I'm a beginner python user and I've ran the following code on both python2.7 and python3.4.3

```
import matplotlib.pyplot as plt
import numpy as np
import scipy.stats as stats
alpha = 1
n = 100
u = stats.uniform(0,1)
F_inverse = lambda u: 1/alpha*np.log(1/(1-u))
v = np.array(map(F_inverse, u.rvs(n)))
print(v)
fig, ax = plt.subplots(1,1)
stats.probplot(v, (1,), dist='expon', plot=ax)
plt.show()
```

On python2 i get a nice array like this:

```
array([ 2.29133808e+00, 1.63236151e+00, 6.77776227e-01,
3.33668250e-01, 1.77830890e+00, 3.06193068e-01,
2.10677775e+00, 1.30525788e-01, 2.97056775e-01,
...
1.31463775e+00, 1.41840428e-03, 8.60594737e-01,
1.80644880e-01])
```

On python3 i get this:

```
array(<map object at 0x7f8aab6f3ef0>, dtype=object)
```

If I change this:

```
v = np.array(map(F_inverse, u.rvs(n)))
```

to

```
v = list(map(F_inverse, u.rvs(n)))
```

it works fine on both but I would want to use an array instead. Is there a way to get this to work with np.array?

`list(map(foo, bar))`

on Py3 is exactly equivalent to`map(foo, bar)`

on Py2. So if the latter works somewhere on Py2, and it must work that way on Py3, substitute in the former, and it will be fine. – ShadowRanger Feb 18 '17 at 2:21