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@@ -777,19 +777,18 @@ class InplaceAdd(PrimitiveWithInfer): |
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Adds v into specified rows of x. Computes y = x; y[i,] += v. |
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Args: |
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- **indices** (Union[int, tuple]) - Indices into the left-most dimension of x, and determines which rows of x |
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to add with v. It is a int or tuple, whose value is in [0, the first dimension size of x). |
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indices (Union[int, tuple]): Indices into the left-most dimension of x, and determines which rows of x |
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to add with v. It is a int or tuple, whose value is in [0, the first dimension size of x). |
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Inputs: |
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- **input_x** (Tensor) - The first input is a tensor whose data type is number. |
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- **input_v** (Tensor) - The second input is a tensor who has the same dimension sizes as x except |
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the first dimension, which must be the same as indices's size. |
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the first dimension, which must be the same as indices's size. |
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Outputs: |
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Tensor, has the same shape and dtype as input. |
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Examples: |
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>>> indices = [0, 1] |
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>>> input_x = Tensor(np.array([[1, 2], [3, 4], [5, 6]]), mindspore.float32) |
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>>> input_v = Tensor(np.array([[0.5, 1.0], [1.0, 1.5]]), mindspore.float32) |
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@@ -837,13 +836,13 @@ class InplaceSub(PrimitiveWithInfer): |
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Subtracts v into specified rows of x. Computes y = x; y[i, :] -= v; return y. |
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Args: |
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- **indices** (Union[int, tuple]) - Indices into the left-most dimension of x, and determines which rows of x |
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to sub with v. It is a int or tuple, whose value is in [0, the first dimension size of x). |
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indices (Union[int, tuple]): Indices into the left-most dimension of x, and determines which rows of x |
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to sub with v. It is a int or tuple, whose value is in [0, the first dimension size of x). |
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Inputs: |
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- **input_x** (Tensor) - The first input is a tensor whose data type is number. |
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- **input_v** (Tensor) - The second input is a tensor who has the same dimension sizes as x except |
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the first dimension, which must be the same as indices's size. |
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the first dimension, which must be the same as indices's size. |
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Outputs: |
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Tensor, has the same shape and dtype as input. |
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