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delivers programs, evaluates performance, and supports transit agencies nationwide. The OCDO leads FTA’s data strategy, culture, operations, and analytics. We transform how FTA uses data by: Applying
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be given the opportunity to copy over what they had previously submitted. All documents must be in English or include an official English translation. If you have questions about the application
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of their service lives), statistics, emerging data science tools and techniques A demonstrated ability to use a statistical programming language such as R or Python for non-linear data fitting, and optimization
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, and publication list Two educational or professional recommendations. All documents must be in English or include an official English translation. Connect with ORISE...on the GO! Download the new ORISE
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publication list Two educational or professional recommendations All documents must be in English or include an official English translation. Connect with ORISE...on the GO! Download the new ORISE GO mobile
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in Zintellect, they must click the unique link in each email request, but will be given the opportunity to copy over what they had previously submitted. All documents must be in English or include
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publication list Two educational or professional recommendations. At least one recommendation must be submitted in order for the mentor to view your application. All documents must be in English or include
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All documents must be in English or include an official English translation. Connect with ORISE...on the GO! Download the new ORISE GO mobile app in the Apple App Store or Google Play Store to help
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availability, project assignment, program rules, and availability of the participant. What are the appointment provisions? You will receive a stipend to be determined by ERDC-CHL. Stipends are typically based
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a demonstrated ability to use a statistical programming language such as R or Python. Domain knowledge demonstrated by a degree in economics, data science, statistics, forestry, natural resources