When Jermaine is facing novel and complex situations which decision making system would be better?

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Page 2

From: Big data analytics for preventive medicine

Platforms and toolsDescription
Advanced data visualizationADV can reduce quality problems which can occur when retrieving medical data for extra analysis
PrestoDistributed SQL query engine used to analyze huge amount of data that collected every single day
The Hadoop Distributed File System (HDFS)HDFS enables the underlying storage for the Hadoop cluster and enhances healthcare data analytics system by dividing large amount of data into smaller one and distributed it across various servers/nodes
MapReduceBreaks task into subtasks and gathering its outputs and efficient for large amount of data
MahoutAn apache project, goal is to generate free applications of distributed and scalable ML algorithms that supports healthcare data analytics on Hadoop systems
JaqlFunctional, declarative query language, aim to process large datasets. It facilitates parallel processing by converting high-level queries into low-level ones
PIG and PIG LatinConfigured to assimilate all types of data (structured/unstructured, etc.)
AvroFacilitates data encoding and serialization that improves data structure by specifying data types, meaning and scheme
ZookeeperAllows a centralized infrastructure with various services, providing synchronization across a cluster of servers
HiveHive is a run-time Hadoop support architecture that permits to develop Hive Query Language (HQL) statements akin to typical SQL statements