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SJM
Simple Job Managerloom
A tool for running bioinformatics workflows locally or in the cloud.HugeSeq
For original Nature Biotechnology Publication (Q1 2012)mvp_aaa_codelabs
Queries to perform qc and analysis on genomes in BigQueryHummingbird
Hummingbird: Efficient Performance Prediction for Executing Genomic Applications in the Cloud: https://doi.org/10.1093/bioinformatics/btab161personal-health-dashboard
wearable-infection
Real-time detection of infection diseases using wearablesbigquery-genomics-qc
Genomics QC pipelinestanford-benchmarking-workflows
trellis-mvp-functions
Trellis serverless data management framework for variant calling of VA MVP whole-genome sequencing data.AnnotationHive
AnnotationHive: A Cloud-based Annotation EngineJsonWf
A JSON workflow frameworkSwarm
Swarm: A Federated Cloud Framework for Large-scale Variant Analysis: https://doi.org/10.1371/journal.pcbi.1008977encode_utils
Tools that are useful to any ENCODE submitting group.googva
pulsar_lims
A LIMS for ENCODE submitting labs.Scoring
Scoringgene_coverage
Calculates gene-level breadth-of-coverage at several depth-of-coverage thresholds.env-modules
Environment moduleshealthkit-exporter
Exports HealthKit data to flat files.trellis-mvp-analysis
Jupyter notebooks for analyzing $5 GATK (GATK-MVP) invoked in the Trellis Data management system using Neo4J graph DB and Google Cloudhmp2lims
Project 3: Prediabetes Type 2 diabetes mellitus (T2D) is a significant health problem facing our nation. Close to 20 million individuals in the United States have T2D, and 79 million aged 20 years or older are clinically pre-diabetic, with a 5-year conversion rate of 10% to 23% from prediabetes to T2D. In a collaborative effort to systematically understand diabetes and its etiology, the team is comprised of leading experts in research on both the human host as well as the microbiome, as properties of both are likely relevant in T2D development. For a better elucidation of mechanisms of onset and progression of T2D disease, the group is performing a detailed analysis of the biological processes that occur in the microbiome and human host by longitudinal profiling of patients at risk for T2D. Both microbiome and host profiles are being analyzed by state-of-the-art omics platforms, and these large-scale and diverse data sets will be integrated to determine the dynamic pathways that change during the onset and progression of T2D, especially during viral infections and other stresses. This longitudinal study is expected to reveal changes in the microbiome and host at an unprecedented level of detail, and identify molecules and pathways that play important roles in diabetes onset and progression.DEFUNCT-env-modules
trjread-source
Source files for DNAnexus appletsgcp_utils
Scripts to manage access to the Google Cloud Platformtrellis-mvp-api
Specifications for creating APIs to interact with the Trellis Neo4j metadata storequalia
Scripts for preparation and processing of exome data from Claritaspubble
effective-practices
Documentation of effective practices used in the Stanford Center for Genomics& Personalized Medicine.StanfordDeepMedicine
trellis-docs
Read the Docs source for Trellis data management frameworktrellis-mvp-terraform
Trellis MVP Terraform configurationscoverage_stats
Post-processing of GATK DepthOfCoverage output to gather genelist-specific stats and other metrics.trellis-mvp-gatk
GATK with five-dollar-genome-analysis-pipeline on GCP for MVPLove Open Source and this site? Check out how you can help us