-
-
Notifications
You must be signed in to change notification settings - Fork 38
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
[PRE REVIEW]: PARMESAN: Meteorological Timeseries and Turbulence Analysis Backed by Symbolic Mathematics #5919
Comments
Hello human, I'm @editorialbot, a robot that can help you with some common editorial tasks. For a list of things I can do to help you, just type:
For example, to regenerate the paper pdf after making changes in the paper's md or bib files, type:
|
|
Wordcount for |
|
Hi @nobodyinperson and apologies for the delay in getting this going (I've been out of office). We have a waitlist at the moment since our editorial staff is maxxed out so I will add this to our waitlist. Thanks for your patience. |
Five most similar historical JOSS papers: MetSim: A Python package for estimation and disaggregation of meteorological data PySDM v1: particle-based cloud modeling package for warm-rain microphysics and aqueous chemistry TESPy: Thermal Engineering Systems in Python BATMAN: Statistical analysis for expensive computer codes made easy PYroMat: A Python package for thermodynamic properties |
@kthyng No worries, thank you for your work at JOSS. |
A preprint of this PARMESAN manuscript is available here: https://doi.org/10.48550/arXiv.2309.15063 |
I fixed the broken DOI. @editorialbot check references |
@editorialbot check references |
|
@nobodyinperson the editorial bot command has to be the first thing in a comment to be recognized. |
@martinfleis I know its outside your main expertise, but would you be up for editing this submission? |
@editorialbot invite @martinfleis as editor |
Invitation to edit this submission sent! |
@editorialbot assign me as editor |
Assigned! @martinfleis is now the editor |
Thank you @martinfleis, much appreciated! 🙂 |
@editorialbot check references |
|
@editorialbot generate pdf |
Hi @nobodyinperson 👋, I'll be the editor if this submission. If you'll have any queries, send them my way. If you have any suggestions for potential reviewers then please mention them here in this thread (without tagging them with an @). You can search the list of people that have already agreed to review and may be suitable for this submission. Your submission is slightly off my expertise, so any help with finding suitable reviewers would help. Thanks! |
Five most similar historical JOSS papers: MetSim: A Python package for estimation and disaggregation of meteorological data PySDM v1: particle-based cloud modeling package for warm-rain microphysics and aqueous chemistry TESPy: Thermal Engineering Systems in Python BATMAN: Statistical analysis for expensive computer codes made easy PYroMat: A Python package for thermodynamic properties |
Hi @arbennett and @kgoebber, I think that your expertise is very close to this submission. Would you be willing to review PARMESAN for JOSS? Thanks! |
@martinfleis, sure, I can review this submission |
@editorialbot add @kgoebber as reviewer @kgoebber Thanks! |
@kgoebber added to the reviewers list! |
@martinfleis - I can also review this! |
Thank you very much @arbennett and @kgoebber, this is much appreciated! 🙂 |
@editorialbot add @arbennett as reviewer |
@arbennett added to the reviewers list! |
Thank you both! |
@editorialbot start review |
OK, I've started the review over in #6127. |
Submitting author: @nobodyinperson (Yann Büchau)
Repository: https://gitlab.com/tue-umphy/software/parmesan
Branch with paper.md (empty if default branch): joss-paper
Version: 2.0.0
Editor: @martinfleis
Reviewers: @kgoebber, @arbennett
Managing EiC: Kristen Thyng
Status
Status badge code:
Author instructions
Thanks for submitting your paper to JOSS @nobodyinperson. Currently, there isn't a JOSS editor assigned to your paper.
@nobodyinperson if you have any suggestions for potential reviewers then please mention them here in this thread (without tagging them with an @). You can search the list of people that have already agreed to review and may be suitable for this submission.
Editor instructions
The JOSS submission bot @editorialbot is here to help you find and assign reviewers and start the main review. To find out what @editorialbot can do for you type:
The text was updated successfully, but these errors were encountered: