Domino Data Lab Named a Winner of Built In’s Best Places to Work Award for Second Year in Row

January 7, 2022

Earns Placements on Built In’s 2022 Best Places to Work, Best Midsize Companies to Work For, and Best Paying Companies in San Francisco

SAN FRANCISCO - Jan. 6, 2022 - Domino Data Lab, provider of the leading Enterprise MLOps platform trusted by over 20% of the Fortune 100, today announced that Built In has selected it for several of its 2022 Best Places to Work Awards. Following the data-backed selection process, Domino has been honored in Built In’s San Francisco lists of Best Places to Work, Best Midsize Companies to Work For, and Best Paying Companies.

Domino continues to earn praise for its employee satisfaction and the quality of its workplace culture and benefits. Headquartered in San Francisco with a global workforce, this is the second consecutive year Domino has been named by Built In as one of the Best Midsize Companies and Best Paying Companies to work for in San Francisco.

“Each member of our team comes from a unique background and has different experiences which help us foster an environment of creativity and problem solving,” said Nick Elprin, CEO and co-founder of Domino Data Lab. “This culture promotes our team’s devotion to customers and helps us deliver results to the most sophisticated companies in the world.”

Built In determines the winners of Best Places to Work based on an algorithm, using company data about compensation, benefits, and companywide programming. To reflect the benefits candidates are searching for more frequently on Built In, the program also weighs criteria like remote and flexible work opportunities, programs for DEI, and other people-first cultural offerings.

“It is my honor to extend congratulations to the 2022 Best Places to Work winners,” says Sheridan Orr, Chief Marketing Officer, Built In. “This year saw a record number of entrants — and the past two years fundamentally changed what tech professionals want from work. These honorees have risen to the challenge, evolving to deliver employee experiences that provide the meaning and purpose today’s tech professionals seek.”

Domino is hiring! If you want to join our award-winning team and make a mark on data science to solve the world’s most important problems, we are hiring here in San Francisco, New York City, Boston, London, and remotely for select roles. Learn more about our career opportunities here.

About Domino Data Lab

Domino Data Lab powers model-driven businesses with its leading Enterprise MLOps platform that accelerates the development and deployment of data science work while increasing collaboration and governance. More than 20 percent of the Fortune 100 count on Domino to help scale data science, turning it into a competitive advantage. Founded in 2013, Domino is backed by Sequoia Capital and other leading investors. For more information, visit dominodatalab.com.

About Built In

Built In is creating the largest platform for technology professionals globally. Monthly, more than three million of the industry’s most in-demand professionals visit the site from across the world. They rely on our platform to stay ahead of tech trends and news, develop their careers and find opportunities at companies whose values they share. Built In also serves 1,800 innovative companies of all sizes, ranging from startups to the Fortune 100. By putting their stories in front of our uniquely engaged audience, we help them hire otherwise hard-to-reach tech professionals, locally, nationally or remotely. www.builtin.com

About Built In’s Best Places to Work

Built In’s esteemed Best Places to Work Awards, now in its fourth year, honor companies across numerous categories: 100 Best Places to Work, 50 Best Small Places to Work, 100 Best Midsize Places to Work, 50 Companies with the Best Benefits and 50 Best Paying Companies, 100 Best Large Companies to Work For, and 50 Best Remote-First Places to Work.


Back to Press Releases

Visit our blog to learn about data science trends, tools, best practices, and company announcements.