Reduction over samples#
These functions allow to reduce over the sample indices of a TensorMap
or
TensorBlock
objects, generating a new TensorMap
or
TensorBlock
in which the values sharing the same indices for the indicated
sample_names
have been combined in a single entry. The functions differ by the type
of reduction operation, but otherwise operate in the same way. The reduction operation
loops over the samples in each block/map, and combines all those that only differ by the
values of the indices associated with the names listed in the sample_names
argument.
One way to see these operations is that the sample indices describe the non-zero entries
in a sparse array, and the reduction acts much like numpy.sum()
, where
sample_names
plays the same role as the axis
argument. Whenever gradients are
present, the reduction is performed also on the gradients.
See also metatensor.sum_over_samples_block()
and
metatensor.sum_over_samples()
for a detailed discussion with examples.
TensorMap operations#
- metatensor.sum_over_samples(tensor: TensorMap, sample_names: List[str] | str) TensorMap [source]#
Sum a
TensorMap
, combining the samples according tosample_names
.This function creates a new
TensorMap
with the same keys as as the inputtensor
. EachTensorBlock
is obtained summing the corresponding inputTensorBlock
over thesample_names
indices, essentially callingsum_over_samples_block()
over each block intensor
.sample_names
indicates over which dimensions in the samples the sum is performed. It accept either a single string or a list of the string with the sample names corresponding to the directions along which the sum is performed. A single string is equivalent to a list with a single element:sample_names = "center"
is the same assample_names = ["center"]
.- Parameters:
- Returns:
a
TensorMap
containing the reduced values and sample labels- Return type:
>>> from metatensor import Labels, TensorBlock, TensorMap >>> block = TensorBlock( ... values=np.array( ... [ ... [1, 2, 4], ... [3, 5, 6], ... [7, 8, 9], ... [10, 11, 12], ... ] ... ), ... samples=Labels( ... ["structure", "center"], ... np.array( ... [ ... [0, 0], ... [0, 1], ... [1, 0], ... [1, 1], ... ] ... ), ... ), ... components=[], ... properties=Labels.range("properties", 3), ... ) >>> keys = Labels(names=["key"], values=np.array([[0]])) >>> tensor = TensorMap(keys, [block]) >>> tensor_sum = sum_over_samples(tensor, sample_names="center") >>> # only 'structure' is left as a sample >>> print(tensor_sum.block(0)) TensorBlock samples (2): ['structure'] components (): [] properties (3): ['properties'] gradients: None >>> print(tensor_sum.block(0).samples) Labels( structure 0 1 ) >>> print(tensor_sum.block(0).values) [[ 4 7 10] [17 19 21]]
- metatensor.mean_over_samples(tensor: TensorMap, sample_names: str | List[str]) TensorMap [source]#
Compute the mean of a
TensorMap
, combining the samples according tosample_names
.This function creates a new
TensorMap
with the same keys as as the inputtensor
, and eachTensorBlock
is obtained averaging the corresponding inputTensorBlock
over thesample_names
indices.sample_names
indicates over which dimensions in the samples the mean is performed. It accept either a single string or a list of the string with the sample names corresponding to the directions along which the mean is performed. A single string is equivalent to a list with a single element:sample_names = "center"
is the same assample_names = ["center"]
.For a general discussion of reduction operations and a usage example see the doc for
sum_over_samples()
.
- metatensor.var_over_samples(tensor: TensorMap, sample_names: str | List[str]) TensorMap [source]#
Compute the variance of a
TensorMap
, combining the samples according tosample_names
.This function creates a new
TensorMap
with the same keys as as the inputtensor
, and eachTensorBlock
is obtained performing the variance of the corresponding inputTensorBlock
over thesample_names
indices.sample_names
indicates over which dimensions in the samples the mean is performed. It accept either a single string or a list of the string with the sample names corresponding to the directions along which the mean is performed. A single string is equivalent to a list with a single element:sample_names = "center"
is the same assample_names = ["center"]
.For a general discussion of reduction operations and a usage example see the doc for
sum_over_samples()
.The gradient is implemented as follow:
\[\nabla[Var(X)] = 2(E[X \nabla X] - E[X]E[\nabla X])\]
- metatensor.std_over_samples(tensor: TensorMap, sample_names: str | List[str]) TensorMap [source]#
Compute the standard deviation of a
TensorMap
, combining the samples according tosample_names
.This function creates a new
TensorMap
with the same keys as as the inputtensor
, and eachTensorBlock
is obtained performing the std deviation of the corresponding inputTensorBlock
over thesample_names
indices.sample_names
indicates over which dimensions in the samples the mean is performed. It accept either a single string or a list of the string with the sample names corresponding to the directions along which the mean is performed. A single string is equivalent to a list with a single element:sample_names = "center"
is the same assample_names = ["center"]
.For a general discussion of reduction operations and a usage example see the doc for
sum_over_samples()
.The gradient is implemented as follows:
\[\nabla[Std(X)] = 0.5(\nabla[Var(X)])/Std(X) = (E[X \nabla X] - E[X]E[\nabla X])/Std(X)\]
TensorBlock operations#
- metatensor.sum_over_samples_block(block: TensorBlock, sample_names: List[str] | str) TensorBlock [source]#
Sum a
TensorBlock
, combining the samples according tosample_names
.This function creates a new
TensorBlock
in which each sample is obtained summing over thesample_names
indices, so that the resultingTensorBlock
does not have those indices.sample_names
indicates over which dimensions in the samples the sum is performed. It accept either a single string or a list of the string with the sample names corresponding to the directions along which the sum is performed. A single string is equivalent to a list with a single element:sample_names = "center"
is the same assample_names = ["center"]
.- Parameters:
block (TensorBlock) – input
TensorBlock
sample_names (List[str] | str) – names of samples to sum over
- Returns:
a
TensorBlock
containing the reduced values and sample labels- Return type:
>>> from metatensor import Labels, TensorBlock, TensorMap >>> block = TensorBlock( ... values=np.array( ... [ ... [1, 2, 4], ... [3, 5, 6], ... [7, 8, 9], ... [10, 11, 12], ... ] ... ), ... samples=Labels( ... ["structure", "center"], ... np.array( ... [ ... [0, 0], ... [0, 1], ... [1, 0], ... [1, 1], ... ] ... ), ... ), ... components=[], ... properties=Labels.range("properties", 3), ... ) >>> block_sum = sum_over_samples_block(block, sample_names="center") >>> print(block_sum.samples) Labels( structure 0 1 ) >>> print(block_sum.values) [[ 4 7 10] [17 19 21]]
- metatensor.mean_over_samples_block(block: TensorBlock, sample_names: List[str] | str) TensorBlock [source]#
Averages a
TensorBlock
, combining the samples according tosample_names
.See also
sum_over_samples_block()
andmean_over_samples()
- Parameters:
block (TensorBlock) – input
TensorBlock
sample_names (List[str] | str) – names of samples to average over
- Returns:
a
TensorBlock
containing the reduced values and sample labels- Return type:
- metatensor.var_over_samples_block(block: TensorBlock, sample_names: List[str] | str) TensorBlock [source]#
Computes the variance for a
TensorBlock
, combining the samples according tosample_names
.See also
sum_over_samples_block()
andstd_over_samples()
- Parameters:
block (TensorBlock) – input
TensorBlock
sample_names (List[str] | str) – names of samples to compute the variance for
- Returns:
a
TensorBlock
containing the reduced values and sample labels- Return type:
- metatensor.std_over_samples_block(block: TensorBlock, sample_names: List[str] | str) TensorBlock [source]#
Computes the standard deviation for a
TensorBlock
, combining the samples according tosample_names
.See also
sum_over_samples_block()
andstd_over_samples()
- Parameters:
block (TensorBlock) – input
TensorBlock
sample_names (List[str] | str) – names of samples to compute the standard deviation for
- Returns:
a
TensorBlock
containing the reduced values and sample labels- Return type: