Controlling quantum randomness from the vacuum

Experimental setup to generate tunable random numbers from vacuum fluctuations. Credit: Charles Roques-Carmes, Yannick Salamin

Groundbreaking study demonstrates control over quantum fluctuations, unlocking potential for probabilistic computing and ultra-precise field sensing.

A team of researchers from the Massachusetts Institute of Technology has achieved a milestone in quantum technologies, demonstrating for the first time the control of quantum randomness.

The team of researchers focused on a unique feature of quantum physics known as “vacuum fluctuations”. You might think of a vacuum as a completely empty space without matter or light. However, in the quantum world, even this “empty” space experiences fluctuations or changes. Imagine a calm sea that suddenly gets waves – that’s similar to what happens in a vacuum at the quantum level. Previously, these fluctuations have allowed scientists to generate random numbers. They’re also responsible for many fascinating phenomena that quantum scientists have discovered over the past hundred years.

The findings are described today in the journal Science, in a paper lead by MIT postdoctoral associates Charles Roques-Carmes and Yannick Salamin; MIT professors Marin Soljačić and John Joannopoulos; and colleagues.

Conventionally, computers function in a deterministic manner, executing step-by-step instructions that follow a set ofpredefined rules and algorithms. In this paradigm, if you run the same operation multiple times, you always get the exact same outcome. This deterministic approach has powered our digital age, but it has its limitations, especially when it comes to simulating the physical world or optimizing complex systems, tasks that often involve vast amounts of uncertainty and randomness.

This is where the concept of probabilistic computing comes into play. Probabilistic computing systems leverage theintrinsic randomness of certain processes to perform computations. They don’t just provide a single “right” answer, but rather a range of possible outcomes each with its associated probability. This inherently makes them well-suited tosimulate physical phenomena and tackle optimization problems where multiple solutions could exist and where exploration of various possibilities can lead to a better solution.

However, the practical implementation of probabilistic computing has been hampered historically by a significant obstacle: the lack of control over the probability distributions associated with quantum randomness. But the researchconducted by the MIT team has shed light on a possible solution.

Specifically, the researchers have shown that injecting a weak laser “bias” into an optical parametric oscillator, anoptical system that naturally generates random numbers, can serve as a controllable source of “biased” quantum randomness.

“Despite extensive study of these quantum systems, the influence of a very weak bias field was unexplored,” remarks Charles Roques-Carmes, a researcher in the study. “Our discovery of controllable quantum randomness not onlyallows us to revisit decades-old concepts in quantum optics but also opens up potential in probabilistic computing and ultra-precise field sensing.”

The team has successfully exhibited the ability to manipulate the probabilities associated with the output states of anoptical parametric oscillator, thereby creating the first-ever controllable photonic probabilistic bit (p-bit). Additionally, thesystem has shown sensitivity to the temporal oscillations of bias field pulses, even far below the single photon level.

Yannick Salamin, another team member, remarks, “Our photonic p-bit generation system currently allows for the production of 10,000 bits per second, each of which can follow an arbitrary binomial distribution. We expect that thistechnology will evolve in the next few years, leading to higher-rate photonic p-bits and a broader range of applications.”

Professor Marin Soljačić from MIT emphasizes the broader implications of the work: “By making the vacuum fluctuations a controllable element, we are pushing the boundaries of what’s possible in quantum-enhanced probabilistic computing. The prospect of simulating complex dynamics in areas such as combinatorial optimization and lattice quantum chromodynamics simulations is very exciting.”

Journal: Science
DOI: 10.1126/science.adh4920
Article Title: Biasing the quantum vacuum to control macroscopic probability distributions
Article Publication Date: 14-Jul-2023

Media Contact

Franklin Hadley
Massachusetts Institute of Technology, Institute for Soldier Nanotechnologies
fhadley@mit.edu
Office: 617-324-6413
Cell: 6178387974

Expert Contacts

Charles Roques-Carmes
Stanford University
chrc@stanford.edu

Yannick Salamin
Massachusetts Institute of Technology
salamin@mit.edu
 @MIT

Marin Soljačić
Massachusetts Institute of Technology
soljacic@mit.edu
 @MIT

www.mit.edu

Media Contact

Franklin Hadley
Massachusetts Institute of Technology, Institute for Soldier Nanotechnologies

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