Data Science & Big Data Analytics: Comprehensive Analysis and Strategies Course
Introduction:
In today’s data-driven world, the ability to retrieve, model, and analyze information can significantly benefit businesses. Big Data Analytics helps organizations identify patterns and optimize processes to maximize profits and enhance client experiences.
This course on Data Science & Big Data Analytics: Comprehensive Analysis and Strategies offers a practical approach to handling data science requirements. Participants will explore various tools, effective models for data investigation, and core concepts in Big Data and Analytics.
Objectives:
By the end of this Data Science and Big Data Analytics course, participants will be able to:
- Comprehend the importance of Big Data in their organization.
- Evaluate situations where Data Analytics is needed and select appropriate methods.
- Choose suitable models and tools for Big Data.
- Analyze case studies and use cases.
- Apply best practices in Data Analytics to achieve effective results.
Training Methodology:
- Lecture sessions
- Real-life examples
- Group discussions and workshops
- Role-plays and scenario-based exercises
- Interactive Q&A sessions
- Use of modern analytical techniques
- Regular evaluations and feedback
Course Outline:
Unit 1: Big Data: Making Sense of Analytics
- Trends and challenges in Big Data Analytics
- Business Intelligence vs. Data Science
- Analytical architecture for large data sets
- Integration of Big Data into technology and business
- Factors driving the need for Big Data Analytics
Unit 2: Data Analytics Models and Lifecycle
- Data Analytics lifecycle
- Phases: Discovery, Data Preparation, Planning, Model Building, Communication Strategy, Implementation
Unit 3: Data Analytical Methods and Programs Overview
- Basics of R Framework
- Initial Big Data Analytics Framework
- Data collection and preprocessing
- Evaluation techniques
- Methods of Cluster Analysis
- Advanced theories and methods: Data Mining, Linear Regression
Unit 4: Advanced Theory and Methods Overview
- Analytic Theory Classification
- Advanced Analysis: Classification perspectives and methods
- Time Series Analysis: Historical perspectives and theory
- Text Analysis: Uses and practices
- Advanced Data Analytics tools and technologies
- Use case and assessment
Unit 5: Technology, Tools, and Achieving Results
- Analytics of unstructured data
- Overview of advanced analytical tools in database analytics
- Data Analytics methodologies
- Current trends in practice management and project delivery
- Data Visualization overview