slice#
- metatensor.slice(tensor: TensorMap, axis: str, labels: Labels) TensorMap [source]#
Slice a
TensorMap
along either the"samples"
or"properties"` ``axis
.labels
is aLabels
objects that specifies the samples/properties (respectively) names and indices that should be sliced, i.e. kept in the outputTensorMap
.This function will return a
TensorMap
whose blocks are of equal or smaller dimensions (due to slicing) than those of the input. However, the returnedTensorMap
will be returned with the same number of blocks and the corresponding keys as the input. If any block upon slicing is reduced to nothing, i.e. in the case that it has none of the specifiedlabels
along the"samples"
or"properties"
axis
, an empty block (i.e. a block with one of the dimension set to 0) will used for this key, and a warning will be emitted.See the documentation for the
slice_block()
function to see how an individualTensorBlock
is sliced.- Parameters:
- Returns:
a
TensorMap
that corresponds to the sliced input tensor.- Return type:
- metatensor.slice_block(block: TensorBlock, axis: str, labels: Labels) TensorBlock [source]#
Slices an input
TensorBlock
along either the"samples"
or"properties"
axis
.labels
is aLabels
objects that specify the sample/property names and indices that should be sliced, i.e. kept in the outputTensorBlock
.If none of the entries in
labels
can be found in theblock
, the dimension corresponding toaxis
will be sliced to 0, and the returned block with have a shape of either(0, n_components, n_properties)
or(n_samples, n_components, 0)
.- Parameters:
block (TensorBlock) – the input
TensorBlock
to be sliced.axis (str) – a
str
indicating the axis along which slicing should occur. Should be either “samples” or “properties”.labels (Labels) – a
Labels
object containing the names and indices of the “samples” or “properties” to keep in the sliced outputTensorBlock
.
- Return new_block:
a
TensorBlock
that corresponds to the sliced input.- Return type: