State of Data 2014: Data Science Teams in the Wild (DataEDGE 2014)
State of Data 2014: Data Science Teams in the Wild
Michael Manoochehri, author, Data Just Right
DataEDGE 2014: http://dataedge.ischool.berkeley.edu/2014/
Organizations rarely rely on individual data scientists to gain value from data — in practice, solving data challenges involves teams of engineers, statisticians, policy makers, and IT staff. In addition, these teams must use a variety of specialized tools and practices. We’ll take a look at the current state of data science by exploring examples of how diverse teams have effectively solved data challenges.
Видео State of Data 2014: Data Science Teams in the Wild (DataEDGE 2014) канала Berkeley School of Information
Michael Manoochehri, author, Data Just Right
DataEDGE 2014: http://dataedge.ischool.berkeley.edu/2014/
Organizations rarely rely on individual data scientists to gain value from data — in practice, solving data challenges involves teams of engineers, statisticians, policy makers, and IT staff. In addition, these teams must use a variety of specialized tools and practices. We’ll take a look at the current state of data science by exploring examples of how diverse teams have effectively solved data challenges.
Видео State of Data 2014: Data Science Teams in the Wild (DataEDGE 2014) канала Berkeley School of Information
Показать
Комментарии отсутствуют
Информация о видео
26 июля 2014 г. 6:18:46
01:19:46
Другие видео канала
Putting Machine Learning into Production: An Overview — Srijith Rajamohan, DatabricksI School Faculty Spotlight: Morgan AmesWhen Data Science Meets Design - Alan McConchie, Stamen Design (DataEDGE 2014)The I School in 2019: Where We’ve Been and Where We’re GoingRoundtable Discussion: Refusal of Surveillance Tech, Part 1 (April 12, 2021)Career Services: Networking TipsWhy your Big Data Initiative Sucks and What to do About it - DataEDGE 2015How to Scale AI-led Analytics — Umair Rauf (DataEDGE 2019)Toward Human-Centered Algorithmic Technologies (Min Kyung Lee)DataEDGE Conference: A new vision for data science — May 30--31, 2013WordSeer FeaturesInsight and Oversights: Shaping the Future of Visual Analytics with AI — Alvitta OttleySports Analytics and the Giants: Opportunities for Revenue Generation | DataEDGE 2016UC Berkeley School of Information Winter 2020 CommencementConstructing Experiments to Inform Business Innovation (DataEDGE 2014)Info 159/259. Natural Language ProcessingWomen in Data Science at UC Berkeley 2021: Data Science in ResearchTrainspotting and Predicting Train Delays | DataEDGE 2016Panel: Size Matters: Big Data, New Vistas in the Humanities and Social Sciences (DataEDGE 2012)At Scale and under Pressure: How Social Media Moderate, Choreograph, and Censor Public Discourse