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Delta

DELTA is a deep learning based natural language and speech processing platform. LF AI & DATA Projects: https://lfaidata.foundation/projects/delta/

From Delta-ML·Updated May 19, 2026·View on GitHub··Archived

**DELTA** is a deep learning based end-to-end **natural language and speech processing** platform. DELTA aims to provide easy and fast experiences for using, deploying, and developing natural language processing and speech models for both academia and industry use cases. DELTA is mainly implemented using TensorFlow and Python 3. The project is written primarily in Python, distributed under the Apache License 2.0 license, first published in 2019. It has gained significant community traction with 1,605 stars and 284 forks on GitHub. Key topics include: asr, custom-ops, deep-learning, emotion-recognition, front-end.

Latest release: v0.3.3DELTA Version 0.3.3
July 16, 2020View Changelog →
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DELTA - A DEep learning Language Technology plAtform

What is DELTA?

DELTA is a deep learning based end-to-end natural language and speech processing platform.
DELTA aims to provide easy and fast experiences for using, deploying, and developing natural language processing and speech models for both academia and industry use cases. DELTA is mainly implemented using TensorFlow and Python 3.

For details of DELTA, please refer to this paper.

What can DELTA do?

DELTA has been used for developing several state-of-the-art algorithms for publications and delivering real production to serve millions of users.
It helps you to train, develop, and deploy NLP and/or speech models, featuring:

  • Easy-to-use
    • One command to train NLP and speech models, including:
      • NLP: text classification, named entity recognition, question and answering, text summarization, etc
      • Speech: speech recognition, speaker verification, emotion recognition, etc
    • Use configuration files to easily tune parameters and network structures
  • Easy-to-deploy
    • What you see in training is what you get in serving: all data processing and features extraction are integrated into a model graph
    • Uniform I/O interfaces and no changes for new models
  • Easy-to-develop
    • Easily build state-of-the-art models using modularized components
    • All modules are reliable and fully-tested

Table of Contents

Installation

We provide several approach to install DELTA:

Install from pip

We provide the pip install support for nlp version of DELTA.

Note: Users can still install DELTA from the source for both nlp and speech tasks.

We recommend to create conda or
virtualenv and install DELTA
from pip in the virtual environment. For example

bash
conda create -n delta-pip-py3.6 python=3.6 conda activate delta-pip-py3.6

Please install TensorFlow 2.x if you have not installed it in your system.

bash
pip install tensorflow

Then, simply install DELTA use the following command:

bash
pip install delta-nlp

After install DELTA, you can follow this example to train NLP models or develop new models.
A Text Classification Usage Example for pip users

Install from Source Code

To install from the source code, we use conda to
install required packages. Please
install conda if you do not
have it in your system.

Also, we provide two options to install DELTA, nlp version or full
version. nlp version needs minimal requirements and only installs NLP
related packages:

shell
# Run the installation script for NLP version, with CPU or GPU. cd tools ./install/install-delta.sh nlp [cpu|gpu]

Note: Users from mainland China may need to set up conda mirror sources, see ./tools/install/install-delta.sh for details.

If you want to use both NLP and speech packages, you can install the full version. The full version needs Kaldi library, which can be pre-installed or installed using our installation script.

shell
cd tools # If you have installed Kaldi KALDI=/your/path/to/Kaldi ./install/install-delta.sh full [cpu|gpu] # If you have not installed Kaldi, use the following command # ./install/install-delta.sh full [cpu|gpu]

To verify the installation, run:

shell
# Activate conda environment conda activate delta-py3.6-tf2.3.0 # Or use the following command if your conda version is < 4.6 # source activate delta-py3.6-tf2.3.0 # Add DELTA environment source env.sh # Generate mock data for text classification. pushd egs/mock_text_cls_data/text_cls/v1 ./run.sh popd # Train the model python3 delta/main.py --cmd train_and_eval --config egs/mock_text_cls_data/text_cls/v1/config/han-cls.yml

Manual installation

For advanced installation, full version users, or more details, please refer to manual installation.

Install from Docker

For Docker users, we provide images with DELTA installed. Please refer to docker installation.

Quick Start

Existing Examples

DELTA organizes many commonly-used tasks as examples in egs directory.
Each example is a NLP or speech task using a public dataset.
We provide the whole pipeline including data processing, model training, evaluation, and deployment.

You can simply use the run.sh under each directory to prepare the dataset, and then train or evaluate a model.
For example, you can use the following command to download the CONLL2003 dataset and train and evaluate a BLSTM-CRF model for NER:

shell
pushd ./egs/conll2003/seq_label/v1/ ./run.sh popd python3 delta/main.py --cmd train --config egs/conll2003/seq_label/v1/config/seq-label.yml python3 delta/main.py --cmd eval --config egs/conll2003/seq_label/v1/config/seq-label.yml

Modeling

There are several modes to start a DELTA pipeline:

  • train_and_eval
  • train
  • eval
  • infer
  • export_model

Note: Before run any command, please make sure you need to source env.sh in the current command prompt or a shell script.

You can use train_and_eval to start the model training and evaluation:

shell
python3 delta/main.py --cmd train_and_eval --config <your configuration file>.yml

This is equivalent to:

shell
python3 delta/main.py --cmd train --config <your configuration file>.yml python3 delta/main.py --cmd eval --config <your configuration file>.yml

For evaluation, you need to prepare a data file with features and labels.
If you only want to do inference with feature only, you can use the infer mode:

shell
python3 delta/main.py --cmd infer --config <your configuration file>.yml

When the training is done, you can export a model checkpoint to SavedModel:

shell
python3 delta/main.py --cmd export_model --config <your configuration file>.yml

Deployment

For model deployment, we provide many tools in the DELTA-NN package.
We organize the model deployment scripts under ./dpl directory.

  • Docker pull zh794390558/delta:deltann-cpu-py3 image, we test deployment under this env.
  • Download third-party pacakges by cd tools && make deltann.
  • Put SavedModel and configure model.yaml into dpl/model.
  • Use scripts under dpl/run.sh to convert model to other deployment model, and compile libraries.
  • All compiled tensorflow libs and delta-nn libs are in dpl/lib.
  • All things need for deployment are under dpl/output dir.
  • Test, benchmark or serve under docker.

For more information, please see dpl/README.md.

Graph Compiler

Graph Compiler using TensorFlow grappler, see gcompiler/README.md.

Benchmarks

In DELTA, we provide experimental results for each task on public datasets as benchmarks.
For each task, we compare our implementation with a similar model chosen from a highly-cited publication.
You can reproduce the experimental results using the scripts and configuration in the ./egs directory.
For more details, please refer to released models.

NLP tasks

TaskModelDataSetMetricDELTABaselineBaseline reference
Sentence ClassificationCNNTRECAcc92.291.2Kim (2014)
Document ClassificationHANYahoo AnswerAcc75.175.8Yang et al. (2016)
Named Entity RecognitionBiLSTM-CRFCoNLL 2003F184.684.7Huang et al. (2015)
Intent Detection (joint)BiLSTM-CRF-AttentionATISAcc97.498.2Liu and Lane (2016)
Slots Filling (joint)BiLSTM-CRF-AttentionATISF195.295.9Liu and Lane (2016)
Natural Language InferenceLSTMSNLIAcc80.780.6Bowman et al. (2016)
SummarizationSeq2seq-LSTMCNN/Daily MailRougeL27.328.1See et al. (2017)
Pretrain-NERELMOCoNLL 2003F192.292.2Peters et al. (2018)
Pretrain-NERBERTCoNLL 2003F194.694.9Devlin et al. (2019)

Speech tasks

TaskModelDataSetMetricDELTABaselineBaseline reference
Speech recognitionCTCHKUSTCER36.4938.67Miao et al. (2016)
Speaker verficationTDNNVoxCelebEER3.0283.138Kaldi
Emotion recognitionRNN-mean poolIEMOCAPAcc59.4456.90Mirsamadi et al. (2017)

FAQ

See FAQ for more information.

Contributing

Any contribution is welcome. All issues and pull requests are highly appreciated!
For more details, please refer to the contribution guide.

References

Please cite this paper when referencing DELTA.

bibtex
@ARTICLE{delta, author = {{Han}, Kun and {Chen}, Junwen and {Zhang}, Hui and {Xu}, Haiyang and {Peng}, Yiping and {Wang}, Yun and {Ding}, Ning and {Deng}, Hui and {Gao}, Yonghu and {Guo}, Tingwei and {Zhang}, Yi and {He}, Yahao and {Ma}, Baochang and {Zhou}, Yulong and {Zhang}, Kangli and {Liu}, Chao and {Lyu}, Ying and {Wang}, Chenxi and {Gong}, Cheng and {Wang}, Yunbo and {Zou}, Wei and {Song}, Hui and {Li}, Xiangang}, title = "{DELTA: A DEep learning based Language Technology plAtform}", journal = {arXiv e-prints}, year = "2019", url = {https://arxiv.org/abs/1908.01853}, }

License

The DELTA platform is licensed under the terms of the Apache license.
See LICENSE for more information.

Acknowledgement

The DELTA platform depends on many open source repos.
See References for more information.

Contributors

Showing top 12 contributors by commit count.

View all contributors on GitHub →

This article is auto-generated from Delta-ML/delta via the GitHub API.Last fetched: 6/1/2026