QIRO: A Static Single Assignment-based Quantum Program Representation for Optimization
METADATA ONLY
Loading...
Author / Producer
Date
2022-09
Publication Type
Journal Article
ETH Bibliography
yes
Citations
Altmetric
METADATA ONLY
Data
Rights / License
Abstract
We propose an IR for quantum computing that directly exposes quantum and classical data dependencies for the purpose of optimization. The Quantum Intermediate Representation for Optimization (QIRO) consists of two dialects, one input dialect and one that is specifically tailored to enable quantum-classical co-optimization. While the first employs a perhaps more intuitive memory-semantics (quantum operations act on qubits via side-effects), the latter uses value-semantics (operations consume and produce states) to integrate quantum dataflow in the IR's Static Single Assignment (SSA) graph. Crucially, this allows for a host of optimizations that leverage dataflow analysis. We discuss how to map existing quantum programming languages to the input dialect and how to lower the resulting IR to the optimization dialect. We present a prototype implementation based on MLIR that includes several quantum-specific optimization passes. Our benchmarks show that significant improvements in resource requirements are possible even through static optimization. In contrast to circuit optimization at run time, this is achieved while incurring only a small constant overhead in compilation time, making this a compelling approach for quantum program optimization at application scale.
Permanent link
Publication status
published
External links
Editor
Book title
Journal / series
Volume
3 (3)
Pages / Article No.
14
Publisher
Association for Computing Machinery
Event
Edition / version
Methods
Software
Geographic location
Date collected
Date created
Subject
Quantum compilation; dataflow optimization; intermediate representation; MLIR