Core Engineering Metrics

Where the time actually goes — candidate visualizations on REAL data (same cohort and rules as everywhere). Pick the ones worth showing.

Interactive: click any status (segment, row, legend chip) to highlight it across ALL views — timelines re-rank by time spent in it; click again to clear. Ticket keys open Jira. CFD legend toggles bands.

A · Pipeline — where a ticket's time lives

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One bar = the whole Cycle (work start → done), split by status. Width = share of all cohort time. The widest segment IS the bottleneck. Below — the same statuses ranked: median per visit · total days · share.

Bottleneck: Ready For Review23.8% of all time (Σ 35.7d, waiting). All waiting combined: 27.1%; the work itself (In Progress) — 48.1%.

In Progress
med 0.3d · Σ 72.2d · 48.1%
Ready For Reviewbottleneck
med 0.2d · Σ 35.7d · 23.8%
In Deployment
med 0d · Σ 32.3d · 21.5%
Ready To Merge
med 0d · Σ 5d · 3.3%
CODE REVIEW
med 0d · Σ 3.6d · 2.4%
Selected for Development
med 0d · Σ 1.5d · 1%

B · Flow efficiency — work vs waiting

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TWO views. The big CALENDAR bar: median Active vs median Cycle — Cycle runs on the calendar (weekends and holidays INCLUDED, as the document demands; time after a bounce back to New is subtracted), Active counts working hours only. The PROCESS bar below removes calendar physics: BOTH sides count only the assignee's working hours (weekdays, minus their BambooHR vacations and country holidays, capped per day) — its remainder is pure process queues.

Of the median 1.7d cycle, hands-on work is 0.7d (= 2.1wd): the ticket waits 58.8% of the time.

41.2% hands-on work
58.8% waiting
process efficiency (assignee working hours only) · hands-on 134.7wd of 138wd working time in flow
97.5%
2.5% process queues
where the waiting goes · 105.5d cohort total — TICKET-days of 43 parallel tickets, hence far above the window length
Ready To Merge5d · 4.7%
On Hold0d · 0%
bounce-backs to the queue (New category)1.5d · 1.4%
nights, weekends, vacations and the 8h cap inside active statuses99d · 93.9%

C · Ticket timelines — the last tickets as segments

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Each row = one real completed ticket from work start to done; colored segments = statuses. Long same-color stretches across many rows point at the same stage — that's the bottleneck pattern, outliers included.

Longest single stay here: In Deployment11.8d in ADS-1281. Click a status in the legend to rank tickets by it.

D · Aging WIP — what is stuck right now

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Open tickets that have not moved the longest (days since the last status change). This is the operational view: today's bottleneck, ticket by ticket.

14 in-work tickets without movement > 7d, 9 of them > 30d. Stuck longest: ADS-305297.9d in “In Progress”.

E · Cumulative flow — queues over time

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Tickets in each WORK stage, week by week (backlog and done excluded — they drown the queues that matter). A band that keeps widening is a queue that keeps growing — the classic bottleneck signal and its history.

The fastest-growing queue is Ready For Review: 24 tickets across the window.