SQL Serveur 2017: Actualiser ses compétences vers SQL Server 2017

Betribsiwwergräifend Formatioun

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The primary audience for this course is existing database professionals with experience of SQL Server 2016 who want to update their skills to SQL Server 2017.

The secondary audience is existing SQL Server 2016 MCSAs who want to prepare for the Upgrade exam for SQL Server 2017 certification.

Erreechten Niveau

Avancéiert

Dauer

2,00 Dag(Deeg)

Sprooch(e) vun der Déngschtleeschtung

FR

Nächst Sessioun

Virkenntnisser

In addition to their professional experience, students who attend this training should already have the following technical knowledge:

  • Experience of building and managing database, data warehouse, and business intelligence (BI) solutions with SQL Server 2016
  • Familiarity with the Windows Server 2016 operating system and networking
  • Familiarity with Microsoft Office 2016

Ziler

This two-day instructor-led course is aimed at database professionals looking to update their skills to cover SQL Server 2017.

After completing this course, students will be able to:

  • Describe key capabilities and components of SQL Server 2017
  • Describe new and enhanced features in SQL Server Performance, Availability, and Scalability
  • Describe new and enhanced features in SQL Server data access
  • Describe new and enhanced features in SQL Server reporting and BI
  • Describe new and enhanced features in SQL Server OLAP
  • Describe new and enhanced data analytics features
  • Describe new and enhanced features in SQL Server Cloud deployments
  • Describe SQL Server on Linux functionality

Inhalt

Module 1: Introduction to SQL Server 2017

Module Goal: Describe key capabilities and components of SQL Server 2017.

Lessons

  • Overview of SQL Server 2017
  • Functionality across versions

After completing this module, students will be able to:

  • Describe the edition scale limits
  • Explain the consistent functionality across versions
Module 2: What’s new in SQL Server Performance, Scalability, and Availability.

This module introduces the performance enhancements provided by Adaptive Query Processing and Automatic Tuning, as well as the scalability and availability enhancements provided by new Availability Group architectures, including Read-Scale Availability Groups and Availability Groups with SQL Server on Linux.

Lessons

  • Adaptive query processing
  • Automatic tuning
  • Availability Scalability
  • Lab: Performance and availability – adaptive query processing
  • Interleaved execution
  • Batch mode memory grant feedback
  • Batch mode adaptive joins

After completing this module, students will be able to:

  • Describe adaptive query processing
  • Describe automatic plan correction
  • Describe availability group architectures
  • Describe always on availability groups for Linux
  • Describe load balancing of readable secondary replicas
  • Describe petabyte-scale data warehousing
Module 3: What’s New in SQL Server data Access

SQL Server 2017 introduces SQL Graph which enables you to define the relationships between your data items in a table rather than calculating them during a query, reducing the query cost and simplifying your data structure.

Lessons

  • SQL Graph
  • Lab: SQL Graph
  • Create a Graph database
  • Query a Graph database

After completing this module, students will be able to:

  • Describe SQL Graph
Module 4: What’s new in SQL Server Reporting and BI

This module describes what’s new in SQL Server reporting and BI.

Lessons

  • Power BI report Server
  • Reporting Services update
  • Lab: Reporting and BI
  • Deploy Power BI report server
  • Add commenting to a report

After completing this module, students will be able to:

  • Explain what Power BI report server is
  • Use Power BI report server
  • Create a Power BI report foe Power BI report server
Module 5: New and Enhanced Features in SQL Server Analysis Services

This module introduces new and enhanced features in SQL Server Analysis Services, with particular emphasis on the tabular data model.

Lessons

  • Tabular model updates
  • Lab: Ragged hierarchies
  • View existing reports
  • Hide blank members

After completing this module, students will be able to:

  • Describe the new features of tabular data models
Module 6: New and Enhanced data Analytics Features

This module introduces new and enhanced data analytics features.

Lessons

  • New and enhanced data analytics features
  • Lab: Data analytics with Python
  • Enable external script execution
  • Run Python scripts

After completing this module, students will be able to:

  • Describe the new and enhanced data analytics features.
Module 7: What’s new in SQL Server in the Cloud

Organizations want the best value from a mixture of cloud services and their existing investment in on-premises hardware and software. This module covers a comparison between the features of Microsoft Azure SQL Database and Microsoft SQL Server 2017, as well as new features that make it easier for you to migrate databases from on-premises SQL Server instances to Azure SQL Database.

Lessons

  • Azure SQL database features
  • Managed Instances
  • Lab: Managed instances

After completing this module, students will be able to:

  • Explain the different features available in Azure SQL database and SQL Server 2017
  • Describe Azure managed instances
Module 8: SQL Server on Linux

This module covers the features of SQL Server on Linux, as well as the process for deploying SQL Server on Linux and using Docker.

Lessons

  • SQL Server on Linux
  • Deploying SQL Server on Linux
  • Lab: SQL Server in Docker containers
  • Deploy a SQL Server Docker image
  • Run a SQL Server instance inside a Docker container
  • Connect to a SQL Server Instance running in a Docker container

After completing this module, students will be able to:

  • Describe the features of SQL Server on Linux
  • Describe SQL Server on Linux deployment
  • Deploy SQL server in a Docker container

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