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MACHINE INTELLIGENCE 4.0
For Globalization 4.0 based on Industry 4.0
By Prasad Chitta
CONTEXT ¨C WHAT IS ¡°4.0¡± ALL ABOUT?
? Industry 4.0 - https://en.wikipedia.org/wiki/Industry_4.0
? Steam Engine, Electricity, Internet and 4.0
? Globalization 4.0 - https://www.weforum.org/globalization4
? Collaboration, Patriotism, Fair Economy, Environment, Work, social impact
? Business 4.0 - https://sites.tcs.com/bts/digital-transformation-to-
business-4-0-pov/
? Digital transformation for getting businesses ready for 4.0
DATA IS THE NEW OIL ¨C THAT NEEDS
PIPELINES
? From Acquisition to
purging
? transaction
management (OLTP)
? Analysis of data (OLAP)
? Traditional before 4.0
Sensing (Manual,
IoT)
Acquiring,
Validating,
Munging
Storing /
Publishing /
Streaming
Update / Enrich /
Tag
Operational
Reporting,
Dashboards (MI)
Transforming,
Aggregating, De-
normalizing
OLAP reporting
visualizing &
Analytics
Machine
Learning, Deep
Learning
Archiving,
Purging
SYSTEMS DEALING WITH THESE PIPELINES
PIPELINES OF ¡°LEARNING¡± AND
¡°INTELLIGENCE¡±
? Structured data comes from traditional
systems of records
? It can be originated in a data center,
private or public cloud
? Non structured data comes from mail,
document / content management
systems and systems of engagement like
social media
? Semi structured data comes from
machine generated sources and IoT
sources
? Data that comes is processed on a
batch, micro-batch or individual
messaging level
? Data pipelines gradually enrich the data
for better insights
TYPES OF TRAINING (OR) LEARNING(?)
https://towardsdatascience.com/types-of-machine-learning-algorithms-you-should-know-953a08248861
PLATFORMS, TOOLS, LANGUAGES
WHAT IS MACHINE INTELLIGENCE 4.0?
Input
?Program
Machine
1.0
Output
Input
?Output
? Rewards
?Policies
Machine
AutoML
+ Model /
data
Repository
4.0
Auto
Tuned
Model
Input
?Configuration
Machine
With ERP
Software
2.0
Output
Input
?Output
(Labels)
Machine
+ Data
Scientists
3.0
Learning
Model
MACHINE LEARNING ¨C SKILL AREAS
Statistics
Story
telling
Artisti
c skills
Business
Oper
ations
Archit
ectur
al
Soluti
on
devel
opm
ent Tools Enabler
Store
streamProcess
Business KPI
Optimization
Excellence
Data
Scientists
ML Engineers
ML Experts
The challenge
Analyze/
Visualize
Describe
Predict Prescribe
Generate
TWO MODELS OF LEARNING ¡°MACHINE
LEARNING¡±
Statistics /
Probability /
Linear Algebra
Python,
Tensorflow,
Pytorch
Business domain
/ Problem
domain
Business Problem
and solution
understanding
Auto ML and
Search for APIs
integration into
solutions on cloud
/ platforms
DO IT YOURSELF
A recent competition on kaggle¡­ (A kernel walk through!)
https://www.kaggle.com/c/two-sigma-financial-news
THANK YOU
https://www.linkedin.com/in/
prasadchitta

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  • 1. MACHINE INTELLIGENCE 4.0 For Globalization 4.0 based on Industry 4.0 By Prasad Chitta
  • 2. CONTEXT ¨C WHAT IS ¡°4.0¡± ALL ABOUT? ? Industry 4.0 - https://en.wikipedia.org/wiki/Industry_4.0 ? Steam Engine, Electricity, Internet and 4.0 ? Globalization 4.0 - https://www.weforum.org/globalization4 ? Collaboration, Patriotism, Fair Economy, Environment, Work, social impact ? Business 4.0 - https://sites.tcs.com/bts/digital-transformation-to- business-4-0-pov/ ? Digital transformation for getting businesses ready for 4.0
  • 3. DATA IS THE NEW OIL ¨C THAT NEEDS PIPELINES ? From Acquisition to purging ? transaction management (OLTP) ? Analysis of data (OLAP) ? Traditional before 4.0 Sensing (Manual, IoT) Acquiring, Validating, Munging Storing / Publishing / Streaming Update / Enrich / Tag Operational Reporting, Dashboards (MI) Transforming, Aggregating, De- normalizing OLAP reporting visualizing & Analytics Machine Learning, Deep Learning Archiving, Purging
  • 4. SYSTEMS DEALING WITH THESE PIPELINES
  • 5. PIPELINES OF ¡°LEARNING¡± AND ¡°INTELLIGENCE¡± ? Structured data comes from traditional systems of records ? It can be originated in a data center, private or public cloud ? Non structured data comes from mail, document / content management systems and systems of engagement like social media ? Semi structured data comes from machine generated sources and IoT sources ? Data that comes is processed on a batch, micro-batch or individual messaging level ? Data pipelines gradually enrich the data for better insights
  • 6. TYPES OF TRAINING (OR) LEARNING(?) https://towardsdatascience.com/types-of-machine-learning-algorithms-you-should-know-953a08248861
  • 8. WHAT IS MACHINE INTELLIGENCE 4.0? Input ?Program Machine 1.0 Output Input ?Output ? Rewards ?Policies Machine AutoML + Model / data Repository 4.0 Auto Tuned Model Input ?Configuration Machine With ERP Software 2.0 Output Input ?Output (Labels) Machine + Data Scientists 3.0 Learning Model
  • 9. MACHINE LEARNING ¨C SKILL AREAS Statistics Story telling Artisti c skills Business Oper ations Archit ectur al Soluti on devel opm ent Tools Enabler Store streamProcess Business KPI Optimization Excellence Data Scientists ML Engineers ML Experts The challenge Analyze/ Visualize Describe Predict Prescribe Generate
  • 10. TWO MODELS OF LEARNING ¡°MACHINE LEARNING¡± Statistics / Probability / Linear Algebra Python, Tensorflow, Pytorch Business domain / Problem domain Business Problem and solution understanding Auto ML and Search for APIs integration into solutions on cloud / platforms
  • 11. DO IT YOURSELF A recent competition on kaggle¡­ (A kernel walk through!) https://www.kaggle.com/c/two-sigma-financial-news