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at lower classification levels and initiate new employees into routines, procedures and operation of equipment. MINIMUM QUALIFICATIONS -High school graduation, some additional training in a related field and
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. · Assist with preparation of histological sections, including immunohistochemistry and immunofluorescence labelling, following standardized protocols. · Assist with basic data processing and image
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of the application process may contact, in confidence, accessibilityrequest.hr@mcgill.ca .
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encourages members of designated groups to self-identify. Persons with disabilities who anticipate needing accommodations for any part of the application process may contact, in confidence
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the application process may contact, in confidence, accessibilityrequest.hr@mcgill.ca .
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Research Assistant 2 position is based in Prof. Prof. Odile Liboiron-Ladouceur's research lab in the department of Electrical and Computer Engineering. Position Summary: Under the general supervision
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, commensurate with the qualifications and experience of the candidate. APPLICATION PROCEDURE An application package should include: Cover letter specifically describing (a) experience with sexual and/or vulvar
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the application process may contact, in confidence, accessibilityrequest.hr@mcgill.ca .
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Research Assistant 2 position is based in Prof. Amin Emad's research lab in the department of Electrical and Computer Engineering. The RA 2 will work in collaboration with the Research Supervisor to develop
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, or behavioral data) and be proficient in Python and modern deep-learning frameworks (ideally PyTorch). Experience in computer vision, multimodal data fusion, self-supervised or generative modeling is highly