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Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | 1
Machine Learning Everywhere
Stephen Weingartner
Solution Engineer
Oracle Analytics / Data / IaaS
February 6, 2019
Copyright © 2019, Oracle and/or its affiliates. All rights reserved. |
Safe Harbor Statement
The following is intended to outline our general product direction. It is intended for
information purposes only, and may not be incorporated into any contract. It is not a
commitment to deliver any material, code, or functionality, and should not be relied upon
in making purchasing decisions. The development, release, timing, and pricing of any
features or functionality described for Oracle’s products may change and remains at the
sole discretion of Oracle Corporation.
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
What’s the Big Appeal for ML?
• Automate thinking, analysis & reason
• Faster and better decisions
• Improved outcomes
• Competitive advantage
Copyright © 2019, Oracle and/or its affiliates. All rights reserved. |
Example Benefits of ML Within an Organisation
Marketing HR
Individualize product
recommendations
Identify attrition
candidates
Manufacturing
Autonomously identify
root causes to
throughput issues
Service
Automate the repair
vs replace decisions
IT Operations
Detect threats and stay
ahead of malicious
attacks
Traditional ML Can Be Expensive, Time Consuming and Complex
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
• Train model
and score
performance
Model
Training and
Evaluation
• Monitor
performance
of model
versions
• Retrain model
when
performance
drops
Monitor and
Manage
Lifecycle
• Select
algorithms
and
parameters
• Select and
transform the
data for the
algorithm if
needed
Model
Creation
• Connect to
data and
collect data
• Cleanse and
enrich data in
preparation
for analysis
Data Ingest
and Prep
• Identify
business
objectives
Business
Understanding
• Review data
to inform
model
creation and
data strategy
Data
Exploration
• Deploy model
production
into a
business
process (API,
integration,
report, etc)
Deploy
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Enterprise ML Challenges
Fragmented Usage
Data silos limit
effectiveness
Hundreds of
Technologies
Multiple incompatible
platforms
Specialized Skills
Expensive and
scarce talent
Domain
knowledge gap
Complex
model building
Technology and
Infrastructure
Scalability
Specialized
hardware
Model
management
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Enterprise ML Collaboration Challenges
InefficientworkflowsareholdingcompaniesbackfromrealizingthefullpotentialofML
Data Scientists
Cannot work
efficiently
App Developers
Cannot access usable
machine learning
IT Admins
Spend too much time
on support
Business Execs
Not enough live
solutions. Low ROI
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Oracle’s ML Strategy
The more data, the better
Lower the skills requirement so it
is easily actionable by all
Connected entire value chain
while optimizing locally
Human oversight and control
Right domain of expertise “Embed ML in everything that we do”
PaaS
Business
Analytics
Content and
Experience
App Dev
Data Mngmnt
Management IT Analytics
Application Performance
Monitoring
Infrastructure
Monitoring
Log Analytics Orchestration SecurityIdentity
Configuration
and
Compliance
Security
Monitoring
and Analytics
CASB
Integration
WebCenter Portal
Cloud
DIVA Cloud
Content and
Experience
Data VisualizationAnalytics Cloud
Business
Intelligence
EssbaseData Science Cloud Machine Learning
DeveloperAI Platform BlockchainJava
Application
Container
Mobile
and
Chatbots
Visual
Builder
API Catalog Messaging
Autonomous
NoSQL Database
Cloud
Event Hub MySQLDatabase
Database
Backup
Hadoop /
Big Data
Sparkline
Spark
Data Hub
Autonomous
Data Warehouse
Cloud
API
Platform
Apiary
Internet of
Things
Oracle Data
Integrator
GoldenGate
Data Integration
Platform Cloud
Oracle
Integration
Cloud
Process
Automation
Managed
File
Transfer
Common
SaaS Analytics
Cloud Marketplace
Adaptive Intelligent
Apps
API Catalog
SaaS
ERP Risk MngmntProject Mngmnt ProcurementFinancials
Revenue
Mngmnt
Accounting Hub
Project Financial
Mngmnt
SCM
IoT Apps
HCM
Analytics
CRM
Analytics
ERP Analytics
SCM
Analytics
Industry
EPM
HCM
CX
Workforce
Mngmnt
Work life
Solutions
Talent
Mngmnt
Workforce
Rewards
Global
Human
Resources
Supply Chain
Collaboration
and Visibility
Product
Master Data
Mngmnt
Procurement
Product
Lifecycle
Mngmnt
Inventory
Mngmnt
Logistics
Manufac-
turing
Order
Mngmnt
Maintenance
Supply
Chain
Planning
In-Mem Cost
Mngmnt
IoT Fleet
Monitoring
IoT
Connected
Worker
IoT
Production
Monitoring
IoT Asset
Monitoring
Asset Service
Monitoring
Planning and
Budgeting
Profitability
and Cost
Mngmnt
Enterprise
Data
Mngmnt
Enterprise
Performance
Reporting
Enterprise
Planning
Financial
Consolidation
and Close
Tax Reporting
Account
Reconciliation
Industrial
Manufacturing
High
Technology
HospitalityCommunications
Consumer
Goods
And Retail
Education and
Research
Financial
Services
Utilities
Sales
Performance
Mngmnt
CPQ
Customer
Data
Mngmnt
Marketing Engagement Sales Service LoyaltyCommerce Social Data Cloud
IaaS
Infrastructure
Classic
Dedicated
Compute SPARC
Model 300
Object Storage
Classic
Archive Storage
Classic
Storage Software
Appliance
VPN for Compute
Classic
VPN for
Dedicated
Compute Classic
Dedicated
Compute Classic
Virtual Machine
Compute Classic
FastConnect
Classic
Container Service
Classic
Archive
Storage
Data Transfer
Service
Compute
Bare Metal
GPU Instance
Virtual
Cloud
Network
Block
Volumes
Object
Storage
Identity and
Access
Mngmnt
Compute
VM
Instance
Compute
Bare Metal
Instance
Audit Tagging
Database
Bare Metal
Exadata
Bare Metal
Load
Balancing
DNS
Email
Delivery
Ravello FastConnect
Container
Pipelines
Container
Registry
Container
Engine
Cloud at
Customer
Oracle Cloud: SaaS, PaaS, IaaS
ML
Everywhere
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Making ML Easier for:
App Developers IT Managers
Data ScientistsBusiness Users Business Analysts
DBA’s
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Making ML Easier for
Business Users
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Business Users Can Benefit from Machine Learning
Need better
predictions and
decisions
Need faster
predictions and
decisions
Avoid costly and
complex ML
projects
Challenges
MACHINE
LEARNING
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Ready-to-Go: Adaptive Intelligence Applications (AIA)
Pre-built, packaged ML and data-driven SaaS applications
• Purpose-built, ready-to-use
• Embedded ML
• Enrich with 3rd-party data
• Connected intelligent outcomes
across separate functions
Optimized
supplier terms
Demand
sensing
Next best
offers and
actions
Best-fit
candidates
Your Data 3rd Party Data
Connected Outcomes
Oracle Sales Cloud
Next Best Action Win Probability
15
AI Apps for CX B2B
Marketer, Sales, and Service Professional
Available Today
Win Probability
• AI and data-driven win/loss probability scores that help
identify pipeline risk for improved forecast accuracy
Next Best Sales Action
• AI optimized next best actions based on sales stage,
win probability and best practices learned from across
other opportunities
Coming Soon
Optimized Marketing Orchestrations (B2B)
• Automatically identify the optimal message, channel
and timing to optimally convert prospects and drive
pipeline velocity
Lead Optimization
• AI-prioritized leads and next best actions to effectively
convert into qualified sales opportunities
Automated Answers
• Generate best-fit answers to customer queries across
channels to reduce support costs
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Oracle Commerce Cloud
Individualized product
recommendations
Real-time
Click stream
Past
transactions
Past product
views
Data
enrichment
Benefits
• More individualized experience
• Increased basket size
• More revenue per transaction
ML MODEL
17
AI Apps for CX B2C
Commerce, Marketer, Service Professional
Available Today
Next Best Offers and Recommendations
• AI-driven personalized product recommendations online
Coordinated Open-Time Content
• AI-driven personalized product recommendations across
outbound channels
Intuitive Search Experiences
• Utilize data to provide personalized search results and
blended product recommendations
Coming Soon
Optimized Marketing Orchestrations (B2C)
• Use AI to define the optimal message, channel and timing
for your digital communications
Connected Audiences
• Re-target customers and find new audiences that exhibit
similar customer profiles
Automated Answers
• Provide best-fit answers to queries automatically via AI
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Oracle HCM Cloud
Automatically optimize candidates-to-jobs and candidates-to-candidates comparison
Benefits
• Improve overall pipeline quality
• Reduce time-to-fill openings
• Predict highest likelihood to succeed
Predictions on best match
and likely tenure in role
Processed job
descriptions
Processed
resumes
Social
profiles
Historic
performance
ML MODEL
AI Apps for HCM
Available Now
Best-Fit Candidates
• Optimize candidates-to-jobs and candidates-to-
candidates matches with the best candidates to reduce
time-to-fill and improve overall pipeline quality
Coming Soon & Future
Best Candidate Experience
• Provide AI-driven personalized job recommendations to
candidates visiting company job site
Personalized Onboarding Actions
• Deliver AI-driven personalized onboarding actions to
employees and managers
Team Mix Modeling
• Efficiently staff programs and projects with existing,
new and on-demand hires to meet organizational goals
Time Entry and Absence Approvals
• Intelligently automate time entry approvals and provide
alerts to anomalies or compliance issues
Proactive Advice
• Deliver more timely, accurate and compliant
compensation offers
Recommended Actions (Employees and Managers)
• Optimize employee health and growth through guided
actions
HR Professionals, Employees,
Hiring Managers, and Candidates
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Oracle ERP Cloud
Negotiate with suppliers more effectively
Benefits
• Improve supplier negotiations
• Identify and minimize supply chain risk
• Support strategic suppliers
Recommendations on
best negotiation
strategy with suppliers
Historic
performance
Industry
news
Third-party
credit rating
Interest
rates
ML MODEL
Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | Confidential – Oracle Internal/Restricted/Highly Restricted
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Oracle Manufacturing Cloud
Predict quality outcomes, quickly find root causes
Human
factors
Work orders
Materials &
source data
Factory IoT
Data streams
101010
Predictions on quality
and yield problems with
root causes
Benefits
• Predict quality outcomes
• Identify most-likely root causes
• Suggested corrective action
ML MODEL
Making ML Easier for
Business Analysts
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Machine Learning Can Make More Analysts More Productive
Time Bound
Too Much Coding
Difficult
Collaboration
Challenges
MACHINE
LEARNING
Confidential – Oracle Internal/Restricted/Highly Restricted 25
Confidential – Oracle Internal/Restricted/Highly Restricted 26
Making ML Easier for
Data Scientists
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Custom Machine Learning Development Challenges
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
ingest, transform and govern data
from multiple sources
drive more collaboration around ML
deploy completed models
and manage lifecycle
free ML developers from IT tasks
Data Ingest
and Prep
Business
Understanding
Addressing the end-to-end challenges of custom ML development across full lifecycle
quickly mine data for useful features
Data
Exploration
Model
Creation
Model
Training and
Evaluation
Monitor and
Manage
Lifecycle
Deploy
Ready-to-Build: Oracle’s PaaS ML Platform Components
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Model
Creation
Data Ingest and
Prep
Business
Understanding Data Exploration DeployModel
Training and
Evaluation
analytics / visualization / reporting
Oracle Analytics Cloud (OAC)
deployment
standard
GraphPipe
(open source
project)
data ingest
Oracle
Data
Integration
Cloud
(DIPC)
prep & ETL
batch &
stream
Oracle Data
Flow Cloud*
(serverless Spark)
Monitor,
Manage and
Secure
Oracle Cloud IaaS
Oracle
Management
Cloud
Oracle
Security
Clouddata processing and data store
Big Data Cloud
(Hadoop) object
store
Oracle Data Catalog Cloud*
ADW
(Database)
Oracle Data
Flow Cloud*
(serverless)
data science development environment
Oracle Data Science Cloud*
notebooks Git development
automation
deployment
automation
lifecycle
automation
curated suite of open source ML tools delivered as a service*
*future
***
Speeding and Simplifying Data Ingest and Prep
Oracle Data Integration Platform Cloud
Data Lake Builder – quickly instantiate and
copy data into a data lake.
Data Preparation – simplified data ingestion
focused on an intuitive interface
ETL Data Pipelines – run transformations in a
data lake or a data warehouse
Stream Analytics – event processing on real-
time data streams
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Deploy a model as an API
Collaborate in Projects
Easily handoff models from data scientist to developer
The Oracle Data Science Platform
Oracle Data Science Cloud Workflow
32
Reproducibility
Data
Versioning
Code
Versioning
Model
Versioning
Environment
Management
Model Deployment
Operationalize Models as
Scalable APIs
Model Management
Monitor and Optimize Model
Performance
Data Exploration
Collaborative Data Analysis /
Feature Engineering
Model Build and Train
with Open Source Frameworks
Collaborators
· Data Scientists
· Business Stakeholders
· App Developers
· IT Admins
Oracle Data Science Cloud
More ML models, better ML models, less effort
Curated suite of cloud-native open source tools
• Delivered as a managed service, or add your own
Drives more collaboration
• Notebooks and repositories based on Jupyter and Git
Simple, push-down processing
• SQL, Hadoop or serverless Spark*
Native deployment integration with Oracle Cloud
• Containers, Kubernetes, serverless* …
Lifecycle Management
• Versioning, monitoring, automatic retraining*
* future direction
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
data science development environment
Oracle Data Science Cloud
notebooks Git development
automation
deployment
automation
lifecycle
automation
curated suite of open source ML tools delivered as a service*
*
*
* *
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Choice of Technology
Stack
</>
Programming Languages
Java SE, Java EE, Ruby,
Python, PHP, Go,
JavaScipt,…
Databases
MySQL, Cassandra,
Mongo,…
Tools
Apollo Angular,
Ionic,…
Cloud Services using
Open Source AppDev
Docker, Kubernetes,
Node.js Eclipse,...
Big Data
Hadoop, Spark,
Kafka,...
Blockchain
Hyperledger
Fabric
AI / Deep Learning
TensorFlow,
Caffe, DL4J
Support for a Broad
Set of Technologies 3rd Party Applications
Salesforce,
Microsoft, SAP,
ServiceNow,…
Security
OAuth 2.0,
SAML, SCIM,
OpenID Connect
Systems
Management
Cisco, Dell,
F5, LAMP,…
Channels
Amazon Alexa,
Facebook
Messenger,
Slack,…
Supporting Open Source
NetBeans, Eclipse, Spark, Hadoop, OpenJDK,…
Contributions to
Open Source
Oracle Cloud
is OPEN
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Making ML Easier for the
App Developers
Developers Can Benefit From Machine Learning
Delivering Chat
Interfaces
Integration
Scaleability
Challenges
MACHINE
LEARNING
Oracle Integration Cloud Uses Machine Learning
to Make Data Mapping Easier
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Learns to recommend data mapping
between applications
• Auto mapping & translation across
apps for faster connectivity
• Machine Learning guidance in the
Oracle Integration Cloud
• Yelp-like “star” ratings feature proven
and popular recommendations
Oracle Intelligent Bots: Pre-Trained ML with integrations
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Custom
Chat bots for the complexity of enterprise
• OOTB ML - Easily leverage pre-built conversational AI and
integrations
without having to learn data science
• Conversational AI platform – easily tunable ML service that turns
conversations into actions on backend systems
• Enterprise data integration
• Bot builder UI
HCMERP CX 3rd Party
Digital Assistant
Individual Skill Bots
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Using Machine Learning to Speed Everyday Tasks
HCM
3rd Party
CX
ERP
Expenses
• Create expense report
• Add items to existing
report
• Get new/aged credit
card transactions
Sample Interactions Application
Systems
Oracle
Digital
Assistant
Projects
• Review project status
• Get overdue task list
• Report time worked
on project
Finance
• Run financial
consolidation
• Run planning and
budgeting
• Run tax reporting
Human
Resources
• Application status
• Fnd jobs for a specific
location
• Show jobs within
range of user location
Sales
• Get next appointment
summary
• Get a list of tasks
which are due
• Get quote for
opportunity
Understands your context and can act across multiple applications.
• text
• email
• messaging
• voice
• images
40Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
University of Adelaide
47%
reduction in call volume
96%
reduction in call
center wait time
60%
”Awesome" rating
from students
Provides”GradeA"studentexperience
withOracleIntelligentBots
CUSTOMER PERSPECTIVE
Our Adjusted ATAR chatbot meant students
didn’t have to wait – in the busiest hour we
had approximately one user every five
seconds! The response has been fantastic,
with more than 60 percent of users rating their
interaction as ‘Awesome’.
Catherine Cherry, Associate Director, Prospect
Management, University of Adelaide
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Enterprise Class IaaS for Modern ML
• The fastest x86 compute
– Unmatched bare metal performance
• GPU as a service
– Use our tools, or yours
• High bandwidth network
– Connect compute and storage
• High performance flash storage
– Primary access, fast load from archive
• Low-cost archival storage
– For data not in immediate use
Oracle Cloud Infrastructure
The highest performance
at the lowest cost
Making ML Easier for
DBA’s
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Database administrators spend a significant amount of time
on repetitive, tedious and error-prone tasks
Challenges
Tuning
Securing
Monitoring and
Trouble Shooting
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
MACHINE
LEARNING
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Ready-to-Work: Oracle Autonomous Database
Embedded ML in Databases to enable predictive enterprise applications
Self-Driving
Automates database and
infrastructure management,
monitoring, tuning
Self-Securing
Protects from both external
attacks and malicious
internal users
Self-Repairing
Protects from all
downtime including planned
maintenance
All Analytic Workloads
• Data Warehouse, Data Mart
• Data Lake, Machine Learning
Autonomous Data Warehouse
(ADW)
Online TP & Mixed Workloads
• Transactions, Batch, Reporting, IoT
• Application Dev, Machine Learning
Autonomous Transaction Processing
(ATP)
ORACLE AUTONOMOUS
DATABASE
Machine Learning Everywhere
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Oracle Database: In-Database Machine Learning
• Wide range of algorithms and models
with Oracle Advanced Analytics option
• Flexible model building
- SQL, R or Python
- Oracle Data Miner
- Oracle Auto ML
• Machine learning models and
algorithms run inside the Oracle
Database – not externally
• Massively parallel execution
• Data stays in-place
Making ML Easier for
IT Managers
Copyright © 2019, Oracle and/or its affiliates. All rights reserved
Deeper insights
Maintenance at
scale
Security at scale
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
IT Managers need to deal with increasing complexity at scale
Challenges
MACHINE
LEARNING
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Bringing Machine Learning To IT Management and Security
Data Sources
user activity
application
middleware/API
database
hypervisor/container/
operating system
infrastructure
external threat feeds
data lake
Build Your Own
ML Models*
Analytics Cloud
Data Science Cloud
Data Integration Platform
Cloud
Pre-Built
ML Models
(examples)
identity access
management
capacity
planning
problem
remediation
problem
prediction
anomalous
behavior
Oracle Management Cloud
Oracle Security Cloud
* future direction
Oracle Data Catalog Cloud*
Copyright © 2019, Oracle and/or its affiliates. All rights reserved.
Why Use Oracle to Deploy ML Everywhere?
Pre-Built SaaS Smarts. Immediate and Easy Benefits
Many Choices in Open Technologies
Runs on Enterprise Grade SaaS, PaaS, IaaS
Oracle Runs and Maintains
Designed by Specialists. Used by others. Lowered Risk
Machine Learning Everywhere
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Machine Learning Everywhere

  • 1. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | 1 Machine Learning Everywhere Stephen Weingartner Solution Engineer Oracle Analytics / Data / IaaS February 6, 2019
  • 2. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | Safe Harbor Statement The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions. The development, release, timing, and pricing of any features or functionality described for Oracle’s products may change and remains at the sole discretion of Oracle Corporation.
  • 3. Copyright © 2019, Oracle and/or its affiliates. All rights reserved What’s the Big Appeal for ML? • Automate thinking, analysis & reason • Faster and better decisions • Improved outcomes • Competitive advantage
  • 4. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | Example Benefits of ML Within an Organisation Marketing HR Individualize product recommendations Identify attrition candidates Manufacturing Autonomously identify root causes to throughput issues Service Automate the repair vs replace decisions IT Operations Detect threats and stay ahead of malicious attacks
  • 5. Traditional ML Can Be Expensive, Time Consuming and Complex Copyright © 2019, Oracle and/or its affiliates. All rights reserved • Train model and score performance Model Training and Evaluation • Monitor performance of model versions • Retrain model when performance drops Monitor and Manage Lifecycle • Select algorithms and parameters • Select and transform the data for the algorithm if needed Model Creation • Connect to data and collect data • Cleanse and enrich data in preparation for analysis Data Ingest and Prep • Identify business objectives Business Understanding • Review data to inform model creation and data strategy Data Exploration • Deploy model production into a business process (API, integration, report, etc) Deploy
  • 6. Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Enterprise ML Challenges Fragmented Usage Data silos limit effectiveness Hundreds of Technologies Multiple incompatible platforms Specialized Skills Expensive and scarce talent Domain knowledge gap Complex model building Technology and Infrastructure Scalability Specialized hardware Model management
  • 7. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Enterprise ML Collaboration Challenges InefficientworkflowsareholdingcompaniesbackfromrealizingthefullpotentialofML Data Scientists Cannot work efficiently App Developers Cannot access usable machine learning IT Admins Spend too much time on support Business Execs Not enough live solutions. Low ROI
  • 8. Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Oracle’s ML Strategy The more data, the better Lower the skills requirement so it is easily actionable by all Connected entire value chain while optimizing locally Human oversight and control Right domain of expertise “Embed ML in everything that we do”
  • 9. PaaS Business Analytics Content and Experience App Dev Data Mngmnt Management IT Analytics Application Performance Monitoring Infrastructure Monitoring Log Analytics Orchestration SecurityIdentity Configuration and Compliance Security Monitoring and Analytics CASB Integration WebCenter Portal Cloud DIVA Cloud Content and Experience Data VisualizationAnalytics Cloud Business Intelligence EssbaseData Science Cloud Machine Learning DeveloperAI Platform BlockchainJava Application Container Mobile and Chatbots Visual Builder API Catalog Messaging Autonomous NoSQL Database Cloud Event Hub MySQLDatabase Database Backup Hadoop / Big Data Sparkline Spark Data Hub Autonomous Data Warehouse Cloud API Platform Apiary Internet of Things Oracle Data Integrator GoldenGate Data Integration Platform Cloud Oracle Integration Cloud Process Automation Managed File Transfer Common SaaS Analytics Cloud Marketplace Adaptive Intelligent Apps API Catalog SaaS ERP Risk MngmntProject Mngmnt ProcurementFinancials Revenue Mngmnt Accounting Hub Project Financial Mngmnt SCM IoT Apps HCM Analytics CRM Analytics ERP Analytics SCM Analytics Industry EPM HCM CX Workforce Mngmnt Work life Solutions Talent Mngmnt Workforce Rewards Global Human Resources Supply Chain Collaboration and Visibility Product Master Data Mngmnt Procurement Product Lifecycle Mngmnt Inventory Mngmnt Logistics Manufac- turing Order Mngmnt Maintenance Supply Chain Planning In-Mem Cost Mngmnt IoT Fleet Monitoring IoT Connected Worker IoT Production Monitoring IoT Asset Monitoring Asset Service Monitoring Planning and Budgeting Profitability and Cost Mngmnt Enterprise Data Mngmnt Enterprise Performance Reporting Enterprise Planning Financial Consolidation and Close Tax Reporting Account Reconciliation Industrial Manufacturing High Technology HospitalityCommunications Consumer Goods And Retail Education and Research Financial Services Utilities Sales Performance Mngmnt CPQ Customer Data Mngmnt Marketing Engagement Sales Service LoyaltyCommerce Social Data Cloud IaaS Infrastructure Classic Dedicated Compute SPARC Model 300 Object Storage Classic Archive Storage Classic Storage Software Appliance VPN for Compute Classic VPN for Dedicated Compute Classic Dedicated Compute Classic Virtual Machine Compute Classic FastConnect Classic Container Service Classic Archive Storage Data Transfer Service Compute Bare Metal GPU Instance Virtual Cloud Network Block Volumes Object Storage Identity and Access Mngmnt Compute VM Instance Compute Bare Metal Instance Audit Tagging Database Bare Metal Exadata Bare Metal Load Balancing DNS Email Delivery Ravello FastConnect Container Pipelines Container Registry Container Engine Cloud at Customer Oracle Cloud: SaaS, PaaS, IaaS ML Everywhere
  • 10. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Making ML Easier for: App Developers IT Managers Data ScientistsBusiness Users Business Analysts DBA’s
  • 11. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Making ML Easier for Business Users
  • 12. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Business Users Can Benefit from Machine Learning Need better predictions and decisions Need faster predictions and decisions Avoid costly and complex ML projects Challenges MACHINE LEARNING
  • 13. Copyright © 2019, Oracle and/or its affiliates. All rights reserved.Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Ready-to-Go: Adaptive Intelligence Applications (AIA) Pre-built, packaged ML and data-driven SaaS applications • Purpose-built, ready-to-use • Embedded ML • Enrich with 3rd-party data • Connected intelligent outcomes across separate functions Optimized supplier terms Demand sensing Next best offers and actions Best-fit candidates Your Data 3rd Party Data Connected Outcomes
  • 14. Oracle Sales Cloud Next Best Action Win Probability
  • 15. 15 AI Apps for CX B2B Marketer, Sales, and Service Professional Available Today Win Probability • AI and data-driven win/loss probability scores that help identify pipeline risk for improved forecast accuracy Next Best Sales Action • AI optimized next best actions based on sales stage, win probability and best practices learned from across other opportunities Coming Soon Optimized Marketing Orchestrations (B2B) • Automatically identify the optimal message, channel and timing to optimally convert prospects and drive pipeline velocity Lead Optimization • AI-prioritized leads and next best actions to effectively convert into qualified sales opportunities Automated Answers • Generate best-fit answers to customer queries across channels to reduce support costs
  • 16. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Oracle Commerce Cloud Individualized product recommendations Real-time Click stream Past transactions Past product views Data enrichment Benefits • More individualized experience • Increased basket size • More revenue per transaction ML MODEL
  • 17. 17 AI Apps for CX B2C Commerce, Marketer, Service Professional Available Today Next Best Offers and Recommendations • AI-driven personalized product recommendations online Coordinated Open-Time Content • AI-driven personalized product recommendations across outbound channels Intuitive Search Experiences • Utilize data to provide personalized search results and blended product recommendations Coming Soon Optimized Marketing Orchestrations (B2C) • Use AI to define the optimal message, channel and timing for your digital communications Connected Audiences • Re-target customers and find new audiences that exhibit similar customer profiles Automated Answers • Provide best-fit answers to queries automatically via AI
  • 18. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Oracle HCM Cloud Automatically optimize candidates-to-jobs and candidates-to-candidates comparison Benefits • Improve overall pipeline quality • Reduce time-to-fill openings • Predict highest likelihood to succeed Predictions on best match and likely tenure in role Processed job descriptions Processed resumes Social profiles Historic performance ML MODEL
  • 19. AI Apps for HCM Available Now Best-Fit Candidates • Optimize candidates-to-jobs and candidates-to- candidates matches with the best candidates to reduce time-to-fill and improve overall pipeline quality Coming Soon & Future Best Candidate Experience • Provide AI-driven personalized job recommendations to candidates visiting company job site Personalized Onboarding Actions • Deliver AI-driven personalized onboarding actions to employees and managers Team Mix Modeling • Efficiently staff programs and projects with existing, new and on-demand hires to meet organizational goals Time Entry and Absence Approvals • Intelligently automate time entry approvals and provide alerts to anomalies or compliance issues Proactive Advice • Deliver more timely, accurate and compliant compensation offers Recommended Actions (Employees and Managers) • Optimize employee health and growth through guided actions HR Professionals, Employees, Hiring Managers, and Candidates
  • 20. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Oracle ERP Cloud Negotiate with suppliers more effectively Benefits • Improve supplier negotiations • Identify and minimize supply chain risk • Support strategic suppliers Recommendations on best negotiation strategy with suppliers Historic performance Industry news Third-party credit rating Interest rates ML MODEL
  • 21. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. | Confidential – Oracle Internal/Restricted/Highly Restricted
  • 22. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Oracle Manufacturing Cloud Predict quality outcomes, quickly find root causes Human factors Work orders Materials & source data Factory IoT Data streams 101010 Predictions on quality and yield problems with root causes Benefits • Predict quality outcomes • Identify most-likely root causes • Suggested corrective action ML MODEL
  • 23. Making ML Easier for Business Analysts Copyright © 2019, Oracle and/or its affiliates. All rights reserved
  • 24. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Machine Learning Can Make More Analysts More Productive Time Bound Too Much Coding Difficult Collaboration Challenges MACHINE LEARNING
  • 25. Confidential – Oracle Internal/Restricted/Highly Restricted 25
  • 26. Confidential – Oracle Internal/Restricted/Highly Restricted 26
  • 27. Making ML Easier for Data Scientists Copyright © 2019, Oracle and/or its affiliates. All rights reserved
  • 28. Custom Machine Learning Development Challenges Copyright © 2019, Oracle and/or its affiliates. All rights reserved. ingest, transform and govern data from multiple sources drive more collaboration around ML deploy completed models and manage lifecycle free ML developers from IT tasks Data Ingest and Prep Business Understanding Addressing the end-to-end challenges of custom ML development across full lifecycle quickly mine data for useful features Data Exploration Model Creation Model Training and Evaluation Monitor and Manage Lifecycle Deploy
  • 29. Ready-to-Build: Oracle’s PaaS ML Platform Components Copyright © 2019, Oracle and/or its affiliates. All rights reserved Model Creation Data Ingest and Prep Business Understanding Data Exploration DeployModel Training and Evaluation analytics / visualization / reporting Oracle Analytics Cloud (OAC) deployment standard GraphPipe (open source project) data ingest Oracle Data Integration Cloud (DIPC) prep & ETL batch & stream Oracle Data Flow Cloud* (serverless Spark) Monitor, Manage and Secure Oracle Cloud IaaS Oracle Management Cloud Oracle Security Clouddata processing and data store Big Data Cloud (Hadoop) object store Oracle Data Catalog Cloud* ADW (Database) Oracle Data Flow Cloud* (serverless) data science development environment Oracle Data Science Cloud* notebooks Git development automation deployment automation lifecycle automation curated suite of open source ML tools delivered as a service* *future ***
  • 30. Speeding and Simplifying Data Ingest and Prep Oracle Data Integration Platform Cloud Data Lake Builder – quickly instantiate and copy data into a data lake. Data Preparation – simplified data ingestion focused on an intuitive interface ETL Data Pipelines – run transformations in a data lake or a data warehouse Stream Analytics – event processing on real- time data streams Copyright © 2019, Oracle and/or its affiliates. All rights reserved
  • 31. Deploy a model as an API Collaborate in Projects Easily handoff models from data scientist to developer The Oracle Data Science Platform
  • 32. Oracle Data Science Cloud Workflow 32 Reproducibility Data Versioning Code Versioning Model Versioning Environment Management Model Deployment Operationalize Models as Scalable APIs Model Management Monitor and Optimize Model Performance Data Exploration Collaborative Data Analysis / Feature Engineering Model Build and Train with Open Source Frameworks Collaborators · Data Scientists · Business Stakeholders · App Developers · IT Admins
  • 33. Oracle Data Science Cloud More ML models, better ML models, less effort Curated suite of cloud-native open source tools • Delivered as a managed service, or add your own Drives more collaboration • Notebooks and repositories based on Jupyter and Git Simple, push-down processing • SQL, Hadoop or serverless Spark* Native deployment integration with Oracle Cloud • Containers, Kubernetes, serverless* … Lifecycle Management • Versioning, monitoring, automatic retraining* * future direction Copyright © 2019, Oracle and/or its affiliates. All rights reserved data science development environment Oracle Data Science Cloud notebooks Git development automation deployment automation lifecycle automation curated suite of open source ML tools delivered as a service* * * * *
  • 34. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Choice of Technology Stack </> Programming Languages Java SE, Java EE, Ruby, Python, PHP, Go, JavaScipt,… Databases MySQL, Cassandra, Mongo,… Tools Apollo Angular, Ionic,… Cloud Services using Open Source AppDev Docker, Kubernetes, Node.js Eclipse,... Big Data Hadoop, Spark, Kafka,... Blockchain Hyperledger Fabric AI / Deep Learning TensorFlow, Caffe, DL4J Support for a Broad Set of Technologies 3rd Party Applications Salesforce, Microsoft, SAP, ServiceNow,… Security OAuth 2.0, SAML, SCIM, OpenID Connect Systems Management Cisco, Dell, F5, LAMP,… Channels Amazon Alexa, Facebook Messenger, Slack,… Supporting Open Source NetBeans, Eclipse, Spark, Hadoop, OpenJDK,… Contributions to Open Source Oracle Cloud is OPEN
  • 35. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Making ML Easier for the App Developers
  • 36. Developers Can Benefit From Machine Learning Delivering Chat Interfaces Integration Scaleability Challenges MACHINE LEARNING
  • 37. Oracle Integration Cloud Uses Machine Learning to Make Data Mapping Easier Copyright © 2019, Oracle and/or its affiliates. All rights reserved Learns to recommend data mapping between applications • Auto mapping & translation across apps for faster connectivity • Machine Learning guidance in the Oracle Integration Cloud • Yelp-like “star” ratings feature proven and popular recommendations
  • 38. Oracle Intelligent Bots: Pre-Trained ML with integrations Copyright © 2019, Oracle and/or its affiliates. All rights reserved Custom Chat bots for the complexity of enterprise • OOTB ML - Easily leverage pre-built conversational AI and integrations without having to learn data science • Conversational AI platform – easily tunable ML service that turns conversations into actions on backend systems • Enterprise data integration • Bot builder UI HCMERP CX 3rd Party Digital Assistant Individual Skill Bots
  • 39. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Using Machine Learning to Speed Everyday Tasks HCM 3rd Party CX ERP Expenses • Create expense report • Add items to existing report • Get new/aged credit card transactions Sample Interactions Application Systems Oracle Digital Assistant Projects • Review project status • Get overdue task list • Report time worked on project Finance • Run financial consolidation • Run planning and budgeting • Run tax reporting Human Resources • Application status • Fnd jobs for a specific location • Show jobs within range of user location Sales • Get next appointment summary • Get a list of tasks which are due • Get quote for opportunity Understands your context and can act across multiple applications. • text • email • messaging • voice • images
  • 40. 40Copyright © 2019, Oracle and/or its affiliates. All rights reserved. University of Adelaide 47% reduction in call volume 96% reduction in call center wait time 60% ”Awesome" rating from students Provides”GradeA"studentexperience withOracleIntelligentBots CUSTOMER PERSPECTIVE Our Adjusted ATAR chatbot meant students didn’t have to wait – in the busiest hour we had approximately one user every five seconds! The response has been fantastic, with more than 60 percent of users rating their interaction as ‘Awesome’. Catherine Cherry, Associate Director, Prospect Management, University of Adelaide
  • 41. Copyright © 2019, Oracle and/or its affiliates. All rights reserved Enterprise Class IaaS for Modern ML • The fastest x86 compute – Unmatched bare metal performance • GPU as a service – Use our tools, or yours • High bandwidth network – Connect compute and storage • High performance flash storage – Primary access, fast load from archive • Low-cost archival storage – For data not in immediate use Oracle Cloud Infrastructure The highest performance at the lowest cost
  • 42. Making ML Easier for DBA’s Copyright © 2019, Oracle and/or its affiliates. All rights reserved
  • 43. Database administrators spend a significant amount of time on repetitive, tedious and error-prone tasks Challenges Tuning Securing Monitoring and Trouble Shooting Copyright © 2019, Oracle and/or its affiliates. All rights reserved MACHINE LEARNING
  • 44. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Ready-to-Work: Oracle Autonomous Database Embedded ML in Databases to enable predictive enterprise applications Self-Driving Automates database and infrastructure management, monitoring, tuning Self-Securing Protects from both external attacks and malicious internal users Self-Repairing Protects from all downtime including planned maintenance All Analytic Workloads • Data Warehouse, Data Mart • Data Lake, Machine Learning Autonomous Data Warehouse (ADW) Online TP & Mixed Workloads • Transactions, Batch, Reporting, IoT • Application Dev, Machine Learning Autonomous Transaction Processing (ATP) ORACLE AUTONOMOUS DATABASE
  • 46. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Oracle Database: In-Database Machine Learning • Wide range of algorithms and models with Oracle Advanced Analytics option • Flexible model building - SQL, R or Python - Oracle Data Miner - Oracle Auto ML • Machine learning models and algorithms run inside the Oracle Database – not externally • Massively parallel execution • Data stays in-place
  • 47. Making ML Easier for IT Managers Copyright © 2019, Oracle and/or its affiliates. All rights reserved
  • 48. Deeper insights Maintenance at scale Security at scale Copyright © 2019, Oracle and/or its affiliates. All rights reserved. IT Managers need to deal with increasing complexity at scale Challenges MACHINE LEARNING
  • 49. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Bringing Machine Learning To IT Management and Security Data Sources user activity application middleware/API database hypervisor/container/ operating system infrastructure external threat feeds data lake Build Your Own ML Models* Analytics Cloud Data Science Cloud Data Integration Platform Cloud Pre-Built ML Models (examples) identity access management capacity planning problem remediation problem prediction anomalous behavior Oracle Management Cloud Oracle Security Cloud * future direction Oracle Data Catalog Cloud*
  • 50. Copyright © 2019, Oracle and/or its affiliates. All rights reserved. Why Use Oracle to Deploy ML Everywhere? Pre-Built SaaS Smarts. Immediate and Easy Benefits Many Choices in Open Technologies Runs on Enterprise Grade SaaS, PaaS, IaaS Oracle Runs and Maintains Designed by Specialists. Used by others. Lowered Risk