36 natural-language-processing positions at Nanyang Technological University in Singapore
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. Degree in Computer Science and Engineering or related field. Expertise in Natural Language Processing, LLMs and conversational research. Demonstrated publication record in top-tier conferences such as ACL
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in computer science/engineering. Solid knowledge in Natural Language Processing, LLMs, or conversational AI. Proficient in programming languages and frameworks relevant to machine learning
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Research Fellow/Associate, Natural Language Processing (NLP) Lee Kong Chian School of Medicine (LKCMedicine) is searching for a Research Fellow/Associate in the field of Natural Language Processing
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A Corp Lab in NTU is looking for a Research Engineer I or II to conduct advanced research in Natural Language Processing (NLP) and Generative AI, with a focus on developing a comprehensive knowledge
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the field of neural networks, natural language processing (NLP), and large language models (LLMs) Critically evaluate existing literature and propose new ideas under supervision Write papers and present
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degree in computer science, software engineering, mathematics, or a related field. Strong background in multimodal learning, natural language processing, domain adaptation, and knowledge graph
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: Master's degree in computer science, software engineering, mathematics, or a related field. Strong background in multimodal learning, natural language processing, domain adaptation, and knowledge graph
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platform to support Smart Nation applications. Key Responsibilities: A full stack developer - system and web development focusing on the application of artificial intelligence (AI) and natural language
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Recognition, Data Mining/Analytics and Natural Language Processing. Fresh PhD graduates would be considered but preferences are given to candidates with relevant working/teaching experience in universities
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support Smart Nation applications Key Responsibilities: Design and implement natural language processing (NLP) algorithms and models for semantic analysis, e.g., topic modeling, embedding, named-entity