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Predictive Analytics : Why (I)IoT is
different
!
Venu Vasudevan, PhD!
!
Next.io (Consultant IoT | Big Data)!
Adjunct Professor, ECE, Rice U.!
!
venuv62@gmail.com!
@venuv62!
Me
Intrapreneur. balanced diet of IoT & predictive analytics
๏  IIoT for asset management. Key contributions to Zigbee!
๏  Shazam for IoT - IoT accessory Home/Auto!
๏  Iridium predictive fault management!
1Mill measurands/sec. then satellite ~ now thermostat!
๏  Predictive video analytics (acquired by WatchWith)!
Agenda: Predictive & IIoT
•  Why in the limelight?!
•  Now. is it new-and-unique or sum-of-parts!
•  Next. will it be new-and-unique or sum-of-parts!
IIoT Market Potential
$150B addressable market!
by 2020!
Low(er) business friction!
- IIoT Technology creators !
are also customers!
Predictive ability : Mandatory, not optional
over-doing!
processes!
expensive!
under-doing!
processes!
catastrophic!
rightsizing a!
dynamic, predictive process!
(time | business context)!
e.g. too much ‘routine’ !
maintenance. lightly used !
equipment!
e.g. not enough!
maintenance. !
high risk equipment!
Business Focus : from reliability to optimization
Predictive Analytics : IoT Challenge
Sources. ParStream,IBM IoT surveys!
SpottyData!‘Good’predictions!
Predictive Analytics : IoT Challenge + Opportunity
high quality,!
high velocity!
predictions!
with incomplete, untidy data!
Source. Keystone Strategy!
SpottyData!‘Good’predictions!
long runway for predictive!
Challenge : Data-Insight Gap
•  There is no ‘free lunch’ : better
predictions need more data!
•  Ways to narrow the gap!
•  (Volume, Velocity) faster, fatter
path from data to decisioning!
•  (Variability) clever ways to
clean data at scale!
•  Match best algorithm for the
data at hand!
data maturity!
insight!
insight !
aspiration!
data !
reality!
variability!volume! velocity!
The ‘gap’ is not unique to IIoT. The reasons for it are ..!
IIoT vs Consumer Web : Same gap,
different reasons
Consumer IIoT
Capture Hard!
(consumers don’t cooperate)!
Easy!
(‘things’ always
cooperate - for a price)!
Sanitization Medium!
(simpler data types)!
Hard!
(gnarlier data types)!
Modeling &
Integration
Easy!
(e.g. eyeballs, dwell time)!
Hard!
(complex data models)!
IIoT+Predictive:more than sum of parts?
IoT!
Predictive!
Analytics!
retrospective! descriptive! prescriptive!predictive!
What’s the current IIoT+Predictive architecture?!
Does it address the data-insight gap?!
What architectural changes would close the gap?!
depth of insight!
scale!
Now : Cloud-Centric (I)IoT architecture
collect!
learn!
act!
sense!
store.query.!
analyze.predict!
automated | human!
capture.filter.!
cloudedge
scale
scale
Next : Edge-heavy IIoT architecture
collect!
learn!
act!
sense!
store.query.!
analyze.predict!
automated | human!
capture.filter.!
edge edge
cloud
responsiveness
scale
Sensing Data Challenge
Option1. data goes to decisioning !
Fatter, faster pipes!
Continuous flow!
Option 2. decisioning goes to data !
Intelligent Edge !
Periodic updates!
sense!
getting data and decisioning together!
Edges make IIoT Faster
GE Blog - Edge: A Door to the Data Kingdom!
➡  Edges distribute predictive
services (cloud vs edge)!
➡  policy vs behavior !
➡  long-term vs real-time !
➡  architectures for flexible
(re)distribution of predictive
decision logic?!
Edges make IIoT Faster and Cheaper
➡  Edges distribute predictive
services (cloud vs edge)!
➡  policy vs behavior !
➡  long-term vs real-time!
➡  how will predictive decision logic
move to where the data is?!
Jasper. The hidden costs of delivering IoT!
Slow lakes to fast streams
•  Now. Transition from data
lakes to data streams!
‣  30-100x speed up : streams
over lakes!
‣  needed to deal with real-
time IIoT traffic!
‣  lambda architectures
balance prediction speed
and accuracy!
•  Next ….!
untidy
data
firehose
clean
analytics
fast &
good
slower & much better
Lambda
architecture
collect!
Hadoop!
Spark!
Edge Filtering : Slimming diet for fat
streams
fitting predictive decisioning logic fit in super-small footprints!
Opportunity : Machine Learning at
unprecedented scale
•  Machine-learning-as-a-service -
rich set of algorithms, solution
templates - immediate impact in: !
•  problems with established
procedures!
•  and clean data!
Source. Cortana Intelligence Gallery
learn!
Challenge : Clean Data
•  State-of-the-art ML — promises
dramatic improvement. But
‘clean data’ hungry!
•  Deep Learning 3x better than
Regression for electricity
demand forecasting!
•  needs 1.5 million data points
for training (over 4.5 years)!
•  Limiting factor is the data quality !
data maturity!
insight!
insight !
aspiration!
data !
reality!
variability!volume! veracity!
Stanford study. Electricity demand forecasting. Deep learning 3x better than ‘classic’ m/c learning!
Challenge : Clean Data
•  State-of-the-art ML — promises
dramatic improvement. But
‘clean data’ hungry!
•  Deep Learning 3x better than
Regression for electricity
demand forecasting!
•  needs 1.5 million data points
for training!
•  Limiting factor is the data quality!
Source. HP Enterprise Labs study!
Training Data
Training
Time
(IoT)
signals
3 million
frames!
days!
Vision
14 million
images!
3 days w/
16000 cores!
2-Tiered Machine Learning for IIoT
•  Intelligent IoT data cleansing
layer (e.g. Bitstew) - Machine
Learning turns dirty data into
clean data!
•  low-level data cleaning pushed to the
edge!
•  semantic integration between data
sources in the cloud!
•  Predictive Layer - Machine
Learning turns clean data into
clean insights!
interfaces between cleansing & prediction? !
Conclusion
Present : Cloudy
•  embrace. leverage cutting edge cloud and ML services!
•  extend. adapt to IIoT business processes!
Future : Edgy
•  hyper decentralized intelligence and data!
•  systems that understand ‘normal’ and ‘deviation’!
•  predictive systems that have both response velocity and
depth of insight!
Questions?
venuv62@gmail.com
 @venuv62
Predictive Analytics : IoT Challenge
good enough,!
high velocity!
predictions!
with incomplete, untidy data!
(hourglass - with decay
statistic)!
Source. Par stream IoT survey!
Challenge : Clean Data
•  State-of-the-art ML — promises
dramatic improvement. But
‘clean data’ hungry!
•  Deep Learning 3x better than
Regression for electricity
demand forecasting!
•  needs 1.5 million data points
for training (over 4.5 years)!
•  Limiting factor is the data quality !
Stanford study. Electricity demand forecasting. Deep learning 3x better than ‘classic’ m/c learning!
Fast Accurate Clear
Naive
Bayes
Yes! Low! Somewhat!
Regression Yes! Medium! Yes!
Decision
Trees
Yes! Medium! Somewhat!
Deep
Learning
No! High! Heck no!

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IIoT : Old Wine in a New Bottle?

  • 1. Predictive Analytics : Why (I)IoT is different ! Venu Vasudevan, PhD! ! Next.io (Consultant IoT | Big Data)! Adjunct Professor, ECE, Rice U.! ! venuv62@gmail.com! @venuv62!
  • 2. Me Intrapreneur. balanced diet of IoT & predictive analytics ๏  IIoT for asset management. Key contributions to Zigbee! ๏  Shazam for IoT - IoT accessory Home/Auto! ๏  Iridium predictive fault management! 1Mill measurands/sec. then satellite ~ now thermostat! ๏  Predictive video analytics (acquired by WatchWith)!
  • 3. Agenda: Predictive & IIoT •  Why in the limelight?! •  Now. is it new-and-unique or sum-of-parts! •  Next. will it be new-and-unique or sum-of-parts!
  • 4. IIoT Market Potential $150B addressable market! by 2020! Low(er) business friction! - IIoT Technology creators ! are also customers!
  • 5. Predictive ability : Mandatory, not optional over-doing! processes! expensive! under-doing! processes! catastrophic! rightsizing a! dynamic, predictive process! (time | business context)! e.g. too much ‘routine’ ! maintenance. lightly used ! equipment! e.g. not enough! maintenance. ! high risk equipment! Business Focus : from reliability to optimization
  • 6. Predictive Analytics : IoT Challenge Sources. ParStream,IBM IoT surveys! SpottyData!‘Good’predictions!
  • 7. Predictive Analytics : IoT Challenge + Opportunity high quality,! high velocity! predictions! with incomplete, untidy data! Source. Keystone Strategy! SpottyData!‘Good’predictions! long runway for predictive!
  • 8. Challenge : Data-Insight Gap •  There is no ‘free lunch’ : better predictions need more data! •  Ways to narrow the gap! •  (Volume, Velocity) faster, fatter path from data to decisioning! •  (Variability) clever ways to clean data at scale! •  Match best algorithm for the data at hand! data maturity! insight! insight ! aspiration! data ! reality! variability!volume! velocity! The ‘gap’ is not unique to IIoT. The reasons for it are ..!
  • 9. IIoT vs Consumer Web : Same gap, different reasons Consumer IIoT Capture Hard! (consumers don’t cooperate)! Easy! (‘things’ always cooperate - for a price)! Sanitization Medium! (simpler data types)! Hard! (gnarlier data types)! Modeling & Integration Easy! (e.g. eyeballs, dwell time)! Hard! (complex data models)!
  • 10. IIoT+Predictive:more than sum of parts? IoT! Predictive! Analytics! retrospective! descriptive! prescriptive!predictive! What’s the current IIoT+Predictive architecture?! Does it address the data-insight gap?! What architectural changes would close the gap?! depth of insight! scale!
  • 11. Now : Cloud-Centric (I)IoT architecture collect! learn! act! sense! store.query.! analyze.predict! automated | human! capture.filter.! cloudedge scale scale
  • 12. Next : Edge-heavy IIoT architecture collect! learn! act! sense! store.query.! analyze.predict! automated | human! capture.filter.! edge edge cloud responsiveness scale
  • 13. Sensing Data Challenge Option1. data goes to decisioning ! Fatter, faster pipes! Continuous flow! Option 2. decisioning goes to data ! Intelligent Edge ! Periodic updates! sense! getting data and decisioning together!
  • 14. Edges make IIoT Faster GE Blog - Edge: A Door to the Data Kingdom! ➡  Edges distribute predictive services (cloud vs edge)! ➡  policy vs behavior ! ➡  long-term vs real-time ! ➡  architectures for flexible (re)distribution of predictive decision logic?!
  • 15. Edges make IIoT Faster and Cheaper ➡  Edges distribute predictive services (cloud vs edge)! ➡  policy vs behavior ! ➡  long-term vs real-time! ➡  how will predictive decision logic move to where the data is?! Jasper. The hidden costs of delivering IoT!
  • 16. Slow lakes to fast streams •  Now. Transition from data lakes to data streams! ‣  30-100x speed up : streams over lakes! ‣  needed to deal with real- time IIoT traffic! ‣  lambda architectures balance prediction speed and accuracy! •  Next ….! untidy data firehose clean analytics fast & good slower & much better Lambda architecture collect! Hadoop! Spark!
  • 17. Edge Filtering : Slimming diet for fat streams fitting predictive decisioning logic fit in super-small footprints!
  • 18. Opportunity : Machine Learning at unprecedented scale •  Machine-learning-as-a-service - rich set of algorithms, solution templates - immediate impact in: ! •  problems with established procedures! •  and clean data! Source. Cortana Intelligence Gallery learn!
  • 19. Challenge : Clean Data •  State-of-the-art ML — promises dramatic improvement. But ‘clean data’ hungry! •  Deep Learning 3x better than Regression for electricity demand forecasting! •  needs 1.5 million data points for training (over 4.5 years)! •  Limiting factor is the data quality ! data maturity! insight! insight ! aspiration! data ! reality! variability!volume! veracity! Stanford study. Electricity demand forecasting. Deep learning 3x better than ‘classic’ m/c learning!
  • 20. Challenge : Clean Data •  State-of-the-art ML — promises dramatic improvement. But ‘clean data’ hungry! •  Deep Learning 3x better than Regression for electricity demand forecasting! •  needs 1.5 million data points for training! •  Limiting factor is the data quality! Source. HP Enterprise Labs study! Training Data Training Time (IoT) signals 3 million frames! days! Vision 14 million images! 3 days w/ 16000 cores!
  • 21. 2-Tiered Machine Learning for IIoT •  Intelligent IoT data cleansing layer (e.g. Bitstew) - Machine Learning turns dirty data into clean data! •  low-level data cleaning pushed to the edge! •  semantic integration between data sources in the cloud! •  Predictive Layer - Machine Learning turns clean data into clean insights! interfaces between cleansing & prediction? !
  • 22. Conclusion Present : Cloudy •  embrace. leverage cutting edge cloud and ML services! •  extend. adapt to IIoT business processes! Future : Edgy •  hyper decentralized intelligence and data! •  systems that understand ‘normal’ and ‘deviation’! •  predictive systems that have both response velocity and depth of insight!
  • 24. Predictive Analytics : IoT Challenge good enough,! high velocity! predictions! with incomplete, untidy data! (hourglass - with decay statistic)! Source. Par stream IoT survey!
  • 25. Challenge : Clean Data •  State-of-the-art ML — promises dramatic improvement. But ‘clean data’ hungry! •  Deep Learning 3x better than Regression for electricity demand forecasting! •  needs 1.5 million data points for training (over 4.5 years)! •  Limiting factor is the data quality ! Stanford study. Electricity demand forecasting. Deep learning 3x better than ‘classic’ m/c learning! Fast Accurate Clear Naive Bayes Yes! Low! Somewhat! Regression Yes! Medium! Yes! Decision Trees Yes! Medium! Somewhat! Deep Learning No! High! Heck no!