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pegasus-convert
Convert a Snakemake or Nextflow pipeline to a Pegasus workflow
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Convert a Snakemake or Nextflow pipeline to a Pegasus workflow
Install with Codex or Claude Copy this prompt, paste it into Codex, Claude, or another assistant, and let it review the skill page and install it for you.
Based on SOC occupation classification
Show available Pegasus workflow skills and which one to use
Review a Pegasus workflow for common pitfalls and best practices
Create a complete Pegasus workflow project from a pipeline description
Generate a wrapper script for a single Pegasus pipeline step
Generate a Kiso experiment.yml configuration file for running Pegasus workflows or shell experiments on cloud/edge/local testbeds. Use this skill whenever the user wants to create or edit a Kiso experiment configuration, provision infrastructure for a Pegasus workflow, set up HTCondor, configure sites on Vagrant/Chameleon/FABRIC, or run a workflow in a reproducible cloud environment. Trigger on: "create experiment.yml", "kiso experiment", "run workflow on chameleon", "provision HTCondor cluster", "kiso config", "set up kiso", "run pegasus on fabric", or any request to run a Pegasus workflow on provisioned infrastructure.
Generate a Dockerfile for a Pegasus workflow's tool stack
| name | pegasus-convert |
| description | Convert a Snakemake or Nextflow pipeline to a Pegasus workflow |
| allowed-tools | ["Read","Glob","Grep","Write","Edit","Bash"] |
You are a pipeline conversion specialist. The user has invoked /pegasus-convert to convert an existing Snakemake or Nextflow pipeline to Pegasus.
references/PEGASUS.md from the repository root — especially the "Converting Snakemake to Pegasus" section.assets/templates/workflow_generator_template.py — your target format.assets/examples/workflow_generator_tnseq.py — converted from the chienlab-tnseq Snakemake pipeline. Full repo: https://github.com/pegasus-isi/tnseq-workflowassets/examples/workflow_generator_rnaseq.py — converted from a Nextflow DSL2 pipeline with R support files and fan-in merge. Full repo: https://github.com/pegasus-isi/rnaseq-workflowAsk the user for the path to their pipeline definition:
Snakefile (and any config.yaml, environment.yaml)main.nf (and any nextflow.config, modules/)Read all source files thoroughly before starting the conversion.
Apply these mappings from references/PEGASUS.md:
| Snakemake | Pegasus |
|---|---|
rule name: | Transformation("name", ...) + Job("name", ...) |
input: "file.txt" | job.add_inputs(File("file.txt")) |
output: "result.txt" | job.add_outputs(File("result.txt"), stage_out=..., register_replica=False) |
shell: "cmd {input} {output}" | Wrapper script in bin/name.py |
{wildcards.sample} | for sample in samples: loop |
expand(...) | Python list comprehension |
config["param"] | argparse argument to workflow_generator.py |
conda: "env.yaml" | Dockerfile with same packages |
threads: N | .add_pegasus_profile(cores=N) |
resources: mem_mb=N | .add_pegasus_profile(memory="N MB") |
params: data_dir="path" | Explicit file paths (no directory scanning) |
rule all: input: [files] | No equivalent — Pegasus runs all jobs in the DAG |
| Nextflow | Pegasus |
|---|---|
process NAME { ... } | Transformation + Job + wrapper script |
input: path(x) from ch | job.add_inputs(File(x)) |
output: path("*.txt") into ch | job.add_outputs(File("name.txt")) — must be explicit, not glob |
script: """cmd""" | Wrapper script in bin/name.py |
| Channel operations | Python loops and list operations |
params.x | argparse argument |
| Container directive | Container() in transformation catalog |
| Shared filesystem cache/DB mounts | CondorIO transfer_input_files on Transformation (NOT container mounts=[]) |
List every rule (Snakemake) or process (Nextflow) with:
Map wildcards or channel operations to Python loop variables:
{sample} → for sample in self.samples:{region} → for region in args.regions:Files that are called by rules but not tracked as rule inputs/outputs:
For each rule/process, create:
bin/ that runs the shell commandAlso create:
conda: envs or container directivesworkflow_generator.py assembling all pieces togetherREADME.md documenting the converted workflowFrom references/PEGASUS.md "Common Conversion Pitfalls":
Rscript {input.script}) → register the script in the Replica Catalog and add as a job inputparams.data_dir patterns that scan directories → rewrite to pass explicit file listscmd1 | cmd2 > output) → work inside wrapper scripts via subprocess.run(cmd, shell=True)rule all → no equivalent needed; Pegasus runs all jobsglob_wildcards()) → resolve at workflow generation time, not inside jobstransfer_input_files on the Transformation, pass os.path.basename() to wrapper scripts. Do NOT use container mounts=[]. See Pegasus.md "Transferring Data Directories via CondorIO".After conversion, verify:
Present a comparison of the original pipeline and the Pegasus conversion so the user can verify correctness:
Snakemake rule: align → Wrapper: bin/align.py
input: "{sample}.fq.gz" → --input {sample}.fq.gz
output: "{sample}.bam" → --output {sample}.bam
shell: "bwa mem ..." → subprocess.run(["bwa", "mem", ...])
threads: 4 → .add_pegasus_profile(cores=4)