• Stars
    star
    2,735
  • Rank 16,642 (Top 0.4 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created almost 6 years ago
  • Updated 8 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Learning to Rank in TensorFlow

TensorFlow Ranking

TensorFlow Ranking is a library for Learning-to-Rank (LTR) techniques on the TensorFlow platform. It contains the following components:

We envision that this library will provide a convenient open platform for hosting and advancing state-of-the-art ranking models based on deep learning techniques, and thus facilitate both academic research and industrial applications.

Tutorial Slides

TF-Ranking was presented at premier conferences in Information Retrieval, SIGIR 2019 and ICTIR 2019! The slides are available here.

Demos

We provide a demo, with no installation required, to get started on using TF-Ranking. This demo runs on a colaboratory notebook, an interactive Python environment. Using sparse features and embeddings in TF-Ranking Run in Google Colab. This demo demonstrates how to:

  • Use sparse/embedding features
  • Process data in TFRecord format
  • Tensorboard integration in colab notebook, for Estimator API

Also see Running Scripts for executable scripts.

Linux Installation

Stable Builds

To install the latest version from PyPI, run the following:

# Installing with the `--upgrade` flag ensures you'll get the latest version.
pip install --user --upgrade tensorflow_ranking

To force a Python 3-specific install, replace pip with pip3 in the above commands. For additional installation help, guidance installing prerequisites, and (optionally) setting up virtual environments, see the TensorFlow installation guide.

Note: Since TensorFlow is now included as a dependency of the TensorFlow Ranking package (in setup.py). If you wish to use different versions of TensorFlow (e.g., tensorflow-gpu), you may need to uninstall the existing verison and then install your desired version:

$ pip uninstall tensorflow
$ pip install tensorflow-gpu

Installing from Source

  1. To build TensorFlow Ranking locally, you will need to install:

    • Bazel, an open source build tool.

      $ sudo apt-get update && sudo apt-get install bazel
    • Pip, a Python package manager.

      $ sudo apt-get install python-pip
    • VirtualEnv, a tool to create isolated Python environments.

      $ pip install --user virtualenv
  2. Clone the TensorFlow Ranking repository.

    $ git clone https://github.com/tensorflow/ranking.git
  3. Build TensorFlow Ranking wheel file and store them in /tmp/ranking_pip folder.

    $ cd ranking  # The folder which was cloned in Step 2.
    $ bazel build //tensorflow_ranking/tools/pip_package:build_pip_package
    $ bazel-bin/tensorflow_ranking/tools/pip_package/build_pip_package /tmp/ranking_pip
  4. Install the wheel package using pip. Test in virtualenv, to avoid clash with any system dependencies.

    $ ~/.local/bin/virtualenv -p python3 /tmp/tfr
    $ source /tmp/tfr/bin/activate
    (tfr) $ pip install /tmp/ranking_pip/tensorflow_ranking*.whl

    In some cases, you may want to install a specific version of tensorflow, e.g., tensorflow-gpu or tensorflow==2.0.0. To do so you can either

    (tfr) $ pip uninstall tensorflow
    (tfr) $ pip install tensorflow==2.0.0

    or

    (tfr) $ pip uninstall tensorflow
    (tfr) $ pip install tensorflow-gpu
  5. Run all TensorFlow Ranking tests.

    (tfr) $ bazel test //tensorflow_ranking/...
  6. Invoke TensorFlow Ranking package in python (within virtualenv).

    (tfr) $ python -c "import tensorflow_ranking"

Running Scripts

For ease of experimentation, we also provide a TFRecord example and a LIBSVM example in the form of executable scripts. This is particularly useful for hyperparameter tuning, where the hyperparameters are supplied as flags to the script.

TFRecord Example

  1. Set up the data and directory.

    MODEL_DIR=/tmp/tf_record_model && \
    TRAIN=tensorflow_ranking/examples/data/train_elwc.tfrecord && \
    EVAL=tensorflow_ranking/examples/data/eval_elwc.tfrecord && \
    VOCAB=tensorflow_ranking/examples/data/vocab.txt
  2. Build and run.

    rm -rf $MODEL_DIR && \
    bazel build -c opt \
    tensorflow_ranking/examples/tf_ranking_tfrecord_py_binary && \
    ./bazel-bin/tensorflow_ranking/examples/tf_ranking_tfrecord_py_binary \
    --train_path=$TRAIN \
    --eval_path=$EVAL \
    --vocab_path=$VOCAB \
    --model_dir=$MODEL_DIR \
    --data_format=example_list_with_context

LIBSVM Example

  1. Set up the data and directory.

    OUTPUT_DIR=/tmp/libsvm && \
    TRAIN=tensorflow_ranking/examples/data/train.txt && \
    VALI=tensorflow_ranking/examples/data/vali.txt && \
    TEST=tensorflow_ranking/examples/data/test.txt
  2. Build and run.

    rm -rf $OUTPUT_DIR && \
    bazel build -c opt \
    tensorflow_ranking/examples/tf_ranking_libsvm_py_binary && \
    ./bazel-bin/tensorflow_ranking/examples/tf_ranking_libsvm_py_binary \
    --train_path=$TRAIN \
    --vali_path=$VALI \
    --test_path=$TEST \
    --output_dir=$OUTPUT_DIR \
    --num_features=136 \
    --num_train_steps=100

TensorBoard

The training results such as loss and metrics can be visualized using Tensorboard.

  1. (Optional) If you are working on remote server, set up port forwarding with this command.

    $ ssh <remote-server> -L 8888:127.0.0.1:8888
  2. Install Tensorboard and invoke it with the following commands.

    (tfr) $ pip install tensorboard
    (tfr) $ tensorboard --logdir $OUTPUT_DIR

Jupyter Notebook

An example jupyter notebook is available in tensorflow_ranking/examples/handling_sparse_features.ipynb.

  1. To run this notebook, first follow the steps in installation to set up virtualenv environment with tensorflow_ranking package installed.

  2. Install jupyter within virtualenv.

    (tfr) $ pip install jupyter
  3. Start a jupyter notebook instance on remote server.

    (tfr) $ jupyter notebook tensorflow_ranking/examples/handling_sparse_features.ipynb \
            --NotebookApp.allow_origin='https://colab.research.google.com' \
            --port=8888
  4. (Optional) If you are working on remote server, set up port forwarding with this command.

    $ ssh <remote-server> -L 8888:127.0.0.1:8888
  5. Running the notebook.

    • Start jupyter notebook on your local machine at http://localhost:8888/ and browse to the ipython notebook.

    • An alternative is to use colaboratory notebook via colab.research.google.com and open the notebook in the browser. Choose local runtime and link to port 8888.

References

  • Rama Kumar Pasumarthi, Sebastian Bruch, Xuanhui Wang, Cheng Li, Michael Bendersky, Marc Najork, Jan Pfeifer, Nadav Golbandi, Rohan Anil, Stephan Wolf. TF-Ranking: Scalable TensorFlow Library for Learning-to-Rank. KDD 2019.

  • Qingyao Ai, Xuanhui Wang, Sebastian Bruch, Nadav Golbandi, Michael Bendersky, Marc Najork. Learning Groupwise Scoring Functions Using Deep Neural Networks. ICTIR 2019

  • Xuanhui Wang, Michael Bendersky, Donald Metzler, and Marc Najork. Learning to Rank with Selection Bias in Personal Search. SIGIR 2016.

  • Xuanhui Wang, Cheng Li, Nadav Golbandi, Mike Bendersky, Marc Najork. The LambdaLoss Framework for Ranking Metric Optimization. CIKM 2018.

Citation

If you use TensorFlow Ranking in your research and would like to cite it, we suggest you use the following citation:

@inproceedings{TensorflowRankingKDD2019,
   author = {Rama Kumar Pasumarthi and Sebastian Bruch and Xuanhui Wang and Cheng Li and Michael Bendersky and Marc Najork and Jan Pfeifer and Nadav Golbandi and Rohan Anil and Stephan Wolf},
   title = {TF-Ranking: Scalable TensorFlow Library for Learning-to-Rank},
   booktitle = {Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining},
   year = {2019},
   pages = {2970--2978},
   location = {Anchorage, AK}
}

More Repositories

1

tensorflow

An Open Source Machine Learning Framework for Everyone
C++
186,123
star
2

models

Models and examples built with TensorFlow
Python
77,049
star
3

tfjs

A WebGL accelerated JavaScript library for training and deploying ML models.
TypeScript
18,430
star
4

tensor2tensor

Library of deep learning models and datasets designed to make deep learning more accessible and accelerate ML research.
Python
14,693
star
5

tfjs-models

Pretrained models for TensorFlow.js
TypeScript
14,058
star
6

playground

Play with neural networks!
TypeScript
11,585
star
7

tfjs-core

WebGL-accelerated ML // linear algebra // automatic differentiation for JavaScript.
TypeScript
8,480
star
8

examples

TensorFlow examples
Jupyter Notebook
7,920
star
9

tensorboard

TensorFlow's Visualization Toolkit
TypeScript
6,686
star
10

tfjs-examples

Examples built with TensorFlow.js
JavaScript
6,553
star
11

nmt

TensorFlow Neural Machine Translation Tutorial
Python
6,315
star
12

docs

TensorFlow documentation
Jupyter Notebook
6,119
star
13

swift

Swift for TensorFlow
Jupyter Notebook
6,118
star
14

serving

A flexible, high-performance serving system for machine learning models
C++
6,068
star
15

tpu

Reference models and tools for Cloud TPUs.
Jupyter Notebook
5,214
star
16

rust

Rust language bindings for TensorFlow
Rust
4,939
star
17

lucid

A collection of infrastructure and tools for research in neural network interpretability.
Jupyter Notebook
4,611
star
18

datasets

TFDS is a collection of datasets ready to use with TensorFlow, Jax, ...
Python
4,298
star
19

probability

Probabilistic reasoning and statistical analysis in TensorFlow
Jupyter Notebook
4,053
star
20

adanet

Fast and flexible AutoML with learning guarantees.
Jupyter Notebook
3,474
star
21

hub

A library for transfer learning by reusing parts of TensorFlow models.
Python
3,467
star
22

minigo

An open-source implementation of the AlphaGoZero algorithm
C++
3,428
star
23

skflow

Simplified interface for TensorFlow (mimicking Scikit Learn) for Deep Learning
Python
3,181
star
24

lingvo

Lingvo
Python
2,812
star
25

agents

TF-Agents: A reliable, scalable and easy to use TensorFlow library for Contextual Bandits and Reinforcement Learning.
Python
2,775
star
26

graphics

TensorFlow Graphics: Differentiable Graphics Layers for TensorFlow
Python
2,744
star
27

federated

A framework for implementing federated learning
Python
2,281
star
28

tfx

TFX is an end-to-end platform for deploying production ML pipelines
Python
2,099
star
29

privacy

Library for training machine learning models with privacy for training data
Python
1,916
star
30

tflite-micro

Infrastructure to enable deployment of ML models to low-power resource-constrained embedded targets (including microcontrollers and digital signal processors).
C++
1,887
star
31

fold

Deep learning with dynamic computation graphs in TensorFlow
Python
1,824
star
32

recommenders

TensorFlow Recommenders is a library for building recommender system models using TensorFlow.
Python
1,816
star
33

quantum

Hybrid Quantum-Classical Machine Learning in TensorFlow
Python
1,798
star
34

mlir

"Multi-Level Intermediate Representation" Compiler Infrastructure
1,720
star
35

addons

Useful extra functionality for TensorFlow 2.x maintained by SIG-addons
Python
1,690
star
36

mesh

Mesh TensorFlow: Model Parallelism Made Easier
Python
1,589
star
37

haskell

Haskell bindings for TensorFlow
Haskell
1,558
star
38

model-optimization

A toolkit to optimize ML models for deployment for Keras and TensorFlow, including quantization and pruning.
Python
1,486
star
39

workshops

A few exercises for use at events.
Jupyter Notebook
1,457
star
40

ecosystem

Integration of TensorFlow with other open-source frameworks
Scala
1,370
star
41

gnn

TensorFlow GNN is a library to build Graph Neural Networks on the TensorFlow platform.
Python
1,320
star
42

model-analysis

Model analysis tools for TensorFlow
Python
1,250
star
43

community

Stores documents used by the TensorFlow developer community
C++
1,239
star
44

text

Making text a first-class citizen in TensorFlow.
C++
1,224
star
45

benchmarks

A benchmark framework for Tensorflow
Python
1,144
star
46

tfjs-node

TensorFlow powered JavaScript library for training and deploying ML models on Node.js.
TypeScript
1,048
star
47

similarity

TensorFlow Similarity is a python package focused on making similarity learning quick and easy.
Python
1,008
star
48

transform

Input pipeline framework
Python
984
star
49

neural-structured-learning

Training neural models with structured signals.
Python
982
star
50

gan

Tooling for GANs in TensorFlow
Jupyter Notebook
907
star
51

compression

Data compression in TensorFlow
Python
849
star
52

java

Java bindings for TensorFlow
Java
818
star
53

swift-apis

Swift for TensorFlow Deep Learning Library
Swift
794
star
54

deepmath

Experiments towards neural network theorem proving
C++
779
star
55

data-validation

Library for exploring and validating machine learning data
Python
756
star
56

runtime

A performant and modular runtime for TensorFlow
C++
754
star
57

tensorrt

TensorFlow/TensorRT integration
Jupyter Notebook
736
star
58

docs-l10n

Translations of TensorFlow documentation
Jupyter Notebook
716
star
59

io

Dataset, streaming, and file system extensions maintained by TensorFlow SIG-IO
C++
698
star
60

tfjs-converter

Convert TensorFlow SavedModel and Keras models to TensorFlow.js
TypeScript
697
star
61

decision-forests

A collection of state-of-the-art algorithms for the training, serving and interpretation of Decision Forest models in Keras.
Python
656
star
62

swift-models

Models and examples built with Swift for TensorFlow
Jupyter Notebook
644
star
63

tcav

Code for the TCAV ML interpretability project
Jupyter Notebook
612
star
64

recommenders-addons

Additional utils and helpers to extend TensorFlow when build recommendation systems, contributed and maintained by SIG Recommenders.
Cuda
590
star
65

tfjs-wechat

WeChat Mini-program plugin for TensorFlow.js
TypeScript
547
star
66

flutter-tflite

Dart
534
star
67

lattice

Lattice methods in TensorFlow
Python
519
star
68

model-card-toolkit

A toolkit that streamlines and automates the generation of model cards
Python
415
star
69

mlir-hlo

MLIR
388
star
70

tflite-support

TFLite Support is a toolkit that helps users to develop ML and deploy TFLite models onto mobile / ioT devices.
C++
374
star
71

cloud

The TensorFlow Cloud repository provides APIs that will allow to easily go from debugging and training your Keras and TensorFlow code in a local environment to distributed training in the cloud.
Python
374
star
72

custom-op

Guide for building custom op for TensorFlow
Smarty
373
star
73

tfjs-vis

A set of utilities for in browser visualization with TensorFlow.js
TypeScript
360
star
74

profiler

A profiling and performance analysis tool for TensorFlow
TypeScript
359
star
75

fairness-indicators

Tensorflow's Fairness Evaluation and Visualization Toolkit
Jupyter Notebook
341
star
76

moonlight

Optical music recognition in TensorFlow
Python
325
star
77

tfjs-tsne

TypeScript
309
star
78

estimator

TensorFlow Estimator
Python
300
star
79

embedding-projector-standalone

HTML
293
star
80

tfjs-layers

TensorFlow.js high-level layers API
TypeScript
283
star
81

build

Build-related tools for TensorFlow
Shell
275
star
82

tflite-micro-arduino-examples

C++
207
star
83

kfac

An implementation of KFAC for TensorFlow
Python
197
star
84

ngraph-bridge

TensorFlow-nGraph bridge
C++
137
star
85

profiler-ui

[Deprecated] The TensorFlow Profiler (TFProf) UI provides a visual interface for profiling TensorFlow models.
HTML
134
star
86

tensorboard-plugin-example

Python
134
star
87

tfx-addons

Developers helping developers. TFX-Addons is a collection of community projects to build new components, examples, libraries, and tools for TFX. The projects are organized under the auspices of the special interest group, SIG TFX-Addons. Join the group at http://goo.gle/tfx-addons-group
Jupyter Notebook
125
star
88

metadata

Utilities for passing TensorFlow-related metadata between tools
Python
102
star
89

networking

Enhanced networking support for TensorFlow. Maintained by SIG-networking.
C++
97
star
90

tfhub.dev

Python
75
star
91

java-ndarray

Java
71
star
92

java-models

Models in Java
Java
71
star
93

tfjs-website

WebGL-accelerated ML // linear algebra // automatic differentiation for JavaScript.
CSS
71
star
94

tfjs-data

Simple APIs to load and prepare data for use in machine learning models
TypeScript
66
star
95

tfx-bsl

Common code for TFX
Python
64
star
96

autograph

Python
50
star
97

model-remediation

Model Remediation is a library that provides solutions for machine learning practitioners working to create and train models in a way that reduces or eliminates user harm resulting from underlying performance biases.
Python
42
star
98

codelabs

Jupyter Notebook
36
star
99

tensorstore

C++
25
star
100

swift-bindings

Swift
25
star