SlideShare a Scribd company logo
1 of 29
1 ©2013 Apigee. Confidential – All Rights Reserved.
Apps + Data + APIs
A New Data Architecture for the
App Economy
Anant Jhingran, Apigee
2 ©2013 Apigee. Confidential – All Rights Reserved.
Developer User
Digital Business Value Chain
API APPBackend Services
Internal
Partner
External
Customer
Employee
Partner
Existing
Partner
New
3 ©2013 Apigee. Confidential – All Rights Reserved.
Digital Signals come in Three Forms in this value chain
Digital Assets
B&M
Web
Events
Entities
Context
4 ©2013 Apigee. Confidential – All Rights Reserved.
•  /timestamp:
•  {“timestamp”: 134578901234,
•  “payload”: {
•  “sending entity”: UUID1,
•  “receiving entitiy”: UUID2,
•  “data”: {
•  “field1”: value1,
•  …
•  }
•  }
•  }
•  Outside the billionaire’s club, might be more typically 30 – 50
MM/day
Event Structure – generalization of “Facts” in Data Warehouse
5 ©2013 Apigee. Confidential – All Rights Reserved.
•  POST/GET
•  /users
•  /developers
•  /buddies
•  /locations
•  /products
•  …
•  Typical environments, ~100,000 – 1MM entities
Entity Structure, generalization of “Dimensions” in Data
Warehouse
6 ©2013 Apigee. Confidential – All Rights Reserved.
Context
= “Secondary Entities + Events”
7 ©2013 Apigee. Confidential – All Rights Reserved.
★
Time of
Event
Context = Other
nearby relevant and
interesting events
Time as Context
8 ©2013 Apigee. Confidential – All Rights Reserved.
The Rugby World Cup’s Effect on Beer Consumption in AU
Context
Analysis
9 ©2013 Apigee. Confidential – All Rights Reserved.
Context = Nearby,
interesting, relevant locations
Location as Context
10 ©2013 Apigee. Confidential – All Rights Reserved.
Where does a User fulfill her needs?
/storelocator
/product
/search
/buy
/findinstore
< 3 days
< 1 day
Context
Analysis
11 ©2013 Apigee. Confidential – All Rights Reserved.
Context = Complementary, supplementary and substitute
entities (products, services, data)
Related Entities as Context
12 ©2013 Apigee. Confidential – All Rights Reserved.
•  /addtocart/product/12345
•  /addtocart/product/34577
•  Context is
–  Product Categories
–  /addtocart/product/12345?category=menscoats
–  /addtocart/product/34577?category=menscoats
•  Analysis is
–  Promotion Effectiveness (within a 1 week window) grouped
by product category (not product)
Determining effectiveness of promotions
13 ©2013 Apigee. Confidential – All Rights Reserved.
Developer Activity as Context
•  Developer Activity
–  Checkins, Repos, Follows
•  Developer Profile
–  Skills, Languages, Platforms
•  Developer Network
–  Follows, Followers, Watchers
14 ©2013 Apigee. Confidential – All Rights Reserved.
Building the right APIs, Hackathons, SDKs for developers
Context
Analysis
15 ©2013 Apigee. Confidential – All Rights Reserved.
Information and Use as Context
Reviews
Description
Category
Demand
User Action
(e.g. Purchase)
Context = Information leading to decisions in end user
use cases
16 ©2013 Apigee. Confidential – All Rights Reserved.
Behavior Patterns as Context (Habits)
•  User Activity on Apps establishes
patterns of Behavior and Actions
•  Deviations from the behavior profile
are interesting also
17 ©2013 Apigee. Confidential – All Rights Reserved.
Public Profiles and Social Activity as Context
•  Social Profile, Network and Activity describe users
•  Features like the Facebook Timeline for user’s
preferences
18 ©2013 Apigee. Confidential – All Rights Reserved.
Critical Technical Features
19 ©2013 Apigee. Confidential – All Rights Reserved.
The Big Data System for the App Economy must understand…
Events
Entities
Context
DATA:
ANALYSIS:
Both “Batch” and “Real-Time”
20 ©2013 Apigee. Confidential – All Rights Reserved.
•  Half Life of Data
•  ETL
•  Data Modeling
•  Real-Time Complement
Many things are Different
21 ©2013 Apigee. Confidential – All Rights Reserved.
Half Life of Data
Volume Value
NOWNOW – 1 YEAR
App
Economy
“Old”
Economy
22 ©2013 Apigee. Confidential – All Rights Reserved.
APIs displace ETL
API
s
ET
L
Fed by handful of core apps Myriad apps and services
Concise data Verbose data
Data optimized for storage Data optimized for consumption
Well-modeled business systems
and data owned by enterprise
Disparate, dynamic data in fast-paced
mobile, social apps ecosystems
Works as self-contained ‘cubes’ Works by mixing with other APIs
23 ©2013 Apigee. Confidential – All Rights Reserved.
The new Broad Data Platform needs some new constructs
Enterprise
Systems"
External
Online Data"
Data Collection
Data Processing
Entity and Event
Model
APIs
API DataApp Data
SQL
Dimensions
and Facts
Joins and
Aggregations
ETL
Map Reduce, Pig, Hive
Key Value
Aggregations
Bulk Loads, Flume…
REST, Odata?
Collections, Time
Series
Entity Resolution,
Signal Amplification,…
API based access
Warehousing Big Data Broad Data
24 ©2013 Apigee. Confidential – All Rights Reserved.
Batch must also Affect Real-Time traffic, and vice-versa
Big Data “Batch” Analysis
?
Real-Time “Gateway”
25 ©2013 Apigee. Confidential – All Rights Reserved.
Computer Science is about Abstractions
RDBMS
Map/Reduce
Entities, Events and
Context
Abstractions
Flexibility
File System
Abstractions Reduce the Number of
Problems that can be solved
But Significantly Improve Time to Value
26 ©2013 Apigee. Confidential – All Rights Reserved.
One Possible Architectural Block Diagram
RDBMS Cassandra
Entities and Events in the App Economy
Data Import and Access
APIs
CRUD and Analytical Libraries
•  Tailored for “data” and use cases in the App Economy
•  Built around fundamental transformations of ETL, Warehousing and Big Data
Hadoop
27 ©2013 Apigee. Confidential – All Rights Reserved.
And also requires a different approach given that context can be
overwhelming
Insights
Data
API Traffic
Developer
Activity
Mobile App
Activity
28 ©2013 Apigee. Confidential – All Rights Reserved.
•  New Big Data Abstractions of
–  Entities
–  Events
–  Context (secondary entities and events)
•  New Data Processing Techniques
–  Determining “value” of the data
–  Data Stitching for enhancing signal to noise
•  New Analytical Techniques
–  Time Series Analysis
–  Graph Traversals
–  Real-Time Complement to Batch Analysis
•  New Approach to Data Science
Summary
29 ©2013 Apigee. Confidential – All Rights Reserved.
Thank you.

More Related Content

What's hot

LinkedIn-ATG-SI-2016May22-SE-V5
LinkedIn-ATG-SI-2016May22-SE-V5LinkedIn-ATG-SI-2016May22-SE-V5
LinkedIn-ATG-SI-2016May22-SE-V5
Stefan Ianta
 

What's hot (20)

SplunkLive! Zurich 2019: Raiffeisen Schweiz
SplunkLive! Zurich 2019: Raiffeisen Schweiz SplunkLive! Zurich 2019: Raiffeisen Schweiz
SplunkLive! Zurich 2019: Raiffeisen Schweiz
 
[WSO2Con EU 2018] The Hybrid Integration Platform: Can You Be in Business Wit...
[WSO2Con EU 2018] The Hybrid Integration Platform: Can You Be in Business Wit...[WSO2Con EU 2018] The Hybrid Integration Platform: Can You Be in Business Wit...
[WSO2Con EU 2018] The Hybrid Integration Platform: Can You Be in Business Wit...
 
Apache Spark and future of advanced analytics
Apache Spark and future of advanced analyticsApache Spark and future of advanced analytics
Apache Spark and future of advanced analytics
 
sMART Store of Cypher-Annotated Microservices
sMART Store of Cypher-Annotated MicroservicessMART Store of Cypher-Annotated Microservices
sMART Store of Cypher-Annotated Microservices
 
APIdays Helsinki 2019 - Research on APIs in the Platform Economy with Marko S...
APIdays Helsinki 2019 - Research on APIs in the Platform Economy with Marko S...APIdays Helsinki 2019 - Research on APIs in the Platform Economy with Marko S...
APIdays Helsinki 2019 - Research on APIs in the Platform Economy with Marko S...
 
apidays LIVE Australia 2020 - Growing an API Culture by Liz Douglass & Saul C...
apidays LIVE Australia 2020 - Growing an API Culture by Liz Douglass & Saul C...apidays LIVE Australia 2020 - Growing an API Culture by Liz Douglass & Saul C...
apidays LIVE Australia 2020 - Growing an API Culture by Liz Douglass & Saul C...
 
INTERFACE, by apidays - From Monolith to Open Finance with APIs by Marcilio ...
INTERFACE, by apidays  - From Monolith to Open Finance with APIs by Marcilio ...INTERFACE, by apidays  - From Monolith to Open Finance with APIs by Marcilio ...
INTERFACE, by apidays - From Monolith to Open Finance with APIs by Marcilio ...
 
API economy
API economyAPI economy
API economy
 
[WSO2 Meetup] Tools and Techniques for Building and Maintaining Streaming-bas...
[WSO2 Meetup] Tools and Techniques for Building and Maintaining Streaming-bas...[WSO2 Meetup] Tools and Techniques for Building and Maintaining Streaming-bas...
[WSO2 Meetup] Tools and Techniques for Building and Maintaining Streaming-bas...
 
How to Manage Microservices and APIs with Apigee and Istio
How to Manage Microservices and APIs with Apigee and IstioHow to Manage Microservices and APIs with Apigee and Istio
How to Manage Microservices and APIs with Apigee and Istio
 
Evolutionary Machine Intelligence in Smart Markets of microservices
Evolutionary Machine Intelligence in Smart Markets of microservicesEvolutionary Machine Intelligence in Smart Markets of microservices
Evolutionary Machine Intelligence in Smart Markets of microservices
 
Evolutionary Design Patterns for Software Development
Evolutionary Design Patterns for Software Development Evolutionary Design Patterns for Software Development
Evolutionary Design Patterns for Software Development
 
Future of work machine learning and middle level jobs 112618
Future of work machine learning and middle level jobs 112618Future of work machine learning and middle level jobs 112618
Future of work machine learning and middle level jobs 112618
 
基調講演:より優れた、高速で簡単な検索
基調講演:より優れた、高速で簡単な検索基調講演:より優れた、高速で簡単な検索
基調講演:より優れた、高速で簡単な検索
 
Azure Refresh 2015 - KeyNote - DotNetLombardia
Azure Refresh 2015 - KeyNote - DotNetLombardiaAzure Refresh 2015 - KeyNote - DotNetLombardia
Azure Refresh 2015 - KeyNote - DotNetLombardia
 
[WSO2Con USA 2018] API Driven Innovations at Centers for Medicare and Medicai...
[WSO2Con USA 2018] API Driven Innovations at Centers for Medicare and Medicai...[WSO2Con USA 2018] API Driven Innovations at Centers for Medicare and Medicai...
[WSO2Con USA 2018] API Driven Innovations at Centers for Medicare and Medicai...
 
Federal agencies starting_with_APIs
Federal agencies starting_with_APIsFederal agencies starting_with_APIs
Federal agencies starting_with_APIs
 
apidays LIVE Australia 2021 - Accelerating Connected Data Initiatives to Driv...
apidays LIVE Australia 2021 - Accelerating Connected Data Initiatives to Driv...apidays LIVE Australia 2021 - Accelerating Connected Data Initiatives to Driv...
apidays LIVE Australia 2021 - Accelerating Connected Data Initiatives to Driv...
 
LinkedIn-ATG-SI-2016May22-SE-V5
LinkedIn-ATG-SI-2016May22-SE-V5LinkedIn-ATG-SI-2016May22-SE-V5
LinkedIn-ATG-SI-2016May22-SE-V5
 
Mobile Analytics
Mobile AnalyticsMobile Analytics
Mobile Analytics
 

Similar to A New Data Architecture for the App Economy - StampedeCon 2013

Digital Platfrom 4 Summary
Digital Platfrom 4 SummaryDigital Platfrom 4 Summary
Digital Platfrom 4 Summary
Ian Thomas
 

Similar to A New Data Architecture for the App Economy - StampedeCon 2013 (20)

Apigee Insights: Data & Context-Driven Actions
Apigee Insights: Data & Context-Driven ActionsApigee Insights: Data & Context-Driven Actions
Apigee Insights: Data & Context-Driven Actions
 
Apigee Products Overview
Apigee Products OverviewApigee Products Overview
Apigee Products Overview
 
An Introduction to Graph: Database, Analytics, and Cloud Services
An Introduction to Graph:  Database, Analytics, and Cloud ServicesAn Introduction to Graph:  Database, Analytics, and Cloud Services
An Introduction to Graph: Database, Analytics, and Cloud Services
 
2016-Mar-03 Leppitsch in Auckland meetup
2016-Mar-03 Leppitsch in Auckland meetup2016-Mar-03 Leppitsch in Auckland meetup
2016-Mar-03 Leppitsch in Auckland meetup
 
Importance of ‘Centralized Event collection’ and BigData platform for Analysis !
Importance of ‘Centralized Event collection’ and BigData platform for Analysis !Importance of ‘Centralized Event collection’ and BigData platform for Analysis !
Importance of ‘Centralized Event collection’ and BigData platform for Analysis !
 
Splunk for ITOA Breakout Session
Splunk for ITOA Breakout SessionSplunk for ITOA Breakout Session
Splunk for ITOA Breakout Session
 
What's New in the Winter '16 Release (4.2)
What's New in the Winter '16 Release (4.2)What's New in the Winter '16 Release (4.2)
What's New in the Winter '16 Release (4.2)
 
APIdays Open Banking & Fintech: Workshop - Financial Services Use Cases for APIs
APIdays Open Banking & Fintech: Workshop - Financial Services Use Cases for APIsAPIdays Open Banking & Fintech: Workshop - Financial Services Use Cases for APIs
APIdays Open Banking & Fintech: Workshop - Financial Services Use Cases for APIs
 
Integration Architecture with the Data Flow
Integration Architecture with the Data FlowIntegration Architecture with the Data Flow
Integration Architecture with the Data Flow
 
IBM API management Philip Little
IBM API management Philip LittleIBM API management Philip Little
IBM API management Philip Little
 
IICS_Capabilities.pptx
IICS_Capabilities.pptxIICS_Capabilities.pptx
IICS_Capabilities.pptx
 
20181212 AWS NL - Informatica Cloud Overview
20181212 AWS NL - Informatica Cloud Overview20181212 AWS NL - Informatica Cloud Overview
20181212 AWS NL - Informatica Cloud Overview
 
Digital Platfrom 4 Summary
Digital Platfrom 4 SummaryDigital Platfrom 4 Summary
Digital Platfrom 4 Summary
 
IoT Update | Hoe implementeer je IoT Schaalbaar in je IT landschap
IoT Update | Hoe implementeer je IoT Schaalbaar in je IT landschapIoT Update | Hoe implementeer je IoT Schaalbaar in je IT landschap
IoT Update | Hoe implementeer je IoT Schaalbaar in je IT landschap
 
OC Big Data Monthly Meetup #6 - Session 1 - IBM
OC Big Data Monthly Meetup #6 - Session 1 - IBMOC Big Data Monthly Meetup #6 - Session 1 - IBM
OC Big Data Monthly Meetup #6 - Session 1 - IBM
 
SD Big Data Monthly Meetup #4 - Session 1 - IBM
SD Big Data Monthly Meetup #4 - Session 1 - IBMSD Big Data Monthly Meetup #4 - Session 1 - IBM
SD Big Data Monthly Meetup #4 - Session 1 - IBM
 
Transform the internal it landscape with APIs and integration
Transform the internal it landscape with APIs and integrationTransform the internal it landscape with APIs and integration
Transform the internal it landscape with APIs and integration
 
Accelerating Mobile App Data Synchronization and Real-Time Data Development w...
Accelerating Mobile App Data Synchronization and Real-Time Data Development w...Accelerating Mobile App Data Synchronization and Real-Time Data Development w...
Accelerating Mobile App Data Synchronization and Real-Time Data Development w...
 
Why an Innovative Mobile Strategy Requires a Robust API
Why an Innovative Mobile Strategy Requires a Robust API Why an Innovative Mobile Strategy Requires a Robust API
Why an Innovative Mobile Strategy Requires a Robust API
 
Maximizing the Value of Event-Driven Architecture.pdf
Maximizing the Value of Event-Driven Architecture.pdfMaximizing the Value of Event-Driven Architecture.pdf
Maximizing the Value of Event-Driven Architecture.pdf
 

More from StampedeCon

Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
StampedeCon
 

More from StampedeCon (20)

Why Should We Trust You-Interpretability of Deep Neural Networks - StampedeCo...
Why Should We Trust You-Interpretability of Deep Neural Networks - StampedeCo...Why Should We Trust You-Interpretability of Deep Neural Networks - StampedeCo...
Why Should We Trust You-Interpretability of Deep Neural Networks - StampedeCo...
 
The Search for a New Visual Search Beyond Language - StampedeCon AI Summit 2017
The Search for a New Visual Search Beyond Language - StampedeCon AI Summit 2017The Search for a New Visual Search Beyond Language - StampedeCon AI Summit 2017
The Search for a New Visual Search Beyond Language - StampedeCon AI Summit 2017
 
Predicting Outcomes When Your Outcomes are Graphs - StampedeCon AI Summit 2017
Predicting Outcomes When Your Outcomes are Graphs - StampedeCon AI Summit 2017Predicting Outcomes When Your Outcomes are Graphs - StampedeCon AI Summit 2017
Predicting Outcomes When Your Outcomes are Graphs - StampedeCon AI Summit 2017
 
Novel Semi-supervised Probabilistic ML Approach to SNP Variant Calling - Stam...
Novel Semi-supervised Probabilistic ML Approach to SNP Variant Calling - Stam...Novel Semi-supervised Probabilistic ML Approach to SNP Variant Calling - Stam...
Novel Semi-supervised Probabilistic ML Approach to SNP Variant Calling - Stam...
 
How to Talk about AI to Non-analaysts - Stampedecon AI Summit 2017
How to Talk about AI to Non-analaysts - Stampedecon AI Summit 2017How to Talk about AI to Non-analaysts - Stampedecon AI Summit 2017
How to Talk about AI to Non-analaysts - Stampedecon AI Summit 2017
 
Getting Started with Keras and TensorFlow - StampedeCon AI Summit 2017
Getting Started with Keras and TensorFlow - StampedeCon AI Summit 2017Getting Started with Keras and TensorFlow - StampedeCon AI Summit 2017
Getting Started with Keras and TensorFlow - StampedeCon AI Summit 2017
 
Foundations of Machine Learning - StampedeCon AI Summit 2017
Foundations of Machine Learning - StampedeCon AI Summit 2017Foundations of Machine Learning - StampedeCon AI Summit 2017
Foundations of Machine Learning - StampedeCon AI Summit 2017
 
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
 
Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
Bringing the Whole Elephant Into View Can Cognitive Systems Bring Real Soluti...
 
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
 
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
 
A Different Data Science Approach - StampedeCon AI Summit 2017
A Different Data Science Approach - StampedeCon AI Summit 2017A Different Data Science Approach - StampedeCon AI Summit 2017
A Different Data Science Approach - StampedeCon AI Summit 2017
 
Graph in Customer 360 - StampedeCon Big Data Conference 2017
Graph in Customer 360 - StampedeCon Big Data Conference 2017Graph in Customer 360 - StampedeCon Big Data Conference 2017
Graph in Customer 360 - StampedeCon Big Data Conference 2017
 
End-to-end Big Data Projects with Python - StampedeCon Big Data Conference 2017
End-to-end Big Data Projects with Python - StampedeCon Big Data Conference 2017End-to-end Big Data Projects with Python - StampedeCon Big Data Conference 2017
End-to-end Big Data Projects with Python - StampedeCon Big Data Conference 2017
 
Doing Big Data Using Amazon's Analogs - StampedeCon Big Data Conference 2017
Doing Big Data Using Amazon's Analogs - StampedeCon Big Data Conference 2017Doing Big Data Using Amazon's Analogs - StampedeCon Big Data Conference 2017
Doing Big Data Using Amazon's Analogs - StampedeCon Big Data Conference 2017
 
Enabling New Business Capabilities with Cloud-based Streaming Data Architectu...
Enabling New Business Capabilities with Cloud-based Streaming Data Architectu...Enabling New Business Capabilities with Cloud-based Streaming Data Architectu...
Enabling New Business Capabilities with Cloud-based Streaming Data Architectu...
 
Big Data Meets IoT: Lessons From the Cloud on Polling, Collecting, and Analyz...
Big Data Meets IoT: Lessons From the Cloud on Polling, Collecting, and Analyz...Big Data Meets IoT: Lessons From the Cloud on Polling, Collecting, and Analyz...
Big Data Meets IoT: Lessons From the Cloud on Polling, Collecting, and Analyz...
 
Innovation in the Data Warehouse - StampedeCon 2016
Innovation in the Data Warehouse - StampedeCon 2016Innovation in the Data Warehouse - StampedeCon 2016
Innovation in the Data Warehouse - StampedeCon 2016
 
Creating a Data Driven Organization - StampedeCon 2016
Creating a Data Driven Organization - StampedeCon 2016Creating a Data Driven Organization - StampedeCon 2016
Creating a Data Driven Organization - StampedeCon 2016
 
Using The Internet of Things for Population Health Management - StampedeCon 2016
Using The Internet of Things for Population Health Management - StampedeCon 2016Using The Internet of Things for Population Health Management - StampedeCon 2016
Using The Internet of Things for Population Health Management - StampedeCon 2016
 

Recently uploaded

EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 

Recently uploaded (20)

Evaluating the top large language models.pdf
Evaluating the top large language models.pdfEvaluating the top large language models.pdf
Evaluating the top large language models.pdf
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 

A New Data Architecture for the App Economy - StampedeCon 2013

  • 1. 1 ©2013 Apigee. Confidential – All Rights Reserved. Apps + Data + APIs A New Data Architecture for the App Economy Anant Jhingran, Apigee
  • 2. 2 ©2013 Apigee. Confidential – All Rights Reserved. Developer User Digital Business Value Chain API APPBackend Services Internal Partner External Customer Employee Partner Existing Partner New
  • 3. 3 ©2013 Apigee. Confidential – All Rights Reserved. Digital Signals come in Three Forms in this value chain Digital Assets B&M Web Events Entities Context
  • 4. 4 ©2013 Apigee. Confidential – All Rights Reserved. •  /timestamp: •  {“timestamp”: 134578901234, •  “payload”: { •  “sending entity”: UUID1, •  “receiving entitiy”: UUID2, •  “data”: { •  “field1”: value1, •  … •  } •  } •  } •  Outside the billionaire’s club, might be more typically 30 – 50 MM/day Event Structure – generalization of “Facts” in Data Warehouse
  • 5. 5 ©2013 Apigee. Confidential – All Rights Reserved. •  POST/GET •  /users •  /developers •  /buddies •  /locations •  /products •  … •  Typical environments, ~100,000 – 1MM entities Entity Structure, generalization of “Dimensions” in Data Warehouse
  • 6. 6 ©2013 Apigee. Confidential – All Rights Reserved. Context = “Secondary Entities + Events”
  • 7. 7 ©2013 Apigee. Confidential – All Rights Reserved. ★ Time of Event Context = Other nearby relevant and interesting events Time as Context
  • 8. 8 ©2013 Apigee. Confidential – All Rights Reserved. The Rugby World Cup’s Effect on Beer Consumption in AU Context Analysis
  • 9. 9 ©2013 Apigee. Confidential – All Rights Reserved. Context = Nearby, interesting, relevant locations Location as Context
  • 10. 10 ©2013 Apigee. Confidential – All Rights Reserved. Where does a User fulfill her needs? /storelocator /product /search /buy /findinstore < 3 days < 1 day Context Analysis
  • 11. 11 ©2013 Apigee. Confidential – All Rights Reserved. Context = Complementary, supplementary and substitute entities (products, services, data) Related Entities as Context
  • 12. 12 ©2013 Apigee. Confidential – All Rights Reserved. •  /addtocart/product/12345 •  /addtocart/product/34577 •  Context is –  Product Categories –  /addtocart/product/12345?category=menscoats –  /addtocart/product/34577?category=menscoats •  Analysis is –  Promotion Effectiveness (within a 1 week window) grouped by product category (not product) Determining effectiveness of promotions
  • 13. 13 ©2013 Apigee. Confidential – All Rights Reserved. Developer Activity as Context •  Developer Activity –  Checkins, Repos, Follows •  Developer Profile –  Skills, Languages, Platforms •  Developer Network –  Follows, Followers, Watchers
  • 14. 14 ©2013 Apigee. Confidential – All Rights Reserved. Building the right APIs, Hackathons, SDKs for developers Context Analysis
  • 15. 15 ©2013 Apigee. Confidential – All Rights Reserved. Information and Use as Context Reviews Description Category Demand User Action (e.g. Purchase) Context = Information leading to decisions in end user use cases
  • 16. 16 ©2013 Apigee. Confidential – All Rights Reserved. Behavior Patterns as Context (Habits) •  User Activity on Apps establishes patterns of Behavior and Actions •  Deviations from the behavior profile are interesting also
  • 17. 17 ©2013 Apigee. Confidential – All Rights Reserved. Public Profiles and Social Activity as Context •  Social Profile, Network and Activity describe users •  Features like the Facebook Timeline for user’s preferences
  • 18. 18 ©2013 Apigee. Confidential – All Rights Reserved. Critical Technical Features
  • 19. 19 ©2013 Apigee. Confidential – All Rights Reserved. The Big Data System for the App Economy must understand… Events Entities Context DATA: ANALYSIS: Both “Batch” and “Real-Time”
  • 20. 20 ©2013 Apigee. Confidential – All Rights Reserved. •  Half Life of Data •  ETL •  Data Modeling •  Real-Time Complement Many things are Different
  • 21. 21 ©2013 Apigee. Confidential – All Rights Reserved. Half Life of Data Volume Value NOWNOW – 1 YEAR App Economy “Old” Economy
  • 22. 22 ©2013 Apigee. Confidential – All Rights Reserved. APIs displace ETL API s ET L Fed by handful of core apps Myriad apps and services Concise data Verbose data Data optimized for storage Data optimized for consumption Well-modeled business systems and data owned by enterprise Disparate, dynamic data in fast-paced mobile, social apps ecosystems Works as self-contained ‘cubes’ Works by mixing with other APIs
  • 23. 23 ©2013 Apigee. Confidential – All Rights Reserved. The new Broad Data Platform needs some new constructs Enterprise Systems" External Online Data" Data Collection Data Processing Entity and Event Model APIs API DataApp Data SQL Dimensions and Facts Joins and Aggregations ETL Map Reduce, Pig, Hive Key Value Aggregations Bulk Loads, Flume… REST, Odata? Collections, Time Series Entity Resolution, Signal Amplification,… API based access Warehousing Big Data Broad Data
  • 24. 24 ©2013 Apigee. Confidential – All Rights Reserved. Batch must also Affect Real-Time traffic, and vice-versa Big Data “Batch” Analysis ? Real-Time “Gateway”
  • 25. 25 ©2013 Apigee. Confidential – All Rights Reserved. Computer Science is about Abstractions RDBMS Map/Reduce Entities, Events and Context Abstractions Flexibility File System Abstractions Reduce the Number of Problems that can be solved But Significantly Improve Time to Value
  • 26. 26 ©2013 Apigee. Confidential – All Rights Reserved. One Possible Architectural Block Diagram RDBMS Cassandra Entities and Events in the App Economy Data Import and Access APIs CRUD and Analytical Libraries •  Tailored for “data” and use cases in the App Economy •  Built around fundamental transformations of ETL, Warehousing and Big Data Hadoop
  • 27. 27 ©2013 Apigee. Confidential – All Rights Reserved. And also requires a different approach given that context can be overwhelming Insights Data API Traffic Developer Activity Mobile App Activity
  • 28. 28 ©2013 Apigee. Confidential – All Rights Reserved. •  New Big Data Abstractions of –  Entities –  Events –  Context (secondary entities and events) •  New Data Processing Techniques –  Determining “value” of the data –  Data Stitching for enhancing signal to noise •  New Analytical Techniques –  Time Series Analysis –  Graph Traversals –  Real-Time Complement to Batch Analysis •  New Approach to Data Science Summary
  • 29. 29 ©2013 Apigee. Confidential – All Rights Reserved. Thank you.