Data Science Training & Certification
- Fundamentals of IT & AI
- Fundamentals of IT and Data
- Python for Data Science
- Machine Learning
- Deep Learning
- Devops for Data Science
- Gen AI & AI Agents
✅ Project and Task-Based
✅ 6 to 8 hours every Day
✅ Interviews, Jobs, and Placement Support
✅ Communication Skills & Personality Development
✅ Interview Preparations
Data Science Curriculum
Module 1 - The Software Application Life Cycle
2. Types of Applications
3. Web Application Fundamentals
4. Web Technologies: (List key technologies and their roles)
- Frontend: HTML, CSS, JavaScript, React
- Backend: Python, Java, Node.js
- Databases: SQL (MySQL, PostgreSQL), NoSQL (MongoDB).
5. Software Development Life Cycle (SDLC)
- Phases: Planning, Analysis, Design, Implementation (Coding), Testing, Deployment, Maintenance.
6. Application Development Methodologies
- Agile: Core principles, Scrum, Kanban
- Waterfall
Module 2 - Data Fundamentals
2. Types of Data
3. Data Storage
4. Data Analysis
5. Data Engineering
6. Data Science
Module 3 - Computing and the Cloud
2. Key Computing Technologies:
- CPU (Central Processing Unit)
- GPU (Graphics Processing Unit)
3. Cloud Computing:
- What is the Cloud?
- Cloud Service Models:
- IaaS (Infrastructure as a Service)
- PaaS (Platform as a Service)
- SaaS (Software as a Service)
Module 4 - Introduction to AI and Generative AI
1. What is Artificial Intelligence (AI)?
2. How AI Works?
3. Key Concepts:
- Machine Learning (ML)
- Deep Learning (DL)
4. Generative AI:
- What is Generative AI?
- Examples: Large Language Models (LLMs), image generation models.
5. AI in Everyday Learning
Module 5 - Real World Applications of Technology
2. Human Resource Management Systems (HRMS)
3. Retail & E-Commerce
4. Healthcare
Python for Data Science
Module 1 - Python Basics
Python Language Basics: Variables, Conditions, and Functions
Advanced Python Structures: Lists, Tuples, Dictionaries
Virtual Environments and Package Management in Python for Data Science
Module 2 - Python Libraries for Data Manipulation
NumPy for Numerical Data Processing
Pandas for Data Wrangling and Analysis
Introduction to Data Cleaning Techniques with Python
Module 3 - Python Libraries for Data Visualization
Visualizing Data with Matplotlib and Seaborn
Advanced Data Visualization Techniques
Interactive Data Visualizations with Plotly and Dash
Module 4 - Python for Data Acquisition
Web Scraping with Python: Beautiful Soup and Scrapy
Utilizing APIs for Data Collection
Strategies for Working with Cloud Data in Python
Module 5 - Object-Oriented Programming & Python Best Practices Development
Object-Oriented Programming in Python
Writing Efficient and Readable Python Code
Error Handling, Debugging, and Unit Testing in Python
Module 1 - Linear Algebra
Introduction to Vectors, Matrices, and Operations
Eigenvalues and Eigenvectors: Concepts and Applications
Scalars, Vectors, and Tensors: Understanding through Linear Algebra
Module 2 - Calculus for Optimization
Fundamentals of Differentiation and Integration in Data Science
Understanding Gradient, Gradient Descent, and Cost Functions
Applications of Calculus in Machine Learning and AI
Module 3 - Probability and Statistics
Foundations of Probability Theory
Descriptive Statistics and Inferential Statistics
Statistical Measures, Distributions, and Hypothesis Testing
Module 4 - Advanced Statistical Methods
Regression Techniques and Their Applications
Analysis of Variance (ANOVA) and Its Use Cases
Implementing Time Series Analysis in Data Science Projects
Module 5 - Experimental Design and Analysis
Understanding Sampling Techniques and Methodologies
Principles of Experimental Design
Conducting A/B Testing and Result Interpretation
Machine Learning
Module 1 - Machine Learning Fundamentals
Concepts in Supervised, Unsupervised, and Reinforcement Learning
Overfitting, Underfitting, and Model Validation Techniques
Cross-Validation and Hyperparameter Tuning
Module 2 - Supervised Learning - Classification
Overview of Classification Algorithms
Decision Trees, Random Forests, and Gradient Boosting Machines
Model Evaluation Metrics and Techniques
Module 3 - Supervised Learning - Regression
Linear Regression and Its Variants
Understanding Polynomial Regression and Regularization Techniques
Performance Evaluation in Regression Models
Module 4 - Unsupervised Learning
Clustering Techniques: K-Means, Hierarchical, and DBSCAN
Introduction to Principal Component Analysis (PCA)
Association Rule Mining: Concepts and Applications
Module 5 - Advanced Machine Learning Techniques
Ensemble Methods: Bagging, Boosting, and Stacking
Feature Engineering and Selection
Introduction to Advanced Algorithms: Neural Networks and SVMs
Deep Learning
Module 1 - Introduction to Neural Networks
Basics and Anatomy of Neural Networks
Activation Functions: Types and Their Impact
The Training Process: Backpropagation and Learning Rates
Module 2 - Deep Learning Frameworks and Tools
Getting Started with TensorFlow: Installation and Basics
Building Models with Keras: A Gentle Introduction
PyTorch for Deep Learning: Key Features and Differences
Module 3 - Convolutional Neural Networks (CNNs)
Fundamental Concepts of CNNs and Their Architecture
Implementing a CNN for Image Recognition Tasks
Advanced Techniques: Transfer Learning and Fine-tuning
Module 4 - Recurrent Neural Networks (RNNs) and LSTMs
Topics
Understanding RNNs: From Basics to LSTM Networks
Sequence Prediction and Text Generation with RNNs
Challenges and Solutions: Vanishing Gradients and Long-term Dependencies
Module 5 - Advanced Topics in Deep Learning
Exploring Generative Adversarial Networks (GANs)
Autoencoders for Feature Learning and Generation
Reinforcement Learning Basics: Building Intelligent Agents
Artificial Intelligence
Module 1 - Foundations of Artificial Intelligence
The Landscape of AI: Defining AI and Its Domains
Rule-based AI vs. Machine Learning-driven AI
Evolution and Key Milestones in AI
Module 2 - Natural Language Processing (NLP)
Introduction to Text Processing and Analysis
NLP Techniques: From Tokenization to Semantic Analysis
Leveraging NLP Libraries: NLTK, spaCy, and Beyond
Module 3 - Computer Vision and AI
Fundamentals of Computer Vision with AI
Implementing Object Detection and Recognition Systems
Advanced Applications: Facial Recognition and Autonomous Vehicles
Module 4 - Ethics and Social Implications of AI
Ethical AI Development: Challenges and Best Practices
Data Privacy and Security in AI Implementations
The Future of Work and Society with AI
Module 5 - Emerging Trends in AI
General AI vs. Narrow AI: Understanding the Scope
AI in Robotics: Current State and Future Prospects
The Role of AI in Shaping Future Technologies
DevOps for Data Science
Module 1 - Introduction to DevOps Practices for Data Science
Overview and Importance of DevOps in Data Science
Implementing Continuous Integration (CI) and Continuous Deployment (CD) in ML
Containerization with Docker: Basics for Data Scientists
Module 2 - Cloud Computing and Deployment
Module 3 - MLOps: Machine Learning Operations
Introduction to MLOps Practices and Tools
Monitoring and Version Control for ML Projects
Managing the Lifecycle of ML Models in Production
Module 4 - Scalable Machine Learning and Big Data
Big Data Technologies for ML: Hadoop, Spark, and Beyond
Building Scalable ML Models on Big Data Platforms
Challenges and Solutions in Large-scale ML Deployment
Module 5 - Ethical Considerations and Compliance
Understanding Data Governance and Compliance
Best Practices for Ethical AI and ML
Navigating Regulatory Requirements for Data Science Projects
Module 1 - Foundations of Generative AI
Introduction to Generative AI
1. What is Generative AI?
2. Key Applications:
Text (ChatGPT, Claude, LLaMA)
Images (DALL·E, MidJourney, Stable Diffusion)
Audio (Music Generation, Voice Cloning)
Code (GitHub Copilot, Cursor)
3. Evolution of GenAI:
Rule-Based → Deep Learning → Transformers
GANs vs. VAEs vs. LLMs
Module 2 - Prompt Engineering
1. Effective Prompt Design
Instruction-Based, Few-Shot, Zero-Shot
2. Advanced Techniques:
Chain-of-Thought (CoT) Prompting
Self-Consistency & Iterative Refinement
Hands-on:
Optimizing prompts for GPT-4, Claude, LLaMA
Module 3 - Transformer & Large Language Models
Transformer Architecture
1. Why Transformers? (Limitations of RNNs/LSTMs)
2. Key Components:
Self-Attention & Multi-Head Attention
Encoder-Decoder (BERT vs. GPT)
3. Evolution: BERT → GPT → T5 → Mixture of Experts
4. Large Language Models (LLMs)
5. Pre-training vs. Fine-tuning
6. Popular Architectures:
GPT-4, Claude, Gemini, LLaMA 3
BERT (Encoder-based) vs. T5 (Text-to-Text)
Module 4 - AI Agents - Fundamentals & Frameworks
Introduction to AI Agents
1. What are AI Agents?
2. vs. Traditional AI:
3. Applications:
AI Agent Frameworks
1. CrewAI (Multi-Agent Collaboration):
2. n8n (Workflow Automation):
Module 5 - Building & Deploying AI Agents
Designing AI Agents
CrewAI + n8n: Automating Business Workflows
Multi-Agent Systems: Collaboration & Specialization
Real-World Applications
Case Studies:
AI Customer Support Agents
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