We are recruiting participants for an interview study, where you will discuss how you would prepare a dataset, though no actual coding will occur. Study Title: Characterization of Approaches to Data Augmentation IRB Study Number: University of Chicago IRB23-1877 Researcher(s): Blase Ur, Alex Kale, Kevin Bryson Eligibility Criteria: Live in the United States and are over the age of 18. AND 1 or more of the following Experience working as a Data Scientist, Data Analyst, Data Engineer, or similar position. OR Experience working as a Machine Learning Engineer, Machine Learning Researcher, or similar position. OR Experience with data analysis, cleaning, and processing data. If you qualify, we will send a message to share further details about the study, inviting you to a one hour remote interview, for which you will be compensated $50.
Keyword: Data Cleaning
Price: $50.0
Data Analysis Data Science Python Scikit-Learn pandas R Machine Learning
About the Role: We are seeking a detail-oriented and analytical contractor to support a U.S. healthcare account mapping project. The ideal candidate will have strong experience in Excel modeling, working with healthcare claims data, and familiarity with healthcare codin...
View JobI need a before and after image. The before is a standalone Data Lake with traditional sources. The after is a standalone Data Lake with integration to 3rd party data sources (ie clean room), but I need to edit those to include Agentic Workflows, Multi-party fraud cross...
View JobI’m looking for a U.S.-based freelancer to help me build a personal and business financial command center using either Google Sheets, Excel, or Apple Numbers — whichever platform is most effective and efficient. This is not just about tracking — I need a dynamic system ...
View Job