Virtual Python Trainer - Data Science & Intro Courses

Codetown
Cambridge
1 month ago
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An innovative community is seeking a Python expert to lead engaging classes in both Introductory and Advanced Python, as well as Python for Data Science. This role offers a unique opportunity to share your knowledge in a virtual setting, helping students grasp the essentials of Python programming and its applications in data science. With a flexible teaching schedule, you will be instrumental in shaping the learning experience for aspiring developers. If you are passionate about teaching and proficient in Python, this position is perfect for you.
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