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dask distributed - Unable to compute `.nonzero()` because the array is too huge

I'm handing arrays with extremely huge dimensionality (over 80,000). I'm to convert the whole matrix into dask.array, call .nonzero(), then collect the result. So the code is something like this:

layer_arr = da.from_zarr(z, chunks="auto") # (8 million, 80k)

# collect
nonzero = layer_arr.nonzero()
rows, cols = nonzero

# try to compute chunk but this also blows up my memory
# cols.compute_chunk_sizes()

# save
da.to_npy_stack("col", cols)

The problem is, I can't save the result because my memory blows up. I tried to do some re-chunking to avoid this but even .compute_chunk_sizes() blows up my memory. What can I do to avoid this?

question from:https://stackoverflow.com/questions/65932899/unable-to-compute-nonzero-because-the-array-is-too-huge

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