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ECET 2026 CSE

Day 61 – Night Session: Big Data – Real-time Case Studies & Use Cases – ECET 2026

Big Data is used everywhere — from online shopping to banking, hospitals, traffic control, telecom, and social media.
Understanding real-time case studies helps ECET students relate theory to real-world applications.

This topic is mostly theory, but ECET asks conceptual MCQs, so this blog covers examples, definitions, and important points clearly.


📘 Concept Notes – Big Data Case Studies

🔥 What is Big Data?

Big Data refers to data that is Huge (Volume), Fast (Velocity), Varied (Variety) and cannot be processed with traditional systems.

The famous 5V model:

  • Volume – Large amounts of data
  • Velocity – Fast data generation
  • Variety – Structured & unstructured
  • Veracity – Accuracy of data
  • Value – Useful insights from data

No formulas here except the model, but for WordPress formatting, giving it as:

 Big\ Data = f(Volume,\ Velocity,\ Variety,\ Veracity,\ Value)


💼 Real-Time Case Studies & Use Cases

Below are the most common real-life scenarios where Big Data technologies (Hadoop, Spark, Kafka, HBase, HDFS, etc.) are used.


1️⃣ E-Commerce (Amazon, Flipkart) – Recommendation Systems

How Big Data is used:

  • Tracks user clicks, searches, purchases.
  • Recommends products using Machine Learning.
  • Uses tools like Spark, Hadoop, Kafka.

Example:

If a user searches for “headphones,” the system shows:

  • Related products
  • Frequently bought items
  • Deals and offers

This improves sales and user experience.


2️⃣ Banking & Fraud Detection

Banks process millions of transactions every second. Big Data helps:

  • Identify unusual spending
  • Detect fraud in real-time
  • Monitor credit card usage

Example:

If your card is used suddenly in another country, the system flags as suspicious.


3️⃣ Healthcare – Predictive Analytics

Hospitals use Big Data for:

  • Predicting disease outbreaks
  • Analyzing patient health records
  • Monitoring ICU data in real-time

Example:

Big Data + AI can predict early signs of heart attack using:

 Risk\ Score = f(HeartRate,\ BP,\ Cholesterol,\ Age,\ History)


4️⃣ Social Media (Facebook, Instagram, YouTube)

Social media produces petabytes of data every day.

Uses:

  • Personalized ads
  • Video recommendations
  • Trend analysis
  • Fake account detection

Example:

You watch a tech video → YouTube recommends tech-related content using ML models.


5️⃣ Smart Cities & Traffic Management

Big Data helps control:

  • Traffic signals
  • City cameras
  • Pollution sensors

Example:

Sensors send live data → Big Data system decides signal timing.


6️⃣ Telecom Industry (Airtel, Jio)

Uses:

  • Predict network load
  • Optimize tower placement
  • Detect call failures

Formula-like representation:

 Network\ Load = \frac{Total\ Data\ Usage}{Available\ Bandwidth}


7️⃣ Retail & Supermarkets (Walmart Case Study)

Big Data used for:

  • Inventory management
  • Demand prediction
  • Pricing strategy

Example:

Before a storm, Walmart noticed increased sales of:

  • torches
  • batteries
  • snacks

Stores stock these items in advance using data analytics.


8️⃣ Ride-Sharing Apps (Uber, Ola)

Uses:

  • Dynamic pricing
  • Trip suggestions
  • Shortest routes
  • Driver-passenger matching

Example Dynamic Pricing:

 Surge\ Price = Base\ Price \times Demand\ Factor


🔟 10 Expected MCQs – ECET 2026

Q1. Big Data mainly deals with:
A) Large and complex datasets
B) Small datasets
C) Only structured data
D) Only cloud data

Q2. Recommendation systems use:
A) Big Data + Machine Learning
B) Only SQL
C) HTML
D) BIOS

Q3. Fraud detection in banking is a:
A) Batch process
B) Real-time analytics use case
C) Offline process
D) None

Q4. Smart city traffic control uses data from:
A) CCTV sensors
B) Pollution sensors
C) GPS devices
D) All of the above

Q5. Healthcare prediction models use:
A) Historical patient data
B) Random guessing
C) Only physical tests
D) None

Q6. Social media platforms generate:
A) Very small data
B) No unstructured data
C) Huge amounts of unstructured data
D) Only text data

Q7. Big Data in telecom helps in:
A) Network optimization
B) Wallpaper management
C) Tone selection
D) Only SMS promotion

Q8. Surge pricing in Uber is based on:
A) Low demand
B) Demand–supply analytics
C) Driver mood
D) Fuel price

Q9. Walmart used Big Data to:
A) Delete customer data
B) Predict product demand
C) Remove stores
D) Change brand name

Q10. Big Data real-time systems typically use:
A) Hadoop + Spark + Kafka
B) MS Paint
C) PowerPoint
D) BIOS


✅ Answer Key

Q.NoAnswer
Q1A
Q2A
Q3B
Q4D
Q5A
Q6C
Q7A
Q8B
Q9B
Q10A

🧠 Explanations

  • Q1 → A: Big Data = huge + complex datasets.
  • Q2 → A: Recommendation uses ML + Big Data.
  • Q3 → B: Fraud detection must be real-time.
  • Q4 → D: All sensors provide traffic data.
  • Q5 → A: Predictions use historical data.
  • Q6 → C: Social media = unstructured big data.
  • Q7 → A: Telecom uses Big Data for network optimization.
  • Q8 → B: Surge price = demand-supply.
  • Q9 → B: Walmart predicted demand using analytics.
  • Q10 → A: Real-time systems use Hadoop ecosystem.

🎯 Why Practice Matters

Real-time case studies help ECET students understand:

  • Why companies use Big Data
  • Where analytics is applied
  • What systems use real-time processing
  • How theoretical concepts become real solutions

Mastering these examples makes exam answers easier and industry-ready.


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