Big Data and Data Analytics

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Big Data and Data Analytics
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G1451

London (UK)

09 Feb 2026 -13 Feb 2026

5850

Overview

Introduction:

Big data and data analytics represent the structured frameworks that convert large scale, complex information into measurable institutional insights. They define the analytical systems and governance structures that support decision making, operational planning, and innovation. This training program represents models for data collection, management, and interpretation across enterprise environments. It highlights institutional approaches that enhance efficiency, accountability, and performance evaluation through advanced analytics and data-driven governance.

Program Objectives:

By the end of this program, participants will be able to:

  • Analyze institutional frameworks that govern big data management and analytics systems.

  • Evaluate data architecture and analytical models supporting strategic decision-making.

  • Classify methods for transforming raw data into structured, actionable intelligence.

  • Determine institutional standards for data governance, quality, and compliance.

  • Assess analytical frameworks that link data insights with performance improvement.

Target Audience:

  • Data analysts and business intelligence professionals.

  • IT and data governance officers.

  • Strategic planners and performance managers.

  • System architects and developers.

  • Department heads seeking data driven decision frameworks.

Program Outline:

Unit 1:

Foundations of Big Data Systems:

  • Institutional role of big data in organizational governance.

  • Characteristics and structures of large scale data environments.

  • Frameworks for data collection, storage, and classification.

  • Key steps for integrating data ecosystems across institutional platforms.

  • Core challenges in data management and system scalability.

Unit 2:

Data Architecture and Governance Frameworks:

  • Structural designing process of data architecture and flow models.

  • Institutional standards for data integrity and access control.

  • Frameworks ensuring security, privacy, and regulatory compliance.

  • Interdepartmental coordination principles within data governance systems.

  • Relationship between governance maturity and data quality.

Unit 3:

Analytical Models and Processing Frameworks:

  • Core analytical models for descriptive, diagnostic, and predictive analytics.

  • Statistical and computational techniques for large scale data interpretation.

  • Machine learning structures for data pattern identification.

  • Institutional systems for aligning analytical models with decision frameworks.

  • Metrics and indicators used in institutional data analysis.

Unit 4:

Business Intelligence and Data Visualization Structures:

  • Frameworks for converting analytical outputs into executive insights.

  • Institutional dashboards and performance reporting systems.

  • Role of visualization in organizational communication and oversight.

  • Importance of integrating AI tools in analytical reporting processes.

  • Governance considerations in managing analytical outcomes.

Unit 5:

Strategic Applications and Institutional Integration:

  • Data analytics as a foundation for strategic planning and forecasting.

  • Institutional models linking analytics with innovation and operational control.

  • Institutional structures that measure the efficiency of data driven decisions across departments.

  • Frameworks supporting cross sector collaboration through analytics.

  • Strategic alignment between analytical maturity and institutional excellence.