


## How to Fix the \'No Lapack/Blas Resources Found\' Error When Installing Scipy on Windows?
Scipy Installation Error on Windows: "No Lapack/Blas Resources Found"
When attempting to install Scipy on a 64-bit Windows 7 system, users may encounter the error message "numpy.distutils.system_info.NotFoundError: no lapack/blas resources found." This indicates that the necessary libraries for linear algebra computations are not detected.
To resolve this issue, follow the recommended approach:
Download and Install Prebuilt Binaries
- Visit the following website: http://www.lfd.uci.edu/~gohlke/pythonlibs/#scipy
- Select the latest Scipy binary package compatible with your Python version and Windows architecture (e.g., scipy-0.16.0-cp27-none-win_amd64.whl).
- Install the downloaded package using the following command:
pip install [Local File Location]\[Your specific file such as scipy-0.16.0-cp27-none-win_amd64.whl]
Prerequisites
Ensure that the following prerequisites are met before installing Scipy:
- Visual Studio 2015/2013 with Python Tools installed
- Visual Studio C Compiler for Python installed
- A compatible version of Python installed
The above is the detailed content of ## How to Fix the \'No Lapack/Blas Resources Found\' Error When Installing Scipy on Windows?. For more information, please follow other related articles on the PHP Chinese website!

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