commit | 64462969bc006214b5c7626ea65f9efffdb43342 | [log] [tgz] |
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author | Rohan Jain <rohanj@google.com> | Mon Nov 01 10:19:15 2021 -0700 |
committer | TensorFlower Gardener <gardener@tensorflow.org> | Mon Nov 01 10:25:42 2021 -0700 |
tree | 1413ec7012bf7f14f8aa4ba464f7723de1a86d1c | |
parent | 3c5499dcb7e938c58d1f39a7395629a9b2f4e600 [diff] |
Fixing rpc_ops_test for when we start wrapping RPC eager ops in tf.functions. The issue was that the RPCClient op would omit returning an output in some cases which seemed to work in eager mode but when executed within a function, it complains. We ensure we return an empty string instead. Also, marking the RpcServerRegister op as Input colocation exempt as it runs a function - ops that run functions go through the multi device backend and can handle inputs on different devices. So we don't need the placer constraint to force colocation of input resources. PiperOrigin-RevId: 406857024 Change-Id: Id413a358244c6c42848c198023594b14806dc351
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