Inverse-Transpilation: Reverse-Engineering Quantum Compiler Optimization Passes from Circuit Snapshots
By: Satwik Kundu, Swaroop Ghosh
Potential Business Impact:
Uncovers how computers make quantum programs better.
Circuit compilation, a crucial process for adapting quantum algorithms to hardware constraints, often operates as a ``black box,'' with limited visibility into the optimization techniques used by proprietary systems or advanced open-source frameworks. Due to fundamental differences in qubit technologies, efficient compiler design is an expensive process, further exposing these systems to various security threats. In this work, we take a first step toward evaluating one such challenge affecting compiler confidentiality, specifically, reverse-engineering compilation methodologies. We propose a simple ML-based framework to infer underlying optimization techniques by leveraging structural differences observed between original and compiled circuits. The motivation is twofold: (1) enhancing transparency in circuit optimization for improved cross-platform debugging and performance tuning, and (2) identifying potential intellectual property (IP)-protected optimizations employed by commercial systems. Our extensive evaluation across thousands of quantum circuits shows that a neural network performs the best in detecting optimization passes, with individual pass F1-scores reaching as high as 0.96. Thus, our initial study demonstrates the viability of this threat to compiler confidentiality and underscores the need for active research in this area.
Similar Papers
DeQompile: quantum circuit decompilation using genetic programming for explainable quantum architecture search
Quantum Physics
Unlocks secrets of quantum computers.
Breaking Down Quantum Compilation: Profiling and Identifying Costly Passes
Quantum Physics
Speeds up quantum computers by finding slow parts.
Neural Guided Sampling for Quantum Circuit Optimization
Quantum Physics
Makes quantum computers work better and faster.