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The Need to Know What Could Be…
Machine Learning - Intro from Microsoft Partner University
Machine Learning - Intro from Microsoft Partner University
Machine Learning
Subfield of computer science and statistics
that deals with the construction and study
of systems that can learn from data, rather
than follow only explicitly programmed
instructions
-Wikipedia
f( )
num1, num2
I need to add two
numbers together…
I need to predict
customer profitability…
f( )
Age, Marital Status, Gender,
Yearly Income, Total Children,
Education, Occupation, Home
Owner, Commute Distance
Machine Learning Flow
Define
Objective
Collect
Data
Prepare
Data
Train
Models
Evaluate
Models
Publish
Manage
Integrate
Machine Learning Roles
Data Scientist
• A highly educated and skilled person who can solve complex data problems by employing
deep expertise in scientific disciplines (mathematics, statistics or computer science)
Data Professional
• A skilled person who creates or maintains data systems, data solutions, or implements
predictive modelling
• Roles: Database Administrator, Database Developer, or BI Developer
Software Developer
• A skilled person who designs and develops programming logic, and can apply machine
learning to integrate predictive functionality into applications
Machine Learning Challenges
Strategic
Change
Lots of Buzz Words
New Markets
High
Competition Expensive
Isolated Data
Tool Chaos
Complexity
Consequences
• Lost opportunities
• Expensive operative
mistakes
Traditional
Approach
• Guessing
• Rules of thumb
• Trial and error
Machine Learning - Intro from Microsoft Partner University
Azure Machine Learning
• Enables powerful cloud-based predictive analytics
• Professionals can easily build, deploy and share advanced
analytics solutions
• Armed with nothing but a browser, professionals can log on to Azure and develop
prediction models from anywhere – and deploy new analytic models quickly
• Retains a practically unlimited number of files on Azure Storage and connects
seamlessly with other Azure data-related services, including:
• Azure HDInsight (Big Data)
• Azure SQL Database, and
• Virtual Machines
• Can connect also to SQL Server on-premises
Azure Machine Learning
How it Works
Azure Portal
Azure Ops Team
ML Studio
Data Professional
HDInsight
Azure Storage
Desktop Data
Azure Portal &
ML API service
Azure Ops Team
ML API service Application Developer
Power BI
Mobile Apps
Web Apps Streaming
On-Prem Data
Business users easily
access results from
anywhere, on any
device
Azure Machine Learning
How it Works
Azure Portal
Azure Ops Team
ML Studio
Data Scientist
Azure Portal &
ML API service
Azure Ops Team
ML API service Developer
ML Studio
and the Data Professional
• Access and prepare data
• Create, test and train models
• Collaborate
• One click to stage for
production via the API service
AzurePortal&MLAPIservice
and the Azure Ops Team
• Create ML Studio workspace
• Assign storage account(s)
• Monitor ML consumption
• See alerts when model is ready
• Deploy models to web service
ML API service and the Application Developer
• Tested models available as an url that can be called from any end point
Business users easily
access results from
anywhere, on any
device
HDInsight
Azure Storage
Desktop Data
On-Prem Data
Power BI
Mobile Apps
Web Apps Streaming
Machine Learning Process
One Solution for Machine Learning
Quick and Easy Extensibility with Cloud Functions
including Power BI, Hadoop (Azure HDInsight) and
Azure Storage
Machine Learning - Intro from Microsoft Partner University
Message for IT Professionals
• Machine Learning is one of the most popular fields in the
discipline of Computer Science, and it is also perhaps the
most feared by developers
• This fear is probably due to the understanding that Machine Learning is a
scientific field requiring deep mathematical expertise
• But – Machine Learning has two disciplines:
• Machine Learning, and Applied Machine Learning
• IT Professionals can:
• Apply Machine Learning by acquiring practical hands-on skills that get
Machine Learning algorithms to work, rather than the mathematical
underpinnings of Machine Learning
• Integrate predictive functionality into application experiences
Business Scenarios
Ad
targeting
Equipment
monitoring
Spam
filtering
Churn
analysis
Recommendations
Fraud
detection
Image
detection &
classification
Forecasting
Anomaly
detection
Imagine what you could use
Machine Learning for…
Machine Learning - Intro from Microsoft Partner University
Summary
• Machine Learning is a subfield of computer science and statistics that
deals with the construction and study of systems that can learn from data
• Azure Machine Learning key attributes:
• Fully managed ► No hardware or software to buy
• Integrated ► Drag, drop, connect and configure
• Best-in-class Algorithms ► Proven solutions from Xbox and Bing
• R Built In ► Use over 400 R packages, or bring your own R or Python code
• Deploy in minutes ► Operationalize with a click
• Machine Learning is now approachable to Data Professionals
Resources
• Azure Machine Learning web site
• http://azure.microsoft.com/en-us/services/machine-learning
• Azure Machine Learning documentation
• http://azure.microsoft.com/en-us/documentation/services/machine-learning
• Azure Machine Learning FAQ
• http://azure.microsoft.com/en-us/documentation/articles/machine-learning-faq
• Azure Machine Learning pricing
• http://azure.microsoft.com/en-us/pricing/details/machine-learning/
• Note: The Free tier does not require an Azure subscription or a credit card
• Azure Machine Learning gallery
• https://gallery.azureml.net
Resources
• Azure Machine Learning blog
• http://blogs.technet.com/b/machinelearning
• Videos: PASS Data Science Virtual Chapter
• https://www.youtube.com/channel/UCqB3xWdwjA9soFV6EOu7qfg
• Videos: SSW TV: Cloud-Based Machine Learning for the Developer
• http://tv.ssw.com/5916/cloud-based-machine-learning-for-the-developer-peter-myers
• Microsoft Ignite Conference:
• Session: Cloud-Based Machine Learning for the Developer (4 Sep, 2015)
• Presenter: Peter Myers
• https://channel9.msdn.com/Events/Ignite/Microsoft-Ignite-New-Zealand-2015/M370
© 2016 Microsoft Corporation. All rights reserved. Microsoft, Windows, Microsoft Azure, and other product names are or may be registered trademarks and/or trademarks in the U.S. and/or other countries. The
information herein is for informational purposes only and represents the current view of Microsoft Corporation as of the date of this presentation. Because Microsoft must respond to changing market conditions,
it should not be interpreted to be a commitment on the part of Microsoft, and Microsoft cannot guarantee the accuracy of any information provided after the date of this presentation. MICROSOFT MAKES NO
WARRANTIES, EXPRESS, IMPLIED OR STATUTORY, AS TO THE INFORMATION IN THIS PRESENTATION

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Machine Learning - Intro from Microsoft Partner University

  • 2. The Need to Know What Could Be…
  • 5. Machine Learning Subfield of computer science and statistics that deals with the construction and study of systems that can learn from data, rather than follow only explicitly programmed instructions -Wikipedia
  • 6. f( ) num1, num2 I need to add two numbers together…
  • 7. I need to predict customer profitability… f( ) Age, Marital Status, Gender, Yearly Income, Total Children, Education, Occupation, Home Owner, Commute Distance
  • 9. Machine Learning Roles Data Scientist • A highly educated and skilled person who can solve complex data problems by employing deep expertise in scientific disciplines (mathematics, statistics or computer science) Data Professional • A skilled person who creates or maintains data systems, data solutions, or implements predictive modelling • Roles: Database Administrator, Database Developer, or BI Developer Software Developer • A skilled person who designs and develops programming logic, and can apply machine learning to integrate predictive functionality into applications
  • 10. Machine Learning Challenges Strategic Change Lots of Buzz Words New Markets High Competition Expensive Isolated Data Tool Chaos Complexity Consequences • Lost opportunities • Expensive operative mistakes Traditional Approach • Guessing • Rules of thumb • Trial and error
  • 12. Azure Machine Learning • Enables powerful cloud-based predictive analytics • Professionals can easily build, deploy and share advanced analytics solutions • Armed with nothing but a browser, professionals can log on to Azure and develop prediction models from anywhere – and deploy new analytic models quickly • Retains a practically unlimited number of files on Azure Storage and connects seamlessly with other Azure data-related services, including: • Azure HDInsight (Big Data) • Azure SQL Database, and • Virtual Machines • Can connect also to SQL Server on-premises
  • 13. Azure Machine Learning How it Works Azure Portal Azure Ops Team ML Studio Data Professional HDInsight Azure Storage Desktop Data Azure Portal & ML API service Azure Ops Team ML API service Application Developer Power BI Mobile Apps Web Apps Streaming On-Prem Data Business users easily access results from anywhere, on any device
  • 14. Azure Machine Learning How it Works Azure Portal Azure Ops Team ML Studio Data Scientist Azure Portal & ML API service Azure Ops Team ML API service Developer ML Studio and the Data Professional • Access and prepare data • Create, test and train models • Collaborate • One click to stage for production via the API service AzurePortal&MLAPIservice and the Azure Ops Team • Create ML Studio workspace • Assign storage account(s) • Monitor ML consumption • See alerts when model is ready • Deploy models to web service ML API service and the Application Developer • Tested models available as an url that can be called from any end point Business users easily access results from anywhere, on any device HDInsight Azure Storage Desktop Data On-Prem Data Power BI Mobile Apps Web Apps Streaming
  • 15. Machine Learning Process One Solution for Machine Learning Quick and Easy Extensibility with Cloud Functions including Power BI, Hadoop (Azure HDInsight) and Azure Storage
  • 17. Message for IT Professionals • Machine Learning is one of the most popular fields in the discipline of Computer Science, and it is also perhaps the most feared by developers • This fear is probably due to the understanding that Machine Learning is a scientific field requiring deep mathematical expertise • But – Machine Learning has two disciplines: • Machine Learning, and Applied Machine Learning • IT Professionals can: • Apply Machine Learning by acquiring practical hands-on skills that get Machine Learning algorithms to work, rather than the mathematical underpinnings of Machine Learning • Integrate predictive functionality into application experiences
  • 20. Summary • Machine Learning is a subfield of computer science and statistics that deals with the construction and study of systems that can learn from data • Azure Machine Learning key attributes: • Fully managed ► No hardware or software to buy • Integrated ► Drag, drop, connect and configure • Best-in-class Algorithms ► Proven solutions from Xbox and Bing • R Built In ► Use over 400 R packages, or bring your own R or Python code • Deploy in minutes ► Operationalize with a click • Machine Learning is now approachable to Data Professionals
  • 21. Resources • Azure Machine Learning web site • http://azure.microsoft.com/en-us/services/machine-learning • Azure Machine Learning documentation • http://azure.microsoft.com/en-us/documentation/services/machine-learning • Azure Machine Learning FAQ • http://azure.microsoft.com/en-us/documentation/articles/machine-learning-faq • Azure Machine Learning pricing • http://azure.microsoft.com/en-us/pricing/details/machine-learning/ • Note: The Free tier does not require an Azure subscription or a credit card • Azure Machine Learning gallery • https://gallery.azureml.net
  • 22. Resources • Azure Machine Learning blog • http://blogs.technet.com/b/machinelearning • Videos: PASS Data Science Virtual Chapter • https://www.youtube.com/channel/UCqB3xWdwjA9soFV6EOu7qfg • Videos: SSW TV: Cloud-Based Machine Learning for the Developer • http://tv.ssw.com/5916/cloud-based-machine-learning-for-the-developer-peter-myers • Microsoft Ignite Conference: • Session: Cloud-Based Machine Learning for the Developer (4 Sep, 2015) • Presenter: Peter Myers • https://channel9.msdn.com/Events/Ignite/Microsoft-Ignite-New-Zealand-2015/M370
  • 23. © 2016 Microsoft Corporation. All rights reserved. Microsoft, Windows, Microsoft Azure, and other product names are or may be registered trademarks and/or trademarks in the U.S. and/or other countries. The information herein is for informational purposes only and represents the current view of Microsoft Corporation as of the date of this presentation. Because Microsoft must respond to changing market conditions, it should not be interpreted to be a commitment on the part of Microsoft, and Microsoft cannot guarantee the accuracy of any information provided after the date of this presentation. MICROSOFT MAKES NO WARRANTIES, EXPRESS, IMPLIED OR STATUTORY, AS TO THE INFORMATION IN THIS PRESENTATION

Editor's Notes

  • #3: Clipart image sourced from Microsoft Office 2007
  • #4: Stock image