Skip to main content

A Python package for paleoclimate data analysis

Project description

|PyPI| |PyPI| |PyPI| |license|

Pyleoclim
=========

**Python Package for the Analysis of Paleoclimate Data**

**Table of contents**

- `What is it? <#what>`__
- `Installation <#install>`__
- `Version Information <#version>`__
- `Quickstart Guide <#quickstart>`__
- `Requirements <#req>`__
- `Further information <#further_info>`__
- `Contact <#contact>`__
- `License <#license>`__
- `Disclaimer <#disclaimer>`__

Current Version: 0.2.5

What is it?
-----------

Pyleoclim is a Python package primarily geared towards the analysis and
visualization of paleoclimate data. Such data often come in the form of
timeseries with missing values and age uncertainties, and the package
includes several low-level methods to deal with these issues, as well as
high-level methods that re-use those to perform scientific workflows.

The package assumes that data are stored in the Linked Paleo Data
(`LiPD <http://www.clim-past.net/12/1093/2016/>`__) format and makes
extensive use of the `LiPD
utilities <http://nickmckay.github.io/LiPD-utilities/>`__. The package
is aware of age ensembles stored via LiPD and uses them for
time-uncertain analyses very much like
`GeoChronR <http://nickmckay.github.io/GeoChronR/>`__.

**Current capabilities**: - binning - interpolation - standardization -
plotting maps, timeseries, and basic age model information - paleo-aware
correlation analysis (isopersistent, isospectral and classical t-test)

**Future capabilities**: - paleo-aware singular spectrum analysis (AR(1)
null eigenvalue identification, missing data) - spectral analysis
(Multi-Taper Method, Lomb-Scargle) - weighted wavelet Z transform (WWZ)
- cross-wavelet analysis - index reconstruction - climate reconstruction
- ensemble methods for most of the above

If you have specific requests, please contact linkedearth@gmail.com

Version Information
-------------------

| 0.2.5: Fix error on loading (Looking for Spectral Module)
| 0.2.4: Fix load error from init
| 0.2.3: Freeze LiPD version to 1.2 to avoid conflicts with 1.3
| 0.2.2: Change progressbar to tqdm and add standardization function
| 0.2.1: Update package requirements
| 0.2.0: Restructure the package so that the main functions can be
called without the use of a LiPD files and associated timeseries
objects.
| 0.1.4: Rename function using camel case and consistency with LiPD
utilities version 0.1.8.5
| 0.1.3: Compatible with LiPD utilities version 0.1.8.5.
| Function openLiPD() renamed openLiPDs()
| 0.1.2: Compatible with LiPD utilities version 0.1.8.3. Uses basemap
instead of cartopy
| 0.1.1: Freezes the package prior to version 0.1.8.2 of LiPD utilities
| 0.1.0: First release

Installation
--------------

Python v3.4+ is required. Tested with Python v3.5

Pyleoclim is published through PyPi and easily installed via ``pip``

::

pip install pyleoclim

Quickstart guide
------------------

1. Open your command line application (Terminal or Command Prompt).

2. Install with command: ``pip install pyleoclim``

3. Wait for installation to complete, then:

3a. Import the package into your favorite Python environment (we
recommend the use of Spyder, which comes standard with the Anaconda
package)

3b. Use Jupyter Notebook to go through the tutorial contained in the
``PyleoclimQuickstart.ipynb`` Notebook, which can be downloaded
`here <https://github.com/LinkedEarth/Pyleoclim_util/tree/master/Example>`__.

4. Help with functionalities can be found in the Documentation folder on
our `GitHub
repository <https://github.com/LinkedEarth/Pyleoclim_util/Pyleoclim_Documentation.pdf>`__
and on `Pypi <https://pythonhosted.org/pyleoclim/>`__.

Requirements
------------

- LiPD >=0.2.0.2, <=0.2.1.9
- pandas v0.19+
- numpy v1.12+
- matplotlib v2.0+
- Basemap v1.0.7+
- scipy >=0.19.0
- statsmodel>=0.8.0
- seaborn>=0.7.0
- scikit-learn>=0.17.1
- tqdm>=4.14.0

The installer will automatically check for the needed updates

Further information
-------------------

GitHub: https://github.com/LinkedEarth/Pyleoclim\_util

LinkedEarth: http://linked.earth

Python and Anaconda: http://conda.pydata.org/docs/test-drive.html

Jupyter Notebook: http://jupyter.org

Contact
---------

Please report issues to linkedearth@gmail.com

License
---------

The project is licensed under the GNU Public License. Please refer to
the file call license.

Disclaimer
------------

This material is based upon work supported by the National Science
Foundation under Grant Number ICER-1541029. Any opinions, findings, and
conclusions or recommendations expressed in this material are those of
the investigators and do not necessarily reflect the views of the
National Science Foundation.

.. |PyPI| image:: https://img.shields.io/pypi/dm/pyleoclim.svg
:target: https://pypi.python.org/pypi/Pyleoclim
.. |PyPI| image:: https://img.shields.io/pypi/v/pyleoclim.svg
:target:
.. |PyPI| image:: https://img.shields.io/badge/python-3.5-yellow.svg
:target:
.. |license| image:: https://img.shields.io/github/license/linkedearth/Pyleoclim_util.svg
:target:

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pyleoclim-0.2.5.tar.gz (26.5 kB view details)

Uploaded Source

File details

Details for the file pyleoclim-0.2.5.tar.gz.

File metadata

  • Download URL: pyleoclim-0.2.5.tar.gz
  • Upload date:
  • Size: 26.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for pyleoclim-0.2.5.tar.gz
Algorithm Hash digest
SHA256 2df46c9ce016aadf70217bd12ffa88061ec1d61a83e96fb5897e211bb838c8d7
MD5 34ed120585212cb0b9f7d89788a45118
BLAKE2b-256 496fb62f9c139f7c16f6d3f9c18ff45d525e091df3efe4d88bcad047a3222750

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page