By the end of this course, learners will be able to explain the origins of NoSQL databases, evaluate their features and data models, compare ACID and BASE consistency approaches, apply workflow orchestration with Apache Oozie, and implement real-time stream processing using Apache Storm. They will also design recommendation systems, apply classification techniques, and implement clustering algorithms with Apache Mahout.



NoSQL Databases: Analyze & Implement Scalable Systems
This course is part of Hadoop & Big Data Foundations Mastery Course Specialization

Instructor: EDUCBA
Access provided by UNext MAHE
What you'll learn
Compare NoSQL models and consistency approaches.
Implement workflows with Oozie and streaming via Storm.
Build recommendation and clustering models using Mahout.
Skills you'll gain
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19 assignments
November 2025
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There are 4 modules in this course
This module introduces learners to the origins, features, and benefits of NoSQL databases. It explores schema flexibility, consistency models, and application development, while also introducing concepts like data versioning and workflow orchestration. Learners build a strong foundation to understand why NoSQL emerged as a solution for big data and distributed systems.
What's included
21 videos5 assignments
This module provides hands-on insights into Apache Oozie for workflow orchestration in big data environments. Learners examine Hive and Pig actions, control nodes, coordinators, and workflow applications. The module also introduces Apache Storm basics, stream processing, and reliability concepts essential for modern big data solutions.
What's included
23 videos5 assignments
This module dives deeper into Apache Storm, covering tasks, workers, deployment, and parallelism. It bridges Storm’s real-time processing with Apache Mahout’s machine learning capabilities, focusing on recommendations, classifiers, and practical examples. Learners gain practical skills in deploying, scaling, and integrating real-time ML applications.
What's included
20 videos5 assignments
This module focuses on machine learning algorithms implemented in Apache Mahout. Learners study recommendation systems, clustering, classification, evaluation techniques, and advanced algorithms like KMeans and Logistic Regression. By the end, learners will be able to design and implement scalable ML models on big data platforms.
What's included
12 videos4 assignments
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