Use when validating product opportunities, mapping assumptions, planning discovery sprints, or testing problem-solution fit before committing delivery resources.
✓Works with OpenClaudeRun structured discovery to identify high-value opportunities and de-risk product bets.
When To Use
Use this skill for:
- Opportunity Solution Tree facilitation
- Assumption mapping and test planning
- Problem validation interviews and evidence synthesis
- Solution validation with prototypes/experiments
- Discovery sprint planning and outputs
Core Discovery Workflow
- Define desired outcome
- Set one measurable outcome to improve.
- Establish baseline and target horizon.
- Build Opportunity Solution Tree (OST)
- Outcome -> opportunities -> solution ideas -> experiments
- Keep opportunities grounded in user evidence, not internal opinions.
- Map assumptions
- Identify desirability, viability, feasibility, and usability assumptions.
- Score assumptions by risk and certainty.
Use:
python3 scripts/assumption_mapper.py assumptions.csv
- Validate the problem
- Conduct interviews and behavior analysis.
- Confirm frequency, severity, and willingness to solve.
- Reject weak opportunities early.
- Validate the solution
- Prototype before building.
- Run concept, usability, and value tests.
- Measure behavior, not only stated preference.
- Plan discovery sprint
- 1-2 week cycle with explicit hypotheses
- Daily evidence reviews
- End with decision: proceed, pivot, or stop
Opportunity Solution Tree (Teresa Torres)
Structure:
- Outcome: metric you want to move
- Opportunities: unmet customer needs/pains
- Solutions: candidate interventions
- Experiments: fastest learning actions
Quality checks:
- At least 3 distinct opportunities before converging.
- At least 2 experiments per top opportunity.
- Tie every branch to evidence source.
Assumption Mapping
Assumption categories:
- Desirability: users want this
- Viability: business value exists
- Feasibility: team can build/operate it
- Usability: users can successfully use it
Prioritization rule:
- High risk + low certainty assumptions are tested first.
Problem Validation Techniques
- Problem interviews focused on current behavior
- Journey friction mapping
- Support ticket and sales-call synthesis
- Behavioral analytics triangulation
Evidence threshold examples:
- Same pain repeated across multiple target users
- Observable workaround behavior
- Measurable cost of current pain
Solution Validation Techniques
- Concept tests (value proposition comprehension)
- Prototype usability tests (task success/time-to-complete)
- Fake door or concierge tests (demand signal)
- Limited beta cohorts (retention/activation signals)
Discovery Sprint Planning
Suggested 10-day structure:
- Day 1-2: Outcome + opportunity framing
- Day 3-4: Assumption mapping + test design
- Day 5-7: Problem and solution tests
- Day 8-9: Evidence synthesis + decision options
- Day 10: Stakeholder decision review
Tooling
scripts/assumption_mapper.py
CLI utility that:
- reads assumptions from CSV or inline input
- scores risk/certainty priority
- emits prioritized test plan with suggested test types
See references/discovery-frameworks.md for framework details.
Related Git & Version Control Skills
Other Claude Code skills in the same category — free to download.
Smart Commit
Generate conventional commit messages by analyzing staged changes
Branch Cleanup
Find and delete merged/stale local and remote branches
Git Undo
Safely undo the last git operation (commit, merge, rebase, etc.)
Changelog Generator
Generate CHANGELOG.md from git history using conventional commits
Conflict Resolver
Analyze and suggest resolutions for merge conflicts
Git Bisect Helper
Automate git bisect to find the commit that introduced a bug
PR Description
Generate detailed PR descriptions from branch diff
Commit Splitter
Split a large commit into smaller, logical commits
Want a Git & Version Control skill personalized to YOUR project?
This is a generic skill that works for everyone. Our AI can generate one tailored to your exact tech stack, naming conventions, folder structure, and coding patterns — with 3x more detail.