Certification In Azure ML

dkmdkm

U P L O A D E R
b2656786179779e8c4af6dffb9502712.webp

Free Download Certification In Azure ML
Published 11/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.89 GB | Duration: 12h 22m
Learn Data Management, Building and Training Models, Model Optimization and Evaluation, Deploying ML models, MLOps

What you'll learn
You will understand the Introduction to Azure and Machine Learning, starting with the basics of machine learning, key concepts, and real-world use cases
You will explore Azure Cloud Services and the Azure Machine Learning (ML) Service, including its key features
Hands-on activity includes setting up an Azure account, navigating the Azure portal, and creating a workspace in Azure ML Studio.
You will learn Data Management on Azure ML, covering data storage and management with Azure Blob Storage, data preparation, and feature engineering
You will explore Azure Data Lake for big data analytics and learn how to import and manage datasets in Azure ML
Hands-on activity includes uploading datasets to Blob Storage, connecting them to Azure ML, and performing preprocessing using Azure ML Designer
You will work on Building and Training Models on Azure ML, gaining skills in no-code development using Azure ML Designer and code-based development
Explore Automated Machine Learning (AutoML) and custom model training with Azure ML Compute Instances and Clusters
Hands-on activity includes training a model with AutoML and developing a custom ML model in Python using the Azure ML SDK
You will gain expertise in Model Optimization and Evaluation, learning hyperparameter tuning with Azure ML HyperDrive
Hands-on activity includes optimizing a model with HyperDrive and visualizing evaluation results in Azure ML Studio
You will understand Deploying Machine Learning Models with Azure ML, including creating inference pipelines, comparing real-time and batch inference
Learn configure endpoints and authentication. Hands-on activity includes deploying a trained model and testing it with sample inputs
You will explore Integrating Azure ML with Other Azure Services, learning how to connect predictions from Azure ML models with Azure Synapse and Power BI
Hands-on activity includes creating a Power BI dashboard integrated with an Azure ML model's predictions
You will master MLOps and Workflow Automation, including CI/CD for ML, Azure Pipelines for workflow automation, managing model versioning
Hands-on activity includes implementing an automated ML pipeline using Azure DevOps
Gain hands-on activiy insights into Security, Compliance, and Cost Optimization, focusing on role-based access control (RBAC), compliance with GDPR, HIPAA
Requirements
You should have an interest in cloud computing, machine learning, and how Azure services can be leveraged to build and deploy intelligent solutions
Familiarity with basic programming in Python and a foundational understanding of machine learning concepts and cloud computing is recommended
Description
DescriptionTake the Next Step in Your Azure and Machine Learning Journey!Whether you're an aspiring data scientist, cloud engineer, software developer, or business leader, this course will equip you with the skills to harness Azure's powerful machine learning ecosystem for scalable, real-world AI solutions. Learn how Azure ML Studio, AutoML, Python, and integrated Azure services are transforming data preparation, model training, deployment, and monitoring-enabling faster, smarter, and more impactful decision-making.Guided by hands-on projects and real-world use cases, you will:Master foundational machine learning concepts and Azure ML workflows applied to real business scenarios.Gain hands-on experience collecting, managing, and preparing data using Azure Blob Storage, Data Lake, and ML Studio.Learn to train, optimize, and deploy models using AutoML, the Azure ML SDK, and scalable compute resources.Explore industry applications in predictive analytics, recommendation systems, sentiment analysis, and AI-powered automation.Understand best practices for MLOps, workflow automation, security, compliance, and cost optimization in Azure ML environments.Position yourself for a competitive advantage by developing in-demand skills at the intersection of cloud computing, artificial intelligence, and data analytics.The Frameworks of the Course• Engaging video lectures, case studies, projects, downloadable resources, and interactive exercises-designed to help you deeply understand how to apply Azure Machine Learning for building, training, deploying, and managing AI solutions in the cloud.• The course includes industry-specific case studies, Azure ML tools, reference guides, quizzes, self-paced assessments, and hands-on labs to strengthen your ability to develop, optimize, and operationalize machine learning models using Azure's powerful ecosystem.• In the first part of the course, you'll learn the basics of machine learning, Azure Cloud Services, and how Azure ML enhances scalability, automation, and integration in AI workflows.• In the middle part of the course, you will gain hands-on experience using Azure ML Studio, AutoML, Jupyter Notebooks, Python SDK, and integrated services like Azure Data Lake and Power BI to collect, process, and analyze data, train models, and create interactive dashboards.• In the final part of the course, you will explore MLOps automation, cost optimization, security and compliance strategies, and real-world applications across industries. All your queries will be addressed within 48 hours, with full support throughout your learning journey.Course Content:part 1Introduction and Study Plan· Introduction and know your instructor· Study Plan and Structure of the CourseModule 1. Introduction to Azure and Machine Learning1.1. Basics of Machine Learning - Key Concepts and Use Cases1.2. Overview of Azure Cloud Services1.3. Introduction to Azure Machine Learning Services1.4. Key Features of Azure ML Studio1.5. Hands-On Activity - Set up an Azure account and explore the Azure portal, Navigate Azure ML Studio and create a workspace1.6. Conclusion of Introduction to Azure and Machine LearningModule 2. Data Management on Azure ML2.1. Data Storage and Management with Azure Blob Storage2.2. Data Preparation and Feature Engineering in Azure ML Studio2.3. Introduction to Azure Data Lake for Big Data Analytics2.4. Importing and Managing Datasets in Azure ML2.5. Hands - On Activity - Upload datasets to Azure Blob Storage and Connect them to o Azure ML, Perform basic data preprocessing using Azure ML Designer2.6. Conclusion of Data Management on Azure MLModule 3. Building and Training Models on Azure ML3.1. Overview of Azure ML Designer for No - Code ML Development3.2. Using Jupyter Notebooks and SDK for Code - Based Model Development3.3. Automated ML (AutoML) in Azure3.4. Custom Model Training with Azure ML Compute Instances and Clusters3.5. Hands-On Activity - Train a model using AutoML in Azure ML Studio, Develop a custom ML model using Python and Azure ML SDK.3.6. Conclusion of Building and Training Models on Azure MLModule 4. Model Optimization and Evaluation4.1. Hyperparameter Tuning with Azure ML Hyperdrive4.2. Evaluating Model Performance Metrics4.3. Cross-Validation and Model Selection Techniques4.4. Model Explainability with Azure Interpretability Toolkit4.5. Hands-On Activity - Optimize a model using Hyperdrive, Evaluate and visualize model performance in Azure ML Studio4.6. Conclusion of Model Optimization and EvaluationModule 5. Deploying Machine Learning Models with Azure ML5.1. Creating Inference Pipelines in Azure ML5.2. Real Time vs Batch Inference on Azure5.3. Model Deployment to Azure Kubernetes Service(AKS) or Azure Container Instances.5.4. Endpoint Configuration and Authentication5.5. Hands-On Activity - Deploy a trained model to an Azure ML endpoint, Test the deployed model with sample inputs5.6. Conclusion of Deploying Machine Learning Models with Azure MLModule 6. Integrating Azure ML with Other Azure Services6.1. Data Analytics with Azure Synapse and Power BI6.2. Monitoring and Logging with Azure Monitor6.3. Workflow Automation with Azure Logic Apps6.4. Building AI-Powered Applications with Cognitive Services6.5. Hands-On Activity - Create a dashboard in Power BI integrating predictions from an Azure ML model6.6. Conclusion of Integrating Azure ML with other Azure ServicesModule 7. MLOps and Workflow Automation7.1. Introduction to MLOps and CI/CD for Machine Learning7.2. Azure Pipelines for ML Workflow Automation7.3. Managing Model Versioning and Lifecycles7.4. Monitoring and Retraining Deployed Models7.5. Hands-On Activity - Implement an automated ML pipeline using Azure DevOps7.6. Conclusion of MLOps and Workflow AutomationModule 8. Security, Compliance, and Cost Optimization8.1. Data Security in Azure ML - Role-Based Access Control (RBAC)8.2. Compliance with Industry Standards (GDPR, HIPAA, etc.)8.3. Cost Optimization Strategies for Azure ML Workloads8.4. Azure ML Pricing Models and Billing Practices8.5. Hands - On Activity - Set up RBAC roles for a project in Azure ML, Estimate and monitor costs using Azure Cost Management8.6. Conclusion of Security, Compliance and Cost OptimizationModule 9. Real-World Use Cases and Applications9.1. Financial Services - Fraud Detection and Risk Management9.2. Healthcare - Predictive Analytics and Diagnostics9.3. Retail - Demand Forecasting and Personalization9.4. Manufacturing - Predictive Maintenance9.5. Hands-On Activity - Solve a domain-specific problem using Azure ML Services9.6. Conclusion of Real-World Use Cases and ApplicationsPart 2: Capstone Project.
Aspiring data scientists, machine learning engineers, and AI professionals who want to develop skills in building, training, and deploying machine learning models on Azure.,IT professionals, cloud engineers, and software developers looking to enhance their applications with Azure-based AI and ML solutions.,Data analysts and business intelligence specialists aiming to leverage Azure ML, Python, and Power BI for advanced analytics, automation, and predictive modeling.,Machine learning and AI enthusiasts interested in applying cloud-based tools like Azure ML Studio, AutoML, and Cognitive Services to real-world use cases.,Educators, researchers, and students who want practical experience with Azure ML workflows, MLOps pipelines, and integration with other Azure services through hands-on projects and case studies.
Homepage
Bitte Anmelden oder Registrieren um Links zu sehen.

Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
Code:
Bitte Anmelden oder Registrieren um Code Inhalt zu sehen!
No Password - Links are Interchangeable
 
Kommentar

7c768bd3ceedaceeb14ef1b04ee9ea90.jpg

Certification in AZURE ML
Published 11/2025
Duration: 12h 22m | .MP4 1920x1080 30fps(r) | AAC, 44100Hz, 2ch | 2.89 GB
Genre: eLearning | Language: English​

Learn Data Management, Building and Training Models, Model Optimization and Evaluation, Deploying ML models, MLOps

What you'll learn
- You will understand the Introduction to Azure and Machine Learning, starting with the basics of machine learning, key concepts, and real-world use cases
- You will explore Azure Cloud Services and the Azure Machine Learning (ML) Service, including its key features
- Hands-on activity includes setting up an Azure account, navigating the Azure portal, and creating a workspace in Azure ML Studio.
- You will learn Data Management on Azure ML, covering data storage and management with Azure Blob Storage, data preparation, and feature engineering
- You will explore Azure Data Lake for big data analytics and learn how to import and manage datasets in Azure ML
- Hands-on activity includes uploading datasets to Blob Storage, connecting them to Azure ML, and performing preprocessing using Azure ML Designer
- You will work on Building and Training Models on Azure ML, gaining skills in no-code development using Azure ML Designer and code-based development
- Explore Automated Machine Learning (AutoML) and custom model training with Azure ML Compute Instances and Clusters
- Hands-on activity includes training a model with AutoML and developing a custom ML model in Python using the Azure ML SDK
- You will gain expertise in Model Optimization and Evaluation, learning hyperparameter tuning with Azure ML HyperDrive
- Hands-on activity includes optimizing a model with HyperDrive and visualizing evaluation results in Azure ML Studio
- You will understand Deploying Machine Learning Models with Azure ML, including creating inference pipelines, comparing real-time and batch inference
- Learn configure endpoints and authentication. Hands-on activity includes deploying a trained model and testing it with sample inputs
- You will explore Integrating Azure ML with Other Azure Services, learning how to connect predictions from Azure ML models with Azure Synapse and Power BI
- Hands-on activity includes creating a Power BI dashboard integrated with an Azure ML model's predictions
- You will master MLOps and Workflow Automation, including CI/CD for ML, Azure Pipelines for workflow automation, managing model versioning
- Hands-on activity includes implementing an automated ML pipeline using Azure DevOps
- Gain hands-on activiy insights into Security, Compliance, and Cost Optimization, focusing on role-based access control (RBAC), compliance with GDPR, HIPAA

Requirements
- You should have an interest in cloud computing, machine learning, and how Azure services can be leveraged to build and deploy intelligent solutions
- Familiarity with basic programming in Python and a foundational understanding of machine learning concepts and cloud computing is recommended

Description
Description

Take the Next Step in Your Azure and Machine Learning Journey!Whether you're an aspiring data scientist, cloud engineer, software developer, or business leader, this course will equip you with the skills to harness Azure's powerful machine learning ecosystem for scalable, real-world AI solutions. Learn how Azure ML Studio, AutoML, Python, and integrated Azure services are transforming data preparation, model training, deployment, and monitoring-enabling faster, smarter, and more impactful decision-making.

Guided by hands-on projects and real-world use cases, you will:

Master foundational machine learning concepts and Azure ML workflowsapplied to real business scenarios.

Gain hands-on experiencecollecting, managing, and preparing data using Azure Blob Storage, Data Lake, and ML Studio.

Learn to train, optimize, and deploy modelsusing AutoML, the Azure ML SDK, and scalable compute resources.

Explore industry applicationsin predictive analytics, recommendation systems, sentiment analysis, and AI-powered automation.

Understand best practicesfor MLOps, workflow automation, security, compliance, and cost optimization in Azure ML environments.

Position yourself for a competitive advantageby developing in-demand skills at the intersection of cloud computing, artificial intelligence, and data analytics.

The Frameworks of the Course

•Engaging video lectures, case studies, projects, downloadable resources, and interactive exercises-designed to help you deeply understand how to apply Azure Machine Learning for building, training, deploying, and managing AI solutions in the cloud.

• The course includes industry-specific case studies, Azure ML tools, reference guides, quizzes, self-paced assessments, and hands-on labs to strengthen your ability to develop, optimize, and operationalize machine learning models using Azure's powerful ecosystem.

•In the first part of the course,you'll learn the basics of machine learning, Azure Cloud Services, and how Azure ML enhances scalability, automation, and integration in AI workflows.

•In the middle part of the course,you will gain hands-on experience using Azure ML Studio, AutoML, Jupyter Notebooks, Python SDK, and integrated services like Azure Data Lake and Power BI to collect, process, and analyze data, train models, and create interactive dashboards.

•In the final part of the course, you will explore MLOps automation, cost optimization, security and compliance strategies, and real-world applications across industries. All your queries will be addressed within 48 hours, with full support throughout your learning journey.

Course Content:

Part 1

Introduction and Study Plan

· Introduction and know your instructor

· Study Plan and Structure of the Course

Module 1. Introduction to Azure and Machine Learning

1.1. Basics of Machine Learning - Key Concepts and Use Cases

1.2. Overview of Azure Cloud Services

1.3. Introduction to Azure Machine Learning Services

1.4. Key Features of Azure ML Studio

1.5. Hands-On Activity - Set up an Azure account and explore the Azure portal, Navigate Azure ML Studio and create a workspace

1.6. Conclusion of Introduction to Azure and Machine Learning

Module 2. Data Management on Azure ML

2.1. Data Storage and Management with Azure Blob Storage

2.2. Data Preparation and Feature Engineering in Azure ML Studio

2.3. Introduction to Azure Data Lake for Big Data Analytics

2.4. Importing and Managing Datasets in Azure ML

2.5. Hands - On Activity - Upload datasets to Azure Blob Storage and Connect them to o Azure ML, Perform basic data preprocessing using Azure ML Designer

2.6. Conclusion of Data Management on Azure ML

Module 3. Building and Training Models on Azure ML

3.1. Overview of Azure ML Designer for No - Code ML Development

3.2. Using Jupyter Notebooks and SDK for Code - Based Model Development

3.3. Automated ML (AutoML) in Azure

3.4. Custom Model Training with Azure ML Compute Instances and Clusters

3.5. Hands-On Activity - Train a model using AutoML in Azure ML Studio, Develop a custom ML model using Python and Azure ML SDK.

3.6. Conclusion of Building and Training Models on Azure ML

Module 4. Model Optimization and Evaluation

4.1. Hyperparameter Tuning with Azure ML Hyperdrive

4.2. Evaluating Model Performance Metrics

4.3. Cross-Validation and Model Selection Techniques

4.4. Model Explainability with Azure Interpretability Toolkit

4.5. Hands-On Activity - Optimize a model using Hyperdrive, Evaluate and visualize model performance in Azure ML Studio

4.6. Conclusion of Model Optimization and Evaluation

Module 5. Deploying Machine Learning Models with Azure ML

5.1. Creating Inference Pipelines in Azure ML

5.2. Real Time vs Batch Inference on Azure

5.3. Model Deployment to Azure Kubernetes Service(AKS) or Azure Container Instances.

5.4. Endpoint Configuration and Authentication

5.5. Hands-On Activity - Deploy a trained model to an Azure ML endpoint, Test the deployed model with sample inputs

5.6. Conclusion of Deploying Machine Learning Models with Azure ML

Module 6. Integrating Azure ML with Other Azure Services

6.1. Data Analytics with Azure Synapse and Power BI

6.2. Monitoring and Logging with Azure Monitor

6.3. Workflow Automation with Azure Logic Apps

6.4. Building AI-Powered Applications with Cognitive Services

6.5. Hands-On Activity - Create a dashboard in Power BI integrating predictions from an Azure ML model

6.6. Conclusion of Integrating Azure ML with other Azure Services

Module 7. MLOps and Workflow Automation

7.1. Introduction to MLOps and CI/CD for Machine Learning

7.2. Azure Pipelines for ML Workflow Automation

7.3. Managing Model Versioning and Lifecycles

7.4. Monitoring and Retraining Deployed Models

7.5. Hands-On Activity - Implement an automated ML pipeline using Azure DevOps

7.6. Conclusion of MLOps and Workflow Automation

Module 8. Security, Compliance, and Cost Optimization

8.1. Data Security in Azure ML - Role-Based Access Control (RBAC)

8.2. Compliance with Industry Standards (GDPR, HIPAA, etc.)

8.3. Cost Optimization Strategies for Azure ML Workloads

8.4. Azure ML Pricing Models and Billing Practices

8.5. Hands - On Activity - Set up RBAC roles for a project in Azure ML, Estimate and monitor costs using Azure Cost Management

8.6. Conclusion of Security, Compliance and Cost Optimization

Module 9.Real-World Use Cases and Applications

9.1. Financial Services - Fraud Detection and Risk Management

9.2. Healthcare - Predictive Analytics and Diagnostics

9.3. Retail - Demand Forecasting and Personalization

9.4. Manufacturing - Predictive Maintenance

9.5. Hands-On Activity - Solve a domain-specific problem using Azure ML Services

9.6. Conclusion of Real-World Use Cases and Applications

Part 2:Capstone Project.

Who this course is for:
- Aspiring data scientists, machine learning engineers, and AI professionals who want to develop skills in building, training, and deploying machine learning models on Azure.
- IT professionals, cloud engineers, and software developers looking to enhance their applications with Azure-based AI and ML solutions.
- Data analysts and business intelligence specialists aiming to leverage Azure ML, Python, and Power BI for advanced analytics, automation, and predictive modeling.
- Machine learning and AI enthusiasts interested in applying cloud-based tools like Azure ML Studio, AutoML, and Cognitive Services to real-world use cases.
- Educators, researchers, and students who want practical experience with Azure ML workflows, MLOps pipelines, and integration with other Azure services through hands-on projects and case studies.
Bitte Anmelden oder Registrieren um Links zu sehen.


Qg18ltNY_o.jpg



RapidGator
Code:
Bitte Anmelden oder Registrieren um Code Inhalt zu sehen!
NitroFlare
Code:
Bitte Anmelden oder Registrieren um Code Inhalt zu sehen!
DDownload
Code:
Bitte Anmelden oder Registrieren um Code Inhalt zu sehen!
 
Kommentar

In der Börse ist nur das Erstellen von Download-Angeboten erlaubt! Ignorierst du das, wird dein Beitrag ohne Vorwarnung gelöscht. Ein Eintrag ist offline? Dann nutze bitte den Link  Offline melden . Möchtest du stattdessen etwas zu einem Download schreiben, dann nutze den Link  Kommentieren . Beide Links findest du immer unter jedem Eintrag/Download.

Data-Load.me | Data-Load.ing | Data-Load.to | Data-Load.in

Auf Data-Load.me findest du Links zu kostenlosen Downloads für Filme, Serien, Dokumentationen, Anime, Animation & Zeichentrick, Audio / Musik, Software und Dokumente / Ebooks / Zeitschriften. Wir sind deine Boerse für kostenlose Downloads!

Ist Data-Load legal?

Data-Load ist nicht illegal. Es werden keine zum Download angebotene Inhalte auf den Servern von Data-Load gespeichert.
Oben Unten