Plato Data Intelligence.
Vertical Search & Ai.

From quantum picturalism to quantum NLP and quantum AI with Bob Coecke

Date:

In 2020 the Oxford-based Quantinuum team performed Quantum Natural Language Processing (QNLP) on IBM quantum hardware [1, 2]. Key to having been able to achieve what is conceived as a heavily data-driven task, is the observation that quantum theory and natural language are governed by much of the same compositional structure – a.k.a. tensor structure.

Hence our language model is in a sense quantum-native, and we provide an analogy with simulation of quantum systems in terms of algorithmic speed-up [forthcoming]. Meanwhile we have made all our software available open-source, and with support [github.com/CQCL/lambeq].

The compositional match between natural language and quantum extends to other domains than language, and argue that a new generation of AI can emerge when fully pushing this analogy, while exploiting the completeness of categorical quantum mechanics / ZX-calculus [3, 4, 5] for novel reasoning purposes that go hand-in-hand with modern machine learning.

[embedded content]

Frank

#DataScientist, #DataEngineer, Blogger, Vlogger, Podcaster at http://DataDriven.tv .

Back @Microsoft to help customers leverage #AI Opinions mine. #武當派 fan.

I blog to help you become a better data scientist/ML engineer

Opinions are mine. All mine.

spot_img

Latest Intelligence

spot_img

Latest Intelligence

spot_img

Latest Intelligence

spot_img