Document feedback

Question document fragment

When a question document fragment contains a formula, it is displayed as a space.

Submission type
issue

It's a little complicated...

I'd like to ask someone.

Please select the submission type

Problem type
Specifications and Common Mistakes

- Specifications and Common Mistakes:

- Misspellings or punctuation mistakes,incorrect formulas, abnormal display.

- Incorrect links, empty cells, or wrong formats.

- Chinese characters in English context.

- Minor inconsistencies between the UI and descriptions.

- Low writing fluency that does not affect understanding.

- Incorrect version numbers, including software package names and version numbers on the UI.

Usability

- Usability:

- Incorrect or missing key steps.

- Missing main function descriptions, keyword explanation, necessary prerequisites, or precautions.

- Ambiguous descriptions, unclear reference, or contradictory context.

- Unclear logic, such as missing classifications, items, and steps.

Correctness

- Correctness:

- Technical principles, function descriptions, supported platforms, parameter types, or exceptions inconsistent with that of software implementation.

- Incorrect schematic or architecture diagrams.

- Incorrect commands or command parameters.

- Incorrect code.

- Commands inconsistent with the functions.

- Wrong screenshots.

- Sample code running error, or running results inconsistent with the expectation.

Risk Warnings

- Risk Warnings:

- Lack of risk warnings for operations that may damage the system or important data.

Content Compliance

- Content Compliance:

- Contents that may violate applicable laws and regulations or geo-cultural context-sensitive words and expressions.

- Copyright infringement.

Problem description

Agree to Privacy Statement

mindspore.ops.cummin

mindspore.ops.cummin(x, axis)[source]

Computation of the cumulative minimum of elements of ‘x’ in the dimension axis, and the index location of each maximum value found in the dimension ‘axis’.

It returns the cumulative minimum of elements and the index.

yi=min(x1,x2,...,xi)
Parameters
  • x (Tensor) – The input tensor, rank of input_x > 0.

  • axis (Int) – The dimension to do the operation, The axis is in the range from -len(input_x.shape) to len(input_x.shape) - 1. When it’s in the range from 0 to len(input_x.shape) - 1, it means starting from the first dimension and counting forwards, When it’s less than 0, it means we’re counting backwards from the last dimension. For example, -1 means the last dimension.

Outputs:
  • output (Tensor) - The output tensor of the cumulative minimum of elements.

  • indices (Tensor) - The result tensor of the index of each minimum value been found.

Raises
  • TypeError – If input_x is not a Tensor.

  • TypeError – If ‘axis’ is not an int.

  • ValueError – If ‘axis’ is out the range of [-len(input_x.shape) to len(input_x.shape) - 1]

Supported Platforms:

Ascend

Examples

>>> from mindspore import Tensor, ops
>>> import mindspore
>>> a = Tensor([-0.2284, -0.6628,  0.0975,  0.2680, -1.3298, -0.4220], mindspore.float32)
>>> output = ops.cummin(a, axis=0)
>>> print(output[0])
[-0.2284 -0.6628 -0.6628 -0.6628 -1.3298 -1.3298]
>>> print(output[1])
[0 1 1 1 4 4]