Simple embedding based text classifier inspired by fastText, implemented in tensorflow

Overview

FastText in Tensorflow

This project is based on the ideas in Facebook's FastText but implemented in Tensorflow. However, it is not an exact replica of fastText.

Classification is done by embedding each word, taking the mean embedding over the full text and classifying that using a linear classifier. The embedding is trained with the classifier. You can also specify to use 2+ character ngrams. These ngrams get hashed then embedded in a similar manner to the orginal words. Note, ngrams make training much slower but only make marginal improvements in performance, at least in English.

I may implement skipgram and cbow training later. Or preloading embedding tables.

<< Still WIP >>

You can use Horovod to distribute training across multiple GPUs, on one or multiple servers. See usage section below.

FastText Language Identification

I have added utilities to train a classifier to detect languages, as described in Fast and Accurate Language Identification using FastText

See usage below. It basically works in the same way as default usage.

Implemented:

  • classification of text using word embeddings
  • char ngrams, hashed to n bins
  • training and prediction program
  • serve models on tensorflow serving
  • preprocess facebook format, or text input into tensorflow records

Not Implemented:

  • separate word vector training (though can export embeddings)
  • heirarchical softmax.
  • quantize models (supported by tensorflow, but I haven't tried it yet)

Usage

The following are examples of how to use the applications. Get full help with --help option on any of the programs.

To transform input data into tensorflow Example format:

process_input.py --facebook_input=queries.txt --output_dir=. --ngrams=2,3,4

Or, using a text file with one example per line with an extra file for labels:

process_input.py --text_input=queries.txt --labels=labels.txt --output_dir=.

To train a text classifier:

classifier.py \
  --train_records=queries.tfrecords \
  --eval_records=queries.tfrecords \
  --label_file=labels.txt \
  --vocab_file=vocab.txt \
  --model_dir=model \
  --export_dir=model

To predict classifications for text, use a saved_model from classifier. classifier.py --export_dir stores a saved model in a numbered directory below export_dir. Pass this directory to the following to use that model for predictions:

predictor.py
  --saved_model=model/12345678
  --text="some text to classify"
  --signature_def=proba

To export the embedding layer you can export from predictor. Note, this will only be the text embedding, not the ngram embeddings.

predictor.py
  --saved_model=model/12345678
  --text="some text to classify"
  --signature_def=embedding

Use the provided script to train easily:

train_classifier.sh path-to-data-directory

Language Identification

To implement something similar to the method described in Fast and Accurate Language Identification using FastText you need to download the data:

lang_dataset.sh [datadir]

You can then process the training and validation data using process_input.py and classifier.py as described above.

There is a utility script to do this for you:

train_langdetect.sh datadir

It reaches about 96% accuracy using word embeddings and this increases to nearly 99% when adding --ngrams=2,3,4

Distributed Training

You can run training across multiple GPUs either on one or multiple servers. To do so you need to install MPI and Horovod then add the --horovod option. It runs very close to the GPU multiple in terms of performance. I.e. if you have 2 GPUs on your server, it should run close to 2x the speed.

NUM_GPUS=2
mpirun -np $NUM_GPUS python classifier.py \
  --horovod \
  --train_records=queries.tfrecords \
  --eval_records=queries.tfrecords \
  --label_file=labels.txt \
  --vocab_file=vocab.txt \
  --model_dir=model \
  --export_dir=model

The training script has this option added: train_classifier.sh.

Tensorflow Serving

As well as using predictor.py to run a saved model to provide predictions, it is easy to serve a saved model using Tensorflow Serving with a client server setup. There is a supplied simple rpc client (predictor_client.py) that provides predictions by using tensorflow server.

First make sure you install the tensorflow serving binaries. Instructions are here.

You then serve the latest saved model by supplying the base export directory where you exported saved models to. This directory will contain the numbered model directories:

tensorflow_model_server --port=9000 --model_base_path=model

Now you can make requests to the server using gRPC calls. An example simple client is provided in predictor_client.py:

predictor_client.py --text="Some text to classify"

Facebook Examples

<< NOT IMPLEMENTED YET >>

You can compare with Facebook's fastText by running similar examples to what's provided in their repository.

./classification_example.sh
./classification_results.sh
Owner
Alan Patterson
Alan Patterson
A small tool to joint picture including gif

README 做设计的时候遇到拼接长图的情况,但是发现没有什么好用的能拼接gif的工具。 于是自己写了个gif拼接小工具。 可以自动拼接gif、png和jpg等常见格式。 效果 从上至下 从下至上 从左至右 从右至左 使用 克隆仓库 git clone https://github.com/Dels

3 Dec 15, 2021
Statistical and Algorithmic Investing Strategies for Everyone

Eiten - Algorithmic Investing Strategies for Everyone Eiten is an open source toolkit by Tradytics that implements various statistical and algorithmic

Tradytics 2.5k Jan 02, 2023
Implementation of Barlow Twins paper

barlowtwins PyTorch Implementation of Barlow Twins paper: Barlow Twins: Self-Supervised Learning via Redundancy Reduction This is currently a work in

IgorSusmelj 86 Dec 20, 2022
Sparse R-CNN: End-to-End Object Detection with Learnable Proposals, CVPR2021

End-to-End Object Detection with Learnable Proposal, CVPR2021

Peize Sun 1.2k Dec 27, 2022
Modification of convolutional neural net "UNET" for image segmentation in Keras framework

ZF_UNET_224 Pretrained Model Modification of convolutional neural net "UNET" for image segmentation in Keras framework Requirements Python 3.*, Keras

209 Nov 02, 2022
[ICLR 2021] "CPT: Efficient Deep Neural Network Training via Cyclic Precision" by Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin

CPT: Efficient Deep Neural Network Training via Cyclic Precision Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin Accep

26 Oct 25, 2022
Tensorflow implementation of soft-attention mechanism for video caption generation.

SA-tensorflow Tensorflow implementation of soft-attention mechanism for video caption generation. An example of soft-attention mechanism. The attentio

Paul Chen 153 Nov 14, 2022
Robotics environments

Robotics environments Details and documentation on these robotics environments are available in OpenAI's blog post and the accompanying technical repo

Farama Foundation 121 Dec 28, 2022
FrankMocap: A Strong and Easy-to-use Single View 3D Hand+Body Pose Estimator

FrankMocap pursues an easy-to-use single view 3D motion capture system developed by Facebook AI Research (FAIR). FrankMocap provides state-of-the-art 3D pose estimation outputs for body, hand, and bo

Facebook Research 1.9k Jan 07, 2023
Text and code for the forthcoming second edition of Think Bayes, by Allen Downey.

Think Bayes 2 by Allen B. Downey The HTML version of this book is here. Think Bayes is an introduction to Bayesian statistics using computational meth

Allen Downey 1.5k Jan 08, 2023
Saliency - Framework-agnostic implementation for state-of-the-art saliency methods (XRAI, BlurIG, SmoothGrad, and more).

Saliency Methods 🔴 Now framework-agnostic! (Example core notebook) 🔴 🔗 For further explanation of the methods and more examples of the resulting ma

PAIR code 849 Dec 27, 2022
Mind the Trade-off: Debiasing NLU Models without Degrading the In-distribution Performance

Models for natural language understanding (NLU) tasks often rely on the idiosyncratic biases of the dataset, which make them brittle against test cases outside the training distribution.

Ubiquitous Knowledge Processing Lab 22 Jan 02, 2023
(Python, R, C/C++) Isolation Forest and variations such as SCiForest and EIF, with some additions (outlier detection + similarity + NA imputation)

IsoTree Fast and multi-threaded implementation of Extended Isolation Forest, Fair-Cut Forest, SCiForest (a.k.a. Split-Criterion iForest), and regular

141 Dec 29, 2022
NAS-HPO-Bench-II is the first benchmark dataset for joint optimization of CNN and training HPs.

NAS-HPO-Bench-II API Overview NAS-HPO-Bench-II is the first benchmark dataset for joint optimization of CNN and training HPs. It helps a fair and low-

yoichi hirose 8 Nov 21, 2022
An implementation of based on pytorch and mmcv

FisherPruning-Pytorch An implementation of Group Fisher Pruning for Practical Network Compression based on pytorch and mmcv Main Functions Pruning f

Peng Lu 15 Dec 17, 2022
Atif Hassan 103 Dec 14, 2022
A Pose Estimator for Dense Reconstruction with the Structured Light Illumination Sensor

Phase-SLAM A Pose Estimator for Dense Reconstruction with the Structured Light Illumination Sensor This open source is written by MATLAB Run Mode Open

Xi Zheng 14 Dec 19, 2022
Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation Introduction This is a PyTorch

XMed-Lab 30 Sep 23, 2022
This repo contains the code for the paper "Efficient hierarchical Bayesian inference for spatio-temporal regression models in neuroimaging" that has been accepted to NeurIPS 2021.

Dugh-NeurIPS-2021 This repo contains the code for the paper "Efficient hierarchical Bayesian inference for spatio-temporal regression models in neuroi

Ali Hashemi 5 Jul 12, 2022
Predictive AI layer for existing databases.

MindsDB is an open-source AI layer for existing databases that allows you to effortlessly develop, train and deploy state-of-the-art machine learning

MindsDB Inc 12.2k Jan 03, 2023