Multi-agentProduct Development & LaunchAdvancedFree

Product-Market Fit Assessment System.

4 agents, 4 deliverables.

Take a product idea from strategy to user experience, technical planning, build phases, and launch readiness.

WORKFLOW META
Agents4
Total tokens (avg)~500
Run time12 min
AI toolChatGPT Β· Claude Β· Gemini
Variables4
DifficultyAdvanced
CategoryProduct Development & Launch
SEQUENCE MAP Β· CLICK TO JUMP
Β· 01 Β·
PMF Signal Analyzer
Β· 02 Β·
PMF Gap Diagnostician
Β· 03 Β·
PMF Improvement Strategist
Β· 04 Β·
PMF Tracking System Builder
USE CASE INPUTS

Set the workflow's inputs once.

These variables feed into every agent prompt below. Fill them once, then copy each agent in order.

{{product_name_type}}
Product name type
Product name type
Mega Prompt Library with 3000+ prompts
{{months_since_launch}}
Months since launch
Months since launch
Product-Market Fit Assessment System example context
{{current_active_user_count}}
Current active user count
Current active user count
beginner AI users
{{current_retention_rate}}
Current retention rate
Current retention rate
Product-Market Fit Assessment System example context
THE AGENTS

The 4-step sequence.

01
AGENT Β· PMF SIGNAL

PMF Signal Analyzer

GOAL OF THIS STEP

Assess product-market fit signals across 5 dimensions: (1) Retention (Day 7, Day 30, Day 90 benchmarks by category), (2) NPS score and 'very disappointed' metric (Sean Ellis test β€” target 40%+), (3) Organic growth (what % of new users come from word-of-mouth?), (4) Engagement depth (are users discovering core features?), (5) Revenue signals (expansion revenue, low churn). Score each dimension 1–5 and give an overall PMF verdict: No PMF / Weak PMF / Strong PMF.

EXPECTED OUTPUT

PMF assessment: 5 dimensions scored + evidence for each + overall PMF verdict

agent-01-pmf-signal-analyzer.md
### Input
Product, months since launch, users, retention

### Task
Assess product-market fit signals across 5 dimensions: (1) Retention (Day 7, Day 30, Day 90 benchmarks by category), (2) NPS score and 'very disappointed' metric (Sean Ellis test β€” target 40%+), (3) Organic growth (what % of new users come from word-of-mouth?), (4) Engagement depth (are users discovering core features?), (5) Revenue signals (expansion revenue, low churn). Score each dimension 1–5 and give an overall PMF verdict: No PMF / Weak PMF / Strong PMF.

### Output
PMF assessment: 5 dimensions scored + evidence for each + overall PMF verdict
02
AGENT Β· PMF GAP

PMF Gap Diagnostician

03
AGENT Β· PMF IMPROVEMENT

PMF Improvement Strategist

04
AGENT Β· PMF TRACKING

PMF Tracking System Builder

HOW TO RUN

Three steps. 12 min.

STEP 01

Fill in the variables at the top. Copy them into a note or your tool's context window β€” every agent below uses them.

STEP 02

In your AI tool, paste Agent 1 and run it. Copy the output. Paste Agent 2 with the output appended. Repeat in order for all 4 agents.

STEP 03

At the final agent, review and refine. It outputs your finished deliverable, ready to publish or hand off.

WHAT YOU GET

The final output, end-to-end.

PMF Signal Analyzer

PMF assessment: 5 dimensions scored + evidence for each + overall PMF verdict

PMF Gap Diagnostician

Root cause diagnosis per low-scoring dimension + priority ranking of gaps by PMF impact

PMF Improvement Strategist

2 PMF improvement experiments: hypothesis + change + segment + timeline + metric + kill switch + 90-day projection

PMF Tracking System Builder

7-metric PMF dashboard + data sources + monthly review process + PMF milestone definitions + M3/M6 targets

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The Multi-Agent Operator Pack.

100 production-ready workflows like this one. Agent prompts, variable cheat-sheets, and the operator's guide.

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