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Roger Barga
Group Program Manager
CloudML C+E
Introducing Azure Machine Learning
Machine learning with the simplicity and power of the cloud
Recommenda-tion
engines
Weather
forecasting for
business planning
Social network
analysis
IT infrastructure
and web app
optimization
Legal
discovery and
document
archiving
Fraud
detection
Churn
analysis
Equipment
monitoring
Location-based
tracking and
services
Apply online at http://research.microsoft.com/Azure-ML
Now available for academic community
• Data science instructional awards
• Individual account on Azure ML for each student;
• 500 GB of cloud data storage for each student;
• Shared workspaces for research collaborations
• 10 TB of cloud data storage, to enable a group of
researchers interested in hosting a data collection in
Microsoft Azure ML to discover and share predictive
models.
• First deadline for proposal reviews is Sept 15th,
next deadline is Nov. 15th, every two months
machines can
learn
intelligence will
become ambient
intelligence from
machine learning
1 1 5 4 3
7 5 3 5 3
5 5 9 0 6
3 5 2 0 0
1. Learn it when you can’t code it
2. Learn it when you can’t scale it
3. Learn it when you have to adapt/personalize
4. Learn it when you can’t track it
• Distributed
computing and
storage
• Deep Neural
Networks
• Learning =
Scalable,
Adaptive
Computation for
Various Big
Data
2011 (“Big
Data, DNN”)
• Wide
application in
products
• Statistical
Modeling of
Data
• Learning =
Parameter
Estimation or
Inference
2005
(“Graphical
Models”)
• Statistical
Learning Theory
• Scoring Systems
• Learning =
Optimization of
Convex
Functions
2000
(“Kernel
Machines”)
• Expert Systems
• Decision-Tree
Learning (C4.5)
• Learning =
Methods to
automatically
build Expert
Systems
1990
(“Symbolic”)
• Neural
Networks
• Artificial
Intelligence
• Learning =
Adaptation of
Neurons based
on External
Stimuli
1980
(“Neuro”)
• Distributed
computing and
storage
• Deep Neural
Networks
• Learning =
Scalable,
Adaptive
Computation for
Various Big
Data
2011 (“Big
Data, DNN”)
• Wide
application in
products
• Statistical
Modeling of
Data
• Learning =
Parameter
Estimation or
Inference
2005
(“Graphical
Models”)
• Statistical
Learning Theory
• Scoring Systems
• Learning =
Optimization of
Convex
Functions
2000
(“Kernel
Machines”)
• Expert Systems
• Decision-Tree
Learning (C4.5)
• Learning =
Methods to
automatically
build Expert
Systems
1990
(“Symbolic”)
• Neural
Networks
• Artificial
Intelligence
• Learning =
Adaptation of
Neurons based
on External
Stimuli
1980
(“Neuro”)
• Distributed
computing and
storage
• Deep Neural
Networks
• Learning =
Scalable,
Adaptive
Computation for
Various Big
Data
2011 (“Big
Data, DNN”)
• Wide
application in
products
• Statistical
Modeling of
Data
• Learning =
Parameter
Estimation or
Inference
2005
(“Graphical
Models”)
• Statistical
Learning Theory
• Scoring Systems
• Learning =
Optimization of
Convex
Functions
2000
(“Kernel
Machines”)
• Expert Systems
• Decision-Tree
Learning (C4.5)
• Learning =
Methods to
automatically
build Expert
Systems
1990
(“Symbolic”)
• Neural
Networks
• Artificial
Intelligence
• Learning =
Adaptation of
Neurons based
on External
Stimuli
1980
(“Neuro”)
• Distributed
computing and
storage
• Deep Neural
Networks
• Learning =
Scalable,
Adaptive
Computation for
Various Big
Data
2011 (“Big
Data, DNN”)
• Wide
application in
products
• Statistical
Modeling of
Data
• Learning =
Parameter
Estimation or
Inference
2005
(“Graphical
Models”)
• Statistical
Learning Theory
• Scoring Systems
• Learning =
Optimization of
Convex
Functions
2000
(“Kernel
Machines”)
• Expert Systems
• Decision-Tree
Learning (C4.5)
• Learning =
Methods to
automatically
build Expert
Systems
1990
(“Symbolic”)
• Neural
Networks
• Artificial
Intelligence
• Learning =
Adaptation of
Neurons based
on External
Stimuli
1980
(“Neuro”)
• Distributed
computing and
storage
• Deep Neural
Networks
• Learning =
Scalable,
Adaptive
Computation for
Various Big
Data
2011 (“Big
Data, DNN”)
• Wide
application in
products
• Statistical
Modeling of
Data
• Learning =
Parameter
Estimation or
Inference
2005
(“Graphical
Models”)
• Statistical
Learning Theory
• Scoring Systems
• Learning =
Optimization of
Convex
Functions
2000
(“Kernel
Machines”)
• Expert Systems
• Decision-Tree
Learning (C4.5)
• Learning =
Methods to
automatically
build Expert
Systems
1990
(“Symbolic”)
• Neural
Networks
• Artificial
Intelligence
• Learning =
Adaptation of
Neurons based
on External
Stimuli
1980
(“Neuro”)
training data (expensive) synthetic training data (cheaper)
Machine learning enables nearly every
value proposition of web search.
Hundreds of thousands of machines…
Hundreds of metrics and signals per machine…
Which signals correlate with the real cause of a problem?
How can we extract effective repair actions?
solve hard problems
value from Big Data
data analytics
Social network
analysis
Weather
forecasting
Healthcare
outcomes
Predictive
maintenance
Targeted
advertising
Natural resource
exploration
Fraud
detection
Telemetry data
analysis
Buyer propensity
models
Churn analysis
Life sciences
research
Web app
optimization
Network
intrusion
detection
Smart meter
monitoring
Machine learning and predictive models are core new capabilities that will touch everything in
the new world of intelligent applications and ambient intelligence…
Machine learning with the power, simplicity and benefits of the cloud.
Recommenda-
tion engines
Advertising
analysis
Weather
forecasting for
business planning
Social network
analysis
IT infrastructure
and web app
optimization
Legal
discovery and
document
archiving
Pricing analysis
Fraud
detection
Churn
analysis
Equipment
monitoring
Location-based
tracking and
services
Personalized
Insurance
Focus on ability to develop & deploy
predictive models as machine learning
web services.
Target user is data scientist, specifically
emerging data scientists.
Fastest time to deployed solution with
ability to rapidly retrain & redeploy.
Support for collaboration, sharing of
data, experiments, and web services.
Data Science is far too complex today
• Access to quality ML algorithms, cost is high.
• Must learn multiple tools to go end2end,
from data acquisition, cleaning and prep,
machine learning, and experimentation.
• Ability to put a model into production.
This must get simpler, it simply won’t scale!
Listening to our Customers
Reduce complexity to broaden participation
Guiding Principles
• Accessible through a web browser,
no software to install;
• Collaborative, work with anyone,
anywhere via Azure workspace
• Visual composition with end2end
support for data science workflow;
• Extensible, support for R OSS.
Rapid experimentation to create a better model
Guiding Principles
• Rapidly try a range of features, ML
algorithms and modeling strategies;
• An immutable library of models,
share, search, discover & reuse;
• Quickly deploy model as Azure web
service to our ML API service.
Publish as an Azure Machine Learning Web Service
☁
ML API Service
consume publish
+
enterprise
customer
data
scientist
☁
ML Studio
• Automatically scale in response to actual usage, eliminate upfront costs for hardware resources.
• Scored in batch-mode or request-response mode;
• Actively monitor models in production to detect changes;
• Telemetry and model management (rollback, retrain).
☁ML Services
ML Services
Massive
The Intelligent Cloud
Machine
Learning &
Analytics
Crowd
Sourcing
Massive &
Diverse Data
The Cloud - Where Everything Comes Together
Introducing Azure Machine Learning
Machine learning with the simplicity and power of the cloud
Recommenda-tion
engines
Weather
forecasting for
business planning
Social network
analysis
IT infrastructure
and web app
optimization
Legal
discovery and
document
archiving
Fraud
detection
Churn
analysis
Equipment
monitoring
Location-based
tracking and
services
Apply online at http://research.microsoft.com/Azure-ML
Now available for academic community
• Data science instructional awards
• Individual account on Azure ML for each student;
• 500 GB of cloud data storage for each student;
• Shared workspaces for research collaborations
• 10 TB of cloud data storage, to enable a group of
researchers interested in hosting a data collection in
Microsoft Azure ML to discover and share predictive
models.
• First deadline for proposal reviews is Sept 15th,
next deadline is Nov. 15th, every two months
Microsoft Azure for Research
• Azure Research Awards
• Azure ML proposals by Sept. 15
• General Azure proposals by Aug 15, and every 2 months.
• Azure for Research Training
• In-person
• Online
• Webinars
• Technical resources & curriculum
www.azure4research.com
Microsoft Azure for Research Group
@azure4research
http://aka.ms/mlblog
Sign up for a
free trial of Azure ML
azure.com/ml
Using Microsoft Azure Machine Learning to advance scientific discovery

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Using Microsoft Azure Machine Learning to advance scientific discovery

  • 1. Roger Barga Group Program Manager CloudML C+E
  • 2.
  • 3. Introducing Azure Machine Learning Machine learning with the simplicity and power of the cloud Recommenda-tion engines Weather forecasting for business planning Social network analysis IT infrastructure and web app optimization Legal discovery and document archiving Fraud detection Churn analysis Equipment monitoring Location-based tracking and services Apply online at http://research.microsoft.com/Azure-ML Now available for academic community • Data science instructional awards • Individual account on Azure ML for each student; • 500 GB of cloud data storage for each student; • Shared workspaces for research collaborations • 10 TB of cloud data storage, to enable a group of researchers interested in hosting a data collection in Microsoft Azure ML to discover and share predictive models. • First deadline for proposal reviews is Sept 15th, next deadline is Nov. 15th, every two months
  • 4.
  • 7.
  • 8. 1 1 5 4 3 7 5 3 5 3 5 5 9 0 6 3 5 2 0 0
  • 9.
  • 10. 1. Learn it when you can’t code it 2. Learn it when you can’t scale it 3. Learn it when you have to adapt/personalize 4. Learn it when you can’t track it
  • 11. • Distributed computing and storage • Deep Neural Networks • Learning = Scalable, Adaptive Computation for Various Big Data 2011 (“Big Data, DNN”) • Wide application in products • Statistical Modeling of Data • Learning = Parameter Estimation or Inference 2005 (“Graphical Models”) • Statistical Learning Theory • Scoring Systems • Learning = Optimization of Convex Functions 2000 (“Kernel Machines”) • Expert Systems • Decision-Tree Learning (C4.5) • Learning = Methods to automatically build Expert Systems 1990 (“Symbolic”) • Neural Networks • Artificial Intelligence • Learning = Adaptation of Neurons based on External Stimuli 1980 (“Neuro”)
  • 12. • Distributed computing and storage • Deep Neural Networks • Learning = Scalable, Adaptive Computation for Various Big Data 2011 (“Big Data, DNN”) • Wide application in products • Statistical Modeling of Data • Learning = Parameter Estimation or Inference 2005 (“Graphical Models”) • Statistical Learning Theory • Scoring Systems • Learning = Optimization of Convex Functions 2000 (“Kernel Machines”) • Expert Systems • Decision-Tree Learning (C4.5) • Learning = Methods to automatically build Expert Systems 1990 (“Symbolic”) • Neural Networks • Artificial Intelligence • Learning = Adaptation of Neurons based on External Stimuli 1980 (“Neuro”)
  • 13. • Distributed computing and storage • Deep Neural Networks • Learning = Scalable, Adaptive Computation for Various Big Data 2011 (“Big Data, DNN”) • Wide application in products • Statistical Modeling of Data • Learning = Parameter Estimation or Inference 2005 (“Graphical Models”) • Statistical Learning Theory • Scoring Systems • Learning = Optimization of Convex Functions 2000 (“Kernel Machines”) • Expert Systems • Decision-Tree Learning (C4.5) • Learning = Methods to automatically build Expert Systems 1990 (“Symbolic”) • Neural Networks • Artificial Intelligence • Learning = Adaptation of Neurons based on External Stimuli 1980 (“Neuro”)
  • 14. • Distributed computing and storage • Deep Neural Networks • Learning = Scalable, Adaptive Computation for Various Big Data 2011 (“Big Data, DNN”) • Wide application in products • Statistical Modeling of Data • Learning = Parameter Estimation or Inference 2005 (“Graphical Models”) • Statistical Learning Theory • Scoring Systems • Learning = Optimization of Convex Functions 2000 (“Kernel Machines”) • Expert Systems • Decision-Tree Learning (C4.5) • Learning = Methods to automatically build Expert Systems 1990 (“Symbolic”) • Neural Networks • Artificial Intelligence • Learning = Adaptation of Neurons based on External Stimuli 1980 (“Neuro”)
  • 15. • Distributed computing and storage • Deep Neural Networks • Learning = Scalable, Adaptive Computation for Various Big Data 2011 (“Big Data, DNN”) • Wide application in products • Statistical Modeling of Data • Learning = Parameter Estimation or Inference 2005 (“Graphical Models”) • Statistical Learning Theory • Scoring Systems • Learning = Optimization of Convex Functions 2000 (“Kernel Machines”) • Expert Systems • Decision-Tree Learning (C4.5) • Learning = Methods to automatically build Expert Systems 1990 (“Symbolic”) • Neural Networks • Artificial Intelligence • Learning = Adaptation of Neurons based on External Stimuli 1980 (“Neuro”)
  • 16.
  • 17.
  • 18. training data (expensive) synthetic training data (cheaper)
  • 19. Machine learning enables nearly every value proposition of web search.
  • 20. Hundreds of thousands of machines… Hundreds of metrics and signals per machine… Which signals correlate with the real cause of a problem? How can we extract effective repair actions?
  • 21. solve hard problems value from Big Data data analytics
  • 22. Social network analysis Weather forecasting Healthcare outcomes Predictive maintenance Targeted advertising Natural resource exploration Fraud detection Telemetry data analysis Buyer propensity models Churn analysis Life sciences research Web app optimization Network intrusion detection Smart meter monitoring Machine learning and predictive models are core new capabilities that will touch everything in the new world of intelligent applications and ambient intelligence…
  • 23. Machine learning with the power, simplicity and benefits of the cloud. Recommenda- tion engines Advertising analysis Weather forecasting for business planning Social network analysis IT infrastructure and web app optimization Legal discovery and document archiving Pricing analysis Fraud detection Churn analysis Equipment monitoring Location-based tracking and services Personalized Insurance Focus on ability to develop & deploy predictive models as machine learning web services. Target user is data scientist, specifically emerging data scientists. Fastest time to deployed solution with ability to rapidly retrain & redeploy. Support for collaboration, sharing of data, experiments, and web services.
  • 24. Data Science is far too complex today • Access to quality ML algorithms, cost is high. • Must learn multiple tools to go end2end, from data acquisition, cleaning and prep, machine learning, and experimentation. • Ability to put a model into production. This must get simpler, it simply won’t scale! Listening to our Customers
  • 25. Reduce complexity to broaden participation Guiding Principles • Accessible through a web browser, no software to install; • Collaborative, work with anyone, anywhere via Azure workspace • Visual composition with end2end support for data science workflow; • Extensible, support for R OSS.
  • 26. Rapid experimentation to create a better model Guiding Principles • Rapidly try a range of features, ML algorithms and modeling strategies; • An immutable library of models, share, search, discover & reuse; • Quickly deploy model as Azure web service to our ML API service.
  • 27. Publish as an Azure Machine Learning Web Service ☁ ML API Service consume publish + enterprise customer data scientist ☁ ML Studio • Automatically scale in response to actual usage, eliminate upfront costs for hardware resources. • Scored in batch-mode or request-response mode; • Actively monitor models in production to detect changes; • Telemetry and model management (rollback, retrain).
  • 28.
  • 31. Massive The Intelligent Cloud Machine Learning & Analytics Crowd Sourcing Massive & Diverse Data The Cloud - Where Everything Comes Together
  • 32. Introducing Azure Machine Learning Machine learning with the simplicity and power of the cloud Recommenda-tion engines Weather forecasting for business planning Social network analysis IT infrastructure and web app optimization Legal discovery and document archiving Fraud detection Churn analysis Equipment monitoring Location-based tracking and services Apply online at http://research.microsoft.com/Azure-ML Now available for academic community • Data science instructional awards • Individual account on Azure ML for each student; • 500 GB of cloud data storage for each student; • Shared workspaces for research collaborations • 10 TB of cloud data storage, to enable a group of researchers interested in hosting a data collection in Microsoft Azure ML to discover and share predictive models. • First deadline for proposal reviews is Sept 15th, next deadline is Nov. 15th, every two months
  • 33. Microsoft Azure for Research • Azure Research Awards • Azure ML proposals by Sept. 15 • General Azure proposals by Aug 15, and every 2 months. • Azure for Research Training • In-person • Online • Webinars • Technical resources & curriculum www.azure4research.com Microsoft Azure for Research Group @azure4research
  • 34. http://aka.ms/mlblog Sign up for a free trial of Azure ML azure.com/ml