My Account Log in

1 option

Large-scale Real-time Stream Processing and Analytics / O'Reilly Media, Inc..

O'Reilly Online Learning: Academic/Public Library Edition Available online

View online
Format:
Conference/Event
Video
Author/Creator:
O'Reilly Media, Inc., author.
Conference Name:
Strata Conference + Hadoop World Conference (2015 : San Jose).
Language:
English
Subjects (All):
Real-time data processing.
Data mining.
Genre:
Electronic videos.
Physical Description:
1 online resource (1 video file, approximately 7 hr., 5 min.)
Edition:
1st edition
Other Title:
Moving toward artificial intelligence with neural networks and machine learning
Place of Publication:
O'Reilly Media, Inc., 2015.
System Details:
video file
Summary:
Streaming data enables you to rapidly assess and respond to events, but only if you have the right methods for processing it. In this unique O’Reilly video collection—taken from live sessions at Strata + Hadoop World 2015 in San Jose, California—you’ll learn about several analytics tools and event mining techniques from experts in the field. Learn how to capture, process, and respond to high-velocity data quickly. This video collection includes: Going Real-time: Data Collection and Stream Processing with Apache Kafka jay kreps (Confluent) Discover what happens when every click, impression, database change, and application log is available as a real-time stream of well-structured data—based on real-world examples from LinkedIn and other organizations. Stream Processing Everywhere—What to Use? Jim Scott (MapR Technologies, Inc.) To help you decide which solution to use for processing data from social media streams and sensor devices in real time, Jim compares three Apache projects—Storm, Spark, and Samza. From Source to Solution: Building a System for Machine and Event-Oriented Data Eric Sammer (Rocana) Follow the flow of data through an end-to-end system built to handle tens of terabytes an hour of event-oriented data, providing real time streaming, in-memory, SQL, and batch access to this data. You’ll learn how Hadoop, Kafka, Solr, and Impala/Hive were stitched together to build this system. Spark Streaming—The State of the Union, and Beyond Tathagata Das (Databricks) Spark Streaming extends the core Apache Spark API to perform large-scale stream processing. In this session, you’ll learn interesting use cases of Spark Streaming in the wild, as well as interesting developments like the brand new Python API. Dynamic Events in Massive Data Streams, from Astrophysics to Marketing Automation Kirk Borne (George Mason University) Big data stream analytics and massive event mining techniques are critical in several domains, including astrophysics (the Large Synoptic Survey Telescope), social uprisings, health epidemics, seismology, cybersecurity, and more. Kirk address these parallels, their big data applications, and some anticipated analytics solutions, including Decision Science-as-a-Service. TSAR (the TimeSeries AggregatoR)—How to Count Tens of Billions of Daily Events in Real Time Using Open Source Technologies Anirudh Todi (Twitter Inc.) Find out how Twitter built TSAR from the ground up with Python and Scala on technologies such as Storm and Ka...
Participant:
Presenter, Ben Lorica ... [and ten others].
Notes:
Online resource; Title from title screen (viewed June 16, 2015)
Title taken from thumbnail image on resource description page (Safari, viewed July 1, 2015)
Selections from Strata + Hadoop World 2014 (that is, 2015).
OCLC:
913535088

The Penn Libraries is committed to describing library materials using current, accurate, and responsible language. If you discover outdated or inaccurate language, please fill out this feedback form to report it and suggest alternative language.

Find

Home Release notes

My Account

Shelf Request an item Bookmarks Fines and fees Settings

Guides

Using the Find catalog Using Articles+ Using your account