I have a network originally written using Estimator API and I would like to take advantage of tensorflow TensorRT integration. I can load the model from SavedModel and run create_inference_graph on it. However, when I try importing the graph definition obtained from "create_inference_graph", I get the following error:

File "/python2.7/site-packages/tensorflow/python/framework/importer.py", line 422, in import_graph_def
    raise ValueError(str(e))
ValueError: Node 'my_trt_op_6': Unknown input node 'my_trt_op_0'

I get the same error when I freeze the tftrt graph and try loading it into tensorboard. Printing out the nodes in the tftrt GraphDef outputs a terminal full of nonsensical to me values looking like \000\000\000\000\000\002\000\000\000\000\000\200?\000\000\200?\n\000\000\000OutputPH_0\000\000\010\000\014\000\004\000\010\000\010\000\000\000\010\000\000\000\024\000\000\000\003\000\000\000\001\000\000\000\000\000\000\000\000\000\000\000\003\000\000\000\002\000\000\000\034\000\000\000\034\000\000\000 (this is just a small sample of the terminal output).

I can run simple inference using sess.run(y_tensor, feed_dict={x_tensor: x_test}) on my loaded model before using tftrt optimization. I also tested all the code I am using (saving estimator model, loading model into a session without Estimator API, converting graph into trt-optimized graph and running accelerated inference) on a sample MNIST Estimator model from official tensorflow model repo, and the code worked fine for that model.

I do get quite a few errors and warnings from convert_graph and trt_logger when I run create_inference_graph, but based on my results from converting other models, those errors and warning do not usually indicate fatal failures. I can post them here if it might be useful for understanding why this happens.

How can I fix this issue and run inference on trt-optimized version of my model?

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