RRBB Continues to Hire Further Developing Growth Plan

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RRBB Continues to Hire Further Developing Growth Plan

CFO Tech Outlook | Friday, January 06, 2023

RRBB is pleased to welcome Ashley Condo to its team. A resident of Bound Brook, she joins RRBB as a Tax Supervisor. Additionally, the firm is excited to officially welcome Bobby Fenton to its team after an internship beginning in January 2022. A resident of Whitehouse Station, he now joins RRBB as an Audit Associate.

Ashley Condo

Joe CaplanRRBB Tax Department Chair, said, “We are thrilled to include Ashley on our roster of superstars. She brings outstanding knowledge and is an asset to building the future of our firm. We look forward to seeing her grow and succeed here at RRBB.”

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“I’m excited to be a part of the RRBB team with other dedicated professionals who work hard to provide clients with exceptional service. Everyone here is friendly and intelligent – two qualities I feel are important for success,” Ashley adds.

Ashley comes to the firm with five years of experience from a larger accounting firm. There, she was able to learn all aspects of accounting, tax, and audit. Ashley focuses her practice on tax preparation and review for partnerships and individuals. She enjoys speaking with individual clients as well as those in the professional services industry, such as law firms and real estate businesses. She also understands working with investment corporations and handling trusts and bookkeeping.

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In addition to her technical skillset, Ashley brings mentorship and technology advancement to RRBB. She will be a part of the firm’s Technology Committee and serve as a point of contact for our newer staff accountants. Ashley also commits to giving back to her community through Jack’s Kids, supporting families dealing with serious childhood illnesses or disabilities. She spends her free time with family, friends, and her dog, Mako, typically boating and fishing.

Ashley received her Bachelor of Science in Business Administration from Rider University in 2017, where she was a member of the Accounting Society. Additionally, she earned an associate degree from Raritan Valley Community College in 2015. Ashley is currently working towards her CPA license.

Bobby Fenton

Howard CondoRRBB Assurance Department Chair, said, “We quickly realized what an asset Bobby is to the team, while also easily fitting in with the firm culture. After extending his internship once, we knew we had to offer him a permanent position as soon as possible.”

“So far, my time at RRBB has been quite the learning experience,” Bobby adds. “I enjoy being a part of this evolving industry, especially while working side-by-side with my coworkers here. Because our partners have an open-door policy, everyone here is approachable, and you can learn a lot by asking questions and getting relatable answers.”

Bobby focuses his practice on the audit and review of financial statements for non-public companies. In addition, he often conducts revenue reports and sale audits. Bobby works with clients in the retail, bioscience, and manufacturing industries.

With twelve years of experience in the retail industry, Bobby has a unique background that serves the firm’s clients well. There, he was in inventory analysis and managerial positions for a national supermarket retailer. Bobby was responsible for making 28 locations more profitable by utilizing cost-reduction strategies. Thus, he was able to benefit not only the company itself but also the customers.

Bobby is expected to graduate from The College of New Jersey in December of 2023 with a Bachelor of Science in Accounting. He is also working towards his CPA license. In his free time, Bobby participates in a pool league hosted by the American Poolplayers Association, which he has done for the past seven years. He has even traveled to Las Vegas to compete in the U.S. Amateur Championship, along with another one of our accountants, Joe Sheehan.

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