Comments (5)
Having the same issue.
My intuition is that, the error is caused by using a virtual environment within Anaconda.
The building wheel tries to look for setup.py in the system/user tmp path, which doesn't apply to a conda environment.
Adding "--no-cache-dir" to "pip install" seems to resolve the issue.
from probability.
Hey Dave / Josh,
Do you know if this supported?
from probability.
I can confirm that @Srceh's solution works for me as well; I don't know if there's a way to detect that the user is using Anaconda and change this automatically, but as this solution is easy (and should be easy enough to find by somebody searching for the error message), I'll close this.
from probability.
Having the same issue.
My intuition is that, the error is caused by using a virtual environment within Anaconda.
The building wheel tries to look for setup.py in the system/user tmp path, which doesn't apply to a conda environment.
Adding "--no-cache-dir" to "pip install" seems to resolve the issue.
Thanks a lot bro. Worked for me.
from probability.
Hello!
I am new to machine learning, I have been trying to install few libraries and versions but yet I am facing errors and I got stack with an error of building wheel while trying to install fastai 0.6 version.
I hope anyone can help
from probability.
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