I'm running a machine learning pipeline for segmentation of very large 3D images. I would like to store the results (dask arrays) as .png files, with each file corresponding to one slice of the dask array. Do you have any suggestions on how to implement this?
I have been trying to save the results by building a parallel for loop using the joblib dask parallel backend and then looping through the results slice by slice. This works fine until a certain point at which my pipe gets stuck without any apparent reason (no memory issue, no too many open file descriptors etc.).
array_to_save has been persisted in memory with client.persist()
with joblib.parallel_backend('dask'):
joblib.Parallel(verbose=100)(joblib.delayed(png_sav)(j, stack_height, client.compute(array_to_save[j])) for j in range(stack_height))
def png_sav(j, stack_height, prediction):
img = Image.fromarray(prediction.result().astype('uint32'), 'I') # I to save as 16 bit binary image
img.save(png_pn+str(j)+'_slice_prediction.png', "PNG")
img.close()