Crazy for This Girl

"Crazy for This Girl" is a song recorded by the American pop rock duo Evan and Jaron. It was released in October 2000 as a single from their album, Evan and Jaron. It peaked at number 15 on the US Billboard Hot 100 and number four on the Billboard Adult Top 40. It also became a hit in Canada, Italy and New Zealand, reaching number nine on the Italian Singles Chart, number 35 on the New Zealand Singles Chart and number 45 on the Canadian RPM Top Singles chart. The song was included on the second volume on the soundtrack of The WB's television drama Dawson's Creek.

"Crazy for This Girl"
Single by Evan and Jaron
from the album Evan and Jaron
ReleasedOctober 6, 2000
Recorded2000
Length3:22
LabelSony Music Entertainment Inc.
Songwriter(s)
Producer(s)
Evan and Jaron singles chronology
"Crazy for This Girl"
(2000)
"From My Head to My Heart"
(2001)

Music video

Directed by Dani Jacobs, the video features the band's tour bus travelling on a highway at night before stopping at a gas station and diner called "Four Aces". They enter the diner and are persuaded by some girls who give them guitars (from the boss's office) to perform on stage. It attracts a crowd of people who were informed by one of the diner's bartenders (Played by Daphne Zuniga). An alternative version of the video features scenes from the third season of Dawson's Creek.

Charts

Chart (2000–2001) Peak
position
Canada Top Singles (RPM)[1] 45
Canada Adult Contemporary (RPM)[2] 34
Italy (FIMI)[3] 9
Netherlands (Single Top 100)[4] 98
New Zealand (Recorded Music NZ)[5] 37
US Billboard Hot 100[6] 15
US Adult Contemporary (Billboard)[7] 27
US Adult Top 40 (Billboard)[8] 4
US Mainstream Top 40 (Billboard)[9] 9
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gollark: https://arxiv.org/pdf/2108.09293.pdf
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References


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