Udemy

The complete Azure Machine learning course - 2025 Edition

Enroll Now
  • 1,620 Students
  • Updated 5/2025
4.2
(202 Ratings)
CTgoodjobs selects quality courses to enhance professionals' competitiveness. By purchasing courses through links on our site, we may receive an affiliate commission.

Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
16 Hour(s) 32 Minute(s)
Language
English
Taught by
Cyberdefense Learning
Rating
4.2
(202 Ratings)
2 views

Course Overview

The complete Azure Machine learning course - 2025 Edition

Master Machine Learning with Azure ML Studio – Build, Train & Deploy AI Models Using No-Code & Python.

Machine learning is revolutionizing industries by enabling data-driven decision-making and automation. However, implementing machine learning models can be complex, requiring infrastructure setup, data processing, and model deployment. Microsoft Azure Machine Learning Studio simplifies this process by providing a cloud-based platform to build, train, and deploy machine learning models efficiently. This course is designed to help learners master Azure ML Studio through a structured, hands-on approach.

This course covers the entire machine learning lifecycle, from understanding key concepts to deploying models in production environments. Learners will explore:

  • Types of Machine Learning – Supervised, unsupervised, and reinforcement learning.

  • Real-world applications in healthcare, finance, cybersecurity, and retail.

  • Challenges in Machine Learning – Overfitting, data quality, interpretability, and scalability.

Hands-on with Azure ML Studio

Through practical demonstrations, learners will:

  • Navigate the Azure Machine Learning Studio interface and set up a workspace.

  • Manage datasets, experiments, and models in a cloud-based environment.

  • Preprocess data – Handle missing values, perform feature engineering, and split datasets for training.

  • Use data transformation techniques – Standardization, normalization, one-hot encoding, and PCA.

Building & Training Machine Learning Models

Learners will explore different machine learning algorithms and techniques, including:

  • Regression, classification, and clustering models in Azure ML Studio.

  • Feature selection and hyperparameter tuning for better model performance.

  • AutoML (Automated Machine Learning) for optimizing models with minimal effort.

  • Ensemble learning methods such as Random Forests, Gradient Boosting, and Neural Networks.

Model Deployment & Optimization

Once models are trained, learners will dive into model deployment strategies:

  • Real-time inference vs. batch inference using Azure Kubernetes Service (AKS) and Azure Functions.

  • Security best practices – Role-Based Access Control (RBAC), compliance, and encryption.

  • Monitoring model drift – Implementing tracking tools to detect performance degradation over time.

Automating Machine Learning Workflows

This course includes Azure ML Pipelines to automate machine learning processes:

  • Building end-to-end pipelines – Automate data ingestion, model training, and evaluation.

  • Using custom Python scripts in ML pipelines.

  • Monitoring and managing pipeline execution for scalability and efficiency.

MLOps & CI/CD for Machine Learning

Learners will gain practical knowledge of MLOps and CI/CD for ML models using:

  • Azure DevOps & GitHub Actions for model versioning and retraining automation.

  • CI/CD pipelines for seamless ML model updates.

  • Techniques for model lifecycle management – Deployment, monitoring, and rollback strategies.

Exploring Generative AI with Azure ML

This course also introduces Generative AI:

  • Working with Azure OpenAI ServicesGPT, DALL·E, and Codex.

  • Fine-tuning AI models for domain-specific applications.

  • Ethical AI considerations – Bias detection, explainability, and responsible AI practices.

  • Microsoft Certified: Azure Data Scientist Associate -  DP-100

  • Prepare for Microsoft Certified: Azure AI Engineer Associate -  AI-102

Course Content

  • 8 section(s)
  • 113 lecture(s)
  • Section 1 Introduction to Machine Learning and Azure
  • Section 2 Data Basics and Preprocessing
  • Section 3 Module 3: Building Machine Learning Models
  • Section 4 Module 4: Model Evaluation and Optimization
  • Section 5 Module 5 - Machine learning Pipelines (ML-OPS)
  • Section 6 Module 6 - Advanced Model Deployment Strategy
  • Section 7 Module 7 - MLOps (Machine Learning Operations)
  • Section 8 Module 8: Exploring Generative AI with Azure ML Studio

What You’ll Learn

  • Learn about supervised, unsupervised, and reinforcement learning, key concepts like training data, models, predictions, and real-world applications.
  • Navigate and utilize Azure ML Studio's tools, including Designer, Notebooks, Automated ML, and Model Management.
  • Load, clean, transform, and engineer features using Azure ML Studio to optimize model performance.
  • Use Azure ML Studio’s visual interface and custom Python scripts to create, train, and evaluate machine learning models.
  • Apply hyperparameter tuning, cross-validation, and automated ML techniques to enhance model accuracy and efficiency.
  • Learn different model deployment strategies, including real-time inference, batch inference, and Edge deployments using Azure Kubernetes Service (AKS) and Azure
  • Create reusable machine learning workflows using Azure ML Pipelines for training, evaluation, and deployment automation.
  • Set up CI/CD pipelines, automate model retraining, monitor model drift, and ensure security and compliance with Azure DevOps.
  • Work with GPT, DALL·E, Stable Diffusion, and Codex, fine-tune AI models, and apply responsible AI principles for fairness and transparency.
  • Work through multiple demos, labs, and real-world projects to gain practical experience in Azure Machine Learning.
  • Learners preparing for Microsoft AI certifications like AI-102 , AI-900 etc.


Reviews

  • M
    Mogamat
    5.0

    Simple straight forward explanations

  • P
    Prash G
    1.0

    More slides and explanation, very little demo or practical presentation.

  • V
    Vijay Kasam
    5.0

    Just finished the Azure Machine Learning course — it gave me a solid understanding of ML workflows on Azure with pratical knowledge. Thank you sir.

  • C
    Chandrahaas
    5.0

    This course offers a very good hands-on experience and industry-level theory, clearly explaining supervised learning, unsupervised learning, feature engineering, and model development, while guiding you to navigate through Azure ML Studio. I personally like the way practical labs are designed with real-world demos. This course is an absolute great start for beginners.

Start FollowingSee all

We use cookies to enhance your experience on our website. Please read and confirm your agreement to our Privacy Policy and Terms and Conditions before continue to browse our website.

Read and Agreed