TensorFlow Hub is a repository of trained machine learning models.

 !pip install --upgrade tensorflow_hub
 importtensorflow_hubashub
 model = hub.KerasLayer("https://tfhub.dev/google/nnlm-en-dim128/2")
 embeddings = model(["The rain in Spain.", "falls",
 "mainly", "In the plain!"])
 print(embeddings.shape) #(4,128)
TensorFlow Hub is a repository of trained machine learning models ready for fine-tuning and deployable anywhere. Reuse trained models like BERT and Faster R-CNN with just a few lines of code.



Models

Find trained models from the TensorFlow community on TFHub.dev

BERT

Check out BERT for NLP tasks including text classification and question answering.

Object detection

Use the Faster R-CNN Inception ResNet V2 640x640 model for detecting objects in images.

Style transfer

Transfer the style of one image to another using the image style transfer model.

On-device food classifier

Use this TFLite model to classify photos of food on a mobile device.



News & announcements

Check out our blog for more announcements and view the latest #TFHub updates on Twitter

TensorFlow Hub for Real World Impact at Google I/O

Learn how you can use TensorFlow Hub to build ML solutions with real world impact.

On-device ML solutions

To explore ML solutions for your mobile and web apps including TensorFlow Hub, visit the Google on-device machine learning page.

Making BERT Easier with Preprocessing Models From TensorFlow Hub

TensorFlow Hub makes BERT simple to use with new preprocessing models.

From singing to musical scores: Estimating pitch with SPICE and Tensorflow Hub

Learn how to use the SPICE model to automatically transcribe sheet music from live audio.



Community

Join the TensorFlow Hub community