Talend Data Integration Certification Preparation training (Coursera)

Offered by Talend,
Talend Data Integration Certification Preparation training (Coursera)

Talend certification exams measure candidates’ skills to ensure that they have the knowledge to successfully implement quality projects. It is recommended to have at least 6 months experience using Talend products and general knowledge of data integration architecture and advanced features before preparing for a Talend certification.

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At the end of this preparation course, you can take the graded assessments in order to obtain the certificate of the course completion. This includes practice test questions that provide a sample of question types, format, and content you might encounter during the Talend Data Integration v7 Certified Developer exam. Please note this is not the actual certification.
Preparing for a certification exam can be both exciting and terrifying, but don't worry! This preparation course will introduce the topics you should invest in when preparing for the certification exam.
In the first module, you'll learn how Talend Studio can help you implement data integration projects. In the second module, you’ll learn how you can use Talend Cloud Pipeline Designer to take raw data and makes it analytics-ready. In the final module, you'll be introduced to Stitch, and learn how to replicate data into cloud data warehouses so you can quickly access analytics and make better, faster decisions to answer your data integration needs.

What You Will Learn

  • Building Jobs, accessing files and databases, joining and filtering data and

orchestrating complex tasks in Talend Studio.

  • Creating datasets, pipelines, different types of connections and processing the data using

several processors in Talend Cloud Pipeline Designer.

  • Setting up the ETL process in Stitch, scheduling a Stitch pipeline and describing the main features available in Stitch.

Syllabus

WEEK 1
Using Talend Studio
In this preparation module, you'll get introduced to Talend Studio and you’ll learn how to build and run Jobs, accessing files and databases, joining and filtering data, orchestrating complex tasks, handling errors while following best practices.

WEEK 2
Using Pipeline Designer
In this preparation module, you'll see the potential of Talend Cloud Pipeline Designer. You’ll learn how to build datasets, pipelines, different types of connections and process the data using several processors in Pipeline Designer.

WEEK 3
Using Stitch
In this preparation module, you'll get introduced to Stitch and you’ll learn how to setup the ETL process in Stitch, how to schedule a Stitch pipeline and describe the main features available in Stitch.

Go to Class
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