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Description of the workplace The position is at the Department of Computer Science within a growing research group in foundations of computer science at Lund University. We expect to have 8 PhD
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medicine? We invite you to consider and apply to this great opportunity today! Principal Investigator, Nunzio Bottini, MD, PhD invites you to consider this great opportunity to join his dynamic team! The Kao
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to lead or contribute to large-scale consortia and meta-analyses; Working closely with colleagues to help interpret findings and draft manuscripts and other reports for publication; Anticipating
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Posted on Sat, 11/09/2024 - 11:35 Important Info Faculty Sponsor (Last, First Name): Gardner, Christopher Other Mentor(s) if Applicable: Clarke, Shoa, MD, PhD; Follis, Shawna, PhD, MS; Henriksen
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Course location Heidelberg Description/content The Graduate Academy As a coordinating hub for meta-disciplinary skills training, career orientation and information services, the Graduate Academy
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of knowledge and expertise in: Competencies in ASD/EBD Content Areas. Produce systematic literature reviews and meta-analytic syntheses to examine and establish evidence-based practices. Conduct individualized
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Responsibilities Qualifications Minimum Education and Experience PhD in electrical engineering, photonics, physics, or any closely related engineering field. Other Required Qualifications Proven hands-on experience
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growth. Other Responsibilities Qualifications Minimum Education and Experience PhD in electrical engineering, photonics, physics, or any closely related engineering field. Other Required Qualifications
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Published Friday 16 May 2025 Deadline Sunday 22 Jun 2025 Work area PhD Organisational unit Erasmus School of Health Policy & Management (ESHPM) Salary € 2.901 - € 3..707 Employment 0.9 fte - 1 fte
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in previous research. We propose to answer a meta question before building such models: "Can we analyze large-scale unlabelled datasets and quantify its relation to the pre-trained models