This document discusses Machine Intelligence 4.0 and its role in enabling Globalization 4.0 based on Industry 4.0. It defines Industry 4.0 and Globalization 4.0 and notes they rely on digital transformation and collaboration. It describes data pipelines for acquiring, processing, storing and analyzing structured, unstructured and semi-structured data from various sources. It also outlines different types of machine learning including supervised, unsupervised and reinforcement learning. Finally, it discusses platforms, tools and languages used for machine learning and the skills needed for machine intelligence professionals.
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
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