I have a rather large HDF5 file generated by PyTables that I am attempting to read on a cluster. I am running into a problem with NumPy as I read in an individual chunk. Let's go with the example:

The total shape of the array within in the HDF5 file is,

```
In [13]: data.shape
Out[13]: (21933063, 800, 3)
```

Each entry in this array is a `np.float64`

.

I am having each node read slices of size `(21933063,10,3)`

. Unfortunately, NumPy seems to be unable to read all 21 million subslices at once. I have tried to do this sequentially by dividing up these slices into 10 slices of size `(2193306,10,3)`

and then using the following reduce to get things working:

```
In [8]: a = reduce(lambda x,y : np.append(x,y,axis=0), [np.array(data[i* \
chunksize: (i+1)*chunksize,:10],dtype=np.float64) for i in xrange(k)])
In [9]:
```

where `1 <= k <= 10`

and `chunksize = 2193306`

. This code works for `k <= 9`

; otherwise I get the following:

```
In [8]: a = reduce(lambda x,y : np.append(x,y,axis=0), [np.array(data[i* \
chunksize: (i+1)*chunksize,:10],dtype=np.float64) for i in xrange(k)])
Floating point exception
home@mybox 00:00:00 ~
$
```

I tried using Valgrind's `memcheck`

tool to figure out what is going on and it seems as if PyTables is the culprit. The two main files that show up in the trace are `libhdf5.so.6`

and a file related to `blosc`

.

Also, note that if I have `k=8`

, I get:

```
In [12]: a.shape
Out[12]: (17546448, 10, 3)
```

But if I append the last subslice, I get:

```
In [14]: a = np.append(a,np.array(data[8*chunksize:9*chunksize,:10], \
dtype=np.float64))
In [15]: a.shape
Out[15]: (592192620,)
```

Does anyone have any ideas of what to do? Thanks!