An open-source Python package to unify raw MS data access and storage.
Project description
AlphaRaw
About
An open-source Python package of the AlphaPept ecosystem from the Mann Labs at the Max Planck Institute of Biochemistry to unify raw MS data accession and storage. To enable all hyperlinks in this document, please view it at GitHub.
License
AlphaRaw was developed by the Mann Labs at the Max Planck Institute of Biochemistry and is freely available with an Apache License. External Python packages (available in the requirements folder) have their own licenses, which can be consulted on their respective websites.
Installation
Pythonnet must be installed to access Thermo or Sciex raw data.
For Windows
Pythonnet will be automatically installed via pip.
For Linux (or MacOS without M1/M2/M3/..., not tested yet)
conda install mono
.- Install pythonnet with
pip install pythonnet
.
If conda install mono
does not work, we can install Mono from mono-project website Mono
Linux.
NOTE, the installed mono version should be at least 6.10, which
requires you to add the ppa to your trusted sources!
For MacOS including M1/M2 platform
- Install brew.
- Install mono:
brew install mono
. - If the pseudo mono folder
/Library/Frameworks/Mono.framework/Versions
does not exist, create it by runningsudo mkdir -p /Library/Frameworks/Mono.framework/Versions
. - Link homebrew mono to pseudo mono folder:
sudo ln -s /opt/homebrew/Cellar/mono/6.12.0.182 /Library/Frameworks/Mono.framework/Versions/Current
. Here,6.12.0.182
is the brew-installed mono version, please check your installed version. Navigate to/Library/Frameworks/Mono.framework/Versions
and runls -l
to verify that the linkCurrent
points to/opt/homebrew/Cellar/mono/6.12.0.182
. IfCurrent
points to a different installation and/or/opt/homebrew/Cellar/mono/6.12.0.182
is referenced by a different link, delete the corresponding links and runsudo ln -s /opt/homebrew/Cellar/mono/6.12.0.182 Current
. - Install pythonnet:
pip install pythonnet
.
AlphaRaw can be installed and used on all major operating systems (Windows, macOS and Linux). There are three different types of installation possible:
- Pip installer: Choose this installation if you want to use AlphaRaw as a Python package in an existing Python 3.8 environment (e.g. a Jupyter notebook).
- Developer installer: Choose this installation if you are familiar with CLI tools, conda and Python. This installation allows access to all available features of AlphaRaw and even allows to modify its source code directly. Generally, the developer version of AlphaRaw outperforms the precompiled versions which makes this the installation of choice for high-throughput experiments.
Pip
AlphaRaw can be installed in an existing Python 3.8 environment with a
single bash
command. This bash
command can also be run directly
from within a Jupyter notebook by prepending it with a !
:
pip install alpharaw
Installing AlphaRaw like this avoids conflicts when integrating it in other tools, as this does not enforce strict versioning of dependancies. However, if new versions of dependancies are released, they are not guaranteed to be fully compatible with AlphaRaw. While this should only occur in rare cases where dependencies are not backwards compatible, you can always force AlphaRaw to use dependancy versions which are known to be compatible with:
pip install "alpharaw[stable]"
NOTE: You might need to run pip install pip --upgrade
before installing
AlphaRaw like this. Also note the double quotes "
.
For those who are really adventurous, it is also possible to directly
install any branch (e.g. @development
) with any extras
(e.g. #egg=alpharaw[stable,development-stable]
) from GitHub with e.g.
pip install "git+https://github.com/MannLabs/alpharaw.git@development#egg=alpharaw[stable,development-stable]"
Developer
AlphaRaw can also be installed in editable (i.e. developer) mode with a
few bash
commands. This allows to fully customize the software and
even modify the source code to your specific needs. When an editable
Python package is installed, its source code is stored in a transparent
location of your choice. While optional, it is advised to first (create
and) navigate to e.g. a general software folder:
mkdir ~/folder/where/to/install/software
cd ~/folder/where/to/install/software
The following commands assume you do not perform any additional cd
commands anymore.
Next, download the AlphaRaw repository from GitHub either directly or
with a git
command. This creates a new AlphaRaw subfolder in your
current directory.
git clone https://github.com/MannLabs/alpharaw.git
For any Python package, it is highly recommended to use a separate conda virtual environment, as otherwise dependancy conflicts can occur with already existing packages.
conda create --name alpharaw python=3.9 -y
conda activate alpharaw
Finally, AlphaRaw and all its dependancies need to be
installed. To take advantage of all features and allow development (with
the -e
flag), this is best done by also installing the development
dependencies instead of only
the core dependencies:
pip install -e "./alpharaw[development]"
By default this installs loose dependancies (no explicit versioning),
although it is also possible to use stable dependencies
(e.g. pip install -e "./alpharaw[stable,development-stable]"
).
By using the editable flag -e
, all modifications to the AlphaRaw
source code folder are directly reflected when running
AlphaRaw. Note that the AlphaRaw folder cannot be moved and/or renamed
if an editable version is installed.
Usage
NOTE: The first time you use a fresh installation of AlphaRaw, it is often quite slow because some functions might still need compilation on your local operating system and architecture. Subsequent use should be a lot faster.
Python and Jupyter notebooks
AlphaRaw can be imported as a Python package into any Python script or
notebook with the command import alpharaw
.
A brief Jupyter notebook tutorial on how to use the API is also present in the nbs folder.
Troubleshooting
In case of issues, check out the following:
- Issues: Try a few different search terms to find out if a similar problem has been encountered before
- Discussions: Check if your problem or feature requests has been discussed before.
Citations
There are currently no plans to draft a manuscript.
How to contribute
If you like this software, you can give us a star to boost our visibility! All direct contributions are also welcome. Feel free to post a new issue or clone the repository and create a pull request with a new branch. For an even more interactive participation, check out the discussions and the the Contributors License Agreement.
Changelog
See the HISTORY.md for a full overview of the changes made in each version.
Project details
Release history Release notifications | RSS feed
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