Machine learning/computational biology postdoctoral fellows needed immediately to work in the Center for Clinical and Translational Metagenomics at Harvard Medical School in the research group of Dr. Georg Gerber (http://gerber.bwh.harvard.edu). The successful applicant will develop and apply novel statistical/machine learning methods to: 

– Infer dynamic behaviors of the microbiota in human subjects and experimental animal systems

– Infer microbe-microbe and host-microbe interaction networks in natural and synthetic biology systems

– Predict host phenotypes, including disease status in patients, from static or longitudinal microbiome and host immune system data

Qualifications:

– PhD in computer science, applied mathematics, statistics, or other highly quantitative discipline from top institution

– Previous experience performing high-quality machine learning/statistical research using Bayesian methods

– Strong mathematical abilities with track record creating novel models and inference algorithms

– Some previous experience modeling biological systems (microbiome experience desirable, but not required)

– Experience implementing and running algorithms in high-performance parallel computing environments

– Excellent publication track record

– Excellent ability to communicate complex ideas and work on multidisciplinary teams with others not versed in machine learning/statistical methods

Applications will be accepted until the position is filled, although priority will be given to applications received by April 15, 2015.

Send cover letter and CV to ggerber@partners.org

Applications without a cover letter responsive to this posting will not be considered.


-- Descargar Postdoctoral fellow in machine learning/computational microbiology at Harvard Medical School como PDF --