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Driven Brands to Participate in the Baird 2025 Global Consumer, Technology & Services Conference

Driven Brands to Participate in the Baird 2025 Global Consumer, Technology & Services Conference

Business Wire27-05-2025

CHARLOTTE, N.C.--(BUSINESS WIRE)--Driven Brands Holdings Inc. (NASDAQ: DRVN) ('Driven Brands' or the 'Company') today announced that it will participate in the Baird 2025 Global Consumer, Technology & Services Conference in New York. The Company's fireside chat is scheduled to begin at 10:50 a.m. ET on Tuesday, June 3, 2025.
The fireside chat will be webcast live from the Company's Investor Relations website at investors.drivenbrands.com on the Events & Presentations page. It will also be available for replay on the Company's Investor Relations site for at least 30 days.
About Driven Brands
Driven Brands ™, headquartered in Charlotte, NC, is the largest automotive services company in North America, providing a range of consumer and commercial automotive services, including paint, collision, glass, vehicle repair, oil change, maintenance, and car wash. Driven Brands is the parent company of some of North America's leading automotive service businesses including Take 5 Oil Change ®, Meineke Car Care Centers ®, Maaco ®, 1-800-Radiator & A/C ®, Auto Glass Now ®, and CARSTAR ®. Driven Brands has approximately 4,800 locations across the United States and 13 other countries, and services tens of millions of vehicles annually. Driven Brands' network generates approximately $2.0 billion in annual revenue from approximately $6.1 billion in system-wide sales.

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