Skip to content

Custom Engine for the MIP platform. (manually updated mirror)

License

Notifications You must be signed in to change notification settings

HBPMedical/exareme2

 
 

Repository files navigation

Exareme2 Maintainability Test Coverage

Prerequisites

  1. Install python3.8

  2. Install poetry It is important to install poetry in isolation, so follow the recommended installation method.

Setup

Environment Setup

  1. Install dependencies

    poetry install
    
  2. Activate virtual environment

    poetry shell
    
  3. Optional To install tab completion for invoke run (replacing bash with your shell)

    source <(poetry run inv --print-completion-script bash)
    
  4. Optional pre-commit is included in development dependencies. To install hooks

    pre-commit install
    

Local Deployment

  1. Create a deployment configuration file .deployment.toml using the following template

    ip = "172.17.0.1"
    log_level = "DEBUG"
    framework_log_level ="INFO"
    monetdb_image = "madgik/exareme2_db:dev"
    rabbitmq_image = "madgik/exareme2_rabbitmq:dev"
    
    monetdb_nclients = 128
    monetdb_memory_limit = 2048 # MB
    
    algorithm_folders = "./exareme2/algorithms/exareme2,./exareme2/algorithms/flower,./tests/algorithms"
    
    worker_landscape_aggregator_update_interval = 30
    flower_execution_timeout = 30
    celery_tasks_timeout = 20
    celery_cleanup_task_timeout=2
    celery_run_udf_task_timeout = 120
    
    [controller]
    port = 5000
    
    [privacy]
    minimum_row_count = 10
    protect_local_data = false
    
    [cleanup]
    workers_cleanup_interval=10
    contextid_release_timelimit=3600 #an hour
    
    [smpc]
    enabled=false
    optional=false
    get_result_interval = 10
    get_result_max_retries = 100
    smpc_image="gpikra/coordinator:v7.0.7.4"
    db_image="mongo:5.0.8"
    queue_image="redis:alpine3.15"
    [smpc.dp]
    enabled = false
    # sensitivity = 1
    # privacy_budget = 0.1
    
    [[workers]]
    id = "globalworker"
    role = "GLOBALWORKER"
    rabbitmq_port=5670
    monetdb_port=50000
    monetdb_password="executor"
    local_monetdb_username="executor"
    local_monetdb_password="executor"
    public_monetdb_username="guest"
    public_monetdb_password="guest"
    
    [[workers]]
    id = "localworker1"
    role = "LOCALWORKER"
    rabbitmq_port=5671
    monetdb_port=50001
    local_monetdb_username="executor"
    local_monetdb_password="executor"
    public_monetdb_username="guest"
    public_monetdb_password="guest"
    smpc_client_port=9001
    
    [[workers]]
    id = "localworker2"
    role = "LOCALWORKER"
    rabbitmq_port=5672
    monetdb_port=50002
    local_monetdb_username="executor"
    local_monetdb_password="executor"
    public_monetdb_username="guest"
    public_monetdb_password="guest"
    smpc_client_port=9002
    
    

    and then run the following command to create the config files that the worker services will use

    inv create-configs
    
  2. Install dependencies, start the containers and then the services with

    inv deploy
    
  3. Optional Load the data into the db with (It is compulsory if you want to run an algorithm)

    inv load-data
    
  4. Attach to some service's stdout/stderr with

    inv attach --controller
    

    or

    inv attach --worker <WORKER-NAME>
    
  5. Restart all the worker/controller services and keep the same containers with

    inv start-worker --all && inv start-controller --detached
    

Local Deployment (without single configuration file)

  1. Create the worker configuration files inside the ./configs/workers/ directory following the ./exareme2/worker/config.toml template.

  2. Install dependencies, start the containers and then the services with

    inv deploy --monetdb-image madgik/exareme2_db:dev1.2 --celery-log-level info
    

Start monitoring tools

  1. Start Flower monitoring tool

    by choosing a specific worker to monitor

    inv start-flower --worker <WORKER-NAME>
    

    or start a separate flower instance for all of the workers with

    inv start-flower --all
    

    Then go to the respective address on your browser to start monitoring the workers.

  2. Kill all flower instances at any point with

    inv kill-flower
    

Execute an algorithm

  • Examples
    ./run_algorithm -a pca -y leftamygdala lefthippocampus -d ppmi0 -m dementia:0.1
    
    ./run_algorithm -a pearson -y leftamygdala lefthippocampus -d ppmi0 -m dementia:0.1 -p alpha 0.95
    

Acknowledgement

This project/research received funding from the European Union’s Horizon 2020 Framework Programme for Research and Innovation under the Framework Partnership Agreement No. 650003 (HBP FPA).

About

Custom Engine for the MIP platform. (manually updated mirror)

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 98.9%
  • Other 1.1%