16

One way is to download the model each time from tensorflow_hub like following

import tensorflow as tf
import tensorflow_hub as hub

hub_url = "https://tfhub.dev/google/tf2-preview/nnlm-en-dim128/1"
embed = hub.KerasLayer(hub_url)
embeddings = embed(["A long sentence.", "single-word", "http://example.com"])
print(embeddings.shape, embeddings.dtype)

I want to download the file once and use again and again with out downloading each time

4 Answers 4

10
  1. Download your model from url + "?tf-hub-format=compressed"
    e.g. "https://tfhub.dev/google/tf2-preview/nnlm-en-dim128/1?tf-hub-format=compressed"
  2. Untar
  3. Load untarred folder in code
import tensorflow as tf
import tensorflow_hub as hub

embed = hub.KerasLayer('path/to/untarred/folder')
embeddings = embed(["A long sentence.", "single-word", "http://example.com"])
print(embeddings.shape, embeddings.dtype)
5

You can use the hub.load() method to load a TF Hub module. Also, the docs say,

Currently this method is fully supported only with TensorFlow 2.x and with modules created by calling tensorflow.saved_model.save(). The method works in both eager and graph modes.

The hub.load method has an argument handle. The types of modules handles are,

  1. Smart URL resolvers such as tfhub.dev, e.g.: https://tfhub.dev/google/nnlm-en-dim128/1.

  2. A directory on a file system supported by Tensorflow containing module files. This may include a local directory (e.g. /usr/local/mymodule) or a Google Cloud Storage bucket (gs://mymodule).

  3. A URL pointing to a TGZ archive of a module, e.g. https://example.com/mymodule.tar.gz.

You can use the 2nd and the 3rd points.

1
  • 3
    hub_module = hub.load('/tmp/arbitrary-image-stylization-v1-256/') didn't work. Am I doing something wrong?
    – int_ua
    Jun 16, 2020 at 23:46
4

if anyone is wondering where the model is saved by default on windows, like me, it's here.

C:\Users\AvrakDavra\AppData\Local\Temp\tfhub_modules\

Obviously you can download anywhere and mention that path and tfhub will take from there, but in case. To instantly open the temp forlder on windows.

  1. Press WindowsButton+R
  2. Write %TEMP%

It'll open the temp folder for your username, and there the tfhub_modules folder be by default. It'll contain folders as below

enter image description here

Content of the text file are similar to below.

Module: https://tfhub.dev/google/universal-sentence-encoder/4 Download Time: 2021-07-17 18:17:09.714147 Downloader Hostname: LAPTOP(PID:12720)

1
  • If you don't want to mention a manual path everytime, but you have manually downloaded the model, you can put it the default location with a specific name. The name of the folder is actually decided by tfhub when it first tries to download it, it creates a .lock file which once download completes becomes a .txt file, and a .tmp folder which once download completes becomes a normal folder. The folder is where all the content of the tar goes, The txt file is to tell if the download was completed or not. Jul 18, 2021 at 11:33
2

Perhaps others may benefit from a concrete, reproducible answer. This post corresponds to this specific tfhub model.

tensorflow_hub version: 0.12.0
tensorflow version: 2.2.0

I set up the following path on my Linux server:

# Note, I manually created this entire path before ever downloading tfhub models
/opt/tfhub/tf2/bert_en_uncased_L-12_H-768_A-12_4/

(For various reasons, we have some needs for Tensorflow 1.x still, so I figured it might be a good idea to separate models based on if they are designed to work with tensorflow 1.x vs tensorflow 2.x, hence the tf2 in my path)

I then downloaded the model file, pushed it to my Linux server, placed it in the above location, and exectued:

# bash
tar xzf bert_en_uncased_L-12_H-768_A-12_4.tar.gz

That gave me the following files:

# python
import os
os.listdir("/opt/tfhub/tf2/bert_en_uncased_L-12_H-768_A-12_4/")
>>> ['keras_metadata.pb', 'saved_model.pb', 'assets', 'variables']

So then I can load the model like so:

# python
import tensorflow_hub as tfhub
import tensorflow as tf
bert_layer = tfhub.KerasLayer(tfhub.load("/opt/tfhub/tf2/bert_en_uncased_L-12_H-768_A-12_4"))

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