Business Management Lecturers (Master Degree or Higher Required)
Job description
About Swinburne
Swinburne Vietnam Alliance Program is an international alliance between Swinburne University of Technology in Australia and FPT University in Vietnam. Swinburne is a globally recognized institution dedicated to providing high-quality education and research. Our campus in Vietnam offers innovative programs that prepare students for the challenges of the modern workforce.
Swinburne University of Technology is a prestigious university ranked 285th and belongs to the top 1% of the top universities in the world (QS Ranking, 2024), with a history of more than 100 years since its establishment. In Vietnam, Swinburne University of Technology has been known for more than 20 years as a sponsor for the champions of the game show “Road to Olympia” with study opportunities in Australia.
We are seeking enthusiastic and dedicated full-time lecturers in various subjects who are passionate about education. Successful candidates will contribute significantly to teaching, curriculum development, and research while engaging in administrative responsibilities and other activities.
Job Description:
• Participate in lectures on Business Management course: Business Administration, International Business, Digital Marketing, Finance, Logistic, Data Analysis and Business Analysis…
• Coordinate with the relevant unit chairs at Swinburne headquarter.
• Adhere to the academic teaching standards of Swinburne University of Technology (Australia).
• Teaching duties include creating course materials, delivering lectures and tutorial sessions, assisting students, designing and administering assessments, grading work and making enhancements based on course evaluations and student feedback.
• Participate in other activities as required by the Affiliate Center and at the request of the Center Director or the Head of Department.
Job requirements
• Holding Master’s Degree or higher in Business Management, Digital Marketing, Finance, Data/ Business Analysis, Logistic or equivalent qualifications, graduated from well known universities or institutions.
• Proven teaching experience in subjects related to the discipline you are applying for.
• Research initiatives and experience evidenced by publications or development of new research projects.
• Good Industry connection or professional experience.
• Good student’s connection and inspiration and students’ experience creation
• Excellent team players and collaborations
• Compassionate, positive and encouraging attitude.
Benefits:
• Negotiable and highly competitive salary corresponding to qualification, experience as well as teaching and research competencies (Details will be discussed in the Interview).
• Work in a dynamic, creative and highly integrated environment.
• Receive bonuses for international publications on ISI/SCOPUS indexed journals, patents, … up to 100 million VND/article with unlimited quantities.
• Receive allowance up to 30 million VND/person/year when presenting at international conferences.
• Get strong support to be awarded the title of Associate Professor, Professor.
• Enable to participate in training programs following FPT Corporation’s regulations.
• Receive premium healthcare insurance for employee and family (FPT Care).
• Apply tuition fee preferential policy for family members studying at FPT Education
• Have mandatory insurances such as social insurance, health insurance, unemployment insurance following Vietnam’s Law..
• Other benefits: annual vacation, teambuilding activities.
Please submit your CV by clicking on the "Apply" below.
What We Can Offer
Bonus
Healthcare Plan
Training
Job Information
31/10/2024
Experienced (non-manager)
Academic/Education > Educational Management
Quản trị Kinh doanh, Tài Chính, Tuyển dụng giáo viên, Quản Lý, Marketing
Education/Training
Any
Not required
Not shown
Job Locations
Swinburne Việt Nam - Cơ sở TP.HCM, A35 Bạch Đằng, Phường 2, quận Tân Bình, Thành phố Hồ Chí Minh, Việt Nam
A35 Bach Dang Street, Ward 2, Tan Binh District, Ho Chi Minh City
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