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Greenshades Software Partners with JazzHR in Unified Platform

HR Tech Outlook | Monday, June 21, 2021

JazzHR's next-level recruiting and hiring will provide exceptional value to Greenshades clients, with all the features and support that Greenshades customers have come to expect.

FREMONT, CA: Greenshades Software, a leader in payroll, HR, and compliance solutions for midsized companies, announced a partnership with JazzHR, provider of award-winning applicant tracking software. The Greenshades unified payroll platform will now offer JazzHR features directly to Greenshades customers.

JazzHR's next-level recruiting and hiring will provide exceptional value to Greenshades clients, with all the features and support that Greenshades customers have come to expect.

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"Our focus is supporting our customers and helping them succeed," said Greenshades CEO David Rosas. "Our partnership with JazzHR will allow our customers to optimize and automate their recruiting lifecycle in a way that's fully integrated with the Greenshades HR and Payroll workflows they use today. The technology provided by JazzHR will allow our customers to succeed at tracking and recruiting talent in an increasingly competitive market."

Greenshades payroll and HR software is the independent, cloud-based solution companies can rely on. With robust employee self-service, proactive compliance, and a customizable, streamlined interface, Greenshades delivers an ideal payroll experience for users of Microsoft Dynamics and other ERPs.

"[JazzHR's] partner-focused sales approach is really about growth," said Sam Thomas, Director of Strategic Partnerships for Greenshades. "That's the kind of mentality we look for in an exceptional partner."

Since 2009, JazzHR has raised the bar in the recruiting software industry, with many of its innovations becoming industry-standard. They're the first company to put robust yet easy-to-use recruiting software in the hands of startups, growing companies, and even presidential campaigns.

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