Simple translation demo showcasing our headliner package.

Overview

Headliner Demo

This is a demo showcasing our Headliner package. In particular, we trained a simple seq2seq model on an English-German dataset. We didn't train it very long so the model is not doing well as this was not our main goals anyway. For creating the app, we use Streamlit, a new open-source framework that lets users creating apps for machine learning projects very easily.

In fact, for the deployment, we only need six lines of code:

import streamlit as st
from headliner.model.summarizer_transformer import SummarizerTransformer

summarizer_transformer = SummarizerTransformer.load('model/transformer')

st.title('Type in some English')
title = st.text_input('How are you?')
st.write(summarizer_transformer.predict(title))

🚀 Quick Start

  1. Install all the packages:
    pip install -r requirements.txt
  2. Run the demo:
    streamlit run translation_demo.py
  3. View the Streamlit app in your browser: http://localhost:8501

© Copyright

See LICENSE for details.

Owner
Axel Springer News Media & Tech GmbH & Co. KG - Ideas Engineering
We are driving, shaping and coding the future of tech at Axel Springer.
Axel Springer News Media & Tech GmbH & Co. KG - Ideas Engineering
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