7022299786 / 9886112229 info@nextgen-ai.in

Azure Data Engineering Training & Certification

  • Fundamentals of IT & AI
  • Azure Data engineer fundamentals
  • Azure Data factory & synapse Analytics
  • Azure Data lake & stream Analytics
  • Azure Databricks & Spark
  • Gen AI & AI Agents
✅ Realtime Classroom Training
✅ Project and Task-Based
✅ 6 to 8 hours every Day
✅ Interviews, Jobs, and Placement Support
✅ Communication Skills & Personality Development
✅ Interview Preparations
👤
50000+
Students Enrolled
4.7
Ratings (500)
⏱️
60 Days
Duration
YOUR PATH TO SUCCESSFUL IT CAREER
Our Alumni Work At Top Companies

Azure Data Engineer Course Curriculum

Unlock Your Mind. Think Sharper. Create Smarter.
Fundamentals of IT & AI

Module 1 - The Software Application Life Cycle

1. What is an Application?

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

1. What is Data

2. Types of Data

3. Data Storage

4. Data Analysis

5. Data Engineering

6. Data Science

Module 3 - Computing and the Cloud

1. The Importance of Computing Power

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

1. Customer Relationship Management (CRM)

2. Human Resource Management Systems (HRMS)

3. Retail & E-Commerce

4. Healthcare

Azure Data Engineer Fundamentals

Module 1 - Fundamentals of Data Engineering

Topics

What is Data Engineering

Data Engineer Roles & Responsibilities

Difference Between ETL Developer & Data Engineer

Types of Data

Steaming Vs Batch Data

Module 2 - Introduction to Azure Cloud Services

Topics

Cloud Introduction and Azure Basics

Azure Implementation Models: IaaS, PaaS, SaaS

Overview of Azure Data Engineer Role

Understanding Azure Storage Components

Introduction to Azure ETL & Streaming Components

Module 3 - Azure SQL Database Essentials

Topics

Azure SQL Server and Database Deployment

DTU vs. DWU: Understanding Performance Levels

Managing Firewall Rules and Secure SSMS Connections

Azure Account and Subscription Management

Module 4 - Azure Resources and Data Integration Basics

Topics

Azure Resources and Resource Types

Introduction to Azure Data Factory (ADF) and Azure Synapse Analytics

Basic Concepts of Data Movement and Processing

Azure Data Factory & Synapse Analytics

Module 1 - Deep Dive into Azure Synapse Analytics

Topics

Synapse SQL Pools (Data Warehousing) and Massively Parallel Processing (MPP)

Data Movement with DMS and SQL Pool Management

Table Creations, Distributions, and Indexing for Performance

Module 2 - Mastering Data Factory Pipelines

Topics

Azure Data Factory Pipeline Architecture and Integration Runtime

Constructing ETL Pipelines with DIU Considerations

Data Flow Activities and Monitoring

Module 3 - Advanced Data Integration Techniques

Topics

Incremental Data Loading and Handling On-Premise Data Sources

Advanced ADF Features: Data Flows, ETL Logging, and Performance Tuning

Implementing CDC with ADF for Real-Time Data Capture

Module 4 - Synapse Analytics and Big Data Analytics

Topics

Integrating Spark with Synapse Analytics for Big Data Processing

Utilizing Python Notebooks and Spark Pools for Data Analysis

Performance Optimization and Data Transformation Techniques

Module 5 - Security, Compliance, and Workflow in Azure

Topics

Security Measures with Azure Active Directory and Role-Based Access Control

Managing Parameters and Security in Synapse and ADF Pipelines

Utilizing Azure OpenDatasets and Parquet Files for Advanced Analytics

Azure Data Lake & Stream Analytics

Module 1 - Introduction to Azure Storage and Data Lake

Azure Storage Essentials: Files, Tables, and Queues

Introduction to Azure Data Lake Storage Gen2 (ADLS Gen2)

Configuring and Managing Storage Accounts

Hierarchical Namespace (HNS) and its Advantages

Module 2 - Operating Azure Storage Solutions

Managing BLOB Storage: Binary Large Objects Explained

Utilizing Azure Storage Explorer for Efficient Storage Management

Directory and File Operations in Azure Data Lake

Best Practices for Organizing Data in ADLS Gen2

Module 3 - Security and Access Management in Azure Storage

Implementing Security Measures in Azure Data Lake Storage

Access Control with Shared Access Signatures (SAS) and Access Control Lists (ACLs)

Role-Based Access Control (RBAC) in Azure Storage

Encryption, Authentication, and Compliance Features

Module 4 - Data Migration and Integration Strategies

Strategies for SQL Database Migrations to Azure

Integrating Azure SQL with Data Lake Storage

Utilizing Azure Data Factory for Data Movement and Transformation

Data Migration Tools and Techniques

Module 5 - Implementing Advanced Storage Features

Advanced Concepts in Azure Table Storage

Data Replication and Geo-Redundancy Options

Optimizing Storage Costs and Performance

Leveraging Data Lake for Big Data Analytics

Module 6 - Real-Time Data Processing with Azure Stream Analytics

Fundamentals of Azure Stream Analytics

Developing Stream Analytics Jobs for Real-Time Insights

Integrating IoT Devices with Azure for Data Streaming

Processing and Analyzing Streaming Data

Module 7 - Event Hubs and Event-Driven Architecture

Understanding Azure Event Hubs for Large-Scale Event Processing

Configuring Event Hubs and Event Hub Namespaces

Connecting Event Hubs with Azure Stream Analytics

Patterns for Real-Time and Event-Driven Data Processing

Module 8 - Monitoring, Performance Tuning, and Disaster Recovery

Monitoring Azure Storage and Stream Analytics Resources

Performance Tuning for Azure Data Services

Implementing Disaster Recovery Strategies

Using Azure Monitor and Key Vaults for Operational Excellence

Azure Databricks & Spark

Module 1 - Introduction to Azure Databricks and Spark

Azure Cloud Overview: Understanding SaaS, PaaS, IaaS

Introduction to Azure Databricks: Configuration, Compute Resources, and Workspace Usage

Spark Clusters in Azure Databricks: Configurations, Types, and Resource Management

Databricks File System (DBFS): Utilizing Files and Tables with Spark

Module 2 - Data Processing with Databricks

Integrating Python with Spark: PySpark Basics

Data Loading Techniques: Using PySpark for Data Ingestion and Processing

Utilizing SQL in Databricks: Creating and Managing Spark Databases and Tables

Advanced Data Transformation: Working with DataFrames and Spark SQL for Data Analytics

Module 3 - Integrating Azure Data Lake Storage with Databricks

Configuring Azure Data Lake Storage (ADLS) for use with Databricks

Data Management: Reading and Writing Data to ADLS using PySpark and Scala

Secure Data Access: Managing Access and Security between Databricks and ADLS

Module 4 - Developing Scalable Data Pipelines

Understanding Databricks Architecture: Driver and Worker Nodes, RDDs, and DAGs

Building and Monitoring Databricks Jobs: Scheduling, Task Management, and Optimization

Implementing Delta Lake for Reliable Data Lakes: ACID Transactions and Performance Tuning

Module 5 - Advanced Analytics and Machine Learning

Machine Learning Fundamentals in Databricks: Using MLlib for Predictive Modeling

Data Exploration and Visualization: Leveraging Notebooks for Insights

Advanced Analytic Techniques: Utilizing Scala and Python for Complex Data Analysis

Module 6 - Security and Governance in Azure Databricks

Databricks Security: Integrating with Azure Active Directory (AD)

Managing Permissions: Workspace, Notebooks, and Data Security

Compliance and Data Governance: Best Practices in Databricks Environments

Module 7 - Real-Time Data Processing and Streaming

Streaming Data with Databricks: Concepts and Practical Applications

Integrating Azure Event Hubs with Databricks for Real-Time Analytics

Processing Live Data Streams: Building and Deploying Stream Analytics Solutions

Module 8 - Integration and Deployment

Automating Workflows with Azure Logic Apps and Databricks

CI/CD for Databricks: Automation and Version Control Integration

Deployment Strategies: Best Practices for Production Deployments in Azure

Gen AI & AI Agents

Module 1 - Fundamentals 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 - Transformers and 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

Our Trending Courses

DevOps Training

DevOps training emphasizes integrating development, operations, automation, and continuous delivery through collaboration.​

Clock Icon

2 Months

Code Icon

6 Live Projects

Star Icon

4.9/5

Java Training

Java training focuses on programming basics, OOP, data structures, APIs, and app development.

Clock Icon

2 Months

Code Icon

6 Live Projects

Star Icon

4.9/5

React Training

React JS training covers UI building, component architecture, state management, hooks, and modern practices.

Clock Icon

2 Months

Code Icon

5 Live Projects

Star Icon

4.8/5

Python Training

Python training emphasises on programming concepts and developing applications using Python’s user-friendly syntax.

Clock Icon

2 Months

Code Icon

5 Live Projects

Star Icon

4.8/5

USEFUL LINKS

HOME

ABOUT

COURSES

DOWNLOADS

CERTIFICATION

AI UNIVERSITIES

GALLERY

CONTACT US

FAQS

COURSES

Data Science

Cloud computing

AIML

Cybersecurity

Python Full stack Developer

Java Full stack Developer

Embedded Systems

LOCATION

NEXTGEN AI INSTITUTION
OPP QP FUNCTION HALL NEAR ZAFARABAD CROSS
MSK MILL RING ROAD
KALABURAGI 585103

Follow us:

Nextgenai_ai