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Beginnt 4 June 2026 06:07
Endet 4 June 2026
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Übersicht
Explore big data architectures with Azure ML Studio, covering integration, customization, and scaling for effective machine learning on large datasets.
Lehrplan
- Introduction to Big Data and Azure Machine Learning
- Understanding Azure ML Studio Interface
- Big Data Architectures on Azure
- Data Preparation and Cleaning
- Machine Learning Model Development
- Scaling Machine Learning Workloads
- Customizing and Automating Workflows
- Integrating Azure ML with Other Azure Services
- Case Studies and Real-world Applications
- Ethical Considerations and Future Trends
- Course Conclusion and Final Project
Overview of big data concepts
Introduction to Azure ML Studio
Key features and advantages of using Azure in big data environments
Navigating the Azure ML Studio environment
Key tools and panes in Azure ML
Difference between streams, lakes, and oceans in big data
Data Lake Storage and Azure Stream Analytics
Integrating Big Data tools with Azure ML
Importing data into Azure ML
Data cleaning techniques
Handling missing data and outliers in large datasets
Choosing the right ML models for big data
Training and testing models in Azure ML
Model evaluation metrics for big data applications
Parallel processing and distributed computing
Scaling computations with Azure ML
Optimizing performance for large datasets
Creating custom modules in Azure ML
Building automated workflows with Azure ML Pipelines
Experimentation and iteration with large datasets
Using Azure Data Factory for data movement
Real-time analytics with Azure Stream Analytics
Integration with Azure Databricks for enhanced analytics
Successful big data projects using Azure ML
Best practices in industry-specific applications
Data privacy concerns in big data
Emerging trends in big data and machine learning
Recap of key learning points
Final project to demonstrate integration and scalability
Resources for further learning and certification paths
Fachgebiete
Conference Talks