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I am unable to match the inference times reported by Google for models released in their model zoo. Specifically I am trying out their faster_rcnn_resnet101_coco model where the reported inference time is 106ms on a Titan X GPU.

My serving system is using TF 1.4 running in a container built from the Dockerfile released by Google. My client is modeled after the inception client also released by Google.

I am running on an Ubuntu 14.04, TF 1.4 with 1 Titan X. My total inference time is 3x worse than reported by Google ~330ms. Making the tensor proto is taking ~150ms and Predict is taking ~180ms. My saved_model.pb is directly from the tar file downloaded from the model zoo. Is there something I am missing? What steps can I take to reduce the inference time?

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4 Answers 4

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I was able to solve the two problems by

  1. optimizing the compiler flags. Added the following to bazel-bin --config=opt --copt=-msse4.1 --copt=-msse4.2 --copt=-mavx --copt=-mavx2 --copt=-mfma

  2. Not importing tf.contrib for every inference. In the inception_client sample provided by google, these lines re-import tf.contrib for every forward pass.

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  • Can you tell me where we can find the bazel-bin file?
    – Jash Shah
    Commented May 7, 2018 at 16:17
  • Did you get model_zoo latency numbers for running with tensorflow serving? I think those numbers are for raw inference. If you add gRPC overheads through tf-serving, it should take somewhat more time. Can you confirm if your numbers are same?
    – azmath
    Commented Feb 15, 2019 at 12:03
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Non-max suppression may be the bottleneck: https://github.com/tensorflow/models/issues/2710.

Is the image size 600x600?

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  • I don't think that is the issue, I am using TF 1.4 which is the same version the exported models are based on. From the model zoo: Our frozen inference graphs are generated using the v1.4.0 release version of Tensorflow
    – Sid M
    Commented Dec 20, 2017 at 20:23
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I ran similar model with a Titan Xp, however, I user the infer_detections.py script and logged the forward pass time [basically by using datetime before and after tf_example = detection_inference.infer_detections_and_add_to_example( serialized_example_tensor, detected_boxes_tensor, detected_scores_tensor, detected_labels_tensor, FLAGS.discard_image_pixels) I had reduced the # of proposals generated in the first stage of FasterRCN from 300 to 100, and reduced the number of detections at the second stage to 100 as well. I got numbers in the range of 80 to 140 ms, and I think that the 600x600 image would approximately take ~106 or slightly less in this set-up (due to Titan Xp, and reduced complexity of model). Maybe you can repeat the above process on your hardware, that way if the numbers are also ~106 ms for this case, we can attribute the difference to the use of DockerFile and the client. If the numbers are still high, then perhaps it is the hardware.

Would be helpful if someone from Tensorflow Object Detection team can comment on the set up used for generating the numbers in model zoo.

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@Vikram Gupta did you check your GPU Usage? Does it get somewhere near 80-100%? I experience very low GPU Usage detecting Objects of a Video Stream with the API and models of the "model zoo".

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