Replies: 2 comments
-
If you agree with the gui-to-a-book idea above, then that's one approach. That will support our courses when they follow one or more books written by others.
What have I missed. I suggest there is material here for a course in our data science for development course. And I suggest that many data science courses quickly advance to tools and advanced methods, when simple tools are often most of what's needed. So, this exploration of data might go as far as the descriptive statistics. But I suggest there is enough material for a follow-up course that covers data tidying and summaries and visualisation and tabulation. If we need more then it could include reporting and archiving. I don't know how bid a course is, but I would be more concerned from the above that we have too much material for 2 Modules, rather than too little. The first course could perhaps be called The Data. The second could perhaps be Data Processing. In terms of our basic book - Introduction to Data Science, we should relate the the book, but go further. I suggest the Data module covers the data in the book, and the accompanying R package includes many data sets - we go further in our treatment. The last part of the book is on Productivity Tools. I now wonder whether that should become another Module in our course, rather than trying to include it here. We could mention them here perhaps so the main Module is Optional. I suggest these 2 modules might be compulsory. An optional course I would quite like to prepare is then R from R-Instat. This is one of 3 optional courses. One is R, the second is python and this is the third. Probably one is compulsory, but not more than 1 will be credited. If more than 1, then the best mark counts. If that's not possible, then they could all 3 be optional - but you still can't get credit for more than 1. |
Beta Was this translation helpful? Give feedback.
-
I have now had a useful discussion with @jkmusyoka and we propose to use R-Instat on his first-year course, which is on descriptive statistics. This doesn't fit with the books idea, but is where R-Instat is strong, so that's great. Some information about his courses is as follows: |
Beta Was this translation helpful? Give feedback.
-
I would like to explore this idea further with @jkmusyoka and @rachelkg in relation to one, or more, of his courses in 2023. I am keen that our "home team" becomes more serious and therefore uses R-Instat in supporting the teaching of statistics and data science. I suggest my formula fits well with Maseno, and also with James' interests in statistical education! There are some principles here and therefore quite a lot that can be reported - in papers and in meetings for someone who specialises in statistics education.
Beta Was this translation helpful? Give feedback.
All reactions