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昆仑 XPU 芯片安装及运行飞桨
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2.4.1 Release Note
squeeze_
»
squeeze_
在 GitHub 上修改
squeeze_
¶
paddle.
squeeze_
(
x
,
axis
=
None
,
name
=
None
)
[源代码]
¶
Inplace 版本的
squeeze
API,对输入
x
采用 Inplace 策略。