Intuit: Explain Quantum Computing Concepts via AR-based Analogy
By: Manusha Karunathilaka , Shaolun Ruan , Lin-Ping Yuan and more
Potential Business Impact:
Makes learning tricky computer ideas easy.
Quantum computing has shown great potential to revolutionize traditional computing and can provide an exponential speedup for a wide range of possible applications, attracting various stakeholders. However, understanding fundamental quantum computing concepts remains a significant challenge for novices because of their abstract and counterintuitive nature. Thus, we propose an analogy-based characterization framework to construct the mental mapping between quantum computing concepts and daily objects, informed by in-depth expert interviews and a literature review, covering key quantum concepts and characteristics like number of qubits, output state duality, quantum concept type, and probability quantification. Then, we developed an AR-based prototype system, Intuit, using situated analytics to explain quantum concepts through daily objects and phenomena (e.g., rotating coins, paper cutters). We thoroughly evaluated our approach through in-depth user and expert interviews. The Results demonstrate the effectiveness and usability of Intuit in helping learners understand abstract concepts in an intuitive and engaging manner.
Similar Papers
Prospects for quantum advantage in machine learning from the representability of functions
Quantum Physics
Finds when computers can do tasks faster.
A Survey on Integrating Quantum Computers into High Performance Computing Systems
Emerging Technologies
Connects super-fast quantum computers to regular ones.
Quantum Machine Learning Playground
Quantum Physics
Makes learning quantum computers easier.