Agent skill

agent-first-product-strategy

Reframe AI product and SaaS strategy from human-user assumptions to agent-first execution. Use when redefining product positioning, success metrics, API/docs priorities, go-to-market, or roadmap decisions for an AI-native market where agents are primary software users.

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npx add-skill https://github.com/hexbee/hello-skills/tree/main/skills/agent-first-product-strategy

SKILL.md

Agent-First Product Strategy

Overview

Use this skill to turn high-level AI-era ideas into concrete product strategy, metric design, and execution choices.

Workflow

  1. Identify old-paradigm assumptions in the current plan.
  2. Reframe target user and value unit for agent-first operation.
  3. Redesign product surface around API, protocol, and documentation quality.
  4. Replace vanity metrics with outcome and reliability metrics.
  5. Propose phased execution with explicit tradeoffs.

Step 1: Find Old-Map Assumptions

Audit the current strategy for these legacy assumptions:

  • DAU as primary growth signal.
  • tool -> community -> platform as default path to defensibility.
  • Human-first UX as the dominant moat.
  • Attention-time capture as monetization logic.
  • "overseas expansion" as localization-first growth logic.

If any assumption exists, mark it as a risk and quantify impact on cost, speed, or defensibility.

Step 2: Reframe to Agent-First

Define strategy with these agent-era premises:

  • Primary user can be Agent, not only human operators.
  • Core value is outcome delivery efficiency (time-to-outcome and quality), not time spent.
  • Product may be better positioned as capability infrastructure rather than consumer app.
  • Distribution can be agent discoverability + machine-usable docs, not only human marketing funnels.

Return a one-line reframing statement:

We help <agent/human+agent segment> achieve <outcome> via <capability/API>, optimized for <speed/reliability/cost>.

Step 3: Define Product Surface

Prioritize product work in this order:

  1. API clarity and stability (auth, schema consistency, error model).
  2. Documentation quality (machine-readable examples, clear contracts, rate limits, versioning).
  3. Protocol interoperability (standard interfaces, predictable retries, idempotency).
  4. Reliability layer (latency, success rate, graceful degradation, observability).
  5. Human UI as a control surface, not the only surface.

When tradeoffs are hard, prefer decisions that improve repeatable agent invocation quality.

Step 4: Replace Metrics

Convert success metrics from attention-era to productivity-era:

  • Replace DAU/time spent with task completion rate, unit outcome cost, and end-to-end delivery time.
  • Track API success rate, P95 latency, agent repeat-call ratio.
  • Track first-call success (agent can integrate correctly on first attempt).
  • Track integration lead time (from docs read to first production call).

Read references/agent-first-metrics.md to choose metric formulas and guardrails.

Step 5: Build Execution Plan

Produce a phased plan:

  1. 0-30 days: fix integration blockers, tighten API contract, publish minimal docs set.
  2. 31-90 days: improve reliability/SLOs, ship agent onboarding examples, cut integration time.
  3. 90+ days: optimize cost-performance frontier, deepen protocol ecosystem, create domain moats.

For each phase include:

  • Goal
  • Top 3 actions
  • Metric target
  • Major risk and mitigation

Output Format

When responding, output in this structure:

  1. Current assumptions detected
  2. Agent-first reframing statement
  3. Product surface priorities
  4. Metric redesign table
  5. 30/90/+ day plan
  6. Top unresolved strategic question

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