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2.4.1 Release Note
get_lib
返回
代码示例
»
get_lib
在 GitHub 上修改
get_lib
¶
paddle.sysconfig.
get_lib
(
)
[源代码]
¶
获取包含 libpadle_framework 的目录。
返回
¶
字符串类型的文件目录。
代码示例
¶
import
paddle
include_dir
=
paddle
.
sysconfig
.
get_lib
()