Description
1. Learning Outcomes
- Understand the fundamentals of Big Data, its challenges, and use cases across industries.
- Learn the Hadoop ecosystem including HDFS, MapReduce, YARN, Hive, Pig, and HBase.
- Design and implement distributed storage and processing systems for large datasets.
- Apply MapReduce programming for batch processing of Big Data.
- Use Hive and Pig for querying and analyzing structured and semi-structured data.
- Integrate Hadoop with other Big Data tools for analytics and reporting.
- Optimize performance and ensure reliability in distributed data processing environments.
2. Program Highlights & Key Features
- Hands-on exercises with HDFS, MapReduce, Hive, and Pig.
- Expert-led sessions on Hadoop architecture, cluster setup, and data processing workflows.
- Case studies covering finance, healthcare, e-commerce, and telecom Big Data challenges.
- Training on data ingestion, storage, and retrieval in distributed systems.
- Exposure to emerging trends like Spark integration, cloud-based Hadoop, and real-time Big Data analytics.








Reviews
There are no reviews yet.