iTunes Top 200: #3

Music.  It is a powerful thing that brings people together, creates memories, and evokes emotions.  It is the universal language that speaks to the soul.  It forms the soundtrack of our lives.

It has now been five years since we last counted down the Top 200 songs in my iTunes library, featuring he songs I have listened to the most since 2007.  It is time to do so again, seeing which older songs still resonate and if any newer ones have joined the fray.  So, without further ado, here are my most listened to songs, based on number of plays as of January 1, 2025.

We continue this week with the third most popular song in my collection, which became a sports staple in 1977 thanks to an organist on the south side of Chicago.

#3: Steam – Na Na Hey Hey Kiss Him Goodbye
iTunes stats: 215 plays, most recently on 10/16/2019
Previous ranking: #3

Originally written as a blues shuffle in the early 1960s, the song was recorded and released in 1969 by the then-fictitious band called Steam.  It reached #1 for two weeks in December, finishing as Billboard’s final multi-week number 1 hit of the 1960s.  The song got a second life in 1977, thanks to the South Side Hitmen and their organist, Nancy Faust.  With the White Sox hitting the cover off the ball and finding themselves in a surprising first place, Faust started playing the song after home runs.  Eventually, she also started playing it when the opposing pitcher was chased from the game.

The song became a hit once again, and Faust was awarded a RIAA gold record from Mercury Records to acknowledge her contributions.  It was a mainstay at Comiskey Park and its successors until Faust’s retirement in 2010.  Post-COVID, a recording of the song still makes the occasional appearance, though not as often as in Faust’s heyday.  The high play total is a result of the songs inclusion on every iteration of my White Sox victory playlists.

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