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You're reading from  Financial Modeling Using Quantum Computing

Product typeBook
Published inMay 2023
PublisherPackt
ISBN-139781804618424
Edition1st Edition
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Authors (4):
Anshul Saxena
Anshul Saxena
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Anshul Saxena

Professor Anshul Saxena is a quantum finance instructor at Christ University. His current research focus is abouton discovering the role of quantum computing in solving complex financial problems. He has filed three Indian patents and holds an international patent. He has authored a popular book on HR Analytics and has developed an automated Ppython library "Cognito" for data preprocessing. He has over a decade of work experience spreading across IT and financial services companies like TCS and Northern Trust in various business analytics and decision sciences roles. He has worked as a consultant and trainer with IBM ICE group and has trained more than 500 faculties pan India. Mr. Saxena has also worked as a Corporate Trainer and has conducted training on data science for more than 600 IT employees. He is a SAS certified predictive modeler and has recently completed a certificate in "Quantum computing for managers" for BIMTECH. He holds an MBA degree in Finance from IBS Bangalore and is pursuing his Ph.D. in Financial Risk Analytics
Read more about Anshul Saxena

Javier Mancilla
Javier Mancilla
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Javier Mancilla

Javier Mancilla is a Senior Data Scientist, and a Quantum Business and Programming Consultant. He is a Ph.D. candidate and Master in Data Management and Innovation. He has more than 15 years of experience in digital transformation projects, withand in the last 8 years mostly dedicated to artificial intelligence, machine learning, and quantum computing, with more than 35 projects executed around these technologies. He has more than 8 certifications in quantum computing matters from institutions like MIT xPro, KAIST, IBM, Saint Petersburg University, and BIMTECH. He also was selected as one of the Top 20 Quantum Computing Linkedin Voices by Barcelonaqbit (quantum organization in Spain). Currently, he has the role of quantum machine learning advisor for different companies and organizations in Europe and Latin America and is also an I + D + i (Investigation, Development, and Innovation) evaluator for different governments in LATAM such as Chile and Paraguay
Read more about Javier Mancilla

Iraitz Montalban
Iraitz Montalban
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Iraitz Montalban

Iraitz Montalban is currently Quantum Software Engineer for Kipu Quantum GmbH and PhD candidate at the University of the Basque Country in Quantum Machine Learning. He holds several master's degrees in Mathematical modelling, Data Protection and Quantum Technologies as well. Has hold positions of responsability in large organizations as well as coordinated Innovation practices in all of then given his trajectory as a reseacrher in AI and ML disciplines and his more than 15 years of experience in this field. He activelly collaborates with different universities and education institutions designing the curriculum and teaching in programs around BigData and Advanced Analytics
Read more about Iraitz Montalban

Christophe Pere
Christophe Pere
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Christophe Pere

Christophe Pere is an Applied Quantum Machine Learning Researcher and Lead Scientist originally from Paris, France. He has a Ph.D. in Astrophysics from Université Côte d'Azur. After his Ph.D., he left the academic world for a career in Artificial Intelligence as an Applied Industry Researcher. He learned quantum computing during his Ph.D. in his free time, starting as a passion and becoming his new career. He actively democratizes Quantum Computing to help people and companies enter this new field.
Read more about Christophe Pere

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What this book covers

Chapter 1, Quantum Computing Paradigm, helps readers understand the challenges and limitations of digital technology and how quantum computing can help them overcome these.

Chapter 2, Quantum Machine Learning and Optimization Algorithms, considers how quantum machine learning utilizes qubits and quantum operations for specialized quantum systems to improve computational speed and data storage. This is done by algorithms in a program. This chapters explain how the quantum machine learning algorithm works in theory and in real life.

Chapter 3, Quantum Finance Landscape, helps readers understand the quantum finance landscape and the types of financial problems to which quantum computing principles can be applied.

Chapter 4, Derivatives Valuation, highlights that the valuation of derivatives is often highly complex and can only be carried out numerically—which requires a correspondingly high computing effort. This chapter examines the role of QML algorithms in derivatives valuation.

Chapter 5, Portfolio Optimization, considers portfolio management as the process of managing a group of financial securities and making ongoing decisions to meet investment objectives. Portfolio management also includes a number of steps, such as managing costs and risks, allocating assets, researching the market, and choosing securities. This chapter examines the role of QML algorithms in portfolio allocation.

Chapter 6, Credit Risk Analytics, outlines how credit risk is associated with the possibility of a client failing to meet contractual obligations, such as mortgages, credit card debts, and other types of loans. Minimizing the risk of default is a major concern for financial institutions. Machine learning models have been helping these companies to improve the accuracy of their credit risk analysis, providing a scientific method to identify potential debtors in advance. Learn how a QML algorithm can help solve this problem using real-world data.

Chapter 7, Implementation in Quantum Clouds, dicusses how the implementation of quantum machine learning and optimization architectures in productive environments, or as a backtest for current systems, is a crucial part to retrieve knowledge and start using this technology.

Chapter 8, Simulators’ and HPCs’ roles in the NISQ Era, highlights how classical means and in particular, high-performance hardware, have a key part to play in the delivery of short-term quantum advantage. In this chapter, we will explore some of the most relevant approaches in order to map the quantum-classical landscape comprehensively.

Chapter 9, NISQ Quantum Hardware Roadmap, demonstrates how Noisy Intermediate-Scale Quantum (NISQ) Hardware can evolve in various ways depending on the provider. Different approaches, ranging from fault-tolerant logical qubits to circuit knitting, could be among the early steps towards achieving fault-tolerant devices. In this chapter, we outline the key aspects of these approaches and their long-term potential.

Chapter 10, Business Implementation, underlines that knowing quantum technology does not guarantee that companies will successfully implement quantum computing with the lowest risk possible. In this chapter, we will provide helpful information for how fintech firms and banks can implement these kinds of projects without getting stuck half-way.

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Financial Modeling Using Quantum Computing
Published in: May 2023Publisher: PacktISBN-13: 9781804618424

Authors (4)

author image
Anshul Saxena

Professor Anshul Saxena is a quantum finance instructor at Christ University. His current research focus is abouton discovering the role of quantum computing in solving complex financial problems. He has filed three Indian patents and holds an international patent. He has authored a popular book on HR Analytics and has developed an automated Ppython library "Cognito" for data preprocessing. He has over a decade of work experience spreading across IT and financial services companies like TCS and Northern Trust in various business analytics and decision sciences roles. He has worked as a consultant and trainer with IBM ICE group and has trained more than 500 faculties pan India. Mr. Saxena has also worked as a Corporate Trainer and has conducted training on data science for more than 600 IT employees. He is a SAS certified predictive modeler and has recently completed a certificate in "Quantum computing for managers" for BIMTECH. He holds an MBA degree in Finance from IBS Bangalore and is pursuing his Ph.D. in Financial Risk Analytics
Read more about Anshul Saxena

author image
Javier Mancilla

Javier Mancilla is a Senior Data Scientist, and a Quantum Business and Programming Consultant. He is a Ph.D. candidate and Master in Data Management and Innovation. He has more than 15 years of experience in digital transformation projects, withand in the last 8 years mostly dedicated to artificial intelligence, machine learning, and quantum computing, with more than 35 projects executed around these technologies. He has more than 8 certifications in quantum computing matters from institutions like MIT xPro, KAIST, IBM, Saint Petersburg University, and BIMTECH. He also was selected as one of the Top 20 Quantum Computing Linkedin Voices by Barcelonaqbit (quantum organization in Spain). Currently, he has the role of quantum machine learning advisor for different companies and organizations in Europe and Latin America and is also an I + D + i (Investigation, Development, and Innovation) evaluator for different governments in LATAM such as Chile and Paraguay
Read more about Javier Mancilla

author image
Iraitz Montalban

Iraitz Montalban is currently Quantum Software Engineer for Kipu Quantum GmbH and PhD candidate at the University of the Basque Country in Quantum Machine Learning. He holds several master's degrees in Mathematical modelling, Data Protection and Quantum Technologies as well. Has hold positions of responsability in large organizations as well as coordinated Innovation practices in all of then given his trajectory as a reseacrher in AI and ML disciplines and his more than 15 years of experience in this field. He activelly collaborates with different universities and education institutions designing the curriculum and teaching in programs around BigData and Advanced Analytics
Read more about Iraitz Montalban

author image
Christophe Pere

Christophe Pere is an Applied Quantum Machine Learning Researcher and Lead Scientist originally from Paris, France. He has a Ph.D. in Astrophysics from Université Côte d'Azur. After his Ph.D., he left the academic world for a career in Artificial Intelligence as an Applied Industry Researcher. He learned quantum computing during his Ph.D. in his free time, starting as a passion and becoming his new career. He actively democratizes Quantum Computing to help people and companies enter this new field.
Read more about Christophe Pere