Lecture

PhD Programs at EPFL

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Description

This lecture discusses the PhD programs at EPFL, focusing on the duration, access, lab choices, salary, and research areas. It covers the selection procedure, importance of practical expertise, thesis committee guidance, candidacy exam, mentorship, timing, and core facilities available. The lecture also provides information on the EPFL School of Life Sciences and the support provided to PhD students.

Instructors (2)
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