p $BASE_EXPORT_DEST/input | |||
split --lines=$BATCH_SIZE -a 3 -n $INPUT_LIST $BASE_EXPORT_DEST/input/job_input. | |||
export SBATCH_ARGS="--time=00:30:00 --mem-per-cpu=2G -J dock" | |||
for job_input in $BASE_EXPORT_DEST/input/job_input.*; do | |||
export INPUT_SOURCE=$job_input | |||
input_num=$(printf $job_input | cut -d'.' -f2) # get the suffix of the split filename | |||
export EXPORT_DEST=$BASE_EXPORT_DEST/$input_num | |||
# loop forever | |||
while [ -z ]; do | |||
# counts how many jobs in total are pending or running on this user | |||
njobs=$(squeue -u $(whoami) -h -t pending,running -r | wc -l) | |||
# if you want to instead set a limit on how many *dock* jobs are pending or running you would just run the command through a filter | |||
# njobs=$(squeue -u $(whoami) -h -t pending,running -r | grep "dock" | wc -l) | |||
if [ $njobs -lt $((MAX_QUEUED-BATCH_SIZE)) ]; then | |||
break | |||
fi | |||
sleep 10 | |||
done | |||
# the slurm subdock and rundock scripts need to live next to this script in a directory named "slurm" | |||
bash $BINDIR/slurm/subdock.bash | |||
done</nowiki> | |||
This script will run until all jobs are submitted, so for very large jobs you may want to keep the process alive in a screen. | |||
== Tip: Using Wynton's $TMPDIR == | |||
<b>Doing this with SHRTCACHE_USE_ENV</b> | |||
Before you run subdock, simply export the SHRTCACHE_USE_ENV option. | |||
<nowiki> | |||
export SHRTCACHE_USE_ENV=TMPDIR</nowiki> | |||
This will cause the script to use the $TMPDIR variable for SHRTCACHE. | |||
== Example: Running a lot of docking jobs == | == Example: Running a lot of docking jobs == | ||
Line 114: | Line 274: | ||
* 2. set up INDOCK and dockfiles. rename dockfiles to dockfiles.$indockhash. On some nodes, the shasum command is called by sha1sum. Ultimately, renaming the dockfiles to a unique dockfiles is key. | * 2. set up INDOCK and dockfiles. rename dockfiles to dockfiles.$indockhash. On some nodes, the shasum command is called by sha1sum. Ultimately, renaming the dockfiles to a unique dockfiles is key. | ||
Note: As of 3/19/2021, this is no longer necessary | |||
bash | bash | ||
indockhash=$(cat INDOCK | shasum | awk '{print substr($1, 1, 12)}') | indockhash=$(cat INDOCK | shasum | awk '{print substr($1, 1, 12)}') | ||
Line 185: | Line 348: | ||
* '''rename the dockfiles directory''' | * '''rename the dockfiles directory''' | ||
Note: As of 3/19/2021 this step is no longer necessary | |||
indockhash=$(cat INDOCK | sha1sum | awk '{print substr($1, 1, 12)}') | indockhash=$(cat INDOCK | sha1sum | awk '{print substr($1, 1, 12)}') | ||
mv dockfiles dockfiles.${indockhash} | mv dockfiles dockfiles.${indockhash} | ||
Line 195: | Line 361: | ||
# CHANGE here: path to the previously renamed dockfiles.\${indockhash} | # CHANGE here: path to the previously renamed dockfiles.\${indockhash} | ||
### Note: as of 3/19/2021 renaming your dockfiles is no longer necessary | |||
export DOCKFILES=/wynton/group/bks/work/yingyang/5HT-5a/10_AL-dock/zinc22_3d_build_3-10-2021/dockfiles.${indockhash} | export DOCKFILES=/wynton/group/bks/work/yingyang/5HT-5a/10_AL-dock/zinc22_3d_build_3-10-2021/dockfiles.${indockhash} | ||
export SHRTCACHE=/scratch | export SHRTCACHE=/scratch | ||
Line 324: | Line 491: | ||
* '''Post-processing...''' | * '''Post-processing...''' | ||
[[Category:DOCK 3.8]] |
Latest revision as of 22:28, 1 December 2022
IMPORTANT - UPDATED DOCUMENTATION
https://wiki.docking.org/index.php/SUBDOCK_DOCK3.8
OLD DOCUMENTATION
How to dock in DOCK 3.8.0
Related page: Docking Analysis with DOCK 3.8
http://wiki.docking.org/index.php/Docking_Analysis_in_DOCK3.8
Checkpointing & Restartability in DOCK3.8
DOCK 3.8 can be interrupted safely and restarted, which allows more flexibility when submitting docking jobs.
For example, you could set QSUB_ARGS="-l s_rt=00:05:00 -l h_rt=00:07:00" (or SBATCH_ARGS="--time=00:07:00") so that each docking job will only run for 5 minutes before being interrupted. The new subdock.bash script allows submitting the same set of jobs multiple times until they are all complete. A more pragmatic choice might be "-l s_rt=00:28:00 -l h_rt=00:30:00" to get the benefit of faster scheduling on wynton in the short.q. Another advantage is that the job can be interrupted at any time on AWS and it will checkpoint and be restartable.
Submitting Jobs/Running the Script
New subdock scripts are here:
$DOCKBASE/docking/submit/sge/subdock.bash $DOCKBASE/docking/submit/slurm/subdock.bash
subdock.bash requires a number of environmental variables to be passed as arguments.
Required Arguments
INPUT_SOURCE
INPUT_SOURCE should be either:
a) A directory containing one or more db2.tgz files OR
b) A text file containing a list of paths to db2.tgz files
A db2.tgz file should be a tarred + gzipped archive (tar -czf archive.tgz) that contains one or more db2 or db2.gz files.
A job will be launched for each db2.tgz file in INPUT_SOURCE.
EXPORT_DEST
A directory on the NFS where you would like your docking output to end up. If the directory does not exist, the script will try to create it.
DOCKEXEC
An NFS path to a DOCK binary executable (NOT a wrapper script).
DOCKFILES
An NFS path to the dockfiles (INDOCK, spheres, receptor files, grids, etc.) being used for this docking run. Note that INDOCK is expected to be part of these files.
Optional Arguments
SHRTCACHE
The directory DOCK will perform it's work in. Files saved to this directory will be deleted once the docking job has concluded. By default this is /scratch. If /scratch is not available, change this to something else.
LONGCACHE
The directory DOCK will store files that are shared between multiple docking jobs. Files saved to this directory (dockexec and dockfiles) will persist on compute nodes until they are deleted by hand or an automated culling process. By default this directory is /scratch.
SBATCH_ARGS
Additional arguments to provide to slurm's sbatch, if using the slurm version of subdock.bash.
QSUB_ARGS
Additional arguments to provide to sge's qsub, if using the sge version of subdock.bash
SHRTCACHE_USE_ENV
At script runtime, have SHRTCACHE be set to the value of another environment variable, whose name is the value of SHRTCACHE_USE_ENV. This is useful for example if the scheduler sets up a directory for your job to perform work in, e.g Wynton's TMPDIR.
Examples
BKS Example
export INPUT_SOURCE=/path/to/example.in export EXPORT_DEST=/path/to/output export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 export DOCKFILES=/path/to/dockfiles.example export SHRTCACHE=/dev/shm export LONGCACHE=/tmp export SBATCH_ARGS="--time=02:00:00" bash $DOCKBASE/docking/submit/slurm/subdock.bash
Wynton Example
export INPUT_SOURCE=/path/to/example.in export EXPORT_DEST=/path/to/output export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 export DOCKFILES=/path/to/dockfiles.example export SHRTCACHE_USE_ENV=TMPDIR export LONGCACHE=/scratch export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00" bash $DOCKBASE/docking/submit/sge/subdock.bash
Note on using SHRTCACHE and LONGCACHE
You should avoid using global networked directories for SHRTCACHE, these would be directories prefixed with /nfs/ on BKS and directories starting with /wynton/ on wynton. SHRTCACHE is used for writing out logs & job output in real time- a high latency network disk is inappropriate for this task. If running many jobs in parallel, there is a good chance that the network disk will be overloaded from all the jobs trying to send write requests simultaneously. I feel the difference between RAM, network directories and local directories is misunderstood, so I'll explain it with an analogy:
Imagine you just finished washing your clothes and you need to put them away.
Writing data to RAM (or /dev/shm) is like dropping them in a basket next to the washing machine.
Writing data to your local disk is like walking to your closet to put them away.
Writing data to a network disk is like walking to your neighbor's house and putting them away in his closet.
Now, networked disks don't perform much worse than local disks (your neighbor is just next door, after all), but what if everyone in the neighborhood put their stuff away in your neighbor's closet? For one there would be a line of people out his front door, meaning it would take you way longer to put away your clothes. Your neighbor also would probably not be happy with this arrangement, just like the wynton admins will not be happy if you set SHRTCACHE/LONGCACHE to a /wynton directory.
Developer Example: Building your own db2.tgz files & Submitting jobs
What you need:
- One or more db2(.gz) files
- An nfs directory(s) to store:
- docking input/output
- dockfiles
- dock executable
- subdock & rundock scripts
Create a list of all the db2 files you want to run docking against. The example below is merely a suggestion, make the list in any way you please so long as each entry is a *full* path (relative to your working directory) to a db2 (or db2.gz) file.
find $MY_DB2_SOURCE -type f -name "*.db2*" > my_db2_list
Split this list into reasonably sized chunks, our standard is 5000 but you can make them as large or small as you like. Do be careful about making the chunks larger- 5000 db2s is already quite heavy.
>> split -a 3 --lines=5000 my_db2_list db2_chunk. >> ls db2_chunk_aaa db2_chunk_aab db2_chunk_aac ... my_db2_list
Create a db2.tgz archive from each of these lists.
for db2_chunk in db2_chunk.*; do tar -czf $db2_chunk.db2.tgz --files-from $db2_chunk done
If you already have premade db2.tgz files, for example from the zinc22 3D archive, start the tutorial here.
Create a list of every db2.tgz archive. Each job will evaluate one db2.tgz archive. Again, this example is a suggestion applicable only if you've been following the tutorial up to this point.
find . -type f -name "db2_chunk.*.db2.tgz" > job_input_list
Now all you need to do is specify your docking parameters and launch the jobs. Set INPUT_SOURCE to be the job_input_list created in the previous step.
SGE
export DOCKEXEC=<dock executable path> export DOCKFILES=<dockfiles path> export EXPORT_DEST=<output directory path> # optional arguments for the job controller. Note that these arguments are examples and not the only configuration recommended export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00 -l mem_free=2G" export INPUT_SOURCE=job_input_list bash <scripts directory>/sge/subdock.bash
SLURM
export DOCKEXEC=<dock executable path> export DOCKFILES=<dockfiles path> export EXPORT_DEST=<output directory path> export SBATCH_ARGS="--time=00:30:00 --mem-per-cpu=2G" export INPUT_SOURCE=job_input_list bash <scripts directory>/slurm/subdock.bash
Large Docking Jobs
If your list of db2.tgz files is very large you may want to further split it. Each db2.tgz file in the job_input_list represents a job submitted to the queue, and often there is a limit on how many jobs can be queued at once.
In order to avoid this problem, we will need an automatic solution to split up our job_input_list and submit batches of jobs only when there is space left in the queue.
For example, imagine we want to submit in batches of 10,000 and limit total jobs to 50,000 (with a package size of 5000 this is 250M molecules in the queue maximum, submitting 50M at a time). The example I have shows how you would do this in slurm.
#!/bin/bash ### submit_all_slurm.bash BINDIR=$(dirname $0) BATCH_SIZE=10000 MAX_QUEUED=50000 # the script is more portable if we provide the various parameters as arguments instead of hard-coding INPUT_LIST=$1 BASE_EXPORT_DEST=$2 # this is the directory where further subdirectories will be created that contain docking job results export DOCKEXEC=$3 export DOCKFILES=$4 # we can use our EXPORT_DEST as staging grounds for our input mkdir -p $BASE_EXPORT_DEST/input split --lines=$BATCH_SIZE -a 3 -n $INPUT_LIST $BASE_EXPORT_DEST/input/job_input. export SBATCH_ARGS="--time=00:30:00 --mem-per-cpu=2G -J dock" for job_input in $BASE_EXPORT_DEST/input/job_input.*; do export INPUT_SOURCE=$job_input input_num=$(printf $job_input | cut -d'.' -f2) # get the suffix of the split filename export EXPORT_DEST=$BASE_EXPORT_DEST/$input_num # loop forever while [ -z ]; do # counts how many jobs in total are pending or running on this user njobs=$(squeue -u $(whoami) -h -t pending,running -r | wc -l) # if you want to instead set a limit on how many *dock* jobs are pending or running you would just run the command through a filter # njobs=$(squeue -u $(whoami) -h -t pending,running -r | grep "dock" | wc -l) if [ $njobs -lt $((MAX_QUEUED-BATCH_SIZE)) ]; then break fi sleep 10 done # the slurm subdock and rundock scripts need to live next to this script in a directory named "slurm" bash $BINDIR/slurm/subdock.bash done
This script will run until all jobs are submitted, so for very large jobs you may want to keep the process alive in a screen.
Tip: Using Wynton's $TMPDIR
Doing this with SHRTCACHE_USE_ENV
Before you run subdock, simply export the SHRTCACHE_USE_ENV option.
export SHRTCACHE_USE_ENV=TMPDIR
This will cause the script to use the $TMPDIR variable for SHRTCACHE.
Example: Running a lot of docking jobs
- see ZINC22:Current status for more info about where ZINC can be found.
- 1. set up sdi files
mkdir sdi export sdi=sdi ls /wynton/group/bks/zinc-22/H19/H19P0??/*.db2.tgz > $sdi/h19p0.in ls /wynton/group/bks/zinc-22/H19/H19P1??/*.db2.tgz > $sdi/h19p1.in ls /wynton/group/bks/zinc-22/H19/H19P2??/*.db2.tgz > $sdi/h19p2.in ls /wynton/group/bks/zinc-22/H19/H19P3??/*.db2.tgz > $sdi/h19p3.in and so on
- 2. set up INDOCK and dockfiles. rename dockfiles to dockfiles.$indockhash. On some nodes, the shasum command is called by sha1sum. Ultimately, renaming the dockfiles to a unique dockfiles is key.
Note: As of 3/19/2021, this is no longer necessary
bash indockhash=$(cat INDOCK | shasum | awk '{print substr($1, 1, 12)}')
- 3. super script:
export DOCKBASE=/wynton/group/bks/work/jji/DOCK export DOCKFILES=$WORKDIR/dockfiles.21751f1bb16b export DOCKEXEC=$DOCKBASE/docking/DOCK/bin/dock64 #export SHRTCACHE=/dev/shm # default export SHRTCACHE=/scratch export LONGCACHE=/scratch export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00 -l mem_free=2G" for i in sdi/*.in ; do export k=$(basename $i .in) echo k $k export INPUT_SOURCE=$PWD/$i export EXPORT_DEST=$PWD/output/$k $DOCKBASE/docking/submit/sge/subdock.bash done
- 3a. to run for first time
sh super
- 4. how to restart (to make sure complete, iterate until complete)
sh super
- 5. check which output is valid (and broken or incomplete output)
- 6. extract all blazing fast
- 7. extract mol2
more soon, under active development, Jan 28.
Appendix: Docking mono-cations of ZINC22 with DOCK3.8 on Wynton
Added by Ying 3/10/2021
To use: copy and paste the code section into terminal. Note to change the path where labelled with CHANGE this
- set up the folder to run docking.
Path to my example: /wynton/home/shoichetlab/yingyang/work/5HT-5a/10_AL-dock/zinc22_3d_build_3-10-2021
mkdir zinc22_3d_build_3-10-2021 cd zinc22_3d_build_3-10-2021
- copy INDOCK into dockfiles folder, and transfer to the created folder
cp INDOCK dockfiles scp -r INDOCK dockfiles dt2.wynton.ucsf.edu:/path_to_created_folder
- get sdi of monocations of already built ZINC22 (<= H26 heavy atom count)
Modify to your own need...
mkdir sdi foreach i (`seq 4 1 26`) set hac = `printf "H%02d" $i ` echo $i $hac touch sdi/${hac}.sdi # CHANGE this: to your need foreach tgz (`ls /wynton/group/bks/zinc-22*/${hac}/${hac}[PM]???/*-O*.db2.tgz`) ls $tgz echo $tgz >> sdi/${hac}.sdi end end
- rename the dockfiles directory
Note: As of 3/19/2021 this step is no longer necessary
indockhash=$(cat INDOCK | sha1sum | awk '{print substr($1, 1, 12)}') mv dockfiles dockfiles.${indockhash}
- write and run the super_run.sh
cat <<EOF > super_run.sh export DOCKBASE=/wynton/group/bks/soft/DOCK-3.8.0.1 export DOCKEXEC=\$DOCKBASE/docking/DOCK/bin/dock64 # CHANGE here: path to the previously renamed dockfiles.\${indockhash} ### Note: as of 3/19/2021 renaming your dockfiles is no longer necessary export DOCKFILES=/wynton/group/bks/work/yingyang/5HT-5a/10_AL-dock/zinc22_3d_build_3-10-2021/dockfiles.${indockhash} export SHRTCACHE=/scratch export LONGCACHE=/scratch export QSUB_ARGS="-l s_rt=00:28:00 -l h_rt=00:30:00 -l mem_free=2G" for i in sdi/*.sdi ; do export k=\$(basename \$i .sdi) echo k \$k export INPUT_SOURCE=$PWD/\$i export EXPORT_DEST=$PWD/output/\$k \$DOCKBASE/docking/submit/sge/subdock.bash done EOF bash super_run.sh
- keep submitting the super_run script until all db2s have been docked.
After all docking jobs finish, check the output. If no weird error, we can use a while loop to restart.
while true do export jobN=$(qstat | grep -c 'rundock') if [[ $jobN -gt 0 ]] then sleep 60 else bash super_run.sh fi done
When no new job is going to be submitted, use Ctrl+c to exit the while loop.
- extract scores from output.
cat << EOF > qsub_extract.csh #\$ -S /bin/csh #\$ -cwd #\$ -pe smp 1 #\$ -l mem_free=100G #\$ -l scratch=100G #\$ -l h_rt=50:00:00 #\$ -j yes #\$ -o extract_all.out hostname date setenv DOCKBASE /wynton/group/bks/soft/DOCK-3.8.0.1 setenv dir_in $PWD if ! (-d \$TMPDIR ) then if (-d /scratch ) then setenv TMPDIR /scratch/\$USER else setenv TMPDIR /tmp/\$USER endif mkdir -p \$TMPDIR endif pushd \$TMPDIR ls -d \${dir_in}/output/*/*/ > dirlist python \$DOCKBASE/analysis/extract_all_blazing_fast.py \ dirlist extract_all.txt -30 mv extract_all.* \$dir_in popd echo '---job info---' qstat -j \$JOB_ID echo '---complete---' EOF qsub qsub_extract.csh
Another way is to run the command from the login node (Not recommended since sorting utilizes large memory)
ls -d output/*/*/ > dirlist python $DOCKBASE/analysis/extract_all_blazing_fast.py dirlist extract_all.txt -20
- get poses in parallel
set score_file = $PWD/extract_all.sort.uniq.txt set score_name = ${score_file:t:r} set fileprefix = 'tmp_' set number_per_file = 5000 set workdir = $PWD/${score_name}_poses mkdir -p $workdir cd $workdir split --lines=$number_per_file --suffix-length=4 \ -d $score_file ${fileprefix} set num = ` ls ${fileprefix}* | wc -l ` echo "Number of score files to process:" $num cat << EOF > qsub_poses.csh #\$ -S /bin/csh #\$ -cwd #\$ -j yes #\$ -pe smp 1 #\$ -l mem_free=5G #\$ -l scratch=20G #\$ -l h_rt=25:00:00 #\$ -t 1-$num hostname date setenv DOCKBASE /wynton/group/bks/soft/DOCK-3.8.0.1 set list = \` ls \$PWD/${fileprefix}* \` set MOL = "\${list[\$SGE_TASK_ID]}" set name = \${MOL:t:r} python2 $DOCKBASE/analysis/getposes_blazing_faster.py \ "" \${MOL} $number_per_file poses_\${name}.mol2 test.mol2.gz EOF qsub qsub_poses.csh cd ../
- Post-processing...