Spotify introduces weekly listening stats

EngadgetThursday, November 6, 2025 at 2:00:00 PM
Spotify introduces weekly listening stats

Spotify introduces weekly listening stats

Spotify has rolled out a new feature that provides users with weekly listening statistics, allowing them to track their music habits and discover trends in their listening preferences. This update not only enhances user engagement but also empowers listeners to connect more deeply with their favorite artists and genres. By offering personalized insights, Spotify continues to solidify its position as a leader in the music streaming industry.
— via World Pulse Now AI Editorial System

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