I tracked how JIRA tickets moved across my development team to understand collaboration patterns and identify bottlenecks. This animated force-directed graph shows tickets clustering by assignee, with lines connecting blocking dependencies between team members.

    Key insights emerged:

    • Certain team members became critical bottlenecks as their work blocked multiple teammates
    • One developer's bandwidth visibly "squeezed" over time as their average task criticality score increased
    • Cross-team blocking relationships created unexpected workflow friction

    The visualization uses:

    • Left panel: Force-directed physics simulation where tickets gravitate toward their assignee's focus point. Opacity indicates ticket age (older = more transparent). Red circles show blocking tickets, orange shows blocked tickets.
    • Right panel: Timeline showing each team member's average task criticality score throughout the period. I came up with an arbitrary quantification for the ticket priority so that I could build a line graph.

    You can scroll through time to see how the team's workload and dependencies evolved day by day.

    Data source: Internal JIRA API export (anonymized)
    Tools: D3.js for force simulation and canvas rendering, React for UI components, Recharts for timeline visualization . I did really heavily on prompt engineering to build this. I couldn't have done this without chatgpt and lovable. I did wrangle the data using Python to get it into a consumable format.

    source: https://abzgupta.com/project_demos/jira_visualization.html



    by espress0_addict

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