A foreign language learning aid using a neural network to predict probability of translating foreign words

Overview

Langy

Langy



Langy is a reading-focused foreign language learning aid orientated towards young children.

Reading is an activity that every child knows. It is a necessary skill that is learned at school and at home, not only building on a child's linguistic capability, but also their cognitive and social skills.

Langy aims to enable children to learn vocabulary in a new language in a manner that feels familiar to them. The platform allows users to read a variety of children's books, where some words in the text are translated into the user's learning language - a foreign language of choice - which can be interacted with to show the English translation.


Read

Learn new vocabulary through reading books.

Reading a book on a desktop (large screen device).

The application is optimised for both desktop and mobile use.

Reading a book on a mobile (small screen device).

Profile

Track language learning progress on user profiles, and swap language at any time.

A user's language learning progress on their profile.

Word Test

Test translation skills on weak and recent words seen while reading.

Taking a Word Test.
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