A toy-case for my problem:

I have a numpy array of size, say, 1000:

```
import numpy as np
a = np.arange(1000)
```

I also have a "projection array" **p** which is a mapping from **a** to another array **b**:

```
p = np.random.randint(0,1000,(1000,1000))
```

It is easy to get **b** from **a** using "fancy indexing":

```
b = a[p]
```

But **b** is not a view, as noted by several previous questions/answers and the numpy documentation.

Unfortunately, in my case only the values in **a** change over the course of a long simulation and using fancy indexing at each iteration to obtain **b** becomes very costly. I only read from **b** and do not modify it.

I understand it is not possible (yet) to solve this with fancy indexing.

I was wondering if anyone had a similar problem/bottleneck and came up with some other workaround?

`b`

accessed in every iteration? If yes, there is no cheaper way than extracting all of`b`

– you might need to improve the algorithm in other ways. If no, you don't need to build`b`

, and instead of accessing`b[i, j]`

, you can use`a[p[i, j]]`

. – Sven Marnach Apr 4 '12 at 21:19