Chrissy Teigen 2015 Meme: John Legend’s Wife Becomes Meme After Golden Globes! [PHOTO]

Last Sunday, the award season of the beginning of the year was officially kicked off with the Golden Globe Awards, and, as expected, the first signs of memes have already been filling up the web - and perhaps the best one is Chrissy Teigen's 2015 meme!

In the past Golden Globe Awards in Sunday, a few great jokes arose, but there may have only been one face that'll stick around in the memory of Internet users for a while: the Chrissy Teigen 2015 meme, perhaps the most awkward crying face anyone has ever seen on live television.

According to The Huffington Post, the Chrissy Teigen 2015 meme became a thing when her husband John Legend went up on stage after receiving the Golden Globe Award for Best Original Song for "Glory," the song he wrote for the Martin Luther King Jr. biopic "Selma," about the 1965 march from Selma to Montgomery, Alabama.

As Yahoo! News reports, it seems that the gorgeous supermodel famous for her easy-going manner wasn't exactly prepared for her close-up as her husband effusively thanked her for being a part of his life during this big award and, as she made possibly the most awkward face imaginable (was she crying? Was she cringing?), the Chrissy Teigen 2015 meme was born.

It's clear that the Internet doesn't forgive, but it's also true that every year, award season brings the world a whole new set of memes, for example, just last year, possibly the most famous meme of the entire season was the famous Benedict Cumberbatch/U2 photobomb which saw the "Sherlock" actor jump sideways on the back of a photo featuring Bono, The Edge and the rest of the band. The moment was so iconic that the past Golden Globes even honored it!

According to Fashionista, however, the Chrissy Teigen 2015 meme wasn't a problem for the gorgeous model, who went on Twitter to apologize for not practicing her "crying face" and even ended up posting a picture on Instagram re-doing the face along with a weirded out John Legend!

Real Time Analytics