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Teacher / Tutoring jobs in Online: Data Science. (I need a talented tutor to improve myskills by online Data lessons)

Preply
scotland
6 months ago
Applications closed

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Data Science Placement Programme

Tutoring jobs in Online: Data Science.
Specialties: General.
Age range of target audience: Not Specified (1-100).
I am currently needing to do some data analysis on participants interviews transcripts.
I also need to code them first.
I am using MAXQDA.
Are you familiar with this programme? I may also use Nvivo.
Is this your area of expertises?
Responsibilities:
Draft a schedule that will improve the student's knowledge of Data Science within reasonable timeframes.
Customize lesson plans according to requirements of the student.
Utilize various teaching materials and approaches to suit the student's level of understanding the subject.
Requirements:
Good computer skills are desirable.
Must have no problems with management of lessons and students Must have knowledge of up-to-date tutoring practices and methodologies.
We offer:
Work according to your own flexible schedule.
Experience of teaching students from all over the world.
Friendly and creative international team.
Salary based on your working hours.

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