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Graph + AI World
Opening Keynote
1
Ed Sverdlin
Advanced Technology Collaborative, R&D,
UnitedHealth Group
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Agenda
❏ What We Built
❏ Use Cases
❏ How We Built it
❏ Lessons Learned
2
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Healthcare Graph Facts ❏ Largest (we believe) connected
Healthcare graph data asset in US:
10+B Vertices and 50+B Edges
❏ Houses 18 months of UHC
members, Claims, clinical,
providers, calls, house calls, and
more
❏ Graph contains 1.2TB of data
❏ Data is updated daily and intra-day
via a robust intake pipeline that
does full reconciliation to source
systems
❏ Supports 23,000+ online users on
various apps
❏ Includes HA Production
environment configured in 3-way
failover and a Research
environment housing copy of
production for ad-hoc queries
3
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Member Journey
4
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
COVID Dashboards
5
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Adverse Reactions
6
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Work In Progress – Healthcare Explorer
7
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Work In Progress – Enterprise Monitoring
8
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Work In Progress – Graph + AI
9
❏ Graph + Deep Learning
❏ Graph Embeddings
❏ Hardware Accelerators of Similarity Algorithms
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. 10
How Did We Get Here - Timeline
Start
Completed
Vendor
Selection
Honed
‘Sales
Pitch’
Build
Member
Journey
Prototype
Received
funding to
build
ingestion
pipelines
First use
case in
production
Finished 2019
with 4 use
cases in
production!
Rollout to
call centers
Graph + AI World!
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Sample Architecture
q Graphs fit nicely into
modern architectures
q Most graph products
work on prem and in the
cloud
q Queries can be converted
to APIs to make access
easy and scalable
11
Graph Database
key value
key value
key value
Key-Value Store Image Store
Kafka Message Queues
ML Packages,
Visualizations
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Team - It Takes A Village to Build House
12
❏ Advanced Technology Collaborative - Technology
Vision, Leadership, Deep Tech Domain Expertise
❏ Business Partners – Shared Vision, Use Cases, Value,
Funding
❏ Development Team – Shared Vision, extensive
experience in deploying production grade systems at
scale, deep expertise in the platform (acquired over last
2 years), horsepower
❏ TigerGraph – Shared Vision, Partnership, Awesome
Product, Patience
#GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum.
Lessons Learned - Organization
13
❏ Create a compelling business narrative. Lead with value
❏ Enable your technology partners to succeed
❏ Expect that half of the people will not ‘get’ it. Focus on the other half
❏ Get ‘on the technology road map’
❏ Get into next year’s budget
❏ Don’t expect the incumbent technologies to yield easily. You will be moving
someone’s cheese..
❏ Making Graph an MBO of a senior executive in IT or business is key
❏ Just getting senior executive excited is not enough. Buy in from business middle
management is how you get sign off on business cases and value realization

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Graph + AI World Opening Keynote

  • 1. Graph + AI World Opening Keynote 1 Ed Sverdlin Advanced Technology Collaborative, R&D, UnitedHealth Group
  • 2. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Agenda ❏ What We Built ❏ Use Cases ❏ How We Built it ❏ Lessons Learned 2
  • 3. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Healthcare Graph Facts ❏ Largest (we believe) connected Healthcare graph data asset in US: 10+B Vertices and 50+B Edges ❏ Houses 18 months of UHC members, Claims, clinical, providers, calls, house calls, and more ❏ Graph contains 1.2TB of data ❏ Data is updated daily and intra-day via a robust intake pipeline that does full reconciliation to source systems ❏ Supports 23,000+ online users on various apps ❏ Includes HA Production environment configured in 3-way failover and a Research environment housing copy of production for ad-hoc queries 3
  • 4. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Member Journey 4
  • 5. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. COVID Dashboards 5
  • 6. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Adverse Reactions 6
  • 7. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Work In Progress – Healthcare Explorer 7
  • 8. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Work In Progress – Enterprise Monitoring 8
  • 9. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Work In Progress – Graph + AI 9 ❏ Graph + Deep Learning ❏ Graph Embeddings ❏ Hardware Accelerators of Similarity Algorithms
  • 10. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. 10 How Did We Get Here - Timeline Start Completed Vendor Selection Honed ‘Sales Pitch’ Build Member Journey Prototype Received funding to build ingestion pipelines First use case in production Finished 2019 with 4 use cases in production! Rollout to call centers Graph + AI World!
  • 11. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Sample Architecture q Graphs fit nicely into modern architectures q Most graph products work on prem and in the cloud q Queries can be converted to APIs to make access easy and scalable 11 Graph Database key value key value key value Key-Value Store Image Store Kafka Message Queues ML Packages, Visualizations
  • 12. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Team - It Takes A Village to Build House 12 ❏ Advanced Technology Collaborative - Technology Vision, Leadership, Deep Tech Domain Expertise ❏ Business Partners – Shared Vision, Use Cases, Value, Funding ❏ Development Team – Shared Vision, extensive experience in deploying production grade systems at scale, deep expertise in the platform (acquired over last 2 years), horsepower ❏ TigerGraph – Shared Vision, Partnership, Awesome Product, Patience
  • 13. #GRAPHAIWORLD Confidential property of Optum. Do not distribute or reproduce without express permission from Optum. Lessons Learned - Organization 13 ❏ Create a compelling business narrative. Lead with value ❏ Enable your technology partners to succeed ❏ Expect that half of the people will not ‘get’ it. Focus on the other half ❏ Get ‘on the technology road map’ ❏ Get into next year’s budget ❏ Don’t expect the incumbent technologies to yield easily. You will be moving someone’s cheese.. ❏ Making Graph an MBO of a senior executive in IT or business is key ❏ Just getting senior executive excited is not enough. Buy in from business middle management is how you get sign off on business cases and value realization