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ANALYTICS FOR IOT: MAKING SENSE OF DATA FROM SENSORS
Muralidhar Somisetty, CTO, Innohabit TechnologiesFeb 17, 2017 IIoT Course @ IISc CCE
Our Vision & Mission: “Innovation as Habit”
We Innovate by building Compelling Products.
We Build Other’s Innovations with our Technical Competencies and Cutting-Edge Solutions.
We Offer Business Services by setting up and operating businesses.
We Trigger Innovations through Start-up Mentoring programs.
Making Ideas Actionable
A Contextual Intelligence Platform with
Machine Learning Analytics to offer
solutions for IoT, Retail and Enterprises.
A SaaS Product for Product Leaders.
India’s First Product Management
Software in the market.
(Cisco)
Predictive
Network Health
Analytics
(Cisco)
Smart Waste
Management
with IoT/Analytics.
Muralidhar Somisetty
Technologist, Entrepreneur, Product Evangelist, Mentor and Certified Yoga Instructor.
Current (Work): CTO, Innohabit Technologies. Member, IEEE Computer Society, Bangalore.
Past (Work) : Senior Engineering and Product Management Leader at Cisco Systems, India.
Education: B.Tech,ECE (NIT @ Warangal) & M.S Computer Science (University of Illinois @ Urbana Champaign)
Experience: Telecom, OSS, SaaS, Network Analytics, Machine Learning(ML) & Internet-of-Things (IoT).
Our Company Vision and Mission
We Build
Amazing Products
Innovative
We Setup
Businesses
Build, Operate and Transfer
We Build
Your Innovations
Partner for Solutions
We Trigger
Innovations
Mentoring Innovators
“Innovation is our Habit”
IMAGINE: WHAT IF THINGS START TO THINK
5
http://cdn2.hubspot.net/hubfs/338908/images/Blog_Pictures/Humor_in_IoT.jpg
What is Human Perception of Intelligent Things?
Internet of ThingsDigital Human Artificial Intelligence
A Boon?
A Threat?
An Opportunity?
Is Artificial Intelligence an
Angel or Demon?
Ethical AI : Effort on to make AI an Angel.
Source: OpenAI.com
Let us step back and go through the journey ….
What is Big-Data?
What is Data Analytics?
How BI, Analytics & AI are related to each other?
What is the Value of Analytics in Industrial IoT?
What is the role of Analytics in IoT?
“Welcome to the Internet of Customers. Behind every app, every device, and every connection, is a
customer. Billions of them. And each and every one is speeding toward the future.” Salesforce.com
BIG-DATA
Big data is the term for a collection of data sets so large and complex that it
becomes difficult to process using on-hand database management tools or
traditional data processing applications.
Social MediaMobile Internet of Things /
Sensors
Video and Media
Web
Cloud
Data Analytics for IoT
Volume (Scale)
13
Earthscope:
67 terabytes of data
From 0.8 zettabytes to 35.2 Zettabytes of data
LHC: 15 petabytes of data
Imagine the volume of data from 104
satellites launched by ISRO…
Data Analytics for IoT
HOW BIG-DATA IS DIFFERENT FROM TRADITIONAL DATABASE?
• Structured /Relational Data
• Cost goes up with data size/growth
• Well defined models & schemas
• ERP, CRM, SCM, BI, App data
Traditional data management
Big Data
• Unstructured data
• Scaling at low costs
• Flexibility and complex analytics
• Distributed processing
WHAT IS DATA ANALYTICS?
Data Analytics is the science (and art!) of applying statistical techniques to
large data sets to obtain actionable insights for making smart decisions.
It is the process to uncover hidden patterns, unknown correlations, trends,
and any other useful business information
It is Business Intelligence on steroids.
How BI, Analytics, Data Science are related?
Value (Tiers) of Data Analytics
“It is the intelligence of machines and the branch of computer science that aims to create it. It
is the study and design of intelligent agents, where an intelligent agent is a system that
perceives it environment and takes actions to maximize the chances of success.”
Branches of Artificial Intelligence
Machine Learning
A subfield of computer science (CS) and artificial intelligence (AI) that deals with the construction and
study of systems that can learn from data, rather than follow only explicitly programmed instructions.”
Data Analytics for IoT
14/05/2016
Startup Product Management
23
Man Vs Machine
BIG-DATA VENDOR LANDSCAPE
Structured
Commercial
Open source
Unstructured
(RDBMS)
(NoSQL DB)
IOT  ANALYTICS TECHNOLOGY/VENDOR CHOICES
CRM
Retaile
r
System
s
Data
Sources
Data
Integration
Data
Storage
Data
Analytics
Data
Visualization/
Insights
POS Data NFC Tags
IoT
Sensor
sBrand Partners Bluetooth
Beacons
Wi-Fi
Public
Data
Customers
Data Connectors ETL JobsAPIs Streaming Data Queues
NoSQL Big-Data
Traditional Data warehouse
(Like Oracle, Teradata)
Streaming, Analytics Engine Machine LearningAnalytical Models Deep Learning
Visualization Tools
Dwell-Time Analysis
FootFall Demographics
Campaign Effectiveness
A Typical Big-Data Analytics Technology Stack
UNDER-THE-HOOD OF BIG-DATA ANALYTICS
Data Analytics for IoT
ML Algorithms Mind Map:
When to choose what?
Source: http://scikit-learn.org/
14/05/2016
Startup Product Management
30
Tools and Frameworks for Machine/Deep Learning
Analytics in IoT
DIVERSE APPLICATIONS
Source: IoT World Forum (IBM, Cisco)
IOT Reference Model
Analogy between Human Body and Cognitive IoT
Why is Analytics important in IoT context?
Making sense from endless sea of data from
sensors is humanly impossible.
 (Automate) Decision Making
 Operations Efficiency
 Preventive Maintenance
 Supply Chain Optimization
 Competitive Edge
 OPEX Savings
 …
 …
When AI meets IoT
Artificial Intelligence provides us the framework and tools to go beyond trivial
real-time decision and automation use cases for IoT.
Home Automation: Autonomous Vacuum Cleaners
• Learns Home Layout and Remembers It.
• Adapts to Different Surfaces or New Items
• Improvises on movement pattern for efficiency
• Knows when to recharge and automatically docks itself
• Smart IoT Device controlled via remote Mobile App
• Piezoelectric , Optical Onboard Sensors
• Employs Machine Learning to Adapt and Improvise.
Machine Learning in Action
Smart Retail: Brick is the IoT AND Mortar is Data Analytics
Source: Cisco IoT Retal White Paper
Autonomous Cars
• Computer Vision / Neural Networks
• Deep Learning in Action
Smart Transportation
Analytics for Industrial IoT
Source: McKinsey Industry 4.0
AI to IA: Value of Data Analytics in Industrial IoT
In the industrial space, there is a great deal of interest in using analytics to optimize asset maintenance,
production operations, supply chain, product design, field service, and other areas.
Top Analytics Applications in Industrial IoT
Top-3
Source: https://iot-analytics.com/product/industrial-analytics-report-201617/
Benefits of Analytics Adoption in Industrial IoT
Top-3
Source: https://iot-analytics.com/product/industrial-analytics-report-201617/
“The cars are going around the track with thousands of sensors and every time it goes past the pit
wall they download a load of data, and the race engineers tell the driver how to drive in
response to that data. That’s what we’ve got to do to our factories, we need to have that pit
wall somewhere to make sure that your machinery, your systems are working better than the
next guy’s.”
- Ken Young, Manufacturing Technology Centre, UK
THANK YOU Thoughts/Questions Welcome
muralidhars@innohabit.com@muralidhar9

More Related Content

Data Analytics for IoT

  • 1. ANALYTICS FOR IOT: MAKING SENSE OF DATA FROM SENSORS Muralidhar Somisetty, CTO, Innohabit TechnologiesFeb 17, 2017 IIoT Course @ IISc CCE
  • 2. Our Vision & Mission: “Innovation as Habit” We Innovate by building Compelling Products. We Build Other’s Innovations with our Technical Competencies and Cutting-Edge Solutions. We Offer Business Services by setting up and operating businesses. We Trigger Innovations through Start-up Mentoring programs. Making Ideas Actionable A Contextual Intelligence Platform with Machine Learning Analytics to offer solutions for IoT, Retail and Enterprises. A SaaS Product for Product Leaders. India’s First Product Management Software in the market. (Cisco) Predictive Network Health Analytics (Cisco) Smart Waste Management with IoT/Analytics. Muralidhar Somisetty Technologist, Entrepreneur, Product Evangelist, Mentor and Certified Yoga Instructor. Current (Work): CTO, Innohabit Technologies. Member, IEEE Computer Society, Bangalore. Past (Work) : Senior Engineering and Product Management Leader at Cisco Systems, India. Education: B.Tech,ECE (NIT @ Warangal) & M.S Computer Science (University of Illinois @ Urbana Champaign) Experience: Telecom, OSS, SaaS, Network Analytics, Machine Learning(ML) & Internet-of-Things (IoT).
  • 3. Our Company Vision and Mission We Build Amazing Products Innovative We Setup Businesses Build, Operate and Transfer We Build Your Innovations Partner for Solutions We Trigger Innovations Mentoring Innovators “Innovation is our Habit”
  • 4. IMAGINE: WHAT IF THINGS START TO THINK
  • 6. What is Human Perception of Intelligent Things? Internet of ThingsDigital Human Artificial Intelligence A Boon? A Threat? An Opportunity?
  • 7. Is Artificial Intelligence an Angel or Demon?
  • 8. Ethical AI : Effort on to make AI an Angel. Source: OpenAI.com
  • 9. Let us step back and go through the journey …. What is Big-Data? What is Data Analytics? How BI, Analytics & AI are related to each other? What is the Value of Analytics in Industrial IoT? What is the role of Analytics in IoT?
  • 10. “Welcome to the Internet of Customers. Behind every app, every device, and every connection, is a customer. Billions of them. And each and every one is speeding toward the future.” Salesforce.com
  • 11. BIG-DATA Big data is the term for a collection of data sets so large and complex that it becomes difficult to process using on-hand database management tools or traditional data processing applications. Social MediaMobile Internet of Things / Sensors Video and Media Web Cloud
  • 13. Volume (Scale) 13 Earthscope: 67 terabytes of data From 0.8 zettabytes to 35.2 Zettabytes of data LHC: 15 petabytes of data Imagine the volume of data from 104 satellites launched by ISRO…
  • 15. HOW BIG-DATA IS DIFFERENT FROM TRADITIONAL DATABASE? • Structured /Relational Data • Cost goes up with data size/growth • Well defined models & schemas • ERP, CRM, SCM, BI, App data Traditional data management Big Data • Unstructured data • Scaling at low costs • Flexibility and complex analytics • Distributed processing
  • 16. WHAT IS DATA ANALYTICS? Data Analytics is the science (and art!) of applying statistical techniques to large data sets to obtain actionable insights for making smart decisions. It is the process to uncover hidden patterns, unknown correlations, trends, and any other useful business information It is Business Intelligence on steroids.
  • 17. How BI, Analytics, Data Science are related?
  • 18. Value (Tiers) of Data Analytics
  • 19. “It is the intelligence of machines and the branch of computer science that aims to create it. It is the study and design of intelligent agents, where an intelligent agent is a system that perceives it environment and takes actions to maximize the chances of success.”
  • 20. Branches of Artificial Intelligence
  • 21. Machine Learning A subfield of computer science (CS) and artificial intelligence (AI) that deals with the construction and study of systems that can learn from data, rather than follow only explicitly programmed instructions.”
  • 24. BIG-DATA VENDOR LANDSCAPE Structured Commercial Open source Unstructured (RDBMS) (NoSQL DB)
  • 25. IOT  ANALYTICS TECHNOLOGY/VENDOR CHOICES
  • 26. CRM Retaile r System s Data Sources Data Integration Data Storage Data Analytics Data Visualization/ Insights POS Data NFC Tags IoT Sensor sBrand Partners Bluetooth Beacons Wi-Fi Public Data Customers Data Connectors ETL JobsAPIs Streaming Data Queues NoSQL Big-Data Traditional Data warehouse (Like Oracle, Teradata) Streaming, Analytics Engine Machine LearningAnalytical Models Deep Learning Visualization Tools Dwell-Time Analysis FootFall Demographics Campaign Effectiveness A Typical Big-Data Analytics Technology Stack
  • 29. ML Algorithms Mind Map: When to choose what? Source: http://scikit-learn.org/
  • 30. 14/05/2016 Startup Product Management 30 Tools and Frameworks for Machine/Deep Learning
  • 31. Analytics in IoT DIVERSE APPLICATIONS
  • 32. Source: IoT World Forum (IBM, Cisco) IOT Reference Model
  • 33. Analogy between Human Body and Cognitive IoT
  • 34. Why is Analytics important in IoT context? Making sense from endless sea of data from sensors is humanly impossible.  (Automate) Decision Making  Operations Efficiency  Preventive Maintenance  Supply Chain Optimization  Competitive Edge  OPEX Savings  …  …
  • 35. When AI meets IoT Artificial Intelligence provides us the framework and tools to go beyond trivial real-time decision and automation use cases for IoT.
  • 36. Home Automation: Autonomous Vacuum Cleaners • Learns Home Layout and Remembers It. • Adapts to Different Surfaces or New Items • Improvises on movement pattern for efficiency • Knows when to recharge and automatically docks itself • Smart IoT Device controlled via remote Mobile App • Piezoelectric , Optical Onboard Sensors • Employs Machine Learning to Adapt and Improvise. Machine Learning in Action
  • 37. Smart Retail: Brick is the IoT AND Mortar is Data Analytics Source: Cisco IoT Retal White Paper
  • 38. Autonomous Cars • Computer Vision / Neural Networks • Deep Learning in Action Smart Transportation
  • 41. AI to IA: Value of Data Analytics in Industrial IoT In the industrial space, there is a great deal of interest in using analytics to optimize asset maintenance, production operations, supply chain, product design, field service, and other areas.
  • 42. Top Analytics Applications in Industrial IoT Top-3 Source: https://iot-analytics.com/product/industrial-analytics-report-201617/
  • 43. Benefits of Analytics Adoption in Industrial IoT Top-3 Source: https://iot-analytics.com/product/industrial-analytics-report-201617/
  • 44. “The cars are going around the track with thousands of sensors and every time it goes past the pit wall they download a load of data, and the race engineers tell the driver how to drive in response to that data. That’s what we’ve got to do to our factories, we need to have that pit wall somewhere to make sure that your machinery, your systems are working better than the next guy’s.” - Ken Young, Manufacturing Technology Centre, UK
  • 45. THANK YOU Thoughts/Questions Welcome muralidhars@innohabit.com@muralidhar9