This browser is no longer supported.
Upgrade to Microsoft Edge to take advantage of the latest features, security updates, and technical support.
Test your knowledge of the concepts covered in this module. Choose the right response for each question.
Why is it important to estimate the resources that are required to run a quantum algorithm?
Quantum computers can run only a limited number of algorithms at a time, so you need to discard algorithms that require many resources.
Quantum computers are an expensive technology, so you need to estimate how much an algorithm will cost to make the best economic decision.
Resource estimation allows us to refine quantum solutions to run on future quantum computers by making choices about architectural design and QEC schemes.
The Azure Quantum Resource Estimator takes a physical qubit model, "qubitParams", as a target parameter. Which of the following statements is true?
"qubitParams"
You can pick from six predefined qubit models, and each of their values can be updated. You can modify existing models and create new ones.
You can pick from two predefined qubit models, the Surface code and the Floquet code.
You can pick from six predefined qubit models, but you can't customize their parameters.
The Resource Estimator evaluates the resource estimates of a quantum algorithm. What is the output of the resource estimation job?
The Resource Estimator outputs the estimated economic cost of running the algorithm and its runtime.
The Resource Estimator outputs the number of physical qubits and the runtime of a quantum algorithm for each of the quantum hardware providers that are available in Azure Quantum.
The Resource Estimator outputs physical and logical estimates, such as number of rotation gates, QEC estimates, T factory parameters, and total physical qubits and runtime.
You must answer all questions before checking your work.
Was this page helpful?