Skip to content

Latest commit

 

History

History
90 lines (62 loc) · 6.88 KB

README.md

File metadata and controls

90 lines (62 loc) · 6.88 KB

Amazon Braket Algorithm Library

Build

The Braket Algorithm Library provides Amazon Braket customers with pre-built implementations of prominent quantum algorithms and experimental workloads as ready-to-run example notebooks.


Braket algorithms

Currently, Braket algorithms are tested on Linux, Windows, and Mac.

Running notebooks locally requires additional dependencies located in notebooks/textbook/requirements.txt. See notebooks/textbook/README.md for more information.

Textbook algorithms Notebook References
Bell's Inequality Bells_Inequality.ipynb Bell1964, Greenberger1990
Bernstein–Vazirani Bernstein_Vazirani_Algorithm.ipynb Bernstein1997
CHSH Inequality CHSH_Inequality.ipynb Clauser1970
Deutsch-Jozsa Deutsch_Jozsa_Algorithm.ipynb Deutsch1992
Grover's Search Grovers_Search.ipynb Figgatt2017, Baker2019
QAOA Quantum_Approximate_Optimization_Algorithm.ipynb Farhi2014
Quantum Circuit Born Machine Quantum_Circuit_Born_Machine.ipynb Benedetti2019, Liu2018
QFT Quantum_Fourier_Transform.ipynb Coppersmith2002
QPE Quantum_Phase_Estimation_Algorithm.ipynb Kitaev1995
Quantum Walk Quantum_Walk.ipynb Childs2002
Shor's Shors_Algorithm.ipynb Shor1998
Simon's Simons_Algorithm.ipynb Simon1997
Advanced algorithms Notebook References
Quantum PCA Quantum_Principal_Component_Analysis.ipynb He2022
QMC Quantum_Computing_Quantum_Monte_Carlo.ipynb Motta2018, Peruzzo2014
Auxiliary functions Notebook
Random circuit generator Random_Circuit.ipynb

Community repos

⚠️ The following includes projects that are not provided by Amazon Braket. You are solely responsible for your use of those projects (including compliance with any applicable licenses and fitness of the project for your particular purpose).

Quantum algorithm implementations using Braket in other repos:

Algorithm Repo References Additional dependencies
Quantum Reinforcement Learning quantum-computing-exploration-for-drug-discovery-on-aws Learning Retrosynthetic Planning through Simulated Experience(2019) dependencies

The Amazon Braket Algorithm Library can be installed from source by cloning this repository and running a pip install command in the root directory of the repository.

git clone https://github.com/amazon-braket/amazon-braket-algorithm-library.git
cd amazon-braket-algorithm-library
pip install .

To run the notebook examples locally on your IDE, first, configure a profile to use your account to interact with AWS. To learn more, see Configure AWS CLI.

After you create a profile, use the following command to set the AWS_PROFILE so that all future commands can access your AWS account and resources.

export AWS_PROFILE=YOUR_PROFILE_NAME

Configure your AWS account with the resources necessary for Amazon Braket

If you are new to Amazon Braket, onboard to the service and create the resources necessary to use Amazon Braket using the AWS console.

Support

Issues and Bug Reports

If you encounter bugs or face issues while using the algorithm library, please let us know by posting the issue on our GitHub issue tracker.
For other issues or general questions, please ask on the Quantum Computing Stack Exchange and add the tag amazon-braket.

Feedback and Feature Requests

If you have feedback or features that you would like to see on Amazon Braket, we would love to hear from you!
GitHub issues is our preferred mechanism for collecting feedback and feature requests, allowing other users to engage in the conversation, and +1 issues to help drive priority.

License

This project is licensed under the Apache-2.0 License.