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Data Analytics Applications
B2B vs. B2C
Karen Zhang, PhD
July 2014
Outline
Framework
Data and Analytics
Case Studies
Summary
15 minutes Q&A
1
Business
Questions
Data
Sources
Analysis/
Modeling
Test&ActionKPIGreater
Consumer
Population
HP
Loyal
Life
CycleDriversDataInsightsActionMeasure
TUP
Forreste
r
TUP
Acxiom
Acxiom
TUP
Survey
Omniture HHO
ASTRO HHO
CKM
Prospects
Customers
Techno/
Attitude
Readiness
Product
Awareness
In market for
next product
HP.com 1st Order 2nd Order 3rd OrderReturn/Support
Who do our
best
customer
look like
What channels,
products,
features they
prefer
What do they
own,
research, will
consider
Where do
they come
from, navigate
to, abandon
What they
bought, where,
how much,
what else
Why and
how did they
return or call
support
What else
do they buy,
where, how,
how
satisfied
What is their
level /value of
loyalty and
sphere of
influence
Customer Decision Making Process
Customer
Valuation
Propensity Measures
Current Value
Future Value
Influencer Measures
Acquisition Marketing
Propensity In-Market Timing
Retention Marketing
Migration Strategy
Better Targeting
Differentiated Treatment
Up sell /
Cross sell
Re-activation
Attrition Alerts Re-targeting Reward
Customer & Channel
Propensity for acquisition
Response model by
channel
Channel Mix model
Product Offering
Optimization model
CES product
propensity
PSG Segmentation
Customer Valuation
Current LTV
Future LTV
Influencer Power
Customer Loyalty
Define Best Customer
Model for acquisition
Model for migration
• Quality of
traffic
• Open/click-
thru rate
• Conversion
• Order size
• Attach value
• Repeat Traffic/
visit
• CSAT
• Cross/up sell
value
• CES
measures
• CES Measures
• Brand aware
Measures
• Data Quality/
accuracy
• Awareness
measures
• Consideration
measures
HHO
CKM
B2C Customer Analysis Framework
1:1. Real-Time. Interactive.
B2B Sales Funnel
Orders
Marketing
Sales
Business Objectives:
• Increase the lead quality
• Accelerate the funnel speed.
• Broaden the funnel
Business Functions:
• Marketing
• Sales
B2B Data Domains
Firmographic
/Contact
Pipeline
Competitive
Sales Transaction
(Direct & Channel)
Customer Reference
Campaign/Event
Response
Social Data
Contract/Agreement
s/Support/ Licenses
Online
Primary /Secondary
Research/IT spends
Product /Price
Berkeley Data Analytics Stack (BDAS)
Apache Spark
Shark
BlinkDB
SQL
HDFS / HBase / Hadoop / GlusterFS
Apache Mesos/YARN Resource Manager
Spark
Streamin
g
GraphX ML
Tachyon
https://amplab.cs.berkeley.edu/
Recommender System
• Markov Chain Model application
• Collaborative Filtering
   x| XxXxxX| XxX tttttttt   111111 PrPr 
Who is likely to buy?
When is likely to
purchase?
What is the next
purchase?
How will be purchased?
B2C Customer Holistic Understanding
End to End Intelligent Marketing Campaign
HP
Channel Partners
Customers2
3
1
4
1 Market Size Estimation
2
Direct Channel Analytics - Identifying likely
customers using historical transaction and
firmographic information for targeting
campaigns
3 Indirect Channel Analytics: Identifying
likely channel partners to be activated
using channel partner transaction
information
4 Enriching the multi-channel strategy:
Using unstructured product
sentiment information
A unique analytical solution comprising of predictive model on structured & unstructured data to drive
targeted marketing through multi-channel sales motion
5
Post-Campaign
Tracking and
Measurement
5 GTM Campaign Tracking and Measurement Process
Market Size
Estimation
Summary
B2B analytics have to be closely aligned with sales
strategy, organizational structure, and process
Complex product and service bundles in B2B require
sophisticated analytics approach
Multiple seller-buyer interactions in lengthy B2B
sales cycles provide opportunities and challenges
Thank you
Contact:
Karen Zhang
Zurich Mobile 41 (0) 76 517 79 59
www.linkedin.com/in/zhangkaren/
• Apache License, Version 0.4.1 (Feb 2014)
• 40+ contributors from 15+ companies.
• Being deployed at multiple companies
• In Fedora 21
• Spark and MapReduce applications can run without any
code change
• Project Website: http://tachyon-project.org
• Source Code: https://github.com/amplab/tachyon
Open source status

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Data Analytics – B2B vs. B2C

  • 1. Data Analytics Applications B2B vs. B2C Karen Zhang, PhD July 2014
  • 2. Outline Framework Data and Analytics Case Studies Summary 15 minutes Q&A
  • 3. 1 Business Questions Data Sources Analysis/ Modeling Test&ActionKPIGreater Consumer Population HP Loyal Life CycleDriversDataInsightsActionMeasure TUP Forreste r TUP Acxiom Acxiom TUP Survey Omniture HHO ASTRO HHO CKM Prospects Customers Techno/ Attitude Readiness Product Awareness In market for next product HP.com 1st Order 2nd Order 3rd OrderReturn/Support Who do our best customer look like What channels, products, features they prefer What do they own, research, will consider Where do they come from, navigate to, abandon What they bought, where, how much, what else Why and how did they return or call support What else do they buy, where, how, how satisfied What is their level /value of loyalty and sphere of influence Customer Decision Making Process Customer Valuation Propensity Measures Current Value Future Value Influencer Measures Acquisition Marketing Propensity In-Market Timing Retention Marketing Migration Strategy Better Targeting Differentiated Treatment Up sell / Cross sell Re-activation Attrition Alerts Re-targeting Reward Customer & Channel Propensity for acquisition Response model by channel Channel Mix model Product Offering Optimization model CES product propensity PSG Segmentation Customer Valuation Current LTV Future LTV Influencer Power Customer Loyalty Define Best Customer Model for acquisition Model for migration • Quality of traffic • Open/click- thru rate • Conversion • Order size • Attach value • Repeat Traffic/ visit • CSAT • Cross/up sell value • CES measures • CES Measures • Brand aware Measures • Data Quality/ accuracy • Awareness measures • Consideration measures HHO CKM B2C Customer Analysis Framework 1:1. Real-Time. Interactive.
  • 4. B2B Sales Funnel Orders Marketing Sales Business Objectives: • Increase the lead quality • Accelerate the funnel speed. • Broaden the funnel Business Functions: • Marketing • Sales
  • 5. B2B Data Domains Firmographic /Contact Pipeline Competitive Sales Transaction (Direct & Channel) Customer Reference Campaign/Event Response Social Data Contract/Agreement s/Support/ Licenses Online Primary /Secondary Research/IT spends Product /Price
  • 6. Berkeley Data Analytics Stack (BDAS) Apache Spark Shark BlinkDB SQL HDFS / HBase / Hadoop / GlusterFS Apache Mesos/YARN Resource Manager Spark Streamin g GraphX ML Tachyon https://amplab.cs.berkeley.edu/
  • 7. Recommender System • Markov Chain Model application • Collaborative Filtering    x| XxXxxX| XxX tttttttt   111111 PrPr 
  • 8. Who is likely to buy? When is likely to purchase? What is the next purchase? How will be purchased? B2C Customer Holistic Understanding
  • 9. End to End Intelligent Marketing Campaign HP Channel Partners Customers2 3 1 4 1 Market Size Estimation 2 Direct Channel Analytics - Identifying likely customers using historical transaction and firmographic information for targeting campaigns 3 Indirect Channel Analytics: Identifying likely channel partners to be activated using channel partner transaction information 4 Enriching the multi-channel strategy: Using unstructured product sentiment information A unique analytical solution comprising of predictive model on structured & unstructured data to drive targeted marketing through multi-channel sales motion 5 Post-Campaign Tracking and Measurement 5 GTM Campaign Tracking and Measurement Process Market Size Estimation
  • 10. Summary B2B analytics have to be closely aligned with sales strategy, organizational structure, and process Complex product and service bundles in B2B require sophisticated analytics approach Multiple seller-buyer interactions in lengthy B2B sales cycles provide opportunities and challenges
  • 11. Thank you Contact: Karen Zhang Zurich Mobile 41 (0) 76 517 79 59 www.linkedin.com/in/zhangkaren/
  • 12. • Apache License, Version 0.4.1 (Feb 2014) • 40+ contributors from 15+ companies. • Being deployed at multiple companies • In Fedora 21 • Spark and MapReduce applications can run without any code change • Project Website: http://tachyon-project.org • Source Code: https://github.com/amplab/tachyon Open source status