Postdoctoral Fellowships in Networking Support for Machine Learning at Harvard University – Cambridge, Massachusetts
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About This Position
The postdoc will work with closely with Minlan Yu and other group members focused on networking support for machine learning systems, as well as possibly other Harvard faculty.
The candidate will be expected to publish scholarly papers, attend internal, domestic, and international conferences and meetings, and take on a mentorship role for undergraduate and graduate students.
Basic QualificationsCandidates are required to have a doctorate or terminal degree in Computer Science or a related area by the expected start date.Additional QualificationsSpecial Instructions
Contact InformationGioia SweetlandContact Emailgioia@seas.harvard.eduSalary Range$67,600 – $91,826Pay offered to the selected candidate is dependent on factors such as rank, years of experience, training or qualification, field of scholarship, and accomplishments in the field.Minimum Number of References Required3Maximum Number of References AllowedKeywordsEEO/Non-Discrimination Commitment Statement
Harvard University is committed to equal opportunity and non-discrimination. We seek talent from all parts of society and the world, and we strive to ensure everyone at Harvard thrives. Our differences help our community advance Harvard’s academic purposes.
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- Curriculum Vitae
- Cover Letter
- Statement of Research
- Publication
- Publication 2
- Publication 3