MIROFISH
MiroFish Prediction Engine
Text-first
Optional attachments

Predict Anything,
but talk to it like ChatGPT.

AI simulation chat for scenario predictionAsk a question directly and let the system handleseed → simulation → reportas one continuous prediction workflow.

Example: If a product raises its price next quarter, how will customer sentiment and narrative spread change?

Orchestration Preview
Text-first

Start with a question, then decide whether supporting files are necessary without losing the speed of chat.

Multi-agent

Run graph building, simulation, and reporting behind the scenes while keeping the user inside a single conversation.

Result cards

Drop a structured result card below each answer with a summary, report entry point, and follow-up path.

Use Cases

Scenarios where reaction matters more than a static answer.

These are the planning moments where simulated audiences, incentives, and narrative paths can reveal what a normal forecast misses.

Campaign Test
Pressure-test a launch narrative before it goes public.

Simulate how audience groups might amplify, resist, or reinterpret a campaign message before the first spend is committed.

What happens if we launch this positioning in a skeptical category?
Pricing Reaction
Explore the friction behind a price increase.

Model customer sentiment, value perception, and likely objection paths across different segments before the change is announced.

If we raise prices next quarter, which groups push back first?
Policy Stress Test
Find the groups, incentives, and loopholes in a policy rollout.

Use simulation as a tabletop exercise for controversy, coalition formation, and second-order reactions.

If this policy enters public debate, where does support split?
Market Narrative
Watch narrative, incentives, and sentiment interact.

Stress-test market stories where spreadsheets miss the feedback loop between analysts, retail attention, and public discourse.

What if positive news meets coordinated skepticism on social channels?
Workflow

From seed material to a world you can question.

MiroFish is useful because it keeps structure, personas, social dynamics, and report synthesis in one sequence instead of giving a single isolated answer.

Step 01
Seed Material

Start from a plain-language question, report, policy draft, market note, or story fragment.

Step 02
Knowledge Graph

Extract actors, relationships, pressures, and factual anchors so agents reason from structure.

Step 03
Agent Simulation

Let personas interact across short-form and threaded social surfaces over multiple rounds.

Step 04
Prediction Report

Condense emergent behavior into turning points, risks, confidence signals, and follow-up paths.

Step 05
Deep Interaction

Continue asking questions against the generated world instead of stopping at a static answer.

Playbooks

Make the page useful before the click out.

Short, practical guidance gives visitors something to inspect, compare, and reuse before they enter the full product.

Write a sharper prediction prompt

Name the decision, the audience, the likely trigger, and the time horizon. A narrow question gives the simulated world less room to drift.

Good prompt: What happens to customer trust if we remove a bundled charger from the flagship model next quarter?
Use files as reality seeds

PDF, Markdown, and text files work best when they contain concrete actors, incentives, constraints, or prior context.

Useful seeds: strategy memo, product FAQ, policy brief, market note, customer research summary.
Read the report like a rehearsal

Treat the output as decision support. Look for resistance signals, narrative bridges, and assumptions worth checking with real data.

Next step: ask which group changes the result if its incentive changes.
Report Preview

A prediction report should make the next question obvious.

This static preview shows the kind of structure a visitor can expect: summary, risk signals, narrative paths, and follow-up questions.

Sample Scenario

If a product raises prices next quarter, which customer groups resist first, and what narrative makes the change recoverable?

Executive Summary

The highest-risk path is not the price change itself. It is a compressed story that turns the announcement into a trust issue before value evidence is visible.

Risk Signals
  • Early backlash from price-sensitive segments
  • Narrative compression into a simpler accusation
  • Influencer framing that outruns the official message
Narrative Paths
  • Value story holds if benefits are concrete
  • Skeptical thread grows if comparison charts are absent
  • Supporters need reusable language, not only a launch post
Follow-up Questions
  • Which persona creates the first negative cascade?
  • What changes if we announce a transition plan?
  • Which evidence line reduces confusion fastest?
Comparison

Use simulation when the answer depends on people reacting to people.

A landing page should remove friction. This comparison makes it clear when the full MiroFish experience is worth opening.

Single Chat Answer

Fast, useful for brainstorming, but often collapses competing audience reactions into one confident response.

Manual Research

Grounded and careful, but slow when the decision depends on many groups influencing each other at once.

MiroFish Simulation

Explores a living scenario: agents, memory, social surfaces, emergent clusters, and a report you can keep questioning.

FAQ

Clear answers keep visitors from bouncing to search again.

These answers set expectations without overclaiming accuracy or changing the product's exploratory positioning.

What kind of scenario is a good fit?

Use cases with human reaction loops: launches, pricing changes, policy debates, market narratives, crisis response, and creative continuation.

Do I need to upload files?

No. You can start with text, then add files when you want the simulation grounded in a specific report, brief, or source document.

What does the report include?

A useful report should summarize the likely trajectory, key actors, risk signals, evidence lines, and next questions to ask.

Is this a guaranteed forecast?

No. Treat it as exploratory decision support: a way to rehearse plausible reactions before using judgment, analytics, and real-world validation.

Ready to rehearse a scenario?

Open the full experience when the question is worth simulating.