Skip to main content
Warning: You are using the test version of PyPI. This is a pre-production deployment of Warehouse. Changes made here affect the production instance of TestPyPI (
Help us improve Python packaging - Donate today!

FT-ICR MS peak assignment and data analysis

Project Description

About fouriertransform

fouriertransform is a Python package for analyzing Fourier Transform Ion Cyclotron Resonance Mass Spectrometry (FT-ICR MS) data. fouriertransform is especially suited for assigning formulae raw MS peaks, categorizing formulae into compound classes according to elemental formula, and creating statistical correlations with environmental parameters.

This package was created by J.D. Hemingway, postdoctoral fellow, Harvard University.

Package Information

Authors:Jordon D. Hemingway (
Release:28 April 2017
License:GNU GPL v3 (or greater)

How to Cite

When analyzing data with fouriertransform to be used in a peer-reviewed journal, please cite this package as:

Additionally, please cite the following peer-reviewed manuscript describing the deveopment of the package and data treatment:

  • to be added


The documentation for the latest release, including detailed package references as well as a comprehensive walkthrough for analyzing FT-ICR MS data, is available at:

Package features

to be added later

Future Additions

to be added later

How to Obtain

Source code can be directly downloaded from GitHub:

Binaries can be installed through the Python package index:

$ pip install fouriertransform


This product is licensed under the GNU GPL license, version 3 or greater.

Bug Reports

This software is still in active deveopment. Please report any bugs directly to me at:
Release History

Release History

This version
History Node


Download Files

Download Files

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

File Name & Checksum SHA256 Checksum Help Version File Type Upload Date
fouriertransform-0.0.1.tar.gz (19.9 kB) Copy SHA256 Checksum SHA256 Source May 10, 2017

Supported By

WebFaction WebFaction Technical Writing Elastic Elastic Search Pingdom Pingdom Monitoring Dyn Dyn DNS Sentry Sentry Error Logging CloudAMQP CloudAMQP RabbitMQ Heroku Heroku PaaS Kabu Creative Kabu Creative UX & Design Fastly Fastly CDN DigiCert DigiCert EV Certificate Rackspace Rackspace Cloud Servers DreamHost DreamHost Log Hosting