Introduction to Data Mining & Warehousing
Unlocking the Power of Data for Informed Decision-Making
Virtual (Google Meet)
Mentor Based
Beginners
3 Days
14 -April -2025
5 PM IST
About
The Introduction to Data Mining & Warehousing workshop provides a foundational understanding of data storage, management, and analytics. Participants will explore key techniques in data mining, learn how data warehouses are structured and utilized, and gain hands-on experience in processing and analyzing large-scale datasets. The workshop covers practical applications in business, healthcare, finance, and more.
Aim
To introduce participants to the fundamental concepts of data mining and data warehousing, equipping them with the skills to manage, analyze, and extract valuable insights from large datasets for business intelligence and decision-making.
Workshop Objectives
- To introduce participants to data mining and warehousing concepts.
- To provide hands-on experience with data analysis tools and techniques.
- To train participants in managing large-scale data for decision-making.
- To explore real-world applications of data mining and business intelligence.
- To address ethical and security challenges in data-driven environments.
Workshop Structure
Day 1: Introduction to Data Mining & Warehousing
● What is Data Mining & Data Warehousing?
● Real-world Applications in Research & Industry
● Key Differences Between Data Mining & Warehousing
● Basic Data Mining Techniques Overview
● Q&A Session
Day 2: Understanding Data Warehousing
● Fundamentals of Data Warehousing
● Data Warehousing Architecture (ETL, OLAP, Metadata, etc.)
● Basic Data Models: Star Schema vs. Snowflake Schema
● Why & How Businesses Use Data Warehouses
● Q&A Session
Day 3: Introduction to Data Mining Techniques
● Overview of Classification, Clustering & Association Rules
● Understanding Supervised vs. Unsupervised Learning
● Real-world Example: How Companies Use Data Mining
● Q&A & Wrap-Up Discussion
Participant’s Eligibility
- Data analysts and business intelligence professionals
- IT professionals working in data storage and analytics
- Students and researchers in computer science, data science, and AI
- Business professionals interested in data-driven decision-making
Important Dates
Registration Ends
2025-04-14
Indian Standard Timing 3:00 PM
Workshop Dates
2025-04-14 to 2025-04-16
Indian Standard Timing 5 PM
Workshop Outcomes
✔ Understanding of basic concepts of Data Mining & Warehousing
✔ Knowledge of why and how organizations use these techniques
✔ Awareness of real-world applications
Mentor Profile
Designation: Data & AI Architect
Affiliation: DAV UNIVERSITY, JALANDHAR
Ayan Chawla, Cloud Solution Architect – Data & AI
4year Market Experience, Working with big MNCs and helping them with their Data Solutions.
Certifications –
1. AI 900, DP 900
2. Cleared National Engineering Olympiad 2.0
3. Won First Prize in GeekFiestaHackathon
4. Algorithms Part1 and 2 by Stanford University
5. Scalable Data Science(NPTEL)-: Elite(Rank 21)
6. Problem solving with C(NPTEL)-: Elite
7. Computer Organization and Architecture(NPTEL)-:Elite
Fee Structure
Student
INR. 1999
USD. 45
Ph.D. Scholar / Researcher
INR. 2499
USD. 50
Academician / Faculty
INR. 2999
USD. 55
Industry Professional
INR. 4999
USD. 75
List of Currencies
Key Takeaways
- Access to Live Lectures
- Access to Recorded Sessions
- e-Certificate
- Query Solving Post Workshop

Future Career Prospects
- Data Warehouse Engineer
- Data Mining Specialist
- Business Intelligence Analyst
- Big Data Engineer
- Data Governance Consultant
Job Opportunities
- Data Analyst for Business Intelligence
- Data Governance and Compliance Officer
- Cloud Data Engineer
- Predictive Analytics Specialist
- AI-Driven Data Insights Consultant
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Recent Feedbacks In Other Workshops
Very good
na
Contents were excellent