Dataset.isel(indexers=None, drop=False, missing_dims='raise', **indexers_kwargs)[source]#

Returns a new dataset with each array indexed along the specified dimension(s).

This method selects values from each array using its __getitem__ method, except this method does not require knowing the order of each array’s dimensions.

  • indexers (dict, optional) – A dict with keys matching dimensions and values given by integers, slice objects or arrays. indexer can be a integer, slice, array-like or DataArray. If DataArrays are passed as indexers, xarray-style indexing will be carried out. See Indexing and selecting data for the details. One of indexers or indexers_kwargs must be provided.

  • drop (bool, default: False) – If drop=True, drop coordinates variables indexed by integers instead of making them scalar.

  • missing_dims ({"raise", "warn", "ignore"}, default: "raise") – What to do if dimensions that should be selected from are not present in the Dataset: - “raise”: raise an exception - “warn”: raise a warning, and ignore the missing dimensions - “ignore”: ignore the missing dimensions

  • **indexers_kwargs ({dim: indexer, ...}, optional) – The keyword arguments form of indexers. One of indexers or indexers_kwargs must be provided.


obj (Dataset) – A new Dataset with the same contents as this dataset, except each array and dimension is indexed by the appropriate indexers. If indexer DataArrays have coordinates that do not conflict with this object, then these coordinates will be attached. In general, each array’s data will be a view of the array’s data in this dataset, unless vectorized indexing was triggered by using an array indexer, in which case the data will be a copy.