Community Support (Archived) — uzam asked a question.
my notebook shows ‘test.csv’ doesnot exist while submitting the week 4 of the course appliesd machine learning in Python
anyone know how to rectify this problem?
- Learner Support
raunakbhutoria
Hi @uzam and @Sumiran
I have recently completed the specialization and did face similar problems with some other files as they got deleted by me by mistake or some other issue happened. It is possible that the file may have been deleted or did not load properly from the readonly file. If you carefully search through the Discussion Forum of the course, you will find a line of code that creates a copy of the readonly file which can be edited and needs to be used for the assignment. I do not remember the specific line of code, but do remember that the solution is available on the Discussion Forums.
Solution to all problems related to the assignments can generally very easily be found on the discussion forums including problems with loading files or files not existing or some other error being caused.
Hope this helps and you can find the solution.
I’ve got the exact same problem !!
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