aclnnLerp&aclnnInplaceLerp

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产品支持情况

产品 是否支持
Ascend 950PR/Ascend 950DT
Atlas A3 训练系列产品/Atlas A3 推理系列产品
Atlas A2 训练系列产品/Atlas A2 推理系列产品
Atlas 200I/500 A2 推理产品 ×
Atlas 推理系列产品
Atlas 训练系列产品

功能说明

  • 接口功能:根据给定的权重,在起始和结束Tensor之间进行线性插值,返回插值后的Tensor。

  • 计算公式:

 out i= start i+ weight i×( end i− start i)\text { out }_i=\text { start }_i+\text { weight }_i \times\left(\text { end }_i-\text { start }_i\right)

函数原型

  • aclnnLerp和aclnnInplaceLerp实现相同的功能,使用区别如下,请根据自身实际场景选择合适的算子。
    • aclnnLerp:需新建一个输出张量对象存储计算结果。
    • aclnnInplaceLerp:无需新建输出张量对象,直接在输入张量的内存中存储计算结果。
  • 每个算子分为两段式接口,必须先调用“aclnnLerpGetWorkspaceSize”或者“aclnnInplaceLerpGetWorkspaceSize”接口获取计算所需workspace大小以及包含了算子计算流程的执行器,再调用“aclnnLerp”或者“aclnnInplaceLerp”接口执行计算。
aclnnStatus aclnnLerpGetWorkspaceSize(
  const aclTensor*          self,
  const aclTensor*          end,
  const aclTensor*          weight,
  aclTensor*                out,
  uint64_t*                 workspaceSize,
  aclOpExecutor**           executor)
aclnnStatus aclnnLerp(
  void*                     workspace,
  uint64_t                  workspaceSize,
  aclOpExecutor*            executor,
  const aclrtStream         stream)
aclnnStatus aclnnInplaceLerpGetWorkspaceSize(
  aclTensor*                selfRef,
  const aclTensor*          end,
  const aclTensor*          weight,
  uint64_t*                 workspaceSize,
  aclOpExecutor**           executor)
aclnnStatus aclnnInplaceLerp(
  void*                     workspace,
  uint64_t                  workspaceSize,
  aclOpExecutor*            executor,
  const aclrtStream         stream)

aclnnLerpGetWorkspaceSize

  • 参数说明:

    参数名 输入/输出 描述 使用说明 数据类型 数据格式 维度 非连续Tensor
    self(aclTensor*) 输入 公式中的输入start。 数据类型与end、weight、out一致。shape需要与end、weight满足broadcast关系 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    end(aclTensor*) 输入 公式中的输入end。 数据类型与self、weight、out一致。shape需要与self、weight满足broadcast关系 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    weight(aclTensor*) 输入 公式中的输入weight。 数据类型与self、end、out一致。shape需要与self、end满足broadcast关系 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    out(aclTensor*) 输出 公式中的out。 数据类型与self、end、weight一致。shape需要与self、end、weight broadcast后的shape一致。 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    workspaceSize(uint64_t*) 输出 返回需要在Device侧申请的workspace大小。 - - - - -
    executor(aclOpExecutor**) 输出 返回op执行器,包含了算子计算流程。 - - - - -
    • Atlas 推理系列产品、Atlas 训练系列产品:不支持BFLOAT16。
  • 返回值:

    aclnnStatus:返回状态码,具体参见aclnn返回码

    第一段接口完成入参校验,出现如下场景时报错:

    返回值 错误码 描述
    ACLNN_ERR_PARAM_NULLPTR 161001 传入的self、end、weight和out是空指针。
    ACLNN_ERR_PARAM_INVALID 161002 self、end、weight和out的数据类型不在支持的范围之内。
    self、end、weight和out的数据类型不一致。
    self、end和weight无法做broadcast。
    self、end和weight做broadcast后的shape与out的shape不一致。

aclnnLerp

  • 参数说明:

    参数名 输入/输出 描述
    workspace 输入 在Device侧申请的workspace内存地址。
    workspaceSize 输入 在Device侧申请的workspace大小,由第一段接口aclnnLerpGetWorkspaceSize获取。
    executor 输入 op执行器,包含了算子计算流程。
    stream 输入 指定执行任务的Stream。
  • 返回值:

    aclnnStatus:返回状态码,具体参见aclnn返回码

aclnnInplaceLerpGetWorkspaceSize

  • 参数说明:

    参数名 输入/输出 描述 使用说明 数据类型 数据格式 维度 非连续Tensor
    selfRef(aclTensor*) 输入/输出 公式中的输入start和输出out。 数据类型与end、weight一致。shape需要与end、weight满足broadcast关系,且broadcast后的shape与selfRef一致。 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    end(aclTensor*) 输入 公式中的输入end。 数据类型与selfRef、weight一致。shape需要与selfRef、weight满足broadcast关系 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    weight(aclTensor*) 输入 公式中的输入weight。 数据类型与selfRef、end一致。shape需要与selfRef、end满足broadcast关系 FLOAT、FLOAT16、BFLOAT16 ND 0-8
    workspaceSize(uint64_t*) 输出 返回需要在Device侧申请的workspace大小。 - - - - -
    executor(aclOpExecutor**) 输出 返回op执行器,包含了算子计算流程。 - - - - -
    • Atlas 推理系列产品、Atlas 训练系列产品:不支持BFLOAT16。
  • 返回值:

    aclnnStatus:返回状态码,具体参见aclnn返回码

    第一段接口完成入参校验,出现如下场景时报错:

    返回值 错误码 描述
    ACLNN_ERR_PARAM_NULLPTR 161001 传入的selfRef、end和weight是空指针。
    ACLNN_ERR_PARAM_INVALID 161002 selfRef、end和weight的数据类型不在支持的范围之内。
    selfRef、end和weight的数据类型不一致。
    selfRef、end和weight无法做broadcast。
    selfRef、end和weight做broadcast后的shape与selfRef的shape不一致。

aclnnInplaceLerp

  • 参数说明:

    参数名 输入/输出 描述
    workspace 输入 在Device侧申请的workspace内存地址。
    workspaceSize 输入 在Device侧申请的workspace大小,由第一段接口aclnnInplaceLerpGetWorkspaceSize获取。
    executor 输入 op执行器,包含了算子计算流程。
    stream 输入 指定执行任务的Stream。
  • 返回值:

    aclnnStatus:返回状态码,具体参见aclnn返回码

约束说明

  • 确定性计算:
    • aclnnLerp&aclnnInplaceLerp默认确定性实现。

调用示例

示例代码如下,仅供参考,具体编译和执行过程请参考编译与运行样例

aclnnLerp

#include <iostream>
#include <vector>
#include "acl/acl.h"
#include "aclnnop/aclnn_lerp_tensor.h"

#define CHECK_RET(cond, return_expr) \
  do {                               \
    if (!(cond)) {                   \
      return_expr;                   \
    }                                \
  } while (0)

#define LOG_PRINT(message, ...)     \
  do {                              \
    printf(message, ##__VA_ARGS__); \
  } while (0)

int64_t GetShapeSize(const std::vector<int64_t>& shape) {
    int64_t shapeSize = 1;
    for (auto i : shape) {
        shapeSize *= i;
    }
    return shapeSize;
}

int Init(int32_t deviceId, aclrtStream* stream) {
    // 固定写法,资源初始化
    auto ret = aclInit(nullptr);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclInit failed. ERROR: %d\n", ret); return ret);
    ret = aclrtSetDevice(deviceId);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtSetDevice failed. ERROR: %d\n", ret); return ret);
    ret = aclrtCreateStream(stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtCreateStream failed. ERROR: %d\n", ret); return ret);
    return 0;
}

template <typename T>
int CreateAclTensor(const std::vector<T>& hostData, const std::vector<int64_t>& shape, void** deviceAddr,
                    aclDataType dataType, aclTensor** tensor) {
    auto size = GetShapeSize(shape) * sizeof(T);
    // 调用aclrtMalloc申请device侧内存
    auto ret = aclrtMalloc(deviceAddr, size, ACL_MEM_MALLOC_HUGE_FIRST);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtMalloc failed. ERROR: %d\n", ret); return ret);
    // 调用aclrtMemcpy将host侧数据拷贝到device侧内存上
    ret = aclrtMemcpy(*deviceAddr, size, hostData.data(), size, ACL_MEMCPY_HOST_TO_DEVICE);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtMemcpy failed. ERROR: %d\n", ret); return ret);

    // 计算连续tensor的strides
    std::vector<int64_t> strides(shape.size(), 1);
    for (int64_t i = shape.size() - 2; i >= 0; i--) {
        strides[i] = shape[i + 1] * strides[i + 1];
    }

    // 调用aclCreateTensor接口创建aclTensor
    *tensor = aclCreateTensor(shape.data(), shape.size(), dataType, strides.data(), 0, aclFormat::ACL_FORMAT_ND,
                              shape.data(), shape.size(), *deviceAddr);
    return 0;
}

int main() {
    // 1. (固定写法)device/stream初始化,参考acl API手册
    int32_t deviceId = 0;
    aclrtStream stream;
    auto ret = Init(deviceId, &stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("Init acl failed. ERROR: %d\n", ret); return ret);

    // 2. 构造输入与输出,需要根据API的接口自定义构造
    std::vector<int64_t> selfShape = {4, 2};
    std::vector<int64_t> endShape = {4, 2};
    std::vector<int64_t> weightShape = {1};
    std::vector<int64_t> outShape = {4, 2};
    void* selfDeviceAddr = nullptr;
    void* endDeviceAddr = nullptr;
    void* weightDeviceAddr = nullptr;
    void* outDeviceAddr = nullptr;
    aclTensor* self = nullptr;
    aclTensor* end = nullptr;
    aclTensor* weight = nullptr;
    aclTensor* out = nullptr;
    std::vector<float> selfHostData = {1, 2, 3, 4, 5, 6, 7, 8};
    std::vector<float> endHostData = {4, 5, 6, 7, 8, 9, 10, 11};
    std::vector<float> weightHostData = {2};
    std::vector<float> outHostData = {0, 0, 0, 0, 0, 0, 0, 0};
    // 创建self aclTensor
    ret = CreateAclTensor(selfHostData, selfShape, &selfDeviceAddr, aclDataType::ACL_FLOAT, &self);
    CHECK_RET(ret == ACL_SUCCESS, return ret);
    // 创建end aclTensor
    ret = CreateAclTensor(endHostData, endShape, &endDeviceAddr, aclDataType::ACL_FLOAT, &end);
    CHECK_RET(ret == ACL_SUCCESS, return ret);
    // 创建weight aclTensor
    ret = CreateAclTensor(weightHostData, weightShape, &weightDeviceAddr, aclDataType::ACL_FLOAT, &weight);
    CHECK_RET(ret == ACL_SUCCESS, return ret);
    // 创建out aclTensor
    ret = CreateAclTensor(outHostData, outShape, &outDeviceAddr, aclDataType::ACL_FLOAT, &out);
    CHECK_RET(ret == ACL_SUCCESS, return ret);

    uint64_t workspaceSize = 0;
    aclOpExecutor* executor;

    // 3. 调用CANN算子库API
    // 调用aclnnLerp第一段接口
    ret = aclnnLerpGetWorkspaceSize(self, end, weight, out, &workspaceSize, &executor);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclnnLerpGetWorkspaceSize failed. ERROR: %d\n", ret); return ret);
    // 根据第一段接口计算出的workspaceSize申请device内存
    void* workspaceAddr = nullptr;
    if (workspaceSize > 0) {
        ret = aclrtMalloc(&workspaceAddr, workspaceSize, ACL_MEM_MALLOC_HUGE_FIRST);
        CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("allocate workspace failed. ERROR: %d\n", ret); return ret);
    }
    // 调用aclnnLerp第二段接口
    ret = aclnnLerp(workspaceAddr, workspaceSize, executor, stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclnnLerp failed. ERROR: %d\n", ret); return ret);

    // 4. (固定写法)同步等待任务执行结束
    ret = aclrtSynchronizeStream(stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtSynchronizeStream failed. ERROR: %d\n", ret); return ret);

    // 5. 获取输出的值,将device侧内存上的结果拷贝至host侧
    auto size = GetShapeSize(outShape);
    std::vector<float> resultData(size, 0);
    ret = aclrtMemcpy(resultData.data(), resultData.size() * sizeof(resultData[0]), outDeviceAddr,
                      size * sizeof(resultData[0]), ACL_MEMCPY_DEVICE_TO_HOST);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("copy result from device to host failed. ERROR: %d\n", ret); return ret);
    for (int64_t i = 0; i < size; i++) {
        LOG_PRINT("result[%ld] is: %f\n", i, resultData[i]);
    }

    // 6. 释放aclTensor和aclScalar
    aclDestroyTensor(self);
    aclDestroyTensor(end);
    aclDestroyTensor(weight);
    aclDestroyTensor(out);
    
    // 7. 释放device资源,需要根据具体API的接口定义修改
    aclrtFree(selfDeviceAddr);
    aclrtFree(endDeviceAddr);
    aclrtFree(weightDeviceAddr);
    aclrtFree(outDeviceAddr);
    if (workspaceSize > 0) {
    aclrtFree(workspaceAddr);
    }
    aclrtDestroyStream(stream);
    aclrtResetDevice(deviceId);
    aclFinalize();
    return 0;
}

aclnnInplaceLerp

#include <iostream>
#include <vector>
#include "acl/acl.h"
#include "aclnnop/aclnn_lerp_tensor.h"

#define CHECK_RET(cond, return_expr) \
  do {                               \
    if (!(cond)) {                   \
      return_expr;                   \
    }                                \
  } while (0)

#define LOG_PRINT(message, ...)     \
  do {                              \
    printf(message, ##__VA_ARGS__); \
  } while (0)

int64_t GetShapeSize(const std::vector<int64_t>& shape) {
    int64_t shapeSize = 1;
    for (auto i : shape) {
        shapeSize *= i;
    }
    return shapeSize;
}

int Init(int32_t deviceId, aclrtStream* stream) {
    // 固定写法,资源初始化
    auto ret = aclInit(nullptr);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclInit failed. ERROR: %d\n", ret); return ret);
    ret = aclrtSetDevice(deviceId);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtSetDevice failed. ERROR: %d\n", ret); return ret);
    ret = aclrtCreateStream(stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtCreateStream failed. ERROR: %d\n", ret); return ret);
    return 0;
}

template <typename T>
int CreateAclTensor(const std::vector<T>& hostData, const std::vector<int64_t>& shape, void** deviceAddr,
                    aclDataType dataType, aclTensor** tensor) {
    auto size = GetShapeSize(shape) * sizeof(T);
    // 调用aclrtMalloc申请device侧内存
    auto ret = aclrtMalloc(deviceAddr, size, ACL_MEM_MALLOC_HUGE_FIRST);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtMalloc failed. ERROR: %d\n", ret); return ret);
    // 调用aclrtMemcpy将host侧数据拷贝到device侧内存上
    ret = aclrtMemcpy(*deviceAddr, size, hostData.data(), size, ACL_MEMCPY_HOST_TO_DEVICE);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtMemcpy failed. ERROR: %d\n", ret); return ret);

    // 计算连续tensor的strides
    std::vector<int64_t> strides(shape.size(), 1);
    for (int64_t i = shape.size() - 2; i >= 0; i--) {
        strides[i] = shape[i + 1] * strides[i + 1];
    }

    // 调用aclCreateTensor接口创建aclTensor
    *tensor = aclCreateTensor(shape.data(), shape.size(), dataType, strides.data(), 0, aclFormat::ACL_FORMAT_ND,
                              shape.data(), shape.size(), *deviceAddr);
    return 0;
}

int main() {
    // 1. (固定写法)device/stream初始化,参考acl API手册
    int32_t deviceId = 0;
    aclrtStream stream;
    auto ret = Init(deviceId, &stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("Init acl failed. ERROR: %d\n", ret); return ret);

    // 2. 构造输入与输出,需要根据API的接口自定义构造
    std::vector<int64_t> selfShape = {4, 2};
    std::vector<int64_t> endShape = {4, 2};
    std::vector<int64_t> weightShape = {1};
    void* selfDeviceAddr = nullptr;
    void* endDeviceAddr = nullptr;
    void* weightDeviceAddr = nullptr;
    aclTensor* self = nullptr;
    aclTensor* end = nullptr;
    aclTensor* weight = nullptr;
    std::vector<float> selfHostData = {1, 2, 3, 4, 5, 6, 7, 8};
    std::vector<float> endHostData = {4, 5, 6, 7, 8, 9, 10, 11};
    std::vector<float> weightHostData = {2};
    // 创建self aclTensor
    ret = CreateAclTensor(selfHostData, selfShape, &selfDeviceAddr, aclDataType::ACL_FLOAT, &self);
    CHECK_RET(ret == ACL_SUCCESS, return ret);
    // 创建end aclTensor
    ret = CreateAclTensor(endHostData, endShape, &endDeviceAddr, aclDataType::ACL_FLOAT, &end);
    CHECK_RET(ret == ACL_SUCCESS, return ret);
    // 创建weight aclTensor
    ret = CreateAclTensor(weightHostData, weightShape, &weightDeviceAddr, aclDataType::ACL_FLOAT, &weight);
    CHECK_RET(ret == ACL_SUCCESS, return ret);

    uint64_t workspaceSize = 0;
    aclOpExecutor* executor;
    
    // 3. 调用CANN算子库API
    // 调用aclnnInplaceLerp第一段接口
    ret = aclnnInplaceLerpGetWorkspaceSize(self, end, weight, &workspaceSize, &executor);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclnnInplaceLerpGetWorkspaceSize failed. ERROR: %d\n", ret); return ret);
    // 根据第一段接口计算出的workspaceSize申请device内存
    void* workspaceAddr = nullptr;
    if (workspaceSize > 0) {
        ret = aclrtMalloc(&workspaceAddr, workspaceSize, ACL_MEM_MALLOC_HUGE_FIRST);
        CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("allocate workspace failed. ERROR: %d\n", ret); return ret);
    }
    // 调用aclnnInplaceLerp第二段接口
    ret = aclnnInplaceLerp(workspaceAddr, workspaceSize, executor, stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclnnInplaceLerp failed. ERROR: %d\n", ret); return ret);

    // 4. (固定写法)同步等待任务执行结束
    ret = aclrtSynchronizeStream(stream);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("aclrtSynchronizeStream failed. ERROR: %d\n", ret); return ret);

    // 5. 获取输出的值,将device侧内存上的结果拷贝至host侧
    auto size = GetShapeSize(selfShape);
    std::vector<float> resultData(size, 0);
    ret = aclrtMemcpy(resultData.data(), resultData.size() * sizeof(resultData[0]), selfDeviceAddr,
                      size * sizeof(resultData[0]), ACL_MEMCPY_DEVICE_TO_HOST);
    CHECK_RET(ret == ACL_SUCCESS, LOG_PRINT("copy result from device to host failed. ERROR: %d\n", ret); return ret);
    for (int64_t i = 0; i < size; i++) {
        LOG_PRINT("result[%ld] is: %f\n", i, resultData[i]);
    }

    // 6. 释放aclTensor和aclScalar
    aclDestroyTensor(self);
    aclDestroyTensor(end);
    aclDestroyTensor(weight);
    
    // 7. 释放device资源,需要根据具体API的接口定义修改
    aclrtFree(selfDeviceAddr);
    aclrtFree(endDeviceAddr);
    aclrtFree(weightDeviceAddr);
    if (workspaceSize > 0) {
    aclrtFree(workspaceAddr);
    }
    aclrtDestroyStream(stream);
    aclrtResetDevice(deviceId);
    aclFinalize();
    return 0;
}