Library Hours
Monday to Friday: 9 a.m. to 9 p.m.
Saturday: 9 a.m. to 5 p.m.
Sunday: 1 p.m. to 9 p.m.
Naper Blvd. 1 p.m. to 5 p.m.

LEADER 00000cgm a22005297a 4500 
003    OCoLC 
005    20240129213017.0 
006    m     o  c         
007    cr cn||||||||| 
007    vz czazuu 
008    070221s2021    xx ---        o   vleng d 
019    1260705709|a1305892211 
020    9781801075596 
020    180107559X 
024 8  9781801075596 
029 1  AU@|b000068857835 
035    (OCoLC)1240165178|z(OCoLC)1260705709|z(OCoLC)1305892211 
040    TOH|beng|cTOH|dOCLCO|dNZCPL|dOCLCF|dOCLCO|dOCLCQ|dWSU
       |dOCLCO|dOCLCL 
049    INap 
099    Streaming Video O’Reilly for Public Libraries 
100 1  Chawla, Bhavuk,|eauthor. 
245 10 Big Data for Architects /|cChawla, Bhavuk.|h[O'Reilly 
       electronic resource] 
250    1st edition. 
264  1 |bPackt Publishing,|c2021. 
300    1 online resource (1 video file, approximately 7 hr., 39 
       min.) 
336    two-dimensional moving image|btdi|2rdacontent 
337    computer|bc|2rdamedia 
338    online resource|bcr|2rdacarrier 
347    video file 
365    |b134.99 
520    Get to grips with big data technologies and work on real-
       world big data projects confidently About This Video Get a
       holistic picture of the big data ecosystem Become an 
       expert in choosing big data technology as per the 
       requirements Get ready to build end-to-end big data batch 
       and streaming pipelines In Detail Do you want a guide that
       will help you to pick the right big data technology for 
       your project? Or do you want to get a solid understanding 
       of the big data architecture and pipelines? This course 
       will help you out. After highlighting the course structure
       and learning objectives, the course will take you through 
       the steps needed for setting up the environment. Next, you
       will understand the big data logical architecture, study 
       the evolution of big data technologies, and explore big 
       data pipelines. Moving along, you will become familiar 
       with ingestion frameworks, such as Kafka, Flume, Nifi, and
       Sqoop. Next, you will learn about key storage frameworks, 
       such as HDFS, HBase, Kudu, and Cassandra. Finally, you 
       will go through the various data formats and uncover key 
       data processing and data analysis frameworks. By the end 
       of this course, you will have a good understanding of the 
       big data architecture and technologies and will have 
       developed the skills to build real-world big data 
       pipelines. 
542    |fPackt Publishing|g2021 
550    Made available through: Safari, an O'Reilly Media Company.
588 0  Online resource; Title from title screen (viewed January 
       21, 2021). 
590    O'Reilly|bO'Reilly Online Learning: Academic/Public 
       Library Edition 
650  0 Streaming video. 
650  0 Internet videos. 
650  6 Vidéo en continu. 
650  6 Vidéos sur Internet. 
650  7 streaming video.|2aat 
655  4 Electronic videos. 
710 2  O'Reilly for Higher Education (Firm),|edistributor. 
710 2  Safari, an O'Reilly Media Company. 
856 40 |uhttps://ezproxy.naperville-lib.org/login?url=https://
       learning.oreilly.com/videos/~/9781801075596/?ar|zAvailable
       for O'Reilly for Public Libraries 
936    BATCHLOAD 
994    92|bJFN