Reputation: 311
What is the ideal way to have tensorflow model server recognize my custom operation?
I have a custom operation written following this guide: https://www.tensorflow.org/guide/extend/op
I'm able to use the opp by calling tf.load_op_library
, but when I try and and run tensorflow_model_server
tensorflow_model_server --port=9000 \
--model_name=mymodel \
--model_base_path=/serving/mymodel
I get the following error about being unable to find my opp.
tensorflow_serving/util/retrier.cc:37] Loading servable: {name: mymodel version: 1} failed: Not found: Op type not registered 'MyOpp' in binary running on c37a4ef2d4b4.
Upvotes: 2
Views: 1130
Reputation: 1098
Here is a doc describing how to do that: https://www.tensorflow.org/tfx/serving/custom_op
The bottom line is that you need to rebuild tensorflow_model_server with your op linked in. tensorflow_serving/model_servers/BUILD:
SUPPORTED_TENSORFLOW_OPS = [
...
"//tensorflow_serving/.../...your_op"
]
Upvotes: 1
Reputation: 36
You can also use tensorflow as a submodule or local_repository to use the custom macros in the repo for your ops.
Upvotes: 0
Reputation: 311
Here are the things that I wanted to do with my op: - generate python wrappers - add op too the pip package - have my operation linked to tensorflow so tensorflow-serving could execute the operation
I placed my op in tensorflow/contrib/foo. Here is what the source tree looked like
.
├── BUILD
├── LICENSE
├── __init__.py
├── foo_op.cc
├── foo_op_gpu.cu.cc
└── foo_op.h
My __init__.py
file had the import for the generated wrappers
from tensorflow.contrib.sampling.ops.gen_foo import *
I added an import in the tensorflow/contrib/__init__.py
from tensorflow.contrib import foo
Here is my tensorflow/contrib/foo/BUILD
file:
licenses(["notice"]) # Apache 2.0
exports_files(["LICENSE"])
package(default_visibility = ["//visibility:public"])
load("//tensorflow:tensorflow.bzl", "tf_custom_op_py_library")
load("//tensorflow:tensorflow.bzl", "tf_gen_op_libs")
load("//tensorflow:tensorflow.bzl", "tf_gen_op_wrapper_py")
load("//tensorflow:tensorflow.bzl", "tf_kernel_library")
tf_kernel_library(
name = "foo_op_kernels",
prefix = "foo",
alwayslink = 1,
)
tf_gen_op_libs(
op_lib_names = ["foo"],
)
tf_gen_op_wrapper_py(
name = "foo",
visibility = ["//visibility:public"],
deps = [
":foo_op_kernels",
],
)
tf_custom_op_py_library(
name = "foo_py",
srcs = [
"__init__.py",
],
kernels = [
":foo_op_kernels",
],
srcs_version = "PY2AND3",
deps = [
":foo",
"//tensorflow/contrib/util:util_py",
"//tensorflow/python:common_shapes",
"//tensorflow/python:framework_for_generated_wrappers",
"//tensorflow/python:platform",
"//tensorflow/python:util",
],
)
Here are the tensorflow bazel files I had to touch to get it working.
tensorflow/contrib/BUILD
foo_op_kernels
to contrib_kernels
depsfoo_op_lib
to contrib_ops_op_lib
depsfoo
to contrib_py
depstensorflow/tools/pip_package/BUILD
COMMON_PIP_DEPS
tensorflow/core/BUILD
all_kernels_statically_linked
. I might have gone overboard with this one, but It worked.Here are the tensorflow serving bazel files:
WORKSPACE
org_tensorflow
to be a local_repository
pointing to my tensorflow rather than a google's tensorflow_http_archive
Then I modified: tensorflow_serving/tools/docker/Dockerfile.devel-gpu
to clone my versions of tensorflow and tensorflow-serving.
Upvotes: 4
Reputation: 454
Did you add your op lib in BUILD file where you want to call it?
Upvotes: 0