Skip to main content

A tool for creating and deploying computational experiments

Project description

ST4SD Runtime Core

This repository contains the runtime-core of the Simulation Toolkit for Scientific Discovery (ST4SD). The ST4SD-Runtime is a python framework, and associated services, for creating and deploying virtual-experiments - data-flows which embody the measurement of properties of systems.

A data-flow is a workflow which allows consumers to run concurrently with their producers if desired.

Developers describe their data-flows using a YAML configuration file, which is interpreted and executed by the ST4SD-Runtime.

ST4SD-Runtime supports multiple execution-backends including Kubernetes and LSF and a single YAML file can support multiple-archs and multiple run-modes via overlays.

The ST4SD-Runtime also interacts with the ST4SD-Datastore, a database which allows querying of executed virtual-experiments and retrieval of their data.

There are three parts to the ST4SD-Runtime

  • st4sd-runtime-core: The core python framework (this git repository) for describing and executing virtual experiments
  • st4sd-runtime-k8s: Extensions which enable to running and managing virtual-experiments on k8s clusters
  • st4sd-runtime-service: A RESTapi based service allowing users to add, start, stop and query virtual-experiments

Features

  • Cross-platform data-flows
    • Supports multiple backends (LSF, OpenShift/Kubernetes, local)
    • Abstracts differences between backends allowing a single component description to be used
    • Variables can be used to encapsulate platform specific options
    • Can define component and platform specific environments
  • Co-processing model
    • Consumers can be configured to run repeatedly while their producers are alive
  • Simple to replicate workflow sub-graphs over sets of inputs
  • Supports do-while constructs
  • Handles task persistence across backend allocation windows and allows user customisable restarts
  • Deploy workflows directly from github (Kubernetes stack)
  • Store and retrieve data and metadata from st4sd-datastore

Lightning Start

If you have

  1. python3 with virtualenv
  2. Have ssh access to GitHub set up

The following snippet will install st4sd-runtime-core and run a toy-workflow on your laptop

virtualenv -p python3 $HOME/st4sd-runtime-test
source $HOME/st4sd-runtime-test/bin/activate
pip install st4sd-runtime-core[deploy]
git clone http://github.com/st4sd/sum-numbers.git
elaunch.py --nostamp -l40 sum-numbers

This will create a new virtualenv called st4sd-runtime-test at $HOME/st4sd-runtime-test and install st4sd-runtime-core into it. It will also clone a repository into a directory called sum-numbers in whatever directory you run the above commands in. It will then run a toy-workflow that takes a couple of minutes to run. The toy workflow output will be in a directory called sum-numbers.instance

You can learn more about the toy-workflow, and workflow specification, here.

More Information

Our documentation website contains detailed information on installing ST4SD, writing and running virtual-experiments, along with much more.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

st4sd-runtime-core-2.0.0a9.dev16.tar.gz (696.9 kB view hashes)

Uploaded Source

Built Distribution

st4sd_runtime_core-2.0.0a9.dev16-py3-none-any.whl (670.2 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page