{
  "@context": "https://schema.org",
  "@type": "Dataset",
  "name": "Application Deployment Metadata",
  "description": "Structured metadata for applications, users, and projects deployed on the SciLifeLab Serve platform (https://serve.scilifelab.se/).",
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      "name": "KISSE",
      "description": "KISSE is a species search engine that utilizes collagen sequences from eight different species to identify unknown samples.",
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      "softwareVersion": "ghcr.io/scilifelabdatacentre/serve-charts/shinyproxy:1.4.5",
      "author": {
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      "applicationCategory": "Cloud Application",
      "operatingSystem": "Kubernetes",
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        {
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