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jp-mining-note

Foreword

This project is a fork of the outstanding JP Mining Note project created by Aquafina-Water-Bottle. Aquafina went silent a couple of months ago, and in the meantime, bugs have started to creep into this project as other supporting software has received updates.

The purpose of this fork is to provide bugfixes for JPMN until Aquafina returns to take over maintenance again. I don't have the time or expertise to continue adding features to the note, but hopefully I can keep it functional.

Version 0.11.0.5 has been released alongside this fork. It resolves a bug that prevented pitch accent information from being displayed correctly after a recent AJT Japanese update. Instructions for updating can be found in the documentation.

When Aquafina returns and resumes maintenance of the main project, I will close down this fork. The documentation for the original project can be found here.


jp-mining-note (JPMN) is an Anki card template for studying Japanese, designed to be visually appealing and simple to use without sacrificing functionality. Easily paired with most automatic card creation workflows, this aims to make your experience with Anki as smooth as possible.

Example Image

Note that this project is still in its early stages. Better support across systems and more features are planned for the future.

Demos

GUI (click here)
demo-0.9.0.0.mp4
Fields (click here)
demo_fields-0.10.1.0.mp4
Card Creation (click here)
demo_card_creation-0.10.1.0.mp4

Known Limitations

  • No support for mobile. (Support for Ankidroid is planned for the future, but with no ETA.)

Get Started

See the documentation here.

Other Info

Tested on Anki 2.1.54 (Qt6), Linux (Ubuntu) & Windows.

It is recommended you use the latest version of Anki if possible.

License

MIT. Go insane.

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Temporary bugfix fork for JPMN

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