• Stars
    star
    564
  • Rank 79,014 (Top 2 %)
  • Language
    Jupyter Notebook
  • License
    Other
  • Created over 4 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

English | 简体中文

Paddle Quantum (量桨)

Paddle Quantum (量桨) is the world's first cloud-integrated quantum machine learning platform based on Baidu PaddlePaddle. It supports the building and training of quantum neural networks, making PaddlePaddle the first deep learning framework in China. Paddle Quantum is feature-rich and easy to use. It provides comprehensive API documentation and tutorials help users get started right away.

Paddle Quantum aims at establishing a bridge between artificial intelligence (AI) and quantum computing (QC). It has been utilized for developing several quantum machine learning applications. With the PaddlePaddle deep learning platform empowering QC, Paddle Quantum provides strong support for scientific research community and developers in the field to easily develop QML applications. Moreover, it provides a learning platform for quantum computing enthusiasts.

Features

  • Easy-to-use
    • Many online learning resources (Nearly 50 tutorials)
    • High efficiency in building QNN with various QNN templates
    • Automatic differentiation
  • Versatile
    • Multiple optimization tools and GPU mode
    • Simulation with 25+ qubits
    • Flexible noise models
  • Featured Toolkits
    • Toolboxes for Chemistry & Optimization
    • LOCCNet for distributed quantum information processing
    • Self-developed QML algorithms

Install

Install PaddlePaddle

This dependency will be automatically satisfied when users install Paddle Quantum. Please refer to PaddlePaddle's official installation and configuration page. This project requires PaddlePaddle 2.2.0 to 2.3.0.

Install Paddle Quantum

We recommend the following way of installing Paddle Quantum with pip,

pip install paddle-quantum

or download all the files and finish the installation locally,

git clone https://github.com/PaddlePaddle/quantum
cd quantum
pip install -e .

Environment setup for Quantum Chemistry module

Currently, our qchem module uses PySCF as its backend to compute molecular integrals, so before executing quantum chemistry, we have to install this Python package.

It is recommended that PySCF is installed in a Python environment whose Python version >=3.6.

We highly recommend you to install PySCF via conda. MacOS/Linux user can use the command:

conda install -c pyscf pyscf

NOTE: For Windows user, if your operating system is Windows10, you can install PySCF in Ubuntu subsystem provided by Windows 10's App Store. PySCF can't run directly in Windows, so we are working hard to develop more quantum chemistry backends. Our support for Windows will be improved in the coming release of Paddle Quantum.

Note: Please refer to PySCF for more download options.

Run example

Now, you can try to run a program to verify whether Paddle Quantum has been installed successfully. Here we take quantum approximate optimization algorithm (QAOA) as an example.

cd paddle_quantum/QAOA/example
python main.py

For the introduction of QAOA, please refer to our QAOA tutorial.

Breaking Change

In version 2.2.0 of Paddle Quantum, we have made an incompatible upgrade to the code architecture, and the new version's structure and usage can be found in our tutorials, API documentation, and the source code. Also, we support connecting to a real quantum computer via QuLeaf, using paddle_quantum.set_backend('quleaf') to select QuLeaf as the backend.

Introduction and developments

Quick start

Paddle Quantum Quick Start Manual is probably the best place to get started with Paddle Quantum. Currently, we support online reading and running the Jupyter Notebook locally. The manual includes the following contents:

  • Detailed installation tutorials for Paddle Quantum
  • Introduction to quantum computing and quantum neural networks (QNNs)
  • Introduction to Variational Quantum Algorithms (VQAs)
  • Introduction to Paddle Quantum
  • PaddlePaddle optimizer tutorial
  • Introduction to the quantum chemistry module in Paddle Quantum
  • How to train QNN with GPU

Tutorials

We provide tutorials covering quantum simulation, machine learning, combinatorial optimization, local operations and classical communication (LOCC), and other popular QML research topics. Each tutorial currently supports reading on our website and running Jupyter Notebooks locally. For interested developers, we recommend them to download Jupyter Notebooks and play around with it. Here is the tutorial list,

With the latest LOCCNet module, Paddle Quantum can efficiently simulate distributed quantum information processing tasks. Interested readers can start with this tutorial on LOCCNet. In addition, Paddle Quantum supports QNN training on GPU. For users who want to get into more details, please check out the tutorial Use Paddle Quantum on GPU. Moreover, Paddle Quantum could design robust quantum algorithms under noise. For more information, please see Noise tutorial.

In a recent update, the measurement-based quantum computation (MBQC) module has been added to Paddle Quantum. Unlike the conventional quantum circuit model, MBQC has its unique way of computing. Interested readers are welcomed to read our tutorials on how to use the MBQC module and its use cases.

API documentation

For those who are looking for explanation on the python class and functions provided in Paddle Quantum, we refer to our API documentation page.

We, in particular, denote that the current docstring specified in source code is written in simplified Chinese, this will be updated in later versions.

Feedbacks

Users are encouraged to contact us through GitHub Issues or email [email protected] with general questions, unfixed bugs, and potential improvements. We hope to make Paddle Quantum better together with the community!

Research based on Paddle Quantum

We also highly encourage developers to use Paddle Quantum as a research tool to develop novel QML algorithms. If your work uses Paddle Quantum, feel free to send us a notice via [email protected]. We are always excited to hear that! Cite us with the following BibTeX:

@misc{Paddlequantum, title = {{Paddle Quantum}}, year = {2020}, url = {https://github.com/PaddlePaddle/Quantum}, }

So far, we have done several projects with the help of Paddle Quantum as a powerful QML development platform.

[1] Wang, Youle, Guangxi Li, and Xin Wang. "Variational quantum Gibbs state preparation with a truncated Taylor series." Physical Review Applied 16.5 (2021): 054035. [pdf]

[2] Wang, Xin, Zhixin Song, and Youle Wang. "Variational quantum singular value decomposition." Quantum 5 (2021): 483. [pdf]

[3] Li, Guangxi, Zhixin Song, and Xin Wang. "VSQL: Variational Shadow Quantum Learning for Classification." Proceedings of the AAAI Conference on Artificial Intelligence. Vol. 35. No. 9. 2021. [pdf]

[4] Chen, Ranyiliu, et al. "Variational quantum algorithms for trace distance and fidelity estimation." Quantum Science and Technology (2021). [pdf]

[5] Wang, Kun, et al. "Detecting and quantifying entanglement on near-term quantum devices." arXiv preprint arXiv:2012.14311 (2020). [pdf]

[6] Zhao, Xuanqiang, et al. "Practical distributed quantum information processing with LOCCNet." npj Quantum Information 7.1 (2021): 1-7. [pdf]

[7] Cao, Chenfeng, and Xin Wang. "Noise-Assisted Quantum Autoencoder." Physical Review Applied 15.5 (2021): 054012. [pdf]

Frequently Asked Questions

  1. Question: What is quantum machine learning? What are the applications?

    Answer: Quantum machine learning (QML) is an interdisciplinary subject that combines quantum computing (QC) and machine learning (ML). On the one hand, QML utilizes existing artificial intelligence technology to break through the bottleneck of quantum computing research. On the other hand, QML uses the information processing advantages of quantum computing to promote the development of traditional artificial intelligence. QML is not only suitable for quantum chemical simulations (with Variational Quantum Eigensolver) and other quantum problems. It also help researchers to solve classical optimization problems including knapsack problem, traveling salesman problem, and Max-Cut problem through the Quantum Approximate Optimization Algorithm.

  2. Question: I want to study QML, but I don't know much about quantum computing. Where should I start?

    Answer: Quantum Computation and Quantum Information by Nielsen & Chuang is the classic introductory textbook to QC. We recommend readers to study Chapter 1, 2, and 4 of this book first. These chapters introduce the basic concepts, provide solid mathematical and physical foundations, and discuss the quantum circuit model widely used in QC. Readers can also go through Paddle Quantum's quick start guide, which contains a brief introduction to QC and interactive examples. After building a general understanding of QC, readers can try some cutting-edge QML applications provided as tutorials in Paddle Quantum.

  3. Question: Currently, there is no fault-tolerant large-scale quantum hardware. How can we develop quantum applications?

    Answer: The development of useful algorithms does not necessarily require a perfect hardware. The latter is more of an engineering problem. With Paddle Quantum, one can develop, simulate, and verify the validity of self-innovated quantum algorithms. Then, researchers can choose to implement these tested quantum algorithms in a small scale hardware and see the actual performance of it. Following this line of reasoning, we can prepare ourselves with many candidates of useful quantum algorithms before the age of matured quantum hardware.

  4. Question: What are the advantages of Paddle Quantum?

    Answer: Paddle Quantum is an open-source QML toolkit based on Baidu PaddlePaddle. As the first open-source and industrial level deep learning platform in China, PaddlePaddle has the leading ML technology and rich functionality. With the support of PaddlePaddle, especially its dynamic computational graph mechanism, Paddle Quantum could easily train a QNN and with GPU acceleration. In addition, based on the high-performance quantum simulator developed by Institute for Quantum Computing (IQC) at Baidu, Paddle Quantum can simulate more than 20 qubits on personal laptops. Finally, Paddle Quantum provides many open-source QML tutorials for readers from different backgrounds.

Copyright and License

Paddle Quantum uses Apache-2.0 license.

References

[1] Quantum Computing - Wikipedia

[2] Nielsen, M. A. & Chuang, I. L. Quantum computation and quantum information. (2010).

[3] Phillip Kaye, Laflamme, R. & Mosca, M. An Introduction to Quantum Computing. (2007).

[4] Biamonte, J. et al. Quantum machine learning. Nature 549, 195–202 (2017).

[5] Schuld, M., Sinayskiy, I. & Petruccione, F. An introduction to quantum machine learning. Contemp. Phys. 56, 172–185 (2015).

[6] Benedetti, M., Lloyd, E., Sack, S. & Fiorentini, M. Parameterized quantum circuits as machine learning models. Quantum Sci. Technol. 4, 043001 (2019).

More Repositories

1

PaddleOCR

Awesome multilingual OCR toolkits based on PaddlePaddle (practical ultra lightweight OCR system, support 80+ languages recognition, provide data annotation and synthesis tools, support training and deployment among server, mobile, embedded and IoT devices)
Python
43,170
star
2

Paddle

PArallel Distributed Deep LEarning: Machine Learning Framework from Industrial Practice (『飞桨』核心框架,深度学习&机器学习高性能单机、分布式训练和跨平台部署)
C++
22,193
star
3

PaddleDetection

Object Detection toolkit based on PaddlePaddle. It supports object detection, instance segmentation, multiple object tracking and real-time multi-person keypoint detection.
Python
12,744
star
4

PaddleHub

Awesome pre-trained models toolkit based on PaddlePaddle. (400+ models including Image, Text, Audio, Video and Cross-Modal with Easy Inference & Serving)【安全加固,暂停交互,请耐心等待】
Python
12,704
star
5

PaddleNLP

👑 Easy-to-use and powerful NLP and LLM library with 🤗 Awesome model zoo, supporting wide-range of NLP tasks from research to industrial applications, including 🗂Text Classification, 🔍 Neural Search, ❓ Question Answering, ℹ️ Information Extraction, 📄 Document Intelligence, 💌 Sentiment Analysis etc.
Python
11,953
star
6

PaddleSpeech

Easy-to-use Speech Toolkit including Self-Supervised Learning model, SOTA/Streaming ASR with punctuation, Streaming TTS with text frontend, Speaker Verification System, End-to-End Speech Translation and Keyword Spotting. Won NAACL2022 Best Demo Award.
Python
11,053
star
7

PaddleSeg

Easy-to-use image segmentation library with awesome pre-trained model zoo, supporting wide-range of practical tasks in Semantic Segmentation, Interactive Segmentation, Panoptic Segmentation, Image Matting, 3D Segmentation, etc.
Python
8,601
star
8

PaddleGAN

PaddlePaddle GAN library, including lots of interesting applications like First-Order motion transfer, Wav2Lip, picture repair, image editing, photo2cartoon, image style transfer, GPEN, and so on.
Python
7,858
star
9

Paddle-Lite

PaddlePaddle High Performance Deep Learning Inference Engine for Mobile and Edge (飞桨高性能深度学习端侧推理引擎)
C++
6,953
star
10

models

Officially maintained, supported by PaddlePaddle, including CV, NLP, Speech, Rec, TS, big models and so on.
Python
6,897
star
11

ERNIE

Official implementations for various pre-training models of ERNIE-family, covering topics of Language Understanding & Generation, Multimodal Understanding & Generation, and beyond.
Python
6,300
star
12

PaddleClas

A treasure chest for visual classification and recognition powered by PaddlePaddle
Python
5,418
star
13

PaddleX

All-in-One Development Tool based on PaddlePaddle(飞桨低代码全流程开发工具)
Python
4,781
star
14

VisualDL

Deep Learning Visualization Toolkit(『飞桨』深度学习可视化工具 )
HTML
4,773
star
15

PaddleRec

Recommendation Algorithm大规模推荐算法库,包含推荐系统经典及最新算法LR、Wide&Deep、DSSM、TDM、MIND、Word2Vec、Bert4Rec、DeepWalk、SSR、AITM,DSIN,SIGN,IPREC、GRU4Rec、Youtube_dnn、NCF、GNN、FM、FFM、DeepFM、DCN、DIN、DIEN、DLRM、MMOE、PLE、ESMM、ESCMM, MAML、xDeepFM、DeepFEFM、NFM、AFM、RALM、DMR、GateNet、NAML、DIFM、Deep Crossing、PNN、BST、AutoInt、FGCNN、FLEN、Fibinet、ListWise、DeepRec、ENSFM,TiSAS,AutoFIS等,包含经典推荐系统数据集criteo 、movielens等
Python
4,273
star
16

PARL

A high-performance distributed training framework for Reinforcement Learning
Python
3,261
star
17

awesome-DeepLearning

深度学习入门课、资深课、特色课、学术案例、产业实践案例、深度学习知识百科及面试题库The course, case and knowledge of Deep Learning and AI
Jupyter Notebook
3,001
star
18

FastDeploy

⚡️An Easy-to-use and Fast Deep Learning Model Deployment Toolkit for ☁️Cloud 📱Mobile and 📹Edge. Including Image, Video, Text and Audio 20+ main stream scenarios and 150+ SOTA models with end-to-end optimization, multi-platform and multi-framework support.
C++
2,952
star
19

book

Deep Learning 101 with PaddlePaddle (『飞桨』深度学习框架入门教程)
Jupyter Notebook
2,735
star
20

Research

novel deep learning research works with PaddlePaddle
Python
1,715
star
21

PGL

Paddle Graph Learning (PGL) is an efficient and flexible graph learning framework based on PaddlePaddle
Python
1,572
star
22

PaddleSlim

PaddleSlim is an open-source library for deep model compression and architecture search.
Python
1,557
star
23

PaddleVideo

Awesome video understanding toolkits based on PaddlePaddle. It supports video data annotation tools, lightweight RGB and skeleton based action recognition model, practical applications for video tagging and sport action detection.
Python
1,512
star
24

PaddleHelix

Bio-Computing Platform Featuring Large-Scale Representation Learning and Multi-Task Deep Learning “螺旋桨”生物计算工具集
Python
1,007
star
25

Paddle.js

Paddle.js is a web project for Baidu PaddlePaddle, which is an open source deep learning framework running in the browser. Paddle.js can either load a pre-trained model, or transforming a model from paddle-hub with model transforming tools provided by Paddle.js. It could run in every browser with WebGL/WebGPU/WebAssembly supported. It could also run in Baidu Smartprogram and WX miniprogram.
JavaScript
980
star
26

Serving

A flexible, high-performance carrier for machine learning models(『飞桨』服务化部署框架)
C++
894
star
27

RocketQA

🚀 RocketQA, dense retrieval for information retrieval and question answering, including both Chinese and English state-of-the-art models.
Python
763
star
28

X2Paddle

Deep learning model converter for PaddlePaddle. (『飞桨』深度学习模型转换工具)
Python
727
star
29

Paddle2ONNX

ONNX Model Exporter for PaddlePaddle
Python
723
star
30

Paddle-Lite-Demo

lib, demo, model, data
C++
675
star
31

Knover

Large-scale open domain KNOwledge grounded conVERsation system based on PaddlePaddle
Python
674
star
32

Parakeet

PAddle PARAllel text-to-speech toolKIT (supporting Tacotron2, Transformer TTS, FastSpeech2/FastPitch, SpeedySpeech, WaveFlow and Parallel WaveGAN)
Python
600
star
33

FlyCV

FlyCV is a high-performance library for processing computer visual tasks.
C++
577
star
34

Paddle3D

A 3D computer vision development toolkit based on PaddlePaddle. It supports point-cloud object detection, segmentation, and monocular 3D object detection models.
Python
565
star
35

PaddleYOLO

🚀🚀🚀 YOLO series of PaddlePaddle implementation, PP-YOLOE+, RT-DETR, YOLOv5, YOLOv6, YOLOv7, YOLOv8, YOLOv10, YOLOX, YOLOv5u, YOLOv7u, YOLOv6Lite, RTMDet and so on. 🚀🚀🚀
Python
551
star
36

Anakin

High performance Cross-platform Inference-engine, you could run Anakin on x86-cpu,arm, nv-gpu, amd-gpu,bitmain and cambricon devices.
C++
531
star
37

VIMER

视觉预训练基础模型仓库
Python
494
star
38

PaddleTS

Awesome Easy-to-Use Deep Time Series Modeling based on PaddlePaddle, including comprehensive functionality modules like TSDataset, Analysis, Transform, Models, AutoTS, and Ensemble, etc., supporting versatile tasks like time series forecasting, representation learning, and anomaly detection, etc., featured with quick tracking of SOTA deep models.
Python
481
star
39

PaddleFL

Federated Deep Learning in PaddlePaddle
Python
480
star
40

PaddleFleetX

飞桨大模型开发套件,提供大语言模型、跨模态大模型、生物计算大模型等领域的全流程开发工具链。
Python
436
star
41

ERNIE-SDK

ERNIE Bot Agent is a Large Language Model (LLM) Agent Framework, powered by the advanced capabilities of ERNIE Bot and the platform resources of Baidu AI Studio.
Jupyter Notebook
341
star
42

PaddleSpatial

PaddleSpatial is an open-source spatial-temporal computing tool based on PaddlePaddle.
GLSL
331
star
43

PaddleRS

Awesome Remote Sensing Toolkit based on PaddlePaddle.
Python
330
star
44

PaddleMIX

Paddle Multimodal Integration and eXploration, supporting mainstream multi-modal tasks, including end-to-end large-scale multi-modal pretrain models and diffusion model toolbox. Equipped with high performance and flexibility.
Python
308
star
45

PaddleCloud

PaddlePaddle Docker images and K8s operators for PaddleOCR/Detection developers to use on public/private cloud.
Go
284
star
46

MetaGym

Collection of Reinforcement Learning / Meta Reinforcement Learning Environments.
Python
276
star
47

PASSL

PASSL包含 SimCLR,MoCo v1/v2,BYOL,CLIP,PixPro,simsiam, SwAV, BEiT,MAE 等图像自监督算法以及 Vision Transformer,DEiT,Swin Transformer,CvT,T2T-ViT,MLP-Mixer,XCiT,ConvNeXt,PVTv2 等基础视觉算法
Python
273
star
48

PaddleScience

PaddleScience is SDK and library for developing AI-driven scientific computing applications based on PaddlePaddle.
Python
259
star
49

InterpretDL

InterpretDL: Interpretation of Deep Learning Models,基于『飞桨』的模型可解释性算法库。
Python
241
star
50

docs

Documentations for PaddlePaddle
Python
240
star
51

Paddle-Inference-Demo

C++
235
star
52

PaddleRobotics

PaddleRobotics is an open-source algorithm library for robots based on Paddle, including open-source parts such as human-robot interaction, complex motion control, environment perception, SLAM positioning, and navigation.
Python
215
star
53

TrustAI

飞桨可信AI
Python
182
star
54

PALM

a Fast, Flexible, Extensible and Easy-to-use NLP Large-scale Pretraining and Multi-task Learning Framework.
Python
176
star
55

ElasticCTR

ElasticCTR,即飞桨弹性计算推荐系统,是基于Kubernetes的企业级推荐系统开源解决方案。该方案融合了百度业务场景下持续打磨的高精度CTR模型、飞桨开源框架的大规模分布式训练能力、工业级稀疏参数弹性调度服务,帮助用户在Kubernetes环境中一键完成推荐系统部署,具备高性能、工业级部署、端到端体验的特点,并且作为开源套件,满足二次深度开发的需求。
Python
176
star
56

AutoDL

Python
158
star
57

PLSC

Paddle Large Scale Classification Tools,supports ArcFace, CosFace, PartialFC, Data Parallel + Model Parallel. Model includes ResNet, ViT, Swin, DeiT, CaiT, FaceViT, MoCo, MAE, ConvMAE, CAE.
Python
148
star
58

CINN

Compiler Infrastructure for Neural Networks
C++
142
star
59

LiteKit

Off-The-Shelf AI Development Kit for APP Developers based on Paddle Lite (『飞桨』移动端开箱即用AI套件, 包含Java & Objective C接口支持)
Objective-C
134
star
60

PaddleFlow

Go
113
star
61

PaddleSports

Python
101
star
62

PaddleDTX

Paddle with Decentralized Trust based on Xuperchain
Go
89
star
63

PaConvert

PaddlePaddle Code Convert Toolkit. 『飞桨』深度学习代码转换工具
Python
87
star
64

XWorld

A C++/Python simulator package for reinforcement learning
C++
85
star
65

community

PaddlePaddle Developer Community
Jupyter Notebook
83
star
66

PaddleSleeve

PaddleSleeve
Python
76
star
67

benchmark

Python
76
star
68

hapi

hapi is a High-level API that supports both static and dynamic execution modes
Jupyter Notebook
76
star
69

Mobile

Embedded and Mobile Deployment
Python
71
star
70

PaddleCustomDevice

PaddlePaddle custom device implementaion. (『飞桨』自定义硬件接入实现)
Python
68
star
71

PaddleDepth

Python
63
star
72

PaddlePaddle.org

PaddlePaddle.org is the repository for the website of the PaddlePaddle open source project.
CSS
48
star
73

PaDiff

Paddle Automatically Diff Precision Toolkits.
Python
46
star
74

EasyData

Python
46
star
75

PaddleTest

PaddlePaddle TestSuite
Python
44
star
76

epep

Easy & Effective Application Framework for PaddlePaddle
Python
34
star
77

paddle-ce-latest-kpis

Paddle Continuous Evaluation, keep updating.
Python
26
star
78

VisionTools

Python
21
star
79

PaddleCraft

Take neural networks as APIs for human-like AI.
Python
20
star
80

Contrib

contribution works with PaddlePaddle from the third party developers
Python
20
star
81

PaddleTransfer

飞桨迁移学习算法库
Python
19
star
82

continuous_evaluation

Macro Continuous Evaluation Platform for Paddle.
Python
19
star
83

recordio

An implementation of the RecordIO file format.
Go
19
star
84

Perf

SOTA benchmark
Python
17
star
85

Paddle-bot

Python
17
star
86

examples

Python
17
star
87

continuous_integration

Python
16
star
88

PaddleSOT

A Bytecode level Implementation of Symbolic OpCode Translator For PaddlePaddle
Python
15
star
89

tape

C++
14
star
90

paddle_upgrade_tool

upgrade paddle-1.x to paddle-2.0
Python
12
star
91

PaddleAPEX

PaddleAPEX:Paddle Accuracy and Performance EXpansion pack
Python
7
star
92

talks

Shell
6
star
93

CLA

5
star
94

any

Legacy Repo only for PaddlePaddle with version <= 1.3
C++
5
star