Mathematical tool helps calculate properties of quantum materials more quickly

Intelligent mathematical tools for the simulation of spin systems reduce the computing time required on supercomputers. Some of the fastest supercomputers in the world are currently located at Forschungszentrum Jülich (shown here is JUWELS).

Intelligent mathematical tools for the simulation of spin systems reduce the computing time required on supercomputers. Some of the fastest supercomputers in the world are currently located at Forschungszentrum Jülich (shown here is JUWELS). © Forschungszentrum Jülich/Sascha Kreklau

Many quantum materials have been nearly impossible to simulate mathematically because the computing time required is too long. Now a joint research group at Freie Universität Berlin and the Helmholtz-Zentrum Berlin (HZB) has demonstrated a way to considerably reduce the computing time. This could accelerate the development of materials for energy-efficient IT technologies of the future.

Supercomputers around the world work around the clock on research problems. In principle, even novel materials can be simulated in computers in order to calculate their magnetic and thermal properties as well as their phase transitions. The gold standard for this kind of modelling is known as the quantum Monte Carlo method.

Wave-Particle Dualism

However, this method has an intrinsic problem: due to the physical wave-particle dualism of quantum systems, each particle in a solid-state compound not only possesses particle-like properties such as mass and momentum, but also wave-like properties such as phase. Interference causes the “waves“ to be superposed on each other, so that they either amplify (add) or cancel (subtract) each other locally. This makes the calculations extremely complex. It is referred to the sign problem of the quantum Monte Carlo method.

Minimisation of the problem

“The calculation of quantum material characteristics costs about one million hours of CPU on mainframe computers every day“, says Prof. Jens Eisert, who heads the joint research group at Freie Universität Berlin and the HZB. “This is a very considerable proportion of the total available computing time.“ Together with his team, the theoretical physicist has now developed a mathematical procedure by which the computational cost of the sign problem can be greatly reduced. “We show that solid-state systems can be viewed from very different perspectives. The sign problem plays a different role in these different perspectives. It is then a matter of dealing with the solid-state system in such a way that the sign problem is minimised“, explains Dominik Hangleiter, first author of the study that has now been published in Science Advances.

From simple spin systems to more complex ones

For simple solid-state systems with spins, which form what are known as Heisenberg ladders, this approach has enabled the team to considerably reduce the computational time for the sign problem. However, the mathematical tool can also be applied to more complex spin systems and promises faster calculation of their properties.

“This provides us with a new method for accelerated development of materials with special spin properties“, says Eisert. These types of materials could find application in future IT technologies for which data must be processed and stored with considerably less expenditure of energy.

 

Science Advances 2020: Easing the Monte Carlo sign problem; Dominik Hangleiter, Ingo Roth, Daniel Nagaj, Jens Eisert

Doi: 10.1126/sciadv.abb8341

arö

  • Copy link

You might also be interested in

  • AI-driven Catalyst Discovery: €30 million funding for German consortium
    News
    30.03.2026
    AI-driven Catalyst Discovery: €30 million funding for German consortium
    Six partners from research and industry, including Helmholtz-Zentrum Berlin (HZB), the Fritz-Haber-Institute of the Max Planck Society (FHI), BASF, Dunia Innovations, Siemens Energy, and the Technical University Berlin are launching a joint project to accelerate the catalyst discovery. The German Federal Ministry for Science, Technology and Space (BMFTR) is providing €30 million in funding for ASCEND (Accelerated Solutions for Catalysis using Emerging Nanotechnology and Digital Innovation). The research initiative targets the defossilisation of energy-intensive industries while safeguarding industrial competitiveness, with a focus on the chemical sector. The five-year project will start on 1st April 2026.
  • Kick-off for a new data and AI centre in Berlin
    News
    27.03.2026
    Kick-off for a new data and AI centre in Berlin
    By establishing a new data and AI centre in Berlin, the Zuse Institute Berlin (ZIB) and the Helmholtz-Zentrum Berlin (HZB) are laying the foundations for a scalable and sovereign data infrastructure in the capital. The project strengthens the scientific capabilities of Berlin’s research community whilst making an important contribution to research security, resilience and technological independence.

  • Berlin Battery Lab: BAM, HZB and HU are conducting joint research on sodium batteries
    News
    19.03.2026
    Berlin Battery Lab: BAM, HZB and HU are conducting joint research on sodium batteries
    The Federal Institute for Materials Research and Testing (BAM), the Helmholtz Zentrum Berlin (HZB) and Humboldt-Universität zu Berlin (HU) today officially inaugurated the Berlin Battery Lab (BBL). At this new research platform, BAM, HZB and HU jointly develop and test resource-efficient battery technologies with a focus on sodium-based systems. Together, they develop new materials, investigate innovative cell chemistries, and produce battery prototypes. The research infrastructure of the Berlin Battery Lab is also open to external partners from science and industry and is designed to accelerate the transfer from research to application.