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agentic-engineering

by @affaan-mv
4.4(20)

Applies agentic engineering methods, using an "evaluate-first" execution strategy, to optimize AI system development processes and enhance model performance and reliability.

ai-agent-designmulti-agent-systemsautonomous-systemsagent-orchestrationllm-powered-agentsGitHub
Installation
npx skills add affaan-m/everything-claude-code --skill agentic-engineering
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Before / After Comparison

1
Before

Traditional engineering methods are inefficient in complex AI tasks, lacking systematic evaluation, decomposition, and coordination mechanisms, making rapid iteration and optimization difficult.

After

Adopting Agentic engineering methods, through prioritized evaluation, task decomposition, and coordination, significantly boosts the development efficiency and solution quality of complex AI tasks.

SKILL.md

Agentic Engineering

Use this skill for engineering workflows where AI agents perform most implementation work and humans enforce quality and risk controls.

Operating Principles

  1. Define completion criteria before execution.
  2. Decompose work into agent-sized units.
  3. Route model tiers by task complexity.
  4. Measure with evals and regression checks.

Eval-First Loop

  1. Define capability eval and regression eval.
  2. Run baseline and capture failure signatures.
  3. Execute implementation.
  4. Re-run evals and compare deltas.

Task Decomposition

Apply the 15-minute unit rule:

  • each unit should be independently verifiable
  • each unit should have a single dominant risk
  • each unit should expose a clear done condition

Model Routing

  • Haiku: classification, boilerplate transforms, narrow edits
  • Sonnet: implementation and refactors
  • Opus: architecture, root-cause analysis, multi-file invariants

Session Strategy

  • Continue session for closely-coupled units.
  • Start fresh session after major phase transitions.
  • Compact after milestone completion, not during active debugging.

Review Focus for AI-Generated Code

Prioritize:

  • invariants and edge cases
  • error boundaries
  • security and auth assumptions
  • hidden coupling and rollout risk

Do not waste review cycles on style-only disagreements when automated format/lint already enforce style.

Cost Discipline

Track per task:

  • model
  • token estimate
  • retries
  • wall-clock time
  • success/failure

Escalate model tier only when lower tier fails with a clear reasoning gap.

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Installs4.3K
Rating4.4 / 5.0
Version
Updated2026年5月23日
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Compatible Platforms

🔧Claude Code
🔧OpenClaw
🔧OpenCode
🔧Codex
🔧Gemini CLI
🔧GitHub Copilot
🔧Amp
🔧Kimi CLI

Timeline

Created2026年3月16日
Last Updated2026年5月23日