We present three reproducible workflows as Jupyter Notebook using the Pyleoclim software package to serve as fully executable companions to the Pyleoclim manuscript. The paper was published in 2022. Since then, we have made improvements to the code base and have created a special package for the handling of LiPD files, pylipd
, which works smoothly with Pyleoclim
. The latest release of these notebooks represent these changes. If you wish to see the notebooks that were originally published with the manuscript and the 0.9.4 version of Pyleoclim
, see this tag.
We used Pyleoclim
for the following studies:
- Orbital Cycles contains a workflow describing spectral and wavelet analysis of a marine record convering the past 5 million years.
- MD Confrontation contains a notebook reproducing the study by Zhu et al. (2019) looking at how well climate models capture the continnum of global-average temperature variability.
- CrystalCorrelations contains a notebook looking at the pitfall of correlations for paleoclimate study following the study by Hu et al. (2017).
The notebooks are fully executable through MyBinder (click on the badge at the top of this read me).
Pyleoclim is a Python package geared towards timeseries analysis of time-uncertain data.
The package can (but do not necessarily have to) directly work with data in the Linked Paleo Data (LiPD) format through the pylipd
. The advantage of working with that format is that the code contains automated data transformation, making working with paleoclimate data easier and faster.
v1.0 of the notebooks require v1.1.0 of Pyleoclim and associated requirements detailed in the environment.yml
file. A built container is available on Quay.io:
docker pull quay.io/linkedearth/pyleoclim:db17c5968506
All notebooks herein are provided under an Apache 2.0 license.
We needn't tell you that making research tools accessible requires time and effort. If you find any of these resources useful and use them in your own research, please do us the kindness of one or more citations. Notebooks in this collection are registered on Zenodo, and associated with a digital object identifier (DOI). A ready-to-use citation is provided in this GitHub repository in APA and BibTex (in the About section on the right panel, click on "Cite this repository"). If you use any of the standards (LiPD) or the software (Pyleoclim), please cite them as well. It will make us (and NSF!) very happy to hear that these investments spawned more research.
If you use any of the data on this repository, please cite the original authors of the study.