Critical Step Zero for Enterprise-Wide Automation Adoption
Enterprises must find the automation middle ground between software and humans to create an efficient system of checks and
Charlie Newark-French is Chief Operating Officer at Hyperscience. In that role, he oversees go-to-market, finance, and operations. Before joining Hyperscience, Charlie was a Partner at Fusion Global Capital, a growth stage venture capital fund focused on enterprise software. Notable investments include RingCentral (NYSE), The Trade Desk (NASDAQ), VeloCloud (VMware), and Barefoot Networks (Intel). In 2014, Charlie took the role of President at Fuze, where he helped scale the organization and lead the company through its acquisition by ThinkingPhones. Charlie joined Fuze’s acquirer, ThinkingPhones (rebranded as Fuze), in a sales leadership capacity. Charlie holds an MBA from Harvard Business School and a BA in Economics and Management from the University of Oxford (UK). He lives in New York and enjoys long-distance running on the weekends.
Enterprises must find the automation middle ground between software and humans to create an efficient system of checks and
Follow these best practices for data lake management to ensure your organization can make the most of your investment.
The need for automated data pipelines is clear. What role will data scientists play in bringing them about?
Developing an enterprise-ready application that is based on machine learning requires multiple types of developers.
Cloud optimization could offer the best method for reducing costs according to a new report.