Awesome
EMQAOA-DARBO
<p align="center"> <a href="https://github.com/sherrylixuecheng/EMQAOA-DARBO"> <img width=80% src="https://github.com/sherrylixuecheng/EMQAOA-DARBO/blob/main/schematic.png"> </a> </p>Overview
This repository includes the codes and results for the manuscript: Quantum approximate optimization via learning-based adaptive optimization published on Communications Physics link
Installation and usage
This repository requires to install two open-sourced packages:
-
ODBO packge: The installation direction is provided in the corresponding main page.
-
TensorCircuit or TC:
pip install tensorcircuit
Content list
Files
-
DARBO_optimization_ideal_example.ipynb: This is a simple example to illustrate the methods & to run a test MAX-CUT on a random graph with a circuit depth of 4.
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EMQAOA_DARBO_run.ipynb: This is the notebook to illustrate the EMQAOA-DARBO on the real hardware. This collects the hardwared data shown in the manuscript. Note: For non-Tencent-Quantum-Lab user, this set of codes cannot be run directly due to the unavailable access to the Tencent hardware. If you would like to have a try, please contact Tencent Quantum Lab to check the possible options for usage.
-
si_more_stats.xlsx: This is a supplemental excel to summarize the optimized losses and $r$ values for different optimizers and different cases.
Folders
-
codes: contains all the python codes that run the experiments collected in this work. (Please aware that all BO methods are formulated as a maximization problem (
max -loss
), and we save the-loss
at each iteration. For other optimizers, we saveloss
at each iteration.) -
graph: contains the graphs used in this work.
-
initialization: contains the presaved (& different) initialized parameters to make sure all different optimizers running from the same initial guesses.
-
results: each subfolder contains the collected results for the corresponding
-
plotting: contains a jupyter notebook to generate all the plots used in the paper. for_plotting folder contains the .txt summary for the results extracted from the raw results.
Please cite us as
@article{cheng2023darbo,
title={Quantum approximate optimization via learning-based adaptive optimization},
author={Cheng, Lixue and Chen, Yu-Qin and Zhang, Shi-Xin and Zhang, Shengyu},
doi = {10.1038/s42005-024-01577-x},
journal = {Communications Physics},
number = {1},
pages = {83},
volume = {7},
year = {2024},
}