USE CASE
AI Product Manager: Automate Feedback Synthesis, Prioritization & Roadmaps
Build an AI that handles the grunt work of product management—synthesizing feedback, tracking requests, and keeping stakeholders informed—so you can focus on strategy.
Product managers spend 60% of their time organizing data: collecting feedback from 10 different sources, deduplicating feature requests, updating stakeholders who ask the same questions every week.
What if an AI agent handled all of that—while you focus on the decisions that actually matter?
The Product Management Tool Stack Tax
Here's how much a typical PM tool stack costs. Most teams use 3-4 of these:
| Tool | Price | Annual |
|---|---|---|
| Productboard | $80/mo | $4,800 |
| Amplitude | $1,000/mo | $12,000 |
| Canny | $400/mo | $4,800 |
| Dovetail | $300/mo | $3,600 |
| Typical stack | $1,780/mo | $25,200/yr |
Prices as of December 2025. Most teams use multiple tools.
You're paying $23,000/year for databases with pretty UIs. An AI agent can do the actual work.
What PM Tools Really Are (Demystified)
Strip away the branding and what are you left with?
| The PM Job | What the Tool Actually Does |
|---|---|
| Collect feedback | Stores text in a database with tags |
| Prioritize features | Spreadsheet with scoring columns |
| Maintain roadmap | Kanban board with dates |
| Understand users | Event logs with charts |
| Communicate updates | Blog posts with version numbers |
An AI agent can read, write, analyze, and communicate. It doesn't need 4 different tools.
What an AI Product Manager Actually Does
An AI product manager isn't a dashboard. It's a persistent agent that actively does the work:
Synthesizes feedback from everywhere
Tracks feature requests with context
Suggests data-driven prioritization
Keeps stakeholders informed
Remembers everything
The Killer Feature: Your Own Product Intelligence System
This is what makes it fundamentally different from any PM tool you've ever used.
/product
/feedback
support-tickets.csv
sales-call-notes.csv
nps-responses.csv
user-interviews.md
/features
feature-requests.csv
prioritization-matrix.csv
shipped-features.csv
/roadmap
current-quarter.md
next-quarter.md
changelog.md
/insights
weekly-synthesis.md
theme-analysis.mdIn Lazarus, your product agent maintains its own knowledge base. Feedback, requests, decisions, context—all organized in files you control. The agent reads, writes, and learns from this system continuously.
No vendor lock-in
Gets stronger over time
Works across tools
Actually does the work
This isn't a tool that helps you do product management. It's a product manager that does product management.
Meet Your Product Agent
Here's what a typical product management agent configuration looks like:
Agent name
Product Agent
Description
Synthesizes customer feedback, tracks feature requests, suggests prioritization, and keeps stakeholders informed on product progress.
Agent ID
product-agent
product@acme.lazarusconnect.com
Capabilities
Scheduled work
A Day in the Life: AI Product Manager in Action
Here's what it looks like when an AI agent handles product management. Real conversations, real value:
Feedback synthesis
Feature request lookup
Prioritization help
Changelog draft
Step by Step: Build Your AI Product Manager
Here's how to set up your own product management agent in about 15 minutes:
Step 1: Create the agent and write instructions
Create a new agent in Lazarus and describe what you want:
"You are my product intelligence agent. Synthesize all customer feedback from /product/feedback/. Track feature requests with customer context. Generate weekly insights reports. Alert me to trending issues. Help prioritize based on customer impact."
Step 2: Connect your feedback sources
Connect Intercom, Zendesk, Slack channels, email—anywhere customers talk to you. The agent will automatically extract and synthesize.
Step 3: Define your taxonomy
How do you categorize feedback? Product areas, customer segments, request types? Tell the agent your framework and it will learn it.
Step 4: Set up scheduled reports
Configure daily synthesis, weekly insights, and stakeholder updates. The agent delivers proactively.
Step 5: Start asking questions
Ask about feedback trends, request history, prioritization help. The more you use it, the smarter it gets about your product.
Within a week, you'll wonder how you ever did product management without it.
Advanced: Build a Product Intelligence Team
For larger product organizations, you can create specialized agents that work together:
| Agent | Role | Files it manages |
|---|---|---|
| Insights Agent | Synthesizes feedback, spots trends, surfaces insights | /product/feedback/, /product/insights/ |
| Roadmap Agent | Tracks requests, prioritizes backlog, maintains roadmap | /product/features/, /product/roadmap/ |
| Communications Agent | Drafts changelogs, stakeholder updates, release notes | /product/changelog/, /product/updates/ |
How they work together
The Insights Agent processes new feedback and updates the theme analysis
The Roadmap Agent reads insights and updates prioritization scores
When features ship, the Communications Agent drafts the changelog based on original requests
All agents can answer questions about their domain from anyone in the company
All agents share the same workspace. Insights inform prioritization. Prioritization informs communication. No silos.
Your product team gets superpowers. The AI handles the data. Humans make the decisions.
Stop managing data. Start making product decisions.
Create an AI product manager that actually does the work—in 15 minutes.
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Questions?