Completion Date 22-Aug-2019 Expiration Date N/A Record ID 32735555
This is to certify that:
Partha Chudal
Has completed the following CITI Program course:
Responsible Conduct of Research (Curriculum Group) Biomedical Responsible Conduct of Research Course (Course Learner Group)
1 - RCR (Stage)
Under requirements set by:
University of Nevada, Las Vegas
Verify at www.citiprogram.org/verify/?w2ff58d4b-ea1e-4b7e-b23a-162aa575b615-32735555
Figure C.1: Certificate of Biomedical IRB Responsible Conduct of Research Course
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