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Data Science Company 
DataScience for e-commerce 
Infofarm - Seminar 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
25/11/2014
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Agenda 
• About us 
• What is Data Science? 
e-commerce vs Data Science vs BigData 
• Example Data Science applications in e-commerce 
some inspiration to see your opportunities… 
• Applying Data Science 
how to get started with all this?
About us 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Speakers 
• Niels Trescinski 
e-commerce Consultant 
– Fenego (Intershop) 
– Elision (Hybris) 
• Günther Van Roey 
Technical (IT) Consultant 
– InfoFarm (BigData & Data Science) 
– XT-i (software development and integration) 
– PHPro (website development)
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
InfoFarm - Team 
• Mixed skills team 
– 2 Data Scientist 
• Mathematics 
• Statistics 
– 4 BigData Consultants 
– 1 Infra specialist 
– n Cronos colleagues 
with various background 
• Certifications 
– CCDH - Cloudera Certified Hadoop Developer 
– CCAD - Cloudera Certified Hadoop Administrator 
– OCJP – Oracle Certified Java Programmer
InfoFarm + Fenego & Elision – e-commerce! 
Highly focused on 
e-commerce 
Business Knowledge 
Highly focused on 
Data Science and 
Big Data 
Technical Knowledge 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Introduction: what is Data Science? 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
What is data science? 
• Data Scientist: “A person who is better at statistics than 
any software engineer and better at software 
engineering than any statistician” 
- Josh Wills 
• “Getting meaning from data” 
Finding patterns (data mining) 
• Complementing business 
knowledge with figures
Data Science & Big Data 
• Relevance for e-commerce - use data to: 
– Increment conversion 
– Increment operational efficiency 
– Understand your customers’ needs 
– Make better offers 
– Make better recommendations 
– … 
• Many successful online business thank their position to 
smart data usage: 
– Google was the first search engine that didn’t index by keyword 
– Amazon is the e-commerce leader thanks to BigData 
– NetFlix is a world leader in personalized recommendations 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Data Science & Big Data 
• Most of us don’t run a business like the ones referred to in 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
stereotypical Big Data cases 
• Big Data does not necessarily means or requires much data 
• Data Science is very affordable to companies of all sizes 
• Typical Data Science projects are 10’s of man-days of work
Data Science & Big Data 
• Non-structured data: weblogs, social media content, … 
• Secondary use of data sources is the key 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
– eg: Weblogs 
• Are there to log webserver activity 
• But can also tell you how people find, compare and choose products! 
– eg: ERP / Cash register software 
• Prints bills 
• But can also tell you what products are typically bought together in a shop 
• Many data is present, valuable information is hidden in it!
Topics not covered in this seminar 
• Very interesting topics that we will gladly 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
elaborate upon another time: 
– Statistical Tools (R, SPSS, …) 
– Mathematical models 
– Machine Learning Techniques (Clustering, Classification, …) 
– BigData Tools & Platforms (Hadoop, Spark, …) 
– Data processing tools (Pig, Hive, …)
Example Data Science applications: 
#1: Recommendations 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Recommendations – Why? How? 
– Why? 
• Attempt to cross-sell or up-sell 
• Provide customers with alternatives that might please them even more 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
– Traditional approach 
• No recommendations at all 
• Products in the same category 
• Manually managed cross-selling opportunities per product 
– Why are these approaches fundamentally flawed? 
• They all start from the seller perspective, not the customer! 
• “We know what you should be buying” 
• Manual recommendations are too costly and time-consuming to 
maintain – even impossible with large catalogs
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Recommendations 
– Online vs Offline 
• Main focus on online, but why? 
• Who knows best what products to recommend? 
• Learn from your data, don’t take decisions based on a feeling. 
– Time based recommendations 
• Recommend or cross sell different products depending on 
– season? 
– holiday? 
– weather? 
– Customer based recommendations 
• Learn from your customers and their past. 
• Android vs iOS smartphones.
Showing (too) 
similar products? 
No color alternatives? 
No glossy/matte 
alternatives? 
No product 
Recommendations – Traditional approach 
recommendations 
at all 
(Link to category 
without match with 
specific product) 
Which roller would be 
appropriate? 
No primer + paint 
combo? 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Recommendations – what does Amazon do? 
Cross-selling 
as realized with other 
(similar?) customers 
Starts from customer 
point of view! 
Recommendations 
based on perceived 
customer journeys 
Re-use the product 
comparisons that 
previous customers 
did! 
DATA 
DRIVEN! 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Recommendations – Other ideas 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• Data Science ideas 
– “x % of the people who looked at this item eventually bought product X or Y” 
– Get cross-selling information from ERP in the physical shops and let this feed the 
webshop recommendations! 
– Similar product in different price ranges 
(“best-buy alternative”, “deluxe alternative”) 
– ... 
• This is very achievable for a webshop of any size 
– Just generate ideas, and test to see what actually increases sales! 
• Secondary use of various kinds of non-structured data = BigData ! 
– Weblogs of e-commerce site (use to deduct customer journeys) 
– ERP info with bills and/or invoices (use to deduct cross-selling in physical shops) 
– Product information (product categorization, …)
Example Data Science applications: 
#2: Physical stores vs webshop 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Impact physical store on online? 
– Are online sales higher when physical store is nearby? 
– Where to open a new store? 
– How to approach your customers to motivate 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Impact physical shops - Why bother? 
• Determine strength of online brand vs physical brand 
– Is online sales driven by brand awareness? 
– Or is there quite a balance between the two? 
– Omni-channel strategy? 
• Know what would be the impact of opening/closing a 
physical shop, also on the online business 
– Support management decisions with facts & figures 
• Depends heavily on sector/product/case/… 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Impact physical shops - example 
• Analysis for a retailer: Physical shops vs online sales 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Impact physical shops - example 
• Impact of opening a physical shop on local online sales 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
(brand awareness?)
Impact physical shops – now what? 
• Use this correlation information: 
– As extra input for determining new shop locations 
– Publish folders focusing on online in non-covered areas 
– Use popup-stores to get brand awareness and drive online sales 
– Discounts per region 
– Google Adwords campaigns focusing on regions with limited 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
brand presence 
– Customer segmentation based on this information
Example Data Science applications: 
#3: Dynamic Pricing 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Dynamic prices 
– End of life products? 
– Relevancy of products. 
– (Local) competition. 
– Customer!
Dynamic Prices – some ideas 
• Auto-combination special offers based on cross-selling 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
info 
• Monitor stock & manage promotions accordingly 
– Example: stock of calendars in December 
(value decreases over time…) 
– Example: Customer history: needs incentive to buy? 
Why not give a small 
discount if bought 
together? 
Testing will show if 
and for which 
products and 
customers this 
increases revenue!
Dynamic Prices – some ideas 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• Pricing vs competition 
scraping competition websites 
• Analysis of tenders vs deals 
– What type of deals do we typically win, and which not? 
= Data mining on CRM data! 
– How can we optimize our chances to make a deal? 
Which tenders should we invest in? What offer should we make? 
• Remark: in B2C scenarios, can be difficult / unwanted to 
use dynamic prices. Mind the legal impact!
Example Data Science applications: 
#4: Personalized offerings 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Personalized offering 
– Loyal (online) customer vs new customers. 
– Browsing habits and patterns. 
– Spending patterns. 
– Personalized discounts and/or content?
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Personalized offerings 
• Customer should be central in the webshop 
– Provide a truly personalized shopping experience 
– Like high-end physical shops with personal approach to VIP 
customers 
• Gather data about your customer 
– Surfing history – what products where looked at? How long? … 
– What products were bought? When? 
– Brand preference? 
– Product-segment preference? (budget, high-end, best-buy?) 
– Abandoned shopping carts 
• Take action based on information mined from this data 
– Triggered e-mails, personal recommendations, …
Personalized offerings – some ideas 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• Imply social media 
– Are there any connections of our customer that wrote product 
recommendations that might convince him to buy? 
– Do we know the shopping behaviour of some of the customers’ 
connections? Are they in line with his/hers? Can we use this to 
make better recommendations? 
• Anticipate customer behaviour 
– Use all customer contact moments 
eg: if customer calls customer service, they should know what 
products the customer was looking at during his last visit to the 
webshop 
– Prediction model (surfing behaviour vs % deal making) 
eg: 
Low chance? Go to checkout immediately. 
High chance? Offer extra cross-selling opportunities
Example Data Science applications: 
#5: Gather external data 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Gather external data, zoom & magnify 
– Explore search trends within Google. 
– Detect what is hot on social media. 
– Magnify to the results and set clear goals/actions. 
– Take action! 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
Gather and use external data 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• example: how to sell a Smartwatch? 
– It’s a new product, how to market it effectively? 
– eg: SEO in line with trending topics on twitter, facebook posts, … 
– eg: SEO in line with used search terms 
• Added value: combining external data sources with own data 
• Some ideas 
– Find and follow your contacts on LinkedIn 
previous/future employers of your contacts may be great prospects for 
your B2B business! 
– Use weather info to adapt the featured product offering 
Data Science exercise: do we find any correlation between the weather 
and the product sales figures?
Example Data Science applications: 
#6: Anticipatory shipping 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Anticipatory shipping 
– Patent pending by Amazon. 
– Ships an order before it is placed. 
– Order history, search, wish list and click behaviour!
Anticipatory shipping 
• High-tech? Actually not complex at all … 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• Steps: 
– Gather many info on past orders 
(customer info, country, product info, price, product group, 
product combinations, time of day, season, …) 
– Build a prediction model predicting “cancelled or not” based on 
all this information 
– Assess the quality of the model by training it with 90% of your 
historical orders and testing it with 10% of your historical orders 
– Pass each new order’s info and predict the likelihood of this 
order getting cancelled (0 .. 100%) and act accordingly
Example Data Science applications: 
#7: Customer Service optimizations 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Customer service 
– Losing sales/conversion/money by poor customer service. 
– Optimize information for all communication channels. 
– Which issues are your customers concerned with? 
– Allocate resources better!
Customer Service – Some Ideas 
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
• Text mining 
– Mood analysis: detect negative messages on social media, forum, … 
Put TODO on action list of customer care to contact with certain priority 
– Auto-classification of e-mails, letters, messages: 
Is this e-mail a question or a complaint? 
Is it about the quality of the product or financial (wrong invoice, …)? 
Automatic routing of messages to the right person! (operational optimization) 
• Social media 
– Social media status of customer (scoring based on profile) 
What’s would be the impact of this customer being unhappy about our service? 
• Omnichannel insights 
– What did this customer buy of look at? 
– How did he rate the last bought products? 
– Which contacts (mail, phone, …) did we have and what seems to be the most 
effective deal trigger?
Applying Data Science 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 
Applying Data Science 
• Data Science does not replace business knowledge 
– Need to find balance between the two 
– Confirm or deny assumed business knowledge 
– Detect changing trends early (customer behaviour, …) 
• Not a development cycle, rather exploratory process: 
– Formulate hypotheses 
– Data mining and modeling 
– A/B testing (test new idea on x % of your customers/products/…) 
– Conclusions: did the test group show better conversion? 
– Rollout or cancel and start over! 
• Potential issues 
– Privacy law and other legal restrictions 
– Feedback loops, information leakage, wrong assumptions 
eg: trying to gather customer preferences when an order could as well have 
been a gift to someone else (perfume, …)
Questions? 
Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye

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Data Science for e-commerce

  • 1. Data Science Company DataScience for e-commerce Infofarm - Seminar Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be 25/11/2014
  • 2. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Agenda • About us • What is Data Science? e-commerce vs Data Science vs BigData • Example Data Science applications in e-commerce some inspiration to see your opportunities… • Applying Data Science how to get started with all this?
  • 3. About us Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 4. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Speakers • Niels Trescinski e-commerce Consultant – Fenego (Intershop) – Elision (Hybris) • Günther Van Roey Technical (IT) Consultant – InfoFarm (BigData & Data Science) – XT-i (software development and integration) – PHPro (website development)
  • 5. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be InfoFarm - Team • Mixed skills team – 2 Data Scientist • Mathematics • Statistics – 4 BigData Consultants – 1 Infra specialist – n Cronos colleagues with various background • Certifications – CCDH - Cloudera Certified Hadoop Developer – CCAD - Cloudera Certified Hadoop Administrator – OCJP – Oracle Certified Java Programmer
  • 6. InfoFarm + Fenego & Elision – e-commerce! Highly focused on e-commerce Business Knowledge Highly focused on Data Science and Big Data Technical Knowledge Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 7. Introduction: what is Data Science? Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 8. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be What is data science? • Data Scientist: “A person who is better at statistics than any software engineer and better at software engineering than any statistician” - Josh Wills • “Getting meaning from data” Finding patterns (data mining) • Complementing business knowledge with figures
  • 9. Data Science & Big Data • Relevance for e-commerce - use data to: – Increment conversion – Increment operational efficiency – Understand your customers’ needs – Make better offers – Make better recommendations – … • Many successful online business thank their position to smart data usage: – Google was the first search engine that didn’t index by keyword – Amazon is the e-commerce leader thanks to BigData – NetFlix is a world leader in personalized recommendations Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 10. Data Science & Big Data • Most of us don’t run a business like the ones referred to in Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be stereotypical Big Data cases • Big Data does not necessarily means or requires much data • Data Science is very affordable to companies of all sizes • Typical Data Science projects are 10’s of man-days of work
  • 11. Data Science & Big Data • Non-structured data: weblogs, social media content, … • Secondary use of data sources is the key Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be – eg: Weblogs • Are there to log webserver activity • But can also tell you how people find, compare and choose products! – eg: ERP / Cash register software • Prints bills • But can also tell you what products are typically bought together in a shop • Many data is present, valuable information is hidden in it!
  • 12. Topics not covered in this seminar • Very interesting topics that we will gladly Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be elaborate upon another time: – Statistical Tools (R, SPSS, …) – Mathematical models – Machine Learning Techniques (Clustering, Classification, …) – BigData Tools & Platforms (Hadoop, Spark, …) – Data processing tools (Pig, Hive, …)
  • 13. Example Data Science applications: #1: Recommendations Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 14. Recommendations – Why? How? – Why? • Attempt to cross-sell or up-sell • Provide customers with alternatives that might please them even more Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be – Traditional approach • No recommendations at all • Products in the same category • Manually managed cross-selling opportunities per product – Why are these approaches fundamentally flawed? • They all start from the seller perspective, not the customer! • “We know what you should be buying” • Manual recommendations are too costly and time-consuming to maintain – even impossible with large catalogs
  • 15. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Recommendations – Online vs Offline • Main focus on online, but why? • Who knows best what products to recommend? • Learn from your data, don’t take decisions based on a feeling. – Time based recommendations • Recommend or cross sell different products depending on – season? – holiday? – weather? – Customer based recommendations • Learn from your customers and their past. • Android vs iOS smartphones.
  • 16. Showing (too) similar products? No color alternatives? No glossy/matte alternatives? No product Recommendations – Traditional approach recommendations at all (Link to category without match with specific product) Which roller would be appropriate? No primer + paint combo? Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 17. Recommendations – what does Amazon do? Cross-selling as realized with other (similar?) customers Starts from customer point of view! Recommendations based on perceived customer journeys Re-use the product comparisons that previous customers did! DATA DRIVEN! Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 18. Recommendations – Other ideas Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • Data Science ideas – “x % of the people who looked at this item eventually bought product X or Y” – Get cross-selling information from ERP in the physical shops and let this feed the webshop recommendations! – Similar product in different price ranges (“best-buy alternative”, “deluxe alternative”) – ... • This is very achievable for a webshop of any size – Just generate ideas, and test to see what actually increases sales! • Secondary use of various kinds of non-structured data = BigData ! – Weblogs of e-commerce site (use to deduct customer journeys) – ERP info with bills and/or invoices (use to deduct cross-selling in physical shops) – Product information (product categorization, …)
  • 19. Example Data Science applications: #2: Physical stores vs webshop Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 20. Impact physical store on online? – Are online sales higher when physical store is nearby? – Where to open a new store? – How to approach your customers to motivate Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 21. Impact physical shops - Why bother? • Determine strength of online brand vs physical brand – Is online sales driven by brand awareness? – Or is there quite a balance between the two? – Omni-channel strategy? • Know what would be the impact of opening/closing a physical shop, also on the online business – Support management decisions with facts & figures • Depends heavily on sector/product/case/… Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 22. Impact physical shops - example • Analysis for a retailer: Physical shops vs online sales Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 23. Impact physical shops - example • Impact of opening a physical shop on local online sales Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be (brand awareness?)
  • 24. Impact physical shops – now what? • Use this correlation information: – As extra input for determining new shop locations – Publish folders focusing on online in non-covered areas – Use popup-stores to get brand awareness and drive online sales – Discounts per region – Google Adwords campaigns focusing on regions with limited Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be brand presence – Customer segmentation based on this information
  • 25. Example Data Science applications: #3: Dynamic Pricing Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 26. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Dynamic prices – End of life products? – Relevancy of products. – (Local) competition. – Customer!
  • 27. Dynamic Prices – some ideas • Auto-combination special offers based on cross-selling Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be info • Monitor stock & manage promotions accordingly – Example: stock of calendars in December (value decreases over time…) – Example: Customer history: needs incentive to buy? Why not give a small discount if bought together? Testing will show if and for which products and customers this increases revenue!
  • 28. Dynamic Prices – some ideas Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • Pricing vs competition scraping competition websites • Analysis of tenders vs deals – What type of deals do we typically win, and which not? = Data mining on CRM data! – How can we optimize our chances to make a deal? Which tenders should we invest in? What offer should we make? • Remark: in B2C scenarios, can be difficult / unwanted to use dynamic prices. Mind the legal impact!
  • 29. Example Data Science applications: #4: Personalized offerings Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 30. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Personalized offering – Loyal (online) customer vs new customers. – Browsing habits and patterns. – Spending patterns. – Personalized discounts and/or content?
  • 31. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Personalized offerings • Customer should be central in the webshop – Provide a truly personalized shopping experience – Like high-end physical shops with personal approach to VIP customers • Gather data about your customer – Surfing history – what products where looked at? How long? … – What products were bought? When? – Brand preference? – Product-segment preference? (budget, high-end, best-buy?) – Abandoned shopping carts • Take action based on information mined from this data – Triggered e-mails, personal recommendations, …
  • 32. Personalized offerings – some ideas Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • Imply social media – Are there any connections of our customer that wrote product recommendations that might convince him to buy? – Do we know the shopping behaviour of some of the customers’ connections? Are they in line with his/hers? Can we use this to make better recommendations? • Anticipate customer behaviour – Use all customer contact moments eg: if customer calls customer service, they should know what products the customer was looking at during his last visit to the webshop – Prediction model (surfing behaviour vs % deal making) eg: Low chance? Go to checkout immediately. High chance? Offer extra cross-selling opportunities
  • 33. Example Data Science applications: #5: Gather external data Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 34. Gather external data, zoom & magnify – Explore search trends within Google. – Detect what is hot on social media. – Magnify to the results and set clear goals/actions. – Take action! Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be
  • 35. Gather and use external data Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • example: how to sell a Smartwatch? – It’s a new product, how to market it effectively? – eg: SEO in line with trending topics on twitter, facebook posts, … – eg: SEO in line with used search terms • Added value: combining external data sources with own data • Some ideas – Find and follow your contacts on LinkedIn previous/future employers of your contacts may be great prospects for your B2B business! – Use weather info to adapt the featured product offering Data Science exercise: do we find any correlation between the weather and the product sales figures?
  • 36. Example Data Science applications: #6: Anticipatory shipping Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 37. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Anticipatory shipping – Patent pending by Amazon. – Ships an order before it is placed. – Order history, search, wish list and click behaviour!
  • 38. Anticipatory shipping • High-tech? Actually not complex at all … Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • Steps: – Gather many info on past orders (customer info, country, product info, price, product group, product combinations, time of day, season, …) – Build a prediction model predicting “cancelled or not” based on all this information – Assess the quality of the model by training it with 90% of your historical orders and testing it with 10% of your historical orders – Pass each new order’s info and predict the likelihood of this order getting cancelled (0 .. 100%) and act accordingly
  • 39. Example Data Science applications: #7: Customer Service optimizations Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 40. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Customer service – Losing sales/conversion/money by poor customer service. – Optimize information for all communication channels. – Which issues are your customers concerned with? – Allocate resources better!
  • 41. Customer Service – Some Ideas Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be • Text mining – Mood analysis: detect negative messages on social media, forum, … Put TODO on action list of customer care to contact with certain priority – Auto-classification of e-mails, letters, messages: Is this e-mail a question or a complaint? Is it about the quality of the product or financial (wrong invoice, …)? Automatic routing of messages to the right person! (operational optimization) • Social media – Social media status of customer (scoring based on profile) What’s would be the impact of this customer being unhappy about our service? • Omnichannel insights – What did this customer buy of look at? – How did he rate the last bought products? – Which contacts (mail, phone, …) did we have and what seems to be the most effective deal trigger?
  • 42. Applying Data Science Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye
  • 43. Veldkant 33A, Kontich ● info@infofarm.be ● www.infofarm.be Applying Data Science • Data Science does not replace business knowledge – Need to find balance between the two – Confirm or deny assumed business knowledge – Detect changing trends early (customer behaviour, …) • Not a development cycle, rather exploratory process: – Formulate hypotheses – Data mining and modeling – A/B testing (test new idea on x % of your customers/products/…) – Conclusions: did the test group show better conversion? – Rollout or cancel and start over! • Potential issues – Privacy law and other legal restrictions – Feedback loops, information leakage, wrong assumptions eg: trying to gather customer preferences when an order could as well have been a gift to someone else (perfume, …)
  • 44. Questions? Veldkant 33A, Kontich ● info@infofarmDa.btae S●ciwewncwe. inCfoomfaprman.bye