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HEAD FIRST DESIGN PATTERNS: BUILDING EXTENSIBLE AND MAINTAINABLE OBJECT-ORIENTED SOFTWARE, SECOND EDITION
NRS 2360.00
 
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BIG DATA: PRINCIPLES AND BEST PRACTICES OF SCALABLE REAL-TIME DATA SYSTEMS
This book presents the lambda architecture, a scalable, easy-to-understand approach that can be built and run by a small team. you'll explore the theory of big data systems and how to implement them in practice. in addition to discovering a general framework for processing big data, you'll learn specific technologies like hadoop, storm and nosql databases. part 1 batch layer 2 data model for big data 2.1 the properties of data 2.2 the fact-based model for representing data 2.3 graph schemas 2.4 a complete data model for superwebanalytics.com 2.5 summary 3 data model for big data: illustration 3.1 why a serialization framework? 3.2 apache thrift 3.3 limitations of serialization frameworks 3.4 summary 4 data storage on the batch layer 4.1 storage requirements for the master dataset 4.2 choosing a storage solution for the batch layer 4.3 how distributed filesystems work 4.4 storing a master dataset with a distributed filesystem 4.5 vertical partitioning 4.6 low-level nature of distributed filesystems 4.7 storing the superwebanalytics.com master dataset on a distributed filesystem 4.8 summary 5 data storage on the batch layer: illustration 5.1 using the hadoop distributed file system 5.2 data storage in the batch layer with pail 5.3 storing the master dataset for superwebanalytics.com 5.4 summary 6 batch layer 6.1 motivating examples 6.2 computing on the batch layer 6.3 recomputation algorithms vs. incremental algorithms 6.4 scalability in the batch layer 6.5 mapreduce: a paradigm for big data computing 6.6 low-level nature of mapreduce 6.7 pipe diagrams: a higher-level way of thinking about batch computation 6.8 summary 7 batch layer: illustration 7.1 an illustrative example 7.2 common pitfalls of data-processing tools 7.3 an introduction to jcascalog 7.4 composition 7.5 summary 8 an example batch layer: architecture and algorithms 8.1 design of the superwebanalytics.com batch layer 8.2 workflow overview 8.3 ingesting new data 8.4 url normalization 8.5 user-identifier normalization 8.6 deduplicate pageviews 8.7 computing batch views 8.8 summary 9 an example batch layer: implementation 9.1 starting point 9.2 preparing the workflow 9.3 ingesting new data 9.4 url normalization 9.5 user-identifier normalization 9.6 deduplicate pageviews 9.7 computing batch views 9.8 summary part 2 serving layer 10 serving layer 10.1 performance metrics for the serving layer 10.2 the serving layer solution to the normalization/denormalization problem 10.3 requirements for a serving layer database 10.4 designing a serving layer for superwebanalytics.com 10.5 contrasting with a fully incremental solution 10.6 summary 11 serving layer: illustration 11.1 basics of elephantdb 11.2 building the serving layer for superwebanalytics.com 11.3 summary part 3 speed layer 12 realtime views 12.1 computing realtime views 12.2 storing realtime views 12.3 challenges of incremental computation 12.4 asynchronous versus synchronous updates 12.5 expiring realtime views 12.6 summary 13 realtime views: illustration 13.1 cassandra’s data model 13.2 using cassandra 13.3 summary 14 queuing and stream processing 14.1 queuing 14.2 stream processing 14.3 higher-level, one-at-a-time stream processing 14.4 superwebanalytics.com speed layer 14.5 summary 15 queuing and stream processing: illustration 15.1 defining topologies with apache storm 15.2 apache storm clusters and deployment 15.3 guaranteeing message processing 15.4 implementing the superwebanalytics.com uniques-over-time speed layer 15.5 summary 16 micro-batch stream processing 16.1 achieving exactly-once semantics 16.2 core concepts of micro-batch stream processing 16.3 extending pipe diagrams for micro-batch processing 16.4 finishing the speed layer for superwebanalytics.com 16.5 pageviews over time 262 n bounce-rate analysis 16.6 another look at the bounce-rate-analysis example 16.7 summary 17 micro-batch stream processing: illustration 17.1 using trident 17.2 finishing the superwebanalytics.com speed layer 17.3 fully fault-tolerant, in-memory, micro-batch processing 17.4 summary 18 lambda architecture in depth 18.1 defining data systems 18.2 batch and serving layers 18.3 speed layer 18.4 query layer 18.5 summary

Author : Nathan marz
Publication : Dreamtech press
Isbn : 9789351198062
Store book number : 107
NRS 1040.00
  
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