SlideShare a Scribd company logo
Big Data - from theory to practice
with the simplicity of
HPE Haven OnDemand
Guido Pezzin | HPE Big Data | guido.pezzin@hpe.com
Nov 21, 2015
It takes a Big Data platform to “cash in” your data assets
Siloed data challenge Big Data Platform answer
– Only .5% of data in the average
organization is tagged and analyzed
– Information silos - everywhere
– Tools for finding and understanding
information,
tied to origin and format
– Queries take too long and are too
rigid, difficult to uncover opportunities,
patterns or unexpected threats
– Ad hoc discovery—find what’s in the
data without pre-structuring
– Ubiquitous but secure data access
– Real time data collection and
analysis, any format, any data source
– An extensible platform to
harness100% of your data, on-
premise, in the cloud
– Supporting text here
2
Powered by the industry’s leading Big Data engines
“Analysis at the speed of business”
HP Vertica Analytics Platform:
Purpose-built analytics platform to manage petabytes
of data at massive scale with blazing-fast analytics
How it works:
Columnar architecture with intelligent data
compression, built-in analytic functions, and open
integration to meet analytic use cases
Key advantage:
Extremely accessible technology to manage and
analyze massive volumes of data in seconds, not
weeks
Spectrum of use cases:
Network QoS, supply chain optimization, ecommerce
analysis, sensor data analytics, customer analytics
Vertica
“Structure and insight from chaos”
HP IDOL
Information platform for processing free text,
audio, video, image and “create” structured data
How it works:
Probabilistic modeling and pattern-matching to
understand concepts in information in context
Key advantage:
Analyze diverse forms of unstructured
information to probe and explore data
Spectrum of use cases:
Information governance, eDiscovery, knowledge
management, insider trading
IDOL
Understand
& analyze
100% of your
information from
any source, with
extreme speed
and scale
HPE
applications
Customer
applications
Developer
applications
HAVEn
Defined programming interfaces
Analytics, context and categorization
Data connectors
Social
media
IT/OT ImagesAudioVideo Mobile Search
engine
Email Texts DocumentsTransactional
data
Records Compliance
archives
Scalable data stores
Gain insight from
100% of your data
– Connect to a variety of
machine, business,
human data sources
– Analyze at volume and
velocity of data
– Develop modern data-
driven applications
HAVEn Big Data Platform guiding principles
– Fully Harness 100% of data
– Seamlessly deploy and consume anywhere
– Scale AND speed without compromise
– Open, extensible & easy to adopt
– Economics that work
A Self-Service API platform for building
data-rich Applications and Analytics
– Big Data on Hadoop – Robust solution use cases– on premise & in the cloud
– November 21, 2015
Monetizing digital assets with HPE Haven partner ecosystem
Listen to millions of conversations
on social media, analyze what
matters to you and gain predictive
insights that will help you make the
right business decisions.
Improve human resources
efficiency and provide business
analytics to support management
decision.
Optimize corporate digital strategy
through actionable customer
analytics.
Define target, analyse and enrich
data, build campaign.
7
Listen. Predict. Decide.
Learn from the past and predict the future
https://kpi6.com https://innovationpeople.ithttps://communicationsystem.it
Thank you
https://www.havenondemand.com/
https://my.vertica.com/
8

More Related Content

What's hot

AzureDay - Introduction Big Data Analytics.
AzureDay  - Introduction Big Data Analytics.AzureDay  - Introduction Big Data Analytics.
AzureDay - Introduction Big Data Analytics.
Łukasz Grala
 
AI Data Acquisition and Governance: Considerations for Success
AI Data Acquisition and Governance: Considerations for SuccessAI Data Acquisition and Governance: Considerations for Success
AI Data Acquisition and Governance: Considerations for Success
Databricks
 
Big data landscape version 2.0
Big data landscape version 2.0Big data landscape version 2.0
Big data landscape version 2.0
Matt Turck
 
Big Data Landscape 2016
Big Data Landscape 2016 Big Data Landscape 2016
Big Data Landscape 2016
Matt Turck
 
Big data competitive landscape overview
Big data competitive landscape overviewBig data competitive landscape overview
Big data competitive landscape overview
Bisakha Praharaj
 
Big data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makersBig data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makers
Ruhollah Farchtchi
 
Learn How Financial Services Organizations Can Use Big Data to Mitigate Risks
Learn How Financial Services Organizations Can Use Big Data to Mitigate RisksLearn How Financial Services Organizations Can Use Big Data to Mitigate Risks
Learn How Financial Services Organizations Can Use Big Data to Mitigate Risks
MapR Technologies
 
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
Dataconomy Media
 
BigData Analysis
BigData AnalysisBigData Analysis
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
ETCenter
 
Destroying Data Silos
Destroying Data SilosDestroying Data Silos
Destroying Data Silos
Hellmar Becker
 
DataScience and BigData Cebu 1st meetup
DataScience and BigData Cebu 1st meetupDataScience and BigData Cebu 1st meetup
DataScience and BigData Cebu 1st meetup
Francisco Liwa
 
Software Engineering for Data Scientists
Software Engineering for Data ScientistsSoftware Engineering for Data Scientists
Software Engineering for Data Scientists
Domino Data Lab
 
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse..."Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
Dataconomy Media
 
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr..."Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
Dataconomy Media
 
Exploring Big Data Analytics Tools
Exploring Big Data Analytics ToolsExploring Big Data Analytics Tools
Exploring Big Data Analytics Tools
Multisoft Virtual Academy
 
Necessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services SectorNecessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services Sector
DataWorks Summit
 
Big data analytics
Big data analyticsBig data analytics
Big data analytics
Ravi Teja
 
Generating actionable consumer insights from analytics - Telekom R&D
Generating actionable consumer insights from analytics - Telekom R&DGenerating actionable consumer insights from analytics - Telekom R&D
Generating actionable consumer insights from analytics - Telekom R&D
Merlien Institute
 
Platfora Data Visualization Meetup
Platfora Data Visualization MeetupPlatfora Data Visualization Meetup
Platfora Data Visualization Meetup
Platfora
 

What's hot (20)

AzureDay - Introduction Big Data Analytics.
AzureDay  - Introduction Big Data Analytics.AzureDay  - Introduction Big Data Analytics.
AzureDay - Introduction Big Data Analytics.
 
AI Data Acquisition and Governance: Considerations for Success
AI Data Acquisition and Governance: Considerations for SuccessAI Data Acquisition and Governance: Considerations for Success
AI Data Acquisition and Governance: Considerations for Success
 
Big data landscape version 2.0
Big data landscape version 2.0Big data landscape version 2.0
Big data landscape version 2.0
 
Big Data Landscape 2016
Big Data Landscape 2016 Big Data Landscape 2016
Big Data Landscape 2016
 
Big data competitive landscape overview
Big data competitive landscape overviewBig data competitive landscape overview
Big data competitive landscape overview
 
Big data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makersBig data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makers
 
Learn How Financial Services Organizations Can Use Big Data to Mitigate Risks
Learn How Financial Services Organizations Can Use Big Data to Mitigate RisksLearn How Financial Services Organizations Can Use Big Data to Mitigate Risks
Learn How Financial Services Organizations Can Use Big Data to Mitigate Risks
 
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
Gianluigi Vigano, Senior Architect and Fouad Teban, Regional Presales Manager...
 
BigData Analysis
BigData AnalysisBigData Analysis
BigData Analysis
 
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
Open Source Framework for Deploying Data Science Models and Cloud Based Appli...
 
Destroying Data Silos
Destroying Data SilosDestroying Data Silos
Destroying Data Silos
 
DataScience and BigData Cebu 1st meetup
DataScience and BigData Cebu 1st meetupDataScience and BigData Cebu 1st meetup
DataScience and BigData Cebu 1st meetup
 
Software Engineering for Data Scientists
Software Engineering for Data ScientistsSoftware Engineering for Data Scientists
Software Engineering for Data Scientists
 
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse..."Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
"Industrializing Machine Learning – How to Integrate ML in Existing Businesse...
 
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr..."Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
 
Exploring Big Data Analytics Tools
Exploring Big Data Analytics ToolsExploring Big Data Analytics Tools
Exploring Big Data Analytics Tools
 
Necessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services SectorNecessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services Sector
 
Big data analytics
Big data analyticsBig data analytics
Big data analytics
 
Generating actionable consumer insights from analytics - Telekom R&D
Generating actionable consumer insights from analytics - Telekom R&DGenerating actionable consumer insights from analytics - Telekom R&D
Generating actionable consumer insights from analytics - Telekom R&D
 
Platfora Data Visualization Meetup
Platfora Data Visualization MeetupPlatfora Data Visualization Meetup
Platfora Data Visualization Meetup
 

Similar to [Keynote HP] Guido Pezzin - Big Data - from theory to practice with the simplicity of HPE HAVEN-on-demand

02 a holistic approach to big data
02 a holistic approach to big data02 a holistic approach to big data
02 a holistic approach to big data
Raul Chong
 
Data Analytics in Real World (May 2016)
Data Analytics in Real World (May 2016)Data Analytics in Real World (May 2016)
Data Analytics in Real World (May 2016)
geetachauhan
 
BAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneyBAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, Sydney
Sai Paravastu
 
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
pietvz
 
Predictive analytics from a to z
Predictive analytics from a to zPredictive analytics from a to z
Predictive analytics from a to z
alpinedatalabs
 
Big data
Big dataBig data
Big Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
Big Data, Big Thinking: Simplified Architecture Webinar Fact SheetBig Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
Big Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
SAP Technology
 
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
PwC
 
The Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture ViewThe Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture View
DataWorks Summit/Hadoop Summit
 
zData BI & Advanced Analytics Platform + 8 Week Pilot Programs
zData BI & Advanced Analytics Platform + 8 Week Pilot ProgramszData BI & Advanced Analytics Platform + 8 Week Pilot Programs
zData BI & Advanced Analytics Platform + 8 Week Pilot Programs
zData Inc.
 
Haven 2 0
Haven 2 0 Haven 2 0
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Ali Alkan
 
IBM Analytics at Scale: Because Business Outcomes Matter
IBM Analytics at Scale: Because Business Outcomes MatterIBM Analytics at Scale: Because Business Outcomes Matter
IBM Analytics at Scale: Because Business Outcomes Matter
Christine O'Connor
 
The Eco-System of AI and How to Use It
The Eco-System of AI and How to Use ItThe Eco-System of AI and How to Use It
The Eco-System of AI and How to Use It
inside-BigData.com
 
Splunk hunkbeta
Splunk hunkbetaSplunk hunkbeta
Splunk hunkbeta
Ahnku Toh
 
Just ask Watson Seminar
Just ask Watson SeminarJust ask Watson Seminar
Just ask Watson Seminar
Certus Solutions
 
The book of elephant tattoo
The book of elephant tattooThe book of elephant tattoo
The book of elephant tattoo
Mohamed Magdy
 
Introduction to BIG DATA
Introduction to BIG DATA Introduction to BIG DATA
Introduction to BIG DATA
Zeeshan Khan
 
Big Data Analytics
Big Data AnalyticsBig Data Analytics
Big Data Analytics
Sreedhar Chowdam
 
Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-shared
cedrinemadera
 

Similar to [Keynote HP] Guido Pezzin - Big Data - from theory to practice with the simplicity of HPE HAVEN-on-demand (20)

02 a holistic approach to big data
02 a holistic approach to big data02 a holistic approach to big data
02 a holistic approach to big data
 
Data Analytics in Real World (May 2016)
Data Analytics in Real World (May 2016)Data Analytics in Real World (May 2016)
Data Analytics in Real World (May 2016)
 
BAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneyBAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, Sydney
 
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
Take the Big Data Challenge - Take Advantage of ALL of Your Data 16 Sept 2014
 
Predictive analytics from a to z
Predictive analytics from a to zPredictive analytics from a to z
Predictive analytics from a to z
 
Big data
Big dataBig data
Big data
 
Big Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
Big Data, Big Thinking: Simplified Architecture Webinar Fact SheetBig Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
Big Data, Big Thinking: Simplified Architecture Webinar Fact Sheet
 
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
 
The Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture ViewThe Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture View
 
zData BI & Advanced Analytics Platform + 8 Week Pilot Programs
zData BI & Advanced Analytics Platform + 8 Week Pilot ProgramszData BI & Advanced Analytics Platform + 8 Week Pilot Programs
zData BI & Advanced Analytics Platform + 8 Week Pilot Programs
 
Haven 2 0
Haven 2 0 Haven 2 0
Haven 2 0
 
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
 
IBM Analytics at Scale: Because Business Outcomes Matter
IBM Analytics at Scale: Because Business Outcomes MatterIBM Analytics at Scale: Because Business Outcomes Matter
IBM Analytics at Scale: Because Business Outcomes Matter
 
The Eco-System of AI and How to Use It
The Eco-System of AI and How to Use ItThe Eco-System of AI and How to Use It
The Eco-System of AI and How to Use It
 
Splunk hunkbeta
Splunk hunkbetaSplunk hunkbeta
Splunk hunkbeta
 
Just ask Watson Seminar
Just ask Watson SeminarJust ask Watson Seminar
Just ask Watson Seminar
 
The book of elephant tattoo
The book of elephant tattooThe book of elephant tattoo
The book of elephant tattoo
 
Introduction to BIG DATA
Introduction to BIG DATA Introduction to BIG DATA
Introduction to BIG DATA
 
Big Data Analytics
Big Data AnalyticsBig Data Analytics
Big Data Analytics
 
Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-shared
 

More from Codemotion

Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
Codemotion
 
Pompili - From hero to_zero: The FatalNoise neverending story
Pompili - From hero to_zero: The FatalNoise neverending storyPompili - From hero to_zero: The FatalNoise neverending story
Pompili - From hero to_zero: The FatalNoise neverending story
Codemotion
 
Pastore - Commodore 65 - La storia
Pastore - Commodore 65 - La storiaPastore - Commodore 65 - La storia
Pastore - Commodore 65 - La storia
Codemotion
 
Pennisi - Essere Richard Altwasser
Pennisi - Essere Richard AltwasserPennisi - Essere Richard Altwasser
Pennisi - Essere Richard Altwasser
Codemotion
 
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
Codemotion
 
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
Codemotion
 
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
Codemotion
 
Francesco Baldassarri - Deliver Data at Scale - Codemotion Amsterdam 2019 -
Francesco Baldassarri  - Deliver Data at Scale - Codemotion Amsterdam 2019 - Francesco Baldassarri  - Deliver Data at Scale - Codemotion Amsterdam 2019 -
Francesco Baldassarri - Deliver Data at Scale - Codemotion Amsterdam 2019 -
Codemotion
 
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
Codemotion
 
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
Codemotion
 
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
Codemotion
 
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
Codemotion
 
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
Codemotion
 
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
Codemotion
 
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
Codemotion
 
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
Codemotion
 
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
Codemotion
 
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
Codemotion
 
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
Codemotion
 
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
Codemotion
 

More from Codemotion (20)

Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
Fuzz-testing: A hacker's approach to making your code more secure | Pascal Ze...
 
Pompili - From hero to_zero: The FatalNoise neverending story
Pompili - From hero to_zero: The FatalNoise neverending storyPompili - From hero to_zero: The FatalNoise neverending story
Pompili - From hero to_zero: The FatalNoise neverending story
 
Pastore - Commodore 65 - La storia
Pastore - Commodore 65 - La storiaPastore - Commodore 65 - La storia
Pastore - Commodore 65 - La storia
 
Pennisi - Essere Richard Altwasser
Pennisi - Essere Richard AltwasserPennisi - Essere Richard Altwasser
Pennisi - Essere Richard Altwasser
 
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
Michel Schudel - Let's build a blockchain... in 40 minutes! - Codemotion Amst...
 
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
Richard Süselbeck - Building your own ride share app - Codemotion Amsterdam 2019
 
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
Eward Driehuis - What we learned from 20.000 attacks - Codemotion Amsterdam 2019
 
Francesco Baldassarri - Deliver Data at Scale - Codemotion Amsterdam 2019 -
Francesco Baldassarri  - Deliver Data at Scale - Codemotion Amsterdam 2019 - Francesco Baldassarri  - Deliver Data at Scale - Codemotion Amsterdam 2019 -
Francesco Baldassarri - Deliver Data at Scale - Codemotion Amsterdam 2019 -
 
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
Martin Förtsch, Thomas Endres - Stereoscopic Style Transfer AI - Codemotion A...
 
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
Melanie Rieback, Klaus Kursawe - Blockchain Security: Melting the "Silver Bul...
 
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
Angelo van der Sijpt - How well do you know your network stack? - Codemotion ...
 
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
Lars Wolff - Performance Testing for DevOps in the Cloud - Codemotion Amsterd...
 
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
Sascha Wolter - Conversational AI Demystified - Codemotion Amsterdam 2019
 
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
Michele Tonutti - Scaling is caring - Codemotion Amsterdam 2019
 
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
Pat Hermens - From 100 to 1,000+ deployments a day - Codemotion Amsterdam 2019
 
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
James Birnie - Using Many Worlds of Compute Power with Quantum - Codemotion A...
 
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
Don Goodman-Wilson - Chinese food, motor scooters, and open source developmen...
 
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
Pieter Omvlee - The story behind Sketch - Codemotion Amsterdam 2019
 
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
Dave Farley - Taking Back “Software Engineering” - Codemotion Amsterdam 2019
 
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
Joshua Hoffman - Should the CTO be Coding? - Codemotion Amsterdam 2019
 

Recently uploaded

GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
Neo4j
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
Octavian Nadolu
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
Neo4j
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
Kari Kakkonen
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
DianaGray10
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
名前 です男
 
A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...
sonjaschweigert1
 
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
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
Matthew Sinclair
 
20 Comprehensive Checklist of Designing and Developing a Website
20 Comprehensive Checklist of Designing and Developing a Website20 Comprehensive Checklist of Designing and Developing a Website
20 Comprehensive Checklist of Designing and Developing a Website
Pixlogix Infotech
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
Quotidiano Piemontese
 
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
 
Pushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 daysPushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 days
Adtran
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
Safe Software
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
shyamraj55
 
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
Zilliz
 
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
 
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Zilliz
 
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.
 
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Albert Hoitingh
 

Recently uploaded (20)

GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
 
A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...
 
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
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
 
20 Comprehensive Checklist of Designing and Developing a Website
20 Comprehensive Checklist of Designing and Developing a Website20 Comprehensive Checklist of Designing and Developing a Website
20 Comprehensive Checklist of Designing and Developing a Website
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
 
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
 
Pushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 daysPushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 days
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
 
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
Introducing Milvus Lite: Easy-to-Install, Easy-to-Use vector database for you...
 
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
 
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...
 
Microsoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdfMicrosoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdf
 
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
 

[Keynote HP] Guido Pezzin - Big Data - from theory to practice with the simplicity of HPE HAVEN-on-demand

  • 1. Big Data - from theory to practice with the simplicity of HPE Haven OnDemand Guido Pezzin | HPE Big Data | guido.pezzin@hpe.com Nov 21, 2015
  • 2. It takes a Big Data platform to “cash in” your data assets Siloed data challenge Big Data Platform answer – Only .5% of data in the average organization is tagged and analyzed – Information silos - everywhere – Tools for finding and understanding information, tied to origin and format – Queries take too long and are too rigid, difficult to uncover opportunities, patterns or unexpected threats – Ad hoc discovery—find what’s in the data without pre-structuring – Ubiquitous but secure data access – Real time data collection and analysis, any format, any data source – An extensible platform to harness100% of your data, on- premise, in the cloud – Supporting text here 2
  • 3. Powered by the industry’s leading Big Data engines “Analysis at the speed of business” HP Vertica Analytics Platform: Purpose-built analytics platform to manage petabytes of data at massive scale with blazing-fast analytics How it works: Columnar architecture with intelligent data compression, built-in analytic functions, and open integration to meet analytic use cases Key advantage: Extremely accessible technology to manage and analyze massive volumes of data in seconds, not weeks Spectrum of use cases: Network QoS, supply chain optimization, ecommerce analysis, sensor data analytics, customer analytics Vertica “Structure and insight from chaos” HP IDOL Information platform for processing free text, audio, video, image and “create” structured data How it works: Probabilistic modeling and pattern-matching to understand concepts in information in context Key advantage: Analyze diverse forms of unstructured information to probe and explore data Spectrum of use cases: Information governance, eDiscovery, knowledge management, insider trading IDOL Understand & analyze 100% of your information from any source, with extreme speed and scale
  • 4. HPE applications Customer applications Developer applications HAVEn Defined programming interfaces Analytics, context and categorization Data connectors Social media IT/OT ImagesAudioVideo Mobile Search engine Email Texts DocumentsTransactional data Records Compliance archives Scalable data stores Gain insight from 100% of your data – Connect to a variety of machine, business, human data sources – Analyze at volume and velocity of data – Develop modern data- driven applications
  • 5. HAVEn Big Data Platform guiding principles – Fully Harness 100% of data – Seamlessly deploy and consume anywhere – Scale AND speed without compromise – Open, extensible & easy to adopt – Economics that work A Self-Service API platform for building data-rich Applications and Analytics – Big Data on Hadoop – Robust solution use cases– on premise & in the cloud
  • 7. Monetizing digital assets with HPE Haven partner ecosystem Listen to millions of conversations on social media, analyze what matters to you and gain predictive insights that will help you make the right business decisions. Improve human resources efficiency and provide business analytics to support management decision. Optimize corporate digital strategy through actionable customer analytics. Define target, analyse and enrich data, build campaign. 7 Listen. Predict. Decide. Learn from the past and predict the future https://kpi6.com https://innovationpeople.ithttps://communicationsystem.it