The post WWE Survivor Series WarGames 2025 Results As AJ Lee Taps Out Becky Lynch appeared on BitcoinEthereumNews.com. WWE Survivor Series Women’s WarGames 2025 WWE AJ Lee, Alexa Bliss, Charlotte Flair, Iyo Sky and Rhea Ripley prevailed in the women’s WarGames match at WWE Survivor Series 2025. This was a highly satisfying back-and-forth match filled with weapons, though the format did change as there were no pods. The finish came when AJ Lee trapped Becky Lynch in the Black Widow for the babyface win, setting up an inevitable singles match between Lynch and Lee. WWE Survivor Series WarGames 2025 | Women’s WarGames Highlights Charlotte Flair walked out first and entered the cage. Conspicuous by its absence were the babyface and heel pods for WarGames. Next was Asuka. The two locked up with Asuka gaining the early advantage to the tune of “let’s go Charlotte!” chants. Charlotte battle back, but the comeback was short-lived as Asuka caught Flair in midair with a knee. Huge heat for Asuka. Iyo Sky was out next with her full entrance. She had a trash can lid with her name on it. This ex-Kabuki Warrior was ready for war. Asuka grabbed the lid from Iyo, but was unable to connect on a swing. Iyo tried a springboard from the other ring, but slipped as she hit a clothesline. Iyo made sure to land a running knee in the corner with the trash can lid. Iyo tried a suplex on the metal between the rings. She settled for a drop toe hold instead. Next out was Becky Lynch, who immediately blasted Iyo Sky with a kendo stick. Becky Lynch tried to reunite with Charlotte, but Charlotte wanted no part of it. Charlotte and Lynch went back and forth with punches before Iyo Sky and Asuka reentered. Charlotte and Becky hit exploder suplexes on Asuka and Iyo Sky, respectively. Bliss and Charlotte teamed up and cleaned… The post WWE Survivor Series WarGames 2025 Results As AJ Lee Taps Out Becky Lynch appeared on BitcoinEthereumNews.com. WWE Survivor Series Women’s WarGames 2025 WWE AJ Lee, Alexa Bliss, Charlotte Flair, Iyo Sky and Rhea Ripley prevailed in the women’s WarGames match at WWE Survivor Series 2025. This was a highly satisfying back-and-forth match filled with weapons, though the format did change as there were no pods. The finish came when AJ Lee trapped Becky Lynch in the Black Widow for the babyface win, setting up an inevitable singles match between Lynch and Lee. WWE Survivor Series WarGames 2025 | Women’s WarGames Highlights Charlotte Flair walked out first and entered the cage. Conspicuous by its absence were the babyface and heel pods for WarGames. Next was Asuka. The two locked up with Asuka gaining the early advantage to the tune of “let’s go Charlotte!” chants. Charlotte battle back, but the comeback was short-lived as Asuka caught Flair in midair with a knee. Huge heat for Asuka. Iyo Sky was out next with her full entrance. She had a trash can lid with her name on it. This ex-Kabuki Warrior was ready for war. Asuka grabbed the lid from Iyo, but was unable to connect on a swing. Iyo tried a springboard from the other ring, but slipped as she hit a clothesline. Iyo made sure to land a running knee in the corner with the trash can lid. Iyo tried a suplex on the metal between the rings. She settled for a drop toe hold instead. Next out was Becky Lynch, who immediately blasted Iyo Sky with a kendo stick. Becky Lynch tried to reunite with Charlotte, but Charlotte wanted no part of it. Charlotte and Lynch went back and forth with punches before Iyo Sky and Asuka reentered. Charlotte and Becky hit exploder suplexes on Asuka and Iyo Sky, respectively. Bliss and Charlotte teamed up and cleaned…

WWE Survivor Series WarGames 2025 Results As AJ Lee Taps Out Becky Lynch

2025/11/30 10:32

WWE Survivor Series Women’s WarGames 2025

WWE

AJ Lee, Alexa Bliss, Charlotte Flair, Iyo Sky and Rhea Ripley prevailed in the women’s WarGames match at WWE Survivor Series 2025. This was a highly satisfying back-and-forth match filled with weapons, though the format did change as there were no pods.

The finish came when AJ Lee trapped Becky Lynch in the Black Widow for the babyface win, setting up an inevitable singles match between Lynch and Lee.

WWE Survivor Series WarGames 2025 | Women’s WarGames Highlights

  • Charlotte Flair walked out first and entered the cage. Conspicuous by its absence were the babyface and heel pods for WarGames. Next was Asuka. The two locked up with Asuka gaining the early advantage to the tune of “let’s go Charlotte!” chants.
  • Charlotte battle back, but the comeback was short-lived as Asuka caught Flair in midair with a knee. Huge heat for Asuka.
  • Iyo Sky was out next with her full entrance. She had a trash can lid with her name on it. This ex-Kabuki Warrior was ready for war. Asuka grabbed the lid from Iyo, but was unable to connect on a swing. Iyo tried a springboard from the other ring, but slipped as she hit a clothesline. Iyo made sure to land a running knee in the corner with the trash can lid.
  • Iyo tried a suplex on the metal between the rings. She settled for a drop toe hold instead. Next out was Becky Lynch, who immediately blasted Iyo Sky with a kendo stick.
  • Becky Lynch tried to reunite with Charlotte, but Charlotte wanted no part of it. Charlotte and Lynch went back and forth with punches before Iyo Sky and Asuka reentered. Charlotte and Becky hit exploder suplexes on Asuka and Iyo Sky, respectively.
  • Bliss and Charlotte teamed up and cleaned house. Petco Park approved. Iyo Sky got in on the action as the babyfaces dominated, and the three shared a triple embrace.
  • Out came Kairi Sane with a chain. Kairi got all of her stuff in on the babyfaces, including a step-up forearm in the corner on Bliss. Kairi hit a modified tarantula on Charlotte before ascending to the top rope for a flying forearm. Despite being a heel, fans cheered when Kairi swung her chain in celebration. There were even light chants of “let’s go Kairi.”
  • The heels literally chained up the babyfaces and hit a triple dropkick. AJ Lee was out next as Becky Lynch held the door. Lee climbed into the cage and hit a cross body block on all the heels except Becky. Lynch avoided Lee at all costs, but AJ caught her and banged her head into multiple turnbuckles.
  • Kairi Sane cut off Lee, but Lee gained the upper hand. Before an AJ vs. Asuka tease could pay off, the heels ganged up on AJ Lee before the babyfaces made the save.
  • Nia Jax walked out with a purpose. She didn’t have a weapon, nor did she need one. Jax laid waste to every babyface breathing with ease. All this with Lash Legend still on deck.
  • Rhea Ripley came out, with trash can in hand, to the loudest pop to this point. A masked Rhea Ripley went to work on every heel, and even took out Rhea Ripley with a double dropkick. Rhea and Iyo teamed up as Ripley locked Iyo Sky in a Prism Trap with a trash can over her head. Iyo did the rest with a sprinting dropkick.
  • After Nia Jax helped the heels gain the advantage, Lash Legend strolled out to the ring as the final entrant. Let the WarGames begin.
  • Lash showcased her strength by ragdolling the smaller wrestlers in AJ Lee and Alexa Bliss. She then hit a chokeslam on Charlotte Flair and blasted Iyo Sky with a forearm. Rhea Ripley stepped up as part of a back-and-forth exchange with Lash. Lash Legend hit a power bomb on Rhea followed by a big boot. Fans chanted “whoop that trick!”
  • Nia Jax got involved and piled on Ripley. The two monster heels hit dueling power bombs against the cage. Nia and Lash had everything in control until Asuka accidentally blew mist in Lash Legend’s face. Back came Rhea Ripley and them with an all-out assault on Nia Jax. Bliss hit the Twisted Bliss on Nia. Cornered and helpless, Becky Lynch was like a deer in the headlights as AJ Lee locked in the Black Widow for the submission win.

What’s Next After WWE Survivor Series WarGames?

AJ Lee won the match for her team with a submission victory over Becky Lynch, which will set up a singles match between the two down the line. With no IC Title on the line, this could be a multiple-match feud with added stipulations. Meanwhile, in the women’s tag team division, Lash Legend and Nia Jax will have a bone to pick with the Kabuki Warriors, particularly Asuka who accidentally blew blue mist into Lash Legend’s eyes. Lash was made to look unstoppable prior to this spot. She figures to be a major player in the entire women’s division—not just as a tag team wrestler.

Source: https://www.forbes.com/sites/alfredkonuwa/2025/11/29/wwe-survivor-series-wargames-2025-results-as-aj-lee-submits-becky-lynch/

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

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