Course Objectives
This Course enables the students to
Course Outcomes(COs):
Learning outcomes (at course level) | Learning and teaching strategies | Assessment Strategies |
CO124. Define the basic concepts of big data.
CO125. Describe the concepts of big data technologies.
CO126. Illustrate how to use tools to manage big data.
CO127. Compare different tools used in Big Data Analytics.
CO128. Experiment with data management using NOSQL.
CO129. Develop new applications using map reduce.
| Approach in teaching: Interactive Lectures, Tutorials, Demonstrations, Flipped classes.
Learning activities for the students: Self-learning assignments, Quizzes, Presentations, Discussions
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Understanding Big Data
Introduction, Need, convergence of key trends, structured data Vs. unstructured data , industry examples of big data, web analytics – big data and marketing, fraud and big data, risk and big data, credit risk management, big data and algorithmic trading, big data and its applications in healthcare, medicine, advertising etc.
Big Data Technologies: Hadoop
Open source technologies, cloud and big data, Crowd Sourcing Analytics, inter and trans firewall analytics
Introduction to Hadoop, Data format, analyzing data with Hadoop, scaling out, Hadoop streaming, Hadoop pipes. Design of Hadoop distributed file system (HDFS), HDFS concepts – Java interface, data flow, Data Ingest with Flume and Sqoop. Hadoop I/O – data integrity, compression, serialization, Avro – file-based data structures.
Hadoop Related Tools:
Introduction to Hbase: The Dawn of Big Data, the Problem with Relational Database Systems. Introduction to Cassandra: Introduction to Pig, Hive – data types and file formats – HiveQL data definition – HiveQL data manipulation – HiveQL queries.
NOSQL Data Management:
Introduction to NoSQL, aggregate data models, key-value and document data models, relationships, graph databases, schemaless databases, materialized views, distribution models, sharding, master-slave replication, peer-peer replication Consistency: relaxing consistency, version stamps
Map Reduce Applications:
MapReduce workflows, unit tests with MRUnit, test data and local tests, anatomy of MapReduce job run, classic Map-reduce – YARN, failures in classic Map-reduce and YARN – job scheduling, shuffle and sort, task execution, MapReduce types – input formats – output formats, MapReduce – partitioning and combining, Composing MapReduce Calculations.