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Kirill Smelkov authored
From time to time people keep trying to use wendelin.core with dtype=object arrays and get segfaults without anything in logs or whatever else. Wendelin.core does not support it, because in case of dtype=object elements are really pointers and data for each object is stored in separate place in RAM with different per-object size. As we are memory-mapping arrays this won't work. It also does not essentially work for numpy.memmap for the same reason: (z4+numpy) kirr@mini:~/src/wendelin$ dd if=/dev/zero of=zero.dat bs=128 count=1 1+0 records in 1+0 records out 128 bytes copied, 0.000209873 s, 610 kB/s (z4+numpy) kirr@mini:~/src/wendelin$ dd if=/dev/urandom of=random.dat bs=128 count=1 1+0 records in 1+0 records out 128 bytes copied, 0.000225726 s, 567 kB/s (z4+numpy) kirr@mini:~/src/wendelin$ ipython ... In [1]: import numpy as np In [2]: np.memmap('zero.dat', dtype=np.object) Out[2]: memmap([None, None, None, None, None, None, None, None, None, None, None, None, None, None, None, None], dtype=object) In [3]: np.memmap('random.dat', dtype=np.object) Out[3]: Segmentation fault So let's clarify this to users via explicitly raising exception when BigArray with non-appropriate dtype is trying to be created with descriptive explanation also logged. /reviewed-on nexedi/wendelin.core!4
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