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Higginbotham Partners with Grace Hill

HR Tech Outlook | Friday, August 27, 2021

Higginbotham has evolved into a single-source solution for employers to control their exposures, adding HR services to its portfolio of insurance, risk management, and employee benefits services in 2018 with the addition of a team that has grown to 80 HR and payroll professionals.

Fremont, CA: Higginbotham, the nation's 20th largest independent insurance, financial, and HR services firm, announced its partnership with Grace Hill, the innovator of talent and customer management solutions for real estate, covering policies, training, performance assessment, and surveys. The collaboration with Grace Hill is a progression of Higginbotham's single source initiative to become the technology platform that powers multifamily clients to manage and develop talent and improve property performance.

Higginbotham is a commercial and personal insurance and employee benefits broker with an HR Services Division that provides broad-based outsourced, and insourced human resources support and consulting. Within its HR Services, Division is a specialty practice serving the multifamily industry.

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"We're honored to have Grace Hill as our partner. They are the highly-regarded, market leader in modern talent management solutions and technology in multifamily," said Dennis Weyenberg, COO of Higginbotham HR Services. "We've specialized in the multifamily industry for over 20 years, developing HR best practices and insurance benchmarks based on industry complexities. The partnership gives our clients and their management teams access to a premier platform for HR, safety and compliance training within their core training programs. Our combined proficiency not only strengthens the relationships with our shared clients, it also strengthens the relationships they have with their people. That brings value to their business."

Grace Hill's property performance loop establishes the policies, training, assessment, and survey components of the talent and customer experience management process. The integrated, scalable, and seamless platform, which includes Vision Learning Management System, PolicyPartner, Validate, and KingsleySurveys, continues to build upon itself and enables customers to configure the process to develop, retain and grow their talent and property performance.

"Multifamily is continuously seeking innovative ways to streamline and optimize its HR initiatives. The Grace Hill team is beyond pleased to be chosen as the preferred provider of policies, training and assessments to Higginbotham as they expand their market share in multifamily," said Kendall Pretzer, Grace Hill CEO. "Together, our technology forward solutions can provide a full human capital management system for our joint clients. By partnering with industry leaders who have decades of experience building and managing software, clients can enjoy the confidence and peace of mind their teams are empowered to optimize property performance."

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