This repository holds the code and the datasets for the paper:
- Miranda, Yeung, Pearson, Meichanetzidis, Coecke (2021). A Quantum Natural Language Processing Approach to Musical Intelligence
This paper pioneers a Quantum Natural Language Processing approach to classifying music. Using this quantum classifier we use a generate and test approach to generate quantum music. This is a proof of concept, but as quantum devices improve in size and fidelity we will be able to learn a quantum classifier that would be hard to simulate on a classical device.
audio
contains audio renderings of the training, development and testing data. Rendered from MIDI files using Pianoteq.compositions
contains the scores (PDF) and recordings of the 4 pieces discussed in the chapter, by pianist Lauryna Sableviciute.datasets
contains the train / development / test set used for our experiment. The generation methodology is described in the paper.experiment.ipynb
contains the pipeline described in Fig 9. of the paper, which is used used to learn the dataset.
For running the code, you will need Python 3.7 or later. Further, the following packages must also be installed:
discopy
(v0.3.7.1)lambeq
(v0.1.2)
For further help see:
- for
discopy
: https://discopy.readthedocs.io/en/main/index.html - for
lambeq
: https://cqcl.github.io/lambeq/