Postdoctoral Fellowship in Visualization and Machine Learning at Harvard University
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Position
Details
Title | Postdoctoral Fellowship in Visualization and Machine Learning at Harvard University |
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School | Harvard John A. Paulson School of Engineering and Applied Sciences |
Department/Area | Computer Science |
Position Description | The Interactive Insight Lab in the School of Engineering and Applied Sciences (SEAS) at Harvard University seeks motivated postdoctoral fellows with a Ph.D. in computer science/engineering or a related field to work on research projects in the areas of data visualization and machine learning. In addition to working closely with graduate students and collaborators on research projects, the candidate is expected to actively participate in writing grant proposals. |
Basic Qualifications | Ph.D. in computer science/engineering or a related field |
Additional Qualifications | Candidate should have a substantial publication history in top visualization or machine learning venues, and good teamwork and communication skills. |
Special Instructions | A complete application must include a cover letter, curriculum vitae, and three letters of reference. |
Contact Information | Mark Peterson |
Contact Email | mpeterson1@g.harvard.edu |
Equal Opportunity Employer | Harvard is an equal opportunity employer and all qualified applicants will receive consideration for employment without regard to race, color, sex, gender identity, sexual orientation, religion, creed, national origin, ancestry, age, protected veteran status, disability, genetic information, military service, pregnancy and pregnancy-related conditions, or other protected status. |
Minimum Number of References Required | 3 |
Maximum Number of References Allowed | 3 |
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Supplemental Questions
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Applicant Documents
Required Documents
- Curriculum Vitae
- Cover Letter
- Statement of Research
- Publication
- Publication 2
- Publication 3
- URL
- Publication 4
- Publication 5