Explore Workflows

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Graph Name Retrieved From View
workflow graph align_sort_sa

https://github.com/ncbi/pgap.git

Path: task_types/tt_align_sort_sa.cwl

Branch/Commit ID: f1eb0f4eaaf1661044f28d859f7e8d4302525ead

workflow graph umi molecular alignment workflow

https://github.com/genome/analysis-workflows.git

Path: definitions/subworkflows/molecular_qc.cwl

Branch/Commit ID: 480c438a6a7e78c624712aec01bc4214d2bc179c

workflow graph realignment.cwl

https://github.com/mskcc/argos-cwl.git

Path: modules/pair/realignment.cwl

Branch/Commit ID: 46eddf1e191352cad5e95dd3c24eeae3738da485

workflow graph mk_coverage_QC_from_bed.cwl

https://github.com/YinanWang16/tso500-ctdna-post-processing.git

Path: cwl/workflows/mk_coverage_QC_from_bed.cwl

Branch/Commit ID: 6e6a592621de7749e3753cb24daeca073bd0d6e2

workflow graph GSEApy - Gene Set Enrichment Analysis in Python

GSEAPY: Gene Set Enrichment Analysis in Python ============================================== Gene Set Enrichment Analysis is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes). GSEA requires as input an expression dataset, which contains expression profiles for multiple samples. While the software supports multiple input file formats for these datasets, the tab-delimited GCT format is the most common. The first column of the GCT file contains feature identifiers (gene ids or symbols in the case of data derived from RNA-Seq experiments). The second column contains a description of the feature; this column is ignored by GSEA and may be filled with “NA”s. Subsequent columns contain the expression values for each feature, with one sample's expression value per column. It is important to note that there are no hard and fast rules regarding how a GCT file's expression values are derived. The important point is that they are comparable to one another across features within a sample and comparable to one another across samples. Tools such as DESeq2 can be made to produce properly normalized data (normalized counts) which are compatible with GSEA.

https://github.com/datirium/workflows.git

Path: workflows/gseapy.cwl

Branch/Commit ID: 17a4a68b20e0af656e09714c1f39fe761b518686

workflow graph tt_hmmsearch_wnode.cwl

https://github.com/ncbi/pgap.git

Path: task_types/tt_hmmsearch_wnode.cwl

Branch/Commit ID: 3897218b16b30a933beecd60a98a300d677207d8

workflow graph collate_unique_SSU_headers.cwl

https://github.com/EBI-Metagenomics/ebi-metagenomics-cwl.git

Path: tools/collate_unique_SSU_headers.cwl

Branch/Commit ID: 43d2fb8a5430dc56b55e84e3986d0079cad8d185

workflow graph kmer_cache_retrieve

https://github.com/ncbi/pgap.git

Path: task_types/tt_kmer_cache_retrieve.cwl

Branch/Commit ID: f1eb0f4eaaf1661044f28d859f7e8d4302525ead

workflow graph io-any-wf-1.cwl

https://github.com/common-workflow-language/cwl-v1.1.git

Path: tests/io-any-wf-1.cwl

Branch/Commit ID: 368b562a1449e8cd39ae8b7f05926b2bfb9b22df

workflow graph Running cellranger count and lineage inference

https://github.com/genome/analysis-workflows.git

Path: definitions/subworkflows/single_cell_rnaseq.cwl

Branch/Commit ID: 844c10a4466ab39c02e5bfa7a210c195b8efa77a