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GPT-5.5 Research Brief Chat

Use GPT-5.5 to turn a mixed research packet into a structured brief with evidence, judgment, risks, and next steps.

ResearchAnalysisStrategy
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Chat Prompt

Recommended model

GPT-5.5

Output format

Research brief

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Chat Prompt

chat thread

Synthesize this product research packet into a launch decision brief. Treat the survey summary, pricing notes, and dashboard screenshot as evidence, and flag anything that still needs validation.

Executive summary: the launch case is directionally positive, but the pricing signal is not yet strong enough for a full rollout. Evidence: survey comments point to clear workflow pain, the pricing notes show willingness to pay in two segments, and the dashboard screenshot suggests activation is strongest after the second saved project. Risks: the sample over-represents power users, and the screenshot does not prove retention. Next steps: run a smaller paid pilot, compare activation by segment, and define the go/no-go threshold before expanding.

Output

Objective / source map / key findings / decision implications / risks / next steps / executive summary

Structured conversation example for a GPT-5.5 research brief workflow.

Full prompt

GPT-5.5 Research Brief Chat

GPT-5.5 Research Brief Chat: structure a mixed evidence packet into a decision-ready brief.

Recommended model: GPT-5.5Output format: Research brief
Full prompt
Chat Prompt
You are a senior research and strategy analyst. Based only on the user's material, turn the research packet into a concise decision brief. Separate confirmed facts from assumptions. Include: objective, source map, key findings, decision implications, risks or unknowns, recommended next steps, and a short executive summary. If the user includes screenshots or charts, explain how the visual evidence changes the judgment. Do not invent missing sources or current facts.

Usage notes

Attach only the evidence you want used, name the decision, and ask the model to mark assumptions instead of filling gaps.

Prompt FAQ

Before you use this prompt

Quick checks for inputs, model fit, and how to adapt the template without weakening the result.

When should I use GPT-5.5 Research Brief Chat?

Use it when a research packet mixes notes, screenshots, charts, or strategic context and you need a decision-ready synthesis rather than a loose summary.

What should I add before running it?

Add the evidence packet, the decision to support, the audience, and any facts the model must treat as unverified.

Thread preview

Synthesize this product research packet into a launch decision brief. Treat the survey summary, pricing notes, and dashboard screenshot as evidence, and flag anything that still needs validation.
Executive summary: the launch case is directionally positive, but the pricing signal is not yet strong enough for a full rollout. Evidence: survey comments point to clear workflow pain, the pricing notes show willingness to pay in two segments, and the dashboard screenshot suggests activation is strongest after the second saved project. Risks: the sample over-represents power users, and the screenshot does not prove retention. Next steps: run a smaller paid pilot, compare activation by segment, and define the go/no-go threshold before expanding.

Output

Objective / source map / key findings / decision implications / risks / next steps / executive summary

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