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I have 5 years of NetCDF files with daily time step and running a conditional statement on the concatenated single file as following:

ds = xr.open_mfdataset('D:/*.nc', concat_dim='day')
da = ds.var.sel(lon=-79.1833333, lat=42.4, method='nearest')
con = da[(da >= 40.0) & (da <= 60.4)]
val = con.chunks
print(val[0])

It returns

(1,3,2,1)

Instead, I like it to return 0 for the year as well where the condition wasn't met (so the output should look like this 1,3,0,2,1). Any suggestion to obtain all chunk outputs even if any of it is zero?

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Try this:

ds = xr.open_mfdataset('D:/*.nc', concat_dim='day')
da = ds.var.sel(lon=-79.1833333, lat=42.4, method='nearest')
da[~(da >= 40.0) & (da <= 60.4)] == 0 # if the assignment here doesn't work 
# then try using da.where()
con = da[((da >= 40.0) & (da <= 60.4) | (da = 0.))]

| improve this answer | |
  • still missing years with zero values – Ibe Jun 10 '19 at 13:24
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I've figured it out -- not neat but works.

ds = xr.open_mfdataset('D:/*.nc', concat_dim='day')
da = ds.var.sel(lon=-79.1833333, lat=42.4, method='nearest')
con = da[(da >= 40.0) | (da <= 60.4)]
da_cnt = np.asarray(da.chunks[0]) - np.asarray(con.chunks[0]) # it returns years with zero values as well
| improve this answer | |

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