Find documentation and example reports at multiqc.info
MultiQC is written in Python and contains modules for a number of common tools. Currently, these include:
- FastQC
- FastQ Screen
- Cutadapt
- Bismark
- STAR
- Tophat
- Bowtie
- Bowtie 2
- Subread featureCounts
- Picard MarkDuplicates
More to come soon. Please suggest any ideas as a new issue.
MultiQC comes with a graphical app for OS X. To use, download MultiQC.app.zip
from the releases page
and unzip the archive. Double click MultiQC.app to launch, then
drag your analysis directory onto the window.
The app can be run from anywhere, though we recommend copying to your Applications directory.
A similar graphical utility for Windows is planned for a future release.
You can install MultiQC from PyPI
using pip
as follows:
pip install multiqc
If you would like the development version instead, the command is:
pip install git+https://github.com/ewels/MultiQC.git
Then it's just a case of going to your analysis directory and running the script:
multiqc .
That's it! MultiQC will scan the specified directory ('.' is the current dir) and produce a report detailing whatever it finds.
The report is created in multiqc_report/multiqc_report.html
by default.
A zip file of the report is also generated to facilitate easy transfer and sharing.
Tab-delimited data files are also created in multiqc_report/report_data/
,
containing extra information. These can be easily inspected using Excel.
For more detailed instructions, run multiqc -h
Contributions and suggestions for new features are welcome, as are bug reports! Please create a new issue for any of these, including example reports where possible.
Pull requests with new code are always gladly received, see the contributing notes for details. These notes include extensive help with how to use the built in code.
If in doubt, feel free to get in touch with the author: @ewels (phil.ewels@scilifelab.se)
- New design for general statistics table (snazzy new background bars)
- Further development of toolbox
- New button to clear all filters
- Warnings when samples are hidden, plus empty plots and table cols are hidden
- Active toolbar tab buttons are highlighted
- Lots of refactoring by @moonso to please the Pythonic gods
- Switched to click instead of argparse to handle command line arguments
- Code generally conforms to best practices better now.
- Now able to supply multiple directories to search for reports
- Logging output improved (now controlled by
-q
and-v
for quiet and verbose) - More HTML output dealt with by the base module, less left to the modules
- Module introduction text
- General statistics table now much easier to add to (new helper functions)
v0.2 - 2015-09-18
- Code restructuring for nearly all modules. Common base module
functions now handle many more functions (plots, config, file import)
- See the contributing notes for instructions on how to use these new helpers to make your own module
- New report toolbox - sample highlighting, renaming, hiding
- Config is autosaved by default, can also export to a file for sharing
- Interactive tour to help users find their way around
- New Tophat, Bowtie 2 and QualiMap modules
- Thanks to @guillermo-carrasco for the QualiMap module
- Bowtie module now works
- New command line parameter
-d
prefixes sample names with the directory that they were found in. Allows duplicate filenames without being overwritten. - Introduction walkthrough helps show what can be done in the report
- Now compatible with both Python 2 and Python 3
- Software version number now printed on command line properly, and in reports.
- Bugfix: FastQC doesn't break when only one report found
- Bugfix: FastQC seq content heatmap highlighting
- Many, many small bugfixes
v0.1 - 2015-09-01
- The first public release of MultiQC, after a month of development. Basic structure in place and modules for FastQC, FastQ Screen, Cutadapt, Bismark, STAR, Bowtie, Subread featureCounts and Picard MarkDuplicates. Approaching stability, though still under fairly heavy development.