AgentHub One-Shot Lifecycle is a ai-agents claude skill built by Alireza Rezvani. Best for: DevOps and ML engineers use this to autonomously optimize code, performance, and test coverage by spawning parallel agents and automatically ranking results..

What it does
Chains init, baseline, spawn, eval, and merge in a single command for autonomous agent workflows.
Category
ai-agents
Created by
Alireza Rezvani
Last updated
Claude Skillai-agents GitHub-backed CuratedadvancedClaude Code

AgentHub One-Shot Lifecycle

Chains init, baseline, spawn, eval, and merge in a single command for autonomous agent workflows.

Skill instructions


name: "run" description: "One-shot lifecycle command that chains init → baseline → spawn → eval → merge in a single invocation." command: /hub:run

/hub:run — One-Shot Lifecycle

Run the full AgentHub lifecycle in one command: initialize, capture baseline, spawn agents, evaluate results, and merge the winner.

Usage

/hub:run --task "Reduce p50 latency" --agents 3 \
  --eval "pytest bench.py --json" --metric p50_ms --direction lower \
  --template optimizer

/hub:run --task "Refactor auth module" --agents 2 --template refactorer

/hub:run --task "Cover untested utils" --agents 3 \
  --eval "pytest --cov=utils --cov-report=json" --metric coverage_pct --direction higher \
  --template test-writer

/hub:run --task "Write 3 email subject lines for spring sale campaign" --agents 3 --judge

Parameters

| Parameter | Required | Description | |-----------|----------|-------------| | --task | Yes | Task description for agents | | --agents | No | Number of parallel agents (default: 3) | | --eval | No | Eval command to measure results (skip for LLM judge mode) | | --metric | No | Metric name to extract from eval output (required if --eval given) | | --direction | No | lower or higher — which direction is better (required if --metric given) | | --template | No | Agent template: optimizer, refactorer, test-writer, bug-fixer |

What It Does

Execute these steps sequentially:

Step 1: Initialize

Run /hub:init with the provided arguments:

python {skill_path}/scripts/hub_init.py \
  --task "{task}" --agents {N} \
  [--eval "{eval_cmd}"] [--metric {metric}] [--direction {direction}]

Display the session ID to the user.

Step 2: Capture Baseline

If --eval was provided:

  1. Run the eval command in the current working directory
  2. Extract the metric value from stdout
  3. Display: Baseline captured: {metric} = {value}
  4. Append baseline: {value} to .agenthub/sessions/{session-id}/config.yaml

If no --eval was provided, skip this step.

Step 3: Spawn Agents

Run /hub:spawn with the session ID.

If --template was provided, use the template dispatch prompt from references/agent-templates.md instead of the default dispatch prompt. Pass the eval command, metric, and baseline to the template variables.

Launch all agents in a single message with multiple Agent tool calls (true parallelism).

Step 4: Wait and Monitor

After spawning, inform the user that agents are running. When all agents complete (Agent tool returns results):

  1. Display a brief summary of each agent's work
  2. Proceed to evaluation

Step 5: Evaluate

Run /hub:eval with the session ID:

  • If --eval was provided: metric-based ranking with result_ranker.py
  • If no --eval: LLM judge mode (coordinator reads diffs and ranks)

If baseline was captured, pass --baseline {value} to result_ranker.py so deltas are shown.

Display the ranked results table.

Step 6: Confirm and Merge

Present the results to the user and ask for confirmation:

Agent-2 is the winner (128ms, -52ms from baseline).
Merge agent-2's branch? [Y/n]

If confirmed, run /hub:merge. If declined, inform the user they can:

  • /hub:merge --agent agent-{N} to pick a different winner
  • /hub:eval --judge to re-evaluate with LLM judge
  • Inspect branches manually

Critical Rules

  • Sequential execution — each step depends on the previous
  • Stop on failure — if any step fails, report the error and stop
  • User confirms merge — never auto-merge without asking
  • Template is optional — without --template, agents use the default dispatch prompt from /hub:spawn

Use this skill

Most skills are portable instruction packages. Claude Code supports SKILL.md directly. Other agents can use adapted files like AGENTS.md, .cursorrules, and GEMINI.md.

Claude Code

Save SKILL.md into your Claude Skills folder, then restart Claude Code.

mkdir -p ~/.claude/skills/agenthub-one-shot-lifecycle && curl -L "https://raw.githubusercontent.com/alirezarezvani/claude-skills/HEAD/engineering/agenthub/skills/run/SKILL.md" -o ~/.claude/skills/agenthub-one-shot-lifecycle/SKILL.md

Installs to ~/.claude/skills/agenthub-one-shot-lifecycle/SKILL.md.

Use cases

DevOps and ML engineers use this to autonomously optimize code, performance, and test coverage by spawning parallel agents and automatically ranking results.

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Stats

Installs0
GitHub Stars11.6k
Forks1507
LicenseMIT
UpdatedMar 27, 2026