Workflow flavors
In this directory you can find the alternative pre-configurations of GraphClust-2 as flavors tailored for different use-case scenarios.
- Preconfigured flavors of the workflow
- The MotifFinder workflow flavor targets identifying a handful of local signals/motifs under the likely presence of noise and sequence context.
- The pre-configured main workflows perform best for clustering and partitioning a set of RNA sequences with quasi defined structure boundary signals (e.g. ncRNAs or data from genomic screenings with tools such as CMfinder or RNAz screens). Usually up to 3 rounds of clustering, depending on the size of input and classes, would be enough to identify the homologs.
- For large datasets with thousands of sequences, further iterations of clustering can be helpful. The sub-workflow based flavors are recommended for such cases available under extra-workflows/with-subworkflow/
- Auxiliary workflows
- The auxiliary workflows provide alternative ways to cluster genomic data beyond the classic FASTA input.
Configuring the workflows
Please proceed with the interactive tour named GraphClust workflow step by step
, available under Help->Interactive Tours
and also check the references.
An intuitive tutorial highlighting the use-case scenarios and the few parameters that can be adapted according to the scenarios will be provided soon here.