Apache Spark Streaming with Python and PySpark:
"Spark Streaming is becoming incredibly popular, and with good reason. According to IBM, 90% of the data in the World today was created in the last two years alone. Our current output of data is roughly 2.5 quintillion bytes per day. The World is being immersed in data, more so each and every d...
Gespeichert in:
Beteiligte Personen: | , |
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Weitere beteiligte Personen: | |
Format: | Elektronisch Video |
Sprache: | Englisch |
Veröffentlicht: |
[Place of publication not identified]
Packt Publishing
2018
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Schlagwörter: | |
Links: | https://learning.oreilly.com/library/view/-/9781789808223/?ar |
Zusammenfassung: | "Spark Streaming is becoming incredibly popular, and with good reason. According to IBM, 90% of the data in the World today was created in the last two years alone. Our current output of data is roughly 2.5 quintillion bytes per day. The World is being immersed in data, more so each and every day. As such, analyzing static DataFrames for non-dynamic data is becoming less and less of a practical approach to more and more problems. This is where data streaming comes in, the ability to process data almost as soon as it's produced, recognizing the time-dependency of the data. Apache Spark Streaming gives us an unlimited ability to build cutting-edge applications. It is also one of the most compelling technologies of the last decade in terms of its disruption in the big data world. Spark provides in-memory cluster computing, which greatly boosts the speed of iterative algorithms and interactive data mining tasks. Spark also is a powerful engine for streaming data as well as processing it. The synergy between them makes Spark an ideal tool for processing gargantuan data fire hoses. Tons of companies, including Fortune 500 companies, are adapting Apache Spark Streaming to extract meaning from massive data streams; today, you have access to that same big data technology right on your desktop. This Apache Spark Streaming course is taught in Python. Python is currently one of the most popular programming languages in the World! Its rich data community, offering vast amounts of toolkits and features, makes it a powerful tool for data processing. Using PySpark (the Python API for Spark), you will be able to interact with Apache Spark Streaming's main abstraction, RDDs, as well as other Spark components, such as Spark SQL and much more! Let's learn how to write Apache Spark Streaming programs with PySpark Streaming to process big data sources today!"--Resource description page |
Beschreibung: | Title from resource description page (Safari, viewed October 23, 2018). - Instructor's name from title screen |
Umfang: | 1 Online-Ressource (1 streaming video file (3 hr., 24 min., 2 sec.)) |
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spelling | McAteer, Matthew P. RednerIn spk Apache Spark Streaming with Python and PySpark James Lee, Matthew P. McAteer, Tao W [Place of publication not identified] Packt Publishing 2018 1 Online-Ressource (1 streaming video file (3 hr., 24 min., 2 sec.)) zweidimensionales bewegtes Bild tdi rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Title from resource description page (Safari, viewed October 23, 2018). - Instructor's name from title screen "Spark Streaming is becoming incredibly popular, and with good reason. According to IBM, 90% of the data in the World today was created in the last two years alone. Our current output of data is roughly 2.5 quintillion bytes per day. The World is being immersed in data, more so each and every day. As such, analyzing static DataFrames for non-dynamic data is becoming less and less of a practical approach to more and more problems. This is where data streaming comes in, the ability to process data almost as soon as it's produced, recognizing the time-dependency of the data. Apache Spark Streaming gives us an unlimited ability to build cutting-edge applications. It is also one of the most compelling technologies of the last decade in terms of its disruption in the big data world. Spark provides in-memory cluster computing, which greatly boosts the speed of iterative algorithms and interactive data mining tasks. Spark also is a powerful engine for streaming data as well as processing it. The synergy between them makes Spark an ideal tool for processing gargantuan data fire hoses. Tons of companies, including Fortune 500 companies, are adapting Apache Spark Streaming to extract meaning from massive data streams; today, you have access to that same big data technology right on your desktop. This Apache Spark Streaming course is taught in Python. Python is currently one of the most popular programming languages in the World! Its rich data community, offering vast amounts of toolkits and features, makes it a powerful tool for data processing. Using PySpark (the Python API for Spark), you will be able to interact with Apache Spark Streaming's main abstraction, RDDs, as well as other Spark components, such as Spark SQL and much more! Let's learn how to write Apache Spark Streaming programs with PySpark Streaming to process big data sources today!"--Resource description page Spark (Electronic resource : Apache Software Foundation) Streaming technology (Telecommunications) Big data Python (Computer program language) Webcasts as Topic Spark (Electronic resource : Apache Software Foundation) (OCoLC)fst01938143 En continu (Télécommunications) Données volumineuses Python (Langage de programmation) Big data (OCoLC)fst01892965 Python (Computer program language) (OCoLC)fst01084736 Streaming technology (Telecommunications) (OCoLC)fst01134637 Electronic videos Lee, James VerfasserIn aut Tao W. VerfasserIn aut |
spellingShingle | Lee, James Tao W. Apache Spark Streaming with Python and PySpark Spark (Electronic resource : Apache Software Foundation) Streaming technology (Telecommunications) Big data Python (Computer program language) Webcasts as Topic Spark (Electronic resource : Apache Software Foundation) (OCoLC)fst01938143 En continu (Télécommunications) Données volumineuses Python (Langage de programmation) Big data (OCoLC)fst01892965 Python (Computer program language) (OCoLC)fst01084736 Streaming technology (Telecommunications) (OCoLC)fst01134637 Electronic videos |
subject_GND | (OCoLC)fst01938143 (OCoLC)fst01892965 (OCoLC)fst01084736 (OCoLC)fst01134637 |
title | Apache Spark Streaming with Python and PySpark |
title_auth | Apache Spark Streaming with Python and PySpark |
title_exact_search | Apache Spark Streaming with Python and PySpark |
title_full | Apache Spark Streaming with Python and PySpark James Lee, Matthew P. McAteer, Tao W |
title_fullStr | Apache Spark Streaming with Python and PySpark James Lee, Matthew P. McAteer, Tao W |
title_full_unstemmed | Apache Spark Streaming with Python and PySpark James Lee, Matthew P. McAteer, Tao W |
title_short | Apache Spark Streaming with Python and PySpark |
title_sort | apache spark streaming with python and pyspark |
topic | Spark (Electronic resource : Apache Software Foundation) Streaming technology (Telecommunications) Big data Python (Computer program language) Webcasts as Topic Spark (Electronic resource : Apache Software Foundation) (OCoLC)fst01938143 En continu (Télécommunications) Données volumineuses Python (Langage de programmation) Big data (OCoLC)fst01892965 Python (Computer program language) (OCoLC)fst01084736 Streaming technology (Telecommunications) (OCoLC)fst01134637 Electronic videos |
topic_facet | Spark (Electronic resource : Apache Software Foundation) Streaming technology (Telecommunications) Big data Python (Computer program language) Webcasts as Topic En continu (Télécommunications) Données volumineuses Python (Langage de programmation) Electronic videos |
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