Summary
A developer is making a "big ask" for highly personal text message data from long-term relationships to train AI models for their app, citing a lack of willing participants from their existing user base. They emphasize the extreme value of this real-world conversation data for improving AI, especially since most people delete old messages. This request highlights the significant challenge of acquiring diverse, sensitive human interaction data for AI development while navigating privacy concerns.
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