Show HN: Visualize Model Spikiness in 3D

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Summary

ModelMap is a web-based 3D visualization tool that displays AI model test scores as spiky shapes, allowing users to explore and compare model performance through interactive 3D graphics.

Models are referred to as &#x27;spiky&#x27; entities - they have relative strengths and weaknesses.<p>Model map visualizes these strengths and weaknesses in 3D and give you the ability to fly around this 3D space (there is a hidden Star Wars themed mini game for pilots brave enough to try).<p>Spikiness is an intuitive mental model but the typical way of visualizing this spikiness is a generic table.<p>Is this useful? Maybe?<p>Is it fun? Yes.<p>You should try the flight controls. Click anywhere then use WASD + mouse to fly. Shoot projectiles to explore nodes.<p>Built on top of 3D Graph OSS library I made for visualizing KBs in 3D: <a href="https:&#x2F;&#x2F;github.com&#x2F;a-funk&#x2F;3dGraph" rel="nofollow">https:&#x2F;&#x2F;github.com&#x2F;a-funk&#x2F;3dGraph</a>
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Cached at: 07/06/26, 08:01 AM

# ModelMap Source: [https://www.modelmap.tech/](https://www.modelmap.tech/) One AI model's test scores as a 3D shape — longer spike = higher score\. mouselook ·Space/Cup/down ·Q/Eroll clickclick a spike to zoom to it ESCexit flight Orbit dragorbit ·scrollzoom hovertooltip ·clickdetails ⇧Mhide the interface

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