Tag Archives: Nathan Wiebe

Year of Quantum Across Canada Conference October 6 – 9, 2025, Waterloo, Ontario (call for submissions deadline: Sept. 19, 2025)

A September 9, 2025 Perimeter Institute for Theoretical Physics (PI) notice (received via email) announces a quantum conference and call for posters,

Join leading quantum researchers at the Year of Quantum Across Canada Conference that will highlight advances in quantum information theory and applications. The conference is co-hosted by the Institute for Quantum Computing (IQC) and Perimeter Institute of Theoretical Physics from October 6 to 9, 2025.

  • Learn about and share the latest advances in quantum information theory and applications.
  • Find opportunities to collaborate with local, Canadian and international quantum researchers.
  • Celebrate 100 years since the initial development of quantum mechanics this International Year of Quantum.

IQC and Perimeter Institute invite all scientists who are interested in:

  • Quantum metrology
  • Quantum simulation and quantum advantage
  • Quantum error-correction and fault tolerance
  • Quantum complexity and algorithms
  • Quantum communication and networks
  • Quantum cryptography
  • Quantum information in quantum matter and quantum gravity

Register Today

Registration Deadlines: 

  • In-Person: September 22 [2025] at 23:59 ET
  • Virtual: October 6 [2025] at 23:59 ET

We are hosting a poster session on Tuesday, October 7 [2025]. Abstract submission deadline is September 19 [2025] at 23:59 ET.

Please forward this email to your colleagues who would be interested in attending. Questions can be directed to mail to: iqc.events@uwaterloo.ca

I have more information about the call for poster submissions, from the Year of Quantum Across Canada’s Call for Abstracts webpage,

Submission deadline: Sep[t] 19, 2025, 11:59 PM [ET]

The Year of Quantum Across Canada Symposium will be hosting a poster session on Tuesday, Oct 7th [2025] at IQC. Poster submissions are welcome and will be reviewed by the program committee. Some posters may be selected to present as a contributed talk. If you are interested in your poster being considered for a talk, please indicate this on the submission form.

NOTE: You must be in attendance at the Symposium in Waterloo to present a poster and/or contributed talk. We encourage you to register for the Symposium as soon as possible as space is limited. You will be advised if your poster has been accepted before the registration fee payment deadline.

If you have questions about the Call for Abstracts with respect to your research, please contact Alex May (amay@perimeterinstitute.ca).

Any logistical questions about the application process, the website or decision timelines should be directed to conferences@perimeterinstitute.ca

Then, there’s this from the Year of Quantum Across Canada’s Speaker List webpage, Note: Two confirmed speakers from Canada to “celebrate and aim to strengthen the quantum information science community in Canada and beyond, by bringing together leading Canadian researchers as well as members of the broader quantum community” as per the conference homepage. Maybe they’ll get a few more before October 2025?,

Speaker List

Confirmed Speakers:

Christian Bauer (Lawrence Berkeley National Laboratory)
Alexandre Blais (Université de Sherbrooke)
Sergey Bravyi (IBM Research – Thomas J. Watson Research Center)
Nikolas Breuckmann (University of Bristol)
Soonwon Choi (MIT [Massachusetts Institute of Technology])
Zohreh Davoudi (University of Maryland)
Matthew Fisher (University of California, Santa Barbara)
Dakshita Khurana (University of Illinois Urbana-Champaign)
Aleksander Kubica (Yale University)
Hank Lamm (Fermilab)
Laura Mancinska (University of Copenhagen)
Antonio Mezzacapo (IBM)
John Preskill (Caltech)
Martin Savage (University of Washington)
Brian Swingle (Brandeis University)
Nathan Wiebe (University of Toronto)
Yu-Xiang Yang (The University of Hong Kong)

Moving on, UNESCO (United Nations Educational, Scientific and Cultural Organization) took a slightly more celebratory approach to their launch of the International Year of Quantum Science and Technology 2025 (IYQ 2025) in February 2025 (see my January 31, 2025 posting).

You can find the International Year of Quantum Science and Technology 2025 (IYQ 2025) website here. It provides information about a plethora of quantum events in countries around the world along with this video embedded here too,

Happy International Year of Quantum Science and Technology 2025 (YQ 2025)!

Machine learning software and quantum computers that think

A Sept. 14, 2017 news item on phys.org sets the stage for quantum machine learning by explaining a few basics first,

Language acquisition in young children is apparently connected with their ability to detect patterns. In their learning process, they search for patterns in the data set that help them identify and optimize grammar structures in order to properly acquire the language. Likewise, online translators use algorithms through machine learning techniques to optimize their translation engines to produce well-rounded and understandable outcomes. Even though many translations did not make much sense at all at the beginning, in these past years we have been able to see major improvements thanks to machine learning.

Machine learning techniques use mathematical algorithms and tools to search for patterns in data. These techniques have become powerful tools for many different applications, which can range from biomedical uses such as in cancer reconnaissance, in genetics and genomics, in autism monitoring and diagnosis and even plastic surgery, to pure applied physics, for studying the nature of materials, matter or even complex quantum systems.

Capable of adapting and changing when exposed to a new set of data, machine learning can identify patterns, often outperforming humans in accuracy. Although machine learning is a powerful tool, certain application domains remain out of reach due to complexity or other aspects that rule out the use of the predictions that learning algorithms provide.

Thus, in recent years, quantum machine learning has become a matter of interest because of is vast potential as a possible solution to these unresolvable challenges and quantum computers show to be the right tool for its solution.

A Sept. 14, 2017 Institute of Photonic Sciences ([Catalan] Institut de Ciències Fotòniques] ICFO) press release, which originated the news item, goes on to detail a recently published overview of the state of quantum machine learning,

In a recent study, published in Nature, an international team of researchers integrated by Jacob Biamonte from Skoltech/IQC, Peter Wittek from ICFO, Nicola Pancotti from MPQ, Patrick Rebentrost from MIT, Nathan Wiebe from Microsoft Research, and Seth Lloyd from MIT have reviewed the actual status of classical machine learning and quantum machine learning. In their review, they have thoroughly addressed different scenarios dealing with classical and quantum machine learning. In their study, they have considered different possible combinations: the conventional method of using classical machine learning to analyse classical data, using quantum machine learning to analyse both classical and quantum data, and finally, using classical machine learning to analyse quantum data.

Firstly, they set out to give an in-depth view of the status of current supervised and unsupervised learning protocols in classical machine learning by stating all applied methods. They introduce quantum machine learning and provide an extensive approach on how this technique could be used to analyse both classical and quantum data, emphasizing that quantum machines could accelerate processing timescales thanks to the use of quantum annealers and universal quantum computers. Quantum annealing technology has better scalability, but more limited use cases. For instance, the latest iteration of D-Wave’s [emphasis mine] superconducting chip integrates two thousand qubits, and it is used for solving certain hard optimization problems and for efficient sampling. On the other hand, universal (also called gate-based) quantum computers are harder to scale up, but they are able to perform arbitrary unitary operations on qubits by sequences of quantum logic gates. This resembles how digital computers can perform arbitrary logical operations on classical bits.

However, they address the fact that controlling a quantum system is very complex and analyzing classical data with quantum resources is not as straightforward as one may think, mainly due to the challenge of building quantum interface devices that allow classical information to be encoded into a quantum mechanical form. Difficulties, such as the “input” or “output” problems appear to be the major technical challenge that needs to be overcome.

The ultimate goal is to find the most optimized method that is able to read, comprehend and obtain the best outcomes of a data set, be it classical or quantum. Quantum machine learning is definitely aimed at revolutionizing the field of computer sciences, not only because it will be able to control quantum computers, speed up the information processing rates far beyond current classical velocities, but also because it is capable of carrying out innovative functions, such quantum deep learning, that could not only recognize counter-intuitive patterns in data, invisible to both classical machine learning and to the human eye, but also reproduce them.

As Peter Wittek [emphasis mine] finally states, “Writing this paper was quite a challenge: we had a committee of six co-authors with different ideas about what the field is, where it is now, and where it is going. We rewrote the paper from scratch three times. The final version could not have been completed without the dedication of our editor, to whom we are indebted.”

It was a bit of a surprise to see local (Vancouver, Canada) company D-Wave Systems mentioned but i notice that one of the paper’s authors (Peter Wittek) is mentioned in a May 22, 2017 D-Wave news release announcing a new partnership to foster quantum machine learning,

Today [May 22, 2017] D-Wave Systems Inc., the leader in quantum computing systems and software, announced a new initiative with the Creative Destruction Lab (CDL) at the University of Toronto’s Rotman School of Management. D-Wave will work with CDL, as a CDL Partner, to create a new track to foster startups focused on quantum machine learning. The new track will complement CDL’s successful existing track in machine learning. Applicants selected for the intensive one-year program will go through an introductory boot camp led by Dr. Peter Wittek [emphasis mine], author of Quantum Machine Learning: What Quantum Computing means to Data Mining, with instruction and technical support from D-Wave experts, access to a D-Wave 2000Q™ quantum computer, and the opportunity to use a D-Wave sampling service to enable machine learning computations and applications. D-Wave staff will be a part of the committee selecting up to 40 individuals for the program, which begins in September 2017.

For anyone interested in the paper, here’s a link to and a citation,

Quantum machine learning by Jacob Biamonte, Peter Wittek, Nicola Pancotti, Patrick Rebentrost, Nathan Wiebe, & Seth Lloyd. Nature 549, 195–202 (14 September 2017) doi:10.1038/nature23474 Published online 13 September 2017

This paper is behind a paywall.