Data Integration with Cloud Data Fusion
     
 
    
      
        
  
  
      
    
           Skip to Scheduled Dates
    
      Course Overview
      This 2-day course introduces learners to Google Cloud’s data integration capability using Cloud Data Fusion. In this course, we discuss challenges with data integration and the need for a data integration platform (middleware). We then discuss how Cloud Data Fusion can help to effectively integrate data from a variety of sources and formats and generate insights. We take a look at Cloud Data Fusion’s main components and how they work, how to process batch data and real time streaming data with visual pipeline design, rich tracking of metadata and data lineage, and how to deploy data pipelines on various execution engines.
    
  
  
      Who Should Attend
    
      Data Engineer. 
Data Analysts
    
  
  
      Course Objectives
    
      
- Identify the need of data integration,
- Understand the capabilities Cloud Data Fusion provides as a data integration platform,
- Identify use cases for possible implementation with Cloud Data Fusion,
- List the core components of Cloud Data Fusion,
- Design and execute batch and real time data processing pipelines,
- Work with Wrangler to build data transformations
- Use connectors to integrate data from various sources and formats,
- Configure execution environment; Monitor and Troubleshoot pipeline execution,
- Understand the relationship between metadata and data lineage
	
  
  
	
  
  
	
  Course Outline
    
            
                
- Course Introduction
- Building Pipelines
- Designing Complex Pipelines
- Pipeline Execution Environment
- Building Transformations and Preparing Data with Wrangler
- Connectors and Streaming Pipelines
- Metadata and Data Lineage
- Course Summary
 
        
 
     
    
  < Back to Course Search
     
Class times are listed Central time
    This is a 2-day class
      
		
  Class dates not listed.
Please contact us for available dates and times.