Matteo Berrettini vs. Taylor Fritz Prediction, Odds, Picks for US Open 2024

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Written by Ryan Leaver
Matteo Berrettini vs Taylor Fritz Tennis Prediction.
Our Matteo Berrettini and Taylor Fritz tennis prediction is based on thousands of simulations of the upcoming match.

Matteo Berrettini and Taylor Fritz will lock horns in the second round of the US Open 2024 on Wednesday.

Based on updated simulation results, Dimers' advanced tennis model (see Dimers Pro for full access) predicts Taylor Fritz as the most likely winner of the match.

"We have simulated the outcome of Wednesday's Berrettini-Fritz match 10,000 times," said Dimers data analyst Greg Butyn.

"With the latest updates and numerous other variables, we estimate Taylor Fritz' chance of winning at 63%, with Matteo Berrettini at 37%."

Berrettini vs. Fritz Updates and Essential Details

The US Open 2024 match between Matteo Berrettini and Taylor Fritz is scheduled to start on Wednesday at 8:25PM ET.

  • Who: Matteo Berrettini vs. Taylor Fritz
  • Date: Wednesday, August 28, 2024
  • Approx. Time: 8:25PM ET/5:25PM PT
  • Tournament: US Open Men's Singles 2024
  • Round: Second round

All dates and times mentioned in this article are United States Eastern Time unless otherwise stated.

Dimers.com's in-depth preview of Wednesday's Berrettini vs. Fritz match includes our prediction, picks and the latest betting odds.

Before making any Matteo Berrettini vs. Taylor Fritz picks, be sure to check out the latest tennis predictions and betting advice from Dimers Pro.

Berrettini vs. Fritz Prediction: Who Will Win?

Using innovative machine learning and data, we have simulated the outcome of Wednesday's Berrettini-Fritz men's singles match 10,000 times as part of our tennis predictions coverage.

Our independent predictive model gives Fritz a 63% chance of defeating Berrettini in the US Open 2024.

Additionally, Fritz has a 58% chance of winning the first set, according to our model.

 

Matteo Berrettini vs. Taylor Fritz Odds

We have sourced the most up-to-date betting odds in America for this match, which are listed here:

Bet Type Berrettini Fritz
Moneyline +150 -189
First Set +120 -152

All odds are correct at the time of publication and are subject to change.

Berrettini vs. Fritz Picks

Our model's strongest edge in the Berrettini vs. Fritz match is on the first set.

Our expert predictions, matched against the best odds, reveal the best tennis picks for every tournament throughout the year.

Unlimited access to our picks, including this one, is available via Dimers Pro.

Conclusion

We predict Taylor Fritz, with a 63% win probability, will likely beat Matteo Berrettini at the US Open 2024.

AI and automation have enhanced this article to quickly deliver accurate Berrettini vs. Fritz insights, with human oversight ensuring high editorial quality. Our predictions are sourced from up-to-date data to help you make informed decisions. For additional resources and advice on responsible gambling, please call 1-800-GAMBLER.

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More on Tennis

Keep up with the latest tennis betting news and our data-led tennis best bets and parlay picks throughout the year. Plus, Dimers' ATP and WTA world rankings showcase our in-house approach to accurately ranking every men's and women's player in the world.

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Written by
Ryan Leaver
Senior Sports and Sports Betting Editor

Ryan Leaver uses advanced statistical models and simulations to predict outcomes and provide predictions for the NBA, NFL, college football, college basketball, and soccer. He offers detailed game previews, best bets, props, and futures articles.

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