This course is designed to provide a comprehensive foundation in Azure Machine Learning, equipping learners with essential skills for managing ML workflows within the Azure ML workspace. Participants will begin by understanding core workspace fundamentals, including environment setup, resource management, and key components for ML experimentation. The course progresses to advanced concepts such as optimizing compute resources, managing datasets effectively, and configuring high-performance ML pipelines.

Azure ML: Deploying, Managing, and Experimenting with Models
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您将获得的技能
- Cloud Deployment
- Data Preprocessing
- MLOps (Machine Learning Operations)
- Scalability
- Applied Machine Learning
- Feature Engineering
- Microsoft Azure
- Model Deployment
- Performance Tuning
- Responsible AI
- Machine Learning Algorithms
- Data Management
- Cloud Management
- Model Evaluation
- Machine Learning
- 技能部分已折叠。显示 9 项技能,共 15 项。
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5 项作业
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该课程共有2个模块
This course provides a deep dive into identifying appropriate data sources, formats, and ingestion strategies for machine learning projects in Azure, ensuring efficient data handling. It emphasizes the principles of selecting the right services and compute options for model training, optimizing performance and scalability. Participants will gain expertise in differentiating between real-time and batch deployment strategies based on consumption needs, enabling informed architectural decisions. Additionally, the course explores MLOps best practices, guiding learners through the design and implementation of scalable workflows and effective Azure ML environment organization, ensuring seamless integration and lifecycle management.
涵盖的内容
11个视频3篇阅读材料2个作业
This module provides a comprehensive understanding of deploying, registering, and managing machine learning models within Azure Machine Learning, equipping learners with the skills to operationalize ML solutions. Participants will explore concepts such as deploying models to managed online endpoints, MLflow model registration, and applying Blue-Green deployment strategies for seamless updates. The module covers logging and autologging ML models using MLflow, configuring model signatures, and understanding the MLflow model format to enhance interoperability. Learners will gain expertise in Responsible AI practices, including evaluating the Responsible AI dashboard, performing error analysis, and exploring explanations, counterfactuals, and causal analysis. Additionally, the module includes exam tips to help learners succeed in Azure ML certification. By the end of this module, participants will be equipped with practical knowledge to deploy and manage ML models efficiently while ensuring ethical and responsible AI implementation in Azure Machine Learning.
涵盖的内容
18个视频1篇阅读材料3个作业
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