Overview¶
The package provides LSST Batch Processing Service (BPS). BPS allow large-scale workflows to execute in well-managed fashion, potentially in multiple environments.
Specifying WMS plugin¶
Many ctrl_bps subcommands described in this document delegate responsibility to perform actual operations to the specific WMS plugin and thus need to know how to find it.
The location of the plugin can be specified as listed below (in the increasing order of priority):
- by setting
WMS_SERVICE_CLASS
environment variable, - in the config file via
wmsServiceClass
setting, - using command-line option
--wms-service-class
.
If plugin location is not specified explicitly using one of the methods above,
a default value, lsst.ctrl.bps.htcondor.HTCondorService
, will be used.
Defining a submission¶
BPS configuration files are YAML files with some reserved keywords and some special features. They are meant to be syntactically flexible to allow users figure out what works best for them. The syntax and features of a BPS configuration file are described in greater detail in BPS configuration file. Below is just a minimal example to keep you going.
There are groups of information needed to define a submission to the Batch Production Service. They include the pipeline definition, the payload (information about the data in the run), submission and runtime configuration.
Describe a pipeline to BPS by telling it where to find either the pipeline YAML file (recommended)
pipelineYaml: "${OBS_SUBARU_DIR}/pipelines/DRP.yaml#processCcd"
or a pre-made file containing a serialized QuantumGraph, for example
qgraphFile: pipelines_check_w_2020_45.qgraph
Warning
The file with a serialized QuantumGraph is not portable. The file must be crated by the same stack being used when running BPS and it can be only used on the machine with the same environment.
The payload information should be familiar too as it is mostly the information normally used on the pipetask command line (input collections, output collections, etc).
The remaining information tells BPS which workflow management system is being used, how to convert Datasets and Pipetasks into compute jobs and what resources those compute jobs need.
pipelineYaml: "${OBS_SUBARU_DIR}/pipelines/DRP.yaml#processCcd"
project: dev
campaign: quick
computeSite: ncsapool
# Make sure these values correspond to ones in the bin/run_demo.sh's
# pipetask command line.
payload:
payloadName: pipelines_check
butlerConfig: ${PIPELINES_CHECK_DIR}/DATA_REPO/butler.yaml
inCollection: HSC/calib,HSC/raw/all,refcats
dataQuery: exposure=903342 AND detector=10
Submitting a run¶
Submit a run for execution with
bps submit example.yaml
If submission was successfully, it will output something like this:
Submit dir: /home/jdoe/tmp/bps/submit/shared/pipecheck/20211117T155008Z
Run Id: 176261
Run Name: u_jdoe_pipelines_check_20211117T155008Z
Additional Submit Options¶
See bps submit --help
for more detailed information. Command-line values
override values in the YAML file. (You can find more about BPS precedence order
in this section)
Pass-thru Arguments
The following options allow additions to pipetask command lines via variables.
--extra-qgraph-options
String to pass through to QuantumGraph builder. Replaces variableextraQgraphOptions
increateQuantumGraph
.--extra-init-options
String to pass through to pipetaskInit execution. Replaces variableextraInitOptions
inpipetaskInit
’srunQuantumCommand
.--extra-run-quantum-options
String to pass through to Quantum execution. For example this can be used to pass “–no-versions” to pipetask. Replaces variableextraRunQuantumOptions
inrunQuantumCommand
.
Payload Options
The following subset of pipetask
options are also usable on bps submit
command lines.
-b, --butler-config
-i, --input COLLECTION
-o, --output COLLECTION
--output-run COLLECTION
-d, --data-query QUERY
-p, --pipeline FILE
-g, --qgraph FILENAME
Checking status¶
To check the status of the submitted run, use
bps report
which should display run summary similar to the one below
X STATE %S ID OPERATOR PRJ CMPGN PAYLOAD RUN
-----------------------------------------------------------------------------------------------------------------------
RUNNING 0 176270 jdoe dev quick pcheck shared_pipecheck_20201111T14h59m26s
To see results regarding past submissions, use bps report --hist X
where
X
is the number of days past day to look at (can be a fraction). For
example
$ bps report --hist 1
STATE %S ID OPERATOR PRJ CMPGN PAYLOAD RUN
-----------------------------------------------------------------------------------------------------------------------
FAILED 0 176263 jdoe dev quick pcheck shared_pipecheck_20201111T13h51m59s
SUCCEEDED 100 176265 jdoe dev quick pcheck shared_pipecheck_20201111T13h59m26s
Use bps report --help
to see all currently supported options.
Canceling submitted jobs¶
The bps command to cancel bps-submitted jobs is
bps cancel --id <id>
or to cancel all of your runs use
bps cancel --user <username>
For example
$ bps submit pipelines_check.yaml
Submit dir: /scratch/mgower/submit/u/mgower/pipelines_check/20210414T190212Z
Run Id: 369
$ bps report
X STATE %S ID OPERATOR PRJ CMPGN PAYLOAD RUN
------------------------------------------------------------------------------------------------------------------------------------------------------------
RUNNING 0 369 mgower dev quick pcheck u_mgower_pipelines_check_20210414T190212Z
$ bps cancel --id 369
Successfully canceled: 369.0
$ bps report
X STATE %S ID OPERATOR PRJ CMPGN PAYLOAD RUN
------------------------------------------------------------------------------------------------------------------------------------------------------------
Note
Sometimes there may be a small delay between executing cancel and jobs disappearing from the WMS queue. Under normal conditions this delay is less than a minute.
This command tries to prevent someone using it to cancel non-bps jobs. It can
be forced to skip this check by including the option --skip-require-bps
.
Use this at your own risk.
If bps cancel
says “0 jobs found matching arguments”, first double check the
id for typos. If you believe there is a problem with the “is it a bps job”
check, add --skip-require-bps
.
If bps cancel
fails to delete the jobs, you can use WMS specific
executables.
Note
Using the WMS commands directly under normal circumstances is not advised as bps may someday include additional code.
Restarting a failed run¶
Restart a failed run with
bps restart --id <id>
where <id>
is the id of the run that need to be restarted. What the id is
depends on the workflow management system the BPS is configured to use. For
example, if the BPS was configured to use the HTCondor, the only valid id is
the submit directory.
If the restart completed successfully, the command will output something similar to:
At the moment a workflow will be restarted as it is, no configuration changes are possible.
BPS precedence order¶
Some settings can be specified simultaneously in multiple places (e.g. with command-line option and in the config file). The value of a setting is determined by following order:
- command-line option,
- config file (if used by a subcommand),
- environment variable,
- package default.
BPS configuration file¶
The configuration file is in YAML format. One particular YAML syntax to be mindful about is that boolean values must be all lowercase.
${CTRL_BPS_DIR}/python/lsst/ctrl/bps/etc/bps_defaults.yaml
contains default values used by every bps submission and is
automatically included.
Configuration file can include other configuration files using
includeConfigs
with YAML array syntax. For example
includeConfigs:
- bps-operator.yaml
- bps-site-htcondor.yaml
Values in the configuration file can be defined in terms of other values using
{key}
syntax, for example
patch: 69
dataQuery: patch = {patch}
Environment variables can be used as well with ${var}
syntax, for example
submitRoot: ${PWD}/submit
runQuantumExec: ${CTRL_MPEXEC_DIR}/bin/pipetask
Note
Note the difference, $
(dollar sign), when using an environmental
variable, e.g. ${foo}
, and plain config variable {foo}
.
Section names can be used to store default settings at that concept level which
can be overridden by settings at more specific concept levels. Currently the
order from most specific to general is: payload
, pipetask
, and site
.
- payload
description of the submission including definition of inputs. These values are mostly those used in the pipetask/butler command lines, so their names must match those used in those commands.
For the default pipetask/butler commands as seen in ${CTRL_BPS_DIR}/python/lsst/ctrl/bps/etc/bps_defaults.yaml, payload values are:
Defaults provided by bps (Should rarely need to be changed):
- output: Output collection, passed as
-o
to pipetask commands. Defaults to “u/{operator}/{payloadName}” whereoperator
is defaulted to username andpayloadName
must be specified in YAML. - outputRun: Output run collection, passed as
--output-run
to pipetask commands. Defaults to “{output}/{timestamp}” wheretimestamp
is automatically generated by bps. - runInit: true/false, whether to run
pipetask --init-only
job. Defaults to true.
Submit YAML must specify:
- butlerConfig: Butler config, passed as
-b
to pipetask commands. - inCollection: Input collections, passed as
-i
to pipetask commands. - dataQuery: Data query, passed as
-d
to pipetask qgraph command. - payloadName: Name to describe submission. Used in bps report, and default output collection
- output: Output collection, passed as
- pipetask
subsections are pipetask labels where can override/set runtime settings for particular pipetasks (currently no Quantum-specific settings).
A value most commonly used in a subsection is:
- requestMemory: Maximum memory (MB) needed to run a Quantum of this PipelineTask.
- site
- settings for specific sites can be set here. Subsections are site names
which are matched to
computeSite
. See the documentation of the WMS plugin in use for examples of site specifications.
Supported settings¶
Warning
A plugin may not support all options listed below. See plugin’s documentation for which ones are supported.
- accountingGroup
- The name of the group to use by the batch system for accounting purposes (if applicable).
- accountingUser
- The username the batch system should use for accounting purposes (if applicable). Usually, this is the operating system username. However, this setting allows one to use a custom value instead.
- butlerConfig
- Location of the Butler configuration file needed by BPS to create run collection entry in Butler dataset repository
- campaign
- A label used to group submissions together. May be used for
grouping submissions for particular deliverable (e.g., a JIRA issue number,
a milestone, etc.). Can be used as variable in output collection name.
Displayed in
bps report
output. - clusterAlgorithm
- Algorithm to use to group Quanta into single Python executions that can share in-memory datastore. Currently, just uses single quanta executions, but this is here for future growth.
- computeSite
- Specification of the compute site where to run the workflow and which site
settings to use in
bps prepare
). - createQuantumGraph
- The command line specification for generating QuantumGraphs.
- executeMachinesPattern, optional
- A regular expression used for looking up available computational
resources. By default it is set to
.*worker.*
. - operator
- Name of the Operator who made a submission. Displayed in
bps report
output. Defaults to the Operator’s username. - pipelineYaml
- Location of the YAML file describing the science pipeline.
- project
- Another label for groups of submissions. May be used to differentiate
between test submissions from production submissions. Can be used as a
variable in the output collection name. Displayed in
bps report
output. - requestMemory, optional
- Amount of memory, in MB, a single Quantum execution of a particular pipetask will need (e.g., 2048).
- requestMemoryMax, optional
Maximal amount of memory, in MB, a single Quantum execution should ever use. By default, it is equal to the
memoryLimit
.If it is set, but its value exceeds the
memoryLimit
, the value provided by thememoryLimit
will be used instead.It has no effect if
memoryMultiplier
is not set.- memoryMultiplier, optional
A positive number greater than 1.0 controlling how fast memory increases between consecutive runs for jobs which failed due to insufficient memory.
The memory limit increases in a (approximately) geometric manner between consecutive executions with
memoryMultiplier
playing a role of the common ratio. First time, the job is run with memory limit determined byrequestMemory
. If it fails due to the insufficient memory, it will be retried with a new memory limit equal to the product of thememoryMultiplier
and the memory usage from the previous attempt.The process will continue until number of retries reaches its limit determined by
numberOfRetries
(5 by default) or the resultant memory request reaches the memory cap determined byrequestMemoryMax
.Once the memory request reaches the cap the job will be run one time allowing to use the amount of memory determined by the cap (providing a retry is still permitted) and removed from the job queue afterwards if it fails due to insufficient memory again (even if more retries are permitted).
For example, with
requestMemory = 3072
(3 GB),requestMemoryMax = 20480
(20 GB), andmemoryMultiplier = 2.0
the job will be allowed to use 6 GB of memory during the first retry and 12 GB during the second one, and 20 GB during the third one if each earlier run attempt failed due to insufficient memory. If the third retry also fails due to the insufficient memory, the job will be removed from the job queue.With
requestMemory = 32768
(32 GB),requestMemoryMax = 65536
(64 GB), andmemoryMultiplier = 2.0
the job will be allowed to use 64 GB of memory during its first retry. If it fails due to insufficient memory, it will be removed from the job queue.In both examples if the job keeps failing for other reasons, the final number of retries will be determined by
numberOfRetries
.If the
memoryMultiplier
is negative or less than 1.0, it will be ignored and memory requirements will not change between retries.At the moment, this feature is only supported by the HTCondor plugin.
- memoryLimit, optional
The compute resource’s memory limit, in MB, to control the memory scaling.
If not set, BPS will try to determine it automatically by querying available computational resources (e.g. execute machines in an HTCondor pool) which match the pattern defined by
executeMachinesPattern
.When set explicitly, its value should reflect actual limitations of the compute resources on which the job will be run. For example, it should be set to the largest value that the batch system would give to a single job. If it is larger than the batch system permits, the job may stay in the job queue indefinitely.
requestMemoryMax
will be automatically set to this value if not defined or exceeds it.It has no effect if
memoryMultiplier
is not set.- numberOfRetries, optional
- The maximum number of retries allowed for a job (must be non-negative).
The default value is
None
meaning that the job will be run only once. However, if automatic memory scaling is enabled (memoryMultiplier
is set), the default value 5 will be used ifnumberOfRetries
was not set explicitly. - requestCpus, optional
- Number of cpus that a single Quantum execution of a particular pipetask will need (e.g., 1).
- preemptible, optional
- A flag indicating whether a job can be safely preempted. Defaults to true which means that unless indicated otherwise any job in the workflow can be safely preempted.
- uniqProcName
- Used when giving names to graphs, default names to output files, etc. If
not specified by user, BPS tries to use
outputRun
with ‘/’ replaced with ‘_’. - submitPath
- Directory where the output files of
bps prepare
go. - runQuantumCommand
- The command line specification for running a Quantum. Must start with executable name (a full path if using HTCondor plugin) followed by options and arguments. May contain other variables defined in the configuration file.
- runInit
Whether to add a
pipetask --init-only
to the workflow or not. If true, expects there to be a pipetask section called pipetaskInit which contains therunQuantumCommand
for thepipetask --init-only
. For examplepayload: runInit: true pipetask: pipetaskInit: runQuantumCommand: "${CTRL_MPEXEC_DIR}/bin/pipetask --long-log run -b {butlerConfig} -i {inCollection} --output {output} --output-run {outputRun} --init-only --register-dataset-types --qgraph {qgraphFile} --clobber-outputs" requestMemory: 2048
The above example command uses both
--output
and--output-run
. The--output
option creates the chained collection if necessary and defines it to include both the--input
and--output-run
collections. The--output-run
option saves the unique run collection that is also passed to all other compute jobs (i.e., one run collection per submission). If using both here, must include both--output
and--output-run
in the otherrunQuantumCommand
.- templateDataId
- Template to use when creating job names (and HTCondor plugin then uses for job output filenames).
- subdirTemplate
- Template used by bps and plugins when creating input and job subdirectories.
- qgraphFileTemplate
- Template used when creating QuantumGraph filename.
- wmsServiceClass
- Workload Management Service plugin to use.
- bpsUseShared
- Whether to put full submit-time path to QuantumGraph file in command line because the WMS plugin requires shared filesystem. Defaults to False. HTCondor and Pegasus plugins do not need this value.
- whenSaveJobQgraph
When to output job QuantumGraph files (default = TRANSFORM).
- NEVER = all jobs will use full QuantumGraph file. (Warning: make sure
runQuantumCommand has
--qgraph-id {qgraphId} --qgraph-node-id {qgraphNodeId}
.) - TRANSFORM = Output QuantumGraph files after creating GenericWorkflow.
- PREPARE = QuantumGraph files are output after creating WMS submission.
- NEVER = all jobs will use full QuantumGraph file. (Warning: make sure
runQuantumCommand has
- saveClusteredQgraph
A boolean flag. If set to true, BPS will save serialized clustered quantum graph to a file called
bps_clustered_qgraph.pickle
using Python’s pickle module. The file will be located in the submit directory. By default, it is set to false.Setting it to true will significantly increase memory requirements when submitting large workflows as pickle constructs a complete copy of the object in memory before it writes it to disk. [ref]
- saveGenericWorkflow
- A boolean flag. If set to true, BPS will save serialized generic workflow
called to a file called
bps_generic_workflow.pickle
using Python’s pickle module. The file will be located in the submit directory. By default, it is set to false. - saveDot
A boolean flag. If set to true, BPS will generate graphical representations of both the clustered quantum graph and the generic workflow in DOT format. The files will be located in the submit directory and their names will be
bps_clustered_qgraph.dot
andbps_generic_workflow.dot
, respectively. By default, it is set to false.It is recommended to use this option only when working with small graphs/workflows. The plots will be practically illegible for graphs which number of nodes exceeds order of tens.
Reserved keywords¶
- gqraphFile
Name of the file with a pre-made, serialized QuantumGraph.
Such a file is an alternative way to describe a science pipeline. However, contrary to YAML specification, it is currently not portable.
- qgraphId
- Internal ID for the full QuantumGraph (passed as
--qgraph-id
on pipetask command line). - qgraphNodeId
- Comma-separated list of internal QuantumGraph node numbers to be
executed from the full QuantumGraph (passed as
--qgraph-node-id
on pipetask command line). - timestamp
- Created automatically by BPS at submit time that can be used in the user specification of other values (e.g., in output collection names so that one can repeatedly submit the same BPS configuration without changing anything)
Note
Any values shown in the example configuration file, but not covered in this
section are examples of user-defined variables (e.g. inCollection
) and
are not required by BPS.
QuantumGraph Files¶
BPS can be configured to either create per-job QuantumGraph files or use the single full QuantumGraph file plus node numbers for each job. The default is using per-job QuantumGraph files.
To use full QuantumGraph file, the submit YAML must set whenSaveJobQgraph
to
“NEVER” and the pipetask run
command must include --qgraph-id {qgraphId}
--qgraph-node-id {qgraphNodeId}
. For example:
whenSaveJobQgraph: "NEVER"
runQuantumCommand: "${CTRL_MPEXEC_DIR}/bin/pipetask --long-log run -b {butlerConfig} --output {output} --output-run {outputRun} --qgraph {qgraphFile} --qgraph-id {qgraphId} --qgraph-node-id {qgraphNodeId} --skip-init-writes --extend-run --clobber-outputs --skip-existing"
Warning
Do not modify the QuantumGraph options in pipetaskInit’s runQuantumCommand. It needs the entire QuantumGraph.
Note
If running on a system with a shared filesystem, you’ll more than likely
want to also set bpsUseShared
to true
.
Execution Butler¶
Execution Butler is a behind-the-scenes mechanism to lessen the number of simultaneous connections to the Butler database.
Pipetask command lines are not the same when using Execution Butler. There is currently not a single configuration option to enable/disable Execution Butler.
Command-line Changes¶
pipetask:
pipetaskInit:
runQuantumCommand: "${CTRL_MPEXEC_DIR}/bin/pipetask --long-log run -b {butlerConfig} -i {inCollection} --output-run {outputRun} --init-only --register-dataset-types --qgraph {qgraphFile} --extend-run {extraInitOptions}"
New YAML Section¶
executionButlerTemplate: "{submitPath}/EXEC_REPO-{uniqProcName}"
executionButler:
whenCreate: "SUBMIT"
#USER executionButlerDir: "/my/exec/butler/dir" # if user provided, otherwise uses executionButlerTemplate
createCommand: "${CTRL_MPEXEC_DIR}/bin/pipetask qgraph -b {butlerConfig} --input {inCollection} --output-run {outputRun} --save-execution-butler {executionButlerDir} -g {qgraphFile}"
whenMerge: "ALWAYS"
implementation: JOB # JOB, WORKFLOW
concurrencyLimit: db_limit
command1: "${DAF_BUTLER_DIR}/bin/butler --log-level=VERBOSE transfer-datasets {executionButlerDir} {butlerConfig} --collections {outputRun} --register-dataset-types"
command2: "${DAF_BUTLER_DIR}/bin/butler collection-chain {butlerConfig} {output} {outputRun} --mode=prepend"
For --replace-run
behavior, replace the one collection-chain command with these two:
command2: "${DAF_BUTLER_DIR}/bin/butler collection-chain {butlerConfig} {output} --mode=pop 1"
command3: "${DAF_BUTLER_DIR}/bin/butler collection-chain {butlerConfig} {output} --mode=prepend {outputRun}"
- whenCreate
When during the submission process that the Execution Butler is created. whenCreate valid values: “NEVER”, “ACQUIRE”, “TRANSFORM”, “PREPARE”, “SUBMIT”. The recommended setting is “SUBMIT” because the run collection is stored in the Execution Butler and that should be set as late as possible in the submission process.
- NEVER = Execution Butler is never created and the provided pipetask commands must be appropriate for not using a Execution Butler.
- ACQUIRE = Execution Butler is created in the ACQUIRE submission stage right after creating or reading the QuantumGraph.
- TRANSFORM = Execution Butler is created in the TRANSFORM submission stage right before creating the Generic Workflow.
- PREPARE = Execution Butler is created in the PREPARE submission stage
right before calling the WMS plugin’s
prepare
method. - SUBMIT = Execution Butler is created in the SUBMIT stage right before
calling the WMS plugin’s
submit
method.
- whenMerge
When the Execution Butler should be merged back to the central repository. whenMerge valid values: “ALWAYS”, “SUCCESS”, “NEVER”. The recommended setting is “ALWAYS” especially when jobs are writing to the central Datastore.
- ALWAYS = Merge even if entire workflow was not executed successfully or run was cancelled.
- SUCCESS = Only merge if entire workflow was executed successfully.
- NEVER = bps is not responsible for merging the Execution Butler back to the central repository.
- createCommand
- Command to create the Execution Butler.
- implementation
How to implement the mergeExecutionButler steps.
- JOB = Single bash script is written with sequence of commands and is represented in the GenericWorkflow as a GenericWorkflowJob.
- WORKFLOW = (Not implemented yet) Instead of a bash script, make a little workflow representing the sequence of commands.
- concurrency_limit
Name of the concurrency limit. For butler repositories that need to limit the number of simultaneous merges, this name tells the plugin to limit the number of mergeExecutionButler jobs via some mechanism, e.g., a special queue.
- db_limit = special concurrency limit to be used when limiting number of simultaneous butler database connections.
- command1, command2, …
- Commands executed in numerical order as part of the mergeExecutionButler job.
- executionButlerTemplate
- Template for Execution Butler directory name.
User-visible Changes¶
The major differences visible to users are:
bps report
shows new job called mergeExecutionButler in detailed view. This is what saves the run info into the central butler repository. As with any job, it can succeed or fail. Different from other jobs, it will execute at the end of a run regardless of whether a job failed or not. It will even execute if the run is cancelled unless the cancellation is while the merge is running. Its output will go where other jobs go (at NCSA in jobs/mergeExecutionButler directory).
- Extra files in submit directory:
- EXEC_REPO-<run>: Execution Butler (YAML + initial SQLite file)
- execution_butler_creation.out: Output of command to create execution butler.
- final_job.bash: Script that is executed to do the merging of the run info into the central repo.
- final_post_mergeExecutionButler.out: An internal file for debugging incorrect reporting of final run status.
Clustering¶
The description of all the Quanta to be executed by a submission exists in the
full QuantumGraph for the run. bps breaks that work up into compute jobs
where each compute job is assigned a subgraph of the full QuantumGraph. This
subgraph of Quanta is called a cluster
. bps can be configured to use
different clustering algorithms by setting clusterAlgorithm
. The default
is single Quantum per Job.
Single Quantum per Job¶
This is the default clustering algorithm. Each job gets a cluster containing a single Quantum.
Compute job names are based upon the Quantum dataId + templateDataId
. The
PipelineTask label is used for grouping jobs in bps report output.
Config Entries (not currently needed as it is the default):
clusterAlgorithm: lsst.ctrl.bps.quantum_clustering_funcs.single_quantum_clustering
User-defined Dimension Clustering¶
This algorithm creates clusters based upon user-definitions that specify which PipelineTask labels go in the cluster and what dimensions to use to divide them into compute jobs. Requested job resources (and other job-based values) can be set within the each cluster definition. If a particular resource value is not defined there, bps will try to determine the value from the pipetask definitions for the Quanta in the cluster. For example, request_memory would first come from the cluster config, then the max of all the request_memory in the cluster, or finally any global default.
Compute job names are based upon the dimensions used for clustering. The cluster label is used for grouping jobs in bps report output.
The minimum configuration information is a label, a list of PipelineTask
labels, and a list of dimensions. Sometimes a submission may want to treat
two dimensions as the same thing (e.g., visit and exposure) in terms of
putting Quanta in the same cluster. That is handled in the config via
equalDimensions
(a comma-separated list of dimA:dimB pairs).
Job dependencies are created based upon the Quanta dependencies. This means that the naming and order of the clusters in the submission YAML does not matter. The algorithm will fail if a circular dependency is created. It will also fail if a PipelineTask label is included in more than one cluster section.
Any Quanta not covered in the cluster config will fall back to the single Quanta per Job algorithm.
Relevant Config Entries:
clusterAlgorithm: lsst.ctrl.bps.quantum_clustering_funcs.dimension_clustering
cluster:
# Repeat cluster subsection for however many clusters there are
clusterLabel1:
pipetasks: label1, label2 # comma-separated list of labels
dimensions: dim1, dim2 # comma-separated list of dimensions
equalDimensions: dim1:dim1a # e.g., visit:exposure
# request_cpus: N # Overrides for jobs in this cluster
# request_memory: NNNN # MB, Overrides for jobs in this cluster
Troubleshooting¶
Where is stdout/stderr from pipeline tasks?¶
See the documentation on the plugin in use to find out where stdout/stderr are.
Why is my submission taking so long?¶
If bps submit
is taking a long time, probably it is spending the time
during QuantumGraph generation. The QuantumGraph generation command line and
output will be in quantumGraphGeneration.out
in the submit run directory,
e.g. submit/shared/pipecheck/20220407T184331Z/quantumGraphGeneration.out
.
Appendix A¶
Prerequisites¶
LSST software stack.
Shared filesystem for data.
Shared database.
SQLite3 is fine for small runs like ci_hsc_gen3 if have POSIX filesystem. For larger runs, use PostgreSQL.
A workflow management service and its dependencies if any.
For currently supported WMS plugins see lsst_bps_plugins.
Installing Batch Processing Service¶
Starting from LSST Stack version w_2020_45
, the package providing Batch
Processing Service, ctrl_bps, comes with lsst_distrib
. However, if
you’d like to try out its latest features, you may install a bleeding edge
version similarly to any other LSST package:
git clone https://github.com/lsst-dm/ctrl_bps
cd ctrl_bps
setup -k -r .
scons
Creating Butler repository¶
You’ll need a pre-existing Butler dataset repository containing all the input files needed for your run. This repository needs to be on the filesystem shared among all compute resources (e.g. submit and compute nodes) you use during your run.
Note
Keep in mind though, that you don’t need to bootstrap a dataset repository for every BPS run. You only need to do it when Gen3 data definition language (DDL) changes, you want to to start a repository from scratch, and possibly if want to add/change inputs in repo (depending on the inputs and flexibility of the bootstrap scripts).
For testing purposes, you can use pipelines_check package to set up your own Butler dataset repository. To make that repository, follow the usual steps when installing an LSST package:
git clone https://github.com/lsst/pipelines_check
cd pipelines_check
git checkout w_2020_45 # checkout the branch matching the software branch you are using
setup -k -r .
scons