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to the PhD project Relevant publications Relevant work experience Other relevant professional activities Curious mind-set with a strong interest in protein science with a focus on IDPs and IDRs. Good language
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of Computer Science, the Technical Faculty of IT & Design. We invite applications for two fully funded PhD stipends in the area of Natural Language Processing (NLP), Knowledge Graphs (KGs), and Large Language Models
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contact info for two academic references (they will be contacted after shortlisting); • Copy of MSc diploma*; • Copy of Master thesis (in any language); • List of exams with ECTS and
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to complete a doctoral thesis in English and who do not have English as a first language or WHO have not completed an English language-based Master's programme (or an equivalent educational achievement in
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PhD project will be conducted in an international research environment. Danish language skills are not a requirement. Qualification requirements PhD stipends are allocated to individuals who hold a
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pages, 1 page = 2400 typing units) o If you are applying for stipend 2: Applicants WHO are planning to complete a doctoral thesis in English and who do not have English as a first language or WHO have
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are planning to complete a doctoral thesis in English and who do not have English as a first language or WHO have not completed an English language-based Master's programme (or an equivalent educational
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) Project description Applicants WHO are planning to complete a doctoral thesis in English and who do not have English as a first language or WHO have not completed an English language-based Master's
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professional activities Language skills The successful applicant is also required to be enterprising and to possess good interpersonal skills Place of employment The place of employment is at Department
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of advanced language models and derived use cases by focusing on one or more of the following topics in their PhD project: Training and inference of ML models on GPU clusters. Method development for scalable