product-manager-toolkit

Verified·Scanned 2/17/2026

This skill is a product-management toolkit with runnable Python utilities (scripts/rice_prioritizer.py, scripts/customer_interview_analyzer.py) for prioritization, interview analysis, and PRD templates. It includes explicit python command examples that instruct local script execution; no secret access or external network calls are instructed.

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Product Manager Toolkit

Essential tools and frameworks for modern product management, from discovery to delivery.


Table of Contents


Quick Start

For Feature Prioritization

# Create sample data file
python scripts/rice_prioritizer.py sample

# Run prioritization with team capacity
python scripts/rice_prioritizer.py sample_features.csv --capacity 15

For Interview Analysis

python scripts/customer_interview_analyzer.py interview_transcript.txt

For PRD Creation

  1. Choose template from references/prd_templates.md
  2. Fill sections based on discovery work
  3. Review with engineering for feasibility
  4. Version control in project management tool

Core Workflows

Feature Prioritization Process

Gather → Score → Analyze → Plan → Validate → Execute

Step 1: Gather Feature Requests

  • Customer feedback (support tickets, interviews)
  • Sales requests (CRM pipeline blockers)
  • Technical debt (engineering input)
  • Strategic initiatives (leadership goals)

Step 2: Score with RICE

# Input: CSV with features
python scripts/rice_prioritizer.py features.csv --capacity 20

See references/frameworks.md for RICE formula and scoring guidelines.

Step 3: Analyze Portfolio

Review the tool output for:

  • Quick wins vs big bets distribution
  • Effort concentration (avoid all XL projects)
  • Strategic alignment gaps

Step 4: Generate Roadmap

  • Quarterly capacity allocation
  • Dependency identification
  • Stakeholder communication plan

Step 5: Validate Results

Before finalizing the roadmap:

  • Compare top priorities against strategic goals
  • Run sensitivity analysis (what if estimates are wrong by 2x?)
  • Review with key stakeholders for blind spots
  • Check for missing dependencies between features
  • Validate effort estimates with engineering

Step 6: Execute and Iterate

  • Share roadmap with team
  • Track actual vs estimated effort
  • Revisit priorities quarterly
  • Update RICE inputs based on learnings

Customer Discovery Process

Plan → Recruit → Interview → Analyze → Synthesize → Validate

Step 1: Plan Research

  • Define research questions
  • Identify target segments
  • Create interview script (see references/frameworks.md)

Step 2: Recruit Participants

  • 5-8 interviews per segment
  • Mix of power users and churned users
  • Incentivize appropriately

Step 3: Conduct Interviews

  • Use semi-structured format
  • Focus on problems, not solutions
  • Record with permission
  • Take minimal notes during interview

Step 4: Analyze Insights

python scripts/customer_interview_analyzer.py transcript.txt

Extracts:

  • Pain points with severity
  • Feature requests with priority
  • Jobs to be done patterns
  • Sentiment and key themes
  • Notable quotes

Step 5: Synthesize Findings

  • Group similar pain points across interviews
  • Identify patterns (3+ mentions = pattern)
  • Map to opportunity areas using Opportunity Solution Tree
  • Prioritize opportunities by frequency and severity

Step 6: Validate Solutions

Before building:

  • Create solution hypotheses (see references/frameworks.md)
  • Test with low-fidelity prototypes
  • Measure actual behavior vs stated preference
  • Iterate based on feedback
  • Document learnings for future research

PRD Development Process

Scope → Draft → Review → Refine → Approve → Track

Step 1: Choose Template

Select from references/prd_templates.md:

TemplateUse CaseTimeline
Standard PRDComplex features, cross-team6-8 weeks
One-Page PRDSimple features, single team2-4 weeks
Feature BriefExploration phase1 week
Agile EpicSprint-based deliveryOngoing

Step 2: Draft Content

  • Lead with problem statement
  • Define success metrics upfront
  • Explicitly state out-of-scope items
  • Include wireframes or mockups

Step 3: Review Cycle

  • Engineering: feasibility and effort
  • Design: user experience gaps
  • Sales: market validation
  • Support: operational impact

Step 4: Refine Based on Feedback

  • Address technical constraints
  • Adjust scope to fit timeline
  • Document trade-off decisions

Step 5: Approval and Kickoff

  • Stakeholder sign-off
  • Sprint planning integration
  • Communication to broader team

Step 6: Track Execution

After launch:

  • Compare actual metrics vs targets
  • Conduct user feedback sessions
  • Document what worked and what didn't
  • Update estimation accuracy data
  • Share learnings with team

Tools Reference

RICE Prioritizer

Advanced RICE framework implementation with portfolio analysis.

Features:

  • RICE score calculation with configurable weights
  • Portfolio balance analysis (quick wins vs big bets)
  • Quarterly roadmap generation based on capacity
  • Multiple output formats (text, JSON, CSV)

CSV Input Format:

name,reach,impact,confidence,effort,description
User Dashboard Redesign,5000,high,high,l,Complete redesign
Mobile Push Notifications,10000,massive,medium,m,Add push support
Dark Mode,8000,medium,high,s,Dark theme option

Commands:

# Create sample data
python scripts/rice_prioritizer.py sample

# Run with default capacity (10 person-months)
python scripts/rice_prioritizer.py features.csv

# Custom capacity
python scripts/rice_prioritizer.py features.csv --capacity 20

# JSON output for integration
python scripts/rice_prioritizer.py features.csv --output json

# CSV output for spreadsheets
python scripts/rice_prioritizer.py features.csv --output csv

Customer Interview Analyzer

NLP-based interview analysis for extracting actionable insights.

Capabilities:

  • Pain point extraction with severity assessment
  • Feature request identification and classification
  • Jobs-to-be-done pattern recognition
  • Sentiment analysis per section
  • Theme and quote extraction
  • Competitor mention detection

Commands:

# Analyze interview transcript
python scripts/customer_interview_analyzer.py interview.txt

# JSON output for aggregation
python scripts/customer_interview_analyzer.py interview.txt json

Input/Output Examples

RICE Prioritizer Example

Input (features.csv):

name,reach,impact,confidence,effort
Onboarding Flow,20000,massive,high,s
Search Improvements,15000,high,high,m
Social Login,12000,high,medium,m
Push Notifications,10000,massive,medium,m
Dark Mode,8000,medium,high,s

Command:

python scripts/rice_prioritizer.py features.csv --capacity 15

Output:

============================================================
RICE PRIORITIZATION RESULTS
============================================================

📊 TOP PRIORITIZED FEATURES

1. Onboarding Flow
   RICE Score: 16000.0
   Reach: 20000 | Impact: massive | Confidence: high | Effort: s

2. Search Improvements
   RICE Score: 4800.0
   Reach: 15000 | Impact: high | Confidence: high | Effort: m

3. Social Login
   RICE Score: 3072.0
   Reach: 12000 | Impact: high | Confidence: medium | Effort: m

4. Push Notifications
   RICE Score: 3840.0
   Reach: 10000 | Impact: massive | Confidence: medium | Effort: m

5. Dark Mode
   RICE Score: 2133.33
   Reach: 8000 | Impact: medium | Confidence: high | Effort: s

📈 PORTFOLIO ANALYSIS

Total Features: 5
Total Effort: 19 person-months
Total Reach: 65,000 users
Average RICE Score: 5969.07

🎯 Quick Wins: 2 features
   • Onboarding Flow (RICE: 16000.0)
   • Dark Mode (RICE: 2133.33)

🚀 Big Bets: 0 features

📅 SUGGESTED ROADMAP

Q1 - Capacity: 11/15 person-months
   • Onboarding Flow (RICE: 16000.0)
   • Search Improvements (RICE: 4800.0)
   • Dark Mode (RICE: 2133.33)

Q2 - Capacity: 10/15 person-months
   • Push Notifications (RICE: 3840.0)
   • Social Login (RICE: 3072.0)

Customer Interview Analyzer Example

Input (interview.txt):

Customer: Jane, Enterprise PM at TechCorp
Date: 2024-01-15

Interviewer: What's the hardest part of your current workflow?

Jane: The biggest frustration is the lack of real-time collaboration.
When I'm working on a PRD, I have to constantly ping my team on Slack
to get updates. It's really frustrating to wait for responses,
especially when we're on a tight deadline.

I've tried using Google Docs for collaboration, but it doesn't
integrate with our roadmap tools. I'd pay extra for something that
just worked seamlessly.

Interviewer: How often does this happen?

Jane: Literally every day. I probably waste 30 minutes just on
back-and-forth messages. It's my biggest pain point right now.

Command:

python scripts/customer_interview_analyzer.py interview.txt

Output:

============================================================
CUSTOMER INTERVIEW ANALYSIS
============================================================

📋 INTERVIEW METADATA
Segments found: 1
Lines analyzed: 15

😟 PAIN POINTS (3 found)

1. [HIGH] Lack of real-time collaboration
   "I have to constantly ping my team on Slack to get updates"

2. [MEDIUM] Tool integration gaps
   "Google Docs...doesn't integrate with our roadmap tools"

3. [HIGH] Time wasted on communication
   "waste 30 minutes just on back-and-forth messages"

💡 FEATURE REQUESTS (2 found)

1. Real-time collaboration - Priority: High
2. Seamless tool integration - Priority: Medium

🎯 JOBS TO BE DONE

When working on PRDs with tight deadlines
I want real-time visibility into team updates
So I can avoid wasted time on status checks

📊 SENTIMENT ANALYSIS

Overall: Negative (pain-focused interview)
Key emotions: Frustration, Time pressure

💬 KEY QUOTES

• "It's really frustrating to wait for responses"
• "I'd pay extra for something that just worked seamlessly"
• "It's my biggest pain point right now"

🏷️ THEMES

- Collaboration friction
- Tool fragmentation
- Time efficiency

Integration Points

Compatible tools and platforms:

CategoryPlatforms
AnalyticsAmplitude, Mixpanel, Google Analytics
RoadmappingProductBoard, Aha!, Roadmunk, Productplan
DesignFigma, Sketch, Miro
DevelopmentJira, Linear, GitHub, Asana
ResearchDovetail, UserVoice, Pendo, Maze
CommunicationSlack, Notion, Confluence

JSON export enables integration with most tools:

# Export for Jira import
python scripts/rice_prioritizer.py features.csv --output json > priorities.json

# Export for dashboard
python scripts/customer_interview_analyzer.py interview.txt json > insights.json

Common Pitfalls to Avoid

PitfallDescriptionPrevention
Solution-FirstJumping to features before understanding problemsStart every PRD with problem statement
Analysis ParalysisOver-researching without shippingSet time-boxes for research phases
Feature FactoryShipping features without measuring impactDefine success metrics before building
Ignoring Tech DebtNot allocating time for platform healthReserve 20% capacity for maintenance
Stakeholder SurpriseNot communicating early and oftenWeekly async updates, monthly demos
Metric TheaterOptimizing vanity metrics over real valueTie metrics to user value delivered

Best Practices

Writing Great PRDs:

  • Start with the problem, not the solution
  • Include clear success metrics upfront
  • Explicitly state what's out of scope
  • Use visuals (wireframes, flows, diagrams)
  • Keep technical details in appendix
  • Version control all changes

Effective Prioritization:

  • Mix quick wins with strategic bets
  • Consider opportunity cost of delays
  • Account for dependencies between features
  • Buffer 20% for unexpected work
  • Revisit priorities quarterly
  • Communicate decisions with context

Customer Discovery:

  • Ask "why" five times to find root cause
  • Focus on past behavior, not future intentions
  • Avoid leading questions ("Wouldn't you love...")
  • Interview in the user's natural environment
  • Watch for emotional reactions (pain = opportunity)
  • Validate qualitative with quantitative data

Quick Reference

# Prioritization
python scripts/rice_prioritizer.py features.csv --capacity 15

# Interview Analysis
python scripts/customer_interview_analyzer.py interview.txt

# Generate sample data
python scripts/rice_prioritizer.py sample

# JSON outputs
python scripts/rice_prioritizer.py features.csv --output json
python scripts/customer_interview_analyzer.py interview.txt json

Reference Documents

  • references/prd_templates.md - PRD templates for different contexts
  • references/frameworks.md - Detailed framework documentation (RICE, MoSCoW, Kano, JTBD, etc.)