DORA KPIs

 

 

 

 

KPI Name / Definition

Representation

Tool

Maturity Levels

KPI Calculation

On Hover

Remarks

Deployment Frequency

measures how often code is deployed to production

 

Line chart

 

  • Y- Axis - Count

  • X- Axis - Months

  • Aggregation Method - Sum

  • Positive trend indication - Increase

Agile Project Management

 

  • Build Tools

M1: 1

M2: 2-3

M3: 4-5

M4: 6-7

M5: >=8

It is calculated as No. of deployments done on a environment in a month

  • It is calculated as a 'Count'. Higher the count during a month, more valuable it is for the Business or a Project

  • Maturity of the KPI is calculated based on the latest value

Month - <<Count>> 

 

 

Change Failure Rate

measures the proportion of builds (changes) that have failed for whatever reason over a given period of time

Line Graph with single-select filter

  • Y- Axis - Percentage

  • X- Axis - Weeks

  • Aggregation Method - Average

  • Positive trend indication - Decrease

Build

  • Jenkins

  • Bamboo

  • Azure Pipelines

  • Teamcity

M1: >60% 

M2: 45-60%,

M3: 30-45%,

M4: 15-30%,

M5: <15%

Total no. of failed Builds/Total number of Builds

  • It is calculated as a ‘Percentage’. Lower the percentage, better is the ‘Quality’

  • Maturity of the KPI is calculated based on the average of last 5 values that corresponds with the maturity scale

*If the KPI data is not available for last 5 weeks, the Maturity level will not be shown

Date Range: <<Percentage>>

Total number of Changes: <<Value>>

Failed Changes: <<Value>>

 

  1. Multiple jobs can be configured for the same project

Lead time for changes

gauges the speed of software delivery by measuring the duration between a code change and its deployment in production. It provides visibility into the efficiency and effectiveness of the development process.

Line Graph with single-select filter

  • Y- Axis - Days

  • X- Axis - Weeks

  • Aggregation Method - Average

  • Positive trend indication - Decrease

JIRA

Repos

M1: >3 Months 

M2: 1-3 Months,

M3: <1 Month,

M4: < 1 week,

M5: < 1 Day

 

Date Range: <<Lead time in Days>>

 

 

Mean time to Recover (MTTR)

is a metric that measures the average time taken to recover from production incidents. It is calculated based on the production incident tickets raised during a certain period of time.

Line Graph

  • Y- Axis - Hours

  • X- Axis - Weeks

  • Aggregation Method - N/A

  • Positive trend indication - Decrease

JIRA

M1: >1 Week 

M2: 1 day - 1 week,

M3: 12-24 Hours,

M4: 1-12 Hours,

M5: < 1 Hour

  • Mean time to recover will be based on the Production incident tickets raised during a certain period of time

  • For all the production incident tickets raised during a time period, the time between start date and closed date of the incident ticket will be calculated

  • Then the average of all such tickets will be shown

 

  • There will be 3 configurations

    • Issue type to identify Production incidents

    • One field that will allow user to setup either label or custom field

    • DOD field for field for kpi for tracking fixing of production incident, among list of dod status
      whichever is reached first will be taking as completion time.

  • Fields on Overlay

    • Issue ID

    • Issue Type

    • Issue Description

    • Created Date

    • Closed Date

    • Time to Recover (Hrs)

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