Anatomy of a ticket
Anatomy of a ticket — EVO
Window: 30d · All 75 · AI 27 · Human 48
AI vs Human comparison
Bars proportional within each row (max = 100%). Δ% lower-is-better — green = AI faster.
Not measurable (one cohort has zero samples):
- ·PR Review Duration — no tickets / PRs measurable in this window
- ·Lead Time for Changes — no tickets / PRs measurable in this window
Cohort breakdown
âš marker when AI or Human cohort sample size is below 10.
| Metric | All p50 | n | AI p50 | n | Human p50 | n | Δ (AI vs Human) |
|---|---|---|---|---|---|---|---|
| Jira Flow Lead Time (raw / wall-clock) | 26.0d | 75 | 169h | 27 | 35.0d | 48 | -80% (AI faster) |
| Lead Time (active, ÷ pauses) | 26.0d | 75 | 169h | 27 | 33.5d | 48 | -79% (AI faster) |
| Time to Ready | 13.7d | 71 | 43h | 23 | 16.9d | 48 | -89% (AI faster) |
| Cycle Time (raw / wall-clock) | 163h | 71 | 147h | 23 | 169h | 48 | -13% (AI faster) |
| Cycle Time (active, ÷ pauses) | 160h | 71 | 147h | 23 | 167h | 48 | -12% (AI faster) |
| Time to First PR | 0.0h | 2 | 0.0h | 1 ⚠| 0.0h | 1 ⚠| — |
| PR Review Duration | — | 0 | — | 0 ⚠| — | 0 ⚠| — |
| Lead Time for Changes | — | 0 | — | 0 ⚠| — | 0 ⚠| — |
All = every measurable ticket / PR in the window. AI = agent-owned cohort (ticket assignee or PR author is an active agent at completion). H = human cohort (everyone else, including unassigned). Δ compares AI vs Human p50 — negative = AI faster.
Side metrics
🧠AI deep analysis
Generate an LLM-driven explanation of WHY the AI cohort is faster / slower on each lane. Cites specific tickets from the evidence pack, suggests next steps.
Active variants use business hours minus pause statuses (same formula as the per-project Cycle / Lead pages). Raw variants are pure wall-clock. AI cohort = ticket assignee (or PR author) is an active agent at completion time. Sample-size suppression marks values directional only when AI or Human cohort drops below 10 — the value is still shown for context but trust it less.