ux-research-plan
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npx mdskill add mohitagw15856/pm-claude-skills/ux-research-planThis skill creates a complete, ready-to-execute UX research plan. Output covers everything from research objectives to screener questions, discussion guide, and synthesis framework.
SKILL.md
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--- name: ux-research-plan description: "Create a structured UX research plan for any product question or feature. Use when asked to write a research plan, design a user study, create a discussion guide, write screener questions, or plan usability testing. Produces a full research plan with objectives, methodology, screener, discussion guide, and synthesis framework." --- # UX Research Plan Skill This skill creates a complete, ready-to-execute UX research plan. Output covers everything from research objectives to screener questions, discussion guide, and synthesis framework. ## Required Inputs Ask the user for these if not provided: - **Research question** (what decision will this research inform?) - **Product area or feature** being researched - **Research type** (Generative / Evaluative / Usability testing / Diary study / Survey) - **Stage** (Discovery / Concept validation / Prototype testing / Live product) - **Target participants** (role, demographics, behaviour — who should we talk to?) - **Timeline and number of sessions** - **Existing assumptions or hypotheses** (optional but valuable) ## Output Structure --- # UX Research Plan: [Study Title] **Product area:** [Area] **Research type:** [Type] **Date:** [Timeline] **Researcher:** [Leave for user] --- ## 1. Research Objectives State 2–4 clear research objectives. Each objective should map to a decision that will be made differently depending on what you find. **Objective [N]:** Understand [specific thing] so we can [decision this informs]. --- ## 2. Research Questions [5–8 questions — the actual questions you want research to answer. These are not the interview questions; they're the knowledge gaps. Organised under each objective.] **Objective 1:** - RQ1.1: [Research question] - RQ1.2: [Research question] --- ## 3. Methodology & Rationale **Method chosen:** [e.g. Semi-structured interviews / Usability testing / Concept testing] **Why this method:** [2–3 sentences. Match method to research type. If evaluative: usability testing. If generative: contextual inquiry or interviews. If testing comprehension: 5-second test or concept test.] **What this method will and won't tell us:** - **Will tell us:** [What this method is good at revealing] - **Won't tell us:** [What's out of scope — be honest about limits] **Sample size:** [Recommended number of sessions and why — e.g. "5–6 moderated interviews for generative research; 5–8 usability sessions to identify top issues"] --- ## 4. Participant Screener **Recruitment criteria:** | Criterion | Must Have / Nice to Have | Disqualify if | |---|---|---| | [e.g. Uses project management software daily] | Must Have | [Never uses any PM tool] | | [e.g. Works in a team of 5+] | Must Have | — | | [e.g. B2B industry] | Nice to Have | — | **Screener questions (5–8 questions):** [Q1] [Screening question — clear, not leading] - [Answer options — flag which qualify/disqualify] [Q2] ... **Incentive recommendation:** [Amount and format — e.g. "£50 gift voucher for a 60-min session is standard in the UK for professional participants"] --- ## 5. Discussion Guide Structure the session: ### Opening (5 min) - Introduce yourself and the study - "We're testing the design, not you — there are no wrong answers" - Permission to record - Warm-up: [1–2 easy questions to build rapport — e.g. "Tell me about your role and what a typical week looks like"] ### Core Questions (by section) **Section [A]: [Topic]** *(~X min)* 1. [Open question — start broad] *[Probe: Tell me more about...]* 2. [Follow-up to go deeper] *[Probe: Can you walk me through what happened?]* 3. [Specific scenario or past behaviour question] **Section [B]: [Topic]** *(~X min)* [Continue with 2–3 questions per section] **Usability tasks (if applicable):** > "I'm going to ask you to try a few things with this prototype. Please think aloud as you go." - Task [N]: [Clear task instruction — write from the user's perspective, not "click on X" but "find where you would go to do Y"] - **Success criteria:** [What "completing this task" looks like] - **What to observe:** [Where friction typically appears] ### Closing (5 min) - "Is there anything about [topic] we haven't covered that you think is important?" - "If you could change one thing about [product/concept], what would it be?" - Debrief and thank --- ## 6. Synthesis Framework After sessions, use this framework to synthesise findings: **Step 1: Session notes → Key observations** For each session: 3–5 specific observations (behaviours, quotes, reactions — not interpretations yet) **Step 2: Affinity mapping** Group observations by theme across all sessions. Aim for 4–7 clusters. **Step 3: Insight statements** For each cluster: "When [context], users [behaviour/experience], because [underlying need or mental model]." **Step 4: Implications** For each insight: "This means we should [design/product implication]" or "This challenges our assumption that [assumption]." **Step 5: Research report structure:** - Key findings (3–5 headlines) - Supporting evidence per finding - Design recommendations - Open questions for next research cycle --- ## Quality Checks - [ ] Research objectives map to real decisions - [ ] Discussion guide opens broad before going specific - [ ] Screener criteria are specific enough to get the right participants - [ ] Tasks (if usability) are written from the user's perspective - [ ] Synthesis framework is included - [ ] Incentive recommendation is included ## Example Trigger Phrases - "Write a research plan for [feature or product area]" - "Create a discussion guide for user interviews about [topic]" - "Plan a usability test for [prototype or feature]" - "Write screener questions for [target user type]"
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