commit | ecd5c79a4460623c3a135b412a81b993c58ccdf0 | [log] [tgz] |
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author | River Riddle <riverriddle@google.com> | Thu Nov 21 14:34:03 2019 -0800 |
committer | TensorFlower Gardener <gardener@tensorflow.org> | Thu Nov 21 15:46:27 2019 -0800 |
tree | fa07394426b6e49beb8f05e06262991a7d33bf87 | |
parent | 1ee0f17f80612f68f9de9546f3c21049df729e31 [diff] |
Add support for using the ODS result names as the Asm result names for multi-result operations. This changes changes the OpDefinitionsGen to automatically add the OpAsmOpInterface for operations with multiple result groups using the provided ODS names. We currently just limit the generation to multi-result ops as most single result operations don't have an interesting name(result/output/etc.). An example is shown below: // The following operation: def MyOp : ... { let results = (outs AnyType:$first, Variadic<AnyType>:$middle, AnyType); } // May now be printed as: %first, %middle:2, %0 = "my.op" ... PiperOrigin-RevId: 281834156 Change-Id: I4ebbd64544cbd77107517cc622a034a748038a5f
Documentation |
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TensorFlow is an end-to-end open source platform for machine learning. It has a comprehensive, flexible ecosystem of tools, libraries, and community resources that lets researchers push the state-of-the-art in ML and developers easily build and deploy ML-powered applications.
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Linux ppc64le CPU Nightly | Nightly | |
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