POMS: Difference between revisions

From Mu2eWiki
Jump to navigation Jump to search
 
(40 intermediate revisions by 4 users not shown)
Line 1: Line 1:
==Introduction==
==Introduction==
The Production Operations Management Service (POMS) is a computing division tool that helps users to run large and complex grid campaigns. It provides  
The Production Operations Management Service (POMS) is a computing division tool that helps users to run large and complex grid campaigns. It is designed to assist experiments in their MonteCarlo production and data processing, both for production and analysis
* control scripts and GUI interface
 
* chaining of multiple stages of a grid campaign
POMS provides  
* re-submission of failed jobs
* control scripts and easy-to-use GUI interface. It is fully configurable with any executable;
* analysis of logs and database entries for results
* automatic monitoring and campaign management options;
* chaining of multiple stages of a grid campaign i.e. automated submission of the following stages;
* automated recovery options and easy re-submission of failed jobs;
* analysis of logs and database entries for results.


POMS has been successfully employed for the production of the [[MDC2020]] datasets. The supported and recommended way to access POMS is through the [https://pomsgpvm01.fnal.gov/poms/index/mu2e/production web interface].
POMS has been successfully employed for the production of the [[MDC2020]] datasets. The supported and recommended way to access POMS is through the [https://pomsgpvm01.fnal.gov/poms/index/mu2e/production web interface].
[https://cdcvs.fnal.gov/redmine/projects/project-py/wiki/Project-py_guide project-py] is a Python script which provides a command line interface.
[https://cdcvs.fnal.gov/redmine/projects/project-py/wiki/Project-py_guide project-py] is a Python script that provides a command line interface.
 
The POMS system is designed around the concept of a ''campaign''. A campaign is a set of ''stages'' which can have interdependencies. Each stage corresponds to the submission of a certain number of jobs to the computing grid, with a specific configuration. Each stage typically takes as input an entire SAM dataset and produces one or more SAM datasets as output, which contain the output files produced by each job.
 
Experimenters only need one or more executable files that write and/or read data files. They can then build (or borrow from an example) an .ini file for fife_launch that describes what setup scripts to run, how their executable should be run, where output files should be put, and similar details, for each stage of their processing, and define a SAM dataset of files they would like processed.
 
=== Architecture ===
 
POMS interfaces with the existing Fermilab data access, processing, movement and monitoring tools at Fermilab, e.g. Jobsub (for job submission), SAM (for data management), PostgreSQL from the central database team and Landscape (for monitoring). In combination with these tools, POMS handles the creation of intermediate datasets of files for multistage campaigns.
 
The underlying batch system being used is Condor with GlideinWMS. POMS launches condor clusters or DAGs (directed acyclic graph) of jobs using fife_launch wrappers around the jobsub submission system.
 
POMS uses the Landscape monitoring suite via an interface called Lens, which provides summaries of the jobs in a submission so that POMS
can determine when submissions are complete etc.
 
POMS uses SAM and its "project" functionality and provenance information to build a "recovery dataset" for the SAM project that delivered files to the
submission.
 
See:
 
* EPJ Web of Conferences 245, 03024 (2020) for more on POMS
* https://dune.github.io/computing-training-202105/aio/index.html For overview of terminlogy


==Tutorial==
==Tutorial==
<span style="color:red">Work in progress</span>
<span style="color:red">Work in progress</span>
The POMS system is designed around the concept of ''campaign''. A campaign is a set of ''stages'' which can have interdependencies. Each stage corresponds to the submission of a certain number of jobs to the computing grid, with a specific configuration. Each stage typically takes as input an entire SAM dataset and produces one or more SAM datasets as output, which contain the output files produced by each job.


In this tutorial we will create a campaign with two stages, whose goal is to run the reconstruction stage on a pre-existing digi sample. This campaign can be then easily extended to run an arbitrary number of stages (e.g. generation, digitization, and reconstruction).  
In this tutorial we will create a campaign with two stages, whose goal is to run the reconstruction stage on a pre-existing digi sample. This campaign can be then easily extended to run an arbitrary number of stages (e.g. generation, digitization, and reconstruction).  
Line 141: Line 163:
memory = 2500MB
memory = 2500MB
email-to = %(submitter)s@fnal.gov
email-to = %(submitter)s@fnal.gov
l = '+SingularityImage=\"/cvmfs/singularity.opensciencegrid.org/fermilab/fnal-wn-sl7:latest\"'
singularity-image = '/cvmfs/singularity.opensciencegrid.org/fermilab/fnal-wn-sl7:latest'
append_condor_requirements='(TARGET.HAS_SINGULARITY=?=true)'
f = dropbox:///mu2e/app/home/mu2epro/db_fcl_test/ucondb_auth.sh.tar.gz
f = dropbox:///mu2e/app/home/mu2epro/db_fcl_test/ucondb_auth.sh.tar.gz


Line 245: Line 266:


[[File:Submit_campaign.png|800px]]
[[File:Submit_campaign.png|800px]]
===Stage connections===
Example 1. 
<pre>
in first stage jobtype:
  output files pattern: <empty>
in first stage cfg
  <no datasets declared>
in connection
  file_pattern1: <undefined>
in second stage ini or gui:
  dataset: mu2epro_index_CosmicCORSIKALow_MDC2020ad
  -Osubmit.dataset=poms_depends_1746185_1
in second stage cfg:
  submit.dataset = mu2epro_index_%(stage_name)s_%(release)s%(release_v_o)s
resulting submission fields:
submission_params: {'dataset': 'poms_depends_1746185_1'}
</pre>
Example 2. Stage completes and triggers stage 2.  The connection is not a set of file produced by the first stage, but an independent dataset defined in the second stage.  If this dataset is large, it has to be split here is a way to do it.
<pre>
In this case, we set the following in *.ini file:
dataset_or_split_data=mu2epro_index_CosmicCORSIKALow_MDC2020ad

cs_split_type=nfiles(50)

param_overrides = [["--stage ", "resamplerlow"], [“-Osubmit.dataset=","%(dataset)s"]]
This will initially break at the transition from par to generation (this would override the "submit.dataset" with the value
of “%(dataset)s". This dataset is internally created by POMS from the parent stage and follows the naming
convention ‘poms_depends__’). And we don’t create input datasets on the par stage.
If 'param_overrides' doesn't specify the dataset, the next priority is the one defined in the stage's .ini file under
‘dataset_or_split_data'
Further down the priority list, the dataset can be specified in the stage section of the .cfg file using the setting:
'submit.dataset = mydataset'.
After the failed transition, a user can manually launch and set cron jobs. In this case, POMS will take
dataset_or_split_data and slice it to mu2epro_index_CosmicCORSIKALow_MDC2020ad_slice1_files50
</pre>
If POMS is going to split the dataset, the dataset name must appear in the GUI/ini in the dataset_or_split_data filed, and the stage must pass the dataset name to the submission with <code>“-Osubmit.dataset=","%(dataset)s"</code>.  The dataset that is actually passed to the submission will be the split dataset.
===Trace a file===
You can use kibana to trace POMS submissions that used the file as an input:
  https://landscape.fnal.gov/kibana/goto/9eb8871d6494edfec6f1eb8f212578da
This might be useful to find recovery submissions that failed after several attempts.
==Project-py==
https://cdcvs.fnal.gov/redmine/projects/project-py/wiki
The following might need to be used in s7container
Example:
mu2einit
muse setup
setup project_py
setup ifdh_art v2_17_03 -q e28:prof
Create a campaign, which requires both --ini_file and --cfg_file options:
Project.py --create_campaign --ini_file /exp/mu2e/app/users/oksuzian/muse_101323/Production/CampaignConfig/mdc2020_digireco_projectpy.ini --cfg_file /exp/mu2e/app/users/oksuzian/muse_101323/Production/CampaignConfig/mdc2020_digireco.cfg --poms_role production
Submit campaign by ID:
Project.py --submit --sam_experiment mu2e --experiment mu2e --campaign_id 8457 --poms_role production
Submit campaign by name:
Project.py --submit --sam_experiment mu2e --experiment mu2e --campaign MDC2020ad_digireco_043024_offspill_best_v2 --poms_role production
View all running campaigns:
Project.py --show_campaigns --view_production
View stages for your campaign:
Project.py --show_campaign_stages --campaign MDC2020ad_digireco_043024_offspill_best_v2 --view_production
Check campaign submissions:
Project.py --show_campaign_stages --campaign MDC2020ad_digireco_043024_offspill_best_v2 --view_production --check
===Process multiple campaigns===
You can produce campaigns for various configs described in json files data/mix.json
{
    "release_v_dts": ["r"],
    "primary_name": ["CeEndpoint", "CePlusEndpoint"],
    "db_purpose": ["perfect", "best"],
    "digitype": ["Mix1BB", "Mix2BB"]
}
The script to produce campaigns based on data/mix.json
./ProjPy/gen_Campaigns.py --ini_file ProjPy/mdc2020_mixing.ini --cfg_file CampaignConfig/mdc2020_digireco.cfg --comb_json data/mix.json --simjob MDC2020ae
Inspect and then upload ini files to POMS and submit campaigns:
./ProjPy/gen_Campaigns.py --ini_file ProjPy/mdc2020_mixing.ini --cfg_file CampaignConfig/mdc2020_digireco.cfg --comb_json data/mix.json --simjob MDC2020ae --create_campaign --submit


==UconDB==
==UconDB==
mu2e_ucon_prod         - created 11/2021 to help with MDC2020
mu2e_ucon_prod was created 11/2021 to help with MDC2020.  [https://cdcvs.fnal.gov/redmine/projects/ucondb/wiki general ucondb docs] and [https://ucondb.readthedocs.io/en/latest/index.html more docs]
* database mu2e_ucon_prod owned by nologin role mu2e_ucon_prod;
* database mu2e_ucon_prod owned by nologin role mu2e_ucon_prod;
* Kerberos-authenticated roles: brownd kutschke srsoleti
* Kerberos-authenticated roles: brownd kutschke srsoleti
* md5 authenticated role 'mu2e_ucon_web' (for POMS)  
* md5 authenticated role 'mu2e_ucon_web' (for POMS)  
* port is 5458 (on ifdbprod/ifdb08)
* port is 5458 (on ifdb11/ifdb12)


  https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/... - not cached, external and internal access
  https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/... - not cached, external and internal access
Line 259: Line 375:




FCL files are saved to the UconDB in dedicated folders. It's not possible to use dots in the name of the database folders, so we replace with underscores, as in:
The following curl command create a folder in the database called "test":
https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/folder?folder=cnf_mu2e_pot_db_test_v12_fcl.
curl --digest -u mu2e:$DB_PWD https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/create_folder?folder=test
and to insert a file
curl -T <file.fhicl> —digest -u mu2e:<password> https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/data/<folder name>/<file.fhicl>


The following curl command create a folder in the database called "test":
The password $DB_PWD can be requested from the Production manager.


  curl --digest -u mu2e:$DB_PWD https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/create_folder?folder=test
Files in a folder can be listed, formatted, by links: <br>
[https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/index https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/index]<br>
[https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/folder?folder=mdc2020r https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/folder?folder=mdc2020r] <br>
or as text at the command line:
  curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/folders"
curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/objects?folder=mdc2020r"


The password $DB_PWD can be asked to the Production manager.  
and a fcl file can be retrieved:
curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl"


The POMS FCL stages take care of saving the FCL files. The SAM location of the files stored in the database looks like this:
The POMS FCL stages take care of saving the FCL files.  


The SAM location of the files stored in the database looks like this:
  $ samweb locate-file cnf.mu2e.POT.db_test_v12.001201_00000001.fcl
  $ samweb locate-file cnf.mu2e.POT.db_test_v12.001201_00000001.fcl
  dbdata0vm.fnal.gov:/mu2e_ucondb_prod/app/data/cnf_mu2e_POT_db_test_v12_fcl
  dbdata0vm.fnal.gov:/mu2e_ucondb_prod/app/data/cnf_mu2e_POT_db_test_v12_fcl
asking for locations with http schema gives urls:
samweb list-file-locations --schema=http --dim "file_name=cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl"
https://dbdata0vm.fnal.gov:8444/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl
which can be use with ifdh:
ifdh cp https://dbdata0vm.fnal.gov:8444/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl ./temp.fcl


== Updating SAM Records ==
== Updating SAM Records ==

Latest revision as of 20:54, 16 September 2024

Introduction

The Production Operations Management Service (POMS) is a computing division tool that helps users to run large and complex grid campaigns. It is designed to assist experiments in their MonteCarlo production and data processing, both for production and analysis

POMS provides

  • control scripts and easy-to-use GUI interface. It is fully configurable with any executable;
  • automatic monitoring and campaign management options;
  • chaining of multiple stages of a grid campaign i.e. automated submission of the following stages;
  • automated recovery options and easy re-submission of failed jobs;
  • analysis of logs and database entries for results.

POMS has been successfully employed for the production of the MDC2020 datasets. The supported and recommended way to access POMS is through the web interface. project-py is a Python script that provides a command line interface.

The POMS system is designed around the concept of a campaign. A campaign is a set of stages which can have interdependencies. Each stage corresponds to the submission of a certain number of jobs to the computing grid, with a specific configuration. Each stage typically takes as input an entire SAM dataset and produces one or more SAM datasets as output, which contain the output files produced by each job.

Experimenters only need one or more executable files that write and/or read data files. They can then build (or borrow from an example) an .ini file for fife_launch that describes what setup scripts to run, how their executable should be run, where output files should be put, and similar details, for each stage of their processing, and define a SAM dataset of files they would like processed.

Architecture

POMS interfaces with the existing Fermilab data access, processing, movement and monitoring tools at Fermilab, e.g. Jobsub (for job submission), SAM (for data management), PostgreSQL from the central database team and Landscape (for monitoring). In combination with these tools, POMS handles the creation of intermediate datasets of files for multistage campaigns.

The underlying batch system being used is Condor with GlideinWMS. POMS launches condor clusters or DAGs (directed acyclic graph) of jobs using fife_launch wrappers around the jobsub submission system.

POMS uses the Landscape monitoring suite via an interface called Lens, which provides summaries of the jobs in a submission so that POMS can determine when submissions are complete etc.

POMS uses SAM and its "project" functionality and provenance information to build a "recovery dataset" for the SAM project that delivered files to the submission.

See:

Tutorial

Work in progress

In this tutorial we will create a campaign with two stages, whose goal is to run the reconstruction stage on a pre-existing digi sample. This campaign can be then easily extended to run an arbitrary number of stages (e.g. generation, digitization, and reconstruction).

The first step is to create a proxy certification that will be then used by POMS:

setup fife_utils
kx509 -n --minhours 168 -o /tmp/x509up_voms_mu2e_Analysis_${USER}
upload_file /tmp/x509up_voms_mu2e_Analysis_${USER}

A POMS campaign requires two files: a INI file, which defines the stage names and the interdependencies, and a CFG file, which describes the configuration for each stage.

INI file

Let's start with the INI file: it can be created locally and it is then uploaded to POMS through the web interface. In the following INI file we will specify two stages: the first one creates the FCL files, one per job, and the second one takes as input the SAM dataset containing the FCL files and submit N jobs, where N is the number of FCL files in the dataset.

First of all, the INI file needs the definition of the campaign and of the job type we are going to run.

[campaign]
experiment = mu2e
poms_role = analysis
name = srsoleti_tutorial
campaign_stage_list = reco_fcl, reco

[campaign_defaults]
vo_role=Analysis
software_version=MDC2020t
dataset_or_split_data=None
cs_split_type=None
completion_type=complete
completion_pct=100
param_overrides="[]"
test_param_overrides="[]"
merge_overrides=False
login_setup=srsoleti_poms_login
job_type=mu2e_reco_srsoleti_jobtype
stage_type=regular
output_ancestor_depth=1

[login_setup srsoleti_poms_login]
host=pomsgpvm01.fnal.gov
account=poms_launcher
setup=setup fife_utils v3_5_0, poms_client, poms_jobsub_wrapper;

Then, we define two job types, one that corresponds to the stage that will run the mu2e process, and one that corresponds to the stage that will run the generate_fcl script, which creates the FCL files.

[job_type mu2e_reco_srsoleti_jobtype]
launch_script = fife_launch
parameters = [["-c ", "/mu2e/app/users/srsoleti/tutorial/reco.cfg"]]
output_file_patterns = %.art
recoveries = [["proj_status",[["-Osubmit.dataset=","%(dataset)s"]]]]

[job_type generate_fcl_reco_srsoleti_jobtype]
launch_script = fife_launch
parameters = [["-c ", "/mu2e/app/users/srsoleti/tutorial/reco.cfg"]]
output_file_patterns = %.fcl

Finally, we define the two stages that form our campaign, reco and reco_fcl.

[campaign_stage reco_fcl]
param_overrides = [["--stage ", "reco_fcl"]]
test_param_overrides = [["--stage ", "reco_fcl"]]
job_type = generate_fcl_reco_srsoleti_jobtype

[campaign_stage reco]
param_overrides = [["--stage ", "reco"]]
test_param_overrides = [["--stage ", "reco"]]

[dependencies reco]
campaign_stage_1 = reco_fcl
file_pattern_1 = %.fcl

The file can then uploaded to POMS by connecting to POMS, clicking on "Campaigns", then "Pick .ini file", and "Upload", as shown in the picture below.

Upload campaign.png

CFG file

The CFG file describes the configuration for each stage and it will essentially tell the grid node what to run and in which order. First, we start with a [global] where we define variables that will be used later in the file

[global]
group = mu2e
subgroup = highpro
experiment = mu2e
wrapper = file:///${FIFE_UTILS_DIR}/libexec/fife_wrap
submitter = srsoleti
outdir_sim = /pnfs/mu2e/tape/usr-sim/sim/%(submitter)s/
outdir_dts = /pnfs/mu2e/tape/usr-sim/dts/%(submitter)s/
logdir_bck = /pnfs/mu2e/tape/usr-etc/bck/%(submitter)s/
outdir_mcs = /pnfs/mu2e/tape/usr-sim/mcs/%(submitter)s/
primary_name = CeEndpoint
stage_name = override_me
artRoot_dataset = override_me
histRoot_dataset = override_me
override_dataset = override_me
release = MDC2020
release_v_i = r
release_v_o = t
desc = %(release)s%(release_v_o)s
db_folder = mdc2020t
db_version = v1_0
db_purpose = perfect
beam = 1BB


As you can see this is quite verbose. However, future CFG files can be made slimmer by using the includes statement in the [global] section, which import existing CFG files. Now, we need to define the default job configuration. This can also be written in a separate CFG file and imported.

[submit]
debug = True
G = %(group)s
subgroup = %(subgroup)s
e = SAM_EXPERIMENT
e_1 = IFDH_DEBUG
e_2 = POMS4_CAMPAIGN_NAME
e_3 = POMS4_CAMPAIGN_STAGE_NAME
resource-provides = usage_model=DEDICATED,OPPORTUNISTIC
generate-email-summary = True
expected-lifetime = 23h
memory = 2500MB
email-to = %(submitter)s@fnal.gov
singularity-image = '/cvmfs/singularity.opensciencegrid.org/fermilab/fnal-wn-sl7:latest'
f = dropbox:///mu2e/app/home/mu2epro/db_fcl_test/ucondb_auth.sh.tar.gz

[job_setup]
debug = True
find_setups = False
source_1 = /cvmfs/mu2e.opensciencegrid.org/setupmu2e-art.sh
source_2 = /cvmfs/mu2e.opensciencegrid.org/Musings/SimJob/%(release)s%(release_v_o)s/setup.sh
source_3 = $CONDOR_DIR_INPUT/ucondb_auth.sh
setup_1 = -B ifdh_art v2_14_06 -q e20:prof
setup_2 = -B mu2etools
setup_3 = -B sam_web_client
ifdh_art = True
postscript = find *[0-9]* -maxdepth 1 -name "*.fcl" -exec sed -i "s/MU2EGRIDDSOWNER/%(submitter)s/g" {} +
postscript_2 = find *[0-9]* -maxdepth 1 -name "*.fcl" -exec sed -i "s/MU2EGRIDDSCONF/%(desc)s/g" {} +
postscript_3 = find *[0-9]* -maxdepth 1 -name "*.fcl*" -exec mv -t . {} +
postscript_4 = [ -f template.fcl ] && rm template.fcl
postscript_5 = [[ $(ls *.art) ]] && samweb file-lineage parents `basename ${fname}` > parents.txt
postscript_6 = [[ $(ls *.art) ]] && echo ${fname} >> parents.txt

[sam_consumer]
limit = 1
schema = xroot
appvers = %(release)s
appfamily = art
appname = SimJob

[executable]
name = loggedMu2e.sh

Now, we have to define the kind of output files (the "job outputs") created by our jobs. They are three: the .fcl files generated by the dedicated stage, the .tbz files containing the log of the mu2e process, and the .art files created by the mu2e process.

[job_output]
addoutput = cnf.*.fcl
add_to_dataset = cnf.%(submitter)s.%(stage_name)s.%(desc)s.fcl
declare_metadata = True
metadata_extractor = json
add_location = True

[job_output_1]
addoutput = *.tbz
declare_metadata = False
metadata_extractor = printJsonSave.sh
add_location = True
add_to_dataset = bck.%(submitter)s.%(stage_name)s.%(desc)s.tbz
hash = 2
hash_alg = sha256

[job_output_2]
addoutput = *.art
declare_metadata = True
metadata_extractor = printJsonSave.sh
add_location = True
hash = 2
hash_alg = sha256

The final step is to define the two stages: one called reco_fcl which submits 1 job to the grid, whose goal is to create, save, and declare the FCL files, and one called reco which submits one job for each FCL file present in the input SAM dataset.

[stage_reco_fcl]
global.stage_name = %(primary_name)sMix%(beam)sSignal10
global.desc = %(release)s%(release_v_o)s_%(db_purpose)s_%(db_version)s

job_setup.ifdh_art = False
job_output.dest = https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/data/%(db_folder)s/

executable.name = gen_Reco.sh
executable.arg_1 = %(stage_name)s
executable.arg_2 = %(release)s
executable.arg_3 = %(release_v_i)s
executable.arg_4 = %(release_v_o)s
executable.arg_5 = %(db_purpose)s
executable.arg_6 = %(db_version)s
executable.arg_7 = 1
executable.arg_8 = %(submitter)s

[stage_reco]
global.stage_name = %(primary_name)sMix%(beam)sSignal
global.desc = %(release)s%(release_v_o)s_%(db_purpose)s_%(db_version)s
global.artRoot_dataset = mcs.%(submitter)s.%(stage_name)s.%(desc)s.art

job_output_1.dest = %(logdir_bck)s/%(stage_name)s/%(desc)s/tbz/
job_output_2.addoutput = mcs.*.%(stage_name)s.*art
job_output_2.dest = %(outdir_mcs)s/%(stage_name)s/%(desc)s/art

submit.dataset = cnf.%(submitter)s.%(stage_name)s10.%(desc)s.fcl
submit.n_files_per_job = 1

sam_consumer.limit = 1
sam_consumer.schema = https

job_setup.getconfig = True

The gen_Reco.sh, whose source can be found here, generates the FCL files needed for the reconstruction step. The reco stage then takes as input those FCL files and run the corresponding jobs.

Submitting the campaign

Once the INI file has been uploaded, it is possible to submit the campaign on the POMS web interface, as shown in the screenshot below. The system will submit the reco_fcl stage and, once that is completed, it will automatically submit the reco one.

Submit campaign.png


Stage connections

Example 1.

in first stage jobtype:
  output files pattern: <empty>
in first stage cfg
   <no datasets declared>

in connection
  file_pattern1: <undefined>

in second stage ini or gui:
  dataset: mu2epro_index_CosmicCORSIKALow_MDC2020ad
  -Osubmit.dataset=poms_depends_1746185_1
in second stage cfg:
  submit.dataset = mu2epro_index_%(stage_name)s_%(release)s%(release_v_o)s

resulting submission fields:
submission_params: {'dataset': 'poms_depends_1746185_1'}

Example 2. Stage completes and triggers stage 2. The connection is not a set of file produced by the first stage, but an independent dataset defined in the second stage. If this dataset is large, it has to be split here is a way to do it.

In this case, we set the following in *.ini file: 
dataset_or_split_data=mu2epro_index_CosmicCORSIKALow_MDC2020ad

cs_split_type=nfiles(50)

param_overrides = [["--stage ", "resamplerlow"], [“-Osubmit.dataset=","%(dataset)s"]]
This will initially break at the transition from par to generation (this would override the "submit.dataset" with the value 
of “%(dataset)s". This dataset is internally created by POMS from the parent stage and follows the naming 
convention ‘poms_depends__’). And we don’t create input datasets on the par stage.
If 'param_overrides' doesn't specify the dataset, the next priority is the one defined in the stage's .ini file under 
‘dataset_or_split_data'
Further down the priority list, the dataset can be specified in the stage section of the .cfg file using the setting: 
'submit.dataset = mydataset'.
After the failed transition, a user can manually launch and set cron jobs. In this case, POMS will take 
dataset_or_split_data and slice it to mu2epro_index_CosmicCORSIKALow_MDC2020ad_slice1_files50

If POMS is going to split the dataset, the dataset name must appear in the GUI/ini in the dataset_or_split_data filed, and the stage must pass the dataset name to the submission with “-Osubmit.dataset=","%(dataset)s". The dataset that is actually passed to the submission will be the split dataset.


Trace a file

You can use kibana to trace POMS submissions that used the file as an input:

 https://landscape.fnal.gov/kibana/goto/9eb8871d6494edfec6f1eb8f212578da

This might be useful to find recovery submissions that failed after several attempts.

Project-py

https://cdcvs.fnal.gov/redmine/projects/project-py/wiki

The following might need to be used in s7container

Example:

mu2einit 
muse setup
setup project_py
setup ifdh_art v2_17_03 -q e28:prof

Create a campaign, which requires both --ini_file and --cfg_file options:

Project.py --create_campaign --ini_file /exp/mu2e/app/users/oksuzian/muse_101323/Production/CampaignConfig/mdc2020_digireco_projectpy.ini --cfg_file /exp/mu2e/app/users/oksuzian/muse_101323/Production/CampaignConfig/mdc2020_digireco.cfg --poms_role production

Submit campaign by ID:

Project.py --submit --sam_experiment mu2e --experiment mu2e --campaign_id 8457 --poms_role production

Submit campaign by name:

Project.py --submit --sam_experiment mu2e --experiment mu2e --campaign MDC2020ad_digireco_043024_offspill_best_v2 --poms_role production

View all running campaigns:

Project.py --show_campaigns --view_production

View stages for your campaign:

Project.py --show_campaign_stages --campaign MDC2020ad_digireco_043024_offspill_best_v2 --view_production

Check campaign submissions:

Project.py --show_campaign_stages --campaign MDC2020ad_digireco_043024_offspill_best_v2 --view_production --check

Process multiple campaigns

You can produce campaigns for various configs described in json files data/mix.json

{
   "release_v_dts": ["r"],
   "primary_name": ["CeEndpoint", "CePlusEndpoint"],
   "db_purpose": ["perfect", "best"],
   "digitype": ["Mix1BB", "Mix2BB"]
}

The script to produce campaigns based on data/mix.json

./ProjPy/gen_Campaigns.py --ini_file ProjPy/mdc2020_mixing.ini --cfg_file CampaignConfig/mdc2020_digireco.cfg --comb_json data/mix.json --simjob MDC2020ae

Inspect and then upload ini files to POMS and submit campaigns:

./ProjPy/gen_Campaigns.py --ini_file ProjPy/mdc2020_mixing.ini --cfg_file CampaignConfig/mdc2020_digireco.cfg --comb_json data/mix.json --simjob MDC2020ae --create_campaign --submit

UconDB

mu2e_ucon_prod was created 11/2021 to help with MDC2020. general ucondb docs and more docs

  • database mu2e_ucon_prod owned by nologin role mu2e_ucon_prod;
  • Kerberos-authenticated roles: brownd kutschke srsoleti
  • md5 authenticated role 'mu2e_ucon_web' (for POMS)
  • port is 5458 (on ifdb11/ifdb12)
https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/... - not cached, external and internal access
http://dbdata0vm.fnal.gov:9090/mu2e_ucondb_prod/app/... - not cached, internal access only 
https://dbdata0vm.fnal.gov:8444/mu2e_ucondb_prod/app/... - cached, external and internal access
http://dbdata0vm.fnal.gov:9091/mu2e_ucondb_prod/app/... - cached, internal access only


The following curl command create a folder in the database called "test":

curl --digest -u mu2e:$DB_PWD https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/create_folder?folder=test

and to insert a file

curl -T <file.fhicl> —digest -u mu2e:<password> https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/data/<folder name>/<file.fhicl>

The password $DB_PWD can be requested from the Production manager.

Files in a folder can be listed, formatted, by links:
https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/index
https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/UI/folder?folder=mdc2020r
or as text at the command line:

curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/folders"
curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/objects?folder=mdc2020r"

and a fcl file can be retrieved:

curl "https://dbdata0vm.fnal.gov:9443/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl"

The POMS FCL stages take care of saving the FCL files.

The SAM location of the files stored in the database looks like this:

$ samweb locate-file cnf.mu2e.POT.db_test_v12.001201_00000001.fcl
dbdata0vm.fnal.gov:/mu2e_ucondb_prod/app/data/cnf_mu2e_POT_db_test_v12_fcl

asking for locations with http schema gives urls:

samweb list-file-locations --schema=http --dim "file_name=cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl"
https://dbdata0vm.fnal.gov:8444/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl

which can be use with ifdh:

ifdh cp https://dbdata0vm.fnal.gov:8444/mu2e_ucondb_prod/app/data/mdc2020r/cnf.mu2e.CeEndpointMix2BB.MDC2020r_perfect_v1_0.001210_00000771.fcl ./temp.fcl

Updating SAM Records

Updating SAM records with tape locations is a standard part of POMS based workflow. Tape location is generally added automatically. There is a program that is run twice a day to read the DCache transfer logs and update SAM with the tape location information for files copied to tape.

However, this read-the-dcache-logs approach does sometimes miss things, often due to files missing in the boundary between logs, or if the log disk on the dCache servers is run short of space, etc.

In this case the solution is to do periodically something like this:


 export SAM_EXPERIMENT=mu2e
 samweb create-definition missing_tape_2021_07_22 "
 (start_time > '2021-07-01T00:00:00' and
 start_time < '2021-07-20T00:00:00' and
 full_path like '/pnfs/$SAM_EXPERIMENT/tape/%'
 ) minus tape_label like '%'"
 samweb count-files defname:missing_tape_2021_07_22
 sam_validate_dataset --tapeloc --name missing_tape_2021_07_22
 samweb list-files defname:missing_tape_2021_07_22 > files_not_on_tape

References