SlideShare ist ein Scribd-Unternehmen logo
1 von 21
Big Data @ NT
Network Technology Perspective
Big Data Day
Frankfurt am Main, Germany
September 22nd, 2016
Dr. Kim Kyllesbech Larsen,
Group Technology, Deutsche Telekom.
Dr. Kim K. Larsen / Big Data @ NT 2
Big Data is Big Team Work.
Big Data @ NT.
Dr. Kim K. Larsen / Big Data @ NT 3
Strategy & Vision.
 We call it the “Right-in-Time Big Data Architecture”.
 Serves all needs for foreseeable future (i.e., min. next 5 yrs).
 Supports all existing & proposed new network use cases.
 Supports Real Time and non-Real Time Technology use cases.
Alignment with IT & Segments.
 Fully aligned over-arching Big Data architectural principles.
 High degree of synergy with IT and other segments
embracing open source solutions.
 New components required by Network have been
identified & conceptually aligned with IT.
Big Network Data.
An illustration …
Dr. Kim K. Larsen / Big Data @ NT 4
Timing
Action & Reaction
High Velocity
(events/sec)
Large Variety
(e.g., 10k+ event cats)
Very High
Volume
Event Process
approx. <1+>
Alarm per sec
approx. <30+>
Events per millisecond
Daily (mobile) IP User Plane
Data 750+ Tera Byte
approx. 20 Mega Byte
per millisecond
Future of Bigger Network Data …
Dr. Kim K. Larsen / Big Data @ NT 5
~2.5 IoT connections
per Household
~13 IoT connections
per Household
~300+ IoT connections
per km2 urban area.
~1700+ IoT connections
per km2 urban area
Frankfurt City has ca.
3,000 pop per km2
Germany2024Expect
250– 500Million
IoT Connections Up-to 300+billion
Extra events per day
A Network-Centric View.
Dr. Kim K. Larsen / Big Data @ NT 6
€
User Experience
(in Network)
Network
Incidents
Network
Optimization
The Functional Scope.
Focuses on main strategic directions from NT Perspective.
Dr. Kim K. Larsen / Big Data @ NT 7
• Network Enrichment of data-driven business models & decisions.
• Enables 360o user experience management.
• External monetization possibilities (e.g., B2B, location, adverts, credit rating, security, etc…).
Data
Driven
Business
 Anomaly detection.
 Events & Incidents.
 Self-restoration.
 Self-Healing.
 Security.
 “Zero-touch” Operations.
Network Operations
Minutes→Milliseconds
 Utilization management.
 Self-optimization.
 Self-configuring.
 Resource management.
 Congestion management.
 Zero-touch” Optimization.
Network Optimization
Month→Week→Milliseconds
 Reporting, KPIs, ….
 Data enrichment/augmentation.
 Classical (re-active) CEM.
 NG (pro-active) CEM (NRT).
 AI-driven customer care.
 “Zero-touch” UX.
User Experience
Reactive→Proactive
Plan ahead for Big Data.
Avoid the usual suspects …
Dr. Kim K. Larsen / Big Data @ NT 8
Use
case 1
Reqs
x,y,z,..
Use
case 2
Reqs
a,b,z,..
Use
case 3
Reqs
a,k,p,..
Use
case N
Reqs
x,y,q,..
….
Harmonized
Architectural ConceptUse
Case 1
Design
Use
Case 2
Design
Use
Case 3
Design
… Design
RT
Design
Near-RT
Design
Non-RT
We have to deal with a (large) number of use cases.
Go for a Harmonized
Architectural Concept!
Avoid Ad-hoc Single Use Case
driven system design.
Big Network.
The network context and its relation to Big Data and ML.
Dr. Kim K. Larsen / Big Data @ NT 9
Telco Network
Machine Learning Apps
Big Data Analytics
What is your Real-Time time-scale?
Dr. Kim K. Larsen / Big Data @ NT 10
Merriam-Webster: “Real-Time is the actual time
during which something takes place.”
Telco Real-Time Domain.
Dr. Kim K. Larsen / Big Data @ NT 11
time scale
~50ms ~500ms~5ms minutes hours daysµs
RT Telco World
New territory
 Most Real-Time demands ranges from 5 ms up-to 500 ms.
 The wide range is covered by different Big Data technologies.
 “Tactile domain” drives new uses cases asking for 1ms and lower.
Near-Real TimeReal-Time
Tactile
domain
Non-Real Time
The Meaning of “Right-in-Time”
Dr. Kim K. Larsen / Big Data @ NT 12
 Use case dependent time-scale.
 Reaction times; µs, ms, sec up to min or even hours.
 E.g. if relevant time is hours, no need to analyze in millisecond.
time scale
~50ms ~500ms~5ms minutes hours daysµs
SQM / CEM
Status reporting
“Tactile” apps
Network optimization
Fault detection
Incident mgmt
RT Telco World
Marketing related data analytics
streaming
micro batch processing
batch and backend processing
new territory
Right-in-Time Network Architecture.
Converged network vision.
Dr. Kim K. Larsen / Big Data @ NT 13
Right-in-TimeBigData
Virtualized Network and Service functions
Infrastructure Cloud
NG IP Network (BNG/TeraStream)
Mobile Access Fixed Access
CPESIM
Hybrid
Virtualized Network and Service functions
Infrastructure Cloud
NG IP Network (BNG/TeraStream)
Mobile Access Fixed Access
CPESIM
Hybrid
Real-TimeNetwork&
ServiceManager
Challenges ... The Next Steps.
ML in the Real-Time Domain … from seconds to milliseconds.
Dr. Kim K. Larsen / Big Data @ NT 14
Data Sources
(Data Generation Entity)
Data
Stream
{ X(t) }
Process
(e.g., filter, route,
enrich, compute)
Transport
Decision Point
(e.g., ML model)
Data
Stream
{ X(t), F(X(t)) }
Transport Store
(e.g., HDFS)
Store or
in-memory
Change
Order
Input Output
t0 t1
Roundtrip
time
Scale
~ms
t2
Batch
Process
Typical timescales from  ms and up
Insights
Typical timescales
Minutes  Daily  Monthly
+ Ad-hoc
Streaming or micro-batch processing
MachineLearning Apps
Danger of Over-Engineering Solutions.
Dr. Kim K. Larsen / Big Data @ NT 15
Very efficientsolution!
GoodBike
Very expensive& complexsolution!
Bad“Bike”
vs
A B
Best
Solution?
Desired outcomeNeed or Desire
e.g., GLM, Kernels, or parsing e.g., DCNN, RNN, …
Which one of below solutions are the best bike solution?
The Entanglement Challenge.
Many machine learning agents (or apps) with different
objectives will be present in a modern control system.
Machine Learning App
“Machine Learning Systems mix signals
together, entangling them & makes
isolation of improvements largely
impossible & stability at risk.”
(RTx) SON
AI
(RTy) CEM
AI
Simple illustration
Optimize cell for best
cell performance
Optimize cell (& terminal?)
for best user experience
Reference: D, Sculley et al (2015), “Hidden Technical
Debts in Machine Learning”.
?
Dr. Kim K. Larsen / Big Data @ NT
Simple Agents Interacts in Very Complex Ways!
Dr. Kim K. Larsen / Big Data @ NT 17
“Bots reverted another bot’s change on
average 105 times, significantly larger
than the average of 3 times for humans”.
Source: Tsvetkova et al., “Even Good Bots Fight,
https://arxiv.org/ftp/arxiv/papers/1609/1609.04285.pdf
Bot-Bot interactions
on Wikipedia
Human-Human interactions
on Wikipedia
“Bots intended to support often undo each
other’s changes and these “fights” may
sometimes continue for years”.
“Research suggests that even relatively
“dumb” bots may give rise to complex
interactions.”
18
Does it
work?
No
Yes
Fail Fast
Fail Often
Rapid proto-typing & proof-of-concepts.
Architecture is about building stuff.
Dr. Kim K. Larsen / Big Data @ NT
Big Data … Core Technology Beliefs.
Non-exhaustive, i.e., just a subset.
Dr. Kim K. Larsen / Big Data @ NT 19
We (DT) own the
data.
1
Harmonization
more important
than
Centralization.
2
RT and Non-RT
co-exist, both
need to be
embraced in a
“Right in Time”
concept.
4
“Right in Time”
implies that
a single
technology does
not solve every
Big Data
challenge.
5
Benefits from
shared local Big
Data lake
substantial.
3
Next Developing Steps.
Dr.KimK.Larsen/BigData @NT 20
Developing a Big Data Architecture in the Tactile Domain
Study Real Time (e.g., ms – sec domain) requirements.
Study System Engineering requirements for Tactile Applications.
Develop proof of concepts – Fail fast philosophy!
Developing RT Applied Machine Learning expertise
Feasibility study of Deep Learning Algorithms applied to RT.
Applied Machine Learning in Tactile Domain, e.g., dynamic algorithms.
Alternatives: Genetic algorithms, scale-free networks.
Developing re-enforcement learning applications.
Spectrum auctions, network management, customer experience, self-
optimized network applications, etc..
Dr.KimK.Larsen/BigData @NT 21
Acknowledgement
Wolfgang Wölker
and many other colleagues who have
contributed with valuable insights &
comments throughout this work.

Weitere ähnliche Inhalte

Was ist angesagt?

5G The Big Game Changer ?
5G The Big Game Changer ?5G The Big Game Changer ?
5G The Big Game Changer ?
University of Hertfordshire
 
Soderstrom
SoderstromSoderstrom
Soderstrom
NASAPMC
 
The Future Started Yesterday: The Top Ten Computer and IT Trends
The Future Started Yesterday: The Top Ten Computer and IT TrendsThe Future Started Yesterday: The Top Ten Computer and IT Trends
The Future Started Yesterday: The Top Ten Computer and IT Trends
Career Communications Group
 
Future trends presentation by bakr al tamimi (public)
Future trends presentation by bakr al tamimi (public)Future trends presentation by bakr al tamimi (public)
Future trends presentation by bakr al tamimi (public)
Bakr Al-Tamimi
 
Commscope Federal Solutions Paper.PDF
Commscope Federal Solutions Paper.PDFCommscope Federal Solutions Paper.PDF
Commscope Federal Solutions Paper.PDF
Kevin LeVan
 

Was ist angesagt? (17)

5G The Big Game Changer ?
5G The Big Game Changer ?5G The Big Game Changer ?
5G The Big Game Changer ?
 
Cloud, AI and Quantum in Mobility - IBM Thorsten Schroeer
Cloud, AI and Quantum in Mobility - IBM Thorsten SchroeerCloud, AI and Quantum in Mobility - IBM Thorsten Schroeer
Cloud, AI and Quantum in Mobility - IBM Thorsten Schroeer
 
Edge Computing Platforms and Protocols - Ph.D. thesis
Edge Computing Platforms and Protocols - Ph.D. thesisEdge Computing Platforms and Protocols - Ph.D. thesis
Edge Computing Platforms and Protocols - Ph.D. thesis
 
Who pays for mobile broadband 2.0
Who pays for mobile broadband 2.0Who pays for mobile broadband 2.0
Who pays for mobile broadband 2.0
 
Soderstrom
SoderstromSoderstrom
Soderstrom
 
Fungerer Smart Grid i virkelighedens IKT-verden? af Kim Guldstrand Larsen, In...
Fungerer Smart Grid i virkelighedens IKT-verden? af Kim Guldstrand Larsen, In...Fungerer Smart Grid i virkelighedens IKT-verden? af Kim Guldstrand Larsen, In...
Fungerer Smart Grid i virkelighedens IKT-verden? af Kim Guldstrand Larsen, In...
 
The Future Started Yesterday: The Top Ten Computer and IT Trends
The Future Started Yesterday: The Top Ten Computer and IT TrendsThe Future Started Yesterday: The Top Ten Computer and IT Trends
The Future Started Yesterday: The Top Ten Computer and IT Trends
 
Co working space
Co working spaceCo working space
Co working space
 
Future trends presentation by bakr al tamimi (public)
Future trends presentation by bakr al tamimi (public)Future trends presentation by bakr al tamimi (public)
Future trends presentation by bakr al tamimi (public)
 
16h30 p duff-big-data-final
16h30   p duff-big-data-final16h30   p duff-big-data-final
16h30 p duff-big-data-final
 
Bob Gourley
Bob GourleyBob Gourley
Bob Gourley
 
Mr. Richard Jones' presentation at QITCOM 2011
Mr. Richard Jones' presentation at QITCOM 2011Mr. Richard Jones' presentation at QITCOM 2011
Mr. Richard Jones' presentation at QITCOM 2011
 
3. the grid new infrastructure
3. the grid new infrastructure3. the grid new infrastructure
3. the grid new infrastructure
 
Quantum Computing vs Encryption: A Battle to Watch Out for
Quantum Computing vs Encryption: A Battle to Watch Out forQuantum Computing vs Encryption: A Battle to Watch Out for
Quantum Computing vs Encryption: A Battle to Watch Out for
 
The Agile Fractal Grid orchestrated by a platform of platforms
The Agile Fractal Grid  orchestrated by a platform of platformsThe Agile Fractal Grid  orchestrated by a platform of platforms
The Agile Fractal Grid orchestrated by a platform of platforms
 
Commscope Federal Solutions Paper.PDF
Commscope Federal Solutions Paper.PDFCommscope Federal Solutions Paper.PDF
Commscope Federal Solutions Paper.PDF
 
Internet of Things
Internet of ThingsInternet of Things
Internet of Things
 

Andere mochten auch

Co-Creation en creatieve industrie
Co-Creation en creatieve industrieCo-Creation en creatieve industrie
Co-Creation en creatieve industrie
VRmaster
 
Pollak Game Art
Pollak Game ArtPollak Game Art
Pollak Game Art
pollakb
 
Ristow09antioxidants prevent helath promoting effects of physical exercise in...
Ristow09antioxidants prevent helath promoting effects of physical exercise in...Ristow09antioxidants prevent helath promoting effects of physical exercise in...
Ristow09antioxidants prevent helath promoting effects of physical exercise in...
Rinaldo Pereira
 

Andere mochten auch (20)

Zero Human Touch Networks
Zero Human Touch NetworksZero Human Touch Networks
Zero Human Touch Networks
 
The Economics of 5G
The Economics of 5GThe Economics of 5G
The Economics of 5G
 
Small Cell Economics
Small Cell EconomicsSmall Cell Economics
Small Cell Economics
 
A Stranger in a Strange Land
A Stranger in a Strange LandA Stranger in a Strange Land
A Stranger in a Strange Land
 
Beyond LTE Launch
Beyond LTE LaunchBeyond LTE Launch
Beyond LTE Launch
 
Growth Pains: How mobile networks will supply data capacity for 2020
Growth Pains: How mobile networks will supply data capacity for 2020Growth Pains: How mobile networks will supply data capacity for 2020
Growth Pains: How mobile networks will supply data capacity for 2020
 
Digitized! Get Ready for the Next Wave of the Digital Society
Digitized! Get Ready for the Next Wave of the Digital Society Digitized! Get Ready for the Next Wave of the Digital Society
Digitized! Get Ready for the Next Wave of the Digital Society
 
Telco 2020 ... A Mature Market Outlook
Telco 2020 ... A Mature Market OutlookTelco 2020 ... A Mature Market Outlook
Telco 2020 ... A Mature Market Outlook
 
Right Pricing Mobile Broadband ... Examining the Business Case for Mobile Bro...
Right Pricing Mobile Broadband ... Examining the Business Case for Mobile Bro...Right Pricing Mobile Broadband ... Examining the Business Case for Mobile Bro...
Right Pricing Mobile Broadband ... Examining the Business Case for Mobile Bro...
 
Outlook 2012: De-risking the Broadband Business Model
Outlook 2012: De-risking the Broadband Business ModelOutlook 2012: De-risking the Broadband Business Model
Outlook 2012: De-risking the Broadband Business Model
 
Small cell networks why & when to care!
Small cell networks   why & when to care!Small cell networks   why & when to care!
Small cell networks why & when to care!
 
Ultra-efficient network factory: Network sharing and other means to leapfrog ...
Ultra-efficient network factory: Network sharing and other means to leapfrog ...Ultra-efficient network factory: Network sharing and other means to leapfrog ...
Ultra-efficient network factory: Network sharing and other means to leapfrog ...
 
Mind Share: Right Pricing LTE ... and Mobile Broadband in general (A Technolo...
Mind Share: Right Pricing LTE ... and Mobile Broadband in general (A Technolo...Mind Share: Right Pricing LTE ... and Mobile Broadband in general (A Technolo...
Mind Share: Right Pricing LTE ... and Mobile Broadband in general (A Technolo...
 
Fundamentals of Mobile Network Sharing
Fundamentals of Mobile Network SharingFundamentals of Mobile Network Sharing
Fundamentals of Mobile Network Sharing
 
Capacity planning in mobile data networks experiencing exponential growth in ...
Capacity planning in mobile data networks experiencing exponential growth in ...Capacity planning in mobile data networks experiencing exponential growth in ...
Capacity planning in mobile data networks experiencing exponential growth in ...
 
Who pays for mobile broadband?
Who pays for mobile broadband?Who pays for mobile broadband?
Who pays for mobile broadband?
 
Co-Creation en creatieve industrie
Co-Creation en creatieve industrieCo-Creation en creatieve industrie
Co-Creation en creatieve industrie
 
The transition to LTE, the role of policy & control.
The transition to LTE, the role of policy & control.The transition to LTE, the role of policy & control.
The transition to LTE, the role of policy & control.
 
Pollak Game Art
Pollak Game ArtPollak Game Art
Pollak Game Art
 
Ristow09antioxidants prevent helath promoting effects of physical exercise in...
Ristow09antioxidants prevent helath promoting effects of physical exercise in...Ristow09antioxidants prevent helath promoting effects of physical exercise in...
Ristow09antioxidants prevent helath promoting effects of physical exercise in...
 

Ähnlich wie Big Data @ NT - A Network Technology Perspective

The Growth Of Data Centers
The Growth Of Data CentersThe Growth Of Data Centers
The Growth Of Data Centers
Gina Buck
 
So Long Computer Overlords
So Long Computer OverlordsSo Long Computer Overlords
So Long Computer Overlords
Ian Foster
 

Ähnlich wie Big Data @ NT - A Network Technology Perspective (20)

Enabling the data driven enterprise
Enabling the data driven enterpriseEnabling the data driven enterprise
Enabling the data driven enterprise
 
Big data in Private Banking
Big data in Private BankingBig data in Private Banking
Big data in Private Banking
 
Managing Emerging Technologies
Managing Emerging TechnologiesManaging Emerging Technologies
Managing Emerging Technologies
 
Microsoft Dryad
Microsoft DryadMicrosoft Dryad
Microsoft Dryad
 
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
 
Going eXtreme for Healthcare
Going eXtreme for HealthcareGoing eXtreme for Healthcare
Going eXtreme for Healthcare
 
Network Automation & Autonomy - At Pace & Scale.
Network Automation & Autonomy - At Pace & Scale.Network Automation & Autonomy - At Pace & Scale.
Network Automation & Autonomy - At Pace & Scale.
 
Do More With Less with DB2 for z/OS
Do More With Less with DB2 for z/OSDo More With Less with DB2 for z/OS
Do More With Less with DB2 for z/OS
 
Trivento summercamp masterclass 9/9/2016
Trivento summercamp masterclass 9/9/2016Trivento summercamp masterclass 9/9/2016
Trivento summercamp masterclass 9/9/2016
 
Knowledge of IoT
Knowledge of IoTKnowledge of IoT
Knowledge of IoT
 
The Growth Of Data Centers
The Growth Of Data CentersThe Growth Of Data Centers
The Growth Of Data Centers
 
A Empresa na Era da Informação Extrema
A Empresa na Era da Informação ExtremaA Empresa na Era da Informação Extrema
A Empresa na Era da Informação Extrema
 
ParStream - Big Data for Business Users
ParStream - Big Data for Business UsersParStream - Big Data for Business Users
ParStream - Big Data for Business Users
 
So Long Computer Overlords
So Long Computer OverlordsSo Long Computer Overlords
So Long Computer Overlords
 
International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)
 
Bigdata notes
Bigdata notesBigdata notes
Bigdata notes
 
TerraEchos Kairos on IBM PowerLinux servers
TerraEchos Kairos on IBM PowerLinux serversTerraEchos Kairos on IBM PowerLinux servers
TerraEchos Kairos on IBM PowerLinux servers
 
Big data business case
Big data   business caseBig data   business case
Big data business case
 
Global C4IR-1 Masterclass Adryan - Zuehlke Engineering 2017
Global C4IR-1 Masterclass Adryan - Zuehlke Engineering 2017Global C4IR-1 Masterclass Adryan - Zuehlke Engineering 2017
Global C4IR-1 Masterclass Adryan - Zuehlke Engineering 2017
 
Predictive Enterprise Strategic Overview
Predictive Enterprise Strategic OverviewPredictive Enterprise Strategic Overview
Predictive Enterprise Strategic Overview
 

Mehr von Dr. Kim (Kyllesbech Larsen)

Mehr von Dr. Kim (Kyllesbech Larsen) (9)

The best Spectrum, the best network, and smart investment strategies … lesson...
The best Spectrum, the best network, and smart investment strategies … lesson...The best Spectrum, the best network, and smart investment strategies … lesson...
The best Spectrum, the best network, and smart investment strategies … lesson...
 
What makes telco tick and what to expect from real 5G
What makes telco tick and what to expect from real 5GWhat makes telco tick and what to expect from real 5G
What makes telco tick and what to expect from real 5G
 
5G Standalone Will Deliver! - But What?
5G Standalone Will Deliver! - But What?5G Standalone Will Deliver! - But What?
5G Standalone Will Deliver! - But What?
 
AI for Finance
AI for FinanceAI for Finance
AI for Finance
 
Ethical Dilemmas in AI/ML-based systems
Ethical Dilemmas in AI/ML-based systemsEthical Dilemmas in AI/ML-based systems
Ethical Dilemmas in AI/ML-based systems
 
A Tutorial to AI Ethics - Fairness, Bias & Perception
A Tutorial to AI Ethics - Fairness, Bias & Perception A Tutorial to AI Ethics - Fairness, Bias & Perception
A Tutorial to AI Ethics - Fairness, Bias & Perception
 
The Bot Generation ... Are Millennials excited or threatened by AI?
The Bot Generation ... Are Millennials excited or threatened by AI?The Bot Generation ... Are Millennials excited or threatened by AI?
The Bot Generation ... Are Millennials excited or threatened by AI?
 
Smart life 3.0
Smart life 3.0Smart life 3.0
Smart life 3.0
 
How do we Humans feel about AI?
How do we Humans feel about AI?How do we Humans feel about AI?
How do we Humans feel about AI?
 

Kürzlich hochgeladen

Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 

Kürzlich hochgeladen (20)

Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 

Big Data @ NT - A Network Technology Perspective

  • 1. Big Data @ NT Network Technology Perspective Big Data Day Frankfurt am Main, Germany September 22nd, 2016 Dr. Kim Kyllesbech Larsen, Group Technology, Deutsche Telekom.
  • 2. Dr. Kim K. Larsen / Big Data @ NT 2 Big Data is Big Team Work.
  • 3. Big Data @ NT. Dr. Kim K. Larsen / Big Data @ NT 3 Strategy & Vision.  We call it the “Right-in-Time Big Data Architecture”.  Serves all needs for foreseeable future (i.e., min. next 5 yrs).  Supports all existing & proposed new network use cases.  Supports Real Time and non-Real Time Technology use cases. Alignment with IT & Segments.  Fully aligned over-arching Big Data architectural principles.  High degree of synergy with IT and other segments embracing open source solutions.  New components required by Network have been identified & conceptually aligned with IT.
  • 4. Big Network Data. An illustration … Dr. Kim K. Larsen / Big Data @ NT 4 Timing Action & Reaction High Velocity (events/sec) Large Variety (e.g., 10k+ event cats) Very High Volume Event Process approx. <1+> Alarm per sec approx. <30+> Events per millisecond Daily (mobile) IP User Plane Data 750+ Tera Byte approx. 20 Mega Byte per millisecond
  • 5. Future of Bigger Network Data … Dr. Kim K. Larsen / Big Data @ NT 5 ~2.5 IoT connections per Household ~13 IoT connections per Household ~300+ IoT connections per km2 urban area. ~1700+ IoT connections per km2 urban area Frankfurt City has ca. 3,000 pop per km2 Germany2024Expect 250– 500Million IoT Connections Up-to 300+billion Extra events per day
  • 6. A Network-Centric View. Dr. Kim K. Larsen / Big Data @ NT 6 € User Experience (in Network) Network Incidents Network Optimization
  • 7. The Functional Scope. Focuses on main strategic directions from NT Perspective. Dr. Kim K. Larsen / Big Data @ NT 7 • Network Enrichment of data-driven business models & decisions. • Enables 360o user experience management. • External monetization possibilities (e.g., B2B, location, adverts, credit rating, security, etc…). Data Driven Business  Anomaly detection.  Events & Incidents.  Self-restoration.  Self-Healing.  Security.  “Zero-touch” Operations. Network Operations Minutes→Milliseconds  Utilization management.  Self-optimization.  Self-configuring.  Resource management.  Congestion management.  Zero-touch” Optimization. Network Optimization Month→Week→Milliseconds  Reporting, KPIs, ….  Data enrichment/augmentation.  Classical (re-active) CEM.  NG (pro-active) CEM (NRT).  AI-driven customer care.  “Zero-touch” UX. User Experience Reactive→Proactive
  • 8. Plan ahead for Big Data. Avoid the usual suspects … Dr. Kim K. Larsen / Big Data @ NT 8 Use case 1 Reqs x,y,z,.. Use case 2 Reqs a,b,z,.. Use case 3 Reqs a,k,p,.. Use case N Reqs x,y,q,.. …. Harmonized Architectural ConceptUse Case 1 Design Use Case 2 Design Use Case 3 Design … Design RT Design Near-RT Design Non-RT We have to deal with a (large) number of use cases. Go for a Harmonized Architectural Concept! Avoid Ad-hoc Single Use Case driven system design.
  • 9. Big Network. The network context and its relation to Big Data and ML. Dr. Kim K. Larsen / Big Data @ NT 9 Telco Network Machine Learning Apps Big Data Analytics
  • 10. What is your Real-Time time-scale? Dr. Kim K. Larsen / Big Data @ NT 10 Merriam-Webster: “Real-Time is the actual time during which something takes place.”
  • 11. Telco Real-Time Domain. Dr. Kim K. Larsen / Big Data @ NT 11 time scale ~50ms ~500ms~5ms minutes hours daysµs RT Telco World New territory  Most Real-Time demands ranges from 5 ms up-to 500 ms.  The wide range is covered by different Big Data technologies.  “Tactile domain” drives new uses cases asking for 1ms and lower. Near-Real TimeReal-Time Tactile domain Non-Real Time
  • 12. The Meaning of “Right-in-Time” Dr. Kim K. Larsen / Big Data @ NT 12  Use case dependent time-scale.  Reaction times; µs, ms, sec up to min or even hours.  E.g. if relevant time is hours, no need to analyze in millisecond. time scale ~50ms ~500ms~5ms minutes hours daysµs SQM / CEM Status reporting “Tactile” apps Network optimization Fault detection Incident mgmt RT Telco World Marketing related data analytics streaming micro batch processing batch and backend processing new territory
  • 13. Right-in-Time Network Architecture. Converged network vision. Dr. Kim K. Larsen / Big Data @ NT 13 Right-in-TimeBigData Virtualized Network and Service functions Infrastructure Cloud NG IP Network (BNG/TeraStream) Mobile Access Fixed Access CPESIM Hybrid Virtualized Network and Service functions Infrastructure Cloud NG IP Network (BNG/TeraStream) Mobile Access Fixed Access CPESIM Hybrid Real-TimeNetwork& ServiceManager
  • 14. Challenges ... The Next Steps. ML in the Real-Time Domain … from seconds to milliseconds. Dr. Kim K. Larsen / Big Data @ NT 14 Data Sources (Data Generation Entity) Data Stream { X(t) } Process (e.g., filter, route, enrich, compute) Transport Decision Point (e.g., ML model) Data Stream { X(t), F(X(t)) } Transport Store (e.g., HDFS) Store or in-memory Change Order Input Output t0 t1 Roundtrip time Scale ~ms t2 Batch Process Typical timescales from  ms and up Insights Typical timescales Minutes  Daily  Monthly + Ad-hoc Streaming or micro-batch processing MachineLearning Apps
  • 15. Danger of Over-Engineering Solutions. Dr. Kim K. Larsen / Big Data @ NT 15 Very efficientsolution! GoodBike Very expensive& complexsolution! Bad“Bike” vs A B Best Solution? Desired outcomeNeed or Desire e.g., GLM, Kernels, or parsing e.g., DCNN, RNN, … Which one of below solutions are the best bike solution?
  • 16. The Entanglement Challenge. Many machine learning agents (or apps) with different objectives will be present in a modern control system. Machine Learning App “Machine Learning Systems mix signals together, entangling them & makes isolation of improvements largely impossible & stability at risk.” (RTx) SON AI (RTy) CEM AI Simple illustration Optimize cell for best cell performance Optimize cell (& terminal?) for best user experience Reference: D, Sculley et al (2015), “Hidden Technical Debts in Machine Learning”. ? Dr. Kim K. Larsen / Big Data @ NT
  • 17. Simple Agents Interacts in Very Complex Ways! Dr. Kim K. Larsen / Big Data @ NT 17 “Bots reverted another bot’s change on average 105 times, significantly larger than the average of 3 times for humans”. Source: Tsvetkova et al., “Even Good Bots Fight, https://arxiv.org/ftp/arxiv/papers/1609/1609.04285.pdf Bot-Bot interactions on Wikipedia Human-Human interactions on Wikipedia “Bots intended to support often undo each other’s changes and these “fights” may sometimes continue for years”. “Research suggests that even relatively “dumb” bots may give rise to complex interactions.”
  • 18. 18 Does it work? No Yes Fail Fast Fail Often Rapid proto-typing & proof-of-concepts. Architecture is about building stuff. Dr. Kim K. Larsen / Big Data @ NT
  • 19. Big Data … Core Technology Beliefs. Non-exhaustive, i.e., just a subset. Dr. Kim K. Larsen / Big Data @ NT 19 We (DT) own the data. 1 Harmonization more important than Centralization. 2 RT and Non-RT co-exist, both need to be embraced in a “Right in Time” concept. 4 “Right in Time” implies that a single technology does not solve every Big Data challenge. 5 Benefits from shared local Big Data lake substantial. 3
  • 20. Next Developing Steps. Dr.KimK.Larsen/BigData @NT 20 Developing a Big Data Architecture in the Tactile Domain Study Real Time (e.g., ms – sec domain) requirements. Study System Engineering requirements for Tactile Applications. Develop proof of concepts – Fail fast philosophy! Developing RT Applied Machine Learning expertise Feasibility study of Deep Learning Algorithms applied to RT. Applied Machine Learning in Tactile Domain, e.g., dynamic algorithms. Alternatives: Genetic algorithms, scale-free networks. Developing re-enforcement learning applications. Spectrum auctions, network management, customer experience, self- optimized network applications, etc..
  • 21. Dr.KimK.Larsen/BigData @NT 21 Acknowledgement Wolfgang Wölker and many other colleagues who have contributed with valuable insights & comments throughout this work.