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Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
March 28, 2019
First-principles study of order-disorder transitions in multicomponent solid-solution alloys
Markus Eisenbach, Zongrui Pei, Xianglin Liu
IEEE Transactions on Neural Networks and Learning Systems
|
April 17, 2023
Few-Shot Object Detection: A Comprehensive Survey
Mona Kohler, Markus Eisenbach, Horst-Michael Gross
Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
July 9, 2016
A full-potential approach to the relativistic single-site Green's function
Xianglin Liu, Yang Wang, Markus Eisenbach, et al.
The Journal of Chemical Physics
|
February 5, 2025
Combined molecular and spin dynamics simulation of BCC iron with vacancy defects
Mark Mudrick, Markus Eisenbach, Dilina Perera, et al.
Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
November 17, 2020
Fast and stable deep-learning predictions of material properties for solid solution alloys
Massimiliano Lupo Pasini, Ying Wai Li, Junqi Yin, et al.
Scientific Data
|
August 22, 2024
First-principles data for solid solution niobium-tantalum-vanadium alloys with body-centered-cubic structures
Massimiliano Lupo Pasini, German Samolyuk, Markus Eisenbach, et al.
Sensors (Basel, Switzerland)
|
February 5, 2020
A Multi-Modal Person Perception Framework for Socially Interactive Mobile Service Robots
Steffen Müller, Tim Wengefeld, Thanh Quang Trinh, et al.
Scientific Reports
|
May 4, 2017
Erratum: Towards an accurate description of perovskite ferroelectrics: exchange and correlation effects
Simuck F Yuk, Krishna Chaitanya Pitike, Serge M Nakhmanson, et al.
Scientific Reports
|
March 4, 2017
Towards an accurate description of perovskite ferroelectrics: exchange and correlation effects
Simuck F Yuk, Krishna Chaitanya Pitike, Serge M Nakhmanson, et al.
Nature Communications
|
February 16, 2020
Machine-learning-assisted insight into spin ice Dy<sub>2</sub>Ti<sub>2</sub>O<sub>7</sub>
Anjana M Samarakoon, Kipton Barros, Ying Wai Li, et al.
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of 2
Search research articles
Search
Showing results (1-10 of 11) with videos related to
Sort By:
Page
of 2
Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
March 28, 2019
First-principles study of order-disorder transitions in multicomponent solid-solution alloys
Markus Eisenbach, Zongrui Pei, Xianglin Liu
IEEE Transactions on Neural Networks and Learning Systems
|
April 17, 2023
Few-Shot Object Detection: A Comprehensive Survey
Mona Kohler, Markus Eisenbach, Horst-Michael Gross
Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
July 9, 2016
A full-potential approach to the relativistic single-site Green's function
Xianglin Liu, Yang Wang, Markus Eisenbach, et al.
The Journal of Chemical Physics
|
February 5, 2025
Combined molecular and spin dynamics simulation of BCC iron with vacancy defects
Mark Mudrick, Markus Eisenbach, Dilina Perera, et al.
Journal of Physics. Condensed Matter : an Institute of Physics Journal
|
November 17, 2020
Fast and stable deep-learning predictions of material properties for solid solution alloys
Massimiliano Lupo Pasini, Ying Wai Li, Junqi Yin, et al.
Scientific Data
|
August 22, 2024
First-principles data for solid solution niobium-tantalum-vanadium alloys with body-centered-cubic structures
Massimiliano Lupo Pasini, German Samolyuk, Markus Eisenbach, et al.
Sensors (Basel, Switzerland)
|
February 5, 2020
A Multi-Modal Person Perception Framework for Socially Interactive Mobile Service Robots
Steffen Müller, Tim Wengefeld, Thanh Quang Trinh, et al.
Scientific Reports
|
May 4, 2017
Erratum: Towards an accurate description of perovskite ferroelectrics: exchange and correlation effects
Simuck F Yuk, Krishna Chaitanya Pitike, Serge M Nakhmanson, et al.
Scientific Reports
|
March 4, 2017
Towards an accurate description of perovskite ferroelectrics: exchange and correlation effects
Simuck F Yuk, Krishna Chaitanya Pitike, Serge M Nakhmanson, et al.
Nature Communications
|
February 16, 2020
Machine-learning-assisted insight into spin ice Dy<sub>2</sub>Ti<sub>2</sub>O<sub>7</sub>
Anjana M Samarakoon, Kipton Barros, Ying Wai Li, et al.
Page
of 2