Past Event! Note: this event has already taken place.

Data Management on Stata

October 30, 2024 at 2:00 PM to 3:30 PM

Location:Zoom
Audience:Current Students

This workshop provides a starting point for setting up and preparing datasets for quantitative analysis on Stata. Data analyses often require joining multiple datasets and restructuring the data. This workshop focuses on how to understand datasets better and further introduce steps in data manipulations and restructuring in Stata.

This workshop is intended for faculty members and students who plan on conducting statistical and econometric data analyses. Some knowledge on Stata’s operating interface is required.

Workshop leader: Tahreen Zahra, Stata Consultant, MacOdrum Library

Intended audience: This workshop is intended for faculty members and students who plan on conducting statistical and econometric data analyses. Some knowledge on Stata’s operating interface is required. Attendees do not need to be experts in quantitative analysis but some knowledge on data cleaning will be helpful.

All graduate students are welcome. If you are working as a TA, this session counts toward voluntary paid training hours, provided that you are working as a TA in the term when the training takes place.

PLEASE REGISTER BELOW

Data Management on Stata (F2024)

Personal information collected through this form will be used and disclosed by Carleton University under the authority of the Carleton University Act, 1952, and in accordance with sections 39, 41 and 42 of Ontario’s Freedom of Information and Protection of Privacy Act. The purpose of this processing is for workshop/event organization and administration. If you have any questions about the processing of personal information by Carleton University, please contact the Manager, Privacy & Access to Information, by phone at 613-520-2600 ext. 2047 or by e-mail via University_Privacy_Office@carleton.ca. By clicking submit on this form, you acknowledge that you have read this privacy notice and you consent to the uses and disclosures identified.