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    What is Agentic Engineering Intelligence?

    Agentic Engineering Intelligence measures the combined work of human engineers and their AI agents — capturing where time actually goes (real coding versus config), every agent run and token cost, at the source, across all repos, and tying it to shipped output — so organisations can see what their AI-assisted engineering produces and what it costs.

    Work layer map

    How agentic engineering becomes measurable.

    1SessionA continuous window of engineering activity
    2Work BlocksProject-attributed units inside the session
    3Time SliceCoding, config, review, and debug across blocks
    4Agents + tokensRuns, cost, and contribution captured per block
    5Shipped outputWork tied back to repos, features, and delivery

    Why now

    Software is no longer shipped by humans alone. Agent runs, token costs, orchestration time, and config toil are now part of engineering output.

    Different from Git analytics

    Git-based analytics read artifacts after they land. Agentic Engineering Intelligence captures the work session before, during, and around the commit.

    Different from token counters

    Token counters show spend. Agentic Engineering Intelligence shows what the spend produced, what human time it required, and whether leverage improved.

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    The work layer beneath the artifact.

    A practical category for teams that need to understand humans, agents, costs, and shipped output together.

    Work Block

    The project-attributed unit inside a session: which client, repo, feature, or task the work belongs to before Time Slice analyses it.

    Time Slice

    The analytical layer over Work Blocks: coding vs config, plumbing, review, and debug separated at the source instead of guessed from commits.

    Work-session capture

    The source layer: IDE, terminal, browser, Mac app, and agent sessions captured while the work happens.

    Multi-agent, multi-repo view

    One picture of concurrent humans and agents across the repos that make up a real product initiative.

    Attribution

    What shipped, who or what helped ship it, and which project or team it belongs to.

    Leverage

    The ratio between human hours invested and total shipped output from humans plus agents.

    Token economics

    Token cost by project, session, and agent tied to output rather than viewed as a disconnected bill.

    Privacy-first

    Metadata-level capture designed to measure work without screenshots, keystrokes, or surveillance.

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    One work layer, three launch funnels.

    Developers prove their leverage. Teams measure the org. Agencies make human and agent work billable.

    For Developers

    See your real day to the minute — coding vs config, agents, repos. Prove your leverage.

    Open page

    For Teams

    Measure the real work your org ships across humans and agents — the part Git can't see.

    Open page

    For Agencies

    Make multi-developer, agent-assisted client work billable and defensible.

    Open page
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    Category FAQ

    The short answers for teams comparing Git analytics, token counters, and agent observability.