We're sorry but this page doesn't work properly without JavaScript enabled. Please enable it to continue.
Feedback

PennyLane - Automatic differentiation and machine learning of quantum computations

Formal Metadata

Title
PennyLane - Automatic differentiation and machine learning of quantum computations
Title of Series
Number of Parts
561
Author
License
CC Attribution 2.0 Belgium:
You are free to use, adapt and copy, distribute and transmit the work or content in adapted or unchanged form for any legal purpose as long as the work is attributed to the author in the manner specified by the author or licensor.
Identifiers
Publisher
Release Date2019
LanguageEnglish

Content Metadata

Subject Area
Genre
Abstract
In this presentation, we introduce PennyLane, a Python-based software framework for optimization and machine learning of quantum and hybrid quantum-classical computations. PennyLane’s core feature is the ability to compute gradients of quantum circuits in a scalable way that is compatible with classical techniques such as backpropagation. PennyLane extends the automatic differentiation algorithms common in optimization and machine learning to be compatible with quantum and hybrid computations. The library provides a unified architecture for near-term quantum computing devices, supporting both discrete- and continuous-variable paradigms of quantum computation. A plugin system makes the framework compatible with any gate-based quantum simulator or hardware, including leading quantum software platforms such as Xanadu's Strawberry Fields, IBM's Qiskit, and Rigetti's PyQuil. PennyLane can be used for the optimization of variational quantum eigensolvers, quantum approximate optimization, quantum machine learning models, and many other applications.