Microservices & Serverless Architecture

Microservices & Serverless Architecture

Performing Big Data Engineering on Microsoft Cloud ServicesEnroll & Get Certified now!

  • ✔ Course Duration : 40 hrs
  • ✔ Training Options : Live Online / Self-Paced / Classroom
  • ✔ Certification Pass : Guaranteed

Microservices & Serverless Architecture

Performing Big Data Engineering on Microsoft Cloud Services

What you will Learn

  • Architectures for Big Data Engineering with Azure
  • Processing Event Streams using Azure Stream Analytics
  • Performing custom processing in Azure Stream Analytics
  • Managing Big Data in Azure Data Lake Store
  • Processing Big Data using Azure Data Lake Analytics
  • Implementing custom operations and monitoring performance in Azure Data Lake Analytics
  • Implementing Azure SQL Data Warehouse
  • Performing Analytics with Azure SQL Data Warehouse
  • Automating the Data Flow with Azure Data Factory

PREREQUISITES

  • Fundamental knowledge about Azure would be helpful

CURRICULUM

This module describes common architectures for processing big data using Azure tools and services.

Lessons
  • Understanding Big Data
  • Architectures for Processing Big Data
  • Considerations for designing Big Data solutions
Lab : Designing a Big Data Architecture
  • Design a big data architecture
After completing this module, students will be able to:
  • Explain the concept of Big Data.
  • Describe the Lambda and Kappa architectures.
  • Describe design considerations for building Big Data Solutions with Azure.

This module describes how to use Azure Stream Analytics to design and implement stream processing over large-scale data.

Lessons
  • Introduction to Azure Stream Analytics
  • Configuring Azure Stream Analytics jobs
Lab : Processing Event Streams with Azure Stream Analytics
  • Create an Azure Stream Analytics job
  • Create another Azure Stream job
  • Add an Input
  • Edit the ASA job
  • Determine the nearest Patrol Car
After completing this module, students will be able to:
  • Describe the purpose and structure of Azure Stream Analytics.
  • Configure Azure Stream Analytics jobs for scalability, reliability and security.

This module describes how to include custom functions and incorporate machine learning activities into an Azure Stream Analytics job.

Lessons
  • Implementing Custom Functions
  • Incorporating Machine Learning into an Azure Stream Analytics Job
Lab : Performing Custom Processing with Azure Stream Analytics
  • Add logic to the analytics
  • Detect consistent anomalies
  • Determine consistencies using machine learning and ASA
After completing this module, students will be able to:
  • Describe how to create and use custom functions in Azure Stream Analytics.
  • Describe how to use Azure Machine Learning models in an Azure Stream Analytics job.

This module describes how to use Azure Data Lake Store as a large-scale repository of data files.

Lessons
  • Using Azure Data Lake Store
  • Monitoring and protecting data in Azure Data Lake Store
Lab : Managing Big Data in Azure Data Lake Store
  • Update the ASA Job
  • Upload details to ADLS
After completing this module, students will be able to:
  • Describe how to create an Azure Data Lake Store, create folders, and upload data.
  • Explain how to monitor an Azure Data Lake account, and protect the data that it contains.

This module describes how to use Azure Data Lake Analytics to examine and process data held in Azure Data Lake Store.

Lessons
  • Introduction to Azure Data Lake Analytics
  • Analyzing Data with U-SQL
  • Sorting, grouping, and joining data
Lab : Processing Big Data using Azure Data Lake Analytics
  • Add functionality
  • Query against Database
  • Calculate average speed
After completing this module, students will be able to:
  • Describe the purpose of Azure Data Lake Analytics, and how to create and run jobs.
  • Describe how to use USQL to process and analyse data.
  • Describe how to use windowing to sort data and perform aggregated operations, and how to join data from multiple sources.

This module describes how to create and deploy custom functions and operations, integrate with Python and R, and protect and optimize jobs.

Lessons
  • Incorporating custom functionality into Analytics jobs
  • Managing and Optimizing jobs
Lab : Implementing custom operations and monitoring performance in Azure Data Lake Analytics
  • Custom extractor
  • Custom processor
  • Integration with R/Python
  • Monitor and optimize a job
After completing this module, students will be able to:
  • Describe how to incorporate custom features and assemblies into USQL.
  • Describe how to implement security to protect jobs, and how to monitor and optimize jobs to ensure efficient operations.

This module describes how to use Azure SQL Data Warehouse to create a repository that can support large-scale analytical processing over data at rest.

Lessons
  • Introduction to Azure SQL Data Warehouse
  • Designing tables for efficient queries
  • Importing Data into Azure SQL Data Warehouse
Lab : Implementing Azure SQL Data Warehouse
  • Create a new data warehouse
  • Design and create tables and indexes
  • Import data into the warehouse.
After completing this module, students will be able to:
  • Describe the purpose and structure of Azure SQL Data Warehouse.
  • Describe how to design table to optimize the processing performed by the data warehouse.
  • Describe tools and techniques for importing data into a warehouse at scale.

This module describes how to import data in Azure SQL Data Warehouse, and how to protect this data.

Lessons
  • Querying Data in Azure SQL Data Warehouse
  • Maintaining Performance
  • Protecting Data in Azure SQL Data Warehouse
Lab : Performing Analytics with Azure SQL Data Warehouse
  • Performing queries and tuning performance
  • Integrating with Power BI and Azure Machine Learning
  • Configuring security and analysing threats
After completing this module, students will be able to:
  • Describe how to perform queries and use the data held in a data warehouse to perform analytics and generate reports.
  • Describe how to configure and monitor a data warehouse to maintain good performance.
  • Describe how to protect data and manage security in a data warehouse.

This module describes how to use Azure Data Factory to import, transform, and transfer data between repositories and services.

Lessons
  • Introduction to Azure Data Factory
  • Transferring Data
  • Transforming Data
  • Monitoring Performance and Protecting Data
Lab : Automating the Data Flow with Azure Data Factory
  • Automate the Data Flow with Azure Data Factory
After completing this module, students will be able to:
  • Describe the purpose of Azure Data Factory, and explain how it works.
  • Describe how to create Azure Data Factory pipelines that can transfer data efficiently.
  • Describe how to perform transformations using an Azure Data Factory pipeline.
  • Describe how to monitor Azure Data Factory pipelines, and how to protect the data flowing through these pipelines.

FAQs

You can enroll for this classroom training online. Payments can be made using any of the following options and receipt of the same will be issued to the candidate automatically via email.
1. Online ,By deposit the mildain bank account
2. Pay by cash team training center location

Highly qualified and certified instructors with 20+ years of experience deliver more than 200+ classroom training.

Contact us using the form on the right of any page on the mildaintrainings website, or select the Live Chat link. Our customer service representatives will be able to give you more details.

You will never miss a lecture at Mildaintrainigs! You can choose either of the two options: View the recorded session of the class available in your LMS. You can attend the missed session, in any other live batch.

We have a limited number of participants in a live session to maintain the Quality Standards. So, unfortunately, participation in a live class without enrollment is not possible. However, you can go through the sample class recording and it would give you a clear insight about how are the classes conducted, quality of instructors and the level of interaction in a class.

Yes, you can cancel your enrollment if necessary prior to 3rd session i.e first two sessions will be for your evaluation. We will refund the full amount without deducting any fee for more details check our Refund Policy

Yes, the access to the course material will be available for lifetime once you have enrolled into the course.

Just give us a CALL at +91 8447121833 OR email at info@mildaintrainings.com

Call us At

+91 8447121833

Available 24x7 for your queries
call
Request More Information

Training Features

experiential.png
Experiential Workshops

Top-rated instructors imparting in-depth training, hands-on exercises with high energy workshop

icon
Certificate Exam Application Assistance

The training program includes several lab assignments, developed as per real industry scenarios.

icon
Certificate Exam Success Formula

Training begins taking a fresh approach from basic, unique modules, flexible, and enjoyable.

icon
Certificate Journey Support

Basic to intermediate and eventually advanced practicing full hands-on lab exercises till you master.

icon
Free Refresh Course

Refresh training for experts for mastering and enhancing the skills on the subjects with fresh course modules.

icon
Exclusive Post-Training Sessions

Includes evaluation, feedback, and tips to handle critical issues in live setup after you are placed in a job.

Mildain's Master Certificate

Earn your certificate

This certificate proves that you have taken a big leap in mastering the domain comprehensively.

Differentiate yourself with a Masters Certificate

Now you are equipped with real-industry knowledge, required skills, and hands-on experience to stay ahead of the competition.

Share your achievement

Post the certificate on LinkedIn and job sites to boost your profile. Notify your friends and colleagues by sharing it on Twitter and Facebook.

certificate.jpg
whatsapp arrow
Loading...
Corporate // load third party scripts onload