{
  "$type": "site.standard.document",
  "bskyPostRef": {
    "cid": "bafyreign3lg52b74q2a45hjhggug7onjyxksajkvewo4uzgdovuwietapu",
    "uri": "at://did:plc:gapzbf5nl5wxaqkqoecaeawh/app.bsky.feed.post/3mmsemln47tw2"
  },
  "coverImage": {
    "$type": "blob",
    "ref": {
      "$link": "bafkreigcfvlu3vrrpfjmlo5tpzeihw7pzcj52s2a7ihfiflevog5bjm3ny"
    },
    "mimeType": "image/jpeg",
    "size": 36308
  },
  "path": "/why-dora-metrics-look-different-when-ai-is-part-of-your-development-workflow/",
  "publishedAt": "2026-05-26T20:02:00.000Z",
  "site": "https://devops.com",
  "tags": [
    "Blogs",
    "Contributed Content",
    "DevSecOps",
    "Observability",
    "Social - Facebook",
    "Social - LinkedIn",
    "Social - X",
    "AI-assisted development",
    "devops",
    "dora metrics",
    "observability",
    "software testing"
  ],
  "textContent": "DORA metrics have been a reliable compass for engineering teams for over a decade. Deployment frequency, lead time for changes, change failure rate, mean time to recovery, and reliability give teams a shared language for talking about delivery performance. The research behind them is solid, the benchmarks are well-established, and most engineering leaders know what […]",
  "title": "Why DORA Metrics Look Different When AI Is Part of Your Development Workflow"
}