User Tools

Site Tools


development:overview

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
development:overview [2014/12/04 15:06]
frank_defalco
development:overview [2017/07/07 18:16] (current)
frank_defalco [Software]
Line 4: Line 4:
  
 The OHDSI developer community is committed to the development of open-source,​ high-quality,​ and easy to use tools for making the most out of observational health data. The OHDSI developer community is committed to the development of open-source,​ high-quality,​ and easy to use tools for making the most out of observational health data.
 +  * [[documentation:​software:​ohdsi-in-a-box|OHDSI-In-A-Box]]:​ a virtual machine loaded with the entire OHDSI Stack for educational use
 +  * [[development:​architecture|Architecture Overview]]: visual overview of the major components of the OHDSI technology stack
 +  * [[development:​data_architecture|Data Architecture]]:​ describes conventions of storing and processing data within the OHDSI architecture
 +  * [[development:​security|Security]]:​ describes the security layer used in the OHDSI applications (Shiro)
 +  * [[development:​guidelines|Developer Guidelines]]:​ discusses approaches to software development adopted by the OHDSI community
 +  * [[development:​roadmap|Architecture Roadmap]]: lays out the evolution of the architecture over time
  
  
-  * [[development:​guidelines|Developer Guidelines]] +===== Methodology ​=====
-  * [[development:​release schedule|Release Schedule]] +
-  * [[development:​issue tracker|GitHub Issue Tracker]] +
- +
- +
-==== Methodology ====+
  
 OHDSI Methodology developers comprise experts in the fields of epidemiology,​ biostatistics,​ computer science, and clinical research who are committed to creating and validating high-quality methods for observational data research. OHDSI Methodology developers comprise experts in the fields of epidemiology,​ biostatistics,​ computer science, and clinical research who are committed to creating and validating high-quality methods for observational data research.
  
 +  * [[development:​best practices estimation|Best Practices for Estimating Population-Level Effects]]
  
development/overview.1417705565.txt.gz · Last modified: 2014/12/04 15:06 by frank_defalco