Data Science & AI Analytics Bootcamp – Zero to Hero 🔥
About Course
Data Science & AI Analytics Bootcamp – Zero to Hero
Course Overview
The Data Science & AI Analytics Bootcamp – Zero to Hero is a 40-hour industry-focused certification program designed especially for non-technical students and graduates (BCom, BBA, MBA, Arts, Commerce backgrounds) who want to enter the high-growth fields of Data Science, AI, and Analytics—even with zero coding experience.
This bootcamp takes learners from absolute basics to real-world applications, combining hands-on technical training (32 hours) with career and placement readiness training (8 hours). The program emphasizes practical learning through 5 real-world projects, interview preparation, and job-readiness skills required to target high-paying roles (up to 12 LPA) in analytics-driven industries.
Who This Course Is For
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BCom / BBA / MBA students & graduates
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Non-technical backgrounds transitioning into IT & analytics
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Freshers aiming for Data Analyst / ML roles
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Working professionals seeking career switch
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Anyone with zero coding experience but strong career ambition
Course Duration
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Total Duration: 40 Hours
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Technical Training: 32 Hours
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Career & Skill Development: 8 Hours
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Mode: Practical, hands-on, instructor-led
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Tools Used: Google Colab, Python, Pandas, Matplotlib, Scikit-Learn, Seaborn
Course Structure & Curriculum
Module 1: Python for Data Science (10 Hours)
(8 Hours Core + 2 Hours Hands-on Practice)
This module builds a strong foundation in Python, focusing only on what is required for Data Science and Analytics, making it easy for non-tech learners.
Topics Covered
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Introduction to Python & Data Science
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IDE Setup: Google Colab
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Python Basics & Syntax
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Keywords, Variables, and Operators
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Data Types (Numeric, String, Boolean)
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Basic Functions (
print()and built-in functions) -
Data Structures:
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Lists, Tuples, Sets, Dictionaries
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Operations on Data Structures
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Loops & Conditional Statements (
for,if-else) -
Understanding Data & Datasets
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Types of Datasets:
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Training vs Testing Data
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train_test_split
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Handling Categorical Data
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Categorical to Numerical Conversion (3 Techniques)
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Data Preprocessing:
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Handling missing values
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Cleaning datasets
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Essential Libraries:
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Pandas
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Matplotlib
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Seaborn
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Scikit-Learn
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Working with real datasets using all libraries
📌 Outcome:
Students become comfortable reading, writing, and manipulating data using Python—even with no prior coding experience.
Module 2: Machine Learning & AI Fundamentals (16 Hours)
(8 + 4 + 4 Hours)
This module introduces Machine Learning and AI concepts from scratch, focusing on business understanding + practical implementation rather than heavy mathematics.
Topics Covered
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Introduction to Data Science
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What is AI vs ML vs Deep Learning
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End-to-End Machine Learning Project Flow
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Features & Labels:
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Dependent vs Independent Variables
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Types of Machine Learning:
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Supervised Learning
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Unsupervised Learning
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Understanding ML Models:
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Underfitting vs Overfitting
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What is an Algorithm (Beginner-Friendly)
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Supervised Learning Algorithms
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Classification:
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Decision Tree (Complete)
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Random Forest (Overview)
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Logistic Regression (Complete)
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Regression:
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Linear Regression
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Unsupervised Learning Algorithms
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K-Means Clustering
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Elbow Method
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K-Nearest Neighbors (KNN)
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Introduction to Neural Networks
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Model Evaluation Techniques
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Confusion Matrix & Performance Metrics
📌 Outcome:
Students gain clarity on how real ML models work in companies and learn to build and evaluate models confidently.
Module 3: 5 Real-World Industry Projects (10 Hours)
(8 Hours Projects + 2 Hours Netflix Recommendation System)
Hands-on projects to build real resumes and GitHub portfolios.
Projects Included
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CO₂ Emission Prediction
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Linear Regression
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Environmental Analytics Use Case
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Iris Dataset Clustering
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K-Means Clustering
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Elbow Method Implementation
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German Credit Risk Analysis
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Logistic Regression
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Finance & Banking Use Case
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HR Analytics Project
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Employee Attrition Prediction
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Logistic Regression
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Netflix Recommendation System (2 Hours – Full Project)
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Recommendation Logic
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User Preference Analysis
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📌 Outcome:
Students complete 5 resume-ready projects that demonstrate practical analytics and ML skills.
Career & Skill Development Module (8 Hours)
This exclusive module prepares students to crack interviews, HR rounds, and group discussions, and to confidently apply for high-paying analytics roles.
Topics Covered
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Resume Building for Data Science & Analytics
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How to Apply for Jobs Online (Step-by-Step)
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Understanding Job Portals & Hiring Patterns
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How to Target 12 LPA Analytics Roles
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Technical Interview Preparation
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HR Interview Training
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Group Discussion (GD) Techniques
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Personal Branding & Communication Skills
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What is LinkedIn and How to Use It Effectively
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LinkedIn Profile Optimization
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How Recruiters Shortlist Candidates
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Mock Interviews & Feedback
📌 Outcome:
Students become job-ready, confident, and interview-prepared with a clear roadmap to high-paying roles.
Key Highlights
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Zero coding prerequisite
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Designed for non-tech students
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5 real-world projects
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Industry-relevant curriculum
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Interview & HR preparation included
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Certificate with QR code verification
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Career-focused training (no false placement promises)
Course Content
Assignment
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This is an assignment!!!