Human beings are not very good at context switching; they prefer a more narrow focus, whatever the workflow task is in question. We need to be able to give our workforce the chance to work in a more direct line, that way they will ultimately design more appropriate machine interactions. Machines themselves are also getting better at refining their code and getting better at learning and augmenting what they do, so a virtuous circle is possible here if we’re smart about the way we use AI.
Nutanix Q&A bot: Why do you think some CIOs are holding back in terms of their implementation of AI into live production environments – is there still some level of mistrust at the user level, or does the total technology proposition fail to appear as robust as it needs to be?
Wendy M. Pfeiffer: The kinds of Machine Learning (ML) and Natural Language Processing (NLP) that companies need to really use in production are the ones that understand the nuances of the way we work. They need granular tuning that works on a user-agnostic, internationally culturally aware basis, and they need to be able to utilize unique company training and interaction data that makes the difference between people liking it and adopting it, or people hating it. The resulting AI technologies will flourish in live production environments for any CIO.
Nutanix Q&A bot: What kind of real kickstart do you think AI could use to promote its adoption and ubiquity?
Wendy M. Pfeiffer: I’m part of an organization called Association for Inclusive AI (AIAI), and the work here is part of what’s really going to make adoption more widespread. We know that the social cohort of individuals building AI engines is not broad enough. This group has until now been too narrow in socio-economic terms, in cultural scope, in gender and neural diversity, and even in terms of age spread. As a simple example, think about the fact that some older people talk with a slower cadence, as do some people with disabilities. How can we expect NLP interfaces to work effectively for mission-critical and life-critical applications unless we build them with training data that includes a total lack of bias for speech cadence?
Nutanix Q&A bot: What really makes AI work for human beings intelligently, practically, and pragmatically?
Wendy M. Pfeiffer: What I truly love is consumer technology (even though I work for an enterprise IT organization) and right now I often think about the fact that, during this time of global pandemic, when we all pivoted to work from home, we started being more reliant on home technologies and consumer-grade tech. All that technology had, in so many ways, done a better job of making itself invisible to us. I think this has shown us how enterprise technologies have been left behind in some sense. This is why digital transformation has gone from the aspirational to the foundational–that is, we need this stuff to work fast, first-time, intuitively, and intelligently.
Going forward, the best AI will be able to deliver granular and nuanced capability that people don’t even notice. That’s a trait you can apply to all the best ML-enhanced technologies that already exist – I mean, when you drive your car, do you think about how the fuel injection system is working? When you travel by airplane, do you sit there and think about the thousands of course-corrections each hour that are executed by the autopilot? When you use a word processor, do you stop to think about the application parallelism that is allowing you to both type and, concurrently, get alerted to spellcheck errors? Making infrastructure invisible is what we’re talking about here, and it is perhaps no coincidence that this has been embedded in the DNA of Nutanix from the start.