I'm quite puzzled by this simple piece of python code:

```
data = np.arange(2500,8000,100)
logdata = np.zeros((len(data)))+np.nan
randata = logdata
for i in range(len(data)):
logdata[i] = np.log(data[i])
randata[i] = np.log(random.randint(2500,8000))
plt.plot(logdata,randata,'bo')
```

OK, I don't need a for cycle in this specific instance (I'm just making a simple example), but what really confuses me is the role played by the initialisation of randata. I would expect that in virtue of the for cycle, randata would become a totally different array from logdata, but the two arrays turn out to be the same. I see from older discussions that only way to prevent this from happening, is to initialize randata by its own `randata=np.zeros((len(data)))+np.nan`

or to make a copy `randata=logdata.copy()`

but I don't understand why randata is so deeply linked to logdata in virtue of the for cycle.

If I were to give the following commands

```
logdata = np.zeros((len(data)))+np.nan
randata = logdata
logdata = np.array([1,2,3])
print(randata)
```

then randata would still be an array of nan, differently from logdata. Why is so?

`randata`

is`logdata`

, that's why they are "deeply linked".`randata = logdata`

as an aliasing/referential operation, not a deep copy of an arbitrarily large data structure. Also, worth understanding Python Names and Values before you go too far.