Thanks for the comment Elena. I am glad you have found this article helpful. Working with Python and geoscience data is great and there is so much potential that ML and Python can bring to it. Looking forward to seeing articles from you on the subject. 🙂
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Thanks Tim. Interesting suggestion. Would you be suggesting appending the dataframes generated in the for loop to something like a pickle file? Would there be any memory issues holding that file open while all las files are being read and appended?