# Problem description

- Have a python package (like
`scipy`

), which is dependent on other packages (like `numpy`

) but `setup.py`

is not declaring that requirement/dependency.
- Building a wheel for such a package will succeed in case, current environment provides the package(s) which are needed.
- In case, required packages are not available, building a wheel will fail.

Note: Ideal solution is to correct the broken `setup.py`

by adding there required package declaration. But this is mostly not feasible and we have to go another way around.

# Solution: Install required packages first

The procedure (for installing `scipy`

which requires `numpy`

) has two steps

- build the wheels
- use the wheels to install the package you need

## Populate wheelhouse with wheels you need

This has to be done only once and can be then reused many times.

have properly configured pip configuration so that installation from wheels is allowed, wheelhouse directory is set up and overlaps with `download-cache`

and `find-links`

as in following example of `pip.conf`

:

```
[global]
download-cache = /home/javl/.pip/cache
find-links = /home/javl/.pip/packages
[install]
use-wheel = yes
[wheel]
wheel-dir = /home/javl/.pip/packages
```

install all required system libraries for all the packages, which have to be compiled

build a wheel for required package (`numpy`

)

```
$ pip wheel numpy
```

set up virtualenv (needed only once), activate it and install there `numpy`

:

```
$ pip install numpy
```

As a wheel is ready, it shall be quick.

build a wheel for `scipy`

(still being in the virtualenv)

```
$ pip wheel scipy
```

By now, you will have your wheelhouse populated with wheels you need.

You can remove the temporary virtualenv, it is not needed any more.

## Installing into fresh virtualenv

I am assuming, you have created fresh virtualenv, activated it and wish to have `scipy`

installed there.

Installing `scipy`

from new `scipy`

wheel directly would still fail on missing `numpy`

. This we overcome by installing `numpy`

first.

```
$ pip install numpy
```

And then finish with scipy

```
$ pip install scipy
```

I guess, this could be done in one call (but I did not test it)

```
$ pip install numpy scipy
```

# Repeatedly installing `scipy`

of proven version

It is likely, that at one moment in future, new release of `scipy`

or `numpy`

will be released and pip will attempt to install the latest version for which there is no wheel in your wheelhouse.

If you can live with the versions you have used so far, you shall create `requirements.txt`

stating the versions of `numpy`

and `scipy`

you like and install from it.

This shall ensure needed package to be present before it is really used.