SlideShare a Scribd company logo
Incedo Inc
Building the Future of Monitoring with Artificial Intelligence
Confidential and Proprietary - Incedo Inc
Our Second
Acquisition–
increased focus on
specialized skills
Launched Incubation
Lab for clients
• Specialized Product Engineering Services and Data
& Analytics Competency
• Expertise in Financial Services, Life Science and
Communication Engineering
• Focused on Emerging Technologies and Innovation -
in the context of our clients’ businesses
• Bay Area Headquartered - 1500 employees across
North America, South Africa and India (Gurgaon,
Bangalore)
• End-to-end capabilities across Application Services,
Infrastructure and Operations
• Agile, responsive engagement models
0
200
400
600
800
1000
1200
1400
1600
2011 2012 2013 2014 2015 2016
Employees
Incedo Spun out of a
diversified $4B Conglomerate
Started US & South Africa
Operations
Started Life Sciences
and Data & Analytics
practice
• 35+ clients
• Growth of 75%+ y-o-y
Our First Acquisition - grew
Product Engineering Services
Started work with US based
Tier 1bank
We Help Businesses Excel And Solve Complex Problems With Technology
Incedo Overview
2
Success is proven by growth of more than 671% since its inception in 2011
Incedo in the list of Top 10 Emerging Analytics Start-ups for the year 2016
Our Offices
•North America
•Santa Clara, New Jersey & New York
•South Africa
•Cape Town & Johannesburg
•Asia-Pacific (India)
•Delhi, Bangalore, Chennai & Mumbai
Confidential and Proprietary - Incedo Inc
We are building a special technology firm and the world has begun to take
note
Incedo is an INC 5000 awardee – fastest
growing private companies in North America
Incedo recognized by Dataquest for 85% growth
Incedo is one of Top 10 Emerging Analytics
Start-ups for the year 2016
Incedo is one of 20 Most Promising Tech Service
Providers
by CIOReview
Incedo ranks #16 on CRN’s Fast Growth
150
3
Confidential and Proprietary - Incedo Inc
Feasibility Go-No go
Pilot Project/ Joint
Investment
Full Scale
Development
What We Do How We Do it
Frameworks
Proof of Concept
Accelerators
Follow Technologies
Track Trends
Rapid Prototyping
3D Visualization Framework on Mobile devices Machine Learning for Edge DevicesMaster Data Management Solution
Accelerators
Accelerators/ Frameworks
IoT Incubation Labs at Incedo
We Partner With Our Clients to Build Smarter Solutions for Them
4 Confidential and Proprietary - Incedo Inc
AI & NLP Solution – Voice Based BoT
Framework
Incubation LabsIoT & Connected Devices AI, NLP, Machine Learning Mobility NFV & Cloud
Virtualization
IOT EVOLUTION AND FUTURE TRENDS
Incedo’s Perspective of IoT Market
Confidential and Proprietary - Incedo Inc
5
Internet has come a long way since 1980s but now it has
entered into the most exciting phase
6
Confidential and Proprietary - Incedo Inc
Driven by proliferation of connected devices & sensors
Monitoring and
Control
Multi-transport and
Multi-function Devices, Sensors
High Speed Wireless – 4G, 5G
Delivering Experience to
Consumers
Connectivity and Mobility
Converged, Secured and
Collaborative Operations
Digitized
Connected
Services
Enabled
7
Confidential and Proprietary - Incedo Inc
Number of people vs number of connected “things”
By the end of this decade 212 billion “things” are going to be
connected to the internet
2003
0.1
2010
1.8
2020
30
Consumer
60%
Industrial
40%
2015
3.5
Connected Devices Per Person
We are here, 99.9% of things
are still unconnected
8
Confidential and Proprietary - Incedo Inc
2020 View : Human Centric IOT - “4th Wave, 1.5T+Users/Things”
Enabling Man-Machine Collaboration led by Robotics & Artificial Intelligence
Open Innovative
eco system
Sensors
Devices
Machines
System
of
Engagement
System
of
Records
Benefit
To
Humans
Human
Empowerment
Machine
Intelligence
Connected
Infrastructure
9
Confidential and Proprietary - Incedo Inc
IoT has many dimensions… and is a Journey…
10
Emerging Industrial IoTIoT Foundation
Disconnected Connect & ControlConnect
Product Smart Product Smart
Connected
Product
Connect | Operate | Optimize
Remote Monitoring &
Diagnostics
Extend to Ecosystem
Smart Factory – Asset Tracking |
Predictive Analytics |
Robotics |Artificial Intelligence
Industrial operations are increasingly connected and monitored with connected devices. Exabytes of data is
being generated by these devices, but only a fraction of it is being used in a meaningful way to derive insights
and take real-time actions. What is next in industrial evolution?
Confidential and Proprietary - Incedo Inc
Future of Industrial IoT would be Led by AI & Machine Learning
iRobot Romba
Sentrian - Disease
deterioration modeling
platform
Amazon Echo
Artificial Intelligence is turbocharging
industries that are generating massive volumes
of data through their IoT investments.
11
Confidential and Proprietary - Incedo Inc
CASE EXAMPLE : COMPUTATIONAL INTELLIGENCE
FOR INDUSTRIAL IOT
Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence
12
Confidential and Proprietary - Incedo Inc
13
Continuous
Monitoring
Safety
Operational
Visibility &
KPIs
Predictive
Maintenance
Performance
&
Optimization
Asset
Utilization
Real-time Response
Fast Data : Sub-second
Long Term Analysis
Big Data : Months-Years
Biggest IIoT challenge: deliver business value?
Customers: Early stages of IoT
Confidential and Proprietary - Incedo Inc
14
Industrial safety solution
40+ TB per year
120GB /day of sensor data
Industrial safety solution
Big Data: 40+ TB per year Fast
data: sub-second alerts
Hybrid engine manufacturer
Big Data: 720 TB data
Fast Data: 20M Events/Sec
Benefits:
• Operational Safety & efficiency
• Regulatory compliance.
Benefits
• New revenue & services
• Predictive maintenance
14
IIoT business value is driven by both big & fast data
Safety
Performance
&
Optimization
Managing sensor data is key to the value driven by
Industrial IOT. Data from 50 billion sensors will
generate 35 ZB annual data. 60% of this data is
going to be generated by Industrial IOT.
Confidential and Proprietary - Incedo Inc
100’s
sensors
Edge
gateway
15
1000’s
sensors
Edge
gateway
High
Cost
Massive
Data
Low
Bandwidth
Cloud
Analytics
Fast
Data
Big
Data
Ingestion Rate
100,000+ data points/second
1000’s of locations
IIoT pain with big and fast data
Programming updates
Continuous learning
Amount of data generated by industrial location is very large and coupled with low BW connectivity presents
unique challenges. 20 billion terabytes of industrial sensor data will be generated annually by 2020 * Intel/Cisco
Confidential and Proprietary - Incedo Inc
2,000 Engines
5,512 Sensors
each
2 Samples/sec
Incedo’s Solution – Machine Learning & Data Compression
720 TB/Year
$1.8M on 4G LTE
Edge Analytics
Not enough
Compute
Programming
takes months
Real time lossless data
40x
Compression
Deploy in
days
Solution builder tradeoffs - Drop data
or face increased cost or forgo- real
time analytics
Machine Learning for Edge (Partner Solution)
Sensor Health &
Cleansing
Data Accelerator
(Data
Compression)
Anomaly Detection
16
Confidential and Proprietary - Incedo Inc
Solution is 2 fold - 1st is crunch the data at edge so that your
can enable latency sensitive applications that require real
time or near real-time response and 2nd is to enable sending
of more data to cloud so you customers can have a global
view on analytics and leverage their existing big data
investments .
CASE EXAMPLE : NLP FOR SMART OPERATIONS
Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence
17
Confidential and Proprietary - Incedo Inc
Text, Voice or Personae – Incedo’s Guided Autonomous Intelligence
Overview of Incedo’s BOT Solution Framework
Confidential and Proprietary - Incedo Inc
18
BOT – Solution which can respond “intelligently” to input (voice and/or text)
Intelligence = Input parsing + Context + Knowledge database+ Interactive Output
• Voice/Video to text
• Language parsing
o N-gram analysis
o Entity Identification
• Building Knowledge Database
o Supervised Training
o Unsupervised Training (Machine Learning)
• Context Management
o Domain Specific knowledge
• User Experience
o Responsive
o Rich
o Interactive
Input to entities
Entities to format
Context
Dictionary
NLP
Engine
Text
Web
Voice
SMS
App
RSS
Management
Interface
Domain Unsupervised data
Typical Voice/Chat BoT Application
User Inputs
• Supervised Configuration
• Analysis
Incedo has experience in all elements of BoT solutions for Industrial, Healthcare and Communication Engineering
Personal Chat Assistance for Smart Operations
19
Case Example : Leading US-Bank required a Robotic Personal Chat Assistant that can be integrated with different internal
applications within Banks Framework. The Interactive chat BOT eased the use of reporting platform by addressing
common queries and requests of internal employees using existing reporting frameworks in the backend.
Developed solution over Python NLTK with Web, IoS and Mail based interfaces
Confidential and Proprietary - Incedo Inc
Front
End
Core Engine
Report
Generator
Simulator
Look
Up
Data
Trained
Model
NLTK Model
1
3 4 5
2
Sentence
tokenization,
pos tagging
Report Dictionary
6
Classifi
cation
Rest
API
Raw
Text
User Input
Eg: Filter &
Output type
Augmented workforce for efficient engineering operations
ASR Engine
Service BOTs in Smart Operations which
can answer simple speech based
questions for routine operations, identify
items, search inventories, act as a guide
and even summon experts for a video
chat
Please confirm the order “Pick up at
Bay1, Inventory Lot 5…and Drop point:
Bay 2, Loading No.7….
Confidential and Proprietary - Incedo Inc
20
An example of speech based routine
operations for shipment of materials
CASE EXAMPLE : DIAGNOSTICS AS A SERVICE
Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence
21
Confidential and Proprietary - Incedo Inc
“Smart Car” IoT Service – PoC Overview
• Telemetry Data Agent (TDA) uploads car data to the
IoT backend service
• IoT Backend service (AWS IoT) detects abnormal car
health conditions (Accidents, Low Battery, Engine &
coolant temp, Fuel )
• IoT Backend service notifies Car users and 3rd party
service providers about abnormal conditions
• Portal (UI) provides Traffic view, Hazard declaring
view, Car service Vehicle analytics view and Hospital
Accident/Emergency service views
• Mobile App is used for Registration purpose, View
his/her Car health stats, get notified on bad health
conditions, get notified if family/friend vehicle has
met with accident and details/status of hospital
attending. Raise alarm by the owner if need
emergency hospital or service need attention
Telemetry Data
Agent (TDA)
Car Data
3rd Party Service provider RESTful
Applications
Notifications
Mobile App
IoT Backend Service
(AWS IoT)
Diagnostics As a Service for Aftermarket Cars Maintenance
Confidential and Proprietary - Incedo Inc
22
Incedo Automated Testing Framework (ATF) for Industrial IoT
Overview
Confidential and Proprietary - Incedo Inc
23
Incedo Automated Testing Framework (ATF)
SUT Adaptation Engine: Tools/solutions to adapt ATF to SUT solution space
Framework Core
(Configuration, Execution, Log Analysis , Reporting
Engine; Core Libraries)
Test Scripting
Engine
(Scripts, Data, Suite)
Reporting
Engine
Database
Highlights
- Automated testing framework
(Single Click)
- Single Node as well as End-2-End
Solution Testing capabilities
- Flexibility in adapting to solution
domain
- Wide range of reporting,
charting and trend capabilities
- Ease of integrating of
opensource/ commercial test
solutions into ATF
- XML based scripting
- Low/No ramp-up time required
for scripting
Network under Test
Test Tool A Test Tool B
Test Tool C
SUT
SUT
SUT
SUT
Case where SUT is a multi-node solution; Test Tools can be tools for injection and/or probe
www.incedoinc.com
info@incedoinc.com
Thank You.
24
Note
The content and data shared in the proposal is Incedo proprietary and is intended for the party with whom the
presentation is shared. It cannot be shared, copied or redistributed without Incedo’s formal consent.
Confidential and Proprietary - Incedo Inc

More Related Content

PDF
Case Study Intel IoT Gateway
PDF
Introduction to IoT development
PPTX
IOT (smart campus) PPT
PDF
Dell AI Telecom Webinar
PDF
Edge AI Smart Manufacturing - Defect Detection and Beyond (GTC 2019)
PDF
AI for Manufacturing (Machine Vision, Edge AI, Federated Learning)
PDF
Secure Real Time Monitoring & Analysis for IoT Product Engineering
PDF
Zinnov Zones for IoT Services 2017
Case Study Intel IoT Gateway
Introduction to IoT development
IOT (smart campus) PPT
Dell AI Telecom Webinar
Edge AI Smart Manufacturing - Defect Detection and Beyond (GTC 2019)
AI for Manufacturing (Machine Vision, Edge AI, Federated Learning)
Secure Real Time Monitoring & Analysis for IoT Product Engineering
Zinnov Zones for IoT Services 2017

What's hot (20)

PDF
Intel Corporation Award Write Up
PPTX
IoT Implementation and Security Best Practices
PDF
The Convergence of Robotics, the Web, and the IoT
PPTX
Innominds - product engineering Services
PDF
The power of orchestration - Inside Cisco IT - DC Cloud from IaaS to Fast IT
PDF
Industry 4.0 Smart Factory IoT Solutions- building the digital enterprise to ...
PDF
Proteus - Development and Testing
PDF
Borqs Technologies Presentation 2021
PPTX
AI as a Catalyst for IoT
PDF
Platform-based approach for IIoT trends
PPTX
Career guidance talk it makaut_ppt_sabyasachi mukhopadhyay
PDF
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
PDF
Proposed T-Model to cover 4S quality metrics based on empirical study of root...
PDF
Dell NVIDIA AI Roadshow - South Western Ontario
PDF
Review on Computer Forensic
PDF
Unizen corporate brochure october-2016
PPTX
Mt114 mobileapps
PDF
Industrial IoT and OT/IT Convergence
PDF
E-magazine February issue -2021
PDF
IoT and the Role of Platforms
Intel Corporation Award Write Up
IoT Implementation and Security Best Practices
The Convergence of Robotics, the Web, and the IoT
Innominds - product engineering Services
The power of orchestration - Inside Cisco IT - DC Cloud from IaaS to Fast IT
Industry 4.0 Smart Factory IoT Solutions- building the digital enterprise to ...
Proteus - Development and Testing
Borqs Technologies Presentation 2021
AI as a Catalyst for IoT
Platform-based approach for IIoT trends
Career guidance talk it makaut_ppt_sabyasachi mukhopadhyay
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
Proposed T-Model to cover 4S quality metrics based on empirical study of root...
Dell NVIDIA AI Roadshow - South Western Ontario
Review on Computer Forensic
Unizen corporate brochure october-2016
Mt114 mobileapps
Industrial IoT and OT/IT Convergence
E-magazine February issue -2021
IoT and the Role of Platforms
Ad

Viewers also liked (20)

PPTX
Web Performance Optimzation
PPTX
Measuring User Experience
PPTX
What it means to be fast in your industry
PPTX
What it means to deliver exceptional performance
PPTX
W3C Web Performance - A detailed overview
PPTX
Measuring Performance in the Browser
PPTX
Why you have less than a second to deliver exceptional performance
PPTX
Monitoring and Managing Java Applications
PPTX
Monitoring without alerts
PPTX
The Dark Art of Production Alerting
PPTX
Can a monitoring tool pass the turing test
PPTX
Monitoring large scale Docker production environments
PPTX
The definition of normal - An introduction and guide to anomaly detection.
PPTX
Monitoring Docker Application in Production
PPTX
Ruxit - How we launched a global monitoring platform on AWS in 80 days.
PPTX
Microservice, Micro Deployments and DevOps
PPTX
Performance Forensics - Understanding Application Performance
PDF
How to Be Awesome on Slideshare
PDF
The Essentials of PowerPoint Color Theme
PDF
20 Advanced Google Hacks Every Salesperson Should Know
Web Performance Optimzation
Measuring User Experience
What it means to be fast in your industry
What it means to deliver exceptional performance
W3C Web Performance - A detailed overview
Measuring Performance in the Browser
Why you have less than a second to deliver exceptional performance
Monitoring and Managing Java Applications
Monitoring without alerts
The Dark Art of Production Alerting
Can a monitoring tool pass the turing test
Monitoring large scale Docker production environments
The definition of normal - An introduction and guide to anomaly detection.
Monitoring Docker Application in Production
Ruxit - How we launched a global monitoring platform on AWS in 80 days.
Microservice, Micro Deployments and DevOps
Performance Forensics - Understanding Application Performance
How to Be Awesome on Slideshare
The Essentials of PowerPoint Color Theme
20 Advanced Google Hacks Every Salesperson Should Know
Ad

Similar to Building the Future of Monitoring with Artificial Intelligence (20)

PDF
InfoRepos Academy Introduction v1.1 - IIOT Experiential Learning Program
PDF
The IoT Food Chain – Picking the Right Dining Partner is Important with Dean ...
PDF
Things That No One Will Tell You About IoT Solutions
PDF
Track 3 session 2 - st dev con 2016 - arrow - identifying business challeng...
PDF
Women in it presentation
PDF
Bitrock manufacturing
PDF
IoT-Use-Case-eBook
PPTX
Building IoT Solutions 101
PDF
Sumyag profile deck
PDF
Miguel Angel Perdiguero - Head of BIG data & analytics Atos Iberia - semanain...
PDF
Cubitic: Predictive Analytics
PDF
Does the Internet of Things make or break your business model?
PDF
Bitkom Trendkongress 2014: NTT DATA Innovationworkshop about how the IoT requ...
PDF
The Most Definitive guide to Industrial IoT Implementation
PDF
PIF2019 - A06 - Rodrigo M Tutilo - Advantech
PDF
Vertex Perspectives | AI-optimized Chipsets | Part I
PDF
Vertex perspectives ai optimized chipsets (part i)
PPTX
Software panel
PDF
InSource 2017 IIoT Roadshow: Evolution or Revolution
PDF
eBook-IoTPractice
InfoRepos Academy Introduction v1.1 - IIOT Experiential Learning Program
The IoT Food Chain – Picking the Right Dining Partner is Important with Dean ...
Things That No One Will Tell You About IoT Solutions
Track 3 session 2 - st dev con 2016 - arrow - identifying business challeng...
Women in it presentation
Bitrock manufacturing
IoT-Use-Case-eBook
Building IoT Solutions 101
Sumyag profile deck
Miguel Angel Perdiguero - Head of BIG data & analytics Atos Iberia - semanain...
Cubitic: Predictive Analytics
Does the Internet of Things make or break your business model?
Bitkom Trendkongress 2014: NTT DATA Innovationworkshop about how the IoT requ...
The Most Definitive guide to Industrial IoT Implementation
PIF2019 - A06 - Rodrigo M Tutilo - Advantech
Vertex Perspectives | AI-optimized Chipsets | Part I
Vertex perspectives ai optimized chipsets (part i)
Software panel
InSource 2017 IIoT Roadshow: Evolution or Revolution
eBook-IoTPractice

More from Incedo (14)

PDF
Harness the power of Data using Incedo TM Lighthouse for Operational decision...
PPTX
AI in the Enterprise: Hype vs. Reality
PDF
USING INCEDO’S SENTIMENT ANALYSIS FRAMEWORK FOR KOL INSIGHTS
PDF
SENTIMENT ANALYSIS FOR DRUG DEVELOPMENT AND PROMOTION
PDF
Managing household water supply with internet of things (IOT)
PDF
Accelerated Real-Time Analytics
PDF
ICF infographic
PDF
Complete Automation in Retail Banking – Incedo
PPTX
Incedo careers - LinkedIn
PDF
Business development framework brochure
PDF
Incedo prospective candidate brochure
PDF
Bioinformatics
PDF
Incedo corporate brochure brochure
PDF
Next generation sequencing
Harness the power of Data using Incedo TM Lighthouse for Operational decision...
AI in the Enterprise: Hype vs. Reality
USING INCEDO’S SENTIMENT ANALYSIS FRAMEWORK FOR KOL INSIGHTS
SENTIMENT ANALYSIS FOR DRUG DEVELOPMENT AND PROMOTION
Managing household water supply with internet of things (IOT)
Accelerated Real-Time Analytics
ICF infographic
Complete Automation in Retail Banking – Incedo
Incedo careers - LinkedIn
Business development framework brochure
Incedo prospective candidate brochure
Bioinformatics
Incedo corporate brochure brochure
Next generation sequencing

Recently uploaded (20)

PDF
Build a system with the filesystem maintained by OSTree @ COSCUP 2025
PPTX
Cloud computing and distributed systems.
PDF
Electronic commerce courselecture one. Pdf
PDF
7 ChatGPT Prompts to Help You Define Your Ideal Customer Profile.pdf
PDF
Approach and Philosophy of On baking technology
PDF
TokAI - TikTok AI Agent : The First AI Application That Analyzes 10,000+ Vira...
PPTX
A Presentation on Artificial Intelligence
PDF
Machine learning based COVID-19 study performance prediction
PPTX
PA Analog/Digital System: The Backbone of Modern Surveillance and Communication
PDF
How UI/UX Design Impacts User Retention in Mobile Apps.pdf
PDF
KodekX | Application Modernization Development
PDF
Architecting across the Boundaries of two Complex Domains - Healthcare & Tech...
PDF
Reach Out and Touch Someone: Haptics and Empathic Computing
PPT
“AI and Expert System Decision Support & Business Intelligence Systems”
PDF
Dropbox Q2 2025 Financial Results & Investor Presentation
PDF
NewMind AI Monthly Chronicles - July 2025
PDF
Agricultural_Statistics_at_a_Glance_2022_0.pdf
PDF
cuic standard and advanced reporting.pdf
PDF
Diabetes mellitus diagnosis method based random forest with bat algorithm
PDF
Unlocking AI with Model Context Protocol (MCP)
Build a system with the filesystem maintained by OSTree @ COSCUP 2025
Cloud computing and distributed systems.
Electronic commerce courselecture one. Pdf
7 ChatGPT Prompts to Help You Define Your Ideal Customer Profile.pdf
Approach and Philosophy of On baking technology
TokAI - TikTok AI Agent : The First AI Application That Analyzes 10,000+ Vira...
A Presentation on Artificial Intelligence
Machine learning based COVID-19 study performance prediction
PA Analog/Digital System: The Backbone of Modern Surveillance and Communication
How UI/UX Design Impacts User Retention in Mobile Apps.pdf
KodekX | Application Modernization Development
Architecting across the Boundaries of two Complex Domains - Healthcare & Tech...
Reach Out and Touch Someone: Haptics and Empathic Computing
“AI and Expert System Decision Support & Business Intelligence Systems”
Dropbox Q2 2025 Financial Results & Investor Presentation
NewMind AI Monthly Chronicles - July 2025
Agricultural_Statistics_at_a_Glance_2022_0.pdf
cuic standard and advanced reporting.pdf
Diabetes mellitus diagnosis method based random forest with bat algorithm
Unlocking AI with Model Context Protocol (MCP)

Building the Future of Monitoring with Artificial Intelligence

  • 1. Incedo Inc Building the Future of Monitoring with Artificial Intelligence Confidential and Proprietary - Incedo Inc
  • 2. Our Second Acquisition– increased focus on specialized skills Launched Incubation Lab for clients • Specialized Product Engineering Services and Data & Analytics Competency • Expertise in Financial Services, Life Science and Communication Engineering • Focused on Emerging Technologies and Innovation - in the context of our clients’ businesses • Bay Area Headquartered - 1500 employees across North America, South Africa and India (Gurgaon, Bangalore) • End-to-end capabilities across Application Services, Infrastructure and Operations • Agile, responsive engagement models 0 200 400 600 800 1000 1200 1400 1600 2011 2012 2013 2014 2015 2016 Employees Incedo Spun out of a diversified $4B Conglomerate Started US & South Africa Operations Started Life Sciences and Data & Analytics practice • 35+ clients • Growth of 75%+ y-o-y Our First Acquisition - grew Product Engineering Services Started work with US based Tier 1bank We Help Businesses Excel And Solve Complex Problems With Technology Incedo Overview 2 Success is proven by growth of more than 671% since its inception in 2011 Incedo in the list of Top 10 Emerging Analytics Start-ups for the year 2016 Our Offices •North America •Santa Clara, New Jersey & New York •South Africa •Cape Town & Johannesburg •Asia-Pacific (India) •Delhi, Bangalore, Chennai & Mumbai Confidential and Proprietary - Incedo Inc
  • 3. We are building a special technology firm and the world has begun to take note Incedo is an INC 5000 awardee – fastest growing private companies in North America Incedo recognized by Dataquest for 85% growth Incedo is one of Top 10 Emerging Analytics Start-ups for the year 2016 Incedo is one of 20 Most Promising Tech Service Providers by CIOReview Incedo ranks #16 on CRN’s Fast Growth 150 3 Confidential and Proprietary - Incedo Inc
  • 4. Feasibility Go-No go Pilot Project/ Joint Investment Full Scale Development What We Do How We Do it Frameworks Proof of Concept Accelerators Follow Technologies Track Trends Rapid Prototyping 3D Visualization Framework on Mobile devices Machine Learning for Edge DevicesMaster Data Management Solution Accelerators Accelerators/ Frameworks IoT Incubation Labs at Incedo We Partner With Our Clients to Build Smarter Solutions for Them 4 Confidential and Proprietary - Incedo Inc AI & NLP Solution – Voice Based BoT Framework Incubation LabsIoT & Connected Devices AI, NLP, Machine Learning Mobility NFV & Cloud Virtualization
  • 5. IOT EVOLUTION AND FUTURE TRENDS Incedo’s Perspective of IoT Market Confidential and Proprietary - Incedo Inc 5
  • 6. Internet has come a long way since 1980s but now it has entered into the most exciting phase 6 Confidential and Proprietary - Incedo Inc
  • 7. Driven by proliferation of connected devices & sensors Monitoring and Control Multi-transport and Multi-function Devices, Sensors High Speed Wireless – 4G, 5G Delivering Experience to Consumers Connectivity and Mobility Converged, Secured and Collaborative Operations Digitized Connected Services Enabled 7 Confidential and Proprietary - Incedo Inc
  • 8. Number of people vs number of connected “things” By the end of this decade 212 billion “things” are going to be connected to the internet 2003 0.1 2010 1.8 2020 30 Consumer 60% Industrial 40% 2015 3.5 Connected Devices Per Person We are here, 99.9% of things are still unconnected 8 Confidential and Proprietary - Incedo Inc
  • 9. 2020 View : Human Centric IOT - “4th Wave, 1.5T+Users/Things” Enabling Man-Machine Collaboration led by Robotics & Artificial Intelligence Open Innovative eco system Sensors Devices Machines System of Engagement System of Records Benefit To Humans Human Empowerment Machine Intelligence Connected Infrastructure 9 Confidential and Proprietary - Incedo Inc
  • 10. IoT has many dimensions… and is a Journey… 10 Emerging Industrial IoTIoT Foundation Disconnected Connect & ControlConnect Product Smart Product Smart Connected Product Connect | Operate | Optimize Remote Monitoring & Diagnostics Extend to Ecosystem Smart Factory – Asset Tracking | Predictive Analytics | Robotics |Artificial Intelligence Industrial operations are increasingly connected and monitored with connected devices. Exabytes of data is being generated by these devices, but only a fraction of it is being used in a meaningful way to derive insights and take real-time actions. What is next in industrial evolution? Confidential and Proprietary - Incedo Inc
  • 11. Future of Industrial IoT would be Led by AI & Machine Learning iRobot Romba Sentrian - Disease deterioration modeling platform Amazon Echo Artificial Intelligence is turbocharging industries that are generating massive volumes of data through their IoT investments. 11 Confidential and Proprietary - Incedo Inc
  • 12. CASE EXAMPLE : COMPUTATIONAL INTELLIGENCE FOR INDUSTRIAL IOT Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence 12 Confidential and Proprietary - Incedo Inc
  • 13. 13 Continuous Monitoring Safety Operational Visibility & KPIs Predictive Maintenance Performance & Optimization Asset Utilization Real-time Response Fast Data : Sub-second Long Term Analysis Big Data : Months-Years Biggest IIoT challenge: deliver business value? Customers: Early stages of IoT Confidential and Proprietary - Incedo Inc
  • 14. 14 Industrial safety solution 40+ TB per year 120GB /day of sensor data Industrial safety solution Big Data: 40+ TB per year Fast data: sub-second alerts Hybrid engine manufacturer Big Data: 720 TB data Fast Data: 20M Events/Sec Benefits: • Operational Safety & efficiency • Regulatory compliance. Benefits • New revenue & services • Predictive maintenance 14 IIoT business value is driven by both big & fast data Safety Performance & Optimization Managing sensor data is key to the value driven by Industrial IOT. Data from 50 billion sensors will generate 35 ZB annual data. 60% of this data is going to be generated by Industrial IOT. Confidential and Proprietary - Incedo Inc
  • 15. 100’s sensors Edge gateway 15 1000’s sensors Edge gateway High Cost Massive Data Low Bandwidth Cloud Analytics Fast Data Big Data Ingestion Rate 100,000+ data points/second 1000’s of locations IIoT pain with big and fast data Programming updates Continuous learning Amount of data generated by industrial location is very large and coupled with low BW connectivity presents unique challenges. 20 billion terabytes of industrial sensor data will be generated annually by 2020 * Intel/Cisco Confidential and Proprietary - Incedo Inc
  • 16. 2,000 Engines 5,512 Sensors each 2 Samples/sec Incedo’s Solution – Machine Learning & Data Compression 720 TB/Year $1.8M on 4G LTE Edge Analytics Not enough Compute Programming takes months Real time lossless data 40x Compression Deploy in days Solution builder tradeoffs - Drop data or face increased cost or forgo- real time analytics Machine Learning for Edge (Partner Solution) Sensor Health & Cleansing Data Accelerator (Data Compression) Anomaly Detection 16 Confidential and Proprietary - Incedo Inc Solution is 2 fold - 1st is crunch the data at edge so that your can enable latency sensitive applications that require real time or near real-time response and 2nd is to enable sending of more data to cloud so you customers can have a global view on analytics and leverage their existing big data investments .
  • 17. CASE EXAMPLE : NLP FOR SMART OPERATIONS Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence 17 Confidential and Proprietary - Incedo Inc
  • 18. Text, Voice or Personae – Incedo’s Guided Autonomous Intelligence Overview of Incedo’s BOT Solution Framework Confidential and Proprietary - Incedo Inc 18 BOT – Solution which can respond “intelligently” to input (voice and/or text) Intelligence = Input parsing + Context + Knowledge database+ Interactive Output • Voice/Video to text • Language parsing o N-gram analysis o Entity Identification • Building Knowledge Database o Supervised Training o Unsupervised Training (Machine Learning) • Context Management o Domain Specific knowledge • User Experience o Responsive o Rich o Interactive Input to entities Entities to format Context Dictionary NLP Engine Text Web Voice SMS App RSS Management Interface Domain Unsupervised data Typical Voice/Chat BoT Application User Inputs • Supervised Configuration • Analysis Incedo has experience in all elements of BoT solutions for Industrial, Healthcare and Communication Engineering
  • 19. Personal Chat Assistance for Smart Operations 19 Case Example : Leading US-Bank required a Robotic Personal Chat Assistant that can be integrated with different internal applications within Banks Framework. The Interactive chat BOT eased the use of reporting platform by addressing common queries and requests of internal employees using existing reporting frameworks in the backend. Developed solution over Python NLTK with Web, IoS and Mail based interfaces Confidential and Proprietary - Incedo Inc Front End Core Engine Report Generator Simulator Look Up Data Trained Model NLTK Model 1 3 4 5 2 Sentence tokenization, pos tagging Report Dictionary 6 Classifi cation Rest API Raw Text User Input Eg: Filter & Output type
  • 20. Augmented workforce for efficient engineering operations ASR Engine Service BOTs in Smart Operations which can answer simple speech based questions for routine operations, identify items, search inventories, act as a guide and even summon experts for a video chat Please confirm the order “Pick up at Bay1, Inventory Lot 5…and Drop point: Bay 2, Loading No.7…. Confidential and Proprietary - Incedo Inc 20 An example of speech based routine operations for shipment of materials
  • 21. CASE EXAMPLE : DIAGNOSTICS AS A SERVICE Incedo’s Experience : Future of Monitoring Led by Artificial Intelligence 21 Confidential and Proprietary - Incedo Inc
  • 22. “Smart Car” IoT Service – PoC Overview • Telemetry Data Agent (TDA) uploads car data to the IoT backend service • IoT Backend service (AWS IoT) detects abnormal car health conditions (Accidents, Low Battery, Engine & coolant temp, Fuel ) • IoT Backend service notifies Car users and 3rd party service providers about abnormal conditions • Portal (UI) provides Traffic view, Hazard declaring view, Car service Vehicle analytics view and Hospital Accident/Emergency service views • Mobile App is used for Registration purpose, View his/her Car health stats, get notified on bad health conditions, get notified if family/friend vehicle has met with accident and details/status of hospital attending. Raise alarm by the owner if need emergency hospital or service need attention Telemetry Data Agent (TDA) Car Data 3rd Party Service provider RESTful Applications Notifications Mobile App IoT Backend Service (AWS IoT) Diagnostics As a Service for Aftermarket Cars Maintenance Confidential and Proprietary - Incedo Inc 22
  • 23. Incedo Automated Testing Framework (ATF) for Industrial IoT Overview Confidential and Proprietary - Incedo Inc 23 Incedo Automated Testing Framework (ATF) SUT Adaptation Engine: Tools/solutions to adapt ATF to SUT solution space Framework Core (Configuration, Execution, Log Analysis , Reporting Engine; Core Libraries) Test Scripting Engine (Scripts, Data, Suite) Reporting Engine Database Highlights - Automated testing framework (Single Click) - Single Node as well as End-2-End Solution Testing capabilities - Flexibility in adapting to solution domain - Wide range of reporting, charting and trend capabilities - Ease of integrating of opensource/ commercial test solutions into ATF - XML based scripting - Low/No ramp-up time required for scripting Network under Test Test Tool A Test Tool B Test Tool C SUT SUT SUT SUT Case where SUT is a multi-node solution; Test Tools can be tools for injection and/or probe
  • 24. www.incedoinc.com info@incedoinc.com Thank You. 24 Note The content and data shared in the proposal is Incedo proprietary and is intended for the party with whom the presentation is shared. It cannot be shared, copied or redistributed without Incedo’s formal consent. Confidential and Proprietary - Incedo Inc

Editor's Notes

  • #3: Acquisitions
  • #15: Managing sensor data is key to the value driven by Industrial IOT. Data from 50 billion sensors will generate 35 ZB annual data. 60% of this data is going to be generated by Industrial IOT.
  • #16: However amount of data generated by industrial location is very large and coupled with low BW connectivity presents unique challenges. 20 billion terabytes of industrial sensor data will be generated annually by 2020 * Intel/Cisco