html_url,issue_url,id,node_id,user,created_at,updated_at,author_association,body,reactions,performed_via_github_app,issue https://github.com/pydata/xarray/issues/5434#issuecomment-863119738,https://api.github.com/repos/pydata/xarray/issues/5434,863119738,MDEyOklzc3VlQ29tbWVudDg2MzExOTczOA==,10137,2021-06-17T10:20:46Z,2021-06-17T10:26:12Z,NONE,"Sorry for late response. I was trying to read a big geotif file as follows. import xarray as xr xds = xr.open_rasterio(geotif_file) My task was to array indexing and to save output into disk. columns = [8,9,7,100,1050,......, 9000] rows = [18,19,17,1100,1105,......, 9100] data = xds.isel(x=xr.DataArray(columns), y=xr.DataArray(rows)) np.save('output.npy', data) Unfortunately, the performance in terms of time requirement seems quite unsatisfactory. When I saw docs on `xr.open_rasterio()`, it mentions it is an experimental now. So, I'm curious if it could be much faster when it becomes `stable`. I look forward to see it as `stable` version. Thank you so much.","{""total_count"": 0, ""+1"": 0, ""-1"": 0, ""laugh"": 0, ""hooray"": 0, ""confused"": 0, ""heart"": 0, ""rocket"": 0, ""eyes"": 0}",,910844095 https://github.com/pydata/xarray/issues/5434#issuecomment-856149219,https://api.github.com/repos/pydata/xarray/issues/5434,856149219,MDEyOklzc3VlQ29tbWVudDg1NjE0OTIxOQ==,2448579,2021-06-07T18:05:06Z,2021-06-07T18:05:06Z,MEMBER,"> For original array indexing capabilities Can you clarify what this means? ","{""total_count"": 0, ""+1"": 0, ""-1"": 0, ""laugh"": 0, ""hooray"": 0, ""confused"": 0, ""heart"": 0, ""rocket"": 0, ""eyes"": 0}",,910844095