The ruffus module is a lightweight way to add support for running computational pipelines.
Computational pipelines are often conceptually quite simple, especially if we breakdown the process into simple stages, or separate tasks.
Each stage or task in a computational pipeline is represented by a python function Each python function can be called in parallel to run multiple jobs.
Ruffus was originally designed for use in bioinformatics to analyse multiple genome data sets.
Ruffus documentation can be found here , with installation notes , a short tutorial and an in-depth manual .
The purpose of a pipeline is to determine automatically which parts of a multi-stage process needs to be run and in what order in order to reach an objective ("targets")
Computational pipelines, especially for analysing large scientific datasets are in widespread use. However, even a conceptually simple series of steps can be difficult to set up and to maintain, perhaps because the right tools are not available.
The ruffus module has the following design goals:
- Simplicity. Can be picked up in 10 minutes
- Elegance
- Lightweight
- Unintrusive
- Flexible/Powerful
Automatic support for
- Managing dependencies
- Parallel jobs
- Re-starting from arbitrary points, especially after errors
- Display of the pipeline as a flowchart
- Reporting
Use the @transform(...) python decorator before the function definitions:
from ruffus import * # make 10 dummy DNA data files data_files = [(prefix + ".fastq") for prefix in range("abcdefghij")] for df in data_files: open(df, "w").close() @transform(data_files, suffix(".fastq"), ".bam") def run_bwa(input_file, output_file): print "Align DNA sequences in %s to a genome -> %s " % (input_file, output_file) # make dummy output file open(output_file, "w").close() @transform(run_bwa, suffix(".bam"), ".sorted.bam") def sort_bam(input_file, output_file): print "Sort DNA sequences in %s -> %s " % (input_file, output_file) # make dummy output file open(output_file, "w").close() pipeline_run([sort_bam], multithread = 5)
the @transform
decorator indicate that the data flows from the run_bwa
function to sort_bwa
down
the pipeline.
Each stage or task in a computational pipeline is represented by a python function Each python function can be called in parallel to run multiple jobs.
Import module:
import ruffus
Annotate functions with python decorators
Print dependency graph if you necessary
For a graphical flowchart in
jpg
,svg
,dot
,png
,ps
,gif
formats:pipeline_printout_graph ("flowchart.svg")
This requires
dot
to be installedFor a text printout of all jobs
pipeline_printout(sys.stdout)
Run the pipeline:
pipeline_run(list_of_target_tasks, verbose = NNN, [multithread | multiprocess = NNN])