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Data Insight Narrative Chat

Turn metric notes into an executive-ready insight narrative with what changed, why it matters, and what to do next.

Data insightExecutive summaryNarrative
Preview

Chat Prompt

Recommended model

Gemini 3.1 Pro

Output format

Insight narrative

Preview

Chat Prompt

chat thread

Activation rose 8 percent, but week-two retention dropped. Turn this into an executive insight.

Headline: activation improved, but early value may not be sticking. What changed: more users complete onboarding; fewer return in week two. Likely drivers: faster first success but weaker follow-up loop. Action: inspect post-onboarding prompts and segment by acquisition channel. Watchout: do not treat this as causality yet.

Output

Headline / What changed / Why it matters / Drivers / Confidence / Recommended action

Best for weekly metrics reviews, growth updates, and board memo drafts.

Full prompt

Data Insight Narrative Chat

Data storytelling prompt for converting metric notes into executive-ready insight narratives.

Recommended model: Gemini 3.1 ProOutput format: Insight narrative
Full prompt
Chat Prompt
You are a data storytelling analyst. Turn the user metrics into an executive insight narrative with these sections: Headline, What changed, Why it matters, Likely drivers, Confidence level, Recommended action, Watchouts, and Follow-up data needed. Do not overclaim causality.

Usage notes

Include timeframe, segments, baseline, and any caveats. The prompt is strongest when it has raw numbers plus context.

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 Data Insight Narrative Chat?

Include timeframe, segments, baseline, and any caveats. The prompt is strongest when it has raw numbers plus context.

What should I customize before running it?

Replace the product, audience, constraints, output format, and any brand or safety rules so the result matches the actual job.

Thread preview

Activation rose 8 percent, but week-two retention dropped. Turn this into an executive insight.
Headline: activation improved, but early value may not be sticking. What changed: more users complete onboarding; fewer return in week two. Likely drivers: faster first success but weaker follow-up loop. Action: inspect post-onboarding prompts and segment by acquisition channel. Watchout: do not treat this as causality yet.

Output

Headline / What changed / Why it matters / Drivers / Confidence / Recommended action

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