Ancilla-driven blind quantum computation for clients with different
quantum capabilities
- URL: http://arxiv.org/abs/2210.09878v1
- Date: Tue, 18 Oct 2022 14:12:34 GMT
- Title: Ancilla-driven blind quantum computation for clients with different
quantum capabilities
- Authors: Qunfeng Dai, Junyu Quan, Xiaoping Lou, and Qin Li
- Abstract summary: Blind quantum computation (BQC) allows a client with limited quantum power to delegate his quantum computational task to a powerful server.
This paper proposes two types of ADBQC protocols for clients with different quantum capabilities, such as performing single-qubit measurements or single-qubit gates.
- Score: 2.2591663389676295
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Blind quantum computation (BQC) allows a client with limited quantum power to
delegate his quantum computational task to a powerful server and still keep his
input, output, and algorithm private. There are mainly two kinds of models
about BQC, namely circuit-based and measurement-based models. In addition, a
hybrid model called ancilla-driven universal blind quantum computing (ADBQC)
was proposed by combining the properties of both circuit-based and
measurement-based models, where all unitary operations on the register qubits
can be realized with the aid of single ancillae coupled to the register qubits.
However, in the ADBQC model, the quantum capability of the client is strictly
limited to preparing single qubits. If a client can only perform single-qubit
measurements or a few simple quantum gates, he may also want to delegate his
computation to a remote server via ADBQC. This paper solves the problem and
extends the existing model by proposing two types of ADBQC protocols for
clients with different quantum capabilities, such as performing single-qubit
measurements or single-qubit gates. Furthermore, in the proposed two ADBQC
protocols, clients can detect whether servers are honest or not with a high
probability by using corresponding verifiable techniques.
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