Time: April 14, 2015 from 9am to 10am
Location: Online
Website or Map: http://goo.gl/DDAAHG
Event Type: dsc, webinar
Organized By: Tim Matteson, Co-Founder, Data Science Central
Latest Activity: Mar 23, 2015
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Join us April 14th at 9am PDT for our latest DSC's Webinar Series: The Science of Segmentation: What Questions You Should be Asking Your Data? sponsored by Pivotal.
Space is limited. |
Enterprise companies starting the transformation into a data-driven organization often wonder where to start. Companies have traditionally collected large amounts of data from sources such as operational systems. With the rise of big data, big data technologies and the Internet of Things (IoT), additional sources – such as sensor readings and social media posts – are rapidly becoming available. In order to effectively utilize both traditional sources and new ones, companies first need to join and view the data in a holistic context. After establishing a data lake to bring all data sources together in a single analytics environment, one of the first data science projects worth exploring is segmentation, which automatically identifies patterns.
In this DSC webinar, two Pivotal data scientists will discuss:
They will also share some stories from past data science engagements, outline best practices and discuss the kinds of insights that can be derived from a big data approach to segmentation using both internal and external data sources.
Panelist:
Grace Gee, Data Scientist -- Pivotal
Jarrod Vawdrey, Data Scientist -- Pivotal
Hosted by:
Tim Matteson, Co-Founder -- Data Science Central
Again, Space is limited so please register early: |
Reserve your Webinar seat now |
After registering you will receive a confirmation email containing information about joining the Webinar. |
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