If you work in data science, you’re well aware of the sheer volume of high-risk, high-reward projects that are hypothetically possible. The fact that they’re high-reward means they’re exciting to think about, and the payoff would be huge if they succeed, but the high-risk piece means that you have to be smart about what you choose to work on and be wary of investing all your resources in projects that fail entirely or starve other, higher-value projects. This episode focuses mainly on Google X, the so-called “Moonshot Factory” at Google that is a modern-day heir to the research legacies of Bell Labs and Xerox PARC. It’s an organization entirely focused on rapidly imagining, prototyping, invalidating, and, occasionally, successfully creating game-changing technologies. The process and philosophy behind Google X are useful for anyone thinking about how to stay aggressive and “responsibly irresponsible,” which includes a lot of you data science folks out there.
In each episode, your hosts explore machine learning and data science through interesting (and often very unusual) applications.