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Financial Modeling Using Quantum Computing

You're reading from  Financial Modeling Using Quantum Computing

Product type Book
Published in May 2023
Publisher Packt
ISBN-13 9781804618424
Pages 292 pages
Edition 1st Edition
Languages
Authors (4):
Anshul Saxena Anshul Saxena
Profile icon Anshul Saxena
Javier Mancilla Javier Mancilla
Profile icon Javier Mancilla
Iraitz Montalban Iraitz Montalban
Profile icon Iraitz Montalban
Christophe Pere Christophe Pere
Profile icon Christophe Pere
View More author details

Table of Contents (16) Chapters

Preface Part 1: Basic Applications of Quantum Computing in Finance
Chapter 1: Quantum Computing Paradigm Chapter 2: Quantum Machine Learning Algorithms and Their Ecosystem Chapter 3: Quantum Finance Landscape Part 2: Advanced Applications of Quantum Computing in Finance
Chapter 4: Derivative Valuation Chapter 5: Portfolio Management Chapter 6: Credit Risk Analytics Chapter 7: Implementation in Quantum Clouds Part 3: Upcoming Quantum Scenario
Chapter 8: Simulators and HPC’s Role in the NISQ Era Chapter 9: NISQ Quantum Hardware Roadmap Chapter 10: Business Implementation Index Other Books You May Enjoy

Identifying the potentiality of advantage with QML

When the subject is QML, there are several potential applications in finance, as was outlined in the previous chapters. The following are a few examples:

  • Risk analysis and management
  • Trading
  • Fraud detection
  • Credit scoring
  • Churn prediction

It is important to note that while there are many potential applications of quantum machine learning in finance, the field is still in its early stages. It is unclear how these algorithms will perform in practice and what the companies can expect from the QML implementations. With this in mind, analyzing how to measure the success of a quantum project can be challenging.

Despite the previously described concern, one of the interesting points about exploring quantum machine learning challenges is that popular Python SDKs such as Qiskit (IBM), TensorFlow Quantum (Google), and PennyLane (Xanadu) enable the users and quantum developers to compare “apples with apples...

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