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Mimir – Cursor for Product Managers

Mimir – Cursor for Product Managers

by schreibertuc·Feb 13, 2026·4 points·4 comments

AI Analysis

●●SolidShip ItCrowd Pleaser

Claude for product managers, but LLM-powered synthesis of feedback is increasingly crowded.

Strengths
  • GitHub integration closes loop from feedback→spec→agent-ready tasks in one pipeline.
  • Structured extraction (pain points, metrics, quotes) with attribution prevents hallucination drift.
  • Evidence-backed recommendations with impact projections give PMs defensible prioritization.
Weaknesses
  • Competitive against Amplitude, Mixpanel product insights, and Cursor-for-PMs clones emerging weekly.
  • No clear differentiation in synthesis quality beyond standard LLM clustering; unclear if better than DIY Claude workflows.
Category
Target Audience

Product managers, startup founders, teams deciding what to build next

Similar To

Amplitude Insights · Mixpanel feedback analysis · Cursor IDE

Post Description

Hey HN,

I built Mimir because I kept running into the same problem: deciding what to build, how to build it, and how to prioritize it against everything else.

Tools like Cursor make it easier to write code. But they don’t help you decide what code is worth writing. Mimir is my attempt to close that gap.

Here’s what it does:

- Paste or upload customer interviews, feedback, support tickets, usage notes (text, PDFs, screenshots)

- Extracts structured entities (pain points, feature requests, quotes, metrics)

- Synthesizes themes across all sources with evidence attribution

- Generates prioritized recommendations with impact projections

- Produces development-ready specs and pushes them to GitHub so agents (or humans) can start building

- Includes different chat modes for exploring ideas, refining scope, or generating new directions

The goal is to turn messy qualitative input into something structured, defensible, and ready for execution.

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