Sort by
Refine Your Search
-
developing innovative quantitative approaches to improve regulatory decision making for generic drugs by fully utilizing the large amount of data available to FDA. DQMM is a fast-paced, dynamic scientific
-
-on experience that complements the participant’s educational and professional background and help the participant gain knowledge in processing and analyzing large volumes of bioacoustics data. Participants will
-
analysis of large, diverse datasets including field experimental data, geospatial data, and time series data. Experience with machine learning and statistical learning. Familiarity with various management
-
the participant’s educational and professional background and help the participant gain knowledge in processing and analyzing large volumes of bioacoustics data. Participants will use a range of spatial and
-
institution systems may be submitted. Click here for detailed information about acceptable transcripts. A current resume/CV, including academic history, employment history, relevant experiences, and
-
of combat related orthopaedic trauma. In particular, contemporary cell / molecular biology in vitro approaches as well as clinically relevant small and large animal models of orthopaedic trauma are utilized
-
institution systems may be submitted. Click here for detailed information about acceptable transcripts. A current resume/CV, including academic history, employment history, relevant experiences, and
-
institution systems may be submitted. Click here for detailed information about acceptable transcripts. A current resume/CV, including academic history, employment history, relevant experiences, and
-
institution systems may be submitted. Click here for detailed information about acceptable transcripts. A current resume/CV, including academic history, employment history, relevant experiences, and
-
multidisciplinary skills ranging from honey bee embryonic cell line research to large data analysis and modeling given the nature of the broad organismal to landscape level study. The fellow will also gain