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Big Data in Finance: Analytics, Transformation & Application
Published 11/2025
Duration: 2h 16m | .MP4 1280x720 30fps® | AAC, 44100Hz, 2ch | 1.20 GB
Genre: eLearning | Language: English
Learn how Big Data is transforming financial services through analytics, tools, case studies, and future-driven insights
What you'll learn
- Understand the fundamentals of data and Big Data in financial contexts.
- Explain how Big Data transforms financial services and business models.
- Analyze trends, challenges, and future directions of Big Data in finance.
- Apply Big Data analytics principles to real-world financial problems.
- Interpret case studies and understand practical industry implementations.
- Use tools such as Tableau and SAP for Big Data visualization and analysis.
- Evaluate the impact of Big Data on risk management, fraud detection, compliance, and market intelligence.
- Recognize ethical and regulatory issues involved in large-scale data usage.
Requirements
- Basic knowledge of finance or business processes
- Curiosity about analytics or data-driven decision-making
- Familiarity with spreadsheets or simple data tools
Description
The financial world is experiencing a data explosion, with institutions relying on massive, fast-moving datasets to drive decision-making, automation, risk assessment, fraud detection, and customer experience. Big Data has become a fundamental pillar of modern finance, enabling organizations to remain competitive and compliant in an increasingly digital ecosystem.This course provides a structured exploration of Big Data concepts, technologies, and applications tailored specifically to financial services. You will learn the fundamentals of Big Data, understand how it powers industry transformation, and explore real-world applications using leading tools such as Tableau and SAP. Through case studies, future trends, and ethical considerations, this course equips you with a strong understanding of how Big Data drives innovation across the financial domain.
Section 1: Introduction to Big Data and Core Concepts
This section lays the conceptual foundation for Big Data in finance. Beginning with an overview of the course and expectations, you will explore the meaning and nature of data, its types, sources, and role in financial ecosystems. The section then moves into the fundamentals of Big Data-its characteristics, architecture, and role in solving complex financial problems at scale. A case study demonstrates how Big Data has already reshaped decision-making in financial institutions. The section concludes with a review of objectives, regulations, and governance considerations that guide responsible data practices in the financial sector.
Section 2: The Big Data Revolution and Financial Transformation
This section explores how Big Data has sparked a revolution in the financial industry. You will study the increasing complexity of data flows, the technological shifts driving this revolution, and how Big Data enables financial institutions to innovate across lending, payments, risk management, investment, and customer experience. The section analyzes current and future trends, as well as industry challenges such as scalability, data privacy, and system integration. It concludes with a forward-looking discussion on how Big Data will shape the future of financial technologies and services.
Section 3: Big Data Analytics and Real-World Applications
This section provides an in-depth look at Big Data analytics and how it is applied within real financial environments. You will explore the latest trends in analytics-predictive modeling, machine learning integration, real-time analytics, and customer behavior modeling. Through case studies, the section highlights how financial institutions use Big Data to enhance fraud detection, credit scoring, regulatory reporting, algorithmic trading, and risk forecasting. The section also covers practical challenges organizations face when implementing analytics solutions, including data quality issues, cost, skill gaps, and system complexity.
Section 4: Advanced Tools, Impact, and Ethical Considerations
This final section explores the advanced tools and ethical frameworks shaping Big Data in finance. You will analyze the industry-wide impact of Big Data and analytics on financial operations, performance, and innovation. Hands-on oriented lectures introduce how Big Data workflows are implemented using tools such as Tableau and SAP, helping learners understand visualization, business intelligence, and enterprise-level data processing. The section concludes with critical discussions on ethical and regulatory considerations-privacy, data governance, fairness, transparency, and responsible data usage-ensuring learners understand how to deploy Big Data solutions ethically.
Conclusion:
By the end of this course, you will gain a strong understanding of Big Data concepts, financial applications, analytical techniques, tools, and ethical principles. You will be equipped to interpret data-driven insights, evaluate Big Data tools, and understand the technological transformation taking place across financial institutions. This course prepares you for roles where Big Data knowledge is crucial-analytics, finance, fintech, business intelligence, and data strategy.
Who this course is for:
- Finance and banking professionals
- Students in business, finance, IT, or data science
- Aspiring data analysts and business intelligence professionals
- Fintech entrepreneurs and startup teams
- Professionals transitioning into analytics or data-driven roles
- Anyone interested in understanding Big Data in modern finance
More Info
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