Udemy

The complete Azure Machine learning course - 2025 Edition

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  • 1,620 名學生
  • 更新於 5/2025
4.2
(202 個評分)
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課程資料

報名日期
全年招生
課程級別
學習模式
修業期
16 小時 32 分鐘
教學語言
英語
授課導師
Cyberdefense Learning
評分
4.2
(202 個評分)

課程簡介

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

課程章節

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

課程內容

  • 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.


評價

  • 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.

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