Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Tensor Networks Backend [$400] #63

Open
Krastanov opened this issue Jul 9, 2024 · 3 comments
Open

Tensor Networks Backend [$400] #63

Krastanov opened this issue Jul 9, 2024 · 3 comments
Labels
bounty:400 bug bounty There is an award for solving this issue

Comments

@Krastanov
Copy link
Member

Krastanov commented Jul 9, 2024

Bug bounty logistic details (click to expand)

To claim exclusive time to work on this bounty either post a comment here or message [email protected] with:

  • your name
  • github username
  • (optional) a brief list of previous pertinent projects you have engaged in

Currently the project is claimed by no one until ....

If you want to, you can work on this project without making a claim, however claims are encouraged to give you and other contributors peace of mind. Whoever has made a claim takes precedence when solutions are considered.

You can always propose your own funded project, if you would like to contribute something of value that is not yet covered by an official bounty.

Project: "Tensor Networks Backend" [$400]

One of the main design goals of this library is to provide a symbolic front end for many different numerical representations of quantum states and operations. This is done chiefly through the express API. Currently, we have baseline support for state vectors (an interface to QuantumOptics.jl) and for stabilizer tableaux (an interface to QuantumClifford.jl).

In this project we are pursuing an implementation of a similar symbolic-to-numeric interface for a numerical tensor network representation for many of these states and operators. The majority of the already available symbolic operations and pre-defined objects from this symbolic library should be supported. New "predefined" symbolic objects that are common for tensor network problems should be defined as necessary. The contributor should investigate and defend what would be the best tensor network backend -- ITensor.jl seems like a plausible choice.

Required skills: Familiarity with tensor networks

Reviewer: Stefan Krastanov

Duration: Can be reserved for 2 months and potentially extended

Publication: In the next 2 years we plan to release a paper in a selective journal about this software. Contributing to this issue would deserve a co-authorship status on such a paper (if the contributor so desires)

Payout procedure:

The Funding for these bounties comes from the National Science Foundation and from the NSF Center for Quantum Networks. The payouts are managed by the NumFOCUS foundation and processed in bulk once every two months. If you live in a country in which NumFOCUS can make payments, you can participate in this bounty program.

Click here for more details about the bug bounty program.

@lab57
Copy link

lab57 commented Aug 15, 2024

Name: Luc Barrett
Github @lab57

@Krastanov
Copy link
Member Author

@lab57 , hi Luc! It seems I forgot to follow up on this. I am not sure whether we had decided anything about this in our in-person meetings. Is this something you want to tackle this semester? (I know you have a lot of other projects, no pressure if you priorities have changed in the last month)

@lab57
Copy link

lab57 commented Nov 15, 2024

@Krastanov hi Stefan! I would like to work in it maybe this semester or this winter - it sounds interesting to work on and now that I have finished all my physics projects and midterms I have more time to pivot. Especially since the 2 month timeline includes winter I think it would be a good time! If it's still available I'd like to claim it!

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
bounty:400 bug bounty There is an award for solving this issue
Projects
None yet
Development

No branches or pull requests

2 participants