Dell Technologies Realize magazine Issue 2 | Page 10

08 A NEW ZEITGEIST One emerging job title aims to clarify some of these ambiguities. Much as the term “data scientist” was relatively obscure 15 years ago, “data ethicist” has yet to hit zeitgeist status. But the role, designed to help companies consider the ethical implications of their practices, is slowly gaining traction. In some cases, it’s already taken off. Reid Blackman, Ph.D., is the founder of Virtue Consultants, a firm of more than 60 ethicists spread across the globe. With expertise in data and AI, the Virtue network advises corporations in areas such as privacy, fairness (including bias), trust, and respect. “I want companies to do better,” Blackman explains, “and now, they have a financial incentive, because consumers and employees are demanding it.” Virtue’s client services go beyond assessing simple cases of data misuse. For instance, the company is currently in talks with a facial-recognition startup to determine the ethical ramifications of each function of its API, including how data is stored, disclosed, and shared. One of Virtue’s objectives is to instill confidence in corporate decision makers who are responsible for data missteps. “Companies are intimidated by the topic. They think it’s going to require a whole bunch of technical chops— but making certain kinds of decisions doesn’t require deep technological knowledge,” Blackman says. “Leaders should be educated about what the issues are so that they feel empowered to make decisions in a responsible way.” As organizations continue to make data central to their operations, experts like Blackman predict that moral crossroads will only continue to crop up. What’s more, efforts to clearly define just who answers such questions often do not keep pace with the rate of innovation. Lisa Spelman,vice president, Data Center Group, and general manager, Intel Xeon Processors and Data Center Marketing, cautions against assigning ethical oversight solely to the data science team. “A data scientist is a mathematician, a deeply technical resource— not necessarily an ethicist,” says Spelman. “So, if you are putting all of that responsibility on your data science team, it’s too big of a burden, and can slow down the path to success.” Instead, Blackman suggests that every employee who touches data should have basic knowledge of its ethical implications. A chief privacy officer or chief data officer, for instance, must not only work with a development team to enact privacy policies and best practices, but he or she must also educate other executives to ensure their buy-in. THE INTERSECTION OF AI AND DATA ETHICS Moral quandaries associated with AI open a whole new can of worms, ethically speaking, explains Blackman. “There was data well before there was artificial intelligence. But because AI is all about data, data ethics is almost—not quite, but almost—a subset of the discipline,” he notes. As such, ethics around training AI are becoming increasingly salient. AI algorithms present a twofold challenge: Companies must consider both input (are algorithms biased in any way?) as well as output (where and with whom is the resulting data shared, and is it leading to a valuable outcome?). Spelman suggests this is where the data ethicist can facilitate honest conversations as they’re building out AI capabilities—from the very earliest stages of algorithm development. “This will give you the capability to