(Go: >> BACK << -|- >> HOME <<)

SlideShare a Scribd company logo
Big Brother Big Sisters Big Ideas
Big Brother and Big Sisters
needs a scalable, highly
secure enterprise-grade
system to ingest and
analyze data.
The goal is support 10x the
children with the same
expense ratio.
Watson – Deep Analytics
Blockchain – High security
Bluemix – Highly scalable
cloud infrasructure
So you know …
Children and teens are
often better at expressing
themselves orally or
verbally, not through a
standardized form,
Name Alberto
Age 14
Gender M
School James Woods Regional
Hobbies soccer
videogames
So you know …
Adults are no better;
possibly worse.,
Name Marcos
Age 44
Gender M
License Y
Military Army
Hobbies golf
How can we make more, better matches faster?
The heart between the Big and the Little is Trust.
There is already a system in place to do deep
background checks, but trust is built on
empathy.
We need to learn about people as they are; not
how they want others to see them.
We need this system to be affordable,
intuitive, capable of doing proportionally
more with less volunteers and at the cutting
IBM Watson is a
supercomputer
combining Artificial
Intelligence and
machine learning for
advanced human-
computer interactions.
Tradeoff
Analytics
Personality
InsightsConversation
Document
Conversion
Tradeoff
Analytics
Personality
Insights
Conversation
Derives insights from social media and
transactional data to identify psychological
traits for predictive behavior analytics.
Help make complex decisions
while taking into account multiple,
often conflicting, goals
Add chatbots for a natural
language interface.
Document
Conversion
Converts various types of
documents into formats
that can be understood
by Watson services.
Integration
Analytics
Not only istheinsight much deeper, but it iscontinually updated based on social media,
activity reportsand other resources.
Thiscan identify and diagnoseissuesbeforethey progressfor deep safety.
We can move from a manual form-based
matching system to continuous
automated cognitive analytics.
But how can security and privacy scale
with such deep learning?
Blockchains use an open, distributed ledger that can record
transactions between two parties efficiently and in a verifiable
and permanent way through cryptography.
There are many implementations and zero
standards around blockchain. However,
IBM’s Apache Hyperledger is the
most enterprise friendly.
The blockchain is a bad
database,
Blockchains are slow.
Blockchains are
cumbersome. Blockchains
are resource intensive.
But an ideal store of
timestamped facts,
Hbase is a sparse, distributed, persistent multidimensional sorted
map. Cells store data as key value pairs and provide tags that
can be used for visibility based on the blockchain’s status.
I kind of hacked the tag
implementation, but ...
Off-blockchain storage
addresses many of the
limitations of blockchain as a
database.
So now we have a phenomenally
secured system supporting an advanced
AI platform.
How can a non-profit with limited
resources build, support and maintain a
system like that?
Tip
Gazing lovingly at your
onsite servers is
overrated.
People who pay more for
the cloud than onsite
don’t know how to model
cost properly.
Doing things is terrible. Everything always breaks ... is awful.
If it isn’t a differentiator, don’t spend scarce resources.
Develop in containers,
Implement with APIs,
Deploy in pods,
Run in the cloud.
So now we have a phenomenally
secured system supporting an advanced
AI platform that can be built, supported
and maintained by low cost, open-source,
Enterprise grade tools.
How about a nerd-core name?
CHEWBACCA
Stack
Chatbots + Hbase +
Watson + Blockchain +
Containers + Cloud
CHEWBACCA
Stack
Chatbots + Hbase +
Watson + Blockchain +
Containers + Cloud
Obviously
It’s more of a protocol
droid’s stack, but
still ...
A combination of
structured and
natural language
data is gathered by
the chatbot and sent
to the blockchain.
Hyperledger stores
the data in Hbase,
keeping a hash
pointer to the
storage.
Conversation
Personality
Insights
Tradeoff
Analytics

More Related Content

Similar to Big Brother Big Sister Bluemix Architecture from #HackathonCLT

How BlockchainWill Cha
How BlockchainWill ChaHow BlockchainWill Cha
How BlockchainWill Cha
PazSilviapm
 
Data Structure and Types
Data Structure and TypesData Structure and Types
Data Structure and Types
Anjani Phuyal
 
Gerenral insurance Accounts IT and Investment
Gerenral insurance Accounts IT and InvestmentGerenral insurance Accounts IT and Investment
Gerenral insurance Accounts IT and Investment
vijayk23x
 
Blockchain Technology
Blockchain TechnologyBlockchain Technology
Blockchain Technology
Mohammaderfan Arefimoghaddam
 
Hl whitepaper introductionto_hyperledger
Hl whitepaper introductionto_hyperledgerHl whitepaper introductionto_hyperledger
Hl whitepaper introductionto_hyperledger
baskrish
 
Blockchain and AI - A Perfect Combination?
Blockchain and AI - A Perfect Combination?Blockchain and AI - A Perfect Combination?
Blockchain and AI - A Perfect Combination?
101 Blockchains
 
01 Introduction atala prism.pdf
01 Introduction atala prism.pdf01 Introduction atala prism.pdf
01 Introduction atala prism.pdf
DuongNguyenNgoc10
 
What Is Blockchain Useful For?
What Is Blockchain Useful For?What Is Blockchain Useful For?
What Is Blockchain Useful For?
InvestingTips
 
Openbar 3 - Leuven - The Ledger - Where's the business in Blockchain
Openbar 3 - Leuven - The Ledger - Where's the business in BlockchainOpenbar 3 - Leuven - The Ledger - Where's the business in Blockchain
Openbar 3 - Leuven - The Ledger - Where's the business in Blockchain
Openbar
 
Blockchain - Closer than it Appears
Blockchain - Closer than it AppearsBlockchain - Closer than it Appears
Blockchain - Closer than it Appears
snewell4
 
Trust Factory Slides (2015)
Trust Factory Slides (2015)Trust Factory Slides (2015)
Trust Factory Slides (2015)
Timothy Holborn
 
ITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
ITCamp 2018 - Magnus Mårtensson - Azure Global Application PerspectivesITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
ITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
ITCamp
 
Who's that knocking on my firewall door?
Who's that knocking on my firewall door?Who's that knocking on my firewall door?
Who's that knocking on my firewall door?
Bruce Wolfe
 
A Primer for a layman about Big Data, Business Analytics and Cloud
A Primer for a layman  about Big Data, Business Analytics and CloudA Primer for a layman  about Big Data, Business Analytics and Cloud
A Primer for a layman about Big Data, Business Analytics and Cloud
Rajagopalan V
 
Introduction to Blockchain
Introduction to BlockchainIntroduction to Blockchain
Introduction to Blockchain
Jordan Harris
 
Blockchain the inception of a new database of everything by dinis guarda bloc...
Blockchain the inception of a new database of everything by dinis guarda bloc...Blockchain the inception of a new database of everything by dinis guarda bloc...
Blockchain the inception of a new database of everything by dinis guarda bloc...
Dinis Guarda
 
What is blockchain?
What is blockchain?What is blockchain?
What is blockchain?
learndac
 
AI and Libraries - Yasser Ayyash.pptx
AI and Libraries - Yasser Ayyash.pptxAI and Libraries - Yasser Ayyash.pptx
AI and Libraries - Yasser Ayyash.pptx
yasserayyash1
 
Application of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital ForensicsApplication of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital Forensics
Mahdi_Fahmideh
 
Blockchain
BlockchainBlockchain
Blockchain
rai9211420
 

Similar to Big Brother Big Sister Bluemix Architecture from #HackathonCLT (20)

How BlockchainWill Cha
How BlockchainWill ChaHow BlockchainWill Cha
How BlockchainWill Cha
 
Data Structure and Types
Data Structure and TypesData Structure and Types
Data Structure and Types
 
Gerenral insurance Accounts IT and Investment
Gerenral insurance Accounts IT and InvestmentGerenral insurance Accounts IT and Investment
Gerenral insurance Accounts IT and Investment
 
Blockchain Technology
Blockchain TechnologyBlockchain Technology
Blockchain Technology
 
Hl whitepaper introductionto_hyperledger
Hl whitepaper introductionto_hyperledgerHl whitepaper introductionto_hyperledger
Hl whitepaper introductionto_hyperledger
 
Blockchain and AI - A Perfect Combination?
Blockchain and AI - A Perfect Combination?Blockchain and AI - A Perfect Combination?
Blockchain and AI - A Perfect Combination?
 
01 Introduction atala prism.pdf
01 Introduction atala prism.pdf01 Introduction atala prism.pdf
01 Introduction atala prism.pdf
 
What Is Blockchain Useful For?
What Is Blockchain Useful For?What Is Blockchain Useful For?
What Is Blockchain Useful For?
 
Openbar 3 - Leuven - The Ledger - Where's the business in Blockchain
Openbar 3 - Leuven - The Ledger - Where's the business in BlockchainOpenbar 3 - Leuven - The Ledger - Where's the business in Blockchain
Openbar 3 - Leuven - The Ledger - Where's the business in Blockchain
 
Blockchain - Closer than it Appears
Blockchain - Closer than it AppearsBlockchain - Closer than it Appears
Blockchain - Closer than it Appears
 
Trust Factory Slides (2015)
Trust Factory Slides (2015)Trust Factory Slides (2015)
Trust Factory Slides (2015)
 
ITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
ITCamp 2018 - Magnus Mårtensson - Azure Global Application PerspectivesITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
ITCamp 2018 - Magnus Mårtensson - Azure Global Application Perspectives
 
Who's that knocking on my firewall door?
Who's that knocking on my firewall door?Who's that knocking on my firewall door?
Who's that knocking on my firewall door?
 
A Primer for a layman about Big Data, Business Analytics and Cloud
A Primer for a layman  about Big Data, Business Analytics and CloudA Primer for a layman  about Big Data, Business Analytics and Cloud
A Primer for a layman about Big Data, Business Analytics and Cloud
 
Introduction to Blockchain
Introduction to BlockchainIntroduction to Blockchain
Introduction to Blockchain
 
Blockchain the inception of a new database of everything by dinis guarda bloc...
Blockchain the inception of a new database of everything by dinis guarda bloc...Blockchain the inception of a new database of everything by dinis guarda bloc...
Blockchain the inception of a new database of everything by dinis guarda bloc...
 
What is blockchain?
What is blockchain?What is blockchain?
What is blockchain?
 
AI and Libraries - Yasser Ayyash.pptx
AI and Libraries - Yasser Ayyash.pptxAI and Libraries - Yasser Ayyash.pptx
AI and Libraries - Yasser Ayyash.pptx
 
Application of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital ForensicsApplication of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital Forensics
 
Blockchain
BlockchainBlockchain
Blockchain
 

More from Dave Callaghan

Smart Grids and Big Data
Smart Grids and Big DataSmart Grids and Big Data
Smart Grids and Big Data
Dave Callaghan
 
Stormwater analytics with MongoDB and Pentaho
Stormwater analytics with MongoDB and PentahoStormwater analytics with MongoDB and Pentaho
Stormwater analytics with MongoDB and Pentaho
Dave Callaghan
 
MongoDB – Build, Adapt, Reduce, Improve
MongoDB – Build, Adapt, Reduce, ImproveMongoDB – Build, Adapt, Reduce, Improve
MongoDB – Build, Adapt, Reduce, Improve
Dave Callaghan
 
MongoDB - Build, Adapt, Reduce, Improve
MongoDB - Build, Adapt, Reduce, ImproveMongoDB - Build, Adapt, Reduce, Improve
MongoDB - Build, Adapt, Reduce, Improve
Dave Callaghan
 
IoT underthe hood
IoT underthe hoodIoT underthe hood
IoT underthe hood
Dave Callaghan
 
SegmentOfOne
SegmentOfOneSegmentOfOne
SegmentOfOne
Dave Callaghan
 
BigFastData
BigFastDataBigFastData
BigFastData
Dave Callaghan
 
Orphans in the Desert Presentation
Orphans in the Desert PresentationOrphans in the Desert Presentation
Orphans in the Desert Presentation
Dave Callaghan
 
AtlasCHUG
AtlasCHUGAtlasCHUG
AtlasCHUG
Dave Callaghan
 
BigDataInTelco
BigDataInTelcoBigDataInTelco
BigDataInTelco
Dave Callaghan
 

More from Dave Callaghan (10)

Smart Grids and Big Data
Smart Grids and Big DataSmart Grids and Big Data
Smart Grids and Big Data
 
Stormwater analytics with MongoDB and Pentaho
Stormwater analytics with MongoDB and PentahoStormwater analytics with MongoDB and Pentaho
Stormwater analytics with MongoDB and Pentaho
 
MongoDB – Build, Adapt, Reduce, Improve
MongoDB – Build, Adapt, Reduce, ImproveMongoDB – Build, Adapt, Reduce, Improve
MongoDB – Build, Adapt, Reduce, Improve
 
MongoDB - Build, Adapt, Reduce, Improve
MongoDB - Build, Adapt, Reduce, ImproveMongoDB - Build, Adapt, Reduce, Improve
MongoDB - Build, Adapt, Reduce, Improve
 
IoT underthe hood
IoT underthe hoodIoT underthe hood
IoT underthe hood
 
SegmentOfOne
SegmentOfOneSegmentOfOne
SegmentOfOne
 
BigFastData
BigFastDataBigFastData
BigFastData
 
Orphans in the Desert Presentation
Orphans in the Desert PresentationOrphans in the Desert Presentation
Orphans in the Desert Presentation
 
AtlasCHUG
AtlasCHUGAtlasCHUG
AtlasCHUG
 
BigDataInTelco
BigDataInTelcoBigDataInTelco
BigDataInTelco
 

Recently uploaded

一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
qemnpg
 
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model SafeKarol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
bookmybebe1
 
AIRLINE_SATISFACTION_Data Science Solution on Azure
AIRLINE_SATISFACTION_Data Science Solution on AzureAIRLINE_SATISFACTION_Data Science Solution on Azure
AIRLINE_SATISFACTION_Data Science Solution on Azure
SanelaNikodinoska1
 
SAP ANalytics Cloud -SAP SAC planning 22
SAP ANalytics Cloud -SAP SAC planning 22SAP ANalytics Cloud -SAP SAC planning 22
SAP ANalytics Cloud -SAP SAC planning 22
ramana4bw
 
buku report tentang analisis TIMSS 2023.pdf
buku report tentang analisis TIMSS 2023.pdfbuku report tentang analisis TIMSS 2023.pdf
buku report tentang analisis TIMSS 2023.pdf
ABDULKALAM847167
 
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdfAWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
Miguel Ángel Rodríguez Anticona
 
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
punebabes1
 
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
javier ramirez
 
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
seenu pandey
 
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
manjukaushik328
 
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
CindyBanurea3
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
#kalyanmatkaresult #dpboss #kalyanmatka #satta #matka #sattamatka
 
Simon Fraser University degree offer diploma Transcript
Simon Fraser University  degree offer diploma TranscriptSimon Fraser University  degree offer diploma Transcript
Simon Fraser University degree offer diploma Transcript
taqyea
 
How We Added Replication to QuestDB - JonTheBeach
How We Added Replication to QuestDB - JonTheBeachHow We Added Replication to QuestDB - JonTheBeach
How We Added Replication to QuestDB - JonTheBeach
javier ramirez
 
[D3T1S02] Aurora Limitless Database Introduction
[D3T1S02] Aurora Limitless Database Introduction[D3T1S02] Aurora Limitless Database Introduction
[D3T1S02] Aurora Limitless Database Introduction
Amazon Web Services Korea
 
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
Amazon Web Services Korea
 
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
Amazon Web Services Korea
 
LLM powered Contract Compliance Application.pptx
LLM powered Contract Compliance Application.pptxLLM powered Contract Compliance Application.pptx
LLM powered Contract Compliance Application.pptx
Jyotishko Biswas
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
#kalyanmatkaresult #dpboss #kalyanmatka #satta #matka #sattamatka
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
#kalyanmatkaresult #dpboss #kalyanmatka #satta #matka #sattamatka
 

Recently uploaded (20)

一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
一比一原版英国埃塞克斯大学毕业证(essex毕业证书)如何办理
 
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model SafeKarol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
Karol Bagh @ℂall @Girls ꧁❤ 9873777170 ❤꧂VIP Jya Khan Top Model Safe
 
AIRLINE_SATISFACTION_Data Science Solution on Azure
AIRLINE_SATISFACTION_Data Science Solution on AzureAIRLINE_SATISFACTION_Data Science Solution on Azure
AIRLINE_SATISFACTION_Data Science Solution on Azure
 
SAP ANalytics Cloud -SAP SAC planning 22
SAP ANalytics Cloud -SAP SAC planning 22SAP ANalytics Cloud -SAP SAC planning 22
SAP ANalytics Cloud -SAP SAC planning 22
 
buku report tentang analisis TIMSS 2023.pdf
buku report tentang analisis TIMSS 2023.pdfbuku report tentang analisis TIMSS 2023.pdf
buku report tentang analisis TIMSS 2023.pdf
 
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdfAWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
AWS Cloud Technology and Services by Miguel Ángel Rodríguez Anticona.pdf
 
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
Madurai @Call @Girls Whatsapp 0000000000 With High Profile Offer 25%
 
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
Cómo hemos implementado semántica de "Exactly Once" en nuestra base de datos ...
 
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
( Call ) Girls South Mumbai phone 9930687706 You Are Serach A Beautyfull Doll...
 
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
@Call @Girls Kolkata 0000000000 Shivani Beautiful Girl any Time
 
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
01 - Motagua 3.0 - 16x9 - Light - [MAIN].pptx
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
 
Simon Fraser University degree offer diploma Transcript
Simon Fraser University  degree offer diploma TranscriptSimon Fraser University  degree offer diploma Transcript
Simon Fraser University degree offer diploma Transcript
 
How We Added Replication to QuestDB - JonTheBeach
How We Added Replication to QuestDB - JonTheBeachHow We Added Replication to QuestDB - JonTheBeach
How We Added Replication to QuestDB - JonTheBeach
 
[D3T1S02] Aurora Limitless Database Introduction
[D3T1S02] Aurora Limitless Database Introduction[D3T1S02] Aurora Limitless Database Introduction
[D3T1S02] Aurora Limitless Database Introduction
 
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
[D3T1S04] Aurora PostgreSQL performance monitoring and troubleshooting by use...
 
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
[D3T2S03] Data&AI Roadshow 2024 - Amazon DocumentDB 실습
 
LLM powered Contract Compliance Application.pptx
LLM powered Contract Compliance Application.pptxLLM powered Contract Compliance Application.pptx
LLM powered Contract Compliance Application.pptx
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN FAST RESULTS CHART KALYAN MATKA MATKA RE...
 
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
❻❸❼⓿❽❻❷⓿⓿❼ SATTA MATKA DPBOSS KALYAN MATKA RESULTS KALYAN CHART KALYAN MATKA ...
 

Big Brother Big Sister Bluemix Architecture from #HackathonCLT

  • 1. Big Brother Big Sisters Big Ideas Big Brother and Big Sisters needs a scalable, highly secure enterprise-grade system to ingest and analyze data. The goal is support 10x the children with the same expense ratio. Watson – Deep Analytics Blockchain – High security Bluemix – Highly scalable cloud infrasructure
  • 2. So you know … Children and teens are often better at expressing themselves orally or verbally, not through a standardized form, Name Alberto Age 14 Gender M School James Woods Regional Hobbies soccer videogames
  • 3. So you know … Adults are no better; possibly worse., Name Marcos Age 44 Gender M License Y Military Army Hobbies golf
  • 4. How can we make more, better matches faster? The heart between the Big and the Little is Trust. There is already a system in place to do deep background checks, but trust is built on empathy. We need to learn about people as they are; not how they want others to see them. We need this system to be affordable, intuitive, capable of doing proportionally more with less volunteers and at the cutting
  • 5. IBM Watson is a supercomputer combining Artificial Intelligence and machine learning for advanced human- computer interactions. Tradeoff Analytics Personality InsightsConversation Document Conversion
  • 6. Tradeoff Analytics Personality Insights Conversation Derives insights from social media and transactional data to identify psychological traits for predictive behavior analytics. Help make complex decisions while taking into account multiple, often conflicting, goals Add chatbots for a natural language interface. Document Conversion Converts various types of documents into formats that can be understood by Watson services. Integration Analytics
  • 7. Not only istheinsight much deeper, but it iscontinually updated based on social media, activity reportsand other resources. Thiscan identify and diagnoseissuesbeforethey progressfor deep safety.
  • 8. We can move from a manual form-based matching system to continuous automated cognitive analytics. But how can security and privacy scale with such deep learning?
  • 9. Blockchains use an open, distributed ledger that can record transactions between two parties efficiently and in a verifiable and permanent way through cryptography. There are many implementations and zero standards around blockchain. However, IBM’s Apache Hyperledger is the most enterprise friendly. The blockchain is a bad database, Blockchains are slow. Blockchains are cumbersome. Blockchains are resource intensive. But an ideal store of timestamped facts,
  • 10. Hbase is a sparse, distributed, persistent multidimensional sorted map. Cells store data as key value pairs and provide tags that can be used for visibility based on the blockchain’s status. I kind of hacked the tag implementation, but ... Off-blockchain storage addresses many of the limitations of blockchain as a database.
  • 11. So now we have a phenomenally secured system supporting an advanced AI platform. How can a non-profit with limited resources build, support and maintain a system like that?
  • 12. Tip Gazing lovingly at your onsite servers is overrated. People who pay more for the cloud than onsite don’t know how to model cost properly. Doing things is terrible. Everything always breaks ... is awful. If it isn’t a differentiator, don’t spend scarce resources. Develop in containers, Implement with APIs, Deploy in pods, Run in the cloud.
  • 13. So now we have a phenomenally secured system supporting an advanced AI platform that can be built, supported and maintained by low cost, open-source, Enterprise grade tools. How about a nerd-core name?
  • 14. CHEWBACCA Stack Chatbots + Hbase + Watson + Blockchain + Containers + Cloud
  • 15. CHEWBACCA Stack Chatbots + Hbase + Watson + Blockchain + Containers + Cloud Obviously
  • 16. It’s more of a protocol droid’s stack, but still ... A combination of structured and natural language data is gathered by the chatbot and sent to the blockchain. Hyperledger stores the data in Hbase, keeping a hash pointer to the storage. Conversation Personality Insights Tradeoff Analytics