Trunc
Applicability
Product |
Supported |
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Atlas 350 Accelerator Card |
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Function Usage
Truncates floating point numbers element-wise, that is, rounding towards zero. The formula is as follows:

Examples:
Trunc(3.9) = 3
Trunc(-3.9) = -3
Prototype
- Pass the temporary space through the sharedTmpBuffer input parameter.
- All or part of the source operand tensors are involved in computation.
1 2
template <typename T, bool isReuseSource = false> __aicore__ inline void Trunc(const LocalTensor<T>& dstTensor, const LocalTensor<T>& srcTensor, const LocalTensor<uint8_t>& sharedTmpBuffer, const uint32_t calCount)
- All source operand tensors are involved in computation.
1 2
template <typename T, bool isReuseSource = false> __aicore__ inline void Trunc(const LocalTensor<T>& dstTensor, const LocalTensor<T>& srcTensor, const LocalTensor<uint8_t>& sharedTmpBuffer)
- All or part of the source operand tensors are involved in computation.
- Allocate the temporary space through the API framework.
- All or part of the source operand tensors are involved in computation.
1 2
template <typename T, bool isReuseSource = false> __aicore__ inline void Trunc(const LocalTensor<T>& dstTensor, const LocalTensor<T>& srcTensor, const uint32_t calCount)
- All source operand tensors are involved in computation.
1 2
template <typename T, bool isReuseSource = false> __aicore__ inline void Trunc(const LocalTensor<T>& dstTensor, const LocalTensor<T>& srcTensor)
- All or part of the source operand tensors are involved in computation.
Precision conversion is involved in the internal implementation of this API. Therefore, extra temporary space is required to store intermediate variables during computation. The temporary space can be allocated through the API framework or passed by developers through the sharedTmpBuffer input parameter.
- When the API framework is used for temporary space allocation, developers do not need to allocate the space, but must reserve the required size for the space.
- When the sharedTmpBuffer input parameter is used for passing the temporary space, the tensor serves as the temporary space. In this case, the API framework is not required for temporary space allocation. This enables developers to manage the sharedTmpBuffer space and reuse the buffer after calling the API, so that the buffer is not repeatedly allocated and deallocated, improving the flexibility and buffer utilization.
If the API framework is used, developers must reserve the temporary space. If sharedTmpBuffer is used, developers must allocate space for the tensor. To obtain the size of the temporary space (BufferSize) to be reserved, use the API provided in GetTruncMaxMinTmpSize.
Parameters
Parameter |
Description |
|---|---|
T |
Data type of the operand. For the Atlas 350 Accelerator Card, the supported data types are half and float. For the For the For the |
isReuseSource |
Whether the source operand can be modified. This parameter is reserved. Pass the default value false. |
Parameter |
Input/Output |
Description |
|---|---|---|
dstTensor |
Output |
Destination operand. The type is LocalTensor, and TPosition can be VECIN, VECCALC, or VECOUT. |
srcTensor |
Input |
Source operand. The type is LocalTensor, and TPosition can be VECIN, VECCALC, or VECOUT. |
sharedTmpBuffer |
Input |
Temporary buffer. The type is LocalTensor, and TPosition can be VECIN, VECCALC, or VECOUT. This parameter is used to store intermediate variables during complex computation in Trunc and is provided by developers. For details about how to obtain the temporary space size (BufferSize), see GetTruncMaxMinTmpSize. |
calCount |
Input |
Number of elements involved in the computation. |
Returns
None
Restrictions
- For the
Atlas inference product AI Core, the input data must be within the range of [–2147483647.0, 2147483647.0]. - The source operand address can overlap the destination operand address.
- The address of sharedTmpBuffer must not overlap the addresses of the source operand and destination operand.
- For details about the operand address alignment requirements, see General Address Alignment Restrictions.
Example
For a complete call example, see Trunc operator sample.
1 2 3 | // dstLocal: tensor for storing the computation result // srcLocal: input tensor involved in computation AscendC::Trunc<srcType, false>(dstLocal, srcLocal); |
Result example:
Input (srcLocal): [9.33, –8.07, –6.38, 8.45, 5.83, 6.46, 4.18, 1.93] Output (dstLocal): [9. -8. -6. 8. 5. 6. 4. 1. ]