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unstuck-scaling

unstuck-scalingSafety --Repository

Use when AI agents frequently hit dead ends, when reliability is the main constraint on scaling utility, or when general model improvements don't solve specific blockers

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1.2k downloads
Updated 1/19/2026

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SKILL.md

The Unstuck Scaling Framework

Overview

A systematic approach to improving AI reliability by treating "getting stuck" as the primary bottleneck. Instead of broad improvements, painstakingly identify specific failure modes and create tight feedback loops.

Core principle: Address specific bottlenecks, not general intelligence.

The Cycle

┌─────────────────────────────────────────────────────────────────┐
│                                                                  │
│     ┌───────────────────┐                                       │
│     │  IDENTIFY         │                                       │
│     │  'Stuck' Points   │                                       │
│     │  (auth, payments) │                                       │
│     └─────────┬─────────┘                                       │
│               │                                                  │
│               ▼                                                  │
│     ┌───────────────────┐                                       │
│     │  ADDRESS          │                                       │
│     │  Specific         │                                       │
│     │  Bottlenecks      │                                       │
│     └─────────┬─────────┘                                       │
│               │                                                  │
│               ▼                                                  │
│     ┌───────────────────┐                                       │
│     │  QUANTITATIVELY   │                                       │
│     │  Tune System      │                                       │
│     │  (pass/fail rate) │                                       │
│     └─────────┬─────────┘                                       │
│               │                                                  │
│               ▼                                                  │
│     ┌───────────────────┐                                       │
│     │  FAST FEEDBACK    │─────────────────────────┐             │
│     │  Loop             │                         │             │
│     └───────────────────┘                         │             │
│               ▲                                   │             │
│               └───────────────────────────────────┘             │
│                                                                  │
└─────────────────────────────────────────────────────────────────┘

Key Principles

PrincipleDescription
Specific blockersIdentify exact points where AI fails
Quantitative tuningMeasure stuck rates, not vibes
Fast feedbackRapid iteration on fixes
Bottleneck focusSpecific roadblocks > general intelligence

Common Mistakes

  • Focusing on general model improvements
  • Failing to measure "stuck" rates quantitatively
  • Slow feedback loops preventing rapid iteration

Source: Anton Osika (Lovable, GPT Engineer) via Lenny's Podcast

Install

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Requires askill CLI v1.0+

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Metadata

Licenseunknown
Version-
Updated1/19/2026
PublisherCoowoolf

Tags

llmsecurity