SubRelu
Applicability
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Atlas 350 Accelerator Card |
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Function Usage
Performs element-wise subtraction, followed by a ReLU computation (comparing the result with 0 and taking the larger value). The formula is as follows:

Prototype
- Computation of the first n pieces of data of a tensor
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template <typename T> __aicore__ inline void SubRelu(const LocalTensor<T>& dst, const LocalTensor<T>& src0, const LocalTensor<T>& src1, 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 SubRelu(const LocalTensor<T>& dst, const LocalTensor<T>& src0, const LocalTensor<T>& src1, uint64_t mask[], const uint8_t repeatTime, const BinaryRepeatParams& repeatParams)
- Contiguous mask mode
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template <typename T, bool isSetMask = true> __aicore__ inline void SubRelu(const LocalTensor<T>& dst, const LocalTensor<T>& src0, const LocalTensor<T>& src1, uint64_t mask, const uint8_t repeatTime, const BinaryRepeatParams& repeatParams)
- Bitwise mask mode
Parameters
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Parameter |
Description |
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T |
Operand data type. For the Atlas 350 Accelerator Card, the supported data types are int16_t, half, float, int64_t, and uint64_t. For the For the For the For the |
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isSetMask |
Indicates whether to set mask inside the API.
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Parameter |
Input/Output |
Description |
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dst |
Output |
Destination operand. The type is LocalTensor, and TPosition can be VECIN, VECCALC, or VECOUT. |
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src0/src1 |
Input |
Source operands. The type is LocalTensor, and TPosition can be VECIN, VECCALC, or VECOUT. The two source operands must have the same data type as the destination operand. |
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count |
Input |
Number of elements involved in the computation. |
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mask[]/mask |
Input |
mask controls the elements that participate in computation in each iteration.
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repeatTime |
Input |
Number of iteration repeats. The Vector Unit reads 256 bytes of contiguous data for computation each time. To read the complete data for processing, the unit needs to read the input data in multiple repeats. For details about this parameter, see High-dimensional Sharding APIs. |
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repeatParams |
Input |
Parameters that control the operand address strides. They are of the BinaryRepeatParams type, and contain such parameters as those that specify the address stride of the operand for the same data block between adjacent iterations and address stride of the operand between different data blocks in a single iteration. 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
- For details about the operand address alignment requirements, see General Address Alignment Restrictions.
- For details about the constraints on operand address overlapping, see General Address Overlapping Restrictions.
- For the Atlas 350 Accelerator Card, uint64_t and int64_t support only the APIs that compute the first n pieces of data in a tensor.
Examples
- Example of high-dimensional tensor sharding computation (contiguous mask mode)
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uint64_t mask = 128; // repeatTime = 4. 128 elements are computed in one iteration, and 512 elements are computed in total. // dstBlkStride, src0BlkStride, src1BlkStride = 1. Data is continuously read and written in a single iteration. // dstRepStride, src0RepStride, src1RepStride = 8. Data is continuously read and written between adjacent iterations. AscendC::SubRelu(dstLocal, src0Local, src1Local, mask, 4, { 1, 1, 1, 8, 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 are computed in one iteration, and 512 elements are computed in total. // dstBlkStride, src0BlkStride, src1BlkStride = 1. Data is continuously read and written in a single iteration. // dstRepStride, src0RepStride, src1RepStride = 8. Data is continuously read and written between adjacent iterations. AscendC::SubRelu(dstLocal, src0Local, src1Local, mask, 4, { 1, 1, 1, 8, 8, 8 });
- Example of computing the first n pieces of data of a tensor
1AscendC::SubRelu(dstLocal, src0Local, src1Local, 512);
Input (src0Local): [1 2 3 ... 512] Input (src1Local): [0 1 4 ... 513] Output (dstLocal): [1 1 0 ... 0]