Lea Richtmann, a PhD student in the “Quantum Control” group works on a quantum optical testbed for quantum machine learning
ℹ️ https://www.aei.mpg.de/883820/lea-richtmann
Edit: Fixed broken link
#IDWGS #WomenInSTEM #WomenInScience #Physics #PhD #QuantumMachineLearning #QuantumOptics #Research #Hannover
Los Alamos National Laboratory Team Cracks The Code On Bane Of #QuantumMachineLearning Algorithms
#BarrenPlateaus have long plagued progress in the field of variational quantum computing, but their understanding has been limited — until now
Are you a #quantum or #quantumcomputing enthusiast?
Then this book "Dancing with Qubits" by #Robertsutor is your destination.
This book is a comprehensive quantum computing textbook that starts with an overview of why quantum computing is so different from classical computing and describes several industry use cases where it can have a major impact.
Grab your copy now.
https://packt.link/3klt8
#quantummachinelearning @qubit #qubit #qiskit #technology #tech #physics
#maths
Lea Richtmann, a PhD student in the “Quantum Control” group works on a quantum optical testbed for quantum machine learning
ℹ️ https://www.aei.mpg.de/883820/lea-richtmann
#IDWGS #WomenInSTEM #WomenInScience #Physics #PhD #QuantumMachineLearning #QuantumOptics #Research #Hannover
Are you in or around #Manila #Philippines? Dylan Josh Lopez will be talking about #QuantumMachineLearning (#QML) using Keras and PennyLane.
[thread] Machine learning, quantum approaches
Quantum-Inspired Machine Learning: Survey
https://arxiv.org/abs/2308.11269
* QiML: quantum-inspired ML
* review literature superficially explores QiML, focusing on broader Quantum Machine Learning (QML)
Comments
* thorough
* transformer (self-attention) architecture not mentioned by name/cited
* self-attention briefly discussed pp. 25-26
Transformer Architecture [note Addendum 1]
https://mastodon.social/@persagen/110804164057454093
Quantum-inspired Machine Learning (QiML) is a burgeoning field, receiving global attention from researchers for its potential to leverage principles of quantum mechanics within classical computational frameworks. However, current review literature often presents a superficial exploration of QiML, focusing instead on the broader Quantum Machine Learning (QML) field. In response to this gap, this survey provides an integrated and comprehensive examination of QiML, exploring QiML's diverse research domains including tensor network simulations, dequantized algorithms, and others, showcasing recent advancements, practical applications, and illuminating potential future research avenues. Further, a concrete definition of QiML is established by analyzing various prior interpretations of the term and their inherent ambiguities. As QiML continues to evolve, we anticipate a wealth of future developments drawing from quantum mechanics, quantum computing, and classical machine learning, enriching the field further. This survey serves as a guide for researchers and practitioners alike, providing a holistic understanding of QiML's current landscape and future directions.
Planning to attend #QuantumVillage at #defcon31 this week but don't have time to catch up on all the news since last summer? I have compiled a list of resources to get you up to speed with interesting use cases, white papers, and other resources.
https://danielfernandez.medium.com/defcon-31-quantum-village-pre-reading-b29d6b5709b7
#quantumcomputing #defcon #quantumtechnology #quantum #quantummachinelearning
In new work, we expose limitations of uniform #generalization bounds when applied to #quantummachinelearning models.
Quantum machine learning models have shown successful generalization performance even when trained with few data. In this work, through systematic randomization experiments, we show that traditional approaches to understanding generalization fail to explain the behavior of such quantum models. Our experiments reveal that state-of-the-art quantum neural networks accurately fit random states and random labeling of training data. This ability to memorize random data defies current notions of small generalization error, problematizing approaches that build on complexity measures such as the VC dimension, the Rademacher complexity, and all their uniform relatives. We complement our empirical results with a theoretical construction showing that quantum neural networks can fit arbitrary labels to quantum states, hinting at their memorization ability. Our results do not preclude the possibility of good generalization with few training data but rather rule out any possible guarantees based only on the properties of the model family. These findings expose a fundamental challenge in the conventional understanding of generalization in quantum machine learning and highlight the need for a paradigm shift in the design of quantum models for machine learning tasks.