layout: global title: SystemML Performance Testing description: Description of SystemML performance testing. displayTitle: SystemML Performance Testing

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Performance Testing Algorithms User Manual

This user manual contains details on how to conduct automated performance tests. Work was mostly done in this PR and part of SYSTEMML-1451. Our aim was to move from existing bash based performance tests to automatic python based automatic performance tests.

Architecture

Our performance tests suit contains 7 families namely binomial, multinomial, stats1, stats2, regression1, regression2, clustering. Within these families we have algorithms grouped under it. Typically a family is a set of algorithms that require the same data generation script.

  • Exceptions: regression1, regression2 and binomial. We decide to include these algorithms in separate families to keep the architecture simple.

System ML Architecture

On a very high level use construct a string with arguments required to run each operation. Once this string is constructed we use the subprocess module to execute this string and extract time from the standard out.

We also use json module write our configurations to a json file. This ensure that our operations are easy to debug.

We have 7 files in performance test suit:

  • Entry File run_perftest.py
  • Supporting Files datagen.py, train.py, predict.py
  • Utility Files utils_exec.py, utils_fs.py, utils_misc.py

datagen.py, train.py and predict.py generate a dictionary. Our key is the name of algorithm being processed and values is a list with path(s) where all the data required is present. We define this dictionary as a configuration packet.

We will describe each of them in detail the following sections below.

run_perftest.py at a high level creates algos_to_run list. This list is tuple with key as algorithm and value as family to be executed in our performance test.

In datagen.py script we have all functions required to generate data. We return the required configuration packet as a result of this script, that contains key as the data-gen script to run and values with location to read data-gen json files from.

In train.py script we have functions required to generate training output. We return the required configuration packet as a result of this script, that contains key as the algorithm to run and values with location to read training json files from.

The file predict.py contains all functions for all algorithms in the performance test that contain predict script. We return the required configuration packet as a result of this script, that contains key as the algorithm to run and values with location to read predict json files from.

In the file(s) utils_*.py we have all the helper functions required in our performance test. These functions do operations like write json files, extract time from std out etc.

Adding New Algorithms

While adding a new algorithm we need know if it has to be part of the any pre existing family. If this algorithm depends on a new data generation script we would need to create a new family. Steps below to take below to add a new algorithm.

Following changes to run_perftest.py:

  • Add the algorithm to ML_ALGO dictionary with its respective family.
  • Add the name of the data generation script in ML_GENDATA dictionary if it does not exist already.
  • Add the name of the training script in ML_TRAIN dictionary.
  • Add the name of the prediction script in ML_PREDICT incase the prediction script exists.

Following changes to datagen.py:

  • Check if the data generation algorithm has the ability to generate dense and sparse data. If it had the ability to generate only dense data add the corresponding family to FAMILY_NO_MATRIX_TYPE list.
  • Create a function with familyname + _ + datagen with same input arguments namely matrix_dim, matrix_type, datagen_dir.
  • Constants and arguments for the data generation script should be defined in function.
  • Test the perf test with the algorithm with mode as data-gen.
  • Check output folders, json files, output log.
  • Check for possible errors if these folders/files do not exist. (See the troubleshooting section).

Following changes to train.py:

  • Create the function with familyname + _ + algoname + _ + train.
  • This function needs to have the following arguments save_folder_name, datagen_dir, train_dir.
  • Constants and arguments for the training script should be defined in function.
  • Make sure that the return type is a list.
  • Test the perf test with the algorithm with mode as train.
  • Check output folders, json files, output log.
  • Check for possible errors if these folders/files do not exist. (See the troubleshooting section).

Following changes to predict.py:

  • Create the function with algoname + _ + predict.
  • This function needs to have the following arguments save_file_name, datagen_dir, train_dir, predict_dir.
  • Constants and arguments for the training script should be defined in function.
  • Test the perf test with the algorithm with mode as predict.
  • Check output folders, json files, output log.
  • Check for possible errors if these folders/files do not exist. (Please see the troubleshooting section).
  • Note: predict.py will not be executed if the current algorithm being executed does not have predict script.

Current Default Settings

Default setting for our performance test below:

  • Matrix size to 10,000 rows and 100 columns.
  • Execution mode singlenode.
  • Operation modes data-gen, train and predict in sequence.
  • Matrix type set to all. Which will generate dense, sparse matrices for all relevant algorithms.

Examples

Some examples of SystemML performance test with arguments shown below:

./scripts/perftest/python/run_perftest.py --family binomial clustering multinomial regression1 regression2 stats1 stats2 Test all algorithms with default parameters.

./scripts/perftest/python/run_perftest.py --exec-type hybrid_spark --family binomial clustering multinomial regression1 regression2 stats1 stats2 Test all algorithms in hybrid spark execution mode.

./scripts/perftest/python/run_perftest.py --exec-type hybrid_spark --family clustering --mat-shape 10k_5 10k_10 10k_50 Test all algorithms in clustering family in hybrid spark execution mode, on different matrix size 10k_10 (10,000 rows and 5 columns), 10k_10 and 10k_50.

./scripts/perftest/python/run_perftest.py --algo Univar-Stats bivar-stats Run performance test for following algorithms Univar-Stats and bivar-stats.

./scripts/perftest/python/run_perftest.py --algo m-svm --family multinomial binomial --mode data-gen train Run performance test for the algorithms m-svm with multinomial family. Run only data generation and training operations.

./scripts/perftest/python/run_perftest.py --family regression2 --filename new_log Run performance test for all algorithms under the family regression2 and log with filename new_log.

./scripts/perftest/python/run_perftest.py --family binomial clustering multinomial regression1 regression2 stats1 stats2 --config-dir /Users/krishna/open-source/systemml/scripts/perftest/temp3 --temp-dir hdfs://localhost:9000/temp3 Run performance test for all algorithms using HDFS.

Google sheets API

Steps below to configure google client API:

  • Navigate to Google APIs Console.
  • Create a new project.
  • Click Enable API. Search for and enable the Google Drive API.
  • Create credentials for a Web Server to access Application Data.
  • Name the service account and grant it a Project Role of Editor.
  • Download the JSON file.
  • Copy the JSON file to your code directory and rename it to client_secret.json

Steps below to configure google sheets:

  • Create a new spread sheet with google sheets.
  • Create seperate sheets for singlenode and hybrid_spark.
  • Find the client_email inside client_secret.json and save it.
  • Back in your spreadsheet, click the Share button in the top right, and paste the client email into the People field to give it edit rights for each sheet.
  • Click Send

Result Consolidation and Plotting

We have two scripts, stats.py forpulling results from google docs and update.py to updating results to google docs or local file system.

Example of update.py would be below ./scripts/perftest/python/google_docs/update.py --file ../../temp/perf_test_singlenode.out --exec-type singlenode --tag 2 --append test.csv The arguments being --file path of the perf-test output, --exec-type execution mode used to generate the perf-test output, --tag being the realease version or a unique name, --append being an optional argument that would append the a local csv file. If instead of --append the --auth argument needs the location of the google api key file.

Example of stats.py below ./stats.py --auth ../key/client_json.json --exec-type singlenode --plot stats1_data-gen_none_dense_10k_100 --plot argument needs the name of the composite key that you would like to compare results over. If this argument is not specified the results would be grouped by keys.

Operational Notes

All performance test depend mainly on two scripts for execution systemml-standalone.py and systemml-spark-submit.py. Incase we need to change standalone or spark parameters we need to manually change these parameters in their respective scripts.

Constants like DATA_FORMAT currently set to csv and MATRIX_TYPE_DICT with density set to 0.9 and sparsity set to 0.01 are hardcoded in the performance test scripts. They can be changed easily as they are defined at the top of their respective operational scripts.

The logs contain the following information below comma separated.

algorithmrun_typeinterceptmatrix_typedata_shapetime_sec
multinomialdata-gen010k_100dense0.33
MultiLogRegtrain010k_100dense6.956
MultiLogRegpredict010k_100dense4.780

These logs and config json files can be found in temp folder ($SYSTEMML_HOME/scripts/perftest/temp) in-case not overridden by --config-dir.

--temp-dir by default points to local file system. We can change this to point to a hdfs path by --temp-dir hdfs://localhost:9000/temp where all files generated during execution will be saved.

Every time a script executes in data-gen mode successfully, we write a _SUCCESS file. If this file exists we ensures that re-runs of the same script is not possible. Support for configuration options like -stats, -explain, --conf have also been added.

Results obtained by our performance tests can be automatically uploaded to google docs.

./update.py --file ../temp/singlenode.out --exec-mode singlenode --auth client_json.json --tag 1.0

In the example above --tag can be a major/minor systemml version and --auth points to the json key required by google docs.

Currently we only support time difference between algorithms in different versions. This can be obtained by running the script below ./stats.py --auth client_json.json --exec-mode singlenode --tags 1.0 2.0

We pass different matrix shapes using --mat-shape argument.

Matrix ShapeApproximate Data Size
10k_1k80MB
100k_1k800MB
1M_1k8GB
10M_1k80GB
100M_1k800GB

For example the command below runs performance test for all data sizes described above run_perftest.py --family binomial clustering multinomial regression1 regression2 stats1 stats2 --mat-shape 10k_1k 100k_1k 1M_1k 10M_1k 100M_1k --master yarn-client --temp-dir hdfs://localhost:9000/user/systemml

By default data generated in hybrid_spark execution mode is in the current users hdfs home directory.

Note: Please use this command pip3 install -r requirements.txt before using the perftest scripts.

Troubleshooting

We can debug the performance test by making changes in the following locations based on

  • Please see utils_exec.py function subprocess_exec.
  • Please see run_perftest.py. Changing the verbosity level to 0 allows us to log more information while the script runs.
  • Eyeballing the json files generated and making sure the configuration arguments are correct.