You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 
 
 
 
Hiroki Nakayama bfd4822d63
Merge pull request #210 from CatalystCode/enhancement/social-admin-info
5 years ago
app Merge pull request #210 from CatalystCode/enhancement/social-admin-info 5 years ago
docs Merge pull request #46 from BrambleXu/feature/json_export 6 years ago
tools Adopt nuxt folder structure 5 years ago
.coveragerc Add code coverage 5 years ago
.dockerignore Adopt nuxt folder structure 5 years ago
.flake8 Add flake8 linter to CI 5 years ago
.gitignore Adopt nuxt folder structure 5 years ago
.travis.yml Speed up CI by not creating production image 5 years ago
Dockerfile Adopt nuxt folder structure 5 years ago
ISSUE_TEMPLATE.md Add project template 6 years ago
LICENSE Initial commit 6 years ago
Procfile Update procfile 6 years ago
README.md Add Codacy badge 5 years ago
ROADMAP.md Add Roadmap 5 years ago
app.json Add DEBUG environment variable for Heroku Button 5 years ago
awsdeploy.yml #87: implement AWS launch button 5 years ago
azure-pipelines.yaml Add documentation for pipeline variables 5 years ago
azuredeploy.json Merge branch 'master' into enhancement/azure-pipelines 5 years ago
docker-compose.yml Adopt nuxt folder structure 5 years ago
heroku.yml Move heroku deployment to Docker 5 years ago
package.json Implement Heroku Button 5 years ago
requirements.txt Merge pull request #210 from CatalystCode/enhancement/social-admin-info 5 years ago

README.md

doccano

Codacy Badge Build Status

doccano is an open source text annotation tool for human. It provides annotation features for text classification, sequence labeling and sequence to sequence. So, you can create labeled data for sentiment analysis, named entity recognition, text summarization and so on. Just create project, upload data and start annotation. You can build dataset in hours.

Demo

You can enjoy annotation demo.

Named entity recognition

First demo is one of the sequence labeling tasks, named-entity recognition. You just select text spans and annotate it. Since doccano supports shortcut key, so you can quickly annotate text spans.

Named Entity Recognition

Sentiment analysis

Second demo is one of the text classification tasks, topic classification. Since there may be more than one category, you can annotate multi-labels.

Text Classification

Machine translation

Final demo is one of the sequence to sequence tasks, machine translation. Since there may be more than one responses in sequence to sequence tasks, you can create multi responses.

Machine Translation

Deployment

Azure

Doccano can be deployed to Azure (Web App for Containers + PostgreSQL database) by clicking on the button below:

Deploy to Azure

Heroku

Doccano can be deployed to Heroku by clicking on the button below:

Deploy

Of course, you can deploy doccano by using heroku-cli.

heroku create
heroku stack:set container
git push heroku master

AWS

Doccano can be deployed to AWS (Cloudformation) by clicking on the button below:

AWS CloudFormation Launch Stack SVG Button

Notice: (1) EC2 KeyPair cannot be created automatically, so make sure you have an existing EC2 KeyPair in one region. Or create one yourself. (2) If you want to access doccano via HTTPS in AWS, here is an instruction.

Features

  • Collaborative annotation
  • Multi-Language support
  • Emoji 😄 support
  • (future) Auto labeling

Requirements

  • Python 3.6+
  • Django 2.1.7+
  • Node.js 8.0+
  • Google Chrome(highly recommended)

Installation

First of all, you have to clone the repository:

git clone https://github.com/chakki-works/doccano.git
cd doccano

To install doccano, there are three options:

Option1: Pull the production Docker image

docker pull chakkiworks/doccano

Option2: Setup Python environment

First we need to install the dependencies. Run the following commands:

pip install -r requirements.txt
cd app

Next we need to start the webpack server so that the frontend gets compiled continuously. Run the following commands in a new shell:

cd server/static
npm install
npm run build
# npm start  # for developers
cd ..

Option3: Pull the development Docker-Compose images

docker-compose pull

Usage

Start the development server

Let’s start the development server and explore it.

Depending on your installation method, there are two options:

Option1: Running the Docker image as a Container

First, run a Docker container:

docker run -d --name doccano -p 8000:80 chakkiworks/doccano

Then, execute create-admin.sh script for creating a superuser.

docker exec doccano tools/create-admin.sh "admin" "admin@example.com" "password"

Option2: Running Django development server

Before running, we need to make migration. Run the following command:

python manage.py migrate

Next we need to create a user who can login to the admin site. Run the following command:

python manage.py create_admin --noinput --username "admin" --email "admin@example.com" --password "password"

Developers can also validate that the project works as expected by running the tests:

python manage.py test server.tests

Finally, to start the server, run the following command:

python manage.py runserver

Option3: Running the development Docker-Compose stack

We can use docker-compose to set up the webpack server, django server, database, etc. all in one command:

docker-compose up

Now, open a Web browser and go to http://127.0.0.1:8000/login/. You should see the login screen:

Login Form

Create a project

Now, try logging in with the superuser account you created in the previous step. You should see the doccano project list page:

projects

There is no project created yet. To create your project, make sure you’re in the project list page and select Create Project button. You should see the following screen:

Project Creation

In this step, you can select three project types: text classificatioin, sequence labeling and sequence to sequence. You should select a type with your purpose.

Import Data

After creating a project, you will see the "Import Data" page, or click Import Data button in the navigation bar. You should see the following screen:

Upload project

You can upload two types of files:

  • CSV file: file must contain a header with a text column or be one-column csv file.
  • JSON file: each line contains a JSON object with a text key. JSON format supports line breaks rendering.

Notice: Doccano won't render line breaks in annotation page for sequence labeling task due to the indent problem, but the exported JSON file still contains line breaks.

example.txt (or example.csv)

EU rejects German call to boycott British lamb.
President Obama is speaking at the White House.
He lives in Newark, Ohio.
...

example.json

{"text": "EU rejects German call to boycott British lamb."}
{"text": "President Obama is speaking at the White House."}
{"text": "He lives in Newark, Ohio."}
...

Any other columns (for csv) or keys (for json) are preserved and will be exported in the metadata column or key as is.

Once you select a TXT/JSON file on your computer, click Upload dataset button. After uploading the dataset file, we will see the Dataset page (or click Dataset button list in the left bar). This page displays all the documents we uploaded in one project.

Define labels

Click Labels button in left bar to define your own labels. You should see the label editor page. In label editor page, you can create labels by specifying label text, shortcut key, background color and text color.

Edit label

Annotation

Now, you are ready to annotate the texts. Just click the Annotate Data button in the navigation bar, you can start to annotate the documents you uploaded.

Edit label

Export Data

After the annotation step, you can download the annotated data. Click the Edit data button in navigation bar, and then click Export Data. You should see below screen:

Edit label

You can export data as CSV file or JSON file by clicking the button. As for the export file format, you can check it here: Export File Formats.

Each exported document will have metadata column or key, which will contain additional columns or keys from the imported document. The primary use-case for metadata is to allow you to match exported data with other system by adding external_id to the imported file. For example:

Input file may look like this: import.json

{"text": "EU rejects German call to boycott British lamb.", "external_id": 1}

and the exported file will look like this: output.json

{"doc_id": 2023, "text": "EU rejects German call to boycott British lamb.", "labels": ["news"], "username": "root", "metadata": {"external_id": 1}}

Tutorial

We prepared a NER annotation tutorial, which can help you have a better understanding of doccano. Please first read the README page, and then take the tutorial. A Tutorial For Sequence Labeling Project.

I hope you are having a great day!

Contribution

As with any software, doccano is under continuous development. If you have requests for features, please file an issue describing your request. Also, if you want to see work towards a specific feature, feel free to contribute by working towards it. The standard procedure is to fork the repository, add a feature, fix a bug, then file a pull request that your changes are to be merged into the main repository and included in the next release.

Here are some tips might be helpful. How to Contribute to Doccano Project

Contact

For help and feedback, please feel free to contact the author.

If you are favorite to doccano, please follow my GitHub and Twitter account.