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Data science is a field that’s complex and diverse. If you’re trying to learn data science and become a data scientist it can be easy to fall down a rabbit hole of machine learning or data processing.
To a certain extent, that’s good. To be an effective data scientist you need to be curious. You need to be prepared to take on a range of different tasks and challenges.
But that’s not always that efficient: if you want to learn quickly and effectively, you need a clear structure – a curriculum – that you can follow.
This post will show you what you need to learn and how to go about it.