diff --git a/README.md b/README.md index eb10fa99..7fd49e9c 100644 --- a/README.md +++ b/README.md @@ -2,7 +2,7 @@ torchquantum Logo

-

A PyTorch Library for Quantum Simulation and Quantum Machine Learning

+

Quantum Computing in PyTorch

Faster, Scalable, Easy Debugging, Easy Deployment on Real Machine

@@ -19,9 +19,9 @@ Chat @ Discord - + Website @@ -49,7 +49,7 @@ #### What it is doing -Quantum simulation framework based on PyTorch. It supports statevector simulation and pulse simulation (coming soon) on GPUs. It can scale up to the simulation of 30+ qubits with multiple GPUs. +Simulate quantum computations on classical hardware using PyTorch. It supports statevector simulation and pulse simulation on GPUs. It can scale up to the simulation of 30+ qubits with multiple GPUs. #### Who will benefit Researchers on quantum algorithm design, parameterized quantum circuit training, quantum optimal control, quantum machine learning, quantum neural networks. @@ -58,10 +58,10 @@ Researchers on quantum algorithm design, parameterized quantum circuit training, Dynamic computation graph, automatic gradient computation, fast GPU support, batch model tersorized processing. ## News - +- Check the [dev branch](https://github.com/mit-han-lab/torchquantum/tree/dev) for new latest features on quantum layers and quantum algorithms. - v0.1.7 Available! - Join our [Slack](https://join.slack.com/t/torchquantum/shared_invite/zt-1ghuf283a-OtP4mCPJREd~367VX~TaQQ) for real time support! -- Welcome to contribute! Please contact us or post in the [forum](https://qmlsys.hanruiwang.me) if you want to have new examples implemented by TorchQuantum or any other questions. +- Welcome to contribute! Please contact us or post in the Github Issues if you want to have new examples implemented by TorchQuantum or any other questions. - Qmlsys website goes online: [qmlsys.mit.edu](https://qmlsys.mit.edu) and [torchquantum.org](https://torchquantum.org) ## Features @@ -358,6 +358,7 @@ pre-commit install - [ICCAD'22] [Wang et al., "QuEst: Graph Transformer for Quantum Circuit Reliability Estimation"](https://arxiv.org/abs/2210.16724) - [ICML Workshop] [Yun et al., "Slimmable Quantum Federated Learning"](https://dynn-icml2022.github.io/spapers/paper_7.pdf) - [IEEE ICDCS] [Yun et al., "Quantum Multi-Agent Reinforcement Learning via Variational Quantum Circuit Design"](https://ieeexplore.ieee.org/document/9912289) +- [QCE'23] [Zhan et al., "Quantum Sensor Network Algorithms for Transmitter Localization"](https://ieeexplore.ieee.org/abstract/document/10313806)
Manuscripts