Submitting Author: (@nstarman)
All current maintainers: (@nstarman, @jnibauer)
Package Name: phasecurvefit
Construct paths through phase-space points, with JAX.
Repository Link: https://github.com/GalacticDynamics/phasecurvefit
Version submitted: v0.1.0
EiC: @crhea93
Editor: TBD
Reviewer 1: TBD
Reviewer 2: TBD
Archive: TBD
JOSS DOI: TBD
Version accepted: TBD
Date accepted (month/day/year): TBD
Code of Conduct & Commitment to Maintain Package
Description
Filamentary structures are ubiquitous in the physical sciences, ranging from coherent streams of stars called stellar streams to elongated structures in turbulent fluids, plasmas, and the interstellar medium. In the context of stellar streams, a common preprocessing step is ordering observational or simulation data to derive the mean path of the stream's trajectory through phase-space.
phasecurvefit is an open-source Python package for constructing such orderings and paths by walking along the local phase-space flow using. There are two core components: the first is walk_local_flow which builds an approximate ordering and trajectory but which might miss some of the data; and the second is a fast-to-train autoencoder that imputes the full ordering and trajectory.
Scope
Domain Specific
Community Partnerships
If your package is associated with an existing community please check below:
While this package does not directly interface with Astropy, it easily interoperates with it, through unxt, which brings Astropy to JAX.
-
For all submissions, explain how and why the package falls under the categories you indicated above. In your explanation, please address the following points (briefly, 1-2 sentences for each):
- Who is the target audience and what are scientific applications of this package?
The target audience is scientists with data or simulations of stellar streams, or similar filamentary structures like elongated structures in turbulent fluids, plasmas, and the interstellar medium. Current scientific applications of this package, not by the submitters, are analyses of Milky Way stellar streams data, fitting the path of the stream for orbit and membership likelihood analyses.
- Are there other Python packages that accomplish the same thing? If so, how does yours differ?
Not to our knowledge. Our code, written in JAX, not only fits stream-like structures in phase space, it does so differentiably e.g. for use in gradient-utilizing inference pipelines.
- If you made a pre-submission enquiry, please paste the link to the corresponding issue, forum post, or other discussion, or
@tag the editor you contacted:
Technical checks
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Submitting Author: (@nstarman)
All current maintainers: (@nstarman, @jnibauer)
Package Name: phasecurvefit
Construct paths through phase-space points, with JAX.
Repository Link: https://github.com/GalacticDynamics/phasecurvefit
Version submitted: v0.1.0
EiC: @crhea93
Editor: TBD
Reviewer 1: TBD
Reviewer 2: TBD
Archive: TBD
JOSS DOI: TBD
Version accepted: TBD
Date accepted (month/day/year): TBD
Code of Conduct & Commitment to Maintain Package
Description
Filamentary structures are ubiquitous in the physical sciences, ranging from coherent streams of stars called stellar streams to elongated structures in turbulent fluids, plasmas, and the interstellar medium. In the context of stellar streams, a common preprocessing step is ordering observational or simulation data to derive the mean path of the stream's trajectory through phase-space.
phasecurvefitis an open-source Python package for constructing such orderings and paths by walking along the local phase-space flow using. There are two core components: the first iswalk_local_flowwhich builds an approximate ordering and trajectory but which might miss some of the data; and the second is a fast-to-train autoencoder that imputes the full ordering and trajectory.Scope
Please indicate which category or categories.
Check out our package scope page to learn more about our
scope. (If you are unsure of which category you fit, we suggest you make a pre-submission inquiry):
Domain Specific
Community Partnerships
If your package is associated with an existing community please check below:
While this package does not directly interface with Astropy, it easily interoperates with it, through
unxt, which brings Astropy to JAX.For all submissions, explain how and why the package falls under the categories you indicated above. In your explanation, please address the following points (briefly, 1-2 sentences for each):
The target audience is scientists with data or simulations of stellar streams, or similar filamentary structures like elongated structures in turbulent fluids, plasmas, and the interstellar medium. Current scientific applications of this package, not by the submitters, are analyses of Milky Way stellar streams data, fitting the path of the stream for orbit and membership likelihood analyses.
Not to our knowledge. Our code, written in JAX, not only fits stream-like structures in phase space, it does so differentiably e.g. for use in gradient-utilizing inference pipelines.
@tagthe editor you contacted:Technical checks
For details about the pyOpenSci packaging requirements, see our packaging guide. Confirm each of the following by checking the box. This package:
Publication Options
JOSS Checks
paper.mdmatching JOSS's requirements with a high-level description in the package root or ininst/. Yes, in the PR 📝 docs: JOSS paper GalacticDynamics/phasecurvefit#3, which will be merged on acceptanceNote: JOSS accepts our review as theirs. You will NOT need to go through another full review. JOSS will only review your paper.md file. Be sure to link to this pyOpenSci issue when a JOSS issue is opened for your package. Also be sure to tell the JOSS editor that this is a pyOpenSci reviewed package once you reach this step.
Are you OK with Reviewers Submitting Issues and/or pull requests to your Repo Directly?
This option will allow reviewers to open smaller issues that can then be linked to PR's rather than submitting a more dense text based review. It will also allow you to demonstrate addressing the issue via PR links.
Confirm each of the following by checking the box.
Please fill out our survey
submission and improve our peer review process. We will also ask our reviewers
and editors to fill this out.
P.S. Have feedback/comments about our review process? Leave a comment here
Editor and Review Templates
The editor template can be found here.
The review template can be found here.
Footnotes
Please fill out a pre-submission inquiry before submitting a data visualization package. ↩