Lecturer in Music & Data Science — Lead MSc Program

University of Leeds
Leeds
1 month ago
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A leading UK university is seeking a part-time Lecturer in Music and Data Science to lead a new Masters programme. The role requires strong teaching abilities at both undergraduate and postgraduate levels, along with a blend of technical expertise in data science and a passion for music education. Experience in digital marketing within the music industry is highly desirable. This position offers generous benefits, including 26 days of holiday plus bank holidays, and access to on-site facilities.
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