task
GitHub用于追踪开发任务全生命周期进度的工具。记录阶段、进度、下一步、阻碍及验证证据。支持创建任务、更新状态、关联代理身份,强调非并行操作与检查点式更新,确保数据一致性。
Trigger Scenarios
Install
npx skills add codeaholicguy/ai-devkit --skill task -g -y
SKILL.md
Frontmatter
{
"name": "task",
"description": "AI DevKit · Track dev-lifecycle \/ structured-debug progress on a durable task with the ai-devkit task CLI. Use to record phase, progress, next step, blockers, and validation evidence."
}
Task Progress Tracking
Record development progress on a durable task: phase, progress, next step, blockers, and validation evidence.
Requires the optional task command. Use npx ai-devkit@latest for task and
agent commands. Before recording task events, run a real read probe:
npx ai-devkit@latest task list --json
# or, when a task name is known:
npx ai-devkit@latest task list --name <task-name> --json
Only treat task tracing as available when the read probe exits 0. If it fails, continue without task logging and include the failed command plus stderr/stdout summary in the final report. Do not block the user's work just because optional task tracing is unavailable or unusable.
Core idea
- One task per work item. Create it once; advance its
phasefield as work moves through the lifecycle or debug workflow. <id>can be a task name. Every command below accepts the task name in place of a task id, resolving to the latest non-terminal task. Prefer<task-name>so agents do not track task ids.- Choose stable names. For lifecycle work, use the feature key as the task name. For debugging or review work, choose a short kebab-case task name.
- Emit at checkpoints, not streaming. Phase transitions, task toggles, immediate next-step changes, fresh evidence, blockers discovered/resolved. A handful of calls per session.
- Sequence mutations. Never run task mutation commands in parallel for the
same task. Each mutation reads the current task snapshot and writes it back;
parallel writes can clobber snapshot fields even though events append. Run
create/assign/phase/next/progress/evidence/blocker/artifact/close commands
one at a time, then read back with
show --events --jsonwhen the final state matters. - Attribution is explicit. Identify self once, then pass actor flags on mutation commands.
Identify self
Use agent-management when attribution is needed:
- Run the
agent-managementself-identification workflow withnpx ai-devkit@latest agent list --json. - Match the current agent entry from that list. Prefer an exact session match when available; otherwise use the unambiguous entry for the current project/worktree.
- Build actor flags from the matched entry:
--agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId>. Map JSON fields directly:name->--agent,type->--agent-type,pid->--pid, andsessionId->--session. - If identity is ambiguous, do not guess. Continue task logging without actor flags rather than fabricating attribution.
- Add
--agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId>to every mutation command once known. If a task already exists, runnpx ai-devkit@latest task assign <task-name> --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --jsononce so the task snapshot has current ownership. - If actor identity is unknown, run the same mutation commands without the four actor flags.
Canonical commands
When self identity is known, add all four actor flags to every mutation command:
--agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId>.
# Create the task once (capture taskId from --json if needed)
npx ai-devkit@latest task create --title "<title>" --name <task-name> --phase requirements --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# If the task already exists, assign current ownership once when known
npx ai-devkit@latest task assign <task-name> --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Mark real work as active after create/resume
npx ai-devkit@latest task status <task-name> active --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Advance phase as the lifecycle moves on
npx ai-devkit@latest task phase <task-name> implementation --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Progress (use --text; positional text is ignored)
npx ai-devkit@latest task progress <task-name> --text "Implementing task CLI" --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Next step
npx ai-devkit@latest task next <task-name> "Run validation" --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Blockers
npx ai-devkit@latest task status <task-name> blocked --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
npx ai-devkit@latest task blocker <task-name> add "Waiting for review" --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
npx ai-devkit@latest task blocker <task-name> resolve <blocker-id> --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
npx ai-devkit@latest task status <task-name> active --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Validation evidence - record after a fresh verify/tdd/test run
npx ai-devkit@latest task evidence <task-name> --passed --command "npm test" --exit-code 0 --summary "tests passed" --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Reference an artifact (never copies the file)
npx ai-devkit@latest task artifact <task-name> docs/ai/testing/foo.md --kind test-report --description "Testing notes" --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
# Read current status / list
npx ai-devkit@latest task show <task-name> --json
npx ai-devkit@latest task list --name <task-name> --json
# Close at lifecycle end
npx ai-devkit@latest task close <task-name> completed --agent <agent-name> --agent-type <agent-type> --pid <pid> --session <sessionId> --json
When to emit (by workflow)
- dev-lifecycle - real read probe first;
createat start when no non-terminal task exists for the feature;assignonce when actor is known; setstatus activewhen real work starts or resumes;phaseon every phase transition;nextafter phase planning;progressafter planning/implementation task toggles;showat resume;close completedonly after final verification/review is done. - verify / tdd / dev-testing -
evidenceafter fresh proof (this is what makes "last validation" trustworthy). Use--failedwhen it fails. - structured-debug - reuse the same commands:
evidencefor repro results,nextfor the next hypothesis,blocker add/resolve,progress. - Any phase -
blocker addwhen blocked,resolvewhen clear;nextto state the immediate next step. Setstatus blockedwhen an open blocker stops progress, and setstatus activeagain after the blocker is resolved.
Tips
- Add
--jsonwhen an agent must parse output (create/show/list). Omit for human-readable checks. - Don't restate obvious nearby files or transient state; keep summaries short.
- Good task records let a later reader answer: who worked on it, which phase it reached, what changed, what is next, what verified the claim, and what blocked or changed scope. Do not log every command; do log those checkpoints.
Version History
- d4caf56 Current 2026-07-05 15:23


