Design and Testing of a Big Data-Based ML System
Word Count : 5500-6000
Objectives to cover:
Introduction: Overview of how Big Data and Machine Learning together improve large-scale network analysis.
Problem Definition: Identification of challenges in handling and analyzing vast network data efficiently.
Objectives: Establishing goals for designing a scalable and accurate machine learning framework.
System Architecture: Description of the framework integrating Big Data tools with machine learning algorithms.
Data Collection and Processing: Methods for acquiring, cleaning, and organizing large network datasets.
Model Development: Building predictive models to detect patterns, anomalies, and performance issues.
Experimental Testing: Validation of the system using real-world datasets to ensure scalability and accuracy.
Results and Discussion: Analysis of outcomes demonstrating performance improvements and data insights.
Conclusion: Summary of findings emphasizing the system’s efficiency, reliability, and future enhancement potential.
