TensorFlow Hub has moved to Kaggle Models
Starting November 15th 2023, links to tfhub.dev redirect to
their counterparts on Kaggle Models. tensorflow_hub
will continue to support
downloading models that were initially uploaded to tfhub.dev via e.g.
hub.load("https://tfhub.dev/<publisher>/<model>/<version>")
. Although no
migration or code rewrites are explicitly required, we recommend replacing
tfhub.dev links with their Kaggle Models counterparts to improve code health and
debuggability. See FAQs here.
As of March 18, 2024, unmigrated model assets (see list below) were deleted and retrieval is no longer possible. These unmigrated model assets include:
- inaturalist/vision/embedder/inaturalist_V2
- nvidia/unet/industrial/class_1
- nvidia/unet/industrial/class_2
- nvidia/unet/industrial/class_3
- nvidia/unet/industrial/class_4
- nvidia/unet/industrial/class_5
- nvidia/unet/industrial/class_6
- nvidia/unet/industrial/class_7
- nvidia/unet/industrial/class_8
- nvidia/unet/industrial/class_9
- nvidia/unet/industrial/class_10
- silero/silero-stt/de
- silero/silero-stt/en
- silero/silero-stt/es
- svampeatlas/vision/classifier/fungi_mobile_V1
- svampeatlas/vision/embedder/fungi_V2
This GitHub repository hosts the tensorflow_hub
Python library to download
and reuse SavedModels in your TensorFlow program with a minimum amount of code,
as well as other associated code and documentation.
- Introduction
- The asset types of tfhub.dev
- SavedModels for TensorFlow 2 and the Reusable SavedModel interface.
- Deprecated: Models in TF1 Hub format and their Common Signatures collection.
- Using the library
- Tutorials
If you'd like to contribute to TensorFlow Hub, be sure to review the contribution guidelines. To contribute code to the library itself (not examples), you will probably need to build from source.
This project adheres to TensorFlow's code of conduct. By participating, you are expected to uphold this code.
We use GitHub issues for tracking requests and bugs.