RT Conference Proceedings T1 Optimising Quantum Calculations Reliability via Machine Learning: The IBM Case Study. A1 Dahi, Zakaria Abdelmoiz A1 Chicano-García, José-Francisco A1 Luque-Polo, Gabriel Jesús A1 Delgado Alba, Iván K1 Computación cuántica K1 Aprendizaje automático (Inteligencia artificial) AB The current quantum technology depends on hardware/time-dependent features that render quantum calculations highly error-prone. Having faulty calculations generally requires redoing them, which induces an economic/computational overhead by using quantum machines/simulators. This can be problematic due to unaffordable fees, machine unavailability, or loss of quantum advantage. An alternative can be performing the calculations when the machines are in their most suitable state. This work presents a pipeline based on Machine Learning (ML), allowing users to choose the appropriate moment to perform a given computation based on the estimation of the Jensen-Shannon divergence between the noisy and ideal distributions of quantum sampling. This includes (I) an extract-transform-load data module, (II) an ML unit for quantum features forecasting and error prediction, and (III) a web-based visualisation unit. The pipeline was built/tested using 3.5 months of calibration data from three real 127-qubit IBM quantum machines. The results confirmed the applicability of the proposal in realistic scenarios. YR 2025 FD 2025 LK https://hdl.handle.net/10630/41362 UL https://hdl.handle.net/10630/41362 LA eng NO Trabajo enviado a IEEE International Conference on Quantum Artificial Intelligence NO Universidad de Málaga NO Ministerio de Ciencia, Innovacion y Universidades DS RIUMA. Repositorio Institucional de la Universidad de Málaga RD 20 ene 2026