Executive briefing usable machine learning - lessons from Stanford and beyond

"Despite a meteoric rise in data volumes within modern enterprises, enabling nontechnical users to put this data to work in diagnostic and predictive tasks remains a fundamental challenge. Peter Bailis (Sisu | Stanford University) details the lessons learned in building new systems and interfac...

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Detalles Bibliográficos
Otros Autores: Bailis, Peter, on-screen presenter (onscreen presenter)
Formato: Vídeo online
Idioma:Inglés
Publicado: [Place of publication not identified] : O'Reilly Media 2019.
Materias:
Ver en Biblioteca Universitat Ramon Llull:https://discovery.url.edu/permalink/34CSUC_URL/1im36ta/alma991009822828006719
Descripción
Sumario:"Despite a meteoric rise in data volumes within modern enterprises, enabling nontechnical users to put this data to work in diagnostic and predictive tasks remains a fundamental challenge. Peter Bailis (Sisu | Stanford University) details the lessons learned in building new systems and interfaces to help users quickly and easily leverage the data at their disposal with production experience from Facebook, Microsoft, and the Stanford DAWN project. Drawing on his research and startup experience, Peter examines why deep networks aren't a panacea for most organizations' data; how usability and speed are the best path to better models; why Facebook, Apple, Amazon, Netflix, and Google (FAANG) likely won't (and can't) dominate every vertical; and why automating feature selection is more practical than AutoML. This session is from the 2019 O'Reilly Artificial Intelligence Conference in San Jose, CA."--Resource description page.
Notas:Title from title screen (viewed July 22, 2020).
Descripción Física:1 online resource (1 streaming video file (48 min., 30 sec.)) : digital, sound, color