0

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?

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.