This article from Threat Stack explains the company’s concerted effort to balance data science and development with data security under the change management framework, with an eye towards operationalizing machine-based learning into products and services via “hypothesis-driven development.”
Rationalizing Data Science, Machine Learning and Change Management for Security Leadership

CDPO, CDPO/BR, CDPO/FR, CIPM, CIPP/A, CIPP/C, CIPP/E, CIPP/G, CIPP/US, CIPT, LGPD
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