commit | dbaaea04c2f62db24a0458f6a15b4682a1700b84 | [log] [tgz] |
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author | Jacques Pienaar <jpienaar@google.com> | Fri Aug 23 10:58:47 2019 -0700 |
committer | TensorFlower Gardener <gardener@tensorflow.org> | Fri Aug 23 11:22:57 2019 -0700 |
tree | 11cbb47bc6caa76002c2364f45fd685babadeef0 | |
parent | 72a6faf9b0528f8b6f805cb2e430cccb8d7cd565 [diff] |
Add op to name mapper for exporter Add OpNameMapper interface that can be used to return a unique name for a given op or prefix. This class also allows setting the names for ops. Names returned are either the set or a unique name based on a given prefix (in some cases multiple ops can be and need to be associated with the same name). Adds two implementations of OpNameMapper, one that returns a name based on the location of the operation and the other that returns a short alphanumeric name. There is probably some string mangling optimizations that could improve performance further here, but leaving it simpler until measured. PiperOrigin-RevId: 265090266
Documentation |
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