SquiggleAI
squiggleaiprojectPath: /knowledge-base/responses/squiggleai/
E287Entity ID (EID)
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"llmSummary": "SquiggleAI is an LLM tool (primarily Claude Sonnet 4.5) that generates probabilistic Squiggle models from natural language, using ~20K tokens of cached documentation to produce 100-500 line models in 20 seconds to 3 minutes. While it lowers barriers for domain experts to create uncertainty models, it's a workflow improvement tool rather than a core AI safety intervention.",
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}External Links
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Backlinks (5)
| id | title | type | relationship |
|---|---|---|---|
| quri | QURI (Quantified Uncertainty Research Institute) | organization | — |
| epistemic-tools-tools-overview | Tools & Platforms (Overview) | concept | — |
| longterm-wiki | Longterm Wiki | project | — |
| roastmypost | RoastMyPost | project | — |
| squiggle | Squiggle | project | — |