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@GregKamradt

GPT-4V is blowing my mind The demos are awesome, but too scattered I wanted to break down the 100+ use cases I've seen so far into a simple framework Check out what I found with full descriptions and examples. Agree or disagree with the categories? Use Case Breakdown w/ Examples: 1. Describe - Simply describing what is in an image * Animal Identification: https://t.co/jPm105FAGv * What's in this photo?: https://t.co/skDrKrf8KH 2. Interpret - The biggest of the lot, explain the meaning and provide more context behind an image. This is the layer deeper than a surface level description. * Technical Flame Graph Interpretation: https://t.co/ZFXoyfw6r1 * Schematic Interpretation: https://t.co/bECb8fYe89 * Twitter Thread Explainer: https://t.co/qlELi2LugD 3. Recommend - Offer critiques, suggested changes, or recommendations based off an image * Food Recommendations: https://t.co/OSYrlyLbfZ * Website Feedback (a bunch of these): https://t.co/zuxux3vMVM * Painting Feedback: https://t.co/nvN5oeTBIy 4. Convert - Convert images into other forms (code, narrative, etc.) or generate something new. Massive opportunity to build a ton of product here. Major things to come * Figma Screens > Code: https://t.co/07gEJIDeLG * Adobe Lightroom Settings: https://t.co/VEwTMsnseN * Suggest ad copy based on a webpage: https://t.co/geseU7zLjT 5. Extract - Extract entities within an image or provide structured output * Structured Data From Driver's License: https://t.co/ZWCcRRsJ8y * Extract structured items from an image: https://t.co/KqP6AdMSZk * Handwriting Extraction: https://t.co/JSOX64IVYE 6. Assist - Offer solutions based on the image * Excel Formula Helper: https://t.co/mDmjDaNYWh * Find My Glasses: https://t.co/prQpABHKRz * Live Poker Advice: https://t.co/nESYipC79I * Video game recommendations: https://t.co/PnFH7FH2C5 7. Evaluate - Subjective judgement based on the image * Dog Cuteness Evaluator: https://t.co/0JkSXx8TBR * Bounding Box Evaluator: https://t.co/5OuYwcZsIL * Thumbnail Testing: https://t.co/LfeWqUQRc1

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