-
planning, geography, public policy, applied economics, or engineering. The ideal candidate will have background in urban freight research, strong skills in research design, data collection and management
-
Computer Engineering within the USC Viterbi School of Engineering. The ideal candidate will have an extensive background in one or more of the following areas: Information theory, structured statistics
-
generation data-driven stochastic and distributionally robust optimization methodologies or (ii) develop advanced fairness promoting stochastic optimization frameworks. In coordination with Prof. Shehadeh
-
publishing scientific manuscripts under the direction of the Principal Investigator Responsible for teaching techniques to other lab members Preferred Qualifications Possess a PhD or be close to the completion
-
conducting highly technical and complex research projects under the direction of Dr. Chai. The scholar will also analyze research data, provide interpretations, contribute to the development of research
-
epigenetics in the etiology of cancer and other chronic diseases. We look for a highly motivated and competitive postdoc with a detailed understanding and knowledge of genomic and epigenomic data processing and
-
conducting highly technical and complex research projects under the direction of Dr. Paine. The scholar will also analyze research data, provide interpretations, contribute to the development of research
-
conducting highly technical and complex research projects under the direction of Dr. Paine. The scholar will also analyze research data, provide interpretations, contribute to the development of research
-
considerations. Performs other related duties as assigned or requested. The university reserves the right to add or change duties at any time. Required Documents and Additional Information: Resume, cover letter
-
of genomic, epigenomic, and transcriptomic data processing and analysis, expertise in multi-omics data integration, and working experience with computational modeling and machine learning. The ideal candidate