Not

Applicability

Product

Supported

Atlas A3 training products / Atlas A3 inference products

Atlas A2 training products / Atlas A2 inference products

Atlas 200I/500 A2 inference products

Atlas inference product 's AI Core

Atlas inference product 's Vector Core

x

Atlas training products

Function

Performs bitwise Not element-wise. The formula is as follows:

Prototype

  • Computation of the first n data elements of a tensor
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    template <typename T>
    __aicore__ inline void Not(const LocalTensor<T>& dst, const LocalTensor<T>& src, const int32_t& count)
    
  • High-dimensional tensor sharding computation
    • Bitwise mask mode
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      template <typename T, bool isSetMask = true>
      __aicore__ inline void Not(const LocalTensor<T>& dst, const LocalTensor<T>& src, uint64_t mask[], const uint8_t repeatTime, const UnaryRepeatParams& repeatParams)
      
    • Contiguous mask mode
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      template <typename T, bool isSetMask = true>
      __aicore__ inline void Not(const LocalTensor<T>& dst, const LocalTensor<T>& src, uint64_t mask, const uint8_t repeatTime, const UnaryRepeatParams& repeatParams)
      

Parameters

Table 1 Template parameters

Parameter

Description

T

Data type of the operand.

For Atlas training products , the supported data types are int16_t and uint16_t.

For the Atlas inference product 's AI Core, the supported data types are int16_t and uint16_t.

For Atlas A2 training products / Atlas A2 inference products , the supported data types are int16_t and uint16_t.

For Atlas A3 training products / Atlas A3 inference products , the supported data types are int16_t and uint16_t.

For Atlas 200I/500 A2 inference products , the supported data types are int16_t and uint16_t.

isSetMask

Indicates whether to set mask inside the API.

  • true: sets mask inside the API.
  • false: sets mask outside the API. Developers need to use the SetVectorMask API to set the mask value. In this mode, the mask value in the input parameter of this API must be set to the placeholder MASK_PLACEHOLDER.
Table 2 Parameters

Parameter

Input/Output

Description

dst

Output

Destination operand.

The type is LocalTensor, and the supported TPosition is VECIN, VECCALC, or VECOUT.

The start address of the LocalTensor must be 32-byte aligned.

src

Input

Source operand.

The type is LocalTensor, and the supported TPosition is VECIN, VECCALC, or VECOUT.

The start address of the LocalTensor must be 32-byte aligned.

The source operand must have the same data type as the destination operand.

count

Input

Number of elements involved in the computation.

mask[]/mask

Input

mask is used to control the elements that participate in computation in each iteration.

  • Bitwise mode: controls which elements are involved in computation bit by bit. A bit value of 1 means the corresponding element participates in computation, while 0 means it does not.

    The mask value is an array. The array length and the value range of the array elements are related to the operand data type. When the operand is 16-bit, the array length is 2, mask[0] and mask[1] ∈ [0, 264 -1] and cannot be 0 at the same time. When the operand is 32-bit, the array length is 1 and mask[0] ∈ (0, 264 – 1]. When the operand is 64-bit, the array length is 1 and mask[0] ∈ (0, 232 – 1].

    For example, if mask = [0, 8] and 8 = 0b1000, only the fourth element participates in computation.

  • Contiguous mode: indicates the number of contiguous elements that participate in computation. The value range is related to the operand data type. The maximum number of elements that can be processed in each repeat varies according to the data type. When the operand is 16-bit, mask ∈ [1, 128]. When the operand is 32-bit, mask ∈ [1, 64]. When the operand is 64-bit, mask ∈ [1, 32].

repeatTime

Input

Number of iteration repeats. The vector compute unit reads 256 bytes of contiguous data for computation each time. To process the input data, the data needs to be read and computed over multiple repeats. repeatTime indicates the number of repeats.

For details about this parameter, see High-dimensional Sharding APIs.

repeatParams

Input

Parameters that control the operand address strides. This parameter is of the UnaryRepeatParams type, including the address stride of the same DataBlock between adjacent iterations of the operand and the address stride of different DataBlocks within the same iteration of the operand.

For details about the address stride of the operand between adjacent iterations, see repeatStride. For details about the address stride of the operand between different data blocks in a single iteration, see dataBlockStride.

Returns

None

Restrictions

Example

In this example, both srcLocal and dstLocal are of the int16_t type.

For more examples, see LINK.

  • Example of high-dimensional tensor sharding computation (contiguous mask mode)
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    uint64_t mask = 256 / sizeof(int16_t);
    // repeatTime = 4, 128 elements one repeat, 512 elements total
    // dstBlkStride, srcBlkStride = 1, no gap between blocks in one repeat
    // dstRepStride, srcRepStride = 8, no gap between repeats
    AscendC::Not(dstLocal, srcLocal, mask, 4, { 1, 1, 8, 8 });
    
  • Example of high-dimensional tensor sharding computation (bitwise mask mode)
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    uint64_t mask[2] = { UINT64_MAX, UINT64_MAX };
    // repeatTime = 4, 128 elements one repeat, 512 elements total
    // dstBlkStride, srcBlkStride = 1, no gap between blocks in one repeat
    // dstRepStride, srcRepStride = 8, no gap between repeats
    AscendC::Not(dstLocal, srcLocal, mask, 4, { 1, 1, 8, 8 });
    
  • Example of computing the first n data elements of a tensor
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    AscendC::Not(dstLocal, srcLocal, 512);
    
Result example:
Input (srcLocal): [9 -2 8 ... 9 0]
Output (dstLocal): [-10 1 -9 ... -10 -1]