automated decision making with predictive applications – big data brussels

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Page 1: Automated decision making with predictive applications – Big Data Brussels
Page 2: Automated decision making with predictive applications – Big Data Brussels
Page 3: Automated decision making with predictive applications – Big Data Brussels

— Lars Trieloff, boarding this planeOuch.

Page 4: Automated decision making with predictive applications – Big Data Brussels

Automated Decision Making with Big DataLars Trieloff | @trieloff

Page 5: Automated decision making with predictive applications – Big Data Brussels

Automated Decision Making with Big Data Predictive ApplicationsLars Trieloff | @trieloff

Page 6: Automated decision making with predictive applications – Big Data Brussels

— Holger Kisker, Forrester Research

“Even after more than 20 years of using BI, they still base nearly 45% of business decisions on qualitative decision factors instead of quantitative, fact-based evidence. “

Page 7: Automated decision making with predictive applications – Big Data Brussels

4%Worldwide average profit margin in retail: 4%

Page 8: Automated decision making with predictive applications – Big Data Brussels

4‰German average profit margin in retail: 4‰

Page 9: Automated decision making with predictive applications – Big Data Brussels

Your Customer gives you this

Page 10: Automated decision making with predictive applications – Big Data Brussels

All you got to keep is that

Page 11: Automated decision making with predictive applications – Big Data Brussels

— –Libby Rittenberg

“Economic profits in a system of perfectly competitive markets will, in the long run, be driven to zero in all industries.”

Page 12: Automated decision making with predictive applications – Big Data Brussels

Physiological

Safety

Love/Belonging

Esteem

Self-Actualization

Page 13: Automated decision making with predictive applications – Big Data Brussels

— Abraham Maslov – probably never said this. It’s true anyway.“Data has Human Needs, too”

Page 14: Automated decision making with predictive applications – Big Data Brussels

Collection

Storage

Analysis

Prediction

Decision

Page 15: Automated decision making with predictive applications – Big Data Brussels

Collection

Storage

Analysis

Prediction

Decision

Physiological

Safety

Love/Belonging

Esteem

Self-Actualization

Page 16: Automated decision making with predictive applications – Big Data Brussels
Page 17: Automated decision making with predictive applications – Big Data Brussels

— W. Edward Deming

“In God we trust, all others bring data”

Page 18: Automated decision making with predictive applications – Big Data Brussels

How Data-Driven Decisions should work

Computer Collects

Computer Stores

Human Analyzes

Human Predicts

Human Decides

Page 19: Automated decision making with predictive applications – Big Data Brussels

— Daniel Kahneman

“Prejudice against algorithms is magnified when the decisions are consequential.”

Page 20: Automated decision making with predictive applications – Big Data Brussels

How Data-Driven Decisions REALLY work

Computer Collects

Computer Stores

Human Analyzes

C O M M U N I C AT I O N B R E A K D O W N

Human Decides

Page 21: Automated decision making with predictive applications – Big Data Brussels

— Led Zeppelin

Communication Breakdown, It's always the same, I'm having a nervous breakdown, Drive me insane!

Page 22: Automated decision making with predictive applications – Big Data Brussels

• Drill-down analysis … misunderstood or distorted

• Metrics dashboards … contradictory and confusing

• Monthly reports … ignored after two iterations

• In-house analyst teams … overworked and powerless

How Data-Driven Decisions REALLY work

C O M M U N I C AT I O N

B R E A K D O W N

Page 23: Automated decision making with predictive applications – Big Data Brussels

How Data-Driven Decisions REALLY work

http://dilbert.com/strips/comic/2007-05-16/

Page 24: Automated decision making with predictive applications – Big Data Brussels

How Decisions REALLY should work

Computer Collects

Computer Stores

Computer Analyzes

Computer Predicts

C O M P U T E R D E C I D E S

Page 25: Automated decision making with predictive applications – Big Data Brussels

— Everyone at Blue Yonder, all the time

99.9% of all business decisions can be automated

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How Decisions are Being Made

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90% No Decision is made

Page 28: Automated decision making with predictive applications – Big Data Brussels

— Robin Sharma

“Making no decision is a decision. To do nothing. And nothing always brings you nowhere..”

Page 29: Automated decision making with predictive applications – Big Data Brussels

Business Rules for Beginners

Not doing anything is the simplest business rule in the world – and also the most popular

Page 30: Automated decision making with predictive applications – Big Data Brussels

90% No Decision is made

Page 31: Automated decision making with predictive applications – Big Data Brussels

9% Decision Follows Rule

Page 32: Automated decision making with predictive applications – Big Data Brussels

Business Rules in Action

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Advanced Business Rules

Computers are machines following rules. This means business rules are programs.

Page 34: Automated decision making with predictive applications – Big Data Brussels

• Business rules are like programs – written by non-programmers

• Business rules can be contradictory, incomplete, and complex beyond comprehension

• Business rules have no built-in feedback mechanism: “It is the rule, because it is the rule”

Business rules are Programs, just not very good ones.

Page 35: Automated decision making with predictive applications – Big Data Brussels

— Mark Twain

“It ain’t what we don’t know that causes trouble, it’s what we know for sure that just ain’t so”

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1% Human Decision making

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Human Decision Making has two systems – and only one is rational.

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Not quite Almost there That’s it.

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Quick: What do you see here?

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Page 41: Automated decision making with predictive applications – Big Data Brussels

— Steven Pinker, describing Moravec’s Paradox

“The hard problems are easy and the easy problems are hard.”

Page 42: Automated decision making with predictive applications – Big Data Brussels

Quick: Add all even numbers

65 7 1 0

60 63 18 80

547039100

69 20 26 73

Page 43: Automated decision making with predictive applications – Big Data Brussels

94 39 37 31

92 70 100 67

4956080

69 20 26 73

Page 44: Automated decision making with predictive applications – Big Data Brussels

51 60 23 22

5 48 43 14

9525669

23 67 1 43

Page 45: Automated decision making with predictive applications – Big Data Brussels

Correct Result:

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Correct Result: 1.024

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Page 48: Automated decision making with predictive applications – Big Data Brussels

— Daniel Kahneman

“All of us would be better investors if we just made fewer decisions.”

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Page 50: Automated decision making with predictive applications – Big Data Brussels

How we are making decisions (Like the big apes we are)

Anchoring effectIKEA effect

Confirmation bias

Bandwagon effect

Substitution

Availability heuristic Texas Sharpshooter Fallacy

Rhyme as reason effect

Over-justification effect

Zero-risk bias

Framing effect

Illusory correlationSunk cost fallacy

Overconfidence

Outcome bias

Inattentional Blindness

Benjamin Franklin effect

Hindsight bias

Gambler’s fallacy

Anecdotal evidenceNegativity bias

Loss aversion

Backfire effect

Page 51: Automated decision making with predictive applications – Big Data Brussels
Page 52: Automated decision making with predictive applications – Big Data Brussels

• Abraham Lincoln and John F. Kennedy were both presidents of the United States, elected 100 years apart. 

• Both were shot and killed by assassins who were known by three names with 15 letters, John Wilkes Booth and Lee Harvey Oswald, and neither killer would make it to trial.

• Lincoln had a secretary named Kennedy, and Kennedy had a secretary named Lincoln.

• They were both killed on a Friday while sitting next to their wives, Lincoln in the Ford Theater, Kennedy in a Lincoln made by Ford.

Page 53: Automated decision making with predictive applications – Big Data Brussels

K-Means Clustering

Naive BayesSupport Vector Machines

Affinity Propagation

Least Angle Regression

Nearest Neighbors

Decision Trees

Markov Chain Monte Carlo

Spectral clustering

Restricted Bolzmann Machines

Logistic Regression

Computers making decisions (cold, fast, cheap, rational)

Page 54: Automated decision making with predictive applications – Big Data Brussels

• A machine learning algorithm is a system that derives a set of rules based on a set of data

• It is based on systematic observation, double-checking and cross-validation

• There is no magic, just data – and without data there is no magic either

Machine Learning means Programs that write Programs

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Better Decisions through Predictive Applications

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How Predictive Applications Work

Collect & Store Analyze Correlations

Build Decision Model

Decide & Test Optimize

Page 57: Automated decision making with predictive applications – Big Data Brussels

Why Test?

Page 58: Automated decision making with predictive applications – Big Data Brussels

— Randall Munroe

“Correlation doesn’t imply causation, but it does waggle its eyebrows suggestively and gesture furtively while mouthing ‘look over there’”

Page 59: Automated decision making with predictive applications – Big Data Brussels

— Warren Buffett

“I checked the actuarial tables, and the lowest death rate is among six-year-olds, so I decided to eat like a six-year-old.”

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More than half of the apps on a typical iPhone home screen are predictive applications.

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Fast DataInsight

Big Data

Categorizing Analytics

Past Present Future

No DataHindsight

Foresight

1. By Data Volume 2. By Time Horizon

Page 62: Automated decision making with predictive applications – Big Data Brussels

1

Categorizing Analytics

Descriptive• Focused on gathering and

collecting data

• Key challenges: data volume and data variety

• Key outcome: hindsight

• Examples: reports, dashboards

• Answers “What happened?”

Predictive• Focused on understanding

and explaining data

• Key challenges: data velocity and complexity

• Key outcome: insight

• Examples: prediction models

• Answers: “Why did it happen and what will happen next?”

Prescriptive• Focused on anticipating and

recommending action

• Key challenges: execution

• Key outcome: foresight

• Examples: decision support, predictive apps

• Answers: “What should we do?”

2 3

Page 63: Automated decision making with predictive applications – Big Data Brussels

A

Categorizing Analytics

Explicit• Analytics are a key visible

feature of the program

• Programs are used by trained analysts and data scientists

• Regular interaction during business hours

Integrated• Analytics are included in

another program

• Analytics are consumed in-context by business users

• Frequent, but irregular consumption during business hours

Automated• Analytics are invisibly part of a

complex process

• Decisions are made and executed in the process

• Constant and ongoing optimization 24/7

B C

Page 64: Automated decision making with predictive applications – Big Data Brussels

Analytic Application Matrix

2

3

B

C

+

+

=

=

Predictive Integrated

AutomatedPrescriptive

Decision Support systems for infrequent strategic decision-making

Predictive Applications for massive, automated decision-making in operational processes

Page 65: Automated decision making with predictive applications – Big Data Brussels

Building Predictive Applications

Machine Learning ModelPredictive Application

Enterprise Integration

Page 66: Automated decision making with predictive applications – Big Data Brussels

Predictive Apps in a NutshellBatch and streaming data ingestion, batch

and streaming delivery (with real-time option)

Reduce risk and cost » increase revenue and profit

Trend Estimation Classification Event Prediction

Optimize Returns

Collect Data Predict Results Drive Decisions

Page 67: Automated decision making with predictive applications – Big Data Brussels

— John Maynard Keynes

“When my information changes, I alter my conclusions. What do you do, sir?”

Page 68: Automated decision making with predictive applications – Big Data Brussels

One Common Platform for Predictive Applications

Your own and third-party data, easily integrated via API

Link

Build Machine Learning and

application code

Build

Automatically run and scale ML models

and applications

Run

Monitor and inspect resource usage and

model quality

View

Your data stored in high-performance

database as a service

Store

Page 69: Automated decision making with predictive applications – Big Data Brussels

— Kevin Kelly

“The business plans of the next 10,000 startups are easy to forecast: Take X and add AI”

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Lars Trieloff @trieloff

Page 71: Automated decision making with predictive applications – Big Data Brussels

Tree Love