Home - openmpp/openmpp.github.io GitHub Wiki
This is the home of the OpenM++ wiki. It consists mostly of links to other topics, organized into sections. For a brief description of what OpenM++ can bring to a micro-simulation or agent-based modelling project please see the Features section. Our Glossary contains brief explanations of some of the terms used in this wiki.
Quick links
Contents
- Introduction to OpenM++
- Getting started
- Model development
- Model use
- Model API and how to run models in cloud
- Model scripting
- Docker
- Features
- for programmers: OpenM++ development
- for programmers: OpenM++ design
- for programmers: OpenM++ source code
- Contact us
Introduction to OpenM++
OpenM++ is an open source platform to develop, use, and deploy micro-simulation or agent-based models. OpenM++ was designed to enable non-programmers to develop simple or complex models. Click here for an overview of OpenM++ features.
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Getting started
This section describes how to get OpenM++ installed and working on Windows, Linux, or MacOS, for model users or for model developers. The installation kits include a collection of simple illustrative models. That same collection of models is also present in the cloud, where it can be accessed from any web browser, with no installation required. For more information on the OpenM++ cloud collection, please Contact us.
- Download OpenM++ for Windows, Linux or MacOS↗
- Windows: Quick Start for Model Users
- Windows: Quick Start for Model Developers
- Linux: Quick Start for Model Users
- Linux: Quick Start for Model Developers
- MacOS: Quick Start for Model Users
- MacOS: Quick Start for Model Developers
- Model Run: How to Run the Model
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Model development
Platform-independent information:
- Model Development Topics: A list of topics related to model development in OpenM++
Platform-specific information:
- Windows: Create and Debug Models
- Linux: Create and Debug Models
- MacOS: Create and Debug Models
- MacOS: Create and Debug Models using Xcode
Modgen-specific information:
- Modgen: Convert case-based model to openM++
- Modgen: Convert time-based model to openM++
- Modgen: Convert Modgen models and usage of C++ in openM++ code
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Model use
This section describes how to use a model once built.
- How To: Set Model Parameters and Get Results
- Model Data Import-Export: How to Use dbcopy↗
- Model Run: How model finds input parameters
- Model Output Expressions
- Model Run Options and ini-file
- OpenM++ ini-file format
- UI: How to start user interface
- UI: openM++ user interface
- UI: Create new or edit scenario
- UI: Upload input scenario or parameters
- UI: Run the Model
- UI: Use ini-files or CSV parameter files
- UI: Compare model run results
- UI: Aggregate and Compare Microdata
- UI: Filter run results by value
- UI: Disk space usage and cleanup
- UI Localization: Translation of openM++
Modgen-specific information:
- Modgen: CsvToDat utility: Command-line utility to convert CSV parameters to DAT format
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Model API and how to run models in cloud
The model API provides programmatic access to scenario management, model inputs, model runs, and model outputs.
It is implemented by the OpenM++ oms
web service, which uses standard JSON to communicate with a controlling application.
The worked examples in Model scripting provide practical illustrations of how to use the model API and the oms
service to automate an analysis.
Incidentally, the browser-based OpenM++ user interface uses the model API and the oms
service for all model-specific operations.
It is also possible to create workspace for model users in cloud using oms
web-service.
- Oms: openM++ web-service
- Oms: openM++ web-service API
- Oms: How to prepare model input parameters
- Oms: Cloud and model runs queue
- Documentation and source code: Go library and tools↗
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Model scripting
The topics in this section illustrate model-based analysis in two different scripting environments: Python and R. The Model API is used in these environments to create scenarios, run the model iteratively, and retrieve results for graphical presentation in the scripting environment.
- Use R to save output table into CSV file
- Use R to save output table into Excel
- Run model from R: simple loop in cloud
- Run RiskPaths model from R: advanced run in cloud
- Run RiskPaths model in cloud from local PC
- Run model from R and save results in CSV file
- Run model from R: simple loop over model parameter
- Run RiskPaths model from R: advanced parameters scaling
- Run model from Python: simple loop over model parameter
- Run RiskPaths model from Python: advanced parameters scaling
- OpenMpp R package documentation↗
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Docker
Docker is a technology used here to quickly replicate preconfigured operating system environments containing OpenM++ functionality.
- Windows: Use Docker to get latest version of OpenM++
- Linux: Use Docker to get latest version of OpenM++
- RedHat 8: Use Docker to get latest version of OpenM++
- DockerHub: image to run openM++ models↗
- DockerHub: image to build latest openM++ version↗
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Features
Here is a summary of some OpenM++ features:
General features:
- open source: OpenM++ and all components are licensed under the very broad MIT license.
- cross-platform: Model development and use on Windows, Linux, or MacOS.
- standards-based: Uses industry standard formats and technologies.
- zero-footprint: File-based installation requires no elevation of privileges.
Model developer features:
- high-level language: Model types, parameters, entities, events, tables, etc. are specified using a compact domain-specific language targeted to microsimulation.
- scalable complexity: From simple 'toy' models to highly complex models.
- modularity: New events and processes can be added to a model in a new module, often with little or no modification to existing modules.
- continuous or discrete time, or a mixture.
- supports multiple versions: Multiple OpenM++ versions can be installed and a single environment variable used to choose among them.
- result compare: Supports rapid comparison of all model outputs during incremental model development.
Computational features:
- scalable computation: Designed to scale linearly with population size or replicates when possible, N log N scaling for typical interacting populations.
- grid-enabled, cloud-enabled: Supports MPI for multi-processing to distribute execution of replicates to a small or large computational grid or to the cloud, with automatic result assembly.
- multi-threaded: Supports multi-threading for parallel execution of replicates on desktop or server.
- on-the-fly tabulation: Tables are computed during the simulation, eliminating the need to output voluminous microdata for subsequent tabulation.
- computationally efficient: The model specification is transformed to C++ which is processed by an optimizing C++ compiler to produce a highly efficient executable program.
Usability features:
- generated UI: A model-specific UI is generated from the model specification.
- browser-based UI: The UI requires only a browser, and runs on almost any modern browser.
- cloud-enabled: Models can be deployed to a cloud and accessed remotely over the web, from a browser.
- multilingual support: For UI and for model, with real-time language switching
Analyst features:
- continuous time tabulation: Powerful but easy to use language constructs to tabulate time-in-state, empirical hazards, transitions counts, state changes, etc.
- replicate support: All tables can have underlying replicate simulations to assess the uncertainty of any cell of any output table. Statistical measures of uncertainty are computed for all cells of all tables.
- automation: Models can be controlled by scripts, eg Python or R.
- import/export: Models and runs can be moved between databases, or to standard formats for upstream preparation of inputs or for downstream analysis of outputs.
- dynamic run control: A computational grid can process runs dynamically to enable whole-model estimation or calibration, with a controlling script reading run results and preparing new runs for execution.
The OpenM++ language is based on the Modgen↗ language developed at Statistics Canada. With minor modifications to model source code, existing Modgen models can work with either Modgen or OpenM++.
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OpenM++ development
This section contains technical information for programmers interested in OpenM++ itself, as opposed to model developers or model users. It describes how to set up a programming environment to build and modify OpenM++.
- Quick Start for OpenM++ Developers
- Setup Development Environment
- 2018, June: OpenM++ HPC cluster: Test Lab
- Development Notes: Defines, UTF-8, Databases, etc.
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OpenM++ design
This section contains technical and project information of interest to programmers or system architects. It dates from the inception and 'alpha' days of the OpenM++ project. The road map diagram remains somewhat relevant and may be useful for a broad overview of the major components of OpenM++ from the perspective of a programmer or system architect.
Project Status: production stable since February 2016
- 2012, December: OpenM++ Design
- 2012, December: OpenM++ Model Architecture, December 2012
- 2012, December: Roadmap, Phase 1
- 2013, May: Prototype version
- 2013, September: Alpha version
- 2014, March: Project Status, Phase 1 completed
- 2016, December: Task List
- 2017, January: Design Notes. Subsample As Parameter problem. Completed
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OpenM++ source code
This section contains technical information for programmers interested in OpenM++ itself, as opposed to model developers or model users. It contains links to the OpenM++ source code and to the documentation of that source code.
- GitHub: Run-time and compiler c++ Source code↗
- Source code documentation: Runtime library↗
- Source code documentation: Compiler↗
- GitHub: Go library, web-service and db tools Source Code↗
- Source code documentation: Go library and tools↗
- GitHub: openMpp R package↗
- Source code documentation: openMpp R package↗
- GitHub: Source code to build Docker images↗
- GitHub: OpenM++ UI frontend↗
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Contact Us
- OpenM++ web-site↗
- E-mail:
openmpp dot org at gmail dot com
- License, Copyright and Contribution: OpenM++ is Open Source and Free
- MIT License↗
- OpenM++ on GitHub↗
- OpenM++ on DockerHub↗
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