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hey folks in the last episode i mentioned that we are going to start a series of videos talking about how we can use machine learning tools to analyze microbiome data were going to use the micropml package that my lab developed but before we can do that we first need to get the data into the shape that it needs to be so that we can analyze it using micropml as well as some other tools we did something like this previously with data from a paper that my lab generated from alexandria schubert looking at clostridioides difficile so were largely going to repeat what we did in that episode again but with data from neil baxters study again looking at data collected from stool samples of people with different degrees of lesions in their colons this is such a unheralded uh part of an analysis of getting your data into the right format making sure everything looks good uh before you go on with like the cool stuff cool the cool machine learning stuff right so thats what this episode is going