ignite-learning-paths-train.../README.md

5.6 KiB
Исходник Ответственный История

Ignite Learning Paths - Modern Data Warehouse

Learning Path Session

Welcome!

The content of this repository is available for you so you can reproduce any demo or learn how to present any session of the Learning Path presented at Microsoft Ignite and during Microsoft Ignite The Tour, in your local field office, a community user group, or even as a lunch-and-learn event for your company.

Do the Demos

If you are here to reproduce a demo in the comfort of your home/office, go in in the section Sessions. In each session you will find deployment instructions, to create the environment you need, and a tutorial to do the demo step by step.

Presenting the content

We're glad you are here and look forward to your delivery of this amazing content. As an experienced presenter, we know you know HOW to present so this guide will focus on WHAT you need to present. It will provide you a full run-through of the presentation created by the presentation design team.

Along with the video of the presentation, this repository will link to all the assets you need to successfully present including PowerPoint slides and demo instructions & code.

About this Learning Path:

Intelligent decision making through modern data warehousing

Data is the greatest asset to a company in the process of intelligent decision making. How is my business performing? How do I get more insights to turn from a reactive approach to a pro-active and predictive scenario? TailWind Traders, is driving the digital transformation by breaking the barriers caused by data silos, and building an analytics solution. In this learning path youll about the journey of building out an analytics solution through modern data warehousing as a core engine to provide intelligent decision making.

Sessions

Here are all the sessions available in the learning path Intelligent decision making through modern data warehousing (aka: DATA)

DATA10: Delivering a modern data warehouse

Tailwind Traders, like many other companies is driving digital transformation to get actionable insights from their data. To drive business impact and intelligent decision making, they are taking advantage of a modern data warehouse to build a cloud-scale analytics solution.

DATA20: Ingesting data for analytics workloads

To build their analytics solution, Tailwind Traders needs to derive insights from a variety of data sources. Tailwind Traders uses Azure Data Factory to create data pipelines for data ingestion in preparation for analytics.

DATA30: Transforming and enriching data

Tailwind Traders, deals with the core issue of having to connect and relate multiple data sources. In order to be able to prepare the data for reasoning and analysis, data requires transformation and enrichment.

DATA40: Data loading best practices

Tailwind Traders data loading lends itself to a variety of data ingestion methods, each uniquely identified by the shape or structure of the data. In this session youll discover data loading best practices and how to optimize for parallel loads into a cloud data warehouse.

DATA50: Optimizing data warehousing query performance

To ensure optimal performance of their analytics solution and deliver insights to the entire organization, TailWind Traders implements best practices to maximize scale and throughput.

Contributing

To know more about about to contribute to this project please refer to the Code of Conduct and Contributing page.

Become a Trained Presenter

You don't need anything to present this content, it's all there to be used. However, by becoming a Trained Presenter the scalable content team will recognize you as well. Trained Presenter see their contact information (name, picture, website) in the bottom of each session.

To become a Trained Presenter, contact scalablecontent@microsoft.com. In your email please include:

  • Complete name:
  • The code of this presentation: <Session Code (ex:DATA10)>
  • Link to an unlisted YouTube video of you presenting around 10 minutes of the content for this specific session.

Microsoft and any contributors grant you a license to the Microsoft documentation and other content in this repository under the Creative Commons Attribution 4.0 International Public License, see the LICENSE file, and grant you a license to any code in the repository under the MIT License, see the LICENSE-CODE

Microsoft, Windows, Microsoft Azure and/or other Microsoft products and services referenced in the documentation may be either trademarks or registered trademarks of Microsoft in the United States and/or other countries. The licenses for this project do not grant you rights to use any Microsoft names, logos, or trademarks. Microsoft's general trademark guidelines can be found at http://go.microsoft.com/fwlink/?LinkID=254653.

Privacy information can be found at https://privacy.microsoft.com/en-us/

Microsoft and any contributors reserve all other rights, whether under their respective copyrights, patents, or trademarks, whether by implication, estoppel or otherwise.