Difference between revisions of "Data Management"

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Most projects have a folder on a synced folder, for example Box or DropBox. The project folder might have several folders like, government communications, budget, concept note etc. In additions to those folders you want to have one folder call '''data folder'''. All files related to data work on this project should be stored in this folder. [[Data Folder Setup |Setting up the folder for the first time]] is the most important stage when setting the data work standards for this project. This folder should include [[Master Do-files | master do-files]] that are used to run all other do-files, but are also used as a map to navigate the data work folder. Some folders have specific best practices that should be followed. A well structured project should also have clear naming conventions.
Most projects have a folder on a synced folder, for example Box or DropBox. The project folder might have several folders like, government communications, budget, concept note etc. In additions to those folders you want to have one folder call '''data folder'''. All files related to data work on this project should be stored in this folder. [[Data Folder Setup |Setting up the folder for the first time]] is the most important stage when setting the data work standards for this project. This folder should include [[Master Do-files | master do-files]] that are used to run all other do-files, but are also used as a map to navigate the data work folder. Some folders have specific best practices that should be followed. A well structured project should also have clear naming conventions.


===Naming conventions===
*Use the version control in Box/DropBox instead of naming the folders _v01, _v02, old, new, etc.
**Output tables, graphs, and documentations are an exception to this and it is good practice to date them. Instead of using versions, they should be dated for clarity. For example = "_2017June8" rather than "_v02".


==Master data sets==
==Master data sets==

Revision as of 21:12, 30 January 2017

Due to the long life span of a typical impact evaluation, where multiple generations of team members will contribute to the same data work, clear methods for organization of the data folder, the structure of the data sets in that data folder, and the identification of the observations in those data sets is critical.

Read First

  • Never work with a data set where the observations do not have standardized IDs. If you get a data set without IDs, the first thing you need to do is to create individual IDs.
  • Always create master data sets for all unit of observations relevant to the analysis.

Guidelines

  • Organize information on the topic into subsections. for each subsection, include a brief description / overview, with links to articles that provide details

Organization of Project folder

Example of a data folder structure used during the course of an impact evaluation project.

Changes made to the data folder, affects the standards that field coordinators, research assistants and economists will work in for years to come. It can't be stressed enough that this is one of the most important steps for the productivity of this project team and for reducing the sources of error in the data work.

Most projects have a folder on a synced folder, for example Box or DropBox. The project folder might have several folders like, government communications, budget, concept note etc. In additions to those folders you want to have one folder call data folder. All files related to data work on this project should be stored in this folder. Setting up the folder for the first time is the most important stage when setting the data work standards for this project. This folder should include master do-files that are used to run all other do-files, but are also used as a map to navigate the data work folder. Some folders have specific best practices that should be followed. A well structured project should also have clear naming conventions.


Master data sets

For each unit of observation that is relevant to the analysis (respondent in survey, level of randomization, see article for more details) we need a master data set. Common master data sets are household master data set, village master data set, clinic master data set.

These master data sets should have information on all observations that we have any data on, not just those that we sampled or included in another way.


Creation of IDs

  • All data sets should have a fully and uniquely identifying ID variable.
    • Two variables are ok, but it should be avoided in most cases. One case where multiple ID variables is good practice is panel data set, where one ID is, for example, household ID and the other variable is time.
  • After we have created IDs in the master data sets, we can then drop all identifying information that we do not need for the analysis in all other data sets that we have copied the ID to.

Additional Resources

  • list here other articles related to this topic, with a brief description and link