February 6, 2020

448 words 3 mins read

Data science + design thinking: A perfect blend to achieve the best user experience

Data science + design thinking: A perfect blend to achieve the best user experience

Design thinking is a methodology for creative problem-solving developed at the Stanford d.school. The methodology is used by world-class design firms like IDEO and many of the world's leading brands like Apple, Google, Samsung, and GE. Michael Radwin prepares a recipe for how to apply design thinking to the development of AI/ML products.

Talk Title Data science + design thinking: A perfect blend to achieve the best user experience
Speakers Michael Radwin (Intuit)
Conference O’Reilly Artificial Intelligence Conference
Conf Tag Put AI to Work
Location San Jose, California
Date September 10-12, 2019
URL Talk Page
Slides Talk Slides
Video

As data scientists, we invest much of our time on the business problem, the data, the statistics, the algorithm, and the model. But we can’t afford to overlook one very important component: the customer. A great AI and ML model with a poorly designed user experience is ultimately is going to fail. The world’s best data products are born from a perfect blend of data science and amazing user experience. Design thinking is a methodology for creative problem solving developed at the Stanford d.school and is used by world-class design firms like IDEO and many of the world’s leading brands like Apple, Google, Samsung, and GE. Michael Radwin prepares a recipe for applying design thinking to the development of AI/ML products. You’ll discover deep customer empathy and fall in love with the customer’s problem (not the team’s solution), and you’ll learn to go broad and narrow, focusing on what matters most to customers. Michael shows you how to get customers involved in the development process by running rapid experiments and quick prototypes. These lessons blending data science and design thinking can be applied to products that leverage supervised and unsupervised machine learning models, as well as “old-school” AI expert systems. You’ll take a look at several case studies along the way. Mint users lose $250 million in overdraft fees every year. Using the data from Mint’s 10 million users, Intuit applied a machine learning algorithm that predicts if you’re likely, within three days, to have an overdraft. Mint alerts you in time, with helpful suggestions on how to avoid the exorbitant insufficient funds fee. QuickBooks Self-Employed has an ML model and UX that allows automatic categorization of whether trips are business or personal to accurately rack up potential tax deductions. TurboTax’s Tax Knowledge Engine uses advanced AI to translate more than 80,000 pages of US tax requirements and instructions into a software oracle that can explain computations to DIY tax filers so they have greater confidence in the calculations in their returns, and can maybe save some of the 7 billion hours Americans spend collectively filing taxes every year.

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