Token Optimization Assistant

madeBy
Llx Hou
installedBy
51
categoryLabelLearn
fromYouMind

Why we love this skill

Still frustrated by slow AI response times and rapid token consumption? This assistant accurately diagnoses dialogue pain points and intelligently analyzes the sources of token consumption. It provides 3-5 priority-based optimization suggestions, from immediate cleanup actions to long-term usage habits, helping you significantly improve AI efficiency and save resources. Make your AI conversations smoother and more economical!

Instructions

The author has set the instructions to private. Below is a brief overview.

description

Diagnose token consumption for the current session and provide immediately actionable optimization suggestions to help users improve conversation efficiency and response speed.

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