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iTunes : getting songs from the same album to group together

When I pulled some of my CDs to iTunes I found that sometimes songs from the same album would appear, in album view, as different albums. It was very annoying. It turns out that iTunes won't group songs with the same album name but different artist (or different album artist) into the same album in album view. The solution is to select all the songs you think should be in the same album, right click for 'info' and then under 'options' check 'part of a compilation'. Make sure that the album artist is the same or is blank.

From apple's support page.

Comments

  1. Thank you, you just saved me from having to spend 9.99 for deadmau5's album. :D

    ReplyDelete

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