Microsoft Azure Mastery: Basics To Advanced Applications - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Microsoft Azure Mastery: Basics To Advanced Applications (/Thread-Microsoft-Azure-Mastery-Basics-To-Advanced-Applications--456994) |
Microsoft Azure Mastery: Basics To Advanced Applications - BaDshaH - 06-27-2024 Published 6/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 16.99 GB | Duration: 43h 10m Master Microsoft Azure and elevate your career with our comprehensive, hands-on course! What you'll learn Create and manage Azure Machine Learning workspaces. Develop and submit machine learning pipelines using Azure ML Designer and SDK. Understand AI concepts and explore common AI workloads. Utilize Azure Cognitive Services for computer vision and natural language processing (NLP). Learn data representation and storage options in Azure, including SQL and Cosmos DB. Set up and manage Azure SQL databases, ensuring security and scalability. Understand the fundamentals of cloud computing and Azure's core services. Create and manage virtual machines, storage solutions, and virtual networks in Azure. Implement high availability and scaling solutions for Azure resources. Create and manage Azure Data Lake, including data processing and analytics. Requirements Basic Understanding of Cloud Concepts: Familiarity with cloud computing principles. Fundamental Knowledge of Machine Learning: Basic understanding of machine learning concepts and terminology. Programming Experience: Proficiency in at least one programming language, preferably Python. Azure Basics: Prior experience or knowledge of Microsoft Azure's core services. Description Welcome to the Microsoft Azure Mastery Course, a comprehensive learning journey designed to equip you with the knowledge and skills needed to excel in the rapidly evolving field of cloud computing and data science. This course covers a wide array of topics, from foundational principles to advanced applications, ensuring a well-rounded understanding of Microsoft Azure's extensive capabilities.Microsoft Azure is one of the leading cloud platforms, offering a vast range of services that support various business needs, including data storage, machine learning, AI, and database management. With the increasing demand for cloud-based solutions, proficiency in Azure has become a valuable asset for IT professionals, data scientists, and developers.Our course is structured into distinct sections, each focusing on a specific aspect of Azure. You will start with an introduction to Azure's data science capabilities and progress through foundational AI concepts, data fundamentals, and relational database management. Practical sections on cognitive services and AI-based chatbot creation will enhance your hands-on experience, while sections on Azure essentials and data lake management will solidify your foundational knowledge.Whether you are preparing for Microsoft certification exams or seeking to expand your practical skills, this course offers a blend of theoretical knowledge and practical application. You will engage with interactive lessons, real-world scenarios, and step-by-step guides, ensuring a robust learning experience.By the end of this course, you will be well-prepared to leverage Microsoft Azure's powerful tools and services, ready to tackle complex challenges and drive innovation in your organization. Welcome to your journey towards Azure mastery!Section 1: DP-100 Microsoft Azure Data Science ExamIn this section, you will gain comprehensive knowledge and hands-on experience with Microsoft Azure's data science capabilities. Starting with an introduction to the course and exam requirements, you will learn how to create and manage an Azure Machine Learning workspace, including its settings through the portal and Azure ML Studio. The section covers the creation and management of datasets, compute instances, and clusters, and takes you through building and submitting machine learning pipelines. You'll delve into custom code, error handling, and understanding complex pipelines, ensuring a thorough grasp of Azure ML Designer and SDK setup. The section also introduces AutoML, model registration, deployment strategies, and production compute targets, preparing you for real-world applications of Azure's machine learning tools.Section 2: AI-900 MS Azure AI FundamentalsThis section is designed to provide a foundational understanding of artificial intelligence (AI) and its applications within Microsoft Azure. Beginning with an introduction to AI and the AI-900 exam requirements, you will explore common AI workloads, responsible AI principles, and privacy and security considerations. The section covers various machine learning types, dataset features, and the training and validation process. You'll gain practical experience with AutoML, machine learning designer tools, and common computer vision and natural language processing (NLP) workloads, using Azure's services to build and deploy models without extensive coding. This section is perfect for those new to AI and seeking to understand its fundamentals and applications.Section 3: DP-900 Azure Data FundamentalsSection 3 focuses on the basics of data representation, storage options, and data workloads within Azure. You'll start with an introduction to the DP-900 exam requirements, followed by an exploration of relational and non-relational databases, including normalization, SQL, and NoSQL databases. Practical demos will guide you through creating databases, views, stored procedures, and indexes, as well as deploying and managing Azure SQL and Cosmos DB. This section also covers modern data warehousing, Azure Data Factory, and data visualization tools like Power BI, providing a comprehensive overview of Azure's data services and their practical applications.Section 4: DP-300 Azure Relational DBAThis section prepares you for managing relational databases in Azure. After an introduction and overview of the DP-300 exam requirements, you'll learn about Azure's SQL database options, creating and managing Azure VMs, and deploying SQL servers. Topics include functional and scaling requirements, availability and backup strategies, and security measures for SQL databases. You will explore scaling techniques, SQL database replicas, sharding, and data synchronization. The section also covers migration and upgrade strategies, ensuring you are well-equipped to handle Azure SQL database management and optimization.Section 5: Microsoft Azure - BasicsIn Section 5, you will explore the fundamentals of Microsoft Azure and cloud computing. Starting with an overview of cloud computing principles and the history of Azure, you'll learn about key cloud services, deployment models, and the architecture of Microsoft Azure. The section covers account registration, the Azure portal, and various tools for managing Azure services, including PowerShell and CLI. You will gain practical knowledge of Azure virtual machines, storage options, and networking configurations, preparing you to leverage Azure's capabilities for various cloud-based applications and services.Section 6: Azure Practical - Cognitive ServicesSection 6 provides an in-depth look at Azure's cognitive services, focusing on practical applications. You'll begin with an introduction to Azure Cognitive Services and the creation of a free tier account. The section covers vision APIs, computer vision, face API, custom vision, form recognizer, and video indexer, with hands-on exercises for each service. You'll also explore speech APIs, including speech-to-text, text-to-speech, and translation services. Additionally, the section covers language services, sentiment analysis, entity recognition, and the QnA Maker, providing a comprehensive understanding of how to implement cognitive services in real-world scenarios.Section 7: Azure Cognitive Services - Creating an AI-Based ChatbotIn this section, you will learn how to create an AI-based chatbot using Azure Cognitive Services. Starting with an introduction to the course, you'll explore the QnA service, Java application creation, and resolving issues within the application. The section provides practical steps for running and deploying the chatbot application, ensuring you have the skills to develop and manage AI-based chatbots effectively.Section 8: Microsoft Azure - EssentialsSection 8 covers the essential principles and services of Microsoft Azure. Beginning with an introduction to Azure essentials, you will learn about the five principles of cloud computing, the history of cloud computing, and key types of cloud services. The section also covers cloud deployment models, Azure's architecture, and account registration. Practical demos will guide you through the Azure Resource Manager (ARM) and Azure Service Manager (ASM) portals, subscription management, and the installation and usage of Azure PowerShell and CLI. This section provides a solid foundation for understanding and utilizing Microsoft Azure's core services.Section 9: Microsoft Azure - Data LakeThe final section focuses on Azure Data Lake, offering an introduction and overview of its components and services. You will learn how to create analytics accounts, process data within the Data Lake Store, and use the USQL language for data manipulation. The section covers defining analytics units, job stages, data ingestion, and processing multiple files. You'll also explore Azure Data Lake's integration with Visual Studio, monitoring and analyzing jobs, and using PowerShell and CLI for data management. The section concludes with a summary of Azure Data Lake's pricing and capabilities, equipping you with the knowledge to leverage this powerful data storage and processing solution.ConclusionBy the end of this comprehensive course, you will have a deep understanding of Microsoft Azure's data science, AI, data fundamentals, relational database management, cognitive services, and cloud computing basics. Each section provides practical knowledge and hands-on experience, preparing you for various Azure certification exams and real-world applications of Azure's services. Whether you are a beginner or an experienced professional, this course will enhance your skills and help you leverage Azure's capabilities to their fullest potential. Overview Section 1: DP-100 Microsoft Azure DS Exam Lecture 1 Introduction to Course Lecture 2 Exam Requirements Lecture 3 Create an Azure Machine Learning Workspace Lecture 4 Azure ML Workspace Settings - Portal Lecture 5 Azure ML Studio Settings Lecture 6 Data Stores and Datasets Lecture 7 Create Additional Datasets Lecture 8 Create an Experiment Compute Instance Lecture 9 Manage Multiple Compute Instances Lecture 10 Create Compute Targets and Clusters Lecture 11 Creating our First ML Pipeline Lecture 12 Submitting Pipeline Lecture 13 Custom Code in Pipeline Lecture 14 Understanding Complicated Pipeline Lecture 15 Evaluating Execution Results Lecture 16 Errors in Azure ML Designer Lecture 17 Various Modules of Azure ML Designer Lecture 18 Setup SDK Lecture 19 Create ML Workspace using SDK Lecture 20 Simple Program in Python Lecture 21 Train Model using SDK Lecture 22 Submit Experiment using SDK Lecture 23 Create a Pipeline by using SDK Lecture 24 AutoML Overview Lecture 25 AutoML with SDK Lecture 26 Understanding what is Hyper drive Lecture 27 Register a Trained Model Lecture 28 Create Production Compute Targets Lecture 29 Deploy AutoML Lecture 30 Create an AutoML Endpoint Lecture 31 Deploy ML Designer for Real Time Lecture 32 Deploy SDK Models Lecture 33 Publish a Pipeline for Batch Inference Lecture 34 Conclusion Section 2: AI-900 MS Azure AI Fundamentals Lecture 35 Introduction to Course Lecture 36 What is Artificial Intelligence Lecture 37 Machine Learning Model Lecture 38 AI-900 Exam Requirements Lecture 39 Common AI workloads Lecture 40 Guiding principles for Responsible AI Lecture 41 Privacy and Security Lecture 42 Transparence and Accountability Lecture 43 MS Official website for AI Principles Lecture 44 Common ML Types Lecture 45 Dataset Features and Labels Lecture 46 Training and Validation Dataset Lecture 47 FPR and AUC Lecture 48 Auto ML Lecture 49 Demo-Create Azure ML Workspace Lecture 50 Use AutoML to Build a no-Code Model Lecture 51 ML Designer Lecture 52 ML Designer to Build a no-Code Model Lecture 53 Common types of Computer Vision Workloads Lecture 54 Computer Vision Services in Microsoft Azure Lecture 55 Using Computer Vision Service Lecture 56 Using Custom Vision Service Lecture 57 NLP Workloads Lecture 58 NLP Services Lecture 59 Common Types of Conversational AI workloads Lecture 60 Conversational AI Services in Azure Lecture 61 Conclusion Section 3: DP-900 Azure Data Fundamentals Lecture 62 Introduction to Course Lecture 63 Exam Requirements Lecture 64 Describe Ways to Represent Data Lecture 65 Identify Options For Data Storage Lecture 66 Describe Common Data Workloads Lecture 67 Responsibilities For Data Workloads Lecture 68 Identify Features of Relational Data Lecture 69 Describe Normalization Lecture 70 Three Normal Forms Lecture 71 Demo - Sample Database Lecture 72 Identify Common Structured Query Language Lecture 73 Demo - Create A Database View Lecture 74 Demo - Create A Stored Procedure Lecture 75 Demo - Create An Index Lecture 76 Relational DBs Introduction Lecture 77 Azure Relational DB Options Lecture 78 Creating Azure SQL Database Lecture 79 Arm Templates to Manage SQL Databases Lecture 80 SQL Database Security Lecture 81 Relational Query Tools Lecture 82 Introduction to Non Relational DBs Lecture 83 Non Relational Data Types Lecture 84 Choose A NoSQL Database Lecture 85 Azure Non Relational DB Options Lecture 86 Creation Cosmos DB Lecture 87 Query Cosmos DB Lecture 88 Use Arm Templates to Manage Cosmos DB Lecture 89 Cosmos DB Security Lecture 90 Cosmos DB Geo-Replication Lecture 91 Modern Data Warehouse Lecture 92 Azure Data Factory Lecture 93 Data Visualization Lecture 94 Power Bi Content Workflow Lecture 95 Conclusion Section 4: DP-300 Azure Relational DBA Lecture 96 Introduction to Course Lecture 97 Exam Requirements Lecture 98 Azure Free Account Lecture 99 Azure Relational Databases Covered in Exam Lecture 100 SQL Database Options Overview Lecture 101 Creating Azure VM and Installing SQL Server Lecture 102 Connect Database Through Port 1433 Lecture 103 Deploying SQL Server from the Azure Marketplace Lecture 104 Maintenance Window Lecture 105 Install Azure SQL Database Lecture 106 Using Sample Database Lecture 107 How to Choose an Azure Relational Database Lecture 108 Evaluate Functional Requirements Lecture 109 Evaluate Scaling Requirements Lecture 110 Availability and Backup Requirements Lecture 111 Security Requirements Lecture 112 Scaling Azure SQL Database Lecture 113 Using Elastic Pool Database to Scale Lecture 114 Scaling SQL VM Lecture 115 Using SQL DB Replicas and Sharding Lecture 116 SQL Data Sync Lecture 117 Prepare a Migration Strategy Lecture 118 Prepare an Upgrade Strategy Lecture 119 Run a Migration Assessment Lecture 120 Perform a Database Migration Section 5: Microsoft Azure - Basics Lecture 121 What is Cloud Computing Lecture 122 Basic of azure cloud Lecture 123 Basic of azure cloud (Continues) Lecture 124 Disadvatge of azure cloud Lecture 125 Disadvatge of azure cloud (Continues) Lecture 126 Azure cloud component and use Lecture 127 Azure portal and price of services Lecture 128 App services Lecture 129 Mobile services Lecture 130 Full calculator Lecture 131 Web application service Lecture 132 Web application service (Continues) Lecture 133 Azure virtual network Lecture 134 DNS Servers and VPN Connectivity Lecture 135 IBM Cloud Network Lecture 136 Azure virtual machine Lecture 137 How to create virtual machine Lecture 138 Other things in virtual machine Lecture 139 How to access virtual machine Lecture 140 Azure virtual storage Lecture 141 Azure Virtual Storage (Continues) Lecture 142 Configuring vm networking in azure Lecture 143 Configuring vm networking in azure (Continues) Lecture 144 What is vm networking Lecture 145 Perform configuration management Lecture 146 Creating a network in cloud Lecture 147 Subnetting Lecture 148 Subnetting (Continues) Lecture 149 Increase and decrease in the number of machines Lecture 150 How to create sharepoint machine in azure with image Lecture 151 How to create sharepoint machine in azure with image (Continues) Lecture 152 How to create windows vm and linux vm Lecture 153 What is end point Lecture 154 Public port and private port Lecture 155 How to create windows and linux machine using portal Lecture 156 How to make autoscaling of machine Lecture 157 Adding weband web job applcation to web site Lecture 158 How to implemnent web site Lecture 159 How to implemnent web site (Continues) Lecture 160 Adding machine to availibilty set Lecture 161 Brief introduction to virtual machines Lecture 162 What is the scalibility Lecture 163 Creating a web application Lecture 164 Database configuration Lecture 165 Connecting azure to on site network Lecture 166 Cloud services Lecture 167 Scaling facilities Lecture 168 What is a networking Lecture 169 What is a virtual network Lecture 170 Virtual area network address Lecture 171 What is a Webjob Lecture 172 Creating a virtual machine Lecture 173 Monitoring Lecture 174 Server manager - dashboard Lecture 175 Components Lecture 176 Local area network Lecture 177 Reports Lecture 178 SQL Database Lecture 179 Recovery Services Lecture 180 Remote desktop service azure provsion Lecture 181 Desktop services Lecture 182 Storsimple Lecture 183 Cdn,remote app,media service Lecture 184 How to migarte on premise to azure cloud Lecture 185 How to migarte on premise to azure cloud (Continues) Lecture 186 How to purchase additional subscrption Lecture 187 Billing of azure Lecture 188 Planing how to migarte on premise work load to azure cloud Lecture 189 Planing how to Migarte on premise work load to azure cloud (Continues) Lecture 190 Azure Hdmi Lecture 191 Azure Machine Learning Lecture 192 Biztalk Service Lecture 193 Traffic Manager Lecture 194 Select a Runbook Lecture 195 HD Insight Section 6: Azure Practical - Cognitive Services Lecture 196 Introduction to Azure Cognitive Lecture 197 Azure Free Tier Account Creation Lecture 198 Vision API and Computer Vision Overview Lecture 199 Computer Vision Hands on Lecture 200 Computer Vision Hands on Continued Lecture 201 Face API Lecture 202 Face API Handson Lecture 203 Custom Vision Lecture 204 Custom Vision Handson Lecture 205 Form and Ink Recognizer Overview Lecture 206 Video Indexer Handson Lecture 207 Form Recognizer Hands on Lecture 208 Cognitive Speech Api Lecture 209 Speech to Text Service Lecture 210 Speech to Text Service Handson Lecture 211 Text to Speech Service Lecture 212 Text to Speech Service Handson Lecture 213 Speech Translation Service Overview Lecture 214 Speech Translation Service Handson Lecture 215 Speech Recognise Overview Lecture 216 Speech Recognise REST Api Usage Lecture 217 Language Service Lecture 218 Sentiment Analysis and Handson Lecture 219 Language Translator Service and Handson Lecture 220 Understanding Service Lecture 221 Understanding Service Handson Part 1 Lecture 222 Understanding Service Handson Part 2 Lecture 223 Understanding Service Handson Part 3 Lecture 224 Understand Services in Action Lecture 225 Entity Recognition Lecture 226 Entity Recognition Handson Lecture 227 Entity Recognition in Action Lecture 228 QnA Maker Overview Lecture 229 QnA Maker Handson Lecture 230 QnA Maker in Action Lecture 231 Cognitive Decision Service Lecture 232 Content Moderator Overview Lecture 233 Image Moderator Application Lecture 234 Image Moderator Application Continued Lecture 235 Text Moderation Lecture 236 Moderation Application in Action Lecture 237 Anomaly Detection Overview Lecture 238 Anomaly Detection Handson Dependecies Import Lecture 239 Anomaly Azure Conection Lecture 240 Graph Ploting Lecture 241 Anomaly Detection Function Lecture 242 Anomaly Application in Action Lecture 243 Decision Personalizer Overview Lecture 244 Decision Personalizer Application Dependency Lecture 245 Decision Personalizer Application Lecture 246 Personalizer Service in Action Lecture 247 Cognitive Web Search Overview Lecture 248 Cognitive Web Search Subparts Lecture 249 Cognitive Websearch Application Creation Lecture 250 Cognitive Websearch Application Creation Continued Lecture 251 Cognitive Websearch Application in Action Section 7: Azure Cognitive Services - Creating an AI Based Chatbot Lecture 252 Introduction to Course Lecture 253 QnA Service Lecture 254 Java Application Creation Lecture 255 Resolving Issues from Application Lecture 256 Running Java Aaplication Lecture 257 Service Cleanup Section 8: Microsoft Azure - Essentials Lecture 258 Introduction to Microsoft Azure Essentials Lecture 259 Five Principles of Cloud Lecture 260 History of Cloud Computing Lecture 261 Key Types of Cloud Services Lecture 262 Cloud Deployment Models Lecture 263 Why Microsoft Azure Lecture 264 What is Microsoft Azure Lecture 265 Microsoft Azure Architecture Lecture 266 Register for free Azure Account Lecture 267 Demo- Microsoft ARM Portal Lecture 268 Demo - ASM Portal Lecture 269 Enterprise Account Lecture 270 Azure Subscriptions and Account Lecture 271 Tools for Azure Lecture 272 Installing Azure Powershell Lecture 273 Installing Azure CLI Lecture 274 Azure CLI -Getting Started Lecture 275 Azure PowerShell ASM Lecture 276 Azure Powershell ARM Basics Lecture 277 Azure Virtual Machines Lecture 278 What is Azure VM Lecture 279 Azure VM Status Lecture 280 Azure VM Billing Lecture 281 Azure VM sizes Lecture 282 Azure VM deployment Options Lecture 283 Azure VM Architecture - Classic Lecture 284 Azure VM Architecture -ARM Lecture 285 Azure VM Pricing Tiers Lecture 286 Create a Windows VM Lecture 287 Create a Windows VM Continues Lecture 288 Connecting to a Windows VM Lecture 289 Create a Linux VM Lecture 290 Connecting to a Linux VM Lecture 291 Azure VM Disks Lecture 292 Attaching Data Disk to a Windows VM Lecture 293 Attaching Data Disk to a Linux VM Lecture 294 High Availability in Azure Lecture 295 High Availability in Azure Continues Lecture 296 VM Availability Sets Lecture 297 Creating an Availability Set Lecture 298 Joining VM into an Availability Set Lecture 299 Azure Virtual Network Lecture 300 Azure Network Options Lecture 301 Components of Virtual Networks Lecture 302 Address Spaces and Subnets Lecture 303 Network Security Groups Lecture 304 Azure Load Balancers Lecture 305 Azure Load Balancers Continues Lecture 306 Azure HYbrid Connectivity Options Lecture 307 Azure Traffic Manager Lecture 308 Creating a Virtual Network and Subnets Lecture 309 Creating VM in a VNet and Adding NSG Rules Lecture 310 Azure storage Lecture 311 Azure Blob Storage Lecture 312 Azure Disk Storage Lecture 313 Azure File Storage Lecture 314 Azure Table Storage Lecture 315 Azure Queue Storage Lecture 316 Creating a Storage Account and Uploading a Blob Lecture 317 Azure Web Apps Section 9: Microsoft Azure - Data Lake Lecture 318 Introduction to Azure Data Lake Lecture 319 Introduction to Azure Data Lake Continue Lecture 320 Creating Analytics Account Lecture 321 Services in Azure Data Lake Lecture 322 Processing Data Lake Store Lecture 323 Concept of USQL Language Lecture 324 Defining Analytics Units Lecture 325 Adding Filter Operation Lecture 326 Stages of Job Lecture 327 Brief on USQL Language Lecture 328 Extracitng a Row Lecture 329 Schema on Read Lecture 330 Aggregating the Data Lecture 331 Changing the Group By Lecture 332 Injesting Multiple Files Lecture 333 Processing the Multiple Files Lecture 334 Arranging the Data Lecture 335 Distributing the Data Lecture 336 Data from Data Lake Lecture 337 Checking the Status Update Lecture 338 Creating the View Lecture 339 Table Valued Functions Lecture 340 Script for Table Valued Functions Lecture 341 Creating a Store Procedure Lecture 342 Running Store Procedure Lecture 343 How to use Inline cSharp Lecture 344 Azure Portal to Visual Studio Lecture 345 Creating New Project Lecture 346 Services in Azure Account Lecture 347 Submitting SQL Job Lecture 348 Analyzing the Job Lecture 349 Creating Project Function Lecture 350 Monitoring the Status Lecture 351 Job Comparison Tool Lecture 352 Understanding Job Graph Lecture 353 Understanding Job Graph Continues Lecture 354 Executing the Job File Lecture 355 Concept of Heat Map Lecture 356 Vertex Execution View Lecture 357 Concept of Job Effeciency Lecture 358 Options in Diagnostics Tab Lecture 359 Ways of Accessing Azure Data Lecture 360 Creating Data Store Accounts Lecture 361 Confirming Through Portal Lecture 362 Creating a Directory Structure Lecture 363 Uploading the Data Lecture 364 Using the Powershell Lecture 365 Commands for Azure CLI Lecture 366 Data Lake Store Account Lecture 367 Uploading Data with Azure CLI Lecture 368 Renaming the File Lecture 369 Deleting Data Lake Account Lecture 370 Pricing of Azure Data Lake Lecture 371 Summary on Azure Data Lake Aspiring Data Scientists: Individuals aiming to build a career in data science and machine learning using Microsoft Azure.,Data Engineers: Professionals involved in designing and managing data processing systems who want to incorporate machine learning capabilities.,AI Engineers: Those interested in developing AI solutions on the Azure platform.,IT Professionals: System administrators or IT managers looking to understand Azure's capabilities for machine learning and data analytics.,Students and Graduates: Those pursuing studies in computer science, data science, or related fields seeking practical knowledge of Azure's data science offerings.,Professionals Transitioning to Data Science: Individuals from non-technical backgrounds looking to transition into data science and AI roles.,Technology Enthusiasts: Anyone passionate about exploring advanced data analytics and machine learning in the cloud environment. Homepage |