Teacher / Tutoring jobs in Online: Data Science. (I desire to to learn Data online with a personalised system and accomplish my learning goals fast.)

Preply
wales
10 months ago
Applications closed

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Senior Machine Learning Research Engineer - 6840

Senior Machine Learning Research Engineer

Tutoring jobs in Online: Data Science.
Specialties: General.
Age range of target audience: Not Specified (1-100).
Hey, I hope you are doing well.
I am currently pursuing my studies in Data Science and have several upcoming submissions across multiple modules, including Machine Learning, Data Visualization, Research Project, and Distributed Data Analysis.
Additionally, I am preparing for examination in Machine Learning and High-Performance Computational Infrastructures.Given the workload, I would greatly appreciate your assistance and guidance in any (or all) of these areas to help me catch up and ensure successful submission of my coursework.
I’m happy to discuss specifics based on your availability and expertise.Thank you for considering my request, I’d be grateful for a prompt response given the approaching deadlines.
Responsibilities:
Give appropriate comments on both student’s mistakes and achievements.
Focus on individual student's strengths and requirements.
Use teaching aids and materials to help the student grasp the subject better.
Plan lessons with achievable goals.
Requirements:
Able to work with people of various backgrounds and ethnicities.
Be able to use interactive learning aids during lessons.
Must have no problems with management of lessons and students Must be committed to high-quality teaching and eager to grow professionally.
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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