SlideShare a Scribd company logo
1 of 29
Download to read offline
1
1
Think Big Analytics
2
2
Think Big Overview
Kafka
© 2017 Think Big, A Teradata Company
1st Big Data only service provider
• Founded in 2010 - industry thought leader
• Technology agnostic with open source integration expertise
• Full spectrum consulting, data engineering, data sciences & support
• 150+ successful projects & 100+ clients
• Global delivery model to balance needs (on-site, near-shore, off-shore)
300 1000 global professionals
• Fixed fee option experience for predictable risk and spend
3
3
Think Big Velocity Services Portfolio
Think Big, Start Smart, Scale Fast
Training &
Mentoring
Architecture
& Roadmap
Data Lake
Analytics OpsData Science
Managed
Services
RACE
© 2017 Think Big, A Teradata Company
4 © 2017 Think Big, a Teradata Company
4
Foundation for Enterprise Analytics
Artificial Intelligence
Analytics Ops
Industrial
Data Management
5 © 2017 Think Big, a Teradata Company
5
Join us
Work with us!!!
https://www.thinkbiganalytics.com/big-data-careers/
© 2017 Think Big, a Teradata Company
6
Think Big — Start Smart — Scale Fast
7 © 2015 Teradata
Applications and Approaches
© 2017 Teradata
​Enterprise Artificial Intelligence
Laura Frølich
Data Scientist
8
Analytics Evolution
Descriptive
Predictive
Prescriptive
What is happening?REPORTING
ANALYZING
PREDICTING
MACHINE LEARNING
ARTIFICIAL INTELLIGENCE
Is it real? Why is it
happening?
What are the hidden
patterns? What will
happen next?
Self-learning systems
with linear regression.
Deep learning.
OPERATIONALIZING What is happening
right now?
ACTIVATING Make it happen with
automation.
2010s
2000s
1990s
9
The Resurgence of Artificial Intelligence
• Significant advances in hardware capability
• Rapid progress in research and applications
using neural networks
• Significant technology investments
• Increasing amounts of data
By	2019,	deep	learning	will	provide	best-
in-class	performance	for	demand,	fraud,	
and	failure	prediction. - Gartner
10
Companies mentioning “Artificial
Intelligence” Rising Rapidly
The Resurgence of AI
11
“
By 2020 AI will be a top five
investment priority for more
than 30% of CIOs.
—Gartner BI Summit,
February, 2017
“The Resurgence of AI
12
The Resurgence of AI
7 November 2016
12 October 2014
13
Deep Learning
How is it different?
• Multiple layers in neural network with intermediate data
representations to facilitate dimensional reduction.
• Interpret non-linear relationships in the data.
• Derive patterns from data with very high dimensionality.
Why do we care?
• Ability to create value with little or no
domain knowledge required.
• Ability to incorporate data from across
multiple, seemingly unrelated sources.
• Ability to tolerate very noisy data.
14
Deep Learning Innovation in Computer Vision
Continuous Improvement in
Supervised Learning Methods
2016 Image-Net Results
15
• Context
• Applications
• Conclusions
Agenda
16
• Good fit for AI
– Massive data amounts
– Complex patterns
• Bad fit for AI
– Small data amount
– Limited time for training
– Interpretability required
• Caveats
– Amplification of existing human
biases
– Blind spots/adversarial challenges
- Not unique to deep learning though
AI in applications
Intriguing properties of neural networks, 2014, Szegedy et al.
17
• Many of these use cases already have working
solutions using non-DL Machine Learning Techniques
• Deep Learning is delivering improvement in
performance on complex problems
Source: http://deeplearning4j.org/use_cases
AI Has Many Applications Across Industries
18
Mobile Personalization
• Google Play Store production and other leading digital companies
– Generalize rules (e.g., categories of interest)
– Memorize exceptions (e.g., common pairs)
• Projects in banking, telco, retail
Source: Google
19
Banking Anti-Fraud: Business Drivers
• Goal: fraud detection across products
• Trends
– Evolution of new payment methods
– Mobile payments exploding
– Fraud evolving rapidly, increased sophistication
• Traditional approach is hand-written rules
• Cost, delay and customer impact of false positives
20
• Phased implementation
approach
– Simulated result
– Champion/challenger testing
– Production deployment
• Significant improvements over
traditional rules-based
techniques
• Techniques
– Random Forest
– Recurrent Neural Networks
• Tools: Spark, Hadoop, TensorFlow
Banking Anti-Fraud: Solution Approach
21
• Provide smart assistance to drivers
– Navigation and safety
– Realtime Pricing
– Vehicle comfort
– Parking assistance
• Leverage video and other sensors
• Techniques:
– Object Detection, Segmentation,
Motion Detection, etc.
– Scene Labeling: Convolutional Neural
Network, MultiNet
• Tools: TensorFlow, Darknet
Connected Car Assistance
Real-Time
Streaming
Streaming
Results
Traffic Data
Service
Navigation
Update
Object Detection
Object
Segmentation
Motion Detection
GPU Training
TF Serving
Online
Inference
Model
Update
s
22
• Handwritten check volume is decreasing
however processing checks has many
fixed costs
• Handwriting recognition to reduce
manual processing and fraud
examination resulting in cost savings
• Techniques:
– Convolutional Neural Network
– Image Processing
– Natural Language Processing
• Tools: Spark, Hadoop, TensorFlow
Automated Check Processing
Check Images
To Hadoop
ImageMagick
Processing
Handwriting
Recognition
23
• Market Context
• Applications
• Conclusions
Agenda
24
Challenges
• Technology
– Research-driven, rapid change
– GPU deployment and integration
– Framework immaturity
– Research quality model code
– Complexity
• Point solutions rarely meet bar for enterprise
• Limited access to talent
• Data
– Governance and quality
– Volume, kinds
– Labeling / supervision
• Deployment and integration
25
Focus First on Pilot into Production
Sets up Phase Two: Scale COE, Standardize Capabilities
Investigate
Test
Engineer
SimulateIntegration
Analyze
Data
Go Live
Handover
Validate
Activities: Define business
opportunity, understand data
available, test model
approaches, potentially
generate data
Outcome: Proposed solution
approach
Discovery/Insights
Activities: Architecture
selection, software engineering
of model and simulation
Outcome: Predicted impact of
model
Live Test
Activities: Integration into
live business process
(Champion/Challenger),
analysis, iteration
Outcome: Benefit
measurement, live learnings,
improvement
Production
Activities: Go Live, Analytics
Ops integration, Hand Over
Outcome: System scaled,
application teams and ops
trained and operating
Assessment
Insights
Production
Live Test
Cross-Functional
Teams
Cross-Functional Teams
26
Analytics Ops for Cross-Functional AI Teams
Constant
Monitoring
Test and
Deploy-
ment
A/B Testing
Automated
Training &
Scoring
Application
Integration
27
Our Approach
Teradata Deep Learning CommunityTeradata Labs
Dozens of Experts in Deep Learning,
Image/Audio/Video Processing,
Computer Vision, GPU
200+ Practitioners delivering
Artificial Intelligence Business Value
on Customer Projects
500+ Solution Architects, Business
Consultants and Software Engineers with
knowledge of Artificial Intelligence Tools,
Techniques and Technologies. Deep
expertise in retail and across industries.
Experts
Practitioners
Interest
Industry
Collaborations
Academic
Collaborations
Analytics
Ops
Data
Management
28
Industry Timeline Projection
29
Conclusion
• AI moving beyond labs to production
• A strategy and roadmap is critical
• Pilot now, build capabilities

More Related Content

What's hot

EclipseCon France 2015 - Science Track
EclipseCon France 2015 - Science TrackEclipseCon France 2015 - Science Track
EclipseCon France 2015 - Science Track
Boris Adryan
 
II-SDV 2017: The Next Era: Deep Learning for Biomedical Research
II-SDV 2017: The Next Era: Deep Learning for Biomedical ResearchII-SDV 2017: The Next Era: Deep Learning for Biomedical Research
II-SDV 2017: The Next Era: Deep Learning for Biomedical Research
Dr. Haxel Consult
 
Deploying ML models in the enterprise
Deploying ML models in the enterpriseDeploying ML models in the enterprise
Deploying ML models in the enterprise
doppenhe
 

What's hot (20)

Sparklyr: Big Data enabler for R users
Sparklyr: Big Data enabler for R usersSparklyr: Big Data enabler for R users
Sparklyr: Big Data enabler for R users
 
IBM Middle East Data Science Connect 2016 - Doha, Qatar
IBM Middle East Data Science Connect 2016 - Doha, QatarIBM Middle East Data Science Connect 2016 - Doha, Qatar
IBM Middle East Data Science Connect 2016 - Doha, Qatar
 
EclipseCon France 2015 - Science Track
EclipseCon France 2015 - Science TrackEclipseCon France 2015 - Science Track
EclipseCon France 2015 - Science Track
 
Machine Learning for the Sensored IoT
Machine Learning for the Sensored IoTMachine Learning for the Sensored IoT
Machine Learning for the Sensored IoT
 
TensorFlow London: Cutting edge generative models
TensorFlow London: Cutting edge generative modelsTensorFlow London: Cutting edge generative models
TensorFlow London: Cutting edge generative models
 
DN18 | The Evolution and Future of Graph Technology: Intelligent Systems | Ax...
DN18 | The Evolution and Future of Graph Technology: Intelligent Systems | Ax...DN18 | The Evolution and Future of Graph Technology: Intelligent Systems | Ax...
DN18 | The Evolution and Future of Graph Technology: Intelligent Systems | Ax...
 
Quoc Le at AI Frontiers : Automated Machine Learning
Quoc Le at AI Frontiers : Automated Machine LearningQuoc Le at AI Frontiers : Automated Machine Learning
Quoc Le at AI Frontiers : Automated Machine Learning
 
II-SDV 2017: The Next Era: Deep Learning for Biomedical Research
II-SDV 2017: The Next Era: Deep Learning for Biomedical ResearchII-SDV 2017: The Next Era: Deep Learning for Biomedical Research
II-SDV 2017: The Next Era: Deep Learning for Biomedical Research
 
Scaling AI in production using PyTorch
Scaling AI in production using PyTorchScaling AI in production using PyTorch
Scaling AI in production using PyTorch
 
Love & Innovative technology presented by a technology pioneer and an AI expe...
Love & Innovative technology presented by a technology pioneer and an AI expe...Love & Innovative technology presented by a technology pioneer and an AI expe...
Love & Innovative technology presented by a technology pioneer and an AI expe...
 
SPARK USE CASE- Distributed Reinforcement Learning for Electricity Market Bi...
SPARK USE CASE-  Distributed Reinforcement Learning for Electricity Market Bi...SPARK USE CASE-  Distributed Reinforcement Learning for Electricity Market Bi...
SPARK USE CASE- Distributed Reinforcement Learning for Electricity Market Bi...
 
Deploying ML models in the enterprise
Deploying ML models in the enterpriseDeploying ML models in the enterprise
Deploying ML models in the enterprise
 
Webinar - Patient Readmission Risk
Webinar - Patient Readmission RiskWebinar - Patient Readmission Risk
Webinar - Patient Readmission Risk
 
Deep Learning Use Cases using OpenPOWER systems
Deep Learning Use Cases using OpenPOWER systemsDeep Learning Use Cases using OpenPOWER systems
Deep Learning Use Cases using OpenPOWER systems
 
Skymind & Deeplearning4j: Deep Learning for the Enterprise
Skymind & Deeplearning4j: Deep Learning for the EnterpriseSkymind & Deeplearning4j: Deep Learning for the Enterprise
Skymind & Deeplearning4j: Deep Learning for the Enterprise
 
Zühlke Meetup - Mai 2017
Zühlke Meetup - Mai 2017Zühlke Meetup - Mai 2017
Zühlke Meetup - Mai 2017
 
Jean-François Puget, Distinguished Engineer, Machine Learning and Optimizatio...
Jean-François Puget, Distinguished Engineer, Machine Learning and Optimizatio...Jean-François Puget, Distinguished Engineer, Machine Learning and Optimizatio...
Jean-François Puget, Distinguished Engineer, Machine Learning and Optimizatio...
 
Hoe een efficiënte Machine of Deep Learning backend ontwikkelen?
Hoe een efficiënte Machine of Deep Learning backend ontwikkelen?Hoe een efficiënte Machine of Deep Learning backend ontwikkelen?
Hoe een efficiënte Machine of Deep Learning backend ontwikkelen?
 
Eclipse IoT - Day 0 of thingmonk 2016
Eclipse IoT - Day 0 of  thingmonk 2016Eclipse IoT - Day 0 of  thingmonk 2016
Eclipse IoT - Day 0 of thingmonk 2016
 
Nikhil Garg, Engineering Manager, Quora at MLconf SF 2016
Nikhil Garg, Engineering Manager, Quora at MLconf SF 2016Nikhil Garg, Engineering Manager, Quora at MLconf SF 2016
Nikhil Garg, Engineering Manager, Quora at MLconf SF 2016
 

Viewers also liked

Implementasi Strategi Telkomsel
Implementasi Strategi TelkomselImplementasi Strategi Telkomsel
Implementasi Strategi Telkomsel
Iin Agustina
 
Icc agile analytics overview
Icc agile analytics overviewIcc agile analytics overview
Icc agile analytics overview
Don Jackson
 
NORTHSIDE MEDIA_ 2017 Company Overview
NORTHSIDE MEDIA_ 2017 Company OverviewNORTHSIDE MEDIA_ 2017 Company Overview
NORTHSIDE MEDIA_ 2017 Company Overview
Katherine Christoff
 

Viewers also liked (17)

Implementasi Strategi Telkomsel
Implementasi Strategi TelkomselImplementasi Strategi Telkomsel
Implementasi Strategi Telkomsel
 
Flyte Company Overview 2017
Flyte Company Overview 2017 Flyte Company Overview 2017
Flyte Company Overview 2017
 
November 2017 Corporate Presentation
November 2017 Corporate PresentationNovember 2017 Corporate Presentation
November 2017 Corporate Presentation
 
Business Analytics Overview
Business Analytics OverviewBusiness Analytics Overview
Business Analytics Overview
 
Allstate Protection Growth Strategy
Allstate Protection Growth StrategyAllstate Protection Growth Strategy
Allstate Protection Growth Strategy
 
Revolution Analytics - Presentation at Hortonworks Booth - Strata 2014
Revolution Analytics - Presentation at Hortonworks Booth - Strata 2014Revolution Analytics - Presentation at Hortonworks Booth - Strata 2014
Revolution Analytics - Presentation at Hortonworks Booth - Strata 2014
 
NLB Analytics Overview
NLB Analytics OverviewNLB Analytics Overview
NLB Analytics Overview
 
Delta Galil Overview - 2017
Delta Galil Overview - 2017Delta Galil Overview - 2017
Delta Galil Overview - 2017
 
August 2017 digital realty company overview
August 2017 digital realty company overview August 2017 digital realty company overview
August 2017 digital realty company overview
 
Compass Company Overview Q2 2017
Compass Company Overview Q2 2017Compass Company Overview Q2 2017
Compass Company Overview Q2 2017
 
Icc agile analytics overview
Icc agile analytics overviewIcc agile analytics overview
Icc agile analytics overview
 
Analytics, Business Intelligence, and Data Science - What's the Progression?
Analytics, Business Intelligence, and Data Science - What's the Progression?Analytics, Business Intelligence, and Data Science - What's the Progression?
Analytics, Business Intelligence, and Data Science - What's the Progression?
 
Oracle analytics cloud overview feb 2017
Oracle analytics cloud overview   feb 2017Oracle analytics cloud overview   feb 2017
Oracle analytics cloud overview feb 2017
 
NORTHSIDE MEDIA_ 2017 Company Overview
NORTHSIDE MEDIA_ 2017 Company OverviewNORTHSIDE MEDIA_ 2017 Company Overview
NORTHSIDE MEDIA_ 2017 Company Overview
 
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for AnalyticsVerizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
 
Technology Vision 2017 - Overview
Technology Vision 2017 - OverviewTechnology Vision 2017 - Overview
Technology Vision 2017 - Overview
 
Digital in 2017 Global Overview
Digital in 2017 Global OverviewDigital in 2017 Global Overview
Digital in 2017 Global Overview
 

Similar to Think Big | Enterprise Artificial Intelligence

Connecta Event: Big Query och dataanalys med Google Cloud Platform
Connecta Event: Big Query och dataanalys med Google Cloud PlatformConnecta Event: Big Query och dataanalys med Google Cloud Platform
Connecta Event: Big Query och dataanalys med Google Cloud Platform
ConnectaDigital
 
Harnessing Big Data_UCLA
Harnessing Big Data_UCLAHarnessing Big Data_UCLA
Harnessing Big Data_UCLA
Paul Barsch
 
Big-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-KoenigBig-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-Koenig
Manish Chopra
 

Similar to Think Big | Enterprise Artificial Intelligence (20)

Knowledge Discovery
Knowledge DiscoveryKnowledge Discovery
Knowledge Discovery
 
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
 
AI in the Enterprise
AI in the EnterpriseAI in the Enterprise
AI in the Enterprise
 
Top Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama SoftwareTop Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama Software
 
Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-shared
 
AI in the Enterprise at Scale
AI in the Enterprise at ScaleAI in the Enterprise at Scale
AI in the Enterprise at Scale
 
Scaling Training Data for AI Applications
Scaling Training Data for AI ApplicationsScaling Training Data for AI Applications
Scaling Training Data for AI Applications
 
Connecta Event: Big Query och dataanalys med Google Cloud Platform
Connecta Event: Big Query och dataanalys med Google Cloud PlatformConnecta Event: Big Query och dataanalys med Google Cloud Platform
Connecta Event: Big Query och dataanalys med Google Cloud Platform
 
Spark: Building an application from Start to Finish
Spark: Building an application from Start to FinishSpark: Building an application from Start to Finish
Spark: Building an application from Start to Finish
 
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 ...
 
Bitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FSBitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FS
 
Big data session five ( a )f
Big data session five ( a )fBig data session five ( a )f
Big data session five ( a )f
 
How Celtra Optimizes its Advertising Platform with Databricks
How Celtra Optimizes its Advertising Platformwith DatabricksHow Celtra Optimizes its Advertising Platformwith Databricks
How Celtra Optimizes its Advertising Platform with Databricks
 
Advanced Analytics and Data Science Expertise
Advanced Analytics and Data Science ExpertiseAdvanced Analytics and Data Science Expertise
Advanced Analytics and Data Science Expertise
 
Just ask Watson Seminar
Just ask Watson SeminarJust ask Watson Seminar
Just ask Watson Seminar
 
Hadoop and SAP BI
Hadoop and SAP BI   Hadoop and SAP BI
Hadoop and SAP BI
 
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with GraphsNeo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
 
Harnessing Big Data_UCLA
Harnessing Big Data_UCLAHarnessing Big Data_UCLA
Harnessing Big Data_UCLA
 
Big-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-KoenigBig-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-Koenig
 
Makine Öğrenmesi, Yapay Zeka ve Veri Bilimi Süreçlerinin Otomatikleştirilmesi...
Makine Öğrenmesi, Yapay Zeka ve Veri Bilimi Süreçlerinin Otomatikleştirilmesi...Makine Öğrenmesi, Yapay Zeka ve Veri Bilimi Süreçlerinin Otomatikleştirilmesi...
Makine Öğrenmesi, Yapay Zeka ve Veri Bilimi Süreçlerinin Otomatikleştirilmesi...
 

More from Data Science Milan

MLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML InfrastructureMLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
Data Science Milan
 
Time Series Classification with Deep Learning | Marco Del Pra
Time Series Classification with Deep Learning | Marco Del PraTime Series Classification with Deep Learning | Marco Del Pra
Time Series Classification with Deep Learning | Marco Del Pra
Data Science Milan
 
Audience projection of target consumers over multiple domains a ner and baye...
Audience projection of target consumers over multiple domains  a ner and baye...Audience projection of target consumers over multiple domains  a ner and baye...
Audience projection of target consumers over multiple domains a ner and baye...
Data Science Milan
 
Continual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
Continual/Lifelong Learning with Deep Architectures, Vincenzo LomonacoContinual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
Continual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
Data Science Milan
 
3D Point Cloud analysis using Deep Learning
3D Point Cloud analysis using Deep Learning3D Point Cloud analysis using Deep Learning
3D Point Cloud analysis using Deep Learning
Data Science Milan
 
Deep time-to-failure: predicting failures, churns and customer lifetime with ...
Deep time-to-failure: predicting failures, churns and customer lifetime with ...Deep time-to-failure: predicting failures, churns and customer lifetime with ...
Deep time-to-failure: predicting failures, churns and customer lifetime with ...
Data Science Milan
 
Pricing Optimization: Close-out, Online and Renewal strategies, Data Reply
Pricing Optimization: Close-out, Online and Renewal strategies, Data ReplyPricing Optimization: Close-out, Online and Renewal strategies, Data Reply
Pricing Optimization: Close-out, Online and Renewal strategies, Data Reply
Data Science Milan
 

More from Data Science Milan (20)

ML & Graph algorithms to prevent financial crime in digital payments
ML & Graph  algorithms to prevent  financial crime in  digital paymentsML & Graph  algorithms to prevent  financial crime in  digital payments
ML & Graph algorithms to prevent financial crime in digital payments
 
How to use the Economic Complexity Index to guide innovation plans
How to use the Economic Complexity Index to guide innovation plansHow to use the Economic Complexity Index to guide innovation plans
How to use the Economic Complexity Index to guide innovation plans
 
Robustness Metrics for ML Models based on Deep Learning Methods
Robustness Metrics for ML Models based on Deep Learning MethodsRobustness Metrics for ML Models based on Deep Learning Methods
Robustness Metrics for ML Models based on Deep Learning Methods
 
"You don't need a bigger boat": serverless MLOps for reasonable companies
"You don't need a bigger boat": serverless MLOps for reasonable companies"You don't need a bigger boat": serverless MLOps for reasonable companies
"You don't need a bigger boat": serverless MLOps for reasonable companies
 
Question generation using Natural Language Processing by QuestGen.AI
Question generation using Natural Language Processing by QuestGen.AIQuestion generation using Natural Language Processing by QuestGen.AI
Question generation using Natural Language Processing by QuestGen.AI
 
Speed up data preparation for ML pipelines on AWS
Speed up data preparation for ML pipelines on AWSSpeed up data preparation for ML pipelines on AWS
Speed up data preparation for ML pipelines on AWS
 
Serverless machine learning architectures at Helixa
Serverless machine learning architectures at HelixaServerless machine learning architectures at Helixa
Serverless machine learning architectures at Helixa
 
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML InfrastructureMLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
 
Reinforcement Learning Overview | Marco Del Pra
Reinforcement Learning Overview | Marco Del PraReinforcement Learning Overview | Marco Del Pra
Reinforcement Learning Overview | Marco Del Pra
 
Time Series Classification with Deep Learning | Marco Del Pra
Time Series Classification with Deep Learning | Marco Del PraTime Series Classification with Deep Learning | Marco Del Pra
Time Series Classification with Deep Learning | Marco Del Pra
 
Ludwig: A code-free deep learning toolbox | Piero Molino, Uber AI
Ludwig: A code-free deep learning toolbox | Piero Molino, Uber AILudwig: A code-free deep learning toolbox | Piero Molino, Uber AI
Ludwig: A code-free deep learning toolbox | Piero Molino, Uber AI
 
Audience projection of target consumers over multiple domains a ner and baye...
Audience projection of target consumers over multiple domains  a ner and baye...Audience projection of target consumers over multiple domains  a ner and baye...
Audience projection of target consumers over multiple domains a ner and baye...
 
Weak supervised learning - Kristina Khvatova
Weak supervised learning - Kristina KhvatovaWeak supervised learning - Kristina Khvatova
Weak supervised learning - Kristina Khvatova
 
GANs beyond nice pictures: real value of data generation, Alex Honchar
GANs beyond nice pictures: real value of data generation, Alex HoncharGANs beyond nice pictures: real value of data generation, Alex Honchar
GANs beyond nice pictures: real value of data generation, Alex Honchar
 
Continual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
Continual/Lifelong Learning with Deep Architectures, Vincenzo LomonacoContinual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
Continual/Lifelong Learning with Deep Architectures, Vincenzo Lomonaco
 
3D Point Cloud analysis using Deep Learning
3D Point Cloud analysis using Deep Learning3D Point Cloud analysis using Deep Learning
3D Point Cloud analysis using Deep Learning
 
Deep time-to-failure: predicting failures, churns and customer lifetime with ...
Deep time-to-failure: predicting failures, churns and customer lifetime with ...Deep time-to-failure: predicting failures, churns and customer lifetime with ...
Deep time-to-failure: predicting failures, churns and customer lifetime with ...
 
50 Shades of Text - Leveraging Natural Language Processing (NLP), Alessandro ...
50 Shades of Text - Leveraging Natural Language Processing (NLP), Alessandro ...50 Shades of Text - Leveraging Natural Language Processing (NLP), Alessandro ...
50 Shades of Text - Leveraging Natural Language Processing (NLP), Alessandro ...
 
Pricing Optimization: Close-out, Online and Renewal strategies, Data Reply
Pricing Optimization: Close-out, Online and Renewal strategies, Data ReplyPricing Optimization: Close-out, Online and Renewal strategies, Data Reply
Pricing Optimization: Close-out, Online and Renewal strategies, Data Reply
 
A view of graph data usage by Cerved
A view of graph data usage by CervedA view of graph data usage by Cerved
A view of graph data usage by Cerved
 

Recently uploaded

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Recently uploaded (20)

Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
 
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
 
Decarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational PerformanceDecarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational Performance
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data Science
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Navigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern EnterpriseNavigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern Enterprise
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Choreo: Empowering the Future of Enterprise Software Engineering
Choreo: Empowering the Future of Enterprise Software EngineeringChoreo: Empowering the Future of Enterprise Software Engineering
Choreo: Empowering the Future of Enterprise Software Engineering
 
JavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate GuideJavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate Guide
 
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
 
Quantum Leap in Next-Generation Computing
Quantum Leap in Next-Generation ComputingQuantum Leap in Next-Generation Computing
Quantum Leap in Next-Generation Computing
 
API Governance and Monetization - The evolution of API governance
API Governance and Monetization -  The evolution of API governanceAPI Governance and Monetization -  The evolution of API governance
API Governance and Monetization - The evolution of API governance
 

Think Big | Enterprise Artificial Intelligence

  • 2. 2 2 Think Big Overview Kafka © 2017 Think Big, A Teradata Company 1st Big Data only service provider • Founded in 2010 - industry thought leader • Technology agnostic with open source integration expertise • Full spectrum consulting, data engineering, data sciences & support • 150+ successful projects & 100+ clients • Global delivery model to balance needs (on-site, near-shore, off-shore) 300 1000 global professionals • Fixed fee option experience for predictable risk and spend
  • 3. 3 3 Think Big Velocity Services Portfolio Think Big, Start Smart, Scale Fast Training & Mentoring Architecture & Roadmap Data Lake Analytics OpsData Science Managed Services RACE © 2017 Think Big, A Teradata Company
  • 4. 4 © 2017 Think Big, a Teradata Company 4 Foundation for Enterprise Analytics Artificial Intelligence Analytics Ops Industrial Data Management
  • 5. 5 © 2017 Think Big, a Teradata Company 5 Join us Work with us!!! https://www.thinkbiganalytics.com/big-data-careers/
  • 6. © 2017 Think Big, a Teradata Company 6 Think Big — Start Smart — Scale Fast
  • 7. 7 © 2015 Teradata Applications and Approaches © 2017 Teradata ​Enterprise Artificial Intelligence Laura Frølich Data Scientist
  • 8. 8 Analytics Evolution Descriptive Predictive Prescriptive What is happening?REPORTING ANALYZING PREDICTING MACHINE LEARNING ARTIFICIAL INTELLIGENCE Is it real? Why is it happening? What are the hidden patterns? What will happen next? Self-learning systems with linear regression. Deep learning. OPERATIONALIZING What is happening right now? ACTIVATING Make it happen with automation. 2010s 2000s 1990s
  • 9. 9 The Resurgence of Artificial Intelligence • Significant advances in hardware capability • Rapid progress in research and applications using neural networks • Significant technology investments • Increasing amounts of data By 2019, deep learning will provide best- in-class performance for demand, fraud, and failure prediction. - Gartner
  • 10. 10 Companies mentioning “Artificial Intelligence” Rising Rapidly The Resurgence of AI
  • 11. 11 “ By 2020 AI will be a top five investment priority for more than 30% of CIOs. —Gartner BI Summit, February, 2017 “The Resurgence of AI
  • 12. 12 The Resurgence of AI 7 November 2016 12 October 2014
  • 13. 13 Deep Learning How is it different? • Multiple layers in neural network with intermediate data representations to facilitate dimensional reduction. • Interpret non-linear relationships in the data. • Derive patterns from data with very high dimensionality. Why do we care? • Ability to create value with little or no domain knowledge required. • Ability to incorporate data from across multiple, seemingly unrelated sources. • Ability to tolerate very noisy data.
  • 14. 14 Deep Learning Innovation in Computer Vision Continuous Improvement in Supervised Learning Methods 2016 Image-Net Results
  • 16. 16 • Good fit for AI – Massive data amounts – Complex patterns • Bad fit for AI – Small data amount – Limited time for training – Interpretability required • Caveats – Amplification of existing human biases – Blind spots/adversarial challenges - Not unique to deep learning though AI in applications Intriguing properties of neural networks, 2014, Szegedy et al.
  • 17. 17 • Many of these use cases already have working solutions using non-DL Machine Learning Techniques • Deep Learning is delivering improvement in performance on complex problems Source: http://deeplearning4j.org/use_cases AI Has Many Applications Across Industries
  • 18. 18 Mobile Personalization • Google Play Store production and other leading digital companies – Generalize rules (e.g., categories of interest) – Memorize exceptions (e.g., common pairs) • Projects in banking, telco, retail Source: Google
  • 19. 19 Banking Anti-Fraud: Business Drivers • Goal: fraud detection across products • Trends – Evolution of new payment methods – Mobile payments exploding – Fraud evolving rapidly, increased sophistication • Traditional approach is hand-written rules • Cost, delay and customer impact of false positives
  • 20. 20 • Phased implementation approach – Simulated result – Champion/challenger testing – Production deployment • Significant improvements over traditional rules-based techniques • Techniques – Random Forest – Recurrent Neural Networks • Tools: Spark, Hadoop, TensorFlow Banking Anti-Fraud: Solution Approach
  • 21. 21 • Provide smart assistance to drivers – Navigation and safety – Realtime Pricing – Vehicle comfort – Parking assistance • Leverage video and other sensors • Techniques: – Object Detection, Segmentation, Motion Detection, etc. – Scene Labeling: Convolutional Neural Network, MultiNet • Tools: TensorFlow, Darknet Connected Car Assistance Real-Time Streaming Streaming Results Traffic Data Service Navigation Update Object Detection Object Segmentation Motion Detection GPU Training TF Serving Online Inference Model Update s
  • 22. 22 • Handwritten check volume is decreasing however processing checks has many fixed costs • Handwriting recognition to reduce manual processing and fraud examination resulting in cost savings • Techniques: – Convolutional Neural Network – Image Processing – Natural Language Processing • Tools: Spark, Hadoop, TensorFlow Automated Check Processing Check Images To Hadoop ImageMagick Processing Handwriting Recognition
  • 23. 23 • Market Context • Applications • Conclusions Agenda
  • 24. 24 Challenges • Technology – Research-driven, rapid change – GPU deployment and integration – Framework immaturity – Research quality model code – Complexity • Point solutions rarely meet bar for enterprise • Limited access to talent • Data – Governance and quality – Volume, kinds – Labeling / supervision • Deployment and integration
  • 25. 25 Focus First on Pilot into Production Sets up Phase Two: Scale COE, Standardize Capabilities Investigate Test Engineer SimulateIntegration Analyze Data Go Live Handover Validate Activities: Define business opportunity, understand data available, test model approaches, potentially generate data Outcome: Proposed solution approach Discovery/Insights Activities: Architecture selection, software engineering of model and simulation Outcome: Predicted impact of model Live Test Activities: Integration into live business process (Champion/Challenger), analysis, iteration Outcome: Benefit measurement, live learnings, improvement Production Activities: Go Live, Analytics Ops integration, Hand Over Outcome: System scaled, application teams and ops trained and operating Assessment Insights Production Live Test Cross-Functional Teams Cross-Functional Teams
  • 26. 26 Analytics Ops for Cross-Functional AI Teams Constant Monitoring Test and Deploy- ment A/B Testing Automated Training & Scoring Application Integration
  • 27. 27 Our Approach Teradata Deep Learning CommunityTeradata Labs Dozens of Experts in Deep Learning, Image/Audio/Video Processing, Computer Vision, GPU 200+ Practitioners delivering Artificial Intelligence Business Value on Customer Projects 500+ Solution Architects, Business Consultants and Software Engineers with knowledge of Artificial Intelligence Tools, Techniques and Technologies. Deep expertise in retail and across industries. Experts Practitioners Interest Industry Collaborations Academic Collaborations Analytics Ops Data Management
  • 29. 29 Conclusion • AI moving beyond labs to production • A strategy and roadmap is critical • Pilot now, build capabilities