Webinar - Bringing Game Changing Insights with Graph Databases
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Transcript of Webinar - Bringing Game Changing Insights with Graph Databases
Lynn has spent over 20 years designing and building software for a variety of industries including biotech, oil & gas, healthcare and finance. She has spent a good deal of her career visualizing large data sets on the web
Product Marketing Specialist, DataStax
Gehrig has years of experience fostering open-source communities; helping others learn how to build and scale cloud applications.
DataStax provides data management for cloud applications.
© 2017 DataStax, All Rights Reserved. Company Confidential
Cube & Fixed Dimensions - easier to zero in on what’s important to the user!
Filter value = Slicing: Reduce dimensionality by selecting a single row along one dimension.
Filter range / Zoom = Dicing: Focus on a sub cube
Aggregate = Roll-up: Reduce dimensionality by summing one dimension
Detail on demand = Drill-down: Subdivide to create more dimensionality.
Field selection = Pivot: Rotate data cube
DataStax Enterprise Graph
• Real-time graph database• Manage complex and highly connected data• Discovering commonalities and anomalies in data• Stored as Cassandra tables behind the scenes
Indexing& Search
StreamingAnalytics
Graph
BatchAnalytics
DataStax Enterprise Multi-Model/Mixed Workload
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Powering cloud applications
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Effortless scale
Always-on● Designed to handle any failure,
no matter how catastrophic.
● Take advantage of every opportunity.
● Focus on what matters most to you.
Instant insight● Built into your application to create
actionable, modern experiences.
Copyright of Shell International RESTRICTED 15
Successful Products Result from Many Elements Working Together
VISUAL DESIGN
CONTENT
INTERACTION DESIGN
INFO ARCHITECTURE
FUNCTIONALITY
USER AUDIENCE
USA
BIL
ITY
USE
FULN
ESS
Who
What
How
Find the gapWhat users
think will bridge the gap
How can data bridge the gap
How do we present the
bridge
Design & test assumptions
Copyright of Shell International RESTRICTED 20
Problem & User Identification Lays Foundation for All UX Design
VISUAL DESIGN
CONTENT
INTERACTION DESIGN
INFO ARCHITECTURE
FUNCTIONALITY
USER AUDIENCE
USA
BIL
ITY
USE
FULN
ESS
What
Who
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Microsoft 2014; Stephen Few, Signal 2015; http://www.ifp.illinois.edu/nabhcs/abstracts/shneiderman.html
RAM Cache
CPU
OutputProcessor
MediaProcessor
Video Buffer
Mic Buffer
Camera
Long-Term Memory
Size: unlimitedDecay: never
Working Memory
Size: 7 chunksDecay (1): ~100 sec
Decay (1+): ~5-30 sec
Cognitive ProcessingCycle: ~70ms
Motor ProcessingCycle: ~70 ms
Perceptual Processor
Cycle: ~100 ms
Visual Image Store
Size: ~17 lettersDecay: ~200 ms
Auditory StoreSize: ~10 tonesDecay: 1500 ms
EyeCycle:
~250ms
Narrow window & worse with distraction!
Copyright 2015 Expero, Inc. All Rights Reserved 8/11/2015
Applying Dominant Dimension Method - Even big data can be small.
Copyright 2015 Expero, Inc. All Rights Reserved 8/11/2015
Applying Dominant Dimension Method - Even big data can be small.
Copyright 2015 Expero, Inc. All Rights Reserved 8/11/2015
Progressively Disclose Using Dominant Dimension + Entity
Dominant Dimensions: Time + (Health) Frequency
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Copyright 2015 Expero, Inc. All Rights Reserved 8/11/2015
Progressively Disclose Using Dominant Dimension + Entity
Lense Tool:Filter by primary entity (sensor location)
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Dominant Dimensions: Time + (Health) Frequency
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Copyright 2015 Expero, Inc. All Rights Reserved 8/11/2015
Use Progressive Disclosure to Reveal Detailed Data
Sensor Detailson Demand
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Dominant Dimensions: Time + (Health) Frequency
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Lense Tool:Filter by primary entity (sensor location)
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Good Charts
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Tensor Flow - neural net
Idea Illustration View care plan events over time Subway map
Standard Visualization View care plan events over time (frequency) Calendar heatmap, data tables
Idea Illustration View treatment protocol by disease state Flow diagram
Standard Visualization Population Health data (trends) Line charts, data tables