name: research-synthesis description: "Use when turning raw qualitative research output (interview transcripts, field notes, diary entries, observation logs) into themes, patterns, insight statements, and design-ready artifacts via affinity mapping, empathy maps, and jobs-to-be-done framing. Do NOT use for collecting new research, quantitative analysis, statistical inference, or summarizing a single document — synthesis specifically operates on a corpus of qualitative evidence. Do NOT use for Run more interviews with five additional participants. Do NOT use for Calculate the response rate of the survey. Do NOT use for Summarize this single PDF document. Do NOT use for transforming a corpus of collected qualitative evidence into themes and insights (use user-research)." license: CC-BY-4.0 metadata: subject: design public: "true" scope: "Turning raw qualitative research output (interview transcripts, field notes, diary entries, observation logs) into themes, patterns, insight statements, and design-ready artifacts via affinity mapping, empathy maps, and jobs-to-be-done framing. Portable across any qualitative-research effort; principle-grounded, not repo-bound. Excludes collecting new research (user-research), quantitative analysis and statistical inference, and summarizing a single document (synthesis operates on a corpus of qualitative evidence)." stability: experimental keywords: "["affinity mapping","empathy map","insight statement","theme clustering","jobs to be done synthesis","qualitative coding","research wall","downloading research","say think do feel","persona drafting"]" triggers: "["synthesize research","affinity map","empathy map","find themes in interviews","insight statements"]" examples: "["Cluster these 14 interview transcripts into themes using affinity mapping.","Build an empathy map for the 'first-time buyer' segment from these field notes.","Turn this set of observations into three insight statements I can take into ideation.","Draft a jobs-to-be-done statement from this user research corpus."]" anti_examples: "["Run more interviews with five additional participants.","Calculate the response rate of the survey.","Summarize this single PDF document."]" relations: "{"related":["user-research","journey-mapping","problem-framing","design-thinking","conceptual-modeling"],"suppresses":[{"skill":"user-research","reason":"research-synthesis owns transforming a corpus of collected qualitative evidence into themes and insights; user-research owns collecting the primary data in the first place. Both are needed, in that order."}],"verify_with":["usability-testing"]}" mental_model: "|" purpose: "|" concept_boundary: "|" analogy: "Research synthesis is to raw transcripts what sorting a shuffled deck into suits is to a hand of cards — you do not decide the suits in advance and force cards into them; you lay every card face up, group what genuinely belongs together by looking at it, and only then name the groups, so the categories are discovered in the evidence rather than imposed on it." misconception: "|" skill_graph_source_repo: "https://github.com/jacob-balslev/skill-graph" skill_graph_project: Skill Graph skill_graph_canonical_skill: skills/design/research-synthesis/SKILL.md skill_graph_export_description_projection: anti_examples+boundary
Research Synthesis
Concept of the skill
Research synthesis is the discipline of turning a corpus of raw qualitative material — interview transcripts, field notes, diary entries, observation logs — into a small, defensible set of themes, insights, and design-ready artifacts a team can act on. It works as a layered distillation: observations are first "downloaded" off the source material onto a shared surface as atomic, attributable units (one observation per card, in the participant's words), then clustered bottom-up by proximity using affinity mapping (Jiro Kawakita's KJ method) so themes emerge from the evidence rather than from imposed categories. Each clustered theme (what we heard) is then interpreted into an insight (what it means) and, where the team commits, into a point-of-view statement (what we will do). Lenses such as empathy maps, jobs-to-be-done, and personas are applied on top of clustered evidence, never as shortcuts around it. The defining commitment is traceability: every theme traces back to at least two specific cards attributable to specific sessions, which is what separates synthesis from impression-based summary. The method is deliberately slow and wary of premature abstraction, because a label named too early quietly pulls unrelated observations under it and reproduces the team's priors instead of the participants' patterns.
Coverage
Research synthesis covers the methods that turn raw qualitative material into structured insight a team can act on. The canonical technique is affinity mapping (Jiro Kawakita's KJ method), where individual observations are written on cards or sticky notes, posted on a wall, and clustered bottom-up into emergent themes — without imposing pre-existing categories. Adjacent methods include empathy mapping (XPLANE / Dave Gray, "Say / Think / Do / Feel" quadrants), insight statement writing (a tension or surprise condensed into one sentence), jobs-to-be-done synthesis (extracting the functional, emotional, and social jobs a user is hiring a product to do), and persona drafting when patterns are stable enough to warrant archetypes.
The skill includes the mechanics of downloading research — getting raw observations off transcripts and onto a shared surface (physical wall or digital board) as atomic units, one observation per card, in the participant's words where possible. This is the unglamorous part of the work and it is non-negotiable: themes that emerge from a wall of evidence are defensible; themes that emerge from memory or impression are not.
The practice distinguishes descriptive themes (what we heard) from interpretive insights (what it means) from point-of-view statements (what we will act on). Each layer requires the previous one as evidence. A common synthesis output is a small set of insight statements, each in the form of an observation + interpretation + implication ("Users batch-process invoices on Fridays because their bookkeeper visits on Mondays — current weekly cadence misses this rhythm"), which then feed directly into problem framing or ideation.
Philosophy of the skill
Synthesis is where qualitative research either pays off or quietly fails. The temptation is to read transcripts, form an impression, and write a summary — but impression-based summaries reproduce the researcher's priors rather than the participants' patterns. Affinity mapping is deliberately slow and physical because the act of moving cards forces the researcher to keep evaluating whether two observations actually belong together, instead of subsuming them under a comfortable label.
The discipline is wary of premature abstraction. A theme named too early ("users want simplicity") becomes a magnet that pulls unrelated observations into it. The IDEO field guide and the Stanford d.school bootleg both teach delaying naming as long as possible — clustering by proximity first, naming only when the cluster's shape is undeniable. The same caution applies to personas: a persona built before patterns have stabilized fossilizes a guess, then teams optimize for a fictional user instead of real ones.
Verification
- Every theme on the affinity wall traces back to at least two specific cards (observations), and each card is attributable to a specific session or participant.
- Themes were named after the clusters formed, not before — the researcher can recount the moment the cluster's identity became clear.
- At least one insight contradicts something the team believed before the research started; if every insight is comfortable, the synthesis was likely too charitable to existing assumptions.
- The output distinguishes observations, interpretations, and implications — they are not collapsed into a single bullet list.
- A reader unfamiliar with the raw research can read the synthesis and predict, in rough strokes, what a participant said — meaning the synthesis preserves enough specificity to be falsifiable.
- The synthesis is small enough to act on (typically 3–7 themes, not 20) — if everything is a theme, nothing is.
Do NOT Use When
- No primary research has been conducted yet — run user-research first; there is nothing to synthesize.
- The question is quantitative (counts, percentages, trends over time) — use statistical analysis rather than affinity methods.
- The corpus is a single document or a small set of internal artifacts — synthesis methods are designed for cross-session pattern extraction, not document summarization.
- The team needs to model an engineering domain (entities, events, contexts) — use conceptual-modeling or event-storming.
- The output target is a temporal cross-touchpoint experience map — synthesize first, then move to journey-mapping.
- The task is to validate a single hypothesis against a known artifact — use usability-testing instead.
Skill Graph context
Classification
- Subject:
design - Public:
true - Scope: Turning raw qualitative research output (interview transcripts, field notes, diary entries, observation logs) into themes, patterns, insight statements, and design-ready artifacts via affinity mapping, empathy maps, and jobs-to-be-done framing. Portable across any qualitative-research effort; principle-grounded, not repo-bound. Excludes collecting new research (user-research), quantitative analysis and statistical inference, and summarizing a single document (synthesis operates on a corpus of qualitative evidence).
When to use
- Cluster these 14 interview transcripts into themes using affinity mapping.
- Build an empathy map for the 'first-time buyer' segment from these field notes.
- Turn this set of observations into three insight statements I can take into ideation.
- Draft a jobs-to-be-done statement from this user research corpus.
- Triggers:
synthesize research,affinity map,empathy map,find themes in interviews,insight statements
Not for
- Run more interviews with five additional participants.
- Calculate the response rate of the survey.
- Summarize this single PDF document.
- Owned by
user-research: transforming a corpus of collected qualitative evidence into themes and insights
Related skills
- Verify with:
usability-testing - Related:
user-research,journey-mapping,problem-framing,design-thinking,conceptual-modeling
Concept
- Mental model: |
- Purpose: |
- Boundary: |
- Analogy: Research synthesis is to raw transcripts what sorting a shuffled deck into suits is to a hand of cards — you do not decide the suits in advance and force cards into them; you lay every card face up, group what genuinely belongs together by looking at it, and only then name the groups, so the categories are discovered in the evidence rather than imposed on it.
- Common misconception: |
Keywords
affinity mapping,empathy map,insight statement,theme clustering,jobs to be done synthesis,qualitative coding,research wall,downloading research,say think do feel,persona drafting