Agentic Engineering Workflow is a ai-agents claude skill built by Affaan M. Best for: Engineering teams use this to delegate implementation to AI agents while maintaining quality controls through evals and human oversight..

What it does
Operate AI agents with eval-first execution, task decomposition, and cost-aware model routing for engineering workflows.
Category
ai-agents
Created by
Affaan M
Last updated
Claude Skillai-agents GitHub-backed CuratedadvancedClaude Code

Agentic Engineering Workflow

Operate AI agents with eval-first execution, task decomposition, and cost-aware model routing for engineering workflows.

Skill instructions


name: agentic-engineering description: Operate as an agentic engineer using eval-first execution, decomposition, and cost-aware model routing. origin: ECC

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.

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/agentic-engineering-workflow && curl -L "https://raw.githubusercontent.com/affaan-m/everything-claude-code/HEAD/skills/agentic-engineering/SKILL.md" -o ~/.claude/skills/agentic-engineering-workflow/SKILL.md

Installs to ~/.claude/skills/agentic-engineering-workflow/SKILL.md.

Use cases

Engineering teams use this to delegate implementation to AI agents while maintaining quality controls through evals and human oversight.

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Stats

Installs0
GitHub Stars174.9k
Forks27058
LicenseMIT
UpdatedMar 27, 2026