Designs multi-agent AI workflows for product managers, breaking complex tasks into parallel specialized agents with clear handoffs and monitoring.
How this skill is triggered — by the user, by Claude, or both
Slash command
/product-manager-skills:agent-orchestration-advisor [workflow or task to orchestrate][workflow or task to orchestrate]The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Guide product managers through designing **multi-agent workflows**—breaking complex, repetitive PM tasks into parallel, specialized AI agents rather than linear, sequential processes or manual execution. Use this to transition from "document-heavy administrator" to "systems-level orchestrator" who coordinates a "living system" of AI agents, human teams, and market data interacting continuously.
Guide product managers through designing multi-agent workflows—breaking complex, repetitive PM tasks into parallel, specialized AI agents rather than linear, sequential processes or manual execution. Use this to transition from "document-heavy administrator" to "systems-level orchestrator" who coordinates a "living system" of AI agents, human teams, and market data interacting continuously.
Key Shift: From linear project management (one task at a time) to orchestration (multiple agents working simultaneously, each with clear boundaries and handoffs).
This is not about prompt writing—it's about architecting workflows where AI agents handle repetitive research, synthesis, and validation while PMs focus on strategy and decision-making.
Works best with: The workflow or recurring task you want to orchestrate — described in a sentence or two, however manual or messy it is today. Also useful: Where it breaks down now (too slow, too sequential, too dependent on you), the tools your team already uses, and whether you've worked through context-engineering-advisor first (it's the prerequisite discipline).
Anything supplied with the invocation itself — text after the skill name, a pasted context dump, or an appended ARGUMENTS: line — counts as answers already given. Use it and skip whatever it covers; don't re-ask.
Arriving empty-handed? That works too. The advisor opens by asking which PM workflow eats the most of your week, then walks the four orchestration dimensions against it.
Example invocation: Design an orchestration for our weekly competitive intel: today one PM spends 6 hours scraping, summarizing, and briefing — sequentially.
| Dimension | Project Management | Orchestration |
|---|---|---|
| Approach | Linear oversight of schedules and human tasks | Managing "living system" where AI agents, humans, and data interact continuously |
| Task Flow | Sequential (finish A, then B, then C) | Parallel (A, B, C run simultaneously) |
| PM Role | Document-heavy administrator | Systems-level leader coordinating automated systems + human judgment |
| Focus | Output (features shipped) | Outcome (business results, learning velocity) |
| Risk Management | Manual tracking and mitigation | Real-time monitoring with agentic systems flagging gaps |
Critical Insight: Orchestration is not about replacing humans—it's about force-multiplying human judgment by automating repetitive, time-consuming tasks.
Breaking complex tasks into specialized agents that run in parallel.
Example:
Key Principle: Shift from manual selection to hypothesis orchestration—agents generate hypotheses, PM validates and decides.
Governing diverse teams (data scientists, ML engineers, compliance, ethicists) to ensure solutions are scalable, ethical, and aligned.
What it includes:
PM Role: Guardian of Governance—ensures AI systems reflect company values.
Real-time monitoring of organizational readiness across functions using agentic systems to flag gaps before critical failures.
What it monitors:
Key Principle: Agentic systems act as early warning system—flag gaps before they become blockers.
Feeding AI agents the correct mix of mission, constraints, and priorities to ensure automated decisions reflect company values.
Connection: This is context engineering at the orchestration layer. See context-engineering-advisor for foundations.
What agents need:
Every PM must master these workflows to move fast while staying grounded:
Context Engineering ✅ (Foundation)
context-engineering-advisorSynthetic Evals 📋 (Quality Assurance)
Agentic Workflows ← We're here
Vibe Coding 📋 (Rapid Prototyping)
pol-probe-advisor (Vibe-Coded PoL Probes)What makes a problem "AI-shaped"?
Key Insight: "While AI makes building easier, choosing what to build remains the primary challenge." Orchestration helps with the "building" part so PMs can focus on "choosing."
The orchestrator manages these risks across the organization:
| Risk | Standard Definition | AI Era Layer | Orchestrator's Role |
|---|---|---|---|
| Value Risk | Will customers pay? | Does AI provide enough incremental benefit vs. cost? | Validate value with PoL probes before orchestrating |
| Usability Risk | Can users figure it out? | Is the UX right? (Chat often isn't!) | Test workflows with real users |
| Feasibility Risk | Can we build it? | Do we understand "physics of AI"? Token budget? | Design within technical constraints |
| Viability Risk | Can we sell/support? | Legal limits? Data privacy? Sustainable OpEx? | Monitor costs, compliance, scalability |
✅ Use this when:
❌ Don't use this when:
context-engineering-advisor)This interactive skill uses adaptive questioning to design multi-agent workflows step-by-step.
Agent asks:
Before we design your orchestrated workflow, let's gather context:
Current PM Work:
Desired Outcome:
Technical Context:
context-engineering-advisor)You can describe briefly or paste examples.
Agent asks:
Let's determine if your task is suited for orchestration. Which statement best describes your situation?
Select one:
"I spend 10+ hours per week on repetitive research/synthesis tasks"
"I have a task that requires multiple sequential steps, and each step is time-consuming"
"I need consistency at scale—analyzing many similar items"
"I have a task that's mostly human judgment and empathy"
User response: [Selection]
Agent analyzes:
Based on your selection:
Agent asks:
Let's break your task into discrete subtasks, each handled by a specialized agent.
For the task you selected, what are the distinct steps?
Example Decomposition (Competitive Intelligence):
Manual Process (Old):
Orchestrated Process (New):
Agent offers:
I'll help you decompose your task. Describe your current process step-by-step, and I'll identify:
User response: [Describe process]
Agent provides: Decomposed workflow with agent assignments.
Agent asks:
Now let's design the workflow topology—which agents run in parallel vs. sequentially.
Three Flow Patterns:
Pattern 1: Full Parallel (Fastest)
[Agent A] ─┐
[Agent B] ─┼─→ [PM Review] → [Decision]
[Agent C] ─┘
Pattern 2: Pipeline (Sequential with Handoffs)
[Agent A] → [Agent B] → [Agent C] → [PM Review] → [Decision]
Pattern 3: Hybrid (Parallel + Sequential)
[Agent A] ─┐
[Agent B] ─┼─→ [Agent D] → [Agent E] → [PM Review] → [Decision]
[Agent C] ─┘
For your task, which pattern fits best?
Options:
User response: [Selection]
Agent provides: Visual workflow diagram with agent dependencies.
Agent asks:
Now let's define what each agent knows (context boundaries) and how agents hand off to each other.
For each agent, define:
Example (Competitive Intelligence Orchestration):
Agent A: Competitor Research Agent
{competitor, features[], last_updated}Agent D: Synthesis Agent
Agent offers:
I'll help you define boundaries for each agent. For your workflow, let's define:
User response: [Describe agent needs]
Agent provides: Complete agent boundary definitions + handoff specifications.
Agent asks:
To prevent agents from "going rogue," we need to feed them the correct mix of mission, constraints, and priorities.
Strategic Intent Checklist (Per Agent):
Mission: What is this agent's primary goal?
Constraints: What must the agent NOT do?
Priorities: If the agent must choose, what matters most?
Evidence Standards: What counts as valid information?
Connection: This is context engineering applied to orchestration. See context-engineering-advisor for deeper guidance.
Agent offers:
For each agent in your workflow, let's define:
User response: [Define strategic intent per agent]
Agent provides: Strategic intent document for each agent.
Agent asks:
The Launch Control Tower provides real-time monitoring to flag gaps before they become critical failures.
What to Monitor (Three Dimensions):
1. Agent Performance:
2. Organizational Readiness (If Launching a Feature):
3. Risk Flags:
Monitoring Approach:
Option 1: Manual Dashboard
Option 2: Automated Monitoring
Option 3: Hybrid
Which monitoring approach fits your team's maturity?
Options:
User response: [Selection]
Agent provides: Monitoring plan with specific metrics and alert thresholds.
Agent asks:
To ensure orchestrated workflows produce high-quality outputs, we need an evaluation framework.
The Four Eval Types (From Research):
| Eval Type | Method | When to Use |
|---|---|---|
| Golden Datasets | 20-100 examples of real inputs + expected outputs | Baseline quality measurement |
| Code Assertions | Rules output must follow (e.g., must contain valid JSON) | Structural validation |
| LLM-as-Judge | Powerful model (GPT-4o) grades agent output | Rapid automated feedback |
| Human Evals | PM manually reviews traces | Ultimate check for "taste" and "product sense" |
Evaluation Process:
For your workflow, which evals make sense?
Options:
User response: [Selection]
Agent provides: Evaluation plan with specific eval types, frequencies, and success criteria.
Agent synthesizes:
Here's your complete orchestrated workflow plan:
┌─────────────────────────────────────────────────────────────┐
│ ORCHESTRATED WORKFLOW: [Your Task Name] │
├─────────────────────────────────────────────────────────────┤
│ │
│ TOPOLOGY: [Full Parallel / Pipeline / Hybrid] │
│ │
│ AGENTS: │
│ • Agent A: [Name] - [Purpose] │
│ • Agent B: [Name] - [Purpose] │
│ • Agent C: [Name] - [Purpose] │
│ │
│ FLOW: │
│ [Agent A] ─┐ │
│ [Agent B] ─┼─→ [Agent D] → [PM Review] → [Decision] │
│ [Agent C] ─┘ │
│ │
│ CONTEXT BOUNDARIES: │
│ • Always-available: [List] │
│ • Retrieved on-demand: [List] │
│ │
│ STRATEGIC INTENT: │
│ • Mission: [Per agent] │
│ • Constraints: [Per agent] │
│ • Priorities: [Per agent] │
│ │
│ MONITORING: │
│ • Approach: [Manual / Automated / Hybrid] │
│ • Metrics: [List] │
│ • Alert thresholds: [List] │
│ │
│ EVALUATION: │
│ • Golden Datasets: [Y/N] │
│ • Code Assertions: [Y/N] │
│ • Human Evals: [Frequency] │
│ │
│ TIME SAVINGS: │
│ • Manual (old): [X hours] │
│ • Orchestrated (new): [Y hours] │
│ • Savings: [X-Y hours per week] │
└─────────────────────────────────────────────────────────────┘
Implementation Roadmap:
Week 1: Build Context Foundations
context-engineering-advisorWeek 2: Implement First Agent
Week 3: Add Remaining Agents
Week 4: Set Up Monitoring & Evals
Week 5+: Iterate & Scale
Success Criteria:
Agent offers:
Would you like me to:
Context:
Goal: Reduce to 6 hours with orchestrated workflow
Workflow Design:
Agents:
Topology: Hybrid (A, B, C in parallel → D → E → PM Review)
Strategic Intent:
Monitoring:
Evaluation:
Result:
Context:
Goal: Reduce to 2 hours with orchestrated workflow
Workflow Design:
Agents:
Topology: Pipeline (A → B → C → D → E → F → PM Review)
Strategic Intent:
Monitoring:
Evaluation:
Result:
Context:
Goal: Reduce to 5 hours with orchestrated workflow
Workflow Design:
Agents:
Topology: Full Parallel (A, B, C, D run simultaneously → E → PM Review)
Strategic Intent:
Monitoring:
Evaluation:
Result:
Failure Mode: Building agent workflows without context foundations (constraints, glossary, evidence standards).
Consequence: Agents produce inconsistent outputs, violate constraints, hallucinate.
Fix: Complete context-engineering-advisor first. Build constraints registry, operational glossary, strategic intent documents.
Failure Mode: Creating complex multi-agent workflows for tasks that take <2 hours per week.
Consequence: Orchestration overhead (setup, monitoring, maintenance) exceeds time saved.
Fix: Only orchestrate tasks that take 5+ hours per week or require consistency at scale.
Failure Mode: "Set it and forget it"—agents run without quality checks.
Consequence: Quality drift over time, unnoticed hallucinations, constraint violations.
Fix: Implement Golden Datasets + weekly Human Evals at minimum. Build failure mode taxonomy, create automated evals.
Failure Mode: Assuming agents will correctly pass data to each other without testing.
Consequence: Agent B receives malformed data from Agent A, produces garbage output.
Fix: Test handoffs explicitly. Validate data format at each handoff. Use Code Assertions to enforce structure.
Failure Mode: Treating orchestrated workflows as fully autonomous—no human oversight.
Consequence: Agents make decisions that lack context, empathy, or strategic alignment.
Fix: Always include PM Review step. Agents generate hypotheses/recommendations; PM validates and decides.
2plugins reuse this skill
First indexed Jul 4, 2026
npx claudepluginhub deanpeters/product-manager-skills --plugin vp-cpo-readiness-advisorOrchestrates multi-agent workflows with parallel pipelines, sync barriers, state tracking, checkpointing, and progress metrics. Use for coordinating 3+ agents across sessions.
Generates a phased delivery orchestration plan for creative-direction projects: phases, gates, lock points, handoffs, QA verification, and tool-specific implementation (Jira, Linear, Notion, Figma, GitHub).
Analyzes user tasks to recommend and execute optimal agent orchestration patterns: Sequential Pipeline, Parallel Subagent, Team Mode, Ralph Loop. For complex multi-step tasks or /agent-orchestrate invocation.