

Webinar
An Introduction to Quantum Computing for Optimization Practitioners Part II: Logic Gate Quantum Computers
In this webinar, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
July 30, 2025
10:00 AM - 11:30 AM PST

Webinar
An Introduction to Quantum Computing for Optimization Practitioners Part II: Logic Gate Quantum Computers
In this webinar, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
July 30, 2025
10:00 AM - 11:30 AM PST

Webinar
An Introduction to Quantum Computing for Optimization Practitioners Part II: Logic Gate Quantum Computers
In this webinar, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
July 30, 2025
10:00 AM - 11:30 AM PST
Event Recap
Quantum computers have received extensive publicity throughout the last 20 years, showing potential for major performance improvements over classical computers when it comes to challenging industrial problems. However, while progress is being made, questions remain about how to effectively translate the underlying theory into practical computers. The resulting debate between quantum enthusiasts and quantum skeptics can be difficult to navigate, especially for those who are new to the underlying concepts.
In Part I of this presentation, we explored the technical details of quantum computers, with a focus on quantum annealers. Now, in Part II, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
The connections between classical mathematical optimization concepts and quantum computing can get lost in the collection of different concepts and notations associated with the latter. However, a closer look reveals that numerous mathematical optimization concepts can help us learn how to solve challenging problems in a quantum computing environment.
We examine how the entanglement of qubits results in significant computational power, and how that power can be harnessed into algorithms that can potentially solve complex problems much faster compared to a classical computing environment.
There is no prerequisite for this presentation. However, if you are unfamiliar with the concepts behind Prisoners in Hats puzzles, you may find it helpful to explore or review them in advance. This video provides a good overview.
Event Recap
Quantum computers have received extensive publicity throughout the last 20 years, showing potential for major performance improvements over classical computers when it comes to challenging industrial problems. However, while progress is being made, questions remain about how to effectively translate the underlying theory into practical computers. The resulting debate between quantum enthusiasts and quantum skeptics can be difficult to navigate, especially for those who are new to the underlying concepts.
In Part I of this presentation, we explored the technical details of quantum computers, with a focus on quantum annealers. Now, in Part II, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
The connections between classical mathematical optimization concepts and quantum computing can get lost in the collection of different concepts and notations associated with the latter. However, a closer look reveals that numerous mathematical optimization concepts can help us learn how to solve challenging problems in a quantum computing environment.
We examine how the entanglement of qubits results in significant computational power, and how that power can be harnessed into algorithms that can potentially solve complex problems much faster compared to a classical computing environment.
There is no prerequisite for this presentation. However, if you are unfamiliar with the concepts behind Prisoners in Hats puzzles, you may find it helpful to explore or review them in advance. This video provides a good overview.
Event Recap
Quantum computers have received extensive publicity throughout the last 20 years, showing potential for major performance improvements over classical computers when it comes to challenging industrial problems. However, while progress is being made, questions remain about how to effectively translate the underlying theory into practical computers. The resulting debate between quantum enthusiasts and quantum skeptics can be difficult to navigate, especially for those who are new to the underlying concepts.
In Part I of this presentation, we explored the technical details of quantum computers, with a focus on quantum annealers. Now, in Part II, we discuss the logic gate architecture, revealing the underlying linear algebraic concepts that are familiar to many optimization practitioners.
The connections between classical mathematical optimization concepts and quantum computing can get lost in the collection of different concepts and notations associated with the latter. However, a closer look reveals that numerous mathematical optimization concepts can help us learn how to solve challenging problems in a quantum computing environment.
We examine how the entanglement of qubits results in significant computational power, and how that power can be harnessed into algorithms that can potentially solve complex problems much faster compared to a classical computing environment.
There is no prerequisite for this presentation. However, if you are unfamiliar with the concepts behind Prisoners in Hats puzzles, you may find it helpful to explore or review them in advance. This video provides a good overview.
Speakers
Meet Your Expert Speakers
Learn from the best in the industry.
Ed Klotz
Senior Mathematical Optimization Specialist


Dr. Ed Klotz has over 30 years of experience in the mathematical optimization software industry. He is a technical expert who, over the course of his career, has worked with a wide array of customers to help them solve some of world’s most challenging mathematical optimization problems. In his role as a Senior Mathematical Optimization Specialist on the Gurobi R&D team, Dr. Klotz works closely with our customers to support them in implementing and utilizing mathematical optimization in their organizations. He also interacts heavily with the R&D team based on his experiences with the customers.
Prior to joining Gurobi, Dr. Klotz was a member of the CPLEX development team of IBM. He was involved in product development, customer training, product documentation, and numerous other tasks, with a primary focus on delivering CPLEX customer support and leveraging his experiences with customers to help inform the R&D team about customer needs and product improvements. Dr. Klotz has extensive knowledge in linear programming, integer programming, and numerical linear algebra for finite precision computing. Using this knowledge, he was able to investigate customer support issues at the source code level and identify potential improvements in CPLEX, both in terms of performance and accuracy of computation.
Before joining IBM, Dr. Klotz was a principal technical support engineer at ILOG, Inc., and a mathematical programming specialist at CPLEX Optimization, Inc.
Dr. Klotz has presented at numerous conferences, workshops, and web seminars and published numerous papers on mathematical optimization. His interests are in all aspects of mathematical programming, with a primary interest in research that can impact mathematical programming software. He obtained a BA in Math and Economics from Oberlin College and a PhD in Operations Research from Stanford University.
Maliheh Aramon
Senior Optimization Engineer

Maliheh received her PhD in Operations Research from the University of Toronto in 2014. During her PhD, she studied the interdependency between long-term and short-term optimization decisions in the context of maintenance and scheduling problems.
Prior to joining Gurobi, she worked for 1QB Information Technologies (1QBit) as an Optimization Research Lead. Her work focused on developing algorithms and tools that enable organizations to leverage both quantum and classical hardware efficiently to solve real-world problems in the fields of life sciences, energy, and finance.
Maliheh is a keen reader and enjoys reading novels. She also enjoys hiking in the beautiful Vancouver mountains.
Speakers
Meet Your Expert Speakers
Learn from the best in the industry.
Ed Klotz
Senior Mathematical Optimization Specialist


Dr. Ed Klotz has over 30 years of experience in the mathematical optimization software industry. He is a technical expert who, over the course of his career, has worked with a wide array of customers to help them solve some of world’s most challenging mathematical optimization problems. In his role as a Senior Mathematical Optimization Specialist on the Gurobi R&D team, Dr. Klotz works closely with our customers to support them in implementing and utilizing mathematical optimization in their organizations. He also interacts heavily with the R&D team based on his experiences with the customers.
Prior to joining Gurobi, Dr. Klotz was a member of the CPLEX development team of IBM. He was involved in product development, customer training, product documentation, and numerous other tasks, with a primary focus on delivering CPLEX customer support and leveraging his experiences with customers to help inform the R&D team about customer needs and product improvements. Dr. Klotz has extensive knowledge in linear programming, integer programming, and numerical linear algebra for finite precision computing. Using this knowledge, he was able to investigate customer support issues at the source code level and identify potential improvements in CPLEX, both in terms of performance and accuracy of computation.
Before joining IBM, Dr. Klotz was a principal technical support engineer at ILOG, Inc., and a mathematical programming specialist at CPLEX Optimization, Inc.
Dr. Klotz has presented at numerous conferences, workshops, and web seminars and published numerous papers on mathematical optimization. His interests are in all aspects of mathematical programming, with a primary interest in research that can impact mathematical programming software. He obtained a BA in Math and Economics from Oberlin College and a PhD in Operations Research from Stanford University.
Maliheh Aramon
Senior Optimization Engineer

Maliheh received her PhD in Operations Research from the University of Toronto in 2014. During her PhD, she studied the interdependency between long-term and short-term optimization decisions in the context of maintenance and scheduling problems.
Prior to joining Gurobi, she worked for 1QB Information Technologies (1QBit) as an Optimization Research Lead. Her work focused on developing algorithms and tools that enable organizations to leverage both quantum and classical hardware efficiently to solve real-world problems in the fields of life sciences, energy, and finance.
Maliheh is a keen reader and enjoys reading novels. She also enjoys hiking in the beautiful Vancouver mountains.
Speakers
Meet Your Expert Speakers
Learn from the best in the industry.

Senior Mathematical Optimization Specialist
Ed Klotz

Dr. Ed Klotz has over 30 years of experience in the mathematical optimization software industry. He is a technical expert who, over the course of his career, has worked with a wide array of customers to help them solve some of world’s most challenging mathematical optimization problems. In his role as a Senior Mathematical Optimization Specialist on the Gurobi R&D team, Dr. Klotz works closely with our customers to support them in implementing and utilizing mathematical optimization in their organizations. He also interacts heavily with the R&D team based on his experiences with the customers.
Prior to joining Gurobi, Dr. Klotz was a member of the CPLEX development team of IBM. He was involved in product development, customer training, product documentation, and numerous other tasks, with a primary focus on delivering CPLEX customer support and leveraging his experiences with customers to help inform the R&D team about customer needs and product improvements. Dr. Klotz has extensive knowledge in linear programming, integer programming, and numerical linear algebra for finite precision computing. Using this knowledge, he was able to investigate customer support issues at the source code level and identify potential improvements in CPLEX, both in terms of performance and accuracy of computation.
Before joining IBM, Dr. Klotz was a principal technical support engineer at ILOG, Inc., and a mathematical programming specialist at CPLEX Optimization, Inc.
Dr. Klotz has presented at numerous conferences, workshops, and web seminars and published numerous papers on mathematical optimization. His interests are in all aspects of mathematical programming, with a primary interest in research that can impact mathematical programming software. He obtained a BA in Math and Economics from Oberlin College and a PhD in Operations Research from Stanford University.

Senior Optimization Engineer
Maliheh Aramon
Maliheh received her PhD in Operations Research from the University of Toronto in 2014. During her PhD, she studied the interdependency between long-term and short-term optimization decisions in the context of maintenance and scheduling problems.
Prior to joining Gurobi, she worked for 1QB Information Technologies (1QBit) as an Optimization Research Lead. Her work focused on developing algorithms and tools that enable organizations to leverage both quantum and classical hardware efficiently to solve real-world problems in the fields of life sciences, energy, and finance.
Maliheh is a keen reader and enjoys reading novels. She also enjoys hiking in the beautiful Vancouver mountains.
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Register Now
Explore What's Possible with Optimization
Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua. Ut enim ad minim veniam, quis nostrud exercitation ullamco laboris nisi ut aliquip ex ea commodo consequat. Duis aute irure dolor in reprehenderit in voluptate velit esse cillum dolore eu fugiat nulla pariatur. Excepteur sint occaecat cupidatat non proident, sunt in culpa qui officia deserunt mollit anim id est laborum.
Register Now
Explore What's Possible with Optimization
Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua. Ut enim ad minim veniam, quis nostrud exercitation ullamco laboris nisi ut aliquip ex ea commodo consequat. Duis aute irure dolor in reprehenderit in voluptate velit esse cillum dolore eu fugiat nulla pariatur. Excepteur sint occaecat cupidatat non proident, sunt in culpa qui officia deserunt mollit anim id est laborum.