SlideShare a Scribd company logo
November 2013

BIG ANALYTICS
THE GOOD & THE VALUE
About Think Big Analytics

¨ 

Formed in 2010 to help clients launch and scale-out Big Data solutions

¨ 

Services include Big Data strategy, training, engineering and data science

¨ 

¨ 

Management Background: Quantcast, Cambridge Technology, Oracle, Sun
Microsystems, Accenture
Blue chip clients, including:
Ø 

Internet Transactions Security Global #1

Ø 

Retail 2 of Global Top 5

Ø 

Banking 4 of Global Top 1; Financial Services 2 of Global Top 5

Ø 

Asset Management Global #1

Ø 

Disk Manufacturing Global #1

Ø 

Social Networking Global #1

CONFIDENTIAL

|

2

2
Think Big Integrated Value

Integrated Value
Advisory
¨ 
¨ 

¨ 

¨ 

Understand true
business needs
Evaluate suitability of
new technologies

¨ 

Provide perspective on
market ideas
¨ 

Ensure engineering
and analytics support
business goals
Help establish realistic
and attainable
objectives
Drive client-specific
innovation

Implement
¨ 

¨ 

¨ 

Understand technology
preferences and
limitations
Assess talent skills and
development needs
Develop deep knowledge
of the data and tools

CONFIDENTIAL

|

3
Big Analytics

Ÿ 
Ÿ 
Ÿ 
Ÿ 

New data
Yielding new opportunities
Enabled by new approaches
With supporting organization

CONFIDENTIAL

|

4
New Data

CONFIDENTIAL

|

5
Nontraditional Formats

Ÿ  Unstructured data != text
- Call logs
- Raw video
- Satellite photos

CONFIDENTIAL

|

6
Exhaust

Ÿ  Byproduct data
Ÿ  Driving interest in the Internet
of Things

Ÿ  Our machines tell a story about
us

CONFIDENTIAL

|

7
Data about Data

Ÿ  Data usage patterns
Ÿ  Driving next generation
organizations
- Data access patterns as KPI
- Systems access as employee
engagement

CONFIDENTIAL

|

8
New Opportunity

CONFIDENTIAL

|

9
Fingerprinting

Ÿ  Unintentional patterns define us
- ATM rhythm
- Botnet synchronization

Ÿ  More connected world exposes
more fingerprints
- Mobile installs and settings +
NFC
- Sensory data at shopping mall
displays

CONFIDENTIAL

|

10
Dark Data Insights

Ÿ 
Ÿ 
Ÿ 
Ÿ 
Ÿ 

It’s back from the dead!
Audit data
Fund manager predictions
Employee logs
Architectural records

CONFIDENTIAL

|

11
New Approaches

CONFIDENTIAL

|

12
Unstructured Analysis

Ÿ  Non-traditional structures
- Path models
- High dimensionality

Ÿ  Text
- POS
- Classification

Ÿ  Images
- Object recognition
- Time differentials

CONFIDENTIAL

|

13
Deep Learning

Ÿ  MapReduce built for
- Bootstrapped models
- Partitioning data by complex
logic

Ÿ  Backpropagation is hard
Ÿ  Feature learning isn’t (always)

CONFIDENTIAL

|

14
Challenges Incorporating Data
Science

CONFIDENTIAL

|

15
Organizational Integration

Ÿ  Traditionally under engineering
Ÿ  Integrated with data creators,
not data consumers

Ÿ  Disconnected from business
priorities

CONFIDENTIAL

|

16
Success Loops

Ÿ  We take BI for granted
- Analysts find novel patterns
- Business sees new trends
- Statistics is balanced by
domain knowledge
- Integration of actors aware of
feasibility, cost, and impact

Ÿ  Where does your data scientist
sit?

CONFIDENTIAL

|

17
Successful Incorporation of Data
Science

CONFIDENTIAL

|

18
Partnership

Ÿ  Business is a partner, not a
customer

Ÿ  New insights, capabilities, and
products are not born in a
vacuum

CONFIDENTIAL

|

19
Cross Functional Teams

Ÿ  Data science is a process, not
a job role

- Engineering
- Research
- Statistics
- Business
- Salesmanship

Ÿ  Successful Big Analytics blends
skills, perspectives, and pushes
boundaries

CONFIDENTIAL

|

20
Measurement

Ÿ  Requires KPI/KRI
Ÿ  Performance metrics
- Direct actions
- Create purpose

CONFIDENTIAL

|

21
Client Success

CONFIDENTIAL

|

22
Example Client Phase 1

Ÿ  First phase: Big Analytics
execution

Ÿ  New methods of Botnet
detection

Ÿ  Led to patent

CONFIDENTIAL

|

23
Example Client Phase 2

Ÿ  Further analysis
- Improvement of Botnet models

Ÿ  Expansion of cross functional
Big Analytic team
- Tool selection
- Training
- Early win identification
- Self-selected group

CONFIDENTIAL

|

24
Example Client Phase 3

Ÿ  Cross-Functional Analytic
Organization

Ÿ 
Ÿ 
Ÿ 
Ÿ 

Governance
Ownership and accountability
Process
Roadmap

CONFIDENTIAL

|

25
Questions?
www.thinkbiganalytics.com
www.linkedin.com/in/danmallinger
@danmallinger

CONFIDENTIAL

|

26

More Related Content

What's hot

GraphTour 2020 - Customer Journey with Neo4j Services
GraphTour 2020 - Customer Journey with Neo4j ServicesGraphTour 2020 - Customer Journey with Neo4j Services
GraphTour 2020 - Customer Journey with Neo4j Services
Neo4j
 
"What we learned from 5 years of building a data science software that actual...
"What we learned from 5 years of building a data science software that actual..."What we learned from 5 years of building a data science software that actual...
"What we learned from 5 years of building a data science software that actual...
Dataconomy Media
 
Big data perspective solution & technology
Big data perspective solution & technologyBig data perspective solution & technology
Big data perspective solution & technology
Pankaj Khattar
 
Data & Analytics at Scale
Data & Analytics at ScaleData & Analytics at Scale
Data & Analytics at Scale
Walid Mehanna
 
PASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureMLPASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureML
Jen Stirrup
 
SpeedTrack Tech Overview 2015
SpeedTrack Tech Overview 2015SpeedTrack Tech Overview 2015
SpeedTrack Tech Overview 2015
Michael Zoltowski
 
Building a data platform tnt
Building a data platform tntBuilding a data platform tnt
Building a data platform tnt
BigDataExpo
 
Building up a Data Science Team from Scratch
Building up a Data Science Team from ScratchBuilding up a Data Science Team from Scratch
Building up a Data Science Team from Scratch
Institute of Contemporary Sciences
 
The 3 Key Barriers Keeping Companies from Deploying Data Products
The 3 Key Barriers Keeping Companies from Deploying Data Products The 3 Key Barriers Keeping Companies from Deploying Data Products
The 3 Key Barriers Keeping Companies from Deploying Data Products
Dataiku
 
Double Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSenseDouble Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSense
DataWorks Summit/Hadoop Summit
 
How a global manufacturing company built a data science capability from scratch
How a global manufacturing company built a data science capability from scratchHow a global manufacturing company built a data science capability from scratch
How a global manufacturing company built a data science capability from scratch
Carlo Torniai
 
Vishal resume
Vishal resumeVishal resume
Vishal resume
VishalDeo2
 
BigData Analysis
BigData AnalysisBigData Analysis
Knowi Overview: NoSQL Analytics and Business Intelligence
Knowi Overview:  NoSQL Analytics and Business IntelligenceKnowi Overview:  NoSQL Analytics and Business Intelligence
Knowi Overview: NoSQL Analytics and Business Intelligence
Knowi
 
Dataiku data science studio
Dataiku data science studioDataiku data science studio
Dataiku data science studio
Norman Poh
 
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
TigerGraph
 
The Role(s) of Data Science in Modern Organizations
The Role(s) of Data Science in Modern OrganizationsThe Role(s) of Data Science in Modern Organizations
The Role(s) of Data Science in Modern Organizations
Ruben Kogel
 
Handoop training in bangalore
Handoop training in bangaloreHandoop training in bangalore
Handoop training in bangalore
IGEEKS TECHNOLOGIES
 
Week1day2 (1)
Week1day2 (1)Week1day2 (1)
Week1day2 (1)
Shaon Datta
 
Strategy toolbox for startsups
Strategy toolbox for startsupsStrategy toolbox for startsups
Strategy toolbox for startsups
Asher Sterkin
 

What's hot (20)

GraphTour 2020 - Customer Journey with Neo4j Services
GraphTour 2020 - Customer Journey with Neo4j ServicesGraphTour 2020 - Customer Journey with Neo4j Services
GraphTour 2020 - Customer Journey with Neo4j Services
 
"What we learned from 5 years of building a data science software that actual...
"What we learned from 5 years of building a data science software that actual..."What we learned from 5 years of building a data science software that actual...
"What we learned from 5 years of building a data science software that actual...
 
Big data perspective solution & technology
Big data perspective solution & technologyBig data perspective solution & technology
Big data perspective solution & technology
 
Data & Analytics at Scale
Data & Analytics at ScaleData & Analytics at Scale
Data & Analytics at Scale
 
PASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureMLPASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureML
 
SpeedTrack Tech Overview 2015
SpeedTrack Tech Overview 2015SpeedTrack Tech Overview 2015
SpeedTrack Tech Overview 2015
 
Building a data platform tnt
Building a data platform tntBuilding a data platform tnt
Building a data platform tnt
 
Building up a Data Science Team from Scratch
Building up a Data Science Team from ScratchBuilding up a Data Science Team from Scratch
Building up a Data Science Team from Scratch
 
The 3 Key Barriers Keeping Companies from Deploying Data Products
The 3 Key Barriers Keeping Companies from Deploying Data Products The 3 Key Barriers Keeping Companies from Deploying Data Products
The 3 Key Barriers Keeping Companies from Deploying Data Products
 
Double Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSenseDouble Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSense
 
How a global manufacturing company built a data science capability from scratch
How a global manufacturing company built a data science capability from scratchHow a global manufacturing company built a data science capability from scratch
How a global manufacturing company built a data science capability from scratch
 
Vishal resume
Vishal resumeVishal resume
Vishal resume
 
BigData Analysis
BigData AnalysisBigData Analysis
BigData Analysis
 
Knowi Overview: NoSQL Analytics and Business Intelligence
Knowi Overview:  NoSQL Analytics and Business IntelligenceKnowi Overview:  NoSQL Analytics and Business Intelligence
Knowi Overview: NoSQL Analytics and Business Intelligence
 
Dataiku data science studio
Dataiku data science studioDataiku data science studio
Dataiku data science studio
 
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
How to Build An AI Based Customer Data Platform: Learn the design patterns fo...
 
The Role(s) of Data Science in Modern Organizations
The Role(s) of Data Science in Modern OrganizationsThe Role(s) of Data Science in Modern Organizations
The Role(s) of Data Science in Modern Organizations
 
Handoop training in bangalore
Handoop training in bangaloreHandoop training in bangalore
Handoop training in bangalore
 
Week1day2 (1)
Week1day2 (1)Week1day2 (1)
Week1day2 (1)
 
Strategy toolbox for startsups
Strategy toolbox for startsupsStrategy toolbox for startsups
Strategy toolbox for startsups
 

Viewers also liked

BIG Data Science: A Path Forward
BIG Data Science:  A Path ForwardBIG Data Science:  A Path Forward
BIG Data Science: A Path Forward
Dan Mallinger
 
Real Time Data Processing Using Spark Streaming
Real Time Data Processing Using Spark StreamingReal Time Data Processing Using Spark Streaming
Real Time Data Processing Using Spark Streaming
Hari Shreedharan
 
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster AnswersR+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
Revolution Analytics
 
Apachecon Europe 2012: Operating HBase - Things you need to know
Apachecon Europe 2012: Operating HBase - Things you need to knowApachecon Europe 2012: Operating HBase - Things you need to know
Apachecon Europe 2012: Operating HBase - Things you need to know
Christian Gügi
 
R + 15 minutes = Hadoop cluster
R + 15 minutes = Hadoop clusterR + 15 minutes = Hadoop cluster
R + 15 minutes = Hadoop cluster
Jeffrey Breen
 
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYCDan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
MLconf
 
January 2015 HUG: Apache Flink: Fast and reliable large-scale data processing
January 2015 HUG: Apache Flink:  Fast and reliable large-scale data processingJanuary 2015 HUG: Apache Flink:  Fast and reliable large-scale data processing
January 2015 HUG: Apache Flink: Fast and reliable large-scale data processing
Yahoo Developer Network
 
Are You Ready for Big Data Big Analytics?
Are You Ready for Big Data Big Analytics? Are You Ready for Big Data Big Analytics?
Are You Ready for Big Data Big Analytics?
Revolution Analytics
 
HBase and Impala Notes - Munich HUG - 20131017
HBase and Impala Notes - Munich HUG - 20131017HBase and Impala Notes - Munich HUG - 20131017
HBase and Impala Notes - Munich HUG - 20131017
larsgeorge
 
High Performance Predictive Analytics in R and Hadoop
High Performance Predictive Analytics in R and HadoopHigh Performance Predictive Analytics in R and Hadoop
High Performance Predictive Analytics in R and Hadoop
Revolution Analytics
 
Predictive Analytics using R
Predictive Analytics using RPredictive Analytics using R
Predictive Analytics using R
Jeffrey Strickland, Ph.D., CMSP
 

Viewers also liked (11)

BIG Data Science: A Path Forward
BIG Data Science:  A Path ForwardBIG Data Science:  A Path Forward
BIG Data Science: A Path Forward
 
Real Time Data Processing Using Spark Streaming
Real Time Data Processing Using Spark StreamingReal Time Data Processing Using Spark Streaming
Real Time Data Processing Using Spark Streaming
 
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster AnswersR+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
R+Hadoop - Ask Bigger (and New) Questions and Get Better, Faster Answers
 
Apachecon Europe 2012: Operating HBase - Things you need to know
Apachecon Europe 2012: Operating HBase - Things you need to knowApachecon Europe 2012: Operating HBase - Things you need to know
Apachecon Europe 2012: Operating HBase - Things you need to know
 
R + 15 minutes = Hadoop cluster
R + 15 minutes = Hadoop clusterR + 15 minutes = Hadoop cluster
R + 15 minutes = Hadoop cluster
 
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYCDan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
Dan Mallinger, Data Science Practice Manager, Think Big Analytics at MLconf NYC
 
January 2015 HUG: Apache Flink: Fast and reliable large-scale data processing
January 2015 HUG: Apache Flink:  Fast and reliable large-scale data processingJanuary 2015 HUG: Apache Flink:  Fast and reliable large-scale data processing
January 2015 HUG: Apache Flink: Fast and reliable large-scale data processing
 
Are You Ready for Big Data Big Analytics?
Are You Ready for Big Data Big Analytics? Are You Ready for Big Data Big Analytics?
Are You Ready for Big Data Big Analytics?
 
HBase and Impala Notes - Munich HUG - 20131017
HBase and Impala Notes - Munich HUG - 20131017HBase and Impala Notes - Munich HUG - 20131017
HBase and Impala Notes - Munich HUG - 20131017
 
High Performance Predictive Analytics in R and Hadoop
High Performance Predictive Analytics in R and HadoopHigh Performance Predictive Analytics in R and Hadoop
High Performance Predictive Analytics in R and Hadoop
 
Predictive Analytics using R
Predictive Analytics using RPredictive Analytics using R
Predictive Analytics using R
 

Similar to Big Analytics: Building Lasting Value

Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATLDan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
MLconf
 
IDC Retail Insights - What's Possible with a Modern Data Architecture?
IDC Retail Insights - What's Possible with a Modern Data Architecture?IDC Retail Insights - What's Possible with a Modern Data Architecture?
IDC Retail Insights - What's Possible with a Modern Data Architecture?
Hortonworks
 
Data strategy demistifying data
Data strategy demistifying dataData strategy demistifying data
Data strategy demistifying data
Hans Verstraeten
 
Competitive Advantage from the Data Lake
Competitive Advantage from the Data LakeCompetitive Advantage from the Data Lake
Competitive Advantage from the Data Lake
Argyle Executive Forum
 
Acctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
Acctiva: expertise in Business Intelligence, Data Warehousing, Data GovernanceAcctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
Acctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
Acctiva Ltd.
 
The Softer Skills Analysts need to make an impact
The Softer Skills Analysts need to make an impactThe Softer Skills Analysts need to make an impact
The Softer Skills Analysts need to make an impact
Paul Laughlin
 
Building a Winning Roadmap for Analytics
Building a Winning Roadmap for AnalyticsBuilding a Winning Roadmap for Analytics
Building a Winning Roadmap for Analytics
Ironside
 
Big Data Strategies
Big Data StrategiesBig Data Strategies
Big Data Strategies
Misiek Piskorski
 
ThoughtWorks: Monetising Open Banking
ThoughtWorks: Monetising Open Banking  ThoughtWorks: Monetising Open Banking
ThoughtWorks: Monetising Open Banking
Thoughtworks
 
Agile BI success factors
Agile BI success factorsAgile BI success factors
Agile BI success factors
Jean-Michel Franco
 
Scaling Your Enterprise With Data Science
Scaling Your Enterprise With Data ScienceScaling Your Enterprise With Data Science
Scaling Your Enterprise With Data Science
SuperFluid Labs
 
From 'I think' to 'I know'
From 'I think' to 'I know'From 'I think' to 'I know'
From 'I think' to 'I know'
Absolutdata Analytics
 
Team undiscovered opportunuity analysis report presentation- venture lab 2012
Team undiscovered   opportunuity analysis report presentation- venture lab 2012Team undiscovered   opportunuity analysis report presentation- venture lab 2012
Team undiscovered opportunuity analysis report presentation- venture lab 2012
oceanfree
 
Big data analytics and innovation
Big data analytics and innovationBig data analytics and innovation
Big data analytics and innovation
Ahmed Fattah
 
From Customer Insights to Action
From Customer Insights to ActionFrom Customer Insights to Action
From Customer Insights to Action
Capgemini
 
ASAS 2014 - Klasien Postma
ASAS 2014 - Klasien PostmaASAS 2014 - Klasien Postma
ASAS 2014 - Klasien Postma
Avisi B.V.
 
Developing a Modernization Strategy: Evaluating the Options by Chris Koppe
Developing a Modernization Strategy: Evaluating the Options by Chris KoppeDeveloping a Modernization Strategy: Evaluating the Options by Chris Koppe
Developing a Modernization Strategy: Evaluating the Options by Chris Koppe
Fresche Solutions
 
Data strategy in a Big Data world
Data strategy in a Big Data worldData strategy in a Big Data world
Data strategy in a Big Data world
Craig Milroy
 
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdfMainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
NRB
 
Denodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
Denodo DataFest 2016: Enterprise View of Data with Semantic Data LayerDenodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
Denodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
Denodo
 

Similar to Big Analytics: Building Lasting Value (20)

Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATLDan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
Dan Mallinger – Data Science Practice Manager, Think Big Analytics at MLconf ATL
 
IDC Retail Insights - What's Possible with a Modern Data Architecture?
IDC Retail Insights - What's Possible with a Modern Data Architecture?IDC Retail Insights - What's Possible with a Modern Data Architecture?
IDC Retail Insights - What's Possible with a Modern Data Architecture?
 
Data strategy demistifying data
Data strategy demistifying dataData strategy demistifying data
Data strategy demistifying data
 
Competitive Advantage from the Data Lake
Competitive Advantage from the Data LakeCompetitive Advantage from the Data Lake
Competitive Advantage from the Data Lake
 
Acctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
Acctiva: expertise in Business Intelligence, Data Warehousing, Data GovernanceAcctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
Acctiva: expertise in Business Intelligence, Data Warehousing, Data Governance
 
The Softer Skills Analysts need to make an impact
The Softer Skills Analysts need to make an impactThe Softer Skills Analysts need to make an impact
The Softer Skills Analysts need to make an impact
 
Building a Winning Roadmap for Analytics
Building a Winning Roadmap for AnalyticsBuilding a Winning Roadmap for Analytics
Building a Winning Roadmap for Analytics
 
Big Data Strategies
Big Data StrategiesBig Data Strategies
Big Data Strategies
 
ThoughtWorks: Monetising Open Banking
ThoughtWorks: Monetising Open Banking  ThoughtWorks: Monetising Open Banking
ThoughtWorks: Monetising Open Banking
 
Agile BI success factors
Agile BI success factorsAgile BI success factors
Agile BI success factors
 
Scaling Your Enterprise With Data Science
Scaling Your Enterprise With Data ScienceScaling Your Enterprise With Data Science
Scaling Your Enterprise With Data Science
 
From 'I think' to 'I know'
From 'I think' to 'I know'From 'I think' to 'I know'
From 'I think' to 'I know'
 
Team undiscovered opportunuity analysis report presentation- venture lab 2012
Team undiscovered   opportunuity analysis report presentation- venture lab 2012Team undiscovered   opportunuity analysis report presentation- venture lab 2012
Team undiscovered opportunuity analysis report presentation- venture lab 2012
 
Big data analytics and innovation
Big data analytics and innovationBig data analytics and innovation
Big data analytics and innovation
 
From Customer Insights to Action
From Customer Insights to ActionFrom Customer Insights to Action
From Customer Insights to Action
 
ASAS 2014 - Klasien Postma
ASAS 2014 - Klasien PostmaASAS 2014 - Klasien Postma
ASAS 2014 - Klasien Postma
 
Developing a Modernization Strategy: Evaluating the Options by Chris Koppe
Developing a Modernization Strategy: Evaluating the Options by Chris KoppeDeveloping a Modernization Strategy: Evaluating the Options by Chris Koppe
Developing a Modernization Strategy: Evaluating the Options by Chris Koppe
 
Data strategy in a Big Data world
Data strategy in a Big Data worldData strategy in a Big Data world
Data strategy in a Big Data world
 
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdfMainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
Mainframe Day 2022 -The NRB Group - the best partner of your z-modernization.pdf
 
Denodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
Denodo DataFest 2016: Enterprise View of Data with Semantic Data LayerDenodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
Denodo DataFest 2016: Enterprise View of Data with Semantic Data Layer
 

Recently uploaded

Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
Kumud Singh
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems S.M.S.A.
 
Mariano G Tinti - Decoding SpaceX
Mariano G Tinti - Decoding SpaceXMariano G Tinti - Decoding SpaceX
Mariano G Tinti - Decoding SpaceX
Mariano Tinti
 
Full-RAG: A modern architecture for hyper-personalization
Full-RAG: A modern architecture for hyper-personalizationFull-RAG: A modern architecture for hyper-personalization
Full-RAG: A modern architecture for hyper-personalization
Zilliz
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
Matthew Sinclair
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
kumardaparthi1024
 
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
Edge AI and Vision Alliance
 
GraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracyGraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracy
Tomaz Bratanic
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
panagenda
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
Octavian Nadolu
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
Zilliz
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
Zilliz
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
Aftab Hussain
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Malak Abu Hammad
 
Microsoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdfMicrosoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdf
Uni Systems S.M.S.A.
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Safe Software
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
Zilliz
 
Best 20 SEO Techniques To Improve Website Visibility In SERP
Best 20 SEO Techniques To Improve Website Visibility In SERPBest 20 SEO Techniques To Improve Website Visibility In SERP
Best 20 SEO Techniques To Improve Website Visibility In SERP
Pixlogix Infotech
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
Wouter Lemaire
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
danishmna97
 

Recently uploaded (20)

Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
 
Mariano G Tinti - Decoding SpaceX
Mariano G Tinti - Decoding SpaceXMariano G Tinti - Decoding SpaceX
Mariano G Tinti - Decoding SpaceX
 
Full-RAG: A modern architecture for hyper-personalization
Full-RAG: A modern architecture for hyper-personalizationFull-RAG: A modern architecture for hyper-personalization
Full-RAG: A modern architecture for hyper-personalization
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
 
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
 
GraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracyGraphRAG for Life Science to increase LLM accuracy
GraphRAG for Life Science to increase LLM accuracy
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
 
Microsoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdfMicrosoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdf
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
 
Best 20 SEO Techniques To Improve Website Visibility In SERP
Best 20 SEO Techniques To Improve Website Visibility In SERPBest 20 SEO Techniques To Improve Website Visibility In SERP
Best 20 SEO Techniques To Improve Website Visibility In SERP
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
 

Big Analytics: Building Lasting Value