Overview
Explore parallel quantum algorithms innovation using PyTorch, Keras, and QiML in this 58-minute presentation. Dive into a promising method for decreasing runtime and minimizing compute resources while incorporating quantum mechanical effects into machine learning workflows. Learn how running multiple smaller algorithms in parallel can enhance model performance. Examine previous results showing increased model accuracies to 100% through the parallel addition of quantum layers using PyTorch or Keras frameworks. Gain additional algorithm insights, tackle more challenging versions of datasets, and study overfitting across various quantum algorithm neural network architectures to better understand the impact of quantum mechanics on classification performance. Access the presentation PDF, code repository, and related references to deepen your understanding of this cutting-edge approach in quantum machine learning.
Syllabus
Parallel Quantum Algorithms Innovation: PyTorch, Keras, QiML
Taught by
ChemicalQDevice