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Jobcase Strengthens Engineering Leadership While Further Investing In Workforce Data Expertise

HR Tech Outlook | Friday, April 22, 2022

Fremont, CA: Jobcase, an online community dedicated to empowering and advocating for workers, has appointed Paw Andersen as its Chief Technology Officer. Over the last two decades, Andersen has worked in a variety of roles to help build and transform several technology companies, most notably as a senior engineering leader at Uber and, most recently, as CTO for Metromile. He has extensive experience in many different tech sectors, including GIS, fintech, and e-commerce, as well as in organizations of all sizes. Andersen will be in charge of leading technological growth and staff at Jobcase, allowing the company to create innovative and empowering solutions for both members and workers.

"Jobcase supports and connects millions of workers everyday as they help one another navigate to their 'better tomorrow'. In order to continue building the world-class, go-to platform workers so rightly deserve, we need to continue scaling our best-in-class engineering team and technology stack," remarked Fred Goff, co-founder, and CEO of Jobcase. "With the CTO baton passed to Paw, and Tony focusing his efforts on unlocking the value in data for our members, I am confident Jobcase will continue doing just that. We are humbled and proud to have Paw join our leadership team, and I am so excited for the acceleration in breadth and depth of impact we will now have in empowering workers."

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Before joining Jobcase, Andersen was CTO at Metromile, a tech disruptor in the auto insurance space, where he led machine learning efforts to provide usage-based cost savings and a customer-centric experience. Prior to that, he held senior positions at several burgeoning technology companies, including Uber and Groupon. He was most notably a senior engineering leader in Uber's Advanced Technology Group, where he grew his team from 27 to 700 during a period when Uber was hiring up to 10,000 new drivers per day.

Andersen is deeply committed to missions that improve society, and he believes that Jobcase's focus on the challenges of working people is critical to the health of our economy. He is proud of his role in creating hundreds of thousands of job opportunities with Uber, and he recognizes that his new role can help influence change in many other areas of the workforce.

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