Quantinuum Partners with BBC & UCL for Quantum Natural Language Processing

Quantinuum, the world’s leading integrated quantum computing company, has joined a consortium with University College London (UCL) and the British Broadcasting Corporation (BBC) to explore the industrial relevance of quantum natural language processing (QNLP) and quantum-inspired natural language processing.

The consortium, funded by the Royal Academy of Engineering for a Senior Research Fellowship at UCL, will build on a long-term exploration of quantum mechanics and linguistics by Quantinuum’s chief scientist Professor Bob Coecke, head of artificial intelligence Professor Stephen Clark, and Professor Mehrnoosh Sadrzadeh of UCL Computer Science.

The BBC hopes to find new ways to represent content in forms readable by computers, to support tasks such as content discovery and archival retrieval. This builds on the Corporation’s previous work with Sadrzadeh on Enhancing Personalised Recommendations with the use of Multi Modal Information.

Ilyas Khan, founder of Cambridge Quantum Computing and CEO of Quantinuum said: “Developing quantum computing so that the broadest and most diverse populations can benefit, means looking across the timing spectrum at applications that can be made productive in the short, medium and long term. As part of our long-term work, we anticipate that true language processing will become important with fault tolerant quantum processors, and our work with the BBC and UCL is a very significant step towards being prepared to take advantage of quantum computers when they become available at scale. Quantinuum is a leader in the fields in which it operates, and this leadership is built on deeply meaningful collaborations such as this.”

In their 15-year collaboration, the researchers established a unified model of statistical and compositional meaning for natural language, in the seminal 2011 paper Mathematical Foundations of a Compositional Distributional Model of Meaning. The foundational work was guided by Professor Coecke’s categorical quantum mechanics formalism. Experimental evidence followed suit by Professor Sadrzadeh’s work on Concrete Models and Experimental Evaluations for the Categorial Compositional Distributional Model of Meaning. The advance of these techniques beyond academic research, to a scaled industrial level, will take capabilities from mere sentence level to general text, using methods which were initiated in the papers The Mathematics of Text Structure and Evaluating Composition Models for Verb Phrase Elliptical Sentence Embeddings.

The broadcaster’s archives reflect a century of global news and cultural life across the UK and beyond. It is one of the largest broadcast archives in the world, with over 15 million items, including audio, film, and text documents, as well as toys, games, merchandise, artefacts, and historic equipment.

Source: https://www.quantinuum.com/

Citations

Please use one of the following formats to cite this article in your essay, paper or report:

  • APA

    Quantinuum Ltd. (2022, November 25). Quantinuum Partners with BBC & UCL for Quantum Natural Language Processing. AZoQuantum. Retrieved on February 21, 2024 from https://www.azoquantum.com/News.aspx?newsID=9311.

  • MLA

    Quantinuum Ltd. "Quantinuum Partners with BBC & UCL for Quantum Natural Language Processing". AZoQuantum. 21 February 2024. <https://www.azoquantum.com/News.aspx?newsID=9311>.

  • Chicago

    Quantinuum Ltd. "Quantinuum Partners with BBC & UCL for Quantum Natural Language Processing". AZoQuantum. https://www.azoquantum.com/News.aspx?newsID=9311. (accessed February 21, 2024).

  • Harvard

    Quantinuum Ltd. 2022. Quantinuum Partners with BBC & UCL for Quantum Natural Language Processing. AZoQuantum, viewed 21 February 2024, https://www.azoquantum.com/News.aspx?newsID=9311.

Tell Us What You Think

Do you have a review, update or anything you would like to add to this news story?

Leave your feedback
Your comment type
Submit
Azthena logo

AZoM.com powered by Azthena AI

Your AI Assistant finding answers from trusted AZoM content

Azthena logo with the word Azthena

Your AI Powered Scientific Assistant

Hi, I'm Azthena, you can trust me to find commercial scientific answers from AZoNetwork.com.

A few things you need to know before we start. Please read and accept to continue.

  • Use of “Azthena” is subject to the terms and conditions of use as set out by OpenAI.
  • Content provided on any AZoNetwork sites are subject to the site Terms & Conditions and Privacy Policy.
  • Large Language Models can make mistakes. Consider checking important information.

Great. Ask your question.

While we only use edited and approved content for Azthena answers, it may on occasions provide incorrect responses. Please confirm any data provided with the related suppliers or authors. We do not provide medical advice, if you search for medical information you must always consult a medical professional before acting on any information provided.

Your questions, but not your email details will be shared with OpenAI and retained for 30 days in accordance with their privacy principles.

Please do not ask questions that use sensitive or confidential information.

Read the full Terms & Conditions.